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ENV["LAZAR_ENV"] = "production"
require_relative '../lazar/lib/lazar'
#require 'lazar'
include OpenTox
$mongo.database.drop
$gridfs = $mongo.database.fs # recreate GridFS indexes
=begin
# classification models
Dir["classification/*csv"].each do |file|
if file.match(/hamster/)
Model::Validation.from_csv_file file
end
end
#=end
=begin
# regression models
Dir["regression/*log10.csv"].each do |file|
Model::Validation.from_csv_file file
end
=end
## nano-lazar
=begin
# creates 3 models: one with physchem, one with proteomics, one with fingerprints
feature_categories = ["fingerprint", "P-CHEM", "Proteomics"]
feature_categories.each do |category|
if category == "fingerprint"
algorithms = {
:descriptors => { :method => "fingerprint", :type => "MP2D", },
:feature_selection => nil,
:similarity => {
:method => "Algorithm::Similarity.tanimoto",
:min => 0.1
}
}
OpenTox::Model::Validation.from_enanomapper algorithms: algorithms
else
algorithms = {
:descriptors => {
:method => "properties",
:categories => (category.is_a?(Array) ? [category].flatten : [category]),
},
:similarity => {
:method => "Algorithm::Similarity.weighted_cosine",
:min => 0.5
},
:prediction => {
:method => "Algorithm::Caret.rf",
},
:feature_selection => {
:method => "Algorithm::FeatureSelection.correlation_filter",
},
}
OpenTox::Model::Validation.from_enanomapper algorithms: algorithms
end
end
=end
# save
# local
#`mongodump -h 127.0.0.1 -d production`
#`mongorestore --host 127.0.0.1`
# to/from docker volume /dump
#`sudo mongodump -h 127.0.0.1 -o /dump -d production`
#`sudo mongorestore -h 127.0.0.1 /dump`
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