
.. DO NOT EDIT.
.. THIS FILE WAS AUTOMATICALLY GENERATED BY SPHINX-GALLERY.
.. TO MAKE CHANGES, EDIT THE SOURCE PYTHON FILE:
.. "auto_examples/applications/plot_prediction_latency.py"
.. LINE NUMBERS ARE GIVEN BELOW.

.. only:: html

    .. note::
        :class: sphx-glr-download-link-note

        :ref:`Go to the end <sphx_glr_download_auto_examples_applications_plot_prediction_latency.py>`
        to download the full example code or to run this example in your browser via JupyterLite or Binder.

.. rst-class:: sphx-glr-example-title

.. _sphx_glr_auto_examples_applications_plot_prediction_latency.py:


==================
Prediction Latency
==================

This is an example showing the prediction latency of various scikit-learn
estimators.

The goal is to measure the latency one can expect when doing predictions
either in bulk or atomic (i.e. one by one) mode.

The plots represent the distribution of the prediction latency as a boxplot.

.. GENERATED FROM PYTHON SOURCE LINES 15-40

.. code-block:: Python


    # Authors: The scikit-learn developers
    # SPDX-License-Identifier: BSD-3-Clause

    import gc
    import time
    from collections import defaultdict

    import matplotlib.pyplot as plt
    import numpy as np

    from sklearn.datasets import make_regression
    from sklearn.ensemble import RandomForestRegressor
    from sklearn.linear_model import Ridge, SGDRegressor
    from sklearn.model_selection import train_test_split
    from sklearn.preprocessing import StandardScaler
    from sklearn.svm import SVR
    from sklearn.utils import shuffle


    def _not_in_sphinx():
        # Hack to detect whether we are running by the sphinx builder
        return "__file__" in globals()









.. GENERATED FROM PYTHON SOURCE LINES 41-43

Benchmark and plot helper functions
-----------------------------------

.. GENERATED FROM PYTHON SOURCE LINES 43-296

.. code-block:: Python



    def atomic_benchmark_estimator(estimator, X_test, verbose=False):
        """Measure runtime prediction of each instance."""
        n_instances = X_test.shape[0]
        runtimes = np.zeros(n_instances, dtype=float)
        for i in range(n_instances):
            instance = X_test[[i], :]
            start = time.time()
            estimator.predict(instance)
            runtimes[i] = time.time() - start
        if verbose:
            print(
                "atomic_benchmark runtimes:",
                min(runtimes),
                np.percentile(runtimes, 50),
                max(runtimes),
            )
        return runtimes


    def bulk_benchmark_estimator(estimator, X_test, n_bulk_repeats, verbose):
        """Measure runtime prediction of the whole input."""
        n_instances = X_test.shape[0]
        runtimes = np.zeros(n_bulk_repeats, dtype=float)
        for i in range(n_bulk_repeats):
            start = time.time()
            estimator.predict(X_test)
            runtimes[i] = time.time() - start
        runtimes = np.array(list(map(lambda x: x / float(n_instances), runtimes)))
        if verbose:
            print(
                "bulk_benchmark runtimes:",
                min(runtimes),
                np.percentile(runtimes, 50),
                max(runtimes),
            )
        return runtimes


    def benchmark_estimator(estimator, X_test, n_bulk_repeats=30, verbose=False):
        """
        Measure runtimes of prediction in both atomic and bulk mode.

        Parameters
        ----------
        estimator : already trained estimator supporting `predict()`
        X_test : test input
        n_bulk_repeats : how many times to repeat when evaluating bulk mode

        Returns
        -------
        atomic_runtimes, bulk_runtimes : a pair of `np.array` which contain the
        runtimes in seconds.

        """
        atomic_runtimes = atomic_benchmark_estimator(estimator, X_test, verbose)
        bulk_runtimes = bulk_benchmark_estimator(estimator, X_test, n_bulk_repeats, verbose)
        return atomic_runtimes, bulk_runtimes


    def generate_dataset(n_train, n_test, n_features, noise=0.1, verbose=False):
        """Generate a regression dataset with the given parameters."""
        if verbose:
            print("generating dataset...")

        X, y, coef = make_regression(
            n_samples=n_train + n_test, n_features=n_features, noise=noise, coef=True
        )

        random_seed = 13
        X_train, X_test, y_train, y_test = train_test_split(
            X, y, train_size=n_train, test_size=n_test, random_state=random_seed
        )
        X_train, y_train = shuffle(X_train, y_train, random_state=random_seed)

        X_scaler = StandardScaler()
        X_train = X_scaler.fit_transform(X_train)
        X_test = X_scaler.transform(X_test)

        y_scaler = StandardScaler()
        y_train = y_scaler.fit_transform(y_train[:, None])[:, 0]
        y_test = y_scaler.transform(y_test[:, None])[:, 0]

        gc.collect()
        if verbose:
            print("ok")
        return X_train, y_train, X_test, y_test


    def boxplot_runtimes(runtimes, pred_type, configuration):
        """
        Plot a new `Figure` with boxplots of prediction runtimes.

