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Start <- function(..., # dim = indices/selectors,
# dim_var = 'var',
# dim_reorder = Sort/CircularSort,
# dim_tolerance = number,
# dim_depends = 'file_dim',
# dim_across = 'file_dim',
return_vars = NULL,
file_opener = NcOpener,
file_var_reader = NcVarReader,
file_dim_reader = NcDimReader,
file_data_reader = NcDataReader,
file_closer = NcCloser,
transform = NULL,
transform_params = NULL,
transform_vars = NULL,
transform_extra_cells = 2,
apply_indices_after_transform = FALSE,
pattern_dims = NULL,
metadata_dims = NULL,
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merge_across_dims = FALSE,
merge_across_dims_narm = FALSE,
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split_multiselected_dims = FALSE,
path_glob_permissive = FALSE,
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num_procs = 1,
silent = FALSE, debug = FALSE) {
#, config_file = NULL
#dictionary_dim_names = ,
#dictionary_var_names =
dim_params <- list(...)
# Take *_var parameters apart
var_params_ind <- grep('_var$', names(dim_params))
var_params <- dim_params[var_params_ind]
# Check all *_var are NULL or vectors of character strings, and
# that they all have a matching dimension param.
i <- 1
for (var_param in var_params) {
if (!is.character(var_param)) {
stop("All '*_var' parameters must be character strings.")
} else if (!any(grepl(paste0('^', strsplit(names(var_params)[i],
'_var$')[[1]][1], '$'),
names(dim_params)))) {
stop(paste0("All '*_var' parameters must be associated to a dimension parameter. Found parameter '",
names(var_params)[i], "' but no parameter '",
strsplit(names(var_params)[i], '_var$')[[1]][1], "'."))
}
i <- i + 1
}
# Make the keys of 'var_params' to be the name of
# the corresponding dimension.
if (length(var_params) < 1) {
var_params <- NULL
} else {
names(var_params) <- gsub('_var$', '', names(var_params))
}
# Take *_reorder parameters apart
dim_reorder_params_ind <- grep('_reorder$', names(dim_params))
dim_reorder_params <- dim_params[dim_reorder_params_ind]
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# Make the keys of 'dim_reorder_params' to be the name of
# the corresponding dimension.
if (length(dim_reorder_params) < 1) {
dim_reorder_params <- NULL
} else {
names(dim_reorder_params) <- gsub('_reorder$', '', names(dim_reorder_params))
}
# Take *_tolerance parameters apart
tolerance_params_ind <- grep('_tolerance$', names(dim_params))
tolerance_params <- dim_params[tolerance_params_ind]
# Take *_depends parameters apart
depends_params_ind <- grep('_depends$', names(dim_params))
depends_params <- dim_params[depends_params_ind]
# Check all *_depends are NULL or vectors of character strings, and
# that they all have a matching dimension param.
i <- 1
for (depends_param in depends_params) {
if (!is.character(depends_param) || (length(depends_param) > 1)) {
stop("All '*_depends' parameters must be single character strings.")
} else if (!any(grepl(paste0('^', strsplit(names(depends_params)[i],
'_depends$')[[1]][1], '$'),
names(dim_params)))) {
stop(paste0("All '*_depends' parameters must be associated to a dimension parameter. Found parameter '",
names(depends_params)[i], "' but no parameter '",
strsplit(names(depends_params)[i], '_depends$')[[1]][1], "'."))
}
i <- i + 1
}
# Make the keys of 'depends_params' to be the name of
# the corresponding dimension.
if (length(depends_params) < 1) {
depends_params <- NULL
} else {
names(depends_params) <- gsub('_depends$', '', names(depends_params))
}
# Change name to depending_file_dims
depending_file_dims <- depends_params
# Take *_across parameters apart
across_params_ind <- grep('_across$', names(dim_params))
across_params <- dim_params[across_params_ind]
# Check all *_across are NULL or vectors of character strings, and
# that they all have a matching dimension param.
i <- 1
for (across_param in across_params) {
if (!is.character(across_param) || (length(across_param) > 1)) {
stop("All '*_across' parameters must be single character strings.")
} else if (!any(grepl(paste0('^', strsplit(names(across_params)[i],
'_across$')[[1]][1], '$'),
names(dim_params)))) {
stop(paste0("All '*_across' parameters must be associated to a dimension parameter. Found parameter '",
names(across_params)[i], "' but no parameter '",
strsplit(names(across_params)[i], '_across$')[[1]][1], "'."))
}
i <- i + 1
}
# Make the keys of 'across_params' to be the name of
# the corresponding dimension.
if (length(across_params) < 1) {
across_params <- NULL
} else {
names(across_params) <- gsub('_across$', '', names(across_params))
}
# Change name to inner_dims_across_files
inner_dims_across_files <- across_params
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# Check merge_across_dims
if (!is.logical(merge_across_dims)) {
stop("Parameter 'merge_across_dims' must be TRUE or FALSE.")
}
# Check merge_across_dims_narm
if (!is.logical(merge_across_dims_narm)) {
stop("Parameter 'merge_across_dims_narm' must be TRUE or FALSE.")
}
if (!merge_across_dims & merge_across_dims_narm) {
merge_across_dims_narm <- FALSE
warning(paste0("Parameter 'merge_across_dims_narm' can only be TRUE when ",
"'merge_across_dims' is TRUE. Set 'merge_across_dims_narm'",
" to FALSE."))
}
# Leave alone the dimension parameters in the variable dim_params
if (length(c(var_params_ind, dim_reorder_params_ind, tolerance_params_ind,
depends_params_ind, across_params_ind)) > 0) {
dim_params <- dim_params[-c(var_params_ind, dim_reorder_params_ind,
tolerance_params_ind, depends_params_ind,
across_params_ind)]
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# Reallocating pairs of across file and inner dimensions if they have
# to be merged. They are put one next to the other to ease merge later.
if (merge_across_dims) {
for (inner_dim_across in names(inner_dims_across_files)) {
inner_dim_pos <- which(names(dim_params) == inner_dim_across)
file_dim_pos <- which(names(dim_params) == inner_dims_across_files[[inner_dim_across]])
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new_pos <- inner_dim_pos
if (file_dim_pos < inner_dim_pos) {
new_pos <- new_pos - 1
}
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dim_params_to_move <- dim_params[c(inner_dim_pos, file_dim_pos)]
dim_params <- dim_params[-c(inner_dim_pos, file_dim_pos)]
new_dim_params <- list()
if (new_pos > 1) {
new_dim_params <- c(new_dim_params, dim_params[1:(new_pos - 1)])
}
new_dim_params <- c(new_dim_params, dim_params_to_move)
if (length(dim_params) >= new_pos) {
new_dim_params <- c(new_dim_params, dim_params[new_pos:length(dim_params)])
}
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}
}
}
dim_names <- names(dim_params)
if (is.null(dim_names)) {
stop("At least one pattern dim must be specified.")
}
# Look for chunked dims
chunks <- vector('list', length(dim_names))
names(chunks) <- dim_names
for (dim_name in dim_names) {
if (!is.null(attr(dim_params[[dim_name]], 'chunk'))) {
chunks[[dim_name]] <- attr(dim_params[[dim_name]], 'chunk')
attributes(dim_params[[dim_name]]) <- attributes(dim_params[[dim_name]])[-which(names(attributes(dim_params[[dim_name]])) == 'chunk')]
} else {
chunks[[dim_name]] <- c(chunk = 1, n_chunks = 1)
}
}
# This is a helper function to compute the chunk indices to take once the total
# number of indices for a dimension has been discovered.
chunk_indices <- function(n_indices, chunk, n_chunks, dim_name) {
if (n_chunks > n_indices) {
stop("Requested to divide dimension '", dim_name, "' of length ",
n_indices, " in ", n_chunks, " chunks, which is not possible.")
}
chunks_to_extend <- n_indices - chunk_sizes[1] * n_chunks
if (chunks_to_extend > 0) {
chunk_sizes[1:chunks_to_extend] <- chunk_sizes[1:chunks_to_extend] + 1
}
chunk_size <- chunk_sizes[chunk]
offset <- 0
if (chunk > 1) {
offset <- sum(chunk_sizes[1:(chunk - 1)])
}
indices <- 1:chunk_sizes[chunk] + offset
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# Check pattern_dims
if (is.null(pattern_dims)) {
.warning(paste0("Parameter 'pattern_dims' not specified. Taking the first dimension, '",
dim_names[1], "' as 'pattern_dims'."))
pattern_dims <- dim_names[1]
} else if (is.character(pattern_dims) && (length(pattern_dims) > 0)) {
pattern_dims <- unique(pattern_dims)
} else {
stop("Parameter 'pattern_dims' must be a vector of character strings.")
}
if (any(names(var_params) %in% pattern_dims)) {
stop("'*_var' parameters specified for pattern dimensions. Remove or fix them.")
}
# Find the pattern dimension with the pattern specifications
found_pattern_dim <- NULL
for (pattern_dim in pattern_dims) {
# Check all specifications in pattern_dim are valid
dat <- datasets <- dim_params[[pattern_dim]]
if (is.null(dat) || !(is.character(dat) && all(nchar(dat) > 0)) && !is.list(dat)) {
stop(paste0("Parameter '", pattern_dim,
"' must be a list of lists with pattern specifications or a vector of character strings."))
}
if (!is.null(dim_reorder_params[[pattern_dim]])) {
.warning(paste0("A reorder for the selectors of '", pattern_dim,
"' has been specified, but it is a pattern dimension and the reorder will be ignored."))
}
if (is.null(found_pattern_dim)) {
found_pattern_dim <- pattern_dim
} else {
stop("Found more than one pattern dim with pattern specifications (list of lists). One and only one pattern dim must contain pattern specifications.")
}
}
}
if (is.null(found_pattern_dim)) {
.warning(paste0("Could not find any pattern dim with explicit data set descriptions (in the form of list of lists). Taking the first pattern dim, '", pattern_dims[1], "', as dimension with pattern specifications."))
found_pattern_dim <- pattern_dims[1]
}
# Check all *_reorder are NULL or functions, and that they all have
# a matching dimension param.
i <- 1
for (dim_reorder_param in dim_reorder_params) {
if (!is.function(dim_reorder_param)) {
stop("All '*_reorder' parameters must be functions.")
} else if (!any(grepl(paste0('^', strsplit(names(dim_reorder_params)[i],
'_reorder$')[[1]][1], '$'),
names(dim_params)))) {
stop(paste0("All '*_reorder' parameters must be associated to a dimension parameter. Found parameter '",
names(dim_reorder_params)[i], "' but no parameter '",
strsplit(names(dim_reorder_params)[i], '_reorder$')[[1]][1], "'."))
#} else if (!any(grepl(paste0('^', strsplit(names(dim_reorder_params)[i],
# '_reorder$')[[1]][1], '$'),
# names(var_params)))) {
# stop(paste0("All '*_reorder' parameters must be associated to a dimension parameter associated to a ",
# "variable. Found parameter '", names(dim_reorder_params)[i], "' and dimension parameter '",
# strsplit(names(dim_reorder_params)[i], '_reorder$')[[1]][1], "' but did not find variable ",
# "parameter '", strsplit(names(dim_reorder_params)[i], '_reorder$')[[1]][1], "_var'."))
# Check all *_tolerance are NULL or vectors of character strings, and
# that they all have a matching dimension param.
i <- 1
for (tolerance_param in tolerance_params) {
if (!any(grepl(paste0('^', strsplit(names(tolerance_params)[i],
'_tolerance$')[[1]][1], '$'),
names(dim_params)))) {
stop(paste0("All '*_tolerance' parameters must be associated to a dimension parameter. Found parameter '",
names(tolerance_params)[i], "' but no parameter '",
strsplit(names(tolerance_params)[i], '_tolerance$')[[1]][1], "'."))
#} else if (!any(grepl(paste0('^', strsplit(names(tolerance_params)[i],
# '_tolerance$')[[1]][1], '$'),
# names(var_params)))) {
# stop(paste0("All '*_tolerance' parameters must be associated to a dimension parameter associated to a ",
# "variable. Found parameter '", names(tolerance_params)[i], "' and dimension parameter '",
# strsplit(names(tolerance_params)[i], '_tolerance$')[[1]][1], "' but did not find variable ",
# "parameter '", strsplit(names(tolerance_params)[i], '_tolerance$')[[1]][1], "_var'."))
}
i <- i + 1
}
# Make the keys of 'tolerance_params' to be the name of
# the corresponding dimension.
if (length(tolerance_params) < 1) {
tolerance_params <- NULL
} else {
names(tolerance_params) <- gsub('_tolerance$', '', names(tolerance_params))
}
# Check metadata_dims
if (!is.null(metadata_dims)) {
if (is.na(metadata_dims)) {
metadata_dims <- NULL
} else if (!is.character(metadata_dims) || (length(metadata_dims) < 1)) {
stop("Parameter 'metadata' dims must be a vector of at least one character string.")
}
} else {
metadata_dims <- pattern_dims
}
# Once the pattern dimension with dataset specifications is found,
# the variable 'dat' is mounted with the information of each
# dataset.
# Take only the datasets for the requested chunk
dats_to_take <- chunk_indices(length(dim_params[[found_pattern_dim]]),
chunks[[found_pattern_dim]]['chunk'],
chunks[[found_pattern_dim]]['n_chunks'],
found_pattern_dim)
dim_params[[found_pattern_dim]] <- dim_params[[found_pattern_dim]][dats_to_take]
dat <- datasets <- dim_params[[found_pattern_dim]]
dat_info_names <- c('name', 'path')#, 'nc_var_name', 'suffix', 'var_min', 'var_max', 'dimnames')
dat_to_fetch <- c()
dat_names <- c()
if (!is.list(dat)) {
dat <- as.list(dat)
} else {
if (!any(sapply(dat, is.list))) {
dat <- list(dat)
}
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}
for (i in 1:length(dat)) {
if (is.character(dat[[i]]) && length(dat[[i]]) == 1 && nchar(dat[[i]]) > 0) {
if (grepl('^(\\./|\\.\\./|/.*/|~/)', dat[[i]])) {
dat[[i]] <- list(path = dat[[i]])
} else {
dat[[i]] <- list(name = dat[[i]])
}
} else if (!is.list(dat[[i]])) {
stop(paste0("Parameter '", pattern_dim,
"' is incorrect. It must be a list of lists or character strings."))
}
#if (!(all(names(dat[[i]]) %in% dat_info_names))) {
# stop("Error: parameter 'dat' is incorrect. There are unrecognized components in the information of some of the datasets. Check 'dat' in ?Load for details.")
#}
if (!('name' %in% names(dat[[i]]))) {
dat[[i]][['name']] <- paste0('dat', i)
if (!('path' %in% names(dat[[i]]))) {
stop(paste0("Parameter '", found_pattern_dim,
"' is incorrect. A 'path' should be provided for each dataset if no 'name' is provided."))
}
} else if (!('path' %in% names(dat[[i]]))) {
dat_to_fetch <- c(dat_to_fetch, i)
}
#if ('path' %in% names(dat[[i]])) {
# if (!('nc_var_name' %in% names(dat[[i]]))) {
# dat[[i]][['nc_var_name']] <- '$var_name$'
# }
# if (!('suffix' %in% names(dat[[i]]))) {
# dat[[i]][['suffix']] <- ''
# }
# if (!('var_min' %in% names(dat[[i]]))) {
# dat[[i]][['var_min']] <- ''
# }
# if (!('var_max' %in% names(dat[[i]]))) {
# dat[[i]][['var_max']] <- ''
# }
#}
dat_names <- c(dat_names, dat[[i]][['name']])
}
if ((length(dat_to_fetch) > 0) && (length(dat_to_fetch) < length(dat))) {
.warning("'path' has been provided for some datasets. Any information in the configuration file related to these will be ignored.")
}
if (length(dat_to_fetch) > 0) {
stop("Specified only the name for some data sets, but not the path ",
"pattern. This option has not been yet implemented.")
}
# Reorder inner_dims_across_files (to make the keys be the file dimensions,
# and the values to be the inner dimensions that go across it).
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if (!is.null(inner_dims_across_files)) {
# Reorder: example, convert list(ftime = 'chunk', ensemble = 'member', xx = 'chunk')
# to list(chunk = c('ftime', 'xx'), member = 'ensemble')
new_idaf <- list()
for (i in names(inner_dims_across_files)) {
if (!(inner_dims_across_files[[i]] %in% names(new_idaf))) {
new_idaf[[inner_dims_across_files[[i]]]] <- i
} else {
new_idaf[[inner_dims_across_files[[i]]]] <- c(new_idaf[[inner_dims_across_files[[i]]]], i)
}
}
inner_dims_across_files <- new_idaf
}
# Check return_vars
if (is.null(return_vars)) {
return_vars <- list()
# if (length(var_params) > 0) {
# return_vars <- as.list(paste0(names(var_params), '_var'))
# } else {
# return_vars <- list()
# }
}
if (!is.list(return_vars)) {
stop("Parameter 'return_vars' must be a list or NULL.")
}
if (length(return_vars) > 0 && is.null(names(return_vars))) {
# names(return_vars) <- rep('', length(return_vars))
stop("Parameter 'return_vars' must be a named list.")
}
i <- 1
while (i <= length(return_vars)) {
# if (names(return_vars)[i] == '') {
# if (!(is.character(return_vars[[i]]) && (length(return_vars[[i]]) == 1))) {
# stop("The ", i, "th specification in 'return_vars' is malformed.")
# }
# if (!grepl('_var$', return_vars[[i]])) {
# stop("The ", i, "th specification in 'return_vars' is malformed.")
# }
# dim_name <- strsplit(return_vars[[i]], '_var$')[[1]][1]
# if (!(dim_name %in% names(var_params))) {
# stop("'", dim_name, "_var' requested in 'return_vars' but ",
# "no '", dim_name, "_var' specified in the .Load call.")
# }
# names(return_vars)[i] <- var_params[[dim_name]]
# return_vars[[i]] <- found_pattern_dim
# } else
if (length(return_vars[[i]]) > 0) {
if (!is.character(return_vars[[i]])) {
stop("The ", i, "th specification in 'return_vars' is malformed. It ",
"must be a vector of character strings of valid file dimension ",
"names.")
