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Deep Learning Pipelines for Apache Spark

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Deep Learning Pipelines provides high-level APIs for scalable deep learning in Python with Apache Spark.

Overview

Deep Learning Pipelines provides high-level APIs for scalable deep learning in Python with Apache Spark.

The library comes from Databricks and leverages Spark for its two strongest facets:

  1. In the spirit of Spark and Spark MLlib, it provides easy-to-use APIs that enable deep learning in very few lines of code.
  2. It uses Spark's powerful distributed engine to scale out deep learning on massive datasets.

Currently, TensorFlow and TensorFlow-backed Keras workflows are supported, with a focus on:

  • large-scale inference / scoring
  • transfer learning and hyperparameter tuning on image data

Furthermore, it provides tools for data scientists and machine learning experts to turn deep learning models into SQL functions that can be used by a much wider group of users. It does not perform single-model distributed training - this is an area of active research, and here we aim to provide the most practical solutions for the majority of deep learning use cases.

For an overview of the library, see the Databricks blog post introducing Deep Learning Pipelines. For the various use cases the package serves, see the Quick user guide section below.

The library is in its early days, and we welcome everyone's feedback and contribution.

Maintainers: Bago Amirbekian, Joseph Bradley, Yogesh Garg, Sue Ann Hong, Tim Hunter, Siddharth Murching, Tomas Nykodym, Lu Wang

Building and running unit tests

To compile this project, run build/sbt assembly from the project home directory. This will also run the Scala unit tests.

To run the Python unit tests, run the run-tests.sh script from the python/ directory (after compiling). You will need to set a few environment variables, e.g.

# Be sure to run build/sbt assembly before running the Python tests
sparkdl$ SPARK_HOME=/usr/local/lib/spark-2.3.0-bin-hadoop2.7 PYSPARK_PYTHON=python3 SCALA_VERSION=2.11.8 SPARK_VERSION=2.3.0 ./python/run-tests.sh

Spark version compatibility

To work with the latest code, Spark 2.3.0 is required and Python 3.6 & Scala 2.11 are recommended . See the travis config for the regularly-tested combinations.

Compatibility requirements for each release are listed in the Releases section.

Support

You can ask questions and join the development discussion on the DL Pipelines Google group.

You can also post bug reports and feature requests in Github issues.

Releases

Visit Github Release Page to check the release notes.

Downloads and installation

Deep Learning Pipelines is published as a Spark Package. Visit the Spark Package page to download releases and find instructions for use with spark-shell, SBT, and Maven.

Quick user guide

Deep Learning Pipelines provides a suite of tools around working with and processing images using deep learning. The tools can be categorized as

To try running the examples below, check out the Databricks notebook in the Databricks docs for Deep Learning Pipelines, which works with the latest release of Deep Learning Pipelines. Here are some Databricks notebooks compatible with earlier releases: 0.1.0, 0.2.0, 0.3.0, 1.0.0, 1.1.0, 1.2.0.

Working with images in Spark

The first step to apply deep learning on images is the ability to load the images. Spark and Deep Learning Pipelines include utility functions that can load millions of images into a Spark DataFrame and decode them automatically in a distributed fashion, allowing manipulation at scale.

Using Spark's ImageSchema

from pyspark.ml.image import ImageSchema
image_df = ImageSchema.readImages("/data/myimages")

or if custom image library is needed:

from sparkdl.image import imageIO as imageIO
image_df = imageIO.readImagesWithCustomFn("/data/myimages",decode_f=<your image library, see imageIO.PIL_decode>)

The resulting DataFrame contains a string column named "image" containing an image struct with schema == ImageSchema.

image_df.show()

Why images? Deep learning has shown to be powerful for tasks involving images, so we have added native Spark support for images. The goal is to support more data types, such as text and time series, based on community interest.

Transfer learning

Deep Learning Pipelines provides utilities to perform transfer learning on images, which is one of the fastest (code and run-time-wise) ways to start using deep learning. Using Deep Learning Pipelines, it can be done in just several lines of code.

from pyspark.ml.classification import LogisticRegression
from pyspark.ml.evaluation import MulticlassClassificationEvaluator
from pyspark.ml import Pipeline
from sparkdl import DeepImageFeaturizer

featurizer = DeepImageFeaturizer(inputCol="image", outputCol="features", modelName="InceptionV3")
lr = LogisticRegression(maxIter=20, regParam=0.05, elasticNetParam=0.3, labelCol="label")
p = Pipeline(stages=[featurizer, lr])

model = p.fit(train_images_df)    # train_images_df is a dataset of images and labels

