Metadata-Version: 1.2
Name: scikit-nni
Version: 0.2.1
Summary: Hyper parameters search for scikit-learn components using Microsoft NNI
Home-page: https://github.com/ksachdeva/scikit-nni
Author: Kapil Sachdeva
Author-email: not@anemail.com
License: Apache Software License 2.0
Description: ==========
        scikit-nni
        ==========
        
        
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                :target: https://pypi.python.org/pypi/scikit-nni
        
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                :target: https://scikit-nni.readthedocs.io/en/latest/?badge=latest
                :alt: Documentation Status
        
        
        Hyper parameters search for scikit-learn components using Microsoft NNI
        
        
        * Free software: Apache Software License 2.0
        * Documentation: https://scikit-nni.readthedocs.io.
        
        
        Introduction
        -------------
        
        Microsoft NNI (Neural Network Intelligence) is a toolkit to help users run automated machine learning (AutoML) experiments.
        The tool dispatches and runs trial jobs generated by tuning algorithms to search the best neural architecture and/or hyper-parameters in different environments like local machine, remote servers and cloud.
        
        Read and explore more about Microsoft NNI here - https://github.com/microsoft/nni
        
        scikit-nni is a helper tool (and a package) that :
        
            - generates the configuration (config.yaml & search-space.json) required for NNI
            - automatically builds the scikit-learn pipelines based on your specification and becomes an experiment/trial code for Microsoft NNI to run.
        
        What value does this tool add to Microsoft NNI ?
        ###################################################
        
        First note that this tool is specifically written to only help with scikit-learn pipelines and to tune classification algorithms. In near future,
        I would add the support for regression algorithms as well.
        
        Now when you use Microsoft NNI you need to specify (at minimum) 3 files :
        
            - A search space (json) file that contains the parameters that you want to search/tune.
        
            - Your code/experiment. In your experiment code, you perform these tasks in sequence :
                - Request for the parameters from NNI server
                - Create your model using these parameters
                - Fit your model
                - Score your model
                - Report the score to NNI server.
        
            - a configuration file where you specify the tuner, which mode to use to run, path to your code file and search space file.
        
        `scikit-nni` eliminiates the second step i.e. it builds the scikit pipelines, request NNI server for parameters and also report back the score of your model.  It also simplifies (in IMHO) the input
        specification by only requiring one file instead of 3.
        
        Sounds interesting ? Then read the documentation below, install scikit-nni, and more importantly provide feedback if it does not work for you and/or you think it can be improved.
        
        Features
        --------
        
        * Hyperparameters search for scikit-learn pipelines using Microsoft NNI
        * No code required to define the pipelines
        * Built-in datasource reader for reading npz files for classification
        * Support for using custom datasource reader
        * Single configuration file to define NNI configuration and search space
        
        I plan to add more datasource readers (e.g. CSV, libSVM format files etc). Contributions are always welcome !
        
        Usage
        -----
        
        .. image:: https://github.com/ksachdeva/scikit-nni/raw/master/images/demo.gif
        
        
        Step 1 - Write a specification file
        ###################################
        
        The specification file is essentially a YAML file but with extension `.nni.yml`
        
        There are 4 parts (sections) in the configuration file.
        
        ******************
        Datasource Section
        ******************
        
        This is where you will specify the (python) callable that `sknni` would be invoking to get the training
        and test dataset.
        
        The callable **must** return two values where each value is a `tuple` of two items. The first tuple
        consists of training data `(X_train, y_train)` and the second tuple consists of test data `(X_test, y_test)`.
        
        An example callable would look like this::
        
            import numpy as np
        
            from sklearn.datasets import load_digits
            from sklearn.model_selection import train_test_split
        
            class ACustomDataSource(object):
                def __init__(self):
                    pass
        
                def __call__(self, test_size:float=0.25):
                    digits = load_digits()
                    X_train, X_test, y_train, y_test = train_test_split(digits.data, digits.target, random_state=99, test_size=test_size)
        
                    return (X_train, y_train), (X_test, y_test)
        
        In the above example, the callable generates the train and test dataset. The callable can even have paramaters for e.g. in this
        example you could optionally pass the fraction of data to be used for testing.
        
        Now let's see how you would add it in the specification file.
        
        .. code-block:: yaml
        
            # Datasource is how you specify which callable
            # sknni will invoke to get the data
            dataSource:
                reader: yourmodule.ACustomDataSource
                params:
                    test_size: 0.30
        
        Make sure that during the exeuction of the experiment your datasource (i.e. in this case `yourmodule.ACustomDataSource`)
        is available in the PYTHONPATH.
        
        Here is an additional example showing the usage of a built-in datasource reader
        
        .. code-block:: yaml
        
            dataSource:
                reader: sknni.datasource.NpzClassificationSource
                params:
                    dir_path: /Users/ksachdeva/Desktop/Dev/myoss/scikit-nni/examples/data/multiclass-classification
        
        
        `NpzClassificationSource` expects that at `dir_path` you have two folders - train and test. In each folder are the files
        named as 0.npz, 1.npz etc. Every file contains that features for that corresponding class.
        
        The repository contains two such datasources to do binary and multiclass classifications.
        
        **************************
        Pipline definition Section
        **************************
        
        Below is an example of this type of section. You simply specify the list of steps of your scikit-learn Pipeline.
        
        Note - The sequence of steps is very important.
        