        Parameters
        ----------
        runtimes : list of `np.array` of latencies in micro-seconds
        cls_names : list of estimator class names that generated the runtimes
        pred_type : 'bulk' or 'atomic'

        """

        fig, ax1 = plt.subplots(figsize=(10, 6))
        bp = plt.boxplot(
            runtimes,
        )

        cls_infos = [
            "%s\n(%d %s)"
            % (
                estimator_conf["name"],
                estimator_conf["complexity_computer"](estimator_conf["instance"]),
                estimator_conf["complexity_label"],
            )
            for estimator_conf in configuration["estimators"]
        ]
        plt.setp(ax1, xticklabels=cls_infos)
        plt.setp(bp["boxes"], color="black")
        plt.setp(bp["whiskers"], color="black")
        plt.setp(bp["fliers"], color="red", marker="+")

        ax1.yaxis.grid(True, linestyle="-", which="major", color="lightgrey", alpha=0.5)

        ax1.set_axisbelow(True)
        ax1.set_title(
            "Prediction Time per Instance - %s, %d feats."
            % (pred_type.capitalize(), configuration["n_features"])
        )
        ax1.set_ylabel("Prediction Time (us)")

        plt.show()


    def benchmark(configuration):
        """Run the whole benchmark."""
        X_train, y_train, X_test, y_test = generate_dataset(
            configuration["n_train"], configuration["n_test"], configuration["n_features"]
        )

        stats = {}
        for estimator_conf in configuration["estimators"]:
            print("Benchmarking", estimator_conf["instance"])
            estimator_conf["instance"].fit(X_train, y_train)
            gc.collect()
            a, b = benchmark_estimator(estimator_conf["instance"], X_test)
            stats[estimator_conf["name"]] = {"atomic": a, "bulk": b}

        cls_names = [
            estimator_conf["name"] for estimator_conf in configuration["estimators"]
        ]
        runtimes = [1e6 * stats[clf_name]["atomic"] for clf_name in cls_names]
        boxplot_runtimes(runtimes, "atomic", configuration)
        runtimes = [1e6 * stats[clf_name]["bulk"] for clf_name in cls_names]
        boxplot_runtimes(runtimes, "bulk (%d)" % configuration["n_test"], configuration)


    def n_feature_influence(estimators, n_train, n_test, n_features, percentile):
        """
        Estimate influence of the number of features on prediction time.

        Parameters
        ----------

        estimators : dict of (name (str), estimator) to benchmark
        n_train : nber of training instances (int)
        n_test : nber of testing instances (int)
        n_features : list of feature-space dimensionality to test (int)
        percentile : percentile at which to measure the speed (int [0-100])

        Returns:
        --------

        percentiles : dict(estimator_name,
                           dict(n_features, percentile_perf_in_us))

        """
        percentiles = defaultdict(defaultdict)
        for n in n_features:
            print("benchmarking with %d features" % n)
            X_train, y_train, X_test, y_test = generate_dataset(n_train, n_test, n)
            for cls_name, estimator in estimators.items():
                estimator.fit(X_train, y_train)
                gc.collect()
                runtimes = bulk_benchmark_estimator(estimator, X_test, 30, False)
                percentiles[cls_name][n] = 1e6 * np.percentile(runtimes, percentile)
        return percentiles


    def plot_n_features_influence(percentiles, percentile):
        fig, ax1 = plt.subplots(figsize=(10, 6))
        colors = ["r", "g", "b"]
        for i, cls_name in enumerate(percentiles.keys()):
            x = np.array(sorted(percentiles[cls_name].keys()))
            y = np.array([percentiles[cls_name][n] for n in x])
            plt.plot(
                x,
                y,
                color=colors[i],
            )
        ax1.yaxis.grid(True, linestyle="-", which="major", color="lightgrey", alpha=0.5)
        ax1.set_axisbelow(True)
        ax1.set_title("Evolution of Prediction Time with #Features")
        ax1.set_xlabel("#Features")
        ax1.set_ylabel("Prediction Time at %d%%-ile (us)" % percentile)
        plt.show()


    def benchmark_throughputs(configuration, duration_secs=0.1):
        """benchmark throughput for different estimators."""
        X_train, y_train, X_test, y_test = generate_dataset(
            configuration["n_train"], configuration["n_test"], configuration["n_features"]
        )
        throughputs = dict()
        for estimator_config in configuration["estimators"]:
            estimator_config["instance"].fit(X_train, y_train)
            start_time = time.time()
            n_predictions = 0
            while (time.time() - start_time) < duration_secs:
                estimator_config["instance"].predict(X_test[[0]])
                n_predictions += 1
            throughputs[estimator_config["name"]] = n_predictions / duration_secs
        return throughputs


