Awesome
Software Engineering for Machine Learning 

Software Engineering for Machine Learning are techniques and
guidelines for building ML applications that do not concern the core ML
problem β e.g.Β the development of new algorithms β but rather the
surrounding activities like data ingestion, coding, testing, versioning,
deployment, quality control, and team collaboration. Good software
engineering practices enhance development, deployment and maintenance of
production level applications using machine learning components.
β Must-read
π Scientific publication
Based on this literature, we compiled a survey on the adoption
of software engineering practices for applications with machine learning
components.
Feel free to take and share
the survey and to read
more!
Contents
Broad Overviews
These resources cover all aspects. - AI
Engineering: 11 Foundational Practices β - Best
Practices for Machine Learning Applications - Engineering Best Practices for
Machine Learning β - Hidden
Technical Debt in Machine Learning Systems πβ - Rules
of Machine Learning: Best Practices for ML Engineering β - Software
Engineering for Machine Learning: A Case Study πβ
Data Management
How to manage the data sets you use in machine learning.
Model Training
How to organize your model training experiments.
Deployment and Operation
How to deploy and operate your models in a production
environment.
Social Aspects
How to organize teams and projects to ensure effective collaboration
and accountability.
Governance
Tooling can make your life easier.
We only share open source tools, or commercial platforms that offer
substantial free packages for research.
- Aim - Aim is an open source
experiment tracking tool.
- Airflow - Programmatically
author, schedule and monitor workflows.
- Alibi Detect
- Python library focused on outlier, adversarial and drift
detection.
- Archai - Neural
architecture search.
- Data Version Control (DVC) - DVC is a
data and ML experiments management tool.
- Facets Overview /
Facets Dive - Robust visualizations to aid in understanding machine
learning datasets.
- FairLearn - A toolkit to
assess and improve the fairness of machine learning models.
- Git Large File System
(LFS) - Replaces large files such as datasets with text pointers
inside Git.
- Great
Expectations - Data validation and testing with integration in
pipelines.
- HParams - A
thoughtful approach to configuration management for machine learning
projects.
- Kubeflow - A platform for
data scientists who want to build and experiment with ML pipelines.
- Label
Studio - A multi-type data labeling and annotation tool with
standardized output format.
- LiFT - Linkedin
fairness toolkit.
- MLFlow - Manage the ML lifecycle,
including experimentation, deployment, and a central model
registry.
- Model
Card Toolkit - Streamlines and automates the generation of model
cards; for model documentation.
- Neptune.ai - Experiment tracking
tool bringing organization and collaboration to data science
projects.
- Neuraxle -
Sklearn-like framework for hyperparameter tuning and AutoML in deep
learning projects.
- OpenML - An inclusive movement
to build an open, organized, online ecosystem for machine learning.
- PyTorch
Lightning - The lightweight PyTorch wrapper for high-performance AI
research. Scale your models, not the boilerplate.
- REVISE:
REvealing VIsual biaSEs - Automatically detect bias in visual data
sets.
- Robustness
Metrics - Lightweight modules to evaluate the robustness of
classification models.
- Seldon Core -
An MLOps framework to package, deploy, monitor and manage thousands of
production machine learning models on Kubernetes.
- Spark Machine Learning
- Sparkβs ML library consisting of common learning algorithms and
utilities.
- TensorBoard -
TensorFlowβs Visualization Toolkit.
- Tensorflow Extended
(TFX) - An end-to-end platform for deploying production ML
pipelines.
- Tensorflow
Data Validation (TFDV) - Library for exploring and validating
machine learning data. Similar to Great Expectations, but for Tensorflow
data.
- Weights & Biases -
Experiment tracking, model optimization, and dataset versioning.
Contribute
Contributions welcomed! Read the contribution guidelines first
seml.md
Github