}
}
i <- i + 1
}
# Check synonims
if (!is.null(synonims)) {
error <- FALSE
if (!is.list(synonims)) {
error <- TRUE
}
for (synonim_entry in names(synonims)) {
if (!(synonim_entry %in% names(dim_params)) &&
!(synonim_entry %in% names(return_vars))) {
error <- TRUE
}
if (!is.character(synonims[[synonim_entry]]) ||
length(synonims[[synonim_entry]]) < 1) {
error <- TRUE
}
}
if (error) {
stop("Parameter 'synonims' must be a named list, where the names are ",
"a name of a requested dimension or variable and the values are ",
"vectors of character strings with at least one alternative name ",
" for each dimension or variable in 'synonims'.")
}
}
if (length(unique(names(synonims))) < length(names(synonims))) {
stop("There must not be repeated entries in 'synonims'.")
}
if (length(unique(unlist(synonims))) < length(unlist(synonims))) {
stop("There must not be repeated values in 'synonims'.")
}
# Make that all dims and vars have an entry in synonims, even if only dim_name = dim_name
dim_entries_to_add <- which(!(names(dim_params) %in% names(synonims)))
if (length(dim_entries_to_add) > 0) {
synonims[names(dim_params)[dim_entries_to_add]] <- as.list(names(dim_params)[dim_entries_to_add])
}
var_entries_to_add <- which(!(names(var_params) %in% names(synonims)))
if (length(var_entries_to_add) > 0) {
synonims[names(var_params)[var_entries_to_add]] <- as.list(names(var_params)[var_entries_to_add])
}
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# Check selector_checker
if (is.null(selector_checker) || !is.function(selector_checker)) {
stop("Parameter 'selector_checker' must be a function.")
}
# Check file_opener
if (is.null(file_opener) || !is.function(file_opener)) {
stop("Parameter 'file_opener' must be a function.")
}
# Check file_var_reader
if (!is.null(file_var_reader) && !is.function(file_var_reader)) {
stop("Parameter 'file_var_reader' must be a function.")
}
# Check file_dim_reader
if (!is.null(file_dim_reader) && !is.function(file_dim_reader)) {
stop("Parameter 'file_dim_reader' must be a function.")
}
# Check file_data_reader
if (is.null(file_data_reader) || !is.function(file_data_reader)) {
stop("Parameter 'file_data_reader' must be a function.")
}
# Check file_closer
if (is.null(file_closer) || !is.function(file_closer)) {
stop("Parameter 'file_closer' must be a function.")
}
# Check transform
if (!is.null(transform)) {
if (!is.function(transform)) {
stop("Parameter 'transform' must be a function.")
}
}
# Check transform_params
if (!is.null(transform_params)) {
if (!is.list(transform_params)) {
stop("Parameter 'transform_params' must be a list.")
}
if (is.null(names(transform_params))) {
stop("Parameter 'transform_params' must be a named list.")
}
}
# Check transform_vars
if (!is.null(transform_vars)) {
if (!is.character(transform_vars)) {
stop("Parameter 'transform_vars' must be a vector of character strings.")
}
}
if (any(!(transform_vars %in% names(return_vars)))) {
stop("All the variables specified in 'transform_vars' must also be specified in 'return_vars'.")
}
# Check apply_indices_after_transform
if (!is.logical(apply_indices_after_transform)) {
stop("Parameter 'apply_indices_after_transform' must be either TRUE or FALSE.")
# Check transform_extra_cells
if (!is.numeric(transform_extra_cells)) {
stop("Parameter 'transform_extra_cells' must be numeric.")
}
transform_extra_cells <- round(transform_extra_cells)
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# Check split_multiselected_dims
if (!is.logical(split_multiselected_dims)) {
stop("Parameter 'split_multiselected_dims' must be TRUE or FALSE.")
}
# Check path_glob_permissive
if (!is.numeric(path_glob_permissive) && !is.logical(path_glob_permissive)) {
stop("Parameter 'path_glob_permissive' must be TRUE, FALSE or an integer.")
}
if (length(path_glob_permissive) != 1) {
stop("Parameter 'path_glob_permissive' must be of length 1.")
}
# Check retrieve
if (!is.logical(retrieve)) {
stop("Parameter 'retrieve' must be TRUE or FALSE.")
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# Check num_procs
if (!is.null(num_procs)) {
if (!is.numeric(num_procs)) {
stop("Parameter 'num_procs' must be numeric.")
} else {
num_procs <- round(num_procs)
}
}
# Check silent
if (!is.logical(silent)) {
stop("Parameter 'silent' must be logical.")
}
dim_params[[found_pattern_dim]] <- dat_names
if (!silent) {
.message(paste0("Exploring files... This will take a variable amount ",
"of time depending on the issued request and the ",
"performance of the file server..."))
}
if (!is.character(debug)) {
dims_to_check <- c('time')
} else {
dims_to_check <- debug
debug <- TRUE
}
############################## READING FILE DIMS ############################
# Check that no unrecognized variables are present in the path patterns
# and also that no file dimensions are requested to THREDDs catalogs.
# And in the mean time, build all the work pieces and look for the
# first available file of each dataset.
array_of_files_to_load <- NULL
array_of_not_found_files <- NULL
indices_of_first_files_with_data <- vector('list', length(dat))
selectors_of_first_files_with_data <- vector('list', length(dat))
dataset_has_files <- rep(FALSE, length(dat))
found_file_dims <- vector('list', length(dat))
expected_inner_dims <- vector('list', length(dat))
#print("A")
for (i in 1:length(dat)) {
#print("B")
dat_selectors <- dim_params
dat_selectors[[found_pattern_dim]] <- dat_selectors[[found_pattern_dim]][i]
dim_vars <- paste0('$', dim_names, '$')
file_dims <- which(sapply(dim_vars, grepl, dat[[i]][['path']], fixed = TRUE))
if (length(file_dims) > 0) {
file_dims <- dim_names[file_dims]
}
file_dims <- unique(c(pattern_dims, file_dims))
found_file_dims[[i]] <- file_dims
expected_inner_dims[[i]] <- dim_names[which(!(dim_names %in% file_dims))]
# (Check the depending_file_dims).
if (any(c(names(depending_file_dims), unlist(depending_file_dims)) %in%
expected_inner_dims[[i]])) {
stop(paste0("The dimension dependancies specified in ",
"'depending_file_dims' can only be between file ",
"dimensions, but some inner dimensions found in ",
"dependancies for '", dat[[i]][['name']], "', which ",
"has the following file dimensions: ",
paste(paste0("'", file_dims, "'"), collapse = ', '), "."))
} else {
a <- names(depending_file_dims) %in% file_dims
b <- unlist(depending_file_dims) %in% file_dims
ab <- a & b
if (any(!ab)) {
.warning(paste0("Detected some dependancies in 'depending_file_dims' with ",
"non-existing dimension names. These will be disregarded."))
depending_file_dims <- depending_file_dims[-which(!ab)]
}
if (any(names(depending_file_dims) == unlist(depending_file_dims))) {
depending_file_dims <- depending_file_dims[-which(names(depending_file_dims) == unlist(depending_file_dims))]
}
}
# (Check the inner_dims_across_files).
if (any(!(names(inner_dims_across_files) %in% file_dims)) ||
any(!(unlist(inner_dims_across_files) %in% expected_inner_dims[[i]]))) {
stop(paste0("All relationships specified in ",
"dimension and a file dimension. Found wrong ",
"specification for '", dat[[i]][['name']], "', which ",
"has the following file dimensions: ",
paste(paste0("'", file_dims, "'"), collapse = ', '),
", and the following inner dimensions: ",
paste(paste0("'", expected_inner_dims[[i]], "'"),
collapse = ', '), "."))
}
# (Check the return_vars).
j <- 1
while (j <= length(return_vars)) {
if (any(!(return_vars[[j]] %in% file_dims))) {
if (any(return_vars[[j]] %in% expected_inner_dims[[i]])) {
stop("Found variables in 'return_vars' requested ",
"for some inner dimensions (for dataset '",
dat[[i]][['name']], "'), but variables can only be ",
"requested for file dimensions.")
} else {
stop("Found variables in 'return_vars' requested ",
"for non-existing dimensions.")
}
}
j <- j + 1
}
if (!is.null(metadata_dims)) {
if (any(!(metadata_dims %in% file_dims))) {
stop("All dimensions in 'metadata_dims' must be file dimensions.")
}
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## Look for _var params that should be requested automatically.
for (dim_name in dim_names) {
if (!(dim_name %in% pattern_dims)) {
if (is.null(attr(dat_selectors[[dim_name]], 'values')) ||
is.null(attr(dat_selectors[[dim_name]], 'indices'))) {
flag <- ((dat_selectors[[dim_name]] %in% c('all', 'first', 'last')) ||
(is.numeric(unlist(dat_selectors[[dim_name]]))))
attr(dat_selectors[[dim_name]], 'values') <- !flag
attr(dat_selectors[[dim_name]], 'indices') <- flag
}
## The following code 'rewrites' var_params for all datasets. If providing different
## path pattern repositories with different file/inner dimensions, var_params might
## have to be handled for each dataset separately.
if ((attr(dat_selectors[[dim_name]], 'values') || (dim_name %in% c('var', 'variable'))) &&
!(dim_name %in% names(var_params)) && !(dim_name %in% file_dims)) {
if (dim_name %in% c('var', 'variable')) {
var_params <- c(var_params, setNames(list('var_names'), dim_name))
.warning(paste0("Found specified values for dimension '", dim_name, "' but no '",
dim_name, "_var' requested. ", '"', dim_name, "_var = '",
'var_names', "'", '"', " has been automatically added to ",
"the Start call."))
} else {
var_params <- c(var_params, setNames(list(dim_name), dim_name))
.warning(paste0("Found specified values for dimension '", dim_name, "' but no '",
dim_name, "_var' requested. ", '"', dim_name, "_var = '",
dim_name, "'", '"', " has been automatically added to ",
"the Start call."))
}
}
}
}
## (Check the *_var parameters).
if (any(!(unlist(var_params) %in% names(return_vars)))) {
Nicolau Manubens
committed
vars_to_add <- which(!(unlist(var_params) %in% names(return_vars)))
new_return_vars <- vector('list', length(vars_to_add))
names(new_return_vars) <- unlist(var_params)[vars_to_add]
Nicolau Manubens
committed
return_vars <- c(return_vars, new_return_vars)
.warning(paste0("All '*_var' params must associate a dimension to one of the ",
"requested variables in 'return_vars'. The following variables",
" have been added to 'return_vars': ",
paste(paste0("'", unlist(var_params), "'"), collapse = ', ')))
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replace_values <- vector('list', length = length(file_dims))
names(replace_values) <- file_dims
# Take the first selector for all possible file dimensions
for (file_dim in file_dims) {
if (file_dim %in% names(var_params)) {
.warning(paste0("The '", file_dim, "_var' param will be ignored since '",
file_dim, "' is a file dimension (for the dataset with pattern ",
dat[[i]][['path']], ")."))
}
if (!is.list(dat_selectors[[file_dim]]) ||
(is.list(dat_selectors[[file_dim]]) &&
length(dat_selectors[[file_dim]]) == 2 &&
is.null(names(dat_selectors[[file_dim]])))) {
dat_selectors[[file_dim]] <- list(dat_selectors[[file_dim]])
}
first_class <- class(dat_selectors[[file_dim]][[1]])
first_length <- length(dat_selectors[[file_dim]][[1]])
for (j in 1:length(dat_selectors[[file_dim]])) {
sv <- selector_vector <- dat_selectors[[file_dim]][[j]]
if (!identical(first_class, class(sv)) ||
!identical(first_length, length(sv))) {
stop("All provided selectors for depending dimensions must ",
"be vectors of the same length and of the same class.")
}
if (is.character(sv) && !((length(sv) == 1) && (sv[1] %in% c('all', 'first', 'last')))) {
dat_selectors[[file_dim]][[j]] <- selector_checker(selectors = sv,
return_indices = FALSE)
# Take chunk if needed
dat_selectors[[file_dim]][[j]] <- dat_selectors[[file_dim]][[j]][chunk_indices(length(dat_selectors[[file_dim]][[j]]),
chunks[[file_dim]]['chunk'],
chunks[[file_dim]]['n_chunks'],
file_dim)]
} else if (!(is.numeric(sv) ||
(is.character(sv) && (length(sv) == 1) && (sv %in% c('all', 'first', 'last'))) ||
(is.list(sv) && (length(sv) == 2) && (all(sapply(sv, is.character)) ||
all(sapply(sv, is.numeric)))))) {
stop("All explicitly provided selectors for file dimensions must be character strings.")
}
}
sv <- dat_selectors[[file_dim]][[1]]
if (is.character(sv) && !((length(sv) == 1) && (sv[1] %in% c('all', 'first', 'last')))) {
replace_values[[file_dim]] <- dat_selectors[[file_dim]][[1]][1]
}
}
#print("C")
# Now we know which dimensions whose selectors are provided non-explicitly.
undefined_file_dims <- file_dims[which(sapply(replace_values, is.null))]
defined_file_dims <- file_dims[which(!(file_dims %in% undefined_file_dims))]
# Quickly check if the depending dimensions are provided properly.
for (file_dim in file_dims) {
if (file_dim %in% names(depending_file_dims)) {
## TODO: Detect multi-dependancies and forbid.
if (all(c(file_dim, depending_file_dims[[file_dim]]) %in% defined_file_dims)) {
if (length(dat_selectors[[file_dim]]) != length(dat_selectors[[depending_file_dims[[file_dim]]]][[1]])) {
stop(paste0("If providing selectors for the depending ",
"dimension '", file_dim, "', a ",
"vector of selectors must be provided for ",
depending_file_dims[[file_dim]], "'."))
} else if (!all(names(dat_selectors[[file_dim]]) == dat_selectors[[depending_file_dims[[file_dim]]]][[1]])) {
stop(paste0("If providing selectors for the depending ",
"dimension '", file_dim, "', the name of the ",
"provided vectors of selectors must match ",
"exactly the selectors of the dimension it ",
"depends on, '", depending_file_dims[[file_dim]], "'."))
}
}
}
}
# Find the possible values for the selectors that are provided as
# indices. If the requested file is on server, impossible operation.
if (length(grep("^http", dat[[i]][['path']])) > 0) {
if (length(undefined_file_dims) > 0) {
stop(paste0("All selectors for the file dimensions must be ",
"character strings if requesting data to a remote ",
"server. Found invalid selectors for the file dimensions ",
paste(paste0("'", undefined_file_dims, "'"), collapse = ', '), "."))
}
dataset_has_files[i] <- TRUE
} else {
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# Iterate over the known dimensions to find the first existing file.
# The path to the first existing file will be used to find the
# values for the non explicitly defined selectors.
first_file <- NULL
first_file_selectors <- NULL
if (length(undefined_file_dims) > 0) {
replace_values[undefined_file_dims] <- '*'
}
## TODO: What if length of defined_file_dims is 0? code might crash (in practice it worked for an example case)
files_to_check <- sapply(dat_selectors[defined_file_dims], function(x) length(x[[1]]))
sub_array_of_files_to_check <- array(1:prod(files_to_check), dim = files_to_check)
j <- 1
#print("D")
while (j <= prod(files_to_check) && is.null(first_file)) {
selector_indices <- which(sub_array_of_files_to_check == j, arr.ind = TRUE)[1, ]
selectors <- sapply(1:length(defined_file_dims),
function (x) {
vector_to_pick <- 1
if (defined_file_dims[x] %in% names(depending_file_dims)) {
vector_to_pick <- selector_indices[which(defined_file_dims == depending_file_dims[[defined_file_dims[x]]])]
}
dat_selectors[defined_file_dims][[x]][[vector_to_pick]][selector_indices[x]]
})
replace_values[defined_file_dims] <- selectors
file_path <- .ReplaceVariablesInString(dat[[i]][['path']], replace_values)
file_path <- Sys.glob(file_path)
if (length(file_path) > 0) {
first_file <- file_path[1]
first_file_selectors <- selectors
}
j <- j + 1
}
#print("E")
# Start looking for values for the non-explicitly defined selectors.
if (is.null(first_file)) {
.warning(paste0("No found files for the datset '", dat[[i]][['name']],
"'. Provide existing selectors for the file dimensions ",
" or check and correct its path pattern: ", dat[[i]][['path']]))
} else {
dataset_has_files[i] <- TRUE
## TODO: Improve message here if no variable found:
if (length(undefined_file_dims) > 0) {
# Looking for the first values, parsed from first_file.
first_values <- vector('list', length = length(undefined_file_dims))
names(first_values) <- undefined_file_dims
found_values <- 0
stop <- FALSE
try_dim <- 1
last_success <- 1
while ((found_values < length(undefined_file_dims)) && !stop) {
u_file_dim <- undefined_file_dims[try_dim]
if (is.null(first_values[[u_file_dim]])) {
path_with_globs_and_tag <- .ReplaceVariablesInString(dat[[i]][['path']],
replace_values[-which(file_dims == u_file_dim)],
allow_undefined_key_vars = TRUE)
found_value <- .FindTagValue(path_with_globs_and_tag,
first_file, u_file_dim)
if (!is.null(found_value)) {
found_values <- found_values + 1
last_success <- try_dim
first_values[[u_file_dim]] <- found_value
replace_values[[u_file_dim]] <- found_value
}
}
try_dim <- (try_dim %% length(undefined_file_dims)) + 1
if (try_dim == last_success) {
stop <- TRUE
}
}
if (found_values < length(undefined_file_dims)) {
stop(paste0("Path pattern of dataset '", dat[[i]][['name']],
"' is too complex. Could not automatically ",
"detect values for all non-explicitly defined ",
"indices. Check its pattern: ", dat[[i]][['path']]))
}
## TODO: Replace ReplaceGlobExpressions by looped call to FindTagValue? As done above
## Maybe it can solve more cases actually. I got warnings in ReplGlobExp with a typical
## cmor case, requesting all members and chunks for fixed var and sdate. Not fixing
## sdate raised 'too complex' error.
# Replace shell globs in path pattern and keep the file_dims as tags
dat[[i]][['path']] <- .ReplaceGlobExpressions(dat[[i]][['path']], first_file, replace_values,
file_dims, dat[[i]][['name']], path_glob_permissive)
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# Now time to look for the available values for the non
# explicitly defined selectors for the file dimensions.
#print("H")
# Check first the ones that do not depend on others.
ufd <- c(undefined_file_dims[which(!(undefined_file_dims %in% names(depending_file_dims)))],
undefined_file_dims[which(undefined_file_dims %in% names(depending_file_dims))])
for (u_file_dim in ufd) {
replace_values[undefined_file_dims] <- first_values
replace_values[[u_file_dim]] <- '*'
depended_dim <- NULL
depended_dim_values <- NA
selectors <- dat_selectors[[u_file_dim]][[1]]
if (u_file_dim %in% names(depending_file_dims)) {
depended_dim <- depending_file_dims[[u_file_dim]]
depended_dim_values <- dat_selectors[[depended_dim]][[1]]
dat_selectors[[u_file_dim]] <- vector('list', length = length(depended_dim_values))
names(dat_selectors[[u_file_dim]]) <- depended_dim_values
} else {
dat_selectors[[u_file_dim]] <- list()
}
if (u_file_dim %in% unlist(depending_file_dims)) {
depending_dims <- names(depending_file_dims)[which(sapply(depending_file_dims, function(x) u_file_dim %in% x))]
replace_values[depending_dims] <- rep('*', length(depending_dims))
}
for (j in 1:length(depended_dim_values)) {
parsed_values <- c()
if (!is.null(depended_dim)) {
replace_values[[depended_dim]] <- depended_dim_values[j]
}
path_with_globs <- .ReplaceVariablesInString(dat[[i]][['path']], replace_values)
found_files <- Sys.glob(path_with_globs)
## TODO: Enhance this error message, or change by warning.
## Raises if a wrong sdate is specified, for example.
if (length(found_files) == 0) {
.warning(paste0("Could not find files for any '", u_file_dim,
"' for '", depended_dim, "' = '",
depended_dim_values[j], "'."))
