Surprise

Recommender library

A Python scikit for building and analyzing recommender systems using explicit rating data

A Python scikit for building and analyzing recommender systems

GitHub

6k stars
146 watching
1k forks
Language: Python
last commit: 5 months ago
Linked from 4 awesome lists

factorizationmachine-learningmatrixrecommendationrecommendersvdsystems

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
recommenders-team/recommenders Provides best practices and examples for building recommendation systems using machine learning algorithms 19,274
clips/pattern A comprehensive Python module for web mining and analysis of text data. 8,750
justmarkham/scikit-learn-videos A tutorial series on machine learning with Python using scikit-learn 3,674
trekhleb/homemade-machine-learning Practices implementing popular machine learning algorithms from scratch to gain a deeper understanding of their mathematics 23,121
teamhg-memex/eli5 A Python library for explaining and inspecting machine learning model predictions 2,757
lartpang/pysodevaltoolkit A comprehensive Python toolbox for evaluating salient object detection and camouflaged object detection tasks 167
online-ml/river Provides an online machine learning platform for efficient and incremental model training on streaming data. 5,086
jwarmenhoven/islr-python An implementation of selected chapters from the book on Machine Learning with Python code 4,255
practical-recommender-systems/moviegeek A Django-based website demonstrating how to implement recommender algorithms with a dataset from themoviedb.org API. 906
hypothesisworks/hypothesis Automates testing of software properties using generated examples 7,576
evidentlyai/evidently An observability framework for evaluating and monitoring the performance of machine learning models and data pipelines 5,391
seldonio/alibi A Python library for explaining machine learning models 2,414
maximtrp/scikit-posthocs Provides tools for conducting pairwise multiple comparisons tests in statistical data analysis 348
muricoca/crab Provides a set of algorithms for building personalized recommendation systems in Python 1,180
jvalegre/robert Automated machine learning protocols for cheminformatics using Python 38