    def plot_benchmark_throughput(throughputs, configuration):
        fig, ax = plt.subplots(figsize=(10, 6))
        colors = ["r", "g", "b"]
        cls_infos = [
            "%s\n(%d %s)"
            % (
                estimator_conf["name"],
                estimator_conf["complexity_computer"](estimator_conf["instance"]),
                estimator_conf["complexity_label"],
            )
            for estimator_conf in configuration["estimators"]
        ]
        cls_values = [
            throughputs[estimator_conf["name"]]
            for estimator_conf in configuration["estimators"]
        ]
        plt.bar(range(len(throughputs)), cls_values, width=0.5, color=colors)
        ax.set_xticks(np.linspace(0.25, len(throughputs) - 0.75, len(throughputs)))
        ax.set_xticklabels(cls_infos, fontsize=10)
        ymax = max(cls_values) * 1.2
        ax.set_ylim((0, ymax))
        ax.set_ylabel("Throughput (predictions/sec)")
        ax.set_title(
            "Prediction Throughput for different estimators (%d features)"
            % configuration["n_features"]
        )
        plt.show()









.. GENERATED FROM PYTHON SOURCE LINES 297-299

Benchmark bulk/atomic prediction speed for various regressors
-------------------------------------------------------------

.. GENERATED FROM PYTHON SOURCE LINES 299-329

.. code-block:: Python


    configuration = {
        "n_train": int(1e3),
        "n_test": int(1e2),
        "n_features": int(1e2),
        "estimators": [
            {
                "name": "Linear Model",
                "instance": SGDRegressor(
                    penalty="elasticnet", alpha=0.01, l1_ratio=0.25, tol=1e-4
                ),
                "complexity_label": "non-zero coefficients",
                "complexity_computer": lambda clf: np.count_nonzero(clf.coef_),
            },
            {
                "name": "RandomForest",
                "instance": RandomForestRegressor(),
                "complexity_label": "estimators",
                "complexity_computer": lambda clf: clf.n_estimators,
            },
            {
                "name": "SVR",
                "instance": SVR(kernel="rbf"),
                "complexity_label": "support vectors",
                "complexity_computer": lambda clf: len(clf.support_vectors_),
            },
        ],
    }
    benchmark(configuration)




.. rst-class:: sphx-glr-horizontal


    *

      .. image-sg:: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_001.png
         :alt: Prediction Time per Instance - Atomic, 100 feats.
         :srcset: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_001.png
         :class: sphx-glr-multi-img

    *

      .. image-sg:: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_002.png
         :alt: Prediction Time per Instance - Bulk (100), 100 feats.
         :srcset: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_002.png
         :class: sphx-glr-multi-img


.. rst-class:: sphx-glr-script-out

 .. code-block:: none

    Benchmarking SGDRegressor(alpha=0.01, l1_ratio=0.25, penalty='elasticnet', tol=0.0001)
    Benchmarking RandomForestRegressor()
    Benchmarking SVR()




.. GENERATED FROM PYTHON SOURCE LINES 330-332

Benchmark n_features influence on prediction speed
--------------------------------------------------

.. GENERATED FROM PYTHON SOURCE LINES 332-343

.. code-block:: Python


    percentile = 90
    percentiles = n_feature_influence(
        {"ridge": Ridge()},
        configuration["n_train"],
        configuration["n_test"],
        [100, 250, 500],
        percentile,
    )
    plot_n_features_influence(percentiles, percentile)




.. image-sg:: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_003.png
   :alt: Evolution of Prediction Time with #Features
   :srcset: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_003.png
   :class: sphx-glr-single-img


.. rst-class:: sphx-glr-script-out

 .. code-block:: none

    benchmarking with 100 features
    benchmarking with 250 features
    benchmarking with 500 features




.. GENERATED FROM PYTHON SOURCE LINES 344-346

Benchmark throughput
--------------------

.. GENERATED FROM PYTHON SOURCE LINES 346-349

.. code-block:: Python


    throughputs = benchmark_throughputs(configuration)
    plot_benchmark_throughput(throughputs, configuration)



.. image-sg:: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_004.png
   :alt: Prediction Throughput for different estimators (100 features)
   :srcset: /auto_examples/applications/images/sphx_glr_plot_prediction_latency_004.png
   :class: sphx-glr-single-img






.. rst-class:: sphx-glr-timing

   **Total running time of the script:** (0 minutes 14.681 seconds)


.. _sphx_glr_download_auto_examples_applications_plot_prediction_latency.py:

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