dat_selectors[[u_file_dim]][[j]] <- NA
} else {
for (found_file in found_files) {
path_with_globs_and_tag <- .ReplaceVariablesInString(dat[[i]][['path']],
replace_values[-which(file_dims == u_file_dim)],
allow_undefined_key_vars = TRUE)
parsed_values <- c(parsed_values,
.FindTagValue(path_with_globs_and_tag, found_file,
u_file_dim))
}
dat_selectors[[u_file_dim]][[j]] <- selector_checker(selectors = selectors,
var = unique(parsed_values),
return_indices = FALSE)
# Take chunk if needed
dat_selectors[[u_file_dim]][[j]] <- dat_selectors[[u_file_dim]][[j]][chunk_indices(length(dat_selectors[[u_file_dim]][[j]]),
chunks[[u_file_dim]]['chunk'],
chunks[[u_file_dim]]['n_chunks'],
u_file_dim)]
}
}
}
#print("I")
} else {
dat[[i]][['path']] <- .ReplaceGlobExpressions(dat[[i]][['path']], first_file, replace_values,
defined_file_dims, dat[[i]][['name']], path_glob_permissive)
}
}
}
# Now fetch for the first available file
if (dataset_has_files[i]) {
known_dims <- file_dims
} else {
known_dims <- defined_file_dims
}
replace_values <- vector('list', length = length(known_dims))
names(replace_values) <- known_dims
files_to_load <- sapply(dat_selectors[known_dims], function(x) length(x[[1]]))
files_to_load[found_pattern_dim] <- 1
sub_array_of_files_to_load <- array(1:prod(files_to_load),
dim = files_to_load)
names(dim(sub_array_of_files_to_load)) <- known_dims
sub_array_of_not_found_files <- array(!dataset_has_files[i],
dim = files_to_load)
names(dim(sub_array_of_not_found_files)) <- known_dims
selector_indices_save <- vector('list', prod(files_to_load))
while (j <= prod(files_to_load)) {
selector_indices <- which(sub_array_of_files_to_load == j, arr.ind = TRUE)[1, ]
names(selector_indices) <- known_dims
selector_indices_save[[j]] <- selector_indices
selectors <- sapply(1:length(known_dims),
function (x) {
vector_to_pick <- 1
if (known_dims[x] %in% names(depending_file_dims)) {
vector_to_pick <- selector_indices[which(known_dims == depending_file_dims[[known_dims[x]]])]
}
dat_selectors[known_dims][[x]][[vector_to_pick]][selector_indices[x]]
})
names(selectors) <- known_dims
replace_values[known_dims] <- selectors
if (!dataset_has_files[i]) {
if (any(is.na(selectors))) {
replace_values <- replace_values[-which(names(replace_values) %in% names(selectors[which(is.na(selectors))]))]
}
file_path <- .ReplaceVariablesInString(dat[[i]][['path']], replace_values, TRUE)
sub_array_of_files_to_load[j] <- file_path
#sub_array_of_not_found_files[j] <- TRUE???
} else {
if (any(is.na(selectors))) {
replace_values <- replace_values[-which(names(replace_values) %in% names(selectors[which(is.na(selectors))]))]
file_path <- .ReplaceVariablesInString(dat[[i]][['path']], replace_values, TRUE)
sub_array_of_files_to_load[j] <- file_path
sub_array_of_not_found_files[j] <- TRUE
} else {
file_path <- .ReplaceVariablesInString(dat[[i]][['path']], replace_values)
if (!(length(grep("^http", file_path)) > 0)) {
if (grepl(file_path, '*', fixed = TRUE)) {
file_path_full <- Sys.glob(file_path)[1]
if (nchar(file_path_full) > 0) {
file_path <- file_path_full
}
}
}
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sub_array_of_files_to_load[j] <- file_path
if (is.null(indices_of_first_files_with_data[[i]])) {
if (!(length(grep("^http", file_path)) > 0)) {
if (!file.exists(file_path)) {
file_path <- NULL
}
}
if (!is.null(file_path)) {
test_file <- NULL
## TODO: suppress error messages
test_file <- file_opener(file_path)
if (!is.null(test_file)) {
selector_indices[which(known_dims == found_pattern_dim)] <- i
indices_of_first_files_with_data[[i]] <- selector_indices
selectors_of_first_files_with_data[[i]] <- selectors
file_closer(test_file)
}
}
}
}
}
j <- j + 1
}
# Extend array as needed progressively
if (is.null(array_of_files_to_load)) {
array_of_files_to_load <- sub_array_of_files_to_load
array_of_not_found_files <- sub_array_of_not_found_files
} else {
array_of_files_to_load <- .MergeArrays(array_of_files_to_load, sub_array_of_files_to_load,
along = found_pattern_dim)
## TODO: file_dims, and variables like that.. are still ok now? I don't think so
array_of_not_found_files <- .MergeArrays(array_of_not_found_files, sub_array_of_not_found_files,
along = found_pattern_dim)
}
dat[[i]][['selectors']] <- dat_selectors
}
if (all(sapply(indices_of_first_files_with_data, is.null))) {
stop("No data files found for any of the specified datasets.")
}
########################### READING INNER DIMS. #############################
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#print("J")
## TODO: To be run in parallel (local multi-core)
# Now time to work out the inner file dimensions.
# First pick the requested variables.
dims_to_iterate <- NULL
for (return_var in names(return_vars)) {
dims_to_iterate <- unique(c(dims_to_iterate, return_vars[[return_var]]))
}
if (found_pattern_dim %in% dims_to_iterate) {
dims_to_iterate <- dims_to_iterate[-which(dims_to_iterate == found_pattern_dim)]
}
common_return_vars <- NULL
common_first_found_file <- NULL
common_return_vars_pos <- NULL
if (length(return_vars) > 0) {
common_return_vars_pos <- which(sapply(return_vars, function(x) !(found_pattern_dim %in% x)))
}
if (length(common_return_vars_pos) > 0) {
common_return_vars <- return_vars[common_return_vars_pos]
return_vars <- return_vars[-common_return_vars_pos]
common_first_found_file <- rep(FALSE, length(which(sapply(common_return_vars, length) == 0)))
names(common_first_found_file) <- names(common_return_vars[which(sapply(common_return_vars, length) == 0)])
}
return_vars <- lapply(return_vars,
function(x) {
if (found_pattern_dim %in% x) {
x[-which(x == found_pattern_dim)]
} else {
x
}
})
if (length(common_return_vars) > 0) {
picked_common_vars <- vector('list', length = length(common_return_vars))
names(picked_common_vars) <- names(common_return_vars)
} else {
picked_common_vars <- NULL
}
picked_common_vars_ordered <- picked_common_vars
picked_common_vars_unorder_indices <- picked_common_vars
picked_vars <- vector('list', length = length(dat))
names(picked_vars) <- dat_names
picked_vars_ordered <- picked_vars
picked_vars_unorder_indices <- picked_vars
for (i in 1:length(dat)) {
if (dataset_has_files[i]) {
# Put all selectors in a list of a single list/vector of selectors.
# The dimensions that go across files will later be extended to have
# lists of lists/vectors of selectors.
for (inner_dim in expected_inner_dims[[i]]) {
if (!is.list(dat[[i]][['selectors']][[inner_dim]]) ||
(is.list(dat[[i]][['selectors']][[inner_dim]]) &&
length(dat[[i]][['selectors']][[inner_dim]]) == 2 &&
is.null(names(dat[[i]][['selectors']][[inner_dim]])))) {
dat[[i]][['selectors']][[inner_dim]] <- list(dat[[i]][['selectors']][[inner_dim]])
}
}
if (length(return_vars) > 0) {
picked_vars[[i]] <- vector('list', length = length(return_vars))
names(picked_vars[[i]]) <- names(return_vars)
picked_vars_ordered[[i]] <- picked_vars[[i]]
picked_vars_unorder_indices[[i]] <- picked_vars[[i]]
}
indices_of_first_file <- as.list(indices_of_first_files_with_data[[i]])
array_file_dims <- sapply(dat[[i]][['selectors']][found_file_dims[[i]]], function(x) length(x[[1]]))
names(array_file_dims) <- found_file_dims[[i]]
if (length(dims_to_iterate) > 0) {
indices_of_first_file[dims_to_iterate] <- lapply(array_file_dims[dims_to_iterate], function(x) 1:x)
}
array_of_var_files <- do.call('[', c(list(x = array_of_files_to_load), indices_of_first_file, list(drop = FALSE)))
array_of_var_indices <- array(1:length(array_of_var_files), dim = dim(array_of_var_files))
array_of_not_found_var_files <- do.call('[', c(list(x = array_of_not_found_files), indices_of_first_file, list(drop = FALSE)))
previous_indices <- rep(-1, length(indices_of_first_file))
names(previous_indices) <- names(indices_of_first_file)
first_found_file <- NULL
if (length(return_vars) > 0) {
first_found_file <- rep(FALSE, length(which(sapply(return_vars, length) == 0)))
names(first_found_file) <- names(return_vars[which(sapply(return_vars, length) == 0)])
}
for (j in 1:length(array_of_var_files)) {
current_indices <- which(array_of_var_indices == j, arr.ind = TRUE)[1, ]
names(current_indices) <- names(indices_of_first_file)
if (!is.na(array_of_var_files[j]) && !array_of_not_found_var_files[j]) {
changed_dims <- which(current_indices != previous_indices)
vars_to_read <- NULL
if (length(return_vars) > 0) {
vars_to_read <- names(return_vars)[sapply(return_vars, function(x) any(names(changed_dims) %in% x))]
}
if (!is.null(first_found_file)) {
if (any(!first_found_file)) {
vars_to_read <- c(vars_to_read, names(first_found_file[which(!first_found_file)]))
}
}
if ((i == 1) && (length(common_return_vars) > 0)) {
vars_to_read <- c(vars_to_read, names(common_return_vars)[sapply(common_return_vars, function(x) any(names(changed_dims) %in% x))])
}
if (!is.null(common_first_found_file)) {
if (any(!common_first_found_file)) {
vars_to_read <- c(vars_to_read, names(common_first_found_file[which(!common_first_found_file)]))
}
}
file_object <- file_opener(array_of_var_files[j])
if (!is.null(file_object)) {
for (var_to_read in vars_to_read) {
if (var_to_read %in% unlist(var_params)) {
associated_dim_name <- names(var_params)[which(unlist(var_params) == var_to_read)]
var_name_to_reader <- var_to_read
names(var_name_to_reader) <- 'var'
var_dims <- file_dim_reader(NULL, file_object, var_name_to_reader, NULL,
synonims)
# file_dim_reader returns dimension names as found in the file.
# Need to translate accoridng to synonims:
names(var_dims) <- sapply(names(var_dims),
function(x) {
which_entry <- which(sapply(synonims, function(y) x %in% y))
if (length(which_entry) > 0) {
names(synonims)[which_entry]
} else {
x
}
})
if (!is.null(var_dims)) {
var_file_dims <- NULL
if (var_to_read %in% names(common_return_vars)) {
var_to_check <- common_return_vars[[var_to_read]]
var_to_check <- return_vars[[var_to_read]]
if (any(names(dim(array_of_files_to_load)) %in% var_to_check)) {
var_file_dims <- dim(array_of_files_to_load)[which(names(dim(array_of_files_to_load)) %in%
var_to_check)]
}
if (((var_to_read %in% names(common_return_vars)) &&
is.null(picked_common_vars[[var_to_read]])) ||
((var_to_read %in% names(return_vars)) &&
is.null(picked_vars[[i]][[var_to_read]]))) {
if (any(names(var_file_dims) %in% names(var_dims))) {
stop("Found a requested var in 'return_var' requested for a ",
"file dimension which also appears in the dimensions of ",
"the variable inside the file.\n", array_of_var_files[j])
special_types <- list('POSIXct' = as.POSIXct, 'POSIXlt' = as.POSIXlt,
'Date' = as.Date)
first_sample <- file_var_reader(NULL, file_object, NULL,
var_to_read, synonims)
if (any(class(first_sample) %in% names(special_types))) {
array_size <- prod(c(var_file_dims, var_dims))
new_array <- rep(special_types[[class(first_sample)[1]]](NA), array_size)
dim(new_array) <- c(var_file_dims, var_dims)
} else {
new_array <- array(dim = c(var_file_dims, var_dims))
attr(new_array, 'variables') <- attr(first_sample, 'variables')
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if (var_to_read %in% names(common_return_vars)) {
picked_common_vars[[var_to_read]] <- new_array
pick_ordered <- FALSE
if (var_to_read %in% unlist(var_params)) {
if (associated_dim_name %in% names(dim_reorder_param) && !aiat) {
picked_common_vars_ordered[[var_to_read]] <- new_array
pick_ordered <- TRUE
}
}
if (!pick_ordered) {
picked_common_vars_ordered[[var_to_read]] <- NULL
}
} else {
picked_vars[[i]][[var_to_read]] <- new_array
pick_ordered <- FALSE
if (var_to_read %in% unlist(var_params)) {
if (associated_dim_name %in% names(dim_reorder_params) && !aiat) {
picked_vars_ordered[[i]][[var_to_read]] <- new_array
pick_ordered <- TRUE
}
}
if (!pick_ordered) {
picked_vars_ordered[[i]][[var_to_read]] <- NULL
} else {
if (var_to_read %in% names(common_return_vars)) {
array_var_dims <- dim(picked_common_vars[[var_to_read]])
} else {
array_var_dims <- dim(picked_vars[[i]][[var_to_read]])
}
full_array_var_dims <- array_var_dims
if (any(names(array_var_dims) %in% names(var_file_dims))) {
array_var_dims <- array_var_dims[-which(names(array_var_dims) %in% names(var_file_dims))]
}
if (names(array_var_dims) != names(var_dims)) {
stop("Error while reading the variable '", var_to_read, "' from ",
"the file. Dimensions do not match.\nExpected ",
paste(paste0("'", names(array_var_dims), "'"),
collapse = ', '), " but found ",
paste(paste0("'", names(var_dims), "'"),
collapse = ', '), ".\n", array_of_var_files[j])
}
if (any(var_dims > array_var_dims)) {
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longer_dims <- which(var_dims > array_var_dims)
if (length(longer_dims) == 1) {
longer_dims_in_full_array <- longer_dims
if (any(names(full_array_var_dims) %in% names(var_file_dims))) {
candidates <- (1:length(full_array_var_dims))[-which(names(full_array_var_dims) %in% names(var_file_dims))]
longer_dims_in_full_array <- candidates[longer_dims]
}
padding_dims <- full_array_var_dims
padding_dims[longer_dims_in_full_array] <- var_dims[longer_dims] -
array_var_dims[longer_dims]
special_types <- list('POSIXct' = as.POSIXct, 'POSIXlt' = as.POSIXlt,
'Date' = as.Date)
if (var_to_read %in% names(common_return_vars)) {
var_class <- class(picked_common_vars[[var_to_read]])
} else {
var_class <- class(picked_vars[[i]][[var_to_read]])
}
if (any(var_class %in% names(special_types))) {
padding_size <- prod(padding_dims)
padding <- rep(special_types[[var_class[1]]](NA), padding_size)
dim(padding) <- padding_dims
} else {
padding <- array(dim = padding_dims)
}
if (var_to_read %in% names(common_return_vars)) {
picked_common_vars[[var_to_read]] <- .abind2(
picked_common_vars[[var_to_read]],
padding,
names(full_array_var_dims)[longer_dims_in_full_array]
)
} else {
picked_vars[[i]][[var_to_read]] <- .abind2(
picked_vars[[i]][[var_to_read]],
padding,
names(full_array_var_dims)[longer_dims_in_full_array]
)
}
} else {
stop("Error while reading the variable '", var_to_read, "' from ",
"the file. Found size (", paste(var_dims, collapse = ' x '),
") is greater than expected maximum size (",
array_var_dims, ").")
}
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}
}
var_store_indices <- c(as.list(current_indices[names(var_file_dims)]), lapply(var_dims, function(x) 1:x))
var_values <- file_var_reader(NULL, file_object, NULL, var_to_read, synonims)
if (var_to_read %in% unlist(var_params)) {
if ((associated_dim_name %in% names(dim_reorder_params)) && !aiat) {
## Is this check really needed?
if (length(dim(var_values)) > 1) {
stop("Requested a '", associated_dim_name, "_reorder' for a dimension ",
"whose coordinate variable that has more than 1 dimension. This is ",
"not supported.")
}
ordered_var_values <- dim_reorder_params[[associated_dim_name]](var_values)
attr(ordered_var_values$x, 'variables') <- attr(var_values, 'variables')
if (!all(c('x', 'ix') %in% names(ordered_var_values))) {
stop("All the dimension reorder functions must return a list with the components 'x' and 'ix'.")