# Inspect training error
df = model.transform(train_images_df.limit(10)).select("image", "probability",  "uri", "label")
predictionAndLabels = df.select("prediction", "label")
evaluator = MulticlassClassificationEvaluator(metricName="accuracy")
print("Training set accuracy = " + str(evaluator.evaluate(predictionAndLabels)))

DeepImageFeaturizer supports the following models from Keras:

  • InceptionV3
  • Xception
  • ResNet50
  • VGG16
  • VGG19

Distributed hyperparameter tuning

Getting the best results in deep learning requires experimenting with different values for training parameters, an important step called hyperparameter tuning. Since Deep Learning Pipelines enables exposing deep learning training as a step in Spark’s machine learning pipelines, users can rely on the hyperparameter tuning infrastructure already built into Spark MLlib.

For Keras users

To perform hyperparameter tuning with a Keras Model, KerasImageFileEstimator can be used to build an Estimator and use MLlib’s tooling for tuning the hyperparameters (e.g. CrossValidator). KerasImageFileEstimator works with image URI columns (not ImageSchema columns) in order to allow for custom image loading and processing functions often used with keras.

To build the estimator with KerasImageFileEstimator, we need to have a Keras model stored as a file. The model could be Keras built-in model or user trained model.

from keras.applications import InceptionV3

model = InceptionV3(weights="imagenet")
model.save('/tmp/model-full.h5')

We also need to create an image loading function that reads the image data from a URI, preprocesses them, and returns the numerical tensor in the keras Model input format. Then, we can create a KerasImageFileEstimator that takes our saved model file.

import PIL.Image
import numpy as np
from keras.applications.imagenet_utils import preprocess_input
from sparkdl.estimators.keras_image_file_estimator import KerasImageFileEstimator

def load_image_from_uri(local_uri):
  img = (PIL.Image.open(local_uri).convert('RGB').resize((299, 299), PIL.Image.ANTIALIAS))
  img_arr = np.array(img).astype(np.float32)
  img_tnsr = preprocess_input(img_arr[np.newaxis, :])
  return img_tnsr

estimator = KerasImageFileEstimator( inputCol="uri",
                                     outputCol="prediction",
                                     labelCol="one_hot_label",
                                     imageLoader=load_image_from_uri,
                                     kerasOptimizer='adam',
                                     kerasLoss='categorical_crossentropy',
                                     modelFile='/tmp/model-full-tmp.h5' # local file path for model
                                   ) 

We can use it for hyperparameter tuning by doing a grid search using CrossValidataor.

from pyspark.ml.evaluation import BinaryClassificationEvaluator
from pyspark.ml.tuning import CrossValidator, ParamGridBuilder

paramGrid = (
  ParamGridBuilder()
  .addGrid(estimator.kerasFitParams, [{"batch_size": 32, "verbose": 0},
                                      {"batch_size": 64, "verbose": 0}])
  .build()
)
bc = BinaryClassificationEvaluator(rawPredictionCol="prediction", labelCol="label" )
cv = CrossValidator(estimator=estimator, estimatorParamMaps=paramGrid, evaluator=bc, numFolds=2)

cvModel = cv.fit(train_df)

Applying deep learning models at scale

Spark DataFrames are a natural construct for applying deep learning models to a large-scale dataset. Deep Learning Pipelines provides a set of Spark MLlib Transformers for applying TensorFlow Graphs and TensorFlow-backed Keras Models at scale. The Transformers, backed by the Tensorframes library, efficiently handle the distribution of models and data to Spark workers.

Applying deep learning models at scale to images

Deep Learning Pipelines provides several ways to apply models to images at scale:

  • Popular images models can be applied out of the box, without requiring any TensorFlow or Keras code
  • TensorFlow graphs that work on images
  • Keras models that work on images
Applying popular image models

There are many well-known deep learning models for images. If the task at hand is very similar to what the models provide (e.g. object recognition with ImageNet classes), or for pure exploration, one can use the Transformer DeepImagePredictor by simply specifying the model name.

from pyspark.ml.image import ImageSchema
from sparkdl import DeepImagePredictor

image_df = ImageSchema.readImages(sample_img_dir)

predictor = DeepImagePredictor(inputCol="image", outputCol="predicted_labels", modelName="InceptionV3", decodePredictions=True, topK=10)
predictions_df = predictor.transform(image_df)

DeepImagePredictor supports the same set of models from Keras as DeepImageFeaturizer. (See above.)

