Prophet is a forecasting procedure implemented in R and Python. It is fast and provides completely automated forecasts that can be tuned by hand by data scientists and analysts.
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Last Updated: 9 July 2025
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138 Projects and apps Similar to "Prophet" in July 2025
Microsoft ML for Apache Spark -> A distributed machine learning framework Apache Spark
Shapley -> A data-driven framework to quantify the value of classifiers in a machine learning ensemble.
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ML Model building -> A Repository Containing Classification, Clustering, Regression, Recommender Notebooks with illustration to make them.
ML/DL project template
PyTorch Geometric Temporal -> A temporal extension of PyTorch Geometric for dynamic graph representation learning.
Little Ball of Fur -> A graph sampling extension library for NetworkX with a Scikit-Learn like API.
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Couler - Unified interface for constructing and managing machine learning workflows on different workflow engines, such as Argo Workflows, Tekton Pipelines, and Apache Airflow.
auto_ml - Automated machine learning for production and analytics. Lets you focus on the fun parts of ML, while outputting production-ready code, and detailed analytics of your dataset and results. Includes support for NLP, XGBoost, CatBoost, LightGBM, and soon, deep learning.
machine learning - automated build consisting of a
XGBoost - Python bindings for eXtreme Gradient Boosting (Tree) Library.
Apache SINGA · Distributed deep learning system
Distributed deep learning system
Bayesian Methods for Hackers - Book/iPython notebooks on Probabilistic Programming in Python.
Featureforge A set of tools for creating and testing machine learning features, with a scikit-learn compatible API.
MLlib: RDD-based API - Spark 3.2.0 Documentation
Hydrosphere Mist - a service for deployment Apache Spark MLLib machine learning models as realtime, batch or reactive web services.
scikit-learn: machine learning in Python — scikit-learn 0.16.1 documentation
metric-learn - A Python module for metric learning.
Intel(R) Extension for Scikit-learn - A seamless way to speed up your Scikit-learn applications with no accuracy loss and code changes.
SimpleAI Python implementation of many of the artificial intelligence algorithms described in the book "Artificial Intelligence, a Modern Approach". It focuses on providing an easy to use, well documented and tested library.
AstroML: Machine Learning and Data Mining for Astronomy — astroML 1.0 documentation
graphlab-create - A library with various machine learning models (regression, clustering, recommender systems, graph analytics, etc.) implemented on top of a disk-backed DataFrame.
BigML.com
Machine learning made beautifully simple for everyone take your business to the next level with the leading machine learning platform
pattern - Web mining module for Python.
NuPIC - Numenta Platform for Intelligent Computing.
Pylearn2 - A Machine Learning library based on
keras - High-level neural networks frontend for
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hebel - GPU-Accelerated Deep Learning Library in Python.
Chainer - Flexible neural network framework.
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