}
# Save the indices to reorder back the ordered variable values.
# This will be used to define the first round indices.
unorder <- sort(ordered_var_values$ix, index.return = TRUE)$ix
if (var_to_read %in% names(common_return_vars)) {
picked_common_vars_ordered[[var_to_read]] <- do.call('[<-',
c(list(x = picked_common_vars_ordered[[var_to_read]]),
var_store_indices,
list(value = ordered_var_values$x)))
picked_common_vars_unorder_indices[[var_to_read]] <- do.call('[<-',
c(list(x = picked_common_vars_unorder_indices[[var_to_read]]),
var_store_indices,
list(value = unorder)))
} else {
picked_vars_ordered[[i]][[var_to_read]] <- do.call('[<-',
c(list(x = picked_vars_ordered[[i]][[var_to_read]]),
var_store_indices,
list(value = ordered_var_values$x)))
picked_vars_unorder_indices[[i]][[var_to_read]] <- do.call('[<-',
c(list(x = picked_vars_unorder_indices[[i]][[var_to_read]]),
var_store_indices,
list(value = unorder)))
}
}
}
if (var_to_read %in% names(common_return_vars)) {
picked_common_vars[[var_to_read]] <- do.call('[<-',
c(list(x = picked_common_vars[[var_to_read]]),
var_store_indices,
list(value = var_values)))
picked_vars[[i]][[var_to_read]] <- do.call('[<-',
c(list(x = picked_vars[[i]][[var_to_read]]),
var_store_indices,
list(value = var_values)))
if (var_to_read %in% names(first_found_file)) {
first_found_file[var_to_read] <- TRUE
if (var_to_read %in% names(common_first_found_file)) {
common_first_found_file[var_to_read] <- TRUE
stop("Could not find variable '", var_to_read,
"' in the file ", array_of_var_files[j])
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}
}
previous_indices <- current_indices
}
}
}
# Once we have the variable values, we can work out the indices
# for the implicitly defined selectors.
#
# Trnasforms a vector of indices v expressed in a world of
# length N from 1 to N, into a world of length M, from
# 1 to M. Repeated adjacent indices are collapsed.
transform_indices <- function(v, n, m) {
#unique2 turns e.g. 1 1 2 2 2 3 3 1 1 1 into 1 2 3 1
unique2 <- function(v) {
if (length(v) < 2) {
v
} else {
v[c(1, v[2:length(v)] - v[1:(length(v) - 1)]) != 0]
}
}
unique2(round(((v - 1) / (n - 1)) * (m - 1))) + 1 # this rounding may generate 0s. what then?
}
beta <- transform_extra_cells
dims_to_crop <- vector('list')
transformed_vars <- vector('list', length = length(dat))
names(transformed_vars) <- dat_names
transformed_vars_ordered <- transformed_vars
transformed_vars_unorder_indices <- transformed_vars
transformed_common_vars <- NULL
transformed_common_vars_ordered <- NULL
transformed_common_vars_unorder_indices <- NULL
for (i in 1:length(dat)) {
if (dataset_has_files[i]) {
indices <- indices_of_first_files_with_data[[i]]
if (!is.null(indices)) {
file_path <- do.call("[", c(list(array_of_files_to_load), as.list(indices_of_first_files_with_data[[i]])))
# The following 5 lines should go several lines below, but were moved
# here for better performance.
# If any of the dimensions comes without defining variable, then we read
# the data dimensions.
if (length(unlist(var_params[expected_inner_dims[[i]]])) < length(expected_inner_dims[[i]])) {
file_to_open <- file_path
data_dims <- file_dim_reader(file_to_open, NULL, selectors_of_first_files_with_data[[i]],
lapply(dat[[i]][['selectors']][expected_inner_dims[[i]]], '[[', 1),
synonims)
# file_dim_reader returns dimension names as found in the file.
# Need to translate accoridng to synonims:
names(data_dims) <- sapply(names(data_dims),
function(x) {
which_entry <- which(sapply(synonims, function(y) x %in% y))
if (length(which_entry) > 0) {
names(synonims)[which_entry]
} else {
x
}
})
}
# Transform the variables if needed and keep them apart.
if (!is.null(transform) && (length(transform_vars) > 0)) {
if (!all(transform_vars %in% c(names(picked_vars[[i]]), names(picked_common_vars)))) {
stop("Could not find all the required variables in 'transform_vars' ",
"for the dataset '", dat[[i]][['name']], "'.")
}
vars_to_transform <- NULL
picked_vars_to_transform <- which(names(picked_vars[[i]]) %in% transform_vars)
if (length(picked_vars_to_transform) > 0) {
picked_vars_to_transform <- names(picked_vars[[i]])[picked_vars_to_transform]
new_vars_to_transform <- picked_vars[[i]][picked_vars_to_transform]
which_are_ordered <- which(!sapply(picked_vars_ordered[[i]][picked_vars_to_transform], is.null))
##NOTE: The following 'if' replaces the original with reordering vector
if (length(which_are_ordered) > 0) {
tmp <- which(!is.na(match(names(picked_vars_ordered[[i]]), names(which_are_ordered))))
new_vars_to_transform[which_are_ordered] <- picked_vars_ordered[[i]][tmp]
}
vars_to_transform <- c(vars_to_transform, new_vars_to_transform)
}
##NOTE: Above is non-common vars, here is common vars (ie, return_vars = NULL).
picked_common_vars_to_transform <- which(names(picked_common_vars) %in% transform_vars)
if (length(picked_common_vars_to_transform) > 0) {
picked_common_vars_to_transform <- names(picked_common_vars)[picked_common_vars_to_transform]
new_vars_to_transform <- picked_common_vars[picked_common_vars_to_transform]
which_are_ordered <- which(!sapply(picked_common_vars_ordered[picked_common_vars_to_transform], is.null))
if (length(which_are_ordered) > 0) {
tmp <- which(!is.na(match(names(picked_common_vars_ordered), names(which_are_ordered))))
new_vars_to_transform[which_are_ordered] <- picked_common_vars_ordered[tmp]
}
vars_to_transform <- c(vars_to_transform, new_vars_to_transform)
}
# Transform the variables
transformed_data <- do.call(transform, c(list(data_array = NULL,
variables = vars_to_transform,
file_selectors = selectors_of_first_files_with_data[[i]]),
transform_params))
# Discard the common transformed variables if already transformed before
if (!is.null(transformed_common_vars)) {
common_ones <- which(names(picked_common_vars) %in% names(transformed_data$variables))
if (length(common_ones) > 0) {
transformed_data$variables <- transformed_data$variables[-common_ones]
}
}
transformed_vars[[i]] <- list()
transformed_vars_ordered[[i]] <- list()
transformed_vars_unorder_indices[[i]] <- list()
# Order the transformed variables if needed
# 'var_to_read' should be 'transformed_var', but is kept to reuse the same code as above.
for (var_to_read in names(transformed_data$variables)) {
if (var_to_read %in% unlist(var_params)) {
associated_dim_name <- names(var_params)[which(unlist(var_params) == var_to_read)]
if ((associated_dim_name %in% names(dim_reorder_params)) && aiat) {
## Is this check really needed?
if (length(dim(transformed_data$variables[[associated_dim_name]])) > 1) {
stop("Requested a '", associated_dim_name, "_reorder' for a dimension ",
"whose coordinate variable that has more than 1 dimension (after ",
"transform). This is not supported.")
}
ordered_var_values <- dim_reorder_params[[associated_dim_name]](transformed_data$variables[[associated_dim_name]])
attr(ordered_var_values, 'variables') <- attr(transformed_data$variables[[associated_dim_name]], 'variables')
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if (!all(c('x', 'ix') %in% names(ordered_var_values))) {
stop("All the dimension reorder functions must return a list with the components 'x' and 'ix'.")
}
# Save the indices to reorder back the ordered variable values.
# This will be used to define the first round indices.
unorder <- sort(ordered_var_values$ix, index.return = TRUE)$ix
if (var_to_read %in% names(picked_common_vars)) {
transformed_common_vars_ordered[[var_to_read]] <- ordered_var_values$x
transformed_common_vars_unorder_indices[[var_to_read]] <- unorder
} else {
transformed_vars_ordered[[i]][[var_to_read]] <- ordered_var_values$x
transformed_vars_unorder_indices[[i]][[var_to_read]] <- unorder
}
}
}
}
transformed_picked_vars <- which(names(picked_vars[[i]]) %in% names(transformed_data$variables))
if (length(transformed_picked_vars) > 0) {
transformed_picked_vars <- names(picked_vars[[i]])[transformed_picked_vars]
transformed_vars[[i]][transformed_picked_vars] <- transformed_data$variables[transformed_picked_vars]
}
if (is.null(transformed_common_vars)) {
transformed_picked_common_vars <- which(names(picked_common_vars) %in% names(transformed_data$variables))
if (length(transformed_picked_common_vars) > 0) {
transformed_picked_common_vars <- names(picked_common_vars)[transformed_picked_common_vars]
transformed_common_vars <- transformed_data$variables[transformed_picked_common_vars]
}
}
}
# Once the variables are transformed, we compute the indices to be
# taken for each inner dimension.
# In all cases, indices will have to be computed to know which data
# values to take from the original data for each dimension (if a
# variable is specified for that dimension, it will be used to
# convert the provided selectors into indices). These indices are
# referred to as 'first round of indices'.
# The taken data will then be transformed if needed, together with
# the dimension variable if specified, and, in that case, indices
# will have to be computed again to know which values to take from the
# transformed data. These are the 'second round of indices'. In the
# case there is no transformation, the second round of indices will
# be all the available indices, i.e. from 1 to the number of taken
# values with the first round of indices.
for (inner_dim in expected_inner_dims[[i]]) {
if (debug) {
print("-> DEFINING INDICES FOR INNER DIMENSION:")
print(inner_dim)
}
file_dim <- NULL
if (inner_dim %in% unlist(inner_dims_across_files)) {
file_dim <- names(inner_dims_across_files)[which(sapply(inner_dims_across_files, function(x) inner_dim %in% x))[1]]
chunk_amount <- length(dat[[i]][['selectors']][[file_dim]][[1]])
names(chunk_amount) <- file_dim
} else {
chunk_amount <- 1
}
# In the special case that the selectors for a dimension are 'all', 'first', ...
# and chunking (dividing in more than 1 chunk) is requested, the selectors are
# replaced for equivalent indices.
if ((dat[[i]][['selectors']][[inner_dim]][[1]] %in% c('all', 'first', 'last')) &&
(chunks[[inner_dim]]['n_chunks'] != 1)) {
selectors <- dat[[i]][['selectors']][[inner_dim]][[1]]
if (selectors == 'all') {
selectors <- indices(1:(data_dims[[inner_dim]] * chunk_amount))
} else if (selectors == 'first') {
selectors <- indices(1)
} else {
selectors <- indices(data_dims[[inner_dim]] * chunk_amount)
}
dat[[i]][['selectors']][[inner_dim]][[1]] <- selectors
}
# The selectors for the inner dimension are taken.
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selector_array <- dat[[i]][['selectors']][[inner_dim]][[1]]
if (debug) {
if (inner_dim %in% dims_to_check) {
print(paste0("-> DEBUG MESSAGES FOR THE DATASET", i, " AND INNER DIMENSION '", inner_dim, "':"))
print("-> STRUCTURE OF SELECTOR ARRAY:")
print(str(selector_array))
print("-> PICKED VARS:")
print(picked_vars)
print("-> TRANSFORMED VARS:")
print(transformed_vars)
}
}
if (is.null(dim(selector_array))) {
dim(selector_array) <- length(selector_array)
}
if (is.null(names(dim(selector_array)))) {
if (length(dim(selector_array)) == 1) {
names(dim(selector_array)) <- inner_dim
} else {
stop("Provided selector arrays must be provided with dimension ",
"names. Found an array of selectors without dimension names ",
"for the dimension '", inner_dim, "'.")
}
}
selectors_are_indices <- FALSE
if (!is.null(attr(selector_array, 'indices'))) {
if (!is.logical(attr(selector_array, 'indices'))) {
stop("The atribute 'indices' for the selectors for the dimension '",
inner_dim, "' must be TRUE or FALSE.")
}
selectors_are_indices <- attr(selector_array, 'indices')
}
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taken_chunks <- rep(FALSE, chunk_amount)
selector_file_dims <- 1
if (any(found_file_dims[[i]] %in% names(dim(selector_array)))) {
selector_file_dims <- dim(selector_array)[which(names(dim(selector_array)) %in% found_file_dims[[i]])]
}
selector_inner_dims <- dim(selector_array)[which(!(names(dim(selector_array)) %in% found_file_dims[[i]]))]
var_with_selectors <- NULL
var_with_selectors_name <- var_params[[inner_dim]]
var_ordered <- NULL
var_unorder_indices <- NULL
with_transform <- FALSE
# If the selectors come with an associated variable
if (!is.null(var_with_selectors_name)) {
if ((var_with_selectors_name %in% transform_vars) && (!is.null(transform))) {
with_transform <- TRUE
if (!is.null(file_dim)) {
stop("Requested a transformation over the dimension '",
inner_dim, "', wich goes across files. This feature ",
"is not supported. Either do the request without the ",
"transformation or request it over dimensions that do ",
"not go across files.")
}
}
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> NAME OF THE VARIABLE WITH THE SELECTOR VALUES FOR THE CURRENT INNER DIMENSION:")
print(var_with_selectors_name)
print("-> NAMES OF THE VARIABLES TO BE TRANSFORMED:")
print(transform_vars)
print("-> STRUCTURE OF THE TRANSFORMATION FUNCTION:")
print(str(transform))
}
}
if (var_with_selectors_name %in% names(picked_vars[[i]])) {
var_with_selectors <- picked_vars[[i]][[var_with_selectors_name]]
var_ordered <- picked_vars_ordered[[i]][[var_with_selectors_name]]
var_unorder_indices <- picked_vars_unorder_indices[[i]][[var_with_selectors_name]]
} else if (var_with_selectors_name %in% names(picked_common_vars)) {
var_with_selectors <- picked_common_vars[[var_with_selectors_name]]
var_ordered <- picked_common_vars_ordered[[var_with_selectors_name]]
var_unorder_indices <- picked_common_vars_unorder_indices[[var_with_selectors_name]]
}
n <- prod(dim(var_with_selectors))
if (is.null(var_unorder_indices)) {
var_unorder_indices <- 1:n
}
if (with_transform) {
if (var_with_selectors_name %in% names(transformed_vars[[i]])) {
m <- prod(dim(transformed_vars[[i]][[var_with_selectors_name]]))
var_with_selectors <- transformed_vars[[i]][[var_with_selectors_name]]
var_ordered <- transformed_vars_ordered[[i]][[var_with_selectors_name]]
var_unorder_indices <- transformed_vars_unorder_indices[[i]][[var_with_selectors_name]]
}
} else if (var_with_selectors_name %in% names(transformed_common_vars)) {
m <- prod(dim(transformed_common_vars[[var_with_selectors_name]]))
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var_with_selectors <- transformed_common_vars[[var_with_selectors_name]]
var_ordered <- transformed_common_vars_ordered[[var_with_selectors_name]]
var_unorder_indices <- transformed_common_vars_unorder_indices[[var_with_selectors_name]]
}
}
if (is.null(var_unorder_indices)) {
var_unorder_indices <- 1:m
}
}
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> SIZE OF ORIGINAL VARIABLE:")
print(n)
print("-> SIZE OF TRANSFORMED VARIABLE:")
if (with_transform) print(m)
print("-> STRUCTURE OF ORDERED VAR:")
print(str(var_ordered))
print("-> UNORDER INDICES:")
print(var_unorder_indices)
}
}
var_dims <- dim(var_with_selectors)
var_file_dims <- 1
if (any(names(var_dims) %in% found_file_dims[[i]])) {
if (with_transform) {
stop("Requested transformation for inner dimension '",
inner_dim, "' but provided selectors for such dimension ",
"over one or more file dimensions. This is not ",
"supported. Either request no transformation for the ",
"dimension '", inner_dim, "' or specify the ",
"selectors for this dimension without the file dimensions.")
}
var_file_dims <- var_dims[which(names(var_dims) %in% found_file_dims[[i]])]
var_dims <- var_dims[-which(names(var_dims) %in% found_file_dims[[i]])]
}
## # Keep the selectors if they correspond to a variable that will be transformed.
## if (with_transform) {
## if (var_with_selectors_name %in% names(picked_vars[[i]])) {
## transformed_var_with_selectors <- transformed_vars[[i]][[var_with_selectors_name]]
## } else if (var_with_selectors_name %in% names(picked_common_vars)) {
## transformed_var_with_selectors <- transformed_common_vars[[var_with_selectors_name]]
## }
## transformed_var_dims <- dim(transformed_var_with_selectors)
## transformed_var_file_dims <- 1
## if (any(names(transformed_var_dims) %in% found_file_dims[[i]])) {
## transformed_var_file_dims <- transformed_var_dims[which(names(transformed_var_dims) %in% found_file_dims[[i]])]
## transformed_var_dims <- tranasformed_var_dims[-which(names(transformed_var_dims) %in% found_file_dims[[i]])]
## }
##if (inner_dim %in% dims_to_check) {
##print("111m")
##print(str(transformed_var_dims))
##}
##
## m <- prod(transformed_var_dims)
## }
# Work out var file dims and inner dims.
if (inner_dim %in% unlist(inner_dims_across_files)) {
#TODO: if (chunk_amount != number of chunks in selector_file_dims), crash
if (length(var_dims) > 1) {
stop("Specified a '", inner_dim, "_var' for the dimension '",
inner_dim, "', which goes across files (across '", file_dim,
"'). The specified variable, '", var_with_selectors_name, "', has more ",
"than one dimension and can not be used as selector variable. ",
"Select another variable or fix it in the files.")
