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DVC is an open source tool for data science projects. DVC makes your data science projects reproducible by automatically building data dependency graph (DAG). Your code and the dependencies could be easily shared by Git, and data - through cloud storage (AWS S3, GCP) in a single DVC environment.

Introduction

It is hardly possible in real life to develop a good machine learning model in a single pass. ML modeling is an iterative process and it is extremely important to keep track of your steps, dependencies between the steps, dependencies between your code and data files and all code running arguments. This becomes even more important and complicated in a team environment where data scientists’ collaboration takes a serious amount of the team’s effort.

Iterative ML

Data Version Control or DVC is an open source tool which is designed to help data scientists keep track of their ML processes and file dependencies in the simple form of git-like commands: dvc run python train_model.py data/train_matrix.p data/model.p. Your existing ML processes can be easily transformed into reproducible DVC pipelines regardless of which programming language or tool was used.

Tutorial

This DVC tutorial walks you through an iterative process of building a machine learning model with DVC using stackoverflow posts dataset.

First, you should initialize a Git repository and download a modeling source code that we will be using to show DVC in action:

$ mkdir myrepo
$ cd myrepo
$ mkdir code
$ wget -nv -P code/ https://s3-us-west-2.amazonaws.com/dvc-share/so/code/featurization.py \
        https://s3-us-west-2.amazonaws.com/dvc-share/so/code/evaluate.py \
        https://s3-us-west-2.amazonaws.com/dvc-share/so/code/train_model.py \
        https://s3-us-west-2.amazonaws.com/dvc-share/so/code/split_train_test.py \
        https://s3-us-west-2.amazonaws.com/dvc-share/so/code/xml_to_tsv.py \
        https://s3-us-west-2.amazonaws.com/dvc-share/so/code/requirements.txt
$ pip install -r code/requirements.txt

$ git init
$ git add code/
$ git commit -m 'Download code'

The full pipeline could be built by running the bash code below. If you use Python version 3, please replace python to python3 and pip to pip3.

# Install DVC
$ pip install dvc

# Initialize DVC repository
$ dvc init

# Download a file and put to data/ directory.
$ dvc import https://s3-us-west-2.amazonaws.com/dvc-share/so/25K/Posts.xml.tgz data/

# Extract XML from the archive.
$ dvc run tar zxf data/Posts.xml.tgz -C data/

# Prepare data.
$ dvc run python code/xml_to_tsv.py data/Posts.xml data/Posts.tsv python

# Split training and testing dataset. Two output files.
# 0.33 is the test dataset splitting ratio. 20170426 is a seed for randomization.
$ dvc run python code/split_train_test.py data/Posts.tsv 0.33 20170426 data/Posts-train.tsv data/Posts-test.tsv

# Extract features from text data. Two TSV inputs and two pickle matrixes outputs.
$ dvc run python code/featurization.py data/Posts-train.tsv data/Posts-test.tsv data/matrix-train.p data/matrix-test.p

# Train ML model out of the training dataset. 20170426 is another seed value.
$ dvc run python code/train_model.py data/matrix-train.p 20170426 data/model.p

# Evaluate the model by the testing dataset.
$ dvc run python code/evaluate.py data/model.p data/matrix-test.p data/evaluation.txt

# The result.
$ cat data/evaluation.txt
AUC: 0.596182

The one thing to wrap your head around is that DVC automatically derives the dependencies between the steps and builds the dependency graph (DAG) transparently to the user. This graph is used for reproducing parts of your pipeline which were affected by recent changes. In the next code sample we are changing feature extraction step of the pipeline and reproduce the final result. DVC derives that only three steps out of seven need to be rebuilt and runs these steps:

# Improve feature extraction step.
$ vi code/featurization.py

# Commit all the changes.
$ git commit -am "Add bigram features"
[master 50b5a2a] Add bigram features
 1 file changed, 5 insertion(+), 2 deletion(-)

# Reproduce all required steps to get our target metrics file.
$ dvc repro data/evaluation.txt
Reproducing run command for data item data/matrix-train.p. Args: python code/featurization.py data/Posts-train.tsv data/Posts-test.tsv data/matrix-train.p data/matrix-test.p
Reproducing run command for data item data/model.p. Args: python code/train_model.py data/matrix-train.p 20170426 data/model.p
Reproducing run command for data item data/evaluation.txt. Args: python code/evaluate.py data/model.p data/matrix-test.p data/evaluation.txt
Data item "data/evaluation.txt" was reproduced.

# Take a look at the target metric improvement.
$ cat data/evaluation.txt
AUC: 0.627196

If you replace the input file that affects all the steps, then the entire pipeline will be reproduced.

# Replace small input dataset (25K items) to a bigger one (100K).
$ dvc remove data/Posts.xml.tgz
$ dvc import https://s3-us-west-2.amazonaws.com/dvc-share/so/100K/Posts.xml.tgz data/

# Reproduce the metric file.
$ dvc repro data/evaluation.txt
Reproducing run command for data item data/Posts.xml. Args: tar zxf data/Posts.xml.tgz -C data
Reproducing run command for data item data/Posts.tsv. Args: python code/xml_to_tsv.py data/Posts.xml data/Posts.tsv python
Reproducing run command for data item data/Posts-train.tsv. Args: python code/split_train_test.py data/Posts.tsv 0.33 20170426 data/Posts-train.tsv data/Posts-test.tsv
Reproducing run command for data item data/matrix-train.p. Args: python code/featurization.py data/Posts-train.tsv data/Posts-test.tsv data/matrix-train.p data/matrix-test.p
Reproducing run command for data item data/model.p. Args: python code/train_model.py data/matrix-train.p 20170426 data/model.p
Reproducing run command for data item data/evaluation.txt. Args: python code/evaluate.py data/model.p data/matrix-test.p data/evaluation.txt
Data item "data/evaluation.txt" was reproduced.