        What you **MUST** ensure is that the full qualified name of your scikit-learn preprocessors, transformers and
        estimators is correctly specified & spelled. `sknni` uses reflection and introspection to create the instances of these components
        so if you have a typo in the names and/or they are not available in your PYTHONPATH you will get an error at experiment execution time.
        
        .. code-block:: yaml
        
            sklearnPipeline:
                name: normalizer_svc
                steps:
                    normalizer:
                        type: sklearn.preprocessing.Normalizer
                        classArgs:
                            norm: l2
                    svc:
                        type: sklearn.svm.SVC
        
        In above example, there are 2 steps. The first step is to normalize the data and the second step is train a classifier using Support
        Vector Machine.
        
        ********************
        Search Space Section
        ********************
        
        This section corresponds to the search space for your hyperparameters. When you use ```nnictrl``` this is typically
        specified in search-space.json file.
        
        See https://nni.readthedocs.io/en/latest/Tutorial/SearchSpaceSpec.html to learn more about the search space syntax.
        
        Here are the important things to note about this section -
        
        - The syntax is the same (except we are using YAML here instead of JSON) for specifiying parameter types and ranges.
        - You **MUST** specifiy the parameters corresponding to the step in your scikit pipeline.
        - You **MUST** use the names of the parameters that are **same as** the ones accepted by the constructors of scikit-learn components (i.e. preprocessors, estimators etc).
        
        
        Below is an example of this type of section.
        
        .. code-block:: yaml
        
            nniConfigSearchSpace:
                - normalizer:
                    norm:
                        _type: choice
                        _value: [l2, l1]
                - svc:
                    C:
                        _type: uniform
                        _value: [0.1,0.0]
                    kernel:
                        _type: choice
                        _value: [linear,rbf,poly,sigmoid]
                    degree:
                        _type: choice
                        _value: [1,2,3,4]
                    gamma:
                        _type: uniform
                        _value: [0.01,0.1]
                    coef0:
                        _type: uniform
                        _value: [0.01,0.1]
        
        Note that `sklearn.svm.SVC` takes C, kernel, degree, gamman and coef0 is the paramaters and hence we have used here
        the same names (keys) in the search space specification. You can add as many or as little parameters to search for.
        
        ******************
        NNI Config Section
        ******************
        
        This is the simplest of all sections as there is nothing new here from sknni perspective. You just copy-paste
        here your NNI's config.yaml here. You do not have to specify `codedir` and `command` field in the `trial` subsection as
        this is added by the sknni in the generated configuration files.
        
        See https://nni.readthedocs.io/en/latest/Tutorial/ExperimentConfig.html
        
        Here is an example of this type of section.
        
        .. code-block:: yaml
        
            # This is exactly same as the one that of NNI
            # except that you do not have to specify the command
            # and code fields. They are automatically added by the sknni generator
            nniConfig:
                authorName: default
                experimentName: example_sklearn-classification
                trialConcurrency: 1
                maxExecDuration: 1h
                maxTrialNum: 100
                trainingServicePlatform: local
                useAnnotation: false
                tuner:
                    builtinTunerName: TPE
                    classArgs:
                        optimize_mode: maximize
                trial:
                    gpuNum: 0
        
        You can look at the various examples in the repository to learn how to define your own specification file.
        
        Step 2 - Generate your experiment
        #################################
        
        .. code-block:: bash
        
            sknni generate-experiment --spec example/basic_svc.nni.yml --output-dir experiments
        
        
        Above command will create a directory experiments/svc-classification with the following files
        
            - The original specification file i.e. basic_svc.nni.yml (used during experiment run as well)
            - Generated Microsoft NNI's config.yml
            - Generated Microsoft NNI's search-space.json
        
        Note - there is no python file as typically shown in the examples of Microsoft NNI as the command
        in ends up invoking `sknni` entry point when the experiment is run.
        
        Step 3 - Run your experiment
        #################################
        
        This is same as running `nnitctl`
        
        .. code-block:: bash
        
            nnictl create --config experiments/svc-classification/config.yml
        
        
        Troubleshooting
        ---------------
        
        My trials are failing what is wrong ?
        #####################################
        
        Your trial could fail for many reasons -
        
        * Bug in your DataSource code resulting the exception/error
        
        * Wrong inputs to your (or built-in) DataSources resulting in exception/error
        
        * Your DataSource (python callable) could not be found
        
        Here is what I would recommend -
        
        * Test your DataSource code
        
        * The webui does not always display all the errors/logs so look at the log of your trials and more specifically stderr file
        
            .. code-block:: bash
        
                cat $HOME/nni/experiments/<YOUR_EXPERIMENT_ID>/trials/<TRIAL_ID>/stderr
        
                cat $HOME/nni/experiments/<YOUR_EXPERIMENT_ID>/trials/<TRIAL_ID>/trial.log
        
        
        Credits
        -------
        
        This package was created with Cookiecutter_ and the `audreyr/cookiecutter-pypackage`_ project template.
        
        .. _Cookiecutter: https://github.com/audreyr/cookiecutter
        .. _`audreyr/cookiecutter-pypackage`: https://github.com/audreyr/cookiecutter-pypackage
        
        
        =======
        History
        =======
        
        0.1.1 (2019-10-20)
        ------------------
        
        * First release on PyPI.
        
Keywords: sknni,scikit-nni
Platform: UNKNOWN
Classifier: Development Status :: 2 - Pre-Alpha
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Natural Language :: English
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Requires-Python: >=3.6, !=3.0.*, !=3.1.*, !=3.2.*, !=3.3.*, !=3.4.*, !=3.5.*