}
}
## TODO HERE::
#- indices_of_first_files_with_data may change, because array is now extended
var_full_dims <- dim(var_with_selectors)
if (!(inner_dim %in% names(var_full_dims))) {
stop("Could not find the dimension '", inner_dim, "' in ",
"the file. Either change the dimension name in ",
"your request, adjust the parameter ",
"'dim_names_in_files' or fix the dimension name in ",
"the file.\n", file_path)
}
} else if (((is.numeric(selector_array) || is.list(selector_array)) && selectors_are_indices) ||
(is.character(selector_array) && (length(selector_array) == 1) &&
(selector_array %in% c('all', 'first', 'last')) &&
!is.null(file_dim_reader))) {
#### TODO HERE::
###- indices_of_first_files_with_data may change, because array is now extended
# Lines moved above for better performance.
##data_dims <- file_dim_reader(file_path, NULL, selectors_of_first_files_with_data[[i]],
## lapply(dat[[i]][['selectors']][expected_inner_dims[[i]]], '[[', 1))
if (!(inner_dim %in% names(data_dims))) {
stop("Could not find the dimension '", inner_dim, "' in ",
"the file. Either change the dimension name in ",
"your request, adjust the parameter ",
"'dim_names_in_files' or fix the dimension name in ",
"the file.\n", file_path)
stop(paste0("Can not translate the provided selectors for '", inner_dim,
"' to numeric indices. Provide numeric indices and a ",
"'file_dim_reader' function, or a '", inner_dim,
"_var' in order to calculate the indices."))
}
# At this point, if no selector variable was provided, the variable
# data_dims has been populated. If a selector variable was provided,
# the variables var_dims, var_file_dims and var_full_dims have been
# populated instead.
fri <- first_round_indices <- NULL
sri <- second_round_indices <- NULL
# This variable will keep the indices needed to crop the transformed
# variable (the one that has been transformed without being subset
# with the first round indices).
tvi <- tranaformed_variable_indices <- NULL
ordered_fri <- NULL
ordered_sri <- NULL
if ((length(selector_array) == 1) && is.character(selector_array) &&
(selector_array %in% c('all', 'first', 'last')) &&
(chunks[[inner_dim]]['n_chunks'] == 1)) {
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if (is.null(var_with_selectors_name)) {
fri <- vector('list', length = chunk_amount)
dim(fri) <- c(chunk_amount)
sri <- vector('list', length = chunk_amount)
dim(sri) <- c(chunk_amount)
if (selector_array == 'all') {
fri[] <- replicate(chunk_amount, list(1:(data_dims[inner_dim])))
taken_chunks <- rep(TRUE, chunk_amount)
#sri <- NULL
} else if (selector_array == 'first') {
fri[[1]] <- 1
taken_chunks[1] <- TRUE
#sri <- NULL
} else if (selector_array == 'last') {
fri[[chunk_amount]] <- data_dims[inner_dim]
taken_chunks[length(taken_chunks)] <- TRUE
#sri <- NULL
}
} else {
if ((!is.null(file_dim)) && !(file_dim %in% names(var_file_dims))) {
stop("The variable '", var_with_selectors_name, "' must also be ",
"requested for the file dimension '", file_dim, "' in ",
"this configuration.")
}
fri <- vector('list', length = prod(var_file_dims))
dim(fri) <- var_file_dims
ordered_fri <- fri
sri <- vector('list', length = prod(var_file_dims))
dim(sri) <- var_file_dims
ordered_sri <- sri
if (selector_array == 'all') {
# TODO: Populate ordered_fri
ordered_fri[] <- replicate(prod(var_file_dims), list(1:n))
fri[] <- replicate(prod(var_file_dims), list(var_unorder_indices[1:n]))
taken_chunks <- rep(TRUE, chunk_amount)
if (!with_transform) {
#fri[] <- replicate(prod(var_file_dims), list(1:n))
#taken_chunks <- rep(TRUE, chunk_amount)
#sri <- NULL
} else {
ordered_sri[] <- replicate(prod(var_file_dims), list(1:m))
sri[] <- replicate(prod(var_file_dims), list(1:m))
## var_file_dims instead??
#fri[] <- replicate(prod(var_file_dims), list(1:n))
#taken_chunks <- rep(TRUE, chunk_amount)
#sri[] <- replicate(prod(transformed_var_file_dims), list(1:m))
#} else {
#fri[] <- replicate(prod(var_file_dims), list(1:n))
#taken_chunks <- rep(TRUE, chunk_amount)
#sri[] <- replicate(prod(transformed_var_file_dims), list(1:m))
#}
tvi <- 1:m
}
} else if (selector_array == 'first') {
taken_chunks[1] <- TRUE
if (!with_transform) {
ordered_fri[[1]] <- 1
fri[[1]] <- var_unorder_indices[1]
#taken_chunks[1] <- TRUE
#sri <- NULL
} else {
ordered_fri[[1]] <- 1
fri[[1]] <- var_unorder_indices[1]
# TODO: TO BE IMPROVED
#taken_chunks[1] <- TRUE
ordered_sri[[1]] <- 1:ceiling(m / n)
sri[[1]] <- 1:ceiling(m / n)
tvi <- 1:ceiling(m / n)
} else {
ordered_fri[[1]] <- 1:ceiling(m / n)
fri[[1]] <- var_unorder_indices[1:ceiling(m / n)]
#taken_chunks[1] <- TRUE
ordered_sri[[1]] <- 1
sri[[1]] <- 1
tvi <- 1
}
}
} else if (selector_array == 'last') {
taken_chunks[length(taken_chunks)] <- TRUE
if (!with_transform) {
ordered_fri[[prod(var_file_dims)]] <- n
fri[[prod(var_file_dims)]] <- var_unorder_indices[n]
#taken_chunks[length(taken_chunks)] <- TRUE
#sri <- NULL
} else {
ordered_fri[[prod(var_file_dims)]] <- prod(var_dims)
fri[[prod(var_file_dims)]] <- var_unorder_indices[prod(var_dims)]
#taken_chunks[length(taken_chunks)] <- TRUE
ordered_sri[[prod(var_file_dims)]] <- 1:ceiling(m / n)
sri[[prod(var_file_dims)]] <- 1:ceiling(m / n)
# TODO: TO BE IMPROVED. THE TVI MAY BE WRONG IF THERE'S BEEN A REORDERING.
tvi <- 1:ceiling(m / n)
} else {
ordered_fri[[prod(var_file_dims)]] <- (n - ceiling(m / n) + 1):n
fri[[prod(var_file_dims)]] <- var_unorder_indices[(n - ceiling(m / n) + 1):n]
#taken_chunks[length(taken_chunks)] <- TRUE
ordered_sri[[prod(var_file_dims)]] <- 1
sri[[prod(var_file_dims)]] <- 1
tvi <- 1
}
}
}
}
# If the selectors are not 'all', 'first', 'last', ...
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} else {
if (!is.null(var_with_selectors_name)) {
unmatching_file_dims <- which(!(names(var_file_dims) %in% names(selector_file_dims)))
if ((length(unmatching_file_dims) > 0)) {
raise_error <- FALSE
if (is.null(file_dim)) {
raise_error <- TRUE
} else {
if (!((length(unmatching_file_dims) == 1) &&
(names(var_file_dims)[unmatching_file_dims] == file_dim) &&
(inner_dim %in% names(selector_inner_dims)))) {
raise_error <- TRUE
}
}
if (raise_error) {
stop("Provided selectors for the dimension '", inner_dim, "' must have as many ",
"file dimensions as the variable the dimension is defined along, '",
var_with_selectors_name, "', with the exceptions of the file pattern dimension ('",
found_pattern_dim, "') and any depended file dimension (if specified as ",
"depended dimension in parameter 'inner_dims_across_files' and the ",
"depending file dimension is present in the provided selector array).")
}
}
if (any(names(selector_file_dims) %in% names(dim(var_with_selectors)))) {
if (any(dim(var_with_selectors)[names(selector_file_dims)] != selector_file_dims)) {
stop("Size of selector file dimensions must mach size of requested ",
"variable dimensions.")
}
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}
}
## TODO: If var dimensions are not in the same order as selector dimensions, reorder
if (is.null(names(selector_file_dims))) {
if (is.null(file_dim)) {
fri_dims <- 1
} else {
fri_dims <- chunk_amount
names(fri_dims) <- file_dim
}
} else {
fri_dim_names <- names(selector_file_dims)
if (!is.null(file_dim)) {
fri_dim_names <- c(fri_dim_names, file_dim)
}
fri_dim_names <- found_file_dims[[i]][which(found_file_dims[[i]] %in% fri_dim_names)]
fri_dims <- rep(NA, length(fri_dim_names))
names(fri_dims) <- fri_dim_names
fri_dims[names(selector_file_dims)] <- selector_file_dims
if (!is.null(file_dim)) {
fri_dims[file_dim] <- chunk_amount
}
}
fri <- vector('list', length = prod(fri_dims))
dim(fri) <- fri_dims
sri <- vector('list', length = prod(fri_dims))
dim(sri) <- fri_dims
selector_file_dim_array <- array(1:prod(selector_file_dims), dim = selector_file_dims)
selector_store_position <- fri_dims
for (j in 1:prod(dim(selector_file_dim_array))) {
selector_indices_to_take <- which(selector_file_dim_array == j, arr.ind = TRUE)[1, ]
names(selector_indices_to_take) <- names(selector_file_dims)
selector_store_position[names(selector_indices_to_take)] <- selector_indices_to_take
sub_array_of_selectors <- Subset(selector_array, names(selector_indices_to_take),
as.list(selector_indices_to_take), drop = 'selected')
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> ITERATING OVER FILE DIMENSIONS OF THE SELECTORS.")
print("-> STRUCTURE OF A SUB ARRAY:")
print(str(sub_array_of_selectors))
print("-> STRUCTURE OF THE VARIABLE WITH SELECTORS:")
print(str(var_with_selectors))
print(dim(var_with_selectors))
}
}
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sub_array_of_values <- NULL
#} else if (!is.null(var_ordered)) {
# sub_array_of_values <- var_ordered
} else {
if (length(var_file_dims) > 0) {
var_indices_to_take <- selector_indices_to_take[which(names(selector_indices_to_take) %in% names(var_file_dims))]
sub_array_of_values <- Subset(var_with_selectors, names(var_indices_to_take),
as.list(var_indices_to_take), drop = 'selected')
} else {
sub_array_of_values <- var_with_selectors
}
}
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> STRUCTURE OF THE SUB ARRAY FROM THE VARIABLE CORRESPONDING TO THE SUB ARRAY OF SELECTORS")
print(str(sub_array_of_values))
print(dim(sub_array_of_values))
print("-> NAME OF THE FILE DIMENSION THE CURRENT INNER DIMENSION EXTENDS ALONG:")
print(file_dim)
}
}
if ((!is.null(file_dim) && (file_dim %in% names(selector_file_dims))) || is.null(file_dim)) {
if (length(sub_array_of_selectors) > 0) {
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> THE INNER DIMENSION DOES NOT GO ACROSS ANY FILE DIMENSION OR IT DOES BUT IS IN THE PROVIDED SELECTOR ARRAY.")
}
}
if (!is.null(var_with_selectors_name)) {
max_allowed <- ifelse(aiat, m, n)
} else {
max_allowed <- data_dims[inner_dim]
}
if (any(na.omit(unlist(sub_array_of_selectors)) > max_allowed) ||
any(na.omit(unlist(sub_array_of_selectors)) < 1)) {
stop("Provided indices out of range for dimension '", inner_dim, "' ",
"for dataset '", dat[[i]][['name']], "' (accepted range: 1 to ",
# The selector_checker will return either a vector of indices or a list
# with the first and last desired indices.
goes_across_prime_meridian <- FALSE
if (!is.null(var_ordered) && !selectors_are_indices) {
if (!is.null(dim_reorder_params[[inner_dim]])) {
if (is.list(sub_array_of_selectors)) {
## NOTE: The check of 'goes_across_prime_meridian' is moved forward to here.
is_circular_dim <- attr(dim_reorder_params[[inner_dim]], "circular")
if (!is.null(is_circular_dim)) {
if (is_circular_dim) {
# NOTE: Use CircularSort() to put the values in the assigned range, and get the order.
# For example, [-10, 20] in CircularSort(0, 360) is [350, 20]. The $ix list is [2, 1].
# 'goes_across_prime_meridian' means the selector range across the border. For example,
# CircularSort(-180, 180) with selector [170, 190] -> goes_across_prime_meridian = TRUE.
tmp <- dim_reorder_params[[inner_dim]](unlist(sub_array_of_selectors))$ix
goes_across_prime_meridian <- tmp[1] > tmp[2]
}
}
# HERE change to the same code as below (under 'else'). Not sure why originally
#it uses additional lines, which make reorder not work.
sub_array_of_selectors <- as.list(dim_reorder_params[[inner_dim]](unlist(sub_array_of_selectors))$x)
#sub_array_reordered <- dim_reorder_params[[inner_dim]](unlist(sub_array_of_selectors))
#sub_array_unorder <- sort(sub_array_reordered$ix, index.return = TRUE)$ix
#sub_array_of_selectors <- as.list(sub_array_reordered$x[sub_array_unorder])
# Add warning if the boundary is out of range
if (sub_array_of_selectors[1] < range(var_ordered)[1] | sub_array_of_selectors[1] > range(var_ordered)[2]) {
.warning(paste0("The lower boundary of selector of ",
inner_dim,
" is out of range [",
min(var_ordered), ", ", max(var_ordered), "]. ",
"Check if the desired range is all included."))
}
if (sub_array_of_selectors[2] < range(var_ordered)[1] | sub_array_of_selectors[2] > range(var_ordered)[2]) {
.warning(paste0("The upper boundary of selector of ",
inner_dim,
" is out of range [",
min(var_ordered), ", ", max(var_ordered), "]. ",
"Check if the desired range is all included."))
}
} else {
sub_array_of_selectors <- dim_reorder_params[[inner_dim]](sub_array_of_selectors)$x
}
}
# NOTE: The ideal solution for selecting indices in goes_across_prime_meridian case
# is modified SelectorCheckor.R. But now SelectorCheckor doesn't know the info of
#goes_across_prime_meridian, so I do the adjustion after calling SelectorCheckor().
sub_array_of_indices <- selector_checker(sub_array_of_selectors, var_ordered,
tolerance = if (aiat) {
NULL
} else {
tolerance_params[[inner_dim]]
})
if (goes_across_prime_meridian & sub_array_of_indices[[1]] < sub_array_of_indices[[2]]) {
if (!(sub_array_of_selectors[[1]] %in% var_ordered)){
sub_array_of_indices[[1]] <- sub_array_of_indices[[1]] - 1
}
if (!(sub_array_of_selectors[[2]] %in% var_ordered)){
sub_array_of_indices[[2]] <- sub_array_of_indices[[2]] + 1
}
}
#NOTE: the possible case?
if (goes_across_prime_meridian & sub_array_of_indices[[1]] > sub_array_of_indices[[2]]) {
.stop("The case is goes_across_prime_meridian but no adjustion for the indices!")
}
if (any(is.na(sub_array_of_indices))) {
stop(paste0("The selectors of ", inner_dim,
" are out of range [", min(var_ordered),
", ", max(var_ordered), "]."))
}
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# Add warning if the boundary is out of range
if (is.list(sub_array_of_selectors)) {
if (sub_array_of_selectors[1] <
min(sub_array_of_values) | sub_array_of_selectors[1] >
max(sub_array_of_values)) {
.warning(paste0("The lower boundary of selector of ",
inner_dim, " is out of range [",
min(sub_array_of_values), ", ",
max(sub_array_of_values), "]. ",
"Check if the desired range is all included."))
}
if (sub_array_of_selectors[2] <
min(sub_array_of_values) | sub_array_of_selectors[2] >
max(sub_array_of_values)) {
.warning(paste0("The upper boundary of selector of ",
inner_dim, " is out of range [",
min(sub_array_of_values), ", ",
max(sub_array_of_values), "]. ",
"Check if the desired range is all included."))
}
}
sub_array_of_indices <- selector_checker(sub_array_of_selectors, sub_array_of_values,
tolerance = if (aiat) {
NULL
} else {
tolerance_params[[inner_dim]]
})
if (any(is.na(sub_array_of_indices))) {
stop(paste0("The selectors of ", inner_dim,
" are out of range [", min(sub_array_of_values),
", ", max(sub_array_of_values), "]."))
}
## This 'if' runs in both Start() and Compute(). In Start(), it doesn't have any effect (no chunk).
## In Compute(), it creates the indices for each chunk. For example, if 'sub_array_of_indices'
## is c(5:10) and chunked into 2, 'sub_array_of_indices' becomes c(5:7) for chunk = 1, c(8:10)
## for chunk = 2. If 'sub_array_of_indices' is list(55, 62) and chunked into 2, it becomes
## list(55, 58) for chunk = 1 and list(59, 62) for chunk = 2.
## TODO: The list can be turned into vector here? So afterward no need to judge if it is list
## or vector.
if (!is.list(sub_array_of_indices)) {
sub_array_of_indices <- sub_array_of_indices[chunk_indices(length(sub_array_of_indices),
chunks[[inner_dim]]["chunk"],
chunks[[inner_dim]]["n_chunks"],
inner_dim)]
} else {
tmp <- chunk_indices(length(sub_array_of_indices[[1]]:sub_array_of_indices[[2]]),
chunks[[inner_dim]]["chunk"], chunks[[inner_dim]]["n_chunks"],
inner_dim)
vect <- sub_array_of_indices[[1]]:sub_array_of_indices[[2]]
sub_array_of_indices[[1]] <- vect[tmp[1]]
sub_array_of_indices[[2]] <- vect[tmp[length(tmp)]]
# The sub_array_of_indices now contains numeric indices of the values to be taken by each chunk.
# Check if all the files have the selectors assigned (e.g., region = 'Grnland') _20191015
if (is.character(sub_array_of_selectors)) {
array_of_var_files_check <- vector('list', length(selector_indices))
for (k in 1:length(selector_indices)) {
asdasd <- selector_indices[[k]]
array_of_var_files_check <- do.call('[', c(list(x = array_of_files_to_load), asdasd, list(drop = FALSE)))[j]
file_object <- file_opener(array_of_var_files_check)
var_values_check <- file_var_reader(NULL, file_object, NULL, var_to_read, synonims)
if (any(as.vector(var_values_check)[sub_array_of_indices] != sub_array_of_selectors)) {
.warning('Not all the files has correponding selectors. Check the selector attributes')
}
}
}
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> TRANSFORMATION REQUESTED?")
print(with_transform)
print("-> BETA:")
print(beta)
}
}
if (with_transform) {
# If there is a transformation and selector values are provided, these
# selectors will be processed in the same way either if aiat = TRUE or
# aiat = FALSE.
## TODO: If sub_array_of_selectors was integer and aiat then... do what's commented 50 lines below.
## otherwise, do what's coded.
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> SELECTORS REQUESTED BEFORE TRANSFORM.")