For TensorFlow users

Deep Learning Pipelines provides an MLlib Transformer that will apply the given TensorFlow Graph to a DataFrame containing a column of images (e.g. loaded using the utilities described in the previous section). Here is a very simple example of how a TensorFlow Graph can be used with the Transformer. In practice, the TensorFlow Graph will likely be restored from files before calling TFImageTransformer.

from pyspark.ml.image import ImageSchema
from sparkdl import TFImageTransformer
import sparkdl.graph.utils as tfx  # strip_and_freeze_until was moved from sparkdl.transformers to sparkdl.graph.utils in 0.2.0
from sparkdl.transformers import utils
import tensorflow as tf

graph = tf.Graph()
with tf.Session(graph=graph) as sess:
    image_arr = utils.imageInputPlaceholder()
    resized_images = tf.image.resize_images(image_arr, (299, 299))
    # the following step is not necessary for this graph, but can be for graphs with variables, etc
    frozen_graph = tfx.strip_and_freeze_until([resized_images], graph, sess, return_graph=True)

transformer = TFImageTransformer(inputCol="image", outputCol="predictions", graph=frozen_graph,
                                 inputTensor=image_arr, outputTensor=resized_images,
                                 outputMode="image")

image_df = ImageSchema.readImages(sample_img_dir)
processed_image_df = transformer.transform(image_df)
For Keras users

For applying Keras models in a distributed manner using Spark, KerasImageFileTransformer works on TensorFlow-backed Keras models. It

  • Internally creates a DataFrame containing a column of images by applying the user-specified image loading and processing function to the input DataFrame containing a column of image URIs
  • Loads a Keras model from the given model file path
  • Applies the model to the image DataFrame

The difference in the API from TFImageTransformer above stems from the fact that usual Keras workflows have very specific ways to load and resize images that are not part of the TensorFlow Graph.

To use the transformer, we first need to have a Keras model stored as a file. We can just save the Keras built-in InceptionV3 model instead of training one.

from keras.applications import InceptionV3

model = InceptionV3(weights="imagenet")
model.save('/tmp/model-full.h5')

Now on the prediction side:

from keras.applications.inception_v3 import preprocess_input
from keras.preprocessing.image import img_to_array, load_img
import numpy as np
import os
from pyspark.sql.types import StringType
from sparkdl import KerasImageFileTransformer

def loadAndPreprocessKerasInceptionV3(uri):
  # this is a typical way to load and prep images in keras
  image = img_to_array(load_img(uri, target_size=(299, 299)))  # image dimensions for InceptionV3
  image = np.expand_dims(image, axis=0)
  return preprocess_input(image)

transformer = KerasImageFileTransformer(inputCol="uri", outputCol="predictions",
                                        modelFile='/tmp/model-full-tmp.h5',  # local file path for model
                                        imageLoader=loadAndPreprocessKerasInceptionV3,
                                        outputMode="vector")

files = [os.path.abspath(os.path.join(dirpath, f)) for f in os.listdir("/data/myimages") if f.endswith('.jpg')]
uri_df = sqlContext.createDataFrame(files, StringType()).toDF("uri")

keras_pred_df = transformer.transform(uri_df)

Applying deep learning models at scale to tensors

Deep Learning Pipelines also provides ways to apply models with tensor inputs (up to 2 dimensions), written in popular deep learning libraries:

  • TensorFlow graphs
  • Keras models
For TensorFlow users

TFTransformer applies a user-specified TensorFlow graph to tensor inputs of up to 2 dimensions. The TensorFlow graph may be specified as TensorFlow graph objects (tf.Graph or tf.GraphDef) or checkpoint or SavedModel objects (see the input object class for more detail). The transform() function applies the TensorFlow graph to a column of arrays (where an array corresponds to a Tensor) in the input DataFrame and outputs a column of arrays corresponding to the output of the graph.

First we generate sample dataset of 2-dimensional points, Gaussian distributed around two different centers

import numpy as np
from pyspark.sql.types import Row

n_sample = 1000
center_0 = [-1.5, 1.5]
center_1 = [1.5, -1.5]

def to_row(args):
  xy, l = args
  return Row(inputCol = xy, label = l)

samples_0 = [np.random.randn(2) + center_0 for _ in range(n_sample//2)]
labels_0 = [0 for _ in range(n_sample//2)]
samples_1 = [np.random.randn(2) + center_1 for _ in range(n_sample//2)]
labels_1 = [1 for _ in range(n_sample//2)]

rows = map(to_row, zip(map(lambda x: x.tolist(), samples_0 + samples_1), labels_0 + labels_1))
sdf = spark.createDataFrame(rows)

Next, we write a function that returns a tensorflow graph and its input

import tensorflow as tf

def build_graph(sess, w0):
  X = tf.placeholder(tf.float32, shape=[None, 2], name="input_tensor")
  model = tf.sigmoid(tf.matmul(X, w0), name="output_tensor")
  return model, X