$ cat data/evaluation.txt
AUC: 0.633541

Not only can DVC streamline your work into a single, reproducible environment, it also makes it easy to share this environment by Git including the dependencies (DAG)  — an exciting collaboration feature which gives the ability to reproduce the research results in different computers. Moreover, you can share your data files through cloud storage services like AWS S3 or GCP Storage since DVC does not push data files to Git repositories.

Iterative ML

The code below shows how to share your code and DAG through the Git and data files through S3:

# Setup cloud settings. Example: Cloud = AWS, StoragePath=/dvc-share/projects/tag_classifier
$ vi dvc.conf
$ git commit -am "Set up AWS path"
[master ec994b6] Set up AWS path
 1 file changed, 1 insertion(+), 1 deletion(-)

# Share the repository with the pipeline and the cloud settings.
$ git remote add origin https://github.com/dmpetrov/tag_classifier.git
$ git push -u origin master

# Share the most important data files.
$ dvc sync data/matrix-train.p data/matrix-test.p
Uploading cache file ".cache/matrix-train.p_1fa3a9b" to S3 "projects/tag_classifier/.cache/matrix-train.p_1fa3a9b"
Uploading completed
Uploading cache file ".cache/matrix-test.p_1fa3a9b" to S3 "projects/tag_classifier/.cache/matrix-test.p_1fa3a9b"
Uploading completed

Now, another data scientist can use this repository and reproduce the data files the same way you just did. If she doesn’t want (or has not enough computational resources) to reproduce everything, she can sync and lock shared data files. After that, only the last steps of the ML process will be reproduced.

# Get the repository.
$ git clone https://github.com/dmpetrov/tag_classifier.git

# Sync the data files from S3.
$ dvc sync data/
Uploading cache file ".cache/empty_0000000" to S3 "projects/tag_classifier/.cache/empty_0000000"
Uploading completed
Downloading cache file from S3 "dvc-share/projects/tag_classifier/.cache/matrix-test.p_1fa3a9b"
Downloading completed
Downloading cache file from S3 "dvc-share/projects/tag_classifier/.cache/matrix-train.p_1fa3a9b"
Downloading completed

# Lock the reproduction process in the feature extraction step
# since these data files were synced.
$ dvc lock data/matrix-t*
Data item data/matrix-test.p was locked
Data item data/matrix-train.p was locked

# Improve the model.
$ vi code/train_model.py
$ git commit -am "Tune the model"
[master 77e2943] Tune the model
 1 file changed, 1 insertion(+), 1 deletion(-)

# Reproduce required steps of the pipeline.
$ dvc repro data/evaluation.txt
Reproducing run command for data item data/model.p. Args: python code/train_model.py data/matrix-train.p 20170426 data/model.p
Reproducing run command for data item data/evaluation.txt. Args: python code/evaluate.py data/model.p data/matrix-test.p data/evaluation.txt
Data item "data/evaluation.txt" was reproduced.

$ cat data/evaluation.txt
AUC: 0.670531

The steps that were reproduced (red):

Two steps

Thus, the model can be improved iteratively and DVC simplifies the iterative ML process and aids collaboration between data scientists.

Installation

Today DVC could be installed only via the Python Package Index (PyPI).

To install using pip:

pip install dvc

In the future, in addition to the python packages, separate system depended packages will be provided: Mac OS X and Windows installer. It will help to reduce dependency to Python language which is important for users who do not use this language in their projects.

Cloud configuration

DVC does not push data files to Git repositories it uses cloud storages for that. Both AWS and GCP storages are supported; you will need accounts either from AWS or GCP.

Edit dvc.conf, and fill in StoragePath under [Data] with your preferred bucket and path. For example,

[Data]
StoragePath = gc://dvc-demo/dvcdata

Amazon AWS Setup

Configuration: edit dvc.conf, and set Cloud = AWS and StoragePath = /yourbucket/yourpath

To see your available buckets, run aws s3 ls

Google Cloud Setup

Configuration:

  • edit dvc.conf, and set Cloud = GCP
  • under [GCP], set ProjectName to your preferred (or just your default) project name.

To see your available buckets, run gsutil ls.

The following command might be helpful to setup GCP credentials: gcloud beta auth application-default login.

Development

Create a virtualenv, for example, at ~/.environments/dvc by mkdir -p ~/.environments/dvc; virtualenv ~/.environments/dvc or use virtualenvwrapper.

# if you use virtualenvwrapper
workon dvc

# otherwise:
source ~/.environments/dvc/bin/activate

pip install -r requirements.txt

# happy coding!

Copyright

This project is distributed under the Apache license version 2.0 (see the LICENSE file in the project root).

By submitting a pull request for this project, you agree to license your contribution under the Apache license version 2.0 to this project.

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