}
}
###NOTE: Here, the transform, is different from the below part of non-transform.
# search 'if (goes_across_prime_meridian' to find the lines below.
if (goes_across_prime_meridian) {
# NOTE: before changing, the return is already correct.
#NOTE: The fix below has the same explanation as no with_transform part below.
# Search the next next 'if (goes_across_prime_meridian) {'.
if (sub_array_of_indices[[1]] == sub_array_of_indices[[2]]) {
# global longitude
sub_array_of_fri <- 1:n
# Warning if transform_extra_cell != 0
if (beta != 0) {
.warning(paste0("Adding parameter transform_extra_cells = ",
transform_extra_cells, " to the transformed index excesses ",
"the border. The border index is used for transformation."))
}
} else {
# normal case, i.e., not global
first_index <- min(unlist(sub_array_of_indices))
last_index <- max(unlist(sub_array_of_indices))
gap_width <- last_index - first_index - 1
sub_array_of_fri <- c(1:(min(unlist(sub_array_of_indices)) + min(gap_width, beta)),
(max(unlist(sub_array_of_indices)) - min(gap_width, beta)):n)
if (min(gap_width, beta) != beta) {
.warning(paste0("Adding parameter transform_extra_cells = ",
transform_extra_cells, " to the transformed index excesses ",
"the border. The border index is used for transformation."))
}
#NOTE: This if seems redundant.
if (is.list(sub_array_of_indices)) {
sub_array_of_indices <- sub_array_of_indices[[1]]:sub_array_of_indices[[2]]
}
first_index <- min(unlist(sub_array_of_indices))
last_index <- max(unlist(sub_array_of_indices))
start_padding <- min(beta, first_index - 1)
end_padding <- min(beta, n - last_index)
if (!is_circular_dim) { #latitude
sub_array_of_fri <- (first_index - start_padding):(last_index + end_padding)
if (start_padding != beta | end_padding != beta) {
.warning(paste0("Adding parameter transform_extra_cells = ",
transform_extra_cells, " to the transformed index excesses ",
"the border. The border index is used for transformation."))
}
} else { #longitude
if ((last_index - first_index + 1 + beta * 2) >= n) {
sub_array_of_fri <- 1:n
} else if (start_padding < beta) { # left side too close to border, need to go to right side
sub_array_of_fri <- c((first_index - start_padding):(last_index + end_padding), (n - (beta - start_padding - 1)):n)
} else if (end_padding < beta) { # right side too close to border, need to go to left side
sub_array_of_fri <- c(1: (beta - end_padding), (first_index - start_padding):(last_index + end_padding))
} else { #normal
sub_array_of_fri <- (first_index - start_padding):(last_index + end_padding)
}
}
} else { # when <var>_reorder is not used
sub_array_of_fri <- (first_index - start_padding):(last_index + end_padding)
if (start_padding != beta | end_padding != beta) {
.warning(paste0("Adding parameter transform_extra_cells = ",
transform_extra_cells, " to the transformed index excesses ",
"the border. The border index is used for transformation."))
}
}
}
subset_vars_to_transform <- vars_to_transform
if (!is.null(var_ordered)) {
##NOTE: if var_ordered is common_vars, it doesn't have attributes and it is a vector.
## Turn it into array and add dimension name.
if (!is.array(var_ordered)) {
var_ordered <- as.array(var_ordered)
names(dim(var_ordered)) <- inner_dim
}
subset_vars_to_transform[[var_with_selectors_name]] <- Subset(var_ordered, inner_dim, sub_array_of_fri)
} else {
##NOTE: It should be redundant because without reordering the var should remain array
## But just stay same with above...
if (!is.array(sub_array_of_values)) {
sub_array_of_values <- as.array(sub_array_of_values)
names(dim(sub_array_of_values)) <- inner_dim
}
subset_vars_to_transform[[var_with_selectors_name]] <- Subset(sub_array_of_values, inner_dim, sub_array_of_fri)
}
aho
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# Change the order of longitude crop if no reorder + from big to small.
# cdo -sellonlatbox, the lon is west, east (while lat can be north
# to south or opposite)
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# Before changing crop, first we need to find the name of longitude.
# NOTE: The potential bug here (also the bug for CDORemapper): the lon name
# is limited (only the ones listed in .KnownLonNames() are available.
known_lon_names <- s2dverification:::.KnownLonNames()
lon_name <- names(subset_vars_to_transform)[which(names(subset_vars_to_transform) %in% known_lon_names)[1]]
# NOTE: The cases not considered: (1) if lon reorder(decreasing = T)
# It doesn't make sense, but if someone uses it, here should
# occur error. (2) crop = TRUE/FALSE
if ('crop' %in% names(transform_params) & var_with_selectors_name == lon_name & is.null(dim_reorder_params[[inner_dim]])) {
if (is.numeric(class(transform_params$crop))) {
if (transform_params$crop[1] > transform_params$crop[2]) {
tmp <- transform_params$crop[1]
transform_params$crop[1] <- transform_params$crop[2]
transform_params$crop[2] <- tmp
}
aho
committed
}
}
transformed_subset_var <- do.call(transform, c(list(data_array = NULL,
variables = subset_vars_to_transform,
file_selectors = selectors_of_first_files_with_data[[i]]),
transform_params))$variables[[var_with_selectors_name]]
# Sorting the transformed variable and working out the indices again after transform.
if (!is.null(dim_reorder_params[[inner_dim]])) {
transformed_subset_var_reorder <- dim_reorder_params[[inner_dim]](transformed_subset_var)
transformed_subset_var <- transformed_subset_var_reorder$x
#NOTE: The fix here solves the mis-ordered lon when across_meridian.
transformed_subset_var_unorder <- transformed_subset_var_reorder$ix
# transformed_subset_var_unorder <- sort(transformed_subset_var_reorder$ix, index.return = TRUE)$ix
} else {
transformed_subset_var_unorder <- 1:length(transformed_subset_var)
}
sub_array_of_sri <- selector_checker(sub_array_of_selectors, transformed_subset_var,
tolerance = if (aiat) {
tolerance_params[[inner_dim]]
} else {
NULL
})
aho
committed
# Check if selectors fall out of the range of the transform grid
# It may happen when original lon is [-180, 180] while want to regrid to
# [0, 360], and lon selector = [-20, -10].
if (any(is.na(sub_array_of_sri))) {
stop(paste0("The selectors of ",
inner_dim, " are out of range of transform grid '",
transform_params$grid, "'. Use parameter '",
inner_dim, "_reorder' or change ", inner_dim,
" selectors."))
}
if (goes_across_prime_meridian) {
if (sub_array_of_sri[[1]] == sub_array_of_sri[[2]]) {
# global longitude
sub_array_of_sri <- c(1:length(transformed_subset_var))
} else {
# the common case, i.e., non-global
# NOTE: Because sub_array_of_sri order is exchanged due to
# previous development, here [[1]] and [[2]] should exchange
sub_array_of_sri <- c(1:sub_array_of_sri[[1]],
sub_array_of_sri[[2]]:length(transformed_subset_var))
}
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} else if (is.list(sub_array_of_sri)) {
sub_array_of_sri <- sub_array_of_sri[[1]]:sub_array_of_sri[[2]]
}
ordered_sri <- sub_array_of_sri
sub_array_of_sri <- transformed_subset_var_unorder[sub_array_of_sri]
# In this case, the tvi are not defined and the 'transformed_subset_var'
# will be taken instead of the var transformed before in the code.
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> FIRST INDEX:")
print(first_index)
print("-> LAST INDEX:")
print(last_index)
print("-> STRUCTURE OF FIRST ROUND INDICES:")
print(str(sub_array_of_fri))
print("-> STRUCTURE OF SECOND ROUND INDICES:")
print(str(sub_array_of_sri))
print("-> STRUCTURE OF TRANSFORMED VARIABLE INDICES:")
print(str(tvi))
}
}
### # If the selectors are expressed after transformation
### } else {
###if (debug) {
###if (inner_dim %in% dims_to_check) {
###print("-> SELECTORS REQUESTED AFTER TRANSFORM.")
###}
###}
### if (goes_across_prime_meridian) {
### sub_array_of_indices <- c(sub_array_of_indices[[1]]:m,
### 1:sub_array_of_indices[[2]])
### }
### first_index <- min(unlist(sub_array_of_indices))
### last_index <- max(unlist(sub_array_of_indices))
### first_index_before_transform <- max(transform_indices(first_index, m, n) - beta, 1)
### last_index_before_transform <- min(transform_indices(last_index, m, n) + beta, n)
### sub_array_of_fri <- first_index_before_transform:last_index_before_transform
### n_of_extra_cells <- round(beta / n * m)
### if (is.list(sub_array_of_indices) && (length(sub_array_of_indices) > 1)) {
### sub_array_of_sri <- 1:(last_index - first_index + 1)
### if (is.null(tvi)) {
### tvi <- sub_array_of_sri + first_index - 1
### }
### } else {
### sub_array_of_sri <- sub_array_of_indices - first_index + 1
### if (is.null(tvi)) {
### tvi <- sub_array_of_indices
### }
### }
### sub_array_of_sri <- sub_array_of_sri + n_of_extra_cells
sri <- do.call('[[<-', c(list(x = sri), as.list(selector_store_position),
list(value = sub_array_of_sri)))
} else {
if (goes_across_prime_meridian) {
#NOTE: The potential problem here is, if it is global longitude,
# and the indices overlap (e.g., lon = [0, 359.723] and
# CircularSort(-180, 180), then sub_array_of_indices = list(649, 649)).
# Therefore, sub_array_of_fri will be c(1:649, 649:1296). We'll
# get two 649.
# The fix below may not be the best solution, but it works for
# the example above.
if (sub_array_of_indices[[1]] == sub_array_of_indices[[2]]) {
# global longitude
sub_array_of_fri <- c(1:n)
} else {
# the common case, i.e., non-global
sub_array_of_fri <- c(1:min(unlist(sub_array_of_indices)),
max(unlist(sub_array_of_indices)):n)
} else if (is.list(sub_array_of_indices)) {
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sub_array_of_fri <- sub_array_of_indices[[1]]:sub_array_of_indices[[2]]
} else {
sub_array_of_fri <- sub_array_of_indices
}
}
if (!is.null(var_unorder_indices)) {
if (is.null(ordered_fri)) {
ordered_fri <- sub_array_of_fri
}
sub_array_of_fri <- var_unorder_indices[sub_array_of_fri]
}
fri <- do.call('[[<-', c(list(x = fri), as.list(selector_store_position),
list(value = sub_array_of_fri)))
if (!is.null(file_dim)) {
taken_chunks[selector_store_position[[file_dim]]] <- TRUE
} else {
taken_chunks <- TRUE
}
}
} else {
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> THE INNER DIMENSION GOES ACROSS A FILE DIMENSION.")
}
}
if (inner_dim %in% names(dim(sub_array_of_selectors))) {
if (is.null(var_with_selectors_name)) {
if (any(na.omit(unlist(sub_array_of_selectors)) < 1) ||
any(na.omit(unlist(sub_array_of_selectors)) > data_dims[inner_dim] * chunk_amount)) {
stop("Provided indices out of range for dimension '", inner_dim, "' ",
"for dataset '", dat[[i]][['name']], "' (accepted range: 1 to ",
data_dims[inner_dim] * chunk_amount, ").")
}
} else {
if (inner_dim %in% names(dim(sub_array_of_values))) {
aho
committed
# NOTE: Put across-inner-dim at the 1st position.
# POSSIBLE PROB!! Only organize inner dim, the rest dims may not in the same order as sub_array_of_selectors below.
inner_dim_pos_in_sub_array <- which(names(dim(sub_array_of_values)) == inner_dim)
if (inner_dim_pos_in_sub_array != 1) {
new_sub_array_order <- (1:length(dim(sub_array_of_values)))[-inner_dim_pos_in_sub_array]
new_sub_array_order <- c(inner_dim_pos_in_sub_array, new_sub_array_order)
sub_array_of_values <- .aperm2(sub_array_of_values, new_sub_array_order)
}
}
}
aho
committed
# NOTE: Put across-inner-dim at the 1st position.
# POSSIBLE PROB!! Only organize inner dim, the rest dims may not in the same order as sub_array_of_values above.
inner_dim_pos_in_sub_array <- which(names(dim(sub_array_of_selectors)) == inner_dim)
if (inner_dim_pos_in_sub_array != 1) {
new_sub_array_order <- (1:length(dim(sub_array_of_selectors)))[-inner_dim_pos_in_sub_array]
new_sub_array_order <- c(inner_dim_pos_in_sub_array, new_sub_array_order)
sub_array_of_selectors <- .aperm2(sub_array_of_selectors, new_sub_array_order)
}
sub_array_of_indices <- selector_checker(sub_array_of_selectors, sub_array_of_values,
tolerance = tolerance_params[[inner_dim]])
# It is needed to expand the indices here, otherwise for
# values(list(date1, date2)) only 2 values are picked.
if (is.list(sub_array_of_indices)) {
sub_array_of_indices <- sub_array_of_indices[[1]]:sub_array_of_indices[[2]]
}
sub_array_of_indices <- sub_array_of_indices[chunk_indices(length(sub_array_of_indices),
chunks[[inner_dim]]['chunk'],
chunks[[inner_dim]]['n_chunks'],
inner_dim)]
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sub_array_is_list <- FALSE
if (is.list(sub_array_of_indices)) {
sub_array_is_list <- TRUE
sub_array_of_indices <- unlist(sub_array_of_indices)
}
if (is.null(var_with_selectors_name)) {
indices_chunk <- floor((sub_array_of_indices - 1) / data_dims[inner_dim]) + 1
transformed_indices <- ((sub_array_of_indices - 1) %% data_dims[inner_dim]) + 1
} else {
indices_chunk <- floor((sub_array_of_indices - 1) / var_full_dims[inner_dim]) + 1
transformed_indices <- ((sub_array_of_indices - 1) %% var_full_dims[inner_dim]) + 1
}
if (sub_array_is_list) {
sub_array_of_indices <- as.list(sub_array_of_indices)
}
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> GOING TO ITERATE ALONG CHUNKS.")
}
}
for (chunk in 1:chunk_amount) {
if (!is.null(names(selector_store_position))) {
selector_store_position[file_dim] <- chunk
} else {
selector_store_position <- chunk
}
chunk_selectors <- transformed_indices[which(indices_chunk == chunk)]
sub_array_of_indices <- chunk_selectors
if (with_transform) {
# If the provided selectors are expressed in the world
# before transformation
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first_index <- min(unlist(sub_array_of_indices))
last_index <- max(unlist(sub_array_of_indices))
sub_array_of_fri <- max(c(first_index - beta, 1)):min(c(last_index + beta, n))
sub_array_of_sri <- transform_indices(unlist(sub_array_of_indices) - first_index + 1, n, m)
if (is.list(sub_array_of_indices)) {
if (length(sub_array_of_sri) > 1) {
sub_array_of_sri <- sub_array_of_sri[[1]]:sub_array_of_sri[[2]]
}
}
##TODO: TRANSFORM SUBSET VARIABLE AS ABOVE, TO COMPUTE SRI
# If the selectors are expressed after transformation
} else {
first_index <- min(unlist(sub_array_of_indices))
last_index <- max(unlist(sub_array_of_indices))
first_index_before_transform <- max(transform_indices(first_index, m, n) - beta, 1)
last_index_before_transform <- min(transform_indices(last_index, m, n) + beta, n)
sub_array_of_fri <- first_index_before_transform:last_index_before_transform
if (is.list(sub_array_of_indices) && (length(sub_array_of_indices) > 1)) {
sub_array_of_sri <- 1:(last_index - first_index + 1) +
round(beta / n * m)
} else {
sub_array_of_sri <- sub_array_of_indices - first_index + 1 +
round(beta / n * m)
}
##TODO: FILL IN TVI
}
sri <- do.call('[[<-', c(list(x = sri), as.list(selector_store_position),
list(value = sub_array_of_sri)))
if (length(sub_array_of_sri) > 0) {
taken_chunks[chunk] <- TRUE
}
} else {
sub_array_of_fri <- sub_array_of_indices
if (length(sub_array_of_fri) > 0) {
taken_chunks[chunk] <- TRUE
}
}
if (!is.null(var_unorder_indices)) {
ordered_fri <- sub_array_of_fri
sub_array_of_fri <- var_unorder_indices[sub_array_of_fri]
}
fri <- do.call('[[<-', c(list(x = fri), as.list(selector_store_position),
list(value = sub_array_of_fri)))
}
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> FINISHED ITERATING ALONG CHUNKS")
}
}
} else {
stop("Provided array of indices for dimension '", inner_dim, "', ",
"which goes across the file dimension '", file_dim, "', but ",
"the provided array does not have the dimension '", inner_dim,
"', which is mandatory.")
}
}
}
}
if (debug) {
if (inner_dim %in% dims_to_check) {
print("-> PROCEEDING TO CROP VARIABLES")
}
}
#if ((length(selector_array) == 1) && (selector_array %in% c('all', 'first', 'last'))) {
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#if (!is.null(var_with_selectors_name) || (is.null(var_with_selectors_name) && is.character(selector_array) &&
# (length(selector_array) == 1) && (selector_array %in% c('all', 'first', 'last')))) {
empty_chunks <- which(!taken_chunks)
if (length(empty_chunks) >= length(taken_chunks)) {
stop("Selectors do not match any of the possible values for the dimension '", inner_dim, "'.")