Following is the code you would write to predict using tensorflow on a single node.

w0 = np.array([[1], [-1]]).astype(np.float32)
with tf.Session() as sess:
  model, X = build_graph(sess, w0)
  output = sess.run(model, feed_dict = {
    X : samples_0 + samples_1
  })

Now you can use the following Spark MLlib Transformer to apply the model to a DataFrame in a distributed fashion.

from sparkdl import TFTransformer
from sparkdl.graph.input import TFInputGraph
import sparkdl.graph.utils as tfx

graph = tf.Graph()
with tf.Session(graph=graph) as session, graph.as_default():
    _, _ = build_graph(session, w0)
    gin = TFInputGraph.fromGraph(session.graph, session,
                                 ["input_tensor"], ["output_tensor"])

transformer = TFTransformer(
    tfInputGraph=gin,
    inputMapping={'inputCol': tfx.tensor_name("input_tensor")},
    outputMapping={tfx.tensor_name("output_tensor"): 'outputCol'})

odf = transformer.transform(sdf)
For Keras users

KerasTransformer applies a TensorFlow-backed Keras model to tensor inputs of up to 2 dimensions. It loads a Keras model from a given model file path and applies the model to a column of arrays (where an array corresponds to a Tensor), outputting a column of arrays.

from sparkdl import KerasTransformer
from keras.models import Sequential
from keras.layers import Dense
import numpy as np

# Generate random input data
num_features = 10
num_examples = 100
input_data = [{"features" : np.random.randn(num_features).tolist()} for i in range(num_examples)]
input_df = sqlContext.createDataFrame(input_data)

# Create and save a single-hidden-layer Keras model for binary classification
# NOTE: In a typical workflow, we'd train the model before exporting it to disk,
# but we skip that step here for brevity
model = Sequential()
model.add(Dense(units=20, input_shape=[num_features], activation='relu'))
model.add(Dense(units=1, activation='sigmoid'))
model_path = "/tmp/simple-binary-classification"
model.save(model_path)

# Create transformer and apply it to our input data
transformer = KerasTransformer(inputCol="features", outputCol="predictions", modelFile=model_path)
final_df = transformer.transform(input_df)

Deploying models as SQL functions

One way to productionize a model is to deploy it as a Spark SQL User Defined Function, which allows anyone who knows SQL to use it. Deep Learning Pipelines provides mechanisms to take a deep learning model and register a Spark SQL User Defined Function (UDF). In particular, Deep Learning Pipelines 0.2.0 adds support for creating SQL UDFs from Keras models that work on image data.

The resulting UDF takes a column (formatted as a image struct "SpImage") and produces the output of the given Keras model; e.g. for Inception V3, it produces a real valued score vector over the ImageNet object categories.

We can register a UDF for a Keras model that works on images as follows:

from keras.applications import InceptionV3
from sparkdl.udf.keras_image_model import registerKerasImageUDF

registerKerasImageUDF("inceptionV3_udf", InceptionV3(weights="imagenet"))

Alternatively, we can also register a UDF from a model file:

registerKerasImageUDF("my_custom_keras_model_udf", "/tmp/model-full-tmp.h5")

In Keras workflows dealing with images, it's common to have preprocessing steps before the model is applied to the image. If our workflow requires preprocessing, we can optionally provide a preprocessing function to UDF registration. The preprocessor should take in a filepath and return an image array; below is a simple example.

from keras.applications import InceptionV3
from sparkdl.udf.keras_image_model import registerKerasImageUDF

def keras_load_img(fpath):
    from keras.preprocessing.image import load_img, img_to_array
    import numpy as np
    img = load_img(fpath, target_size=(299, 299))
    return img_to_array(img).astype(np.uint8)

registerKerasImageUDF("inceptionV3_udf_with_preprocessing", InceptionV3(weights="imagenet"), keras_load_img)

Once a UDF has been registered, it can be used in a SQL query, e.g.

from pyspark.ml.image import ImageSchema

image_df = ImageSchema.readImages(sample_img_dir)
image_df.registerTempTable("sample_images")
SELECT my_custom_keras_model_udf(image) as predictions from sample_images

License

  • The Deep Learning Pipelines source code is released under the Apache License 2.0 (see the LICENSE file).
  • Models marked as provided by Keras (used by DeepImageFeaturizer and DeepImagePredictor) are provided subject to the MIT license located at https://github.com/fchollet/keras/blob/master/LICENSE and subject to any additional copyrights and licenses specified in the code or documentation. Also see the Keras applications page for more on the individual model licensing information.

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