view fitted_model_eval.xml @ 0:eaddff553324 draft

"planemo upload for repository https://github.com/bgruening/galaxytools/tree/master/tools/sklearn commit eb703290e2589561ea215c84aa9f71bcfe1712c6"
author bgruening
date Fri, 01 Nov 2019 17:15:22 -0400
parents
children fa1471b6c095
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<tool id="sklearn_fitted_model_eval" name="Evaluate a Fitted Model" version="@VERSION@">
    <description>using a new batch of labeled data</description>
    <macros>
        <import>main_macros.xml</import>
        <import>keras_macros.xml</import>
    </macros>
    <expand macro="python_requirements"/>
    <expand macro="macro_stdio"/>
    <version_command>echo "@VERSION@"</version_command>
    <command>
        <![CDATA[
        export HDF5_USE_FILE_LOCKING='FALSE';
        python '$__tool_directory__/fitted_model_eval.py'
            --inputs '$inputs'
            --infile_estimator '$infile_estimator'
            --outfile_eval '$outfile_eval'
            --infile_weights '$infile_weights'
            --infile1 '$input_options.infile1'
            --infile2 '$input_options.infile2'
        ]]>
    </command>
    <configfiles>
        <inputs name="inputs" />
    </configfiles>
    <inputs>
        <param name="infile_estimator" type="data" format="zip" label="Choose the dataset containing pipeline/estimator object"/>
        <param name="infile_weights" type="data" format="h5" optional="true" label="Choose the dataset containing weights for the estimator above" help="Optional. For deep learning only."/>
        <expand macro="scoring_selection"/>
        <conditional name="input_options">
            <expand macro="data_input_options"/>
            <when value="tabular">
                <expand macro="samples_tabular" label1="Dataset containing features:" multiple1="true" multiple2="false"/>
            </when>
            <when value="sparse">
                <expand macro="sparse_target"/>
            </when>
    </conditional>
    </inputs>
    <outputs>
        <data format="tabular" name="outfile_eval"/>
    </outputs>
    <tests>
        <test>
            <param name="infile_estimator" value="searchCV01" ftype="zip"/>
            <conditional name="scoring">
                <param name="primary_scoring" value="r2"/>
            </conditional>
            <param name="infile1" value="train_test_split_test01.tabular" ftype="tabular"/>
            <param name="header1" value="true" />
            <param name="col1" value="1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17"/>
            <param name="infile2" value="regression_y_split_test01.tabular" ftype="tabular"/>
            <param name="header2" value="true"/>
            <param name="col2" value="1"/>
            <output name="outfile_eval" file="fitted_model_eval01.tabular"/>
        </test>
    </tests>
    <help>
        <![CDATA[
**What it does**

Given a fitted estimator and a labeled dataset, this tool outputs the performances of the fitted estimator on the labeled dataset with selected scorers.

For the estimator, this tool supports fitted sklearn estimators (pickled) and trained deep learning models (model skeleton + weights). For input datasets, it supports the following:

- tabular

- sparse


**Output**

A tabular file containing performance scores,
e.g.:

======== ======== =========
accuracy f1_macro precision
======== ======== =========
 0.8613   0.6759   0.7928
======== ======== =========

        ]]>
    </help>
    <expand macro="sklearn_citation">
        <expand macro="keras_citation"/>
        <expand macro="selene_citation"/>
    </expand>
</tool>