}
if (length(empty_chunks) > 0) {
# # Get the first group of chunks to remove, and remove them.
# # E.g., from c(1, 2, 4, 5, 6, 8, 9) remove only 1 and 2
# dist <- abs(rev(empty_chunks) - c(rev(empty_chunks)[1] - 1, head(rev(empty_chunks), length(rev(empty_chunks)) - 1)))
# if (all(dist == 1)) {
# start_chunks_to_remove <- NULL
# } else {
# first_chunk_to_remove <- tail(which(dist > 1), 1)
# start_chunks_to_remove <- rev(rev(empty_chunks)[first_chunk_to_remove:length(empty_chunks)])
# }
# # Get the last group of chunks to remove, and remove them.
# # E.g., from c(1, 2, 4, 5, 6, 8, 9) remove only 8 and 9
# dist <- abs(empty_chunks - c(empty_chunks[1] - 1, head(empty_chunks, length(empty_chunks) - 1)))
# if (all(dist == 1)) {
# first_chunk_to_remove <- 1
# } else {
# first_chunk_to_remove <- tail(which(dist > 1), 1)
# }
# end_chunks_to_remove <- empty_chunks[first_chunk_to_remove:length(empty_chunks)]
# chunks_to_keep <- which(!((1:length(taken_chunks)) %in% c(start_chunks_to_remove, end_chunks_to_remove)))
chunks_to_keep <- which(taken_chunks)
dims_to_crop[[file_dim]] <- c(dims_to_crop[[file_dim]], list(chunks_to_keep))
# found_indices <- Subset(found_indices, file_dim, chunks_to_keep)
# # Crop dataset variables file dims.
# for (picked_var in names(picked_vars[[i]])) {
# if (file_dim %in% names(dim(picked_vars[[i]][[picked_var]]))) {
# picked_vars[[i]][[picked_var]] <- Subset(picked_vars[[i]][[picked_var]], file_dim, chunks_to_keep)
# }
# }
}
#}
dat[[i]][['selectors']][[inner_dim]] <- list(fri = fri, sri = sri)
# Crop dataset variables inner dims.
# Crop common variables inner dims.
types_of_var_to_crop <- 'picked'
if (with_transform) {
types_of_var_to_crop <- c(types_of_var_to_crop, 'transformed')
}
if (!is.null(dim_reorder_params[[inner_dim]])) {
types_of_var_to_crop <- c(types_of_var_to_crop, 'reordered')
}
for (type_of_var_to_crop in types_of_var_to_crop) {
if (type_of_var_to_crop == 'transformed') {
if (is.null(tvi)) {
if (!is.null(dim_reorder_params[[inner_dim]])) {
crop_indices <- unique(unlist(ordered_sri))
} else {
crop_indices <- unique(unlist(sri))
}
} else {
crop_indices <- unique(unlist(tvi))
}
vars_to_crop <- transformed_vars[[i]]
common_vars_to_crop <- transformed_common_vars
} else if (type_of_var_to_crop == 'reordered') {
crop_indices <- unique(unlist(ordered_fri))
vars_to_crop <- picked_vars_ordered[[i]]
common_vars_to_crop <- picked_common_vars_ordered
} else {
crop_indices <- unique(unlist(fri))
vars_to_crop <- picked_vars[[i]]
common_vars_to_crop <- picked_common_vars
}
for (var_to_crop in names(vars_to_crop)) {
if (inner_dim %in% names(dim(vars_to_crop[[var_to_crop]]))) {
if (!is.null(crop_indices)) {
if (type_of_var_to_crop == 'transformed') {
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vars_to_crop[[var_to_crop]] <- Subset(transformed_subset_var, inner_dim, crop_indices)
} else {
vars_to_crop[[var_to_crop]] <- Subset(vars_to_crop[[var_to_crop]], inner_dim, crop_indices)
}
} else {
vars_to_crop[[var_to_crop]] <- Subset(vars_to_crop[[var_to_crop]], inner_dim, crop_indices)
}
}
}
}
if (i == length(dat)) {
for (common_var_to_crop in names(common_vars_to_crop)) {
if (inner_dim %in% names(dim(common_vars_to_crop[[common_var_to_crop]]))) {
common_vars_to_crop[[common_var_to_crop]] <- Subset(common_vars_to_crop[[common_var_to_crop]], inner_dim, crop_indices)
}
}
}
if (type_of_var_to_crop == 'transformed') {
if (!is.null(vars_to_crop)) {
transformed_vars[[i]] <- vars_to_crop
}
if (i == length(dat)) {
transformed_common_vars <- common_vars_to_crop
}
} else if (type_of_var_to_crop == 'reordered') {
if (!is.null(vars_to_crop)) {
picked_vars_ordered[[i]] <- vars_to_crop
}
if (i == length(dat)) {
picked_common_vars_ordered <- common_vars_to_crop
}
} else {
if (!is.null(vars_to_crop)) {
picked_vars[[i]] <- vars_to_crop
}
if (i == length(dat)) {
picked_common_vars <- common_vars_to_crop
}
}
}
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}
# After the selectors have been picked (using the original variables),
# the variables are transformed. At that point, the original selectors
# for the transformed variables are also kept in the variable original_selectors.
#print("L")
}
}
}
# if (!is.null(transformed_common_vars)) {
# picked_common_vars[names(transformed_common_vars)] <- transformed_common_vars
# }
# Remove the trailing chunks, if any.
for (file_dim in names(dims_to_crop)) {
# indices_to_keep <- min(sapply(dims_to_crop[[file_dim]], min)):max(sapply(dims_to_crop[[file_dim]], max))
## TODO: Merge indices in dims_to_crop with some advanced mechanism?
indices_to_keep <- unique(unlist(dims_to_crop[[file_dim]]))
array_of_files_to_load <- Subset(array_of_files_to_load, file_dim, indices_to_keep)
array_of_not_found_files <- Subset(array_of_not_found_files, file_dim, indices_to_keep)
for (i in 1:length(dat)) {
# Crop selectors
for (selector_dim in names(dat[[i]][['selectors']])) {
if (selector_dim == file_dim) {
for (j in 1:length(dat[[i]][['selectors']][[selector_dim]][['fri']])) {
dat[[i]][['selectors']][[selector_dim]][['fri']][[j]] <- dat[[i]][['selectors']][[selector_dim]][['fri']][[j]][indices_to_keep]
}
for (j in 1:length(dat[[i]][['selectors']][[selector_dim]][['sri']])) {
dat[[i]][['selectors']][[selector_dim]][['sri']][[j]] <- dat[[i]][['selectors']][[selector_dim]][['sri']][[j]][indices_to_keep]
}
}
if (file_dim %in% names(dim(dat[[i]][['selectors']][[selector_dim]][['fri']]))) {
dat[[i]][['selectors']][[selector_dim]][['fri']] <- Subset(dat[[i]][['selectors']][[selector_dim]][['fri']], file_dim, indices_to_keep)
dat[[i]][['selectors']][[selector_dim]][['sri']] <- Subset(dat[[i]][['selectors']][[selector_dim]][['sri']], file_dim, indices_to_keep)
}
}
# Crop dataset variables file dims.
for (picked_var in names(picked_vars[[i]])) {
if (file_dim %in% names(dim(picked_vars[[i]][[picked_var]]))) {
picked_vars[[i]][[picked_var]] <- Subset(picked_vars[[i]][[picked_var]], file_dim, indices_to_keep)
}
}
for (transformed_var in names(transformed_vars[[i]])) {
if (file_dim %in% names(dim(transformed_vars[[i]][[transformed_var]]))) {
transformed_vars[[i]][[transformed_var]] <- Subset(transformed_vars[[i]][[transformed_var]], file_dim, indices_to_keep)
}
}
}
# Crop common variables file dims.
for (picked_common_var in names(picked_common_vars)) {
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if (file_dim %in% names(dim(picked_common_vars[[picked_common_var]]))) {
picked_common_vars[[picked_common_var]] <- Subset(picked_common_vars[[picked_common_var]], file_dim, indices_to_keep)
}
}
for (transformed_common_var in names(transformed_common_vars)) {
if (file_dim %in% names(dim(transformed_common_vars[[transformed_common_var]]))) {
transformed_common_vars[[transformed_common_var]] <- Subset(transformed_common_vars[[transformed_common_var]], file_dim, indices_to_keep)
}
}
}
# Calculate the size of the final array.
total_inner_dims <- NULL
for (i in 1:length(dat)) {
if (dataset_has_files[i]) {
inner_dims <- expected_inner_dims[[i]]
inner_dims <- sapply(inner_dims,
function(x) {
if (!all(sapply(dat[[i]][['selectors']][[x]][['sri']], is.null))) {
max(sapply(dat[[i]][['selectors']][[x]][['sri']], length))
} else {
if (length(var_params[[x]]) > 0) {
if (var_params[[x]] %in% names(transformed_vars[[i]])) {
length(transformed_vars[[i]][[var_params[[x]]]])
} else if (var_params[[x]] %in% names(transformed_common_vars)) {
length(transformed_common_vars[[var_params[[x]]]])
} else {
max(sapply(dat[[i]][['selectors']][[x]][['fri']], length))
}
} else {
max(sapply(dat[[i]][['selectors']][[x]][['fri']], length))
}
}
})
names(inner_dims) <- expected_inner_dims[[i]]
if (is.null(total_inner_dims)) {
total_inner_dims <- inner_dims
} else {
new_dims <- .MergeArrayDims(total_inner_dims, inner_dims)
}
}
}
new_dims <- .MergeArrayDims(dim(array_of_files_to_load), total_inner_dims)
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# final_dims_fake is the vector of final dimensions after having merged the
# 'across' file dimensions with the respective 'across' inner dimensions, and
# after having broken into multiple dimensions those dimensions for which
# multidimensional selectors have been provided.
# final_dims will be used for collocation of data, whereas final_dims_fake
# will be used for shaping the final array to be returned to the user.
final_dims_fake <- final_dims
if (merge_across_dims) {
if (!is.null(inner_dims_across_files)) {
for (file_dim_across in names(inner_dims_across_files)) {
inner_dim_pos <- which(names(final_dims_fake) == inner_dims_across_files[[file_dim_across]])
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new_dims <- c()
if (inner_dim_pos > 1) {
new_dims <- c(new_dims, final_dims_fake[1:(inner_dim_pos - 1)])
}
new_dims <- c(new_dims, setNames(prod(final_dims_fake[c(inner_dim_pos, inner_dim_pos + 1)]),
inner_dims_across_files[[file_dim_across]]))
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if (inner_dim_pos + 1 < length(final_dims_fake)) {
new_dims <- c(new_dims, final_dims_fake[(inner_dim_pos + 2):length(final_dims_fake)])
}
final_dims_fake <- new_dims
}
}
}
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if (split_multiselected_dims) {
for (dim_param in 1:length(dim_params)) {
if (!is.null(dim(dim_params[[dim_param]]))) {
if (length(dim(dim_params[[dim_param]])) > 1) {
split_dims <- dim(dim_params[[dim_param]])
all_split_dims <- c(all_split_dims, setNames(list(split_dims),
names(dim_params)[dim_param]))
if (is.null(names(split_dims))) {
names(split_dims) <- paste0(names(dim_params)[dim_param],
1:length(split_dims))
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}
old_dim_pos <- which(names(final_dims_fake) == names(dim_params)[dim_param])
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# NOTE: Three steps to create new dims.
# 1st: Put in the dims before split_dim.
# 2nd: Replace the old_dim with split_dims.
# 3rd: Put in the dims after split_dim.
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new_dims <- c()
if (old_dim_pos > 1) {
new_dims <- c(new_dims, final_dims_fake[1:(old_dim_pos - 1)])
}
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# NOTE: If merge_across_dims, the dim order is changed. Put inner_dim the first.
# Cannot control the rest dims are in the same order or not...
# Suppose users put the same order of across inner and file dims.
if (merge_across_dims) {
# TODO: More than one split?
inner_dim_pos_in_split_dims <- which(names(split_dims) == inner_dims_across_files)
if (inner_dim_pos_in_split_dims != 1) {
split_dims <- c(split_dims[inner_dim_pos_in_split_dims],
split_dims[1:length(split_dims)][-inner_dim_pos_in_split_dims])
}
}
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new_dims <- c(new_dims, split_dims)
if (old_dim_pos < length(final_dims_fake)) {
new_dims <- c(new_dims, final_dims_fake[(old_dim_pos + 1):length(final_dims_fake)])
}
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}
}
}
}
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if (merge_across_dims_narm) {
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# only merge_across_dims -> the 'time' dim length needs to be adjusted
across_inner_dim <- inner_dims_across_files[[1]] #TODO: more than one?
across_file_dim <- names(inner_dims_across_files) #TODO: more than one?
# Get the length of each inner_dim ('time') along each file_dim ('file_date')
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length_inner_across_dim <- lapply(dat[[i]][['selectors']][[across_inner_dim]][['fri']], length)
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if (!split_multiselected_dims) {
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final_dims_fake_name <- names(final_dims_fake)
pos_across_inner_dim <- which(final_dims_fake_name == across_inner_dim)
new_length_inner_dim <- sum(unlist(length_inner_across_dim))
if (pos_across_inner_dim != length(final_dims_fake)) {
final_dims_fake <- c(final_dims_fake[1:(pos_across_inner_dim - 1)],
new_length_inner_dim,
final_dims_fake[(pos_across_inner_dim + 1):length(final_dims_fake)])
} else {
final_dims_fake <- c(final_dims_fake[1:(pos_across_inner_dim - 1)],
new_length_inner_dim)
}
names(final_dims_fake) <- final_dims_fake_name
}
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}
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if (!silent) {
.message("Detected dimension sizes:")
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longest_dim_len <- max(sapply(names(final_dims_fake), nchar))
longest_size_len <- max(sapply(paste0(final_dims_fake, ''), nchar))
sapply(names(final_dims_fake),
function(x) {
message(paste0("* ", paste(rep(' ', longest_dim_len - nchar(x)), collapse = ''),
Nicolau Manubens
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x, ": ", paste(rep(' ', longest_size_len - nchar(paste0(final_dims_fake[x], ''))), collapse = ''),
final_dims_fake[x]))
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bytes <- prod(c(final_dims_fake, 8))
dim_sizes <- paste(final_dims_fake, collapse = ' x ')
if (retrieve) {
.message(paste("Total size of requested data:"))
} else {
.message(paste("Total size of involved data:"))
}
.message(paste(dim_sizes, " x 8 bytes =",
format(structure(bytes, class = "object_size"), units = "auto")),
indent = 2)
}
# The following several lines will only be run if retrieve = TRUE
if (retrieve) {
########## CREATING THE SHARED MATRIX AND DISPATCHING WORK PIECES ###########
# TODO: try performance of storing all in cols instead of rows
# Create the shared memory array, and a pointer to it, to be sent
# to the work pieces.
data_array <- big.matrix(nrow = prod(final_dims), ncol = 1)
shared_matrix_pointer <- describe(data_array)
if (is.null(num_procs)) {
# Creating a shared tmp folder to store metadata from each chunk
array_of_metadata_flags <- array(FALSE, dim = dim(array_of_files_to_load))
if (!is.null(metadata_dims)) {
metadata_indices_to_load <- as.list(rep(1, length(dim(array_of_files_to_load))))
names(metadata_indices_to_load) <- names(dim(array_of_files_to_load))
metadata_indices_to_load[metadata_dims] <- as.list(rep(TRUE, length(metadata_dims)))
array_of_metadata_flags <- do.call('[<-', c(list(array_of_metadata_flags), metadata_indices_to_load,
list(value = rep(TRUE, prod(dim(array_of_files_to_load)[metadata_dims])))))
}
metadata_file_counter <- 0
metadata_folder <- tempfile('metadata')
dir.create(metadata_folder)
# Build the work pieces, each with:
# - file path
# - total size (dims) of store array
# - start position in store array
# - file selectors (to provide extra info. useful e.g. to select variable)
# - indices to take from file
work_pieces <- list()
for (i in 1:length(dat)) {
if (dataset_has_files[i]) {
selectors <- dat[[i]][['selectors']]
file_dims <- found_file_dims[[i]]
inner_dims <- expected_inner_dims[[i]]
sub_array_dims <- final_dims[file_dims]
sub_array_dims[found_pattern_dim] <- 1
sub_array_of_files_to_load <- array(1:prod(sub_array_dims),
dim = sub_array_dims)
names(dim(sub_array_of_files_to_load)) <- names(sub_array_dims)
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# Detect which of the dimensions of the dataset go across files.
file_dim_across_files <- lapply(inner_dims,
function(x) {
dim_across <- sapply(inner_dims_across_files, function(y) x %in% y)
if (any(dim_across)) {
names(inner_dims_across_files)[which(dim_across)[1]]
} else {
NULL
}
})
names(file_dim_across_files) <- inner_dims
j <- 1
while (j <= prod(sub_array_dims)) {
# Work out file path.
file_to_load_sub_indices <- which(sub_array_of_files_to_load == j, arr.ind = TRUE)[1, ]
names(file_to_load_sub_indices) <- names(sub_array_dims)
file_to_load_sub_indices[found_pattern_dim] <- i
big_dims <- rep(1, length(dim(array_of_files_to_load)))
names(big_dims) <- names(dim(array_of_files_to_load))
file_to_load_indices <- .MergeArrayDims(file_to_load_sub_indices, big_dims)[[1]]
file_to_load <- do.call('[[', c(list(array_of_files_to_load),
as.list(file_to_load_indices)))
not_found_file <- do.call('[[', c(list(array_of_not_found_files),
as.list(file_to_load_indices)))
load_file_metadata <- do.call('[', c(list(array_of_metadata_flags),
as.list(file_to_load_indices)))
if (load_file_metadata) {
metadata_file_counter <- metadata_file_counter + 1
}
if (!is.na(file_to_load) && !not_found_file) {
# Work out indices to take
first_round_indices <- lapply(inner_dims,
function (x) {
if (is.null(file_dim_across_files[[x]])) {
selectors[[x]][['fri']][[1]]
} else {
which_chunk <- file_to_load_sub_indices[file_dim_across_files[[x]]]
selectors[[x]][['fri']][[which_chunk]]
}
})
names(first_round_indices) <- inner_dims
second_round_indices <- lapply(inner_dims,
function (x) {
if (is.null(file_dim_across_files[[x]])) {
selectors[[x]][['sri']][[1]]
} else {
which_chunk <- file_to_load_sub_indices[file_dim_across_files[[x]]]
selectors[[x]][['sri']][[which_chunk]]
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}
})
if (debug) {
print("-> BUILDING A WORK PIECE")
#print(str(selectors))
}
names(second_round_indices) <- inner_dims
if (!any(sapply(first_round_indices, length) == 0)) {
work_piece <- list()
work_piece[['first_round_indices']] <- first_round_indices
work_piece[['second_round_indices']] <- second_round_indices
work_piece[['file_indices_in_array_of_files']] <- file_to_load_indices
work_piece[['file_path']] <- file_to_load
work_piece[['store_dims']] <- final_dims
# Work out store position
store_position <- final_dims
store_position[names(file_to_load_indices)] <- file_to_load_indices
store_position[inner_dims] <- rep(1, length(inner_dims))
work_piece[['store_position']] <- store_position
# Work out file selectors
file_selectors <- sapply(file_dims,
function (x) {
vector_to_pick <- 1
if (x %in% names(depending_file_dims)) {
vector_to_pick <- file_to_load_indices[depending_file_dims[[x]]]
}
selectors[file_dims][[x]][[vector_to_pick]][file_to_load_indices[x]]
})
names(file_selectors) <- file_dims
work_piece[['file_selectors']] <- file_selectors
# Send variables for transformation
if (!is.null(transform) && (length(transform_vars) > 0)) {
vars_to_transform <- NULL
picked_vars_to_transform <- which(names(picked_vars[[i]]) %in% transform_vars)
if (length(picked_vars_to_transform) > 0) {
picked_vars_to_transform <- names(picked_vars[[i]])[picked_vars_to_transform]
vars_to_transform <- c(vars_to_transform, picked_vars[[i]][picked_vars_to_transform])
if (any(picked_vars_to_transform %in% names(picked_vars_ordered[[i]]))) {
picked_vars_ordered_to_transform <- picked_vars_to_transform[which(picked_vars_to_transform %in% names(picked_vars_ordered[[i]]))]
vars_to_transform[picked_vars_ordered_to_transform] <- picked_vars_ordered[[i]][picked_vars_ordered_to_transform]
}
}
picked_common_vars_to_transform <- which(names(picked_common_vars) %in% transform_vars)
if (length(picked_common_vars_to_transform) > 0) {
picked_common_vars_to_transform <- names(picked_common_vars)[picked_common_vars_to_transform]
vars_to_transform <- c(vars_to_transform, picked_common_vars[picked_common_vars_to_transform])
if (any(picked_common_vars_to_transform %in% names(picked_common_vars_ordered))) {
picked_common_vars_ordered_to_transform <- picked_common_vars_to_transform[which(picked_common_vars_to_transform %in% names(picked_common_vars_ordered))]
vars_to_transform[picked_common_vars_ordered_to_transform] <- picked_common_vars_ordered[picked_common_vars_ordered_to_transform]
}
}
work_piece[['vars_to_transform']] <- vars_to_transform
}
# Send flag to load metadata
if (load_file_metadata) {
work_piece[['save_metadata_in']] <- paste0(metadata_folder, '/', metadata_file_counter)
}
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work_pieces <- c(work_pieces, list(work_piece))
}
}
j <- j + 1
}
}
}
#print("N")
if (debug) {
print("-> WORK PIECES BUILT")
}
# Calculate the progress %s that will be displayed and assign them to
# the appropriate work pieces.
if (length(work_pieces) / num_procs >= 2 && !silent) {
if (length(work_pieces) / num_procs < 10) {
amount <- 100 / ceiling(length(work_pieces) / num_procs)
reps <- ceiling(length(work_pieces) / num_procs)
} else {
amount <- 10
reps <- 10
}
progress_steps <- rep(amount, reps)
if (length(work_pieces) < (reps + 1)) {
selected_pieces <- length(work_pieces)
progress_steps <- c(sum(head(progress_steps, reps)),
tail(progress_steps, reps))
} else {
selected_pieces <- round(seq(1, length(work_pieces),
length.out = reps + 1))[-1]
}
progress_steps <- paste0(' + ', round(progress_steps, 2), '%')
progress_message <- 'Progress: 0%'
} else {
progress_message <- ''
selected_pieces <- NULL
}
piece_counter <- 1
step_counter <- 1
work_pieces <- lapply(work_pieces,
function (x) {
if (piece_counter %in% selected_pieces) {
wp <- c(x, list(progress_amount = progress_steps[step_counter]))
step_counter <<- step_counter + 1
} else {
wp <- x
}
piece_counter <<- piece_counter + 1
wp
})
if (!silent) {
.message("If the size of the requested data is close to or above the free shared RAM memory, R may crash.")
.message("If the size of the requested data is close to or above the half of the free RAM memory, R may crash.")
.message(paste0("Will now proceed to read and process ", length(work_pieces), " data files:"))
if (length(work_pieces) < 30) {
lapply(work_pieces, function (x) .message(x[['file_path']], indent = 2))
} else {
.message("The list of files is long. You can check it after Start() finishes in the output '$Files'.", indent = 2, exdent = 5)
}
}
# Build the cluster of processes that will do the work and dispatch work pieces.
# The function .LoadDataFile is applied to each work piece. This function will
# open the data file, regrid if needed, subset, apply the mask,
# compute and apply the weights if needed,
# disable extreme values and store in the shared memory matrix.
#print("O")
if (!silent) {
.message("Loading... This may take several minutes...")
if (progress_message != '') {
.message(progress_message, appendLF = FALSE)
}
}
if (num_procs == 1) {
found_files <- lapply(work_pieces, .LoadDataFile,
shared_matrix_pointer = shared_matrix_pointer,
file_data_reader = file_data_reader,
transform = transform,
transform_params = transform_params,
silent = silent, debug = debug)
} else {
cluster <- makeCluster(num_procs, outfile = "")
# Send the heavy work to the workers
work_errors <- try({
found_files <- clusterApplyLB(cluster, work_pieces, .LoadDataFile,
shared_matrix_pointer = shared_matrix_pointer,
file_data_reader = file_data_reader,
transform = transform,
transform_params = transform_params,
silent = silent, debug = debug)
})
stopCluster(cluster)
}
if (!silent) {
if (progress_message != '') {
.message("\n", tag = '')
}
}
#print("P")
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# NOTE: If merge_across_dims = TRUE, there might be additional NAs due to
# unequal inner_dim ('time') length across file_dim ('file_date').
# If merge_across_dims_narm = TRUE, add additional lines to remove these NAs.
# TODO: Now it assumes that only one '_across'. Add a for loop for more-than-one case.
if (merge_across_dims_narm) {
# Get the length of these two dimensions in final_dims
length_inner_across_store_dims <- final_dims[across_inner_dim]
length_file_across_store_dims <- final_dims[across_file_dim]
# Create a logical array for merge_across_dims
logi_array <- array(rep(FALSE,
length_file_across_store_dims * length_inner_across_store_dims),
dim = c(length_inner_across_store_dims, length_file_across_store_dims))
for (i in 1:length_file_across_store_dims) { #1:4
logi_array[1:length_inner_across_dim[[i]], i] <- TRUE
}
# First, get the data array with final_dims dimension
data_array_final_dims <- array(bigmemory::as.matrix(data_array), dim = final_dims)
# Change the NA derived from additional spaces to -9999, then remove these -9999
func_remove_blank <- function(data_array, logi_array) {
# dim(data_array) = [time, file_date]
# dim(logi_array) = [time, file_date]
# Change the blank spaces from NA to -9999
data_array[which(!logi_array)] <- -9999
return(data_array)
}
data_array_final_dims <- multiApply::Apply(data_array_final_dims,
target_dims = c(across_inner_dim, across_file_dim), #c('time', 'file_date')
output_dims = c(across_inner_dim, across_file_dim),
fun = func_remove_blank,
logi_array = logi_array)$output1
## reorder back to the correct dim
tmp <- match(names(final_dims), names(dim(data_array_final_dims)))
aho
committed
data_array_final_dims <- .aperm2(data_array_final_dims, tmp)
data_array_tmp <- data_array_final_dims[data_array_final_dims != -9999] # become a vector
data_array <- array(data_array_tmp, dim = final_dims_fake)
} else { # merge_across_dims_narm = F (old version)
data_array <- array(bigmemory::as.matrix(data_array), dim = final_dims_fake)
}
# Load metadata and remove the metadata folder
if (!is.null(metadata_dims)) {
loaded_metadata_files <- list.files(metadata_folder)
loaded_metadata <- lapply(paste0(metadata_folder, '/', loaded_metadata_files), readRDS)
unlink(metadata_folder, recursive = TRUE)
return_metadata <- vector('list', length = prod(dim(array_of_metadata_flags)[metadata_dims]))
return_metadata[as.numeric(loaded_metadata_files)] <- loaded_metadata
dim(return_metadata) <- dim(array_of_metadata_flags[metadata_dims])
attr(data_array, 'Variables') <- return_metadata
# TODO: Try to infer data type from loaded_metadata
# as.integer(data_array)
}
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failed_pieces <- work_pieces[which(unlist(found_files))]
for (failed_piece in failed_pieces) {
array_of_not_found_files <- do.call('[<-',
c(list(array_of_not_found_files),
as.list(failed_piece[['file_indices_in_array_of_files']]),
list(value = TRUE)))
}
if (any(array_of_not_found_files)) {
for (i in 1:prod(dim(array_of_files_to_load))) {
if (is.na(array_of_not_found_files[i])) {
array_of_files_to_load[i] <- NA
} else {
if (array_of_not_found_files[i]) {
array_of_not_found_files[i] <- array_of_files_to_load[i]
array_of_files_to_load[i] <- NA
} else {
array_of_not_found_files[i] <- NA
}
}
}
} else {
array_of_not_found_files <- NULL
}
# Replace the vars and common vars by the transformed vars and common vars
for (i in 1:length(dat)) {
if (length(names(transformed_vars[[i]])) > 0) {
picked_vars[[i]][names(transformed_vars[[i]])] <- transformed_vars[[i]]
} else if (length(names(picked_vars_ordered[[i]])) > 0) {
picked_vars[[i]][names(picked_vars_ordered[[i]])] <- picked_vars_ordered[[i]]
}
}
if (length(names(transformed_common_vars)) > 0) {
picked_common_vars[names(transformed_common_vars)] <- transformed_common_vars
} else if (length(names(picked_common_vars_ordered)) > 0) {
picked_common_vars[names(picked_common_vars_ordered)] <- picked_common_vars_ordered
}
if (debug) {
print("-> THE TRANSFORMED VARS:")
print(str(transformed_vars))
print("-> THE PICKED VARS:")
print(str(picked_vars))
}
file_selectors <- NULL
for (i in 1:length(dat)) {
file_selectors[[dat[[i]][['name']]]] <- dat[[i]][['selectors']][which(names(dat[[i]][['selectors']]) %in% found_file_dims[[i]])]
}
if (retrieve) {
if (!silent) {
.message("Successfully retrieved data.")
}
var_backup <- attr(data_array, 'Variables')[[1]]
attr(data_array, 'Variables') <- NULL
attributes(data_array) <- c(attributes(data_array),
list(Variables = c(list(common = c(picked_common_vars, var_backup)),
picked_vars),
Files = array_of_files_to_load,
NotFoundFiles = array_of_not_found_files,
FileSelectors = file_selectors,
PatternDim = found_pattern_dim)
attr(data_array, 'class') <- c('startR_array', attr(data_array, 'class'))
} else {
if (!silent) {
.message("Successfully discovered data dimensions.")
}
start_call <- match.call()
start_call[[i]] <- eval.parent(start_call[[i]])
start_call[['retrieve']] <- TRUE
attributes(start_call) <- c(attributes(start_call),
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list(Dimensions = final_dims_fake,
Variables = c(list(common = picked_common_vars), picked_vars),
ExpectedFiles = array_of_files_to_load,
PatternDim = found_pattern_dim,
MergedDims = if (merge_across_dims) {
inner_dims_across_files
} else {
NULL
},
SplitDims = if (split_multiselected_dims) {
all_split_dims
} else {
NULL
})
attr(start_call, 'class') <- c('startR_cube', attr(start_call, 'class'))
}
# This function is the responsible for loading the data of each work
# piece.
.LoadDataFile <- function(work_piece, shared_matrix_pointer,
file_data_reader, synonims,
transform, transform_params,
silent = FALSE, debug = FALSE) {
# suppressPackageStartupMessages({library(bigmemory)})
### TODO: Specify dependencies as parameter
# suppressPackageStartupMessages({library(ncdf4)})
#print("1")
store_indices <- as.list(work_piece[['store_position']])
first_round_indices <- work_piece[['first_round_indices']]
second_round_indices <- work_piece[['second_round_indices']]
#print("2")
file_to_open <- work_piece[['file_path']]
sub_array <- file_data_reader(file_to_open, NULL,
work_piece[['file_selectors']],
first_round_indices, synonims)
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if (debug) {
if (all(unlist(store_indices[1:6]) == 1)) {
print("-> LOADING A WORK PIECE")
print("-> STRUCTURE OF READ UNTRANSFORMED DATA:")
print(str(sub_array))
print("-> STRUCTURE OF VARIABLES TO TRANSFORM:")
print(str(work_piece[['vars_to_transform']]))
print("-> COMMON ARRAY DIMENSIONS:")
print(str(work_piece[['store_dims']]))
}
}
if (!is.null(sub_array)) {
# Apply data transformation once we have the data arrays.
if (!is.null(transform)) {
if (debug) {
if (all(unlist(store_indices[1:6]) == 1)) {
print("-> PROCEEDING TO TRANSFORM ARRAY")
print("-> DIMENSIONS OF ARRAY RIGHT BEFORE TRANSFORMING:")
print(dim(sub_array))
}
}
sub_array <- do.call(transform, c(list(data_array = sub_array,
variables = work_piece[['vars_to_transform']],
file_selectors = work_piece[['file_selectors']]),
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transform_params))
if (debug) {
if (all(unlist(store_indices[1:6]) == 1)) {
print("-> STRUCTURE OF ARRAY AND VARIABLES RIGHT AFTER TRANSFORMING:")
print(str(sub_array))
print("-> DIMENSIONS OF ARRAY RIGHT AFTER TRANSFORMING:")
print(dim(sub_array$data_array))
}
}
sub_array <- sub_array$data_array
# Subset with second round of indices
dims_to_crop <- which(!sapply(second_round_indices, is.null))
if (length(dims_to_crop) > 0) {
dimnames_to_crop <- names(second_round_indices)[dims_to_crop]
sub_array <- Subset(sub_array, dimnames_to_crop,
second_round_indices[dimnames_to_crop])
}
if (debug) {
if (all(unlist(store_indices[1:6]) == 1)) {
print("-> STRUCTURE OF ARRAY AND VARIABLES RIGHT AFTER SUBSETTING WITH 2nd ROUND INDICES:")
print(str(sub_array))
}
}
}
metadata <- attr(sub_array, 'variables')
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names_bk <- names(store_indices)
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store_indices <- lapply(names(store_indices),
function (x) {
if (!(x %in% names(first_round_indices))) {
store_indices[[x]]
} else if (is.null(second_round_indices[[x]])) {
1:dim(sub_array)[x]
} else {
if (is.numeric(second_round_indices[[x]])) {
## TODO: Review carefully this line. Inner indices are all
## aligned to the left-most positions. If dataset A has longitudes
## 1, 2, 3, 4 but dataset B has only longitudes 3 and 4, then
## they will be stored as follows:
## 1, 2, 3, 4
## 3, 4, NA, NA
##x - min(x) + 1
1:length(second_round_indices[[x]])
} else {
1:length(second_round_indices[[x]])
}
}
})
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names(store_indices) <- names_bk
print("-> STRUCTURE OF FIRST ROUND INDICES FOR THIS WORK PIECE:")
print(str(first_round_indices))
print("-> STRUCTURE OF SECOND ROUND INDICES FOR THIS WORK PIECE:")
print(str(second_round_indices))
print("-> STRUCTURE OF STORE INDICES FOR THIS WORK PIECE:")
print(str(store_indices))
}
}
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store_indices <- lapply(store_indices, as.integer)
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# split the storage work of the loaded subset in parts
largest_dim_name <- names(dim(sub_array))[which.max(dim(sub_array))]
max_parts <- length(store_indices[[largest_dim_name]])
# Indexing a data file of N MB with expand.grid takes 30*N MB
# The peak ram of Start is, minimum, 2 * total data to load from all files
# due to inefficiencies in other regions of the code
# The more parts we split the indexing done below in, the lower
# the memory footprint of the indexing and the fast.
# But more than 10 indexing iterations (parts) for each MB processed
# makes the iteration slower (tested empirically on BSC workstations).
subset_size_in_mb <- prod(dim(sub_array)) * 8 / 1024 / 1024
best_n_parts <- ceiling(subset_size_in_mb * 10)
# We want to set n_parts to a greater value than the one that would
# result in a memory footprint (of the subset indexing code below) equal
# to 2 * total data to load from all files.
# s = subset size in MB
# p = number of parts to break it in
# T = total size of data to load
# then, s / p * 30 = 2 * T
# then, p = s * 15 / T
min_n_parts <- ceiling(prod(dim(sub_array)) * 15 / prod(store_dims))
# Make sure we pick n_parts much greater than the minimum calculated
n_parts <- min_n_parts * 10
if (n_parts > best_n_parts) {
n_parts <- best_n_parts
}
# Boundary checks
if (n_parts < 1) {
n_parts <- 1
}
if (n_parts > max_parts) {
n_parts <- max_parts
}
if (n_parts > 1) {
make_parts <- function(length, n) {
clusters <- cut(1:length, n, labels = FALSE)
lapply(1:n, function(y) which(clusters == y))
}
part_indices <- make_parts(max_parts, n_parts)
parts <- lapply(part_indices,
function(x) {
store_indices[[largest_dim_name]][x]
})
} else {
part_indices <- list(1:max_parts)
parts <- store_indices[largest_dim_name]
}
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# do the storage work
weights <- sapply(1:length(store_dims),
function(i) prod(c(1, store_dims)[1:i]))
part_indices_in_sub_array <- as.list(rep(TRUE, length(dim(sub_array))))
names(part_indices_in_sub_array) <- names(dim(sub_array))
data_array <- bigmemory::attach.big.matrix(shared_matrix_pointer)
for (i in 1:n_parts) {
store_indices[[largest_dim_name]] <- parts[[i]]
# Converting array indices to vector indices
matrix_indices <- do.call("expand.grid", store_indices)
# Given a matrix where each row is a set of array indices of an element
# the vector indices are computed
matrix_indices <- 1 + colSums(t(matrix_indices - 1) * weights)
part_indices_in_sub_array[[largest_dim_name]] <- part_indices[[i]]
data_array[matrix_indices] <- as.vector(do.call('[',
c(list(x = sub_array),
part_indices_in_sub_array)))
}
rm(data_array)
gc()
if (!is.null(work_piece[['save_metadata_in']])) {
saveRDS(metadata, file = work_piece[['save_metadata_in']])
}
}
if (!is.null(work_piece[['progress_amount']]) && !silent) {
message(work_piece[['progress_amount']], appendLF = FALSE)
}
is.null(sub_array)
}