guacamol

Chemistry generator benchmarker

A Python package for benchmarking generative models in molecular design

Benchmarks for generative chemistry

GitHub

414 stars
15 watching
84 forks
Language: Python
last commit: 9 months ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
sparks-baird/matbench-genmetrics Provides standardized benchmarks for evaluating the quality of generative models for crystal structures. 34
facebookresearch/compilergym A reinforcement learning environment library for compiler optimization tasks 914
ahmedfgad/geneticalgorithmpython A Python library implementing a genetic algorithm for optimization of machine learning models 1,884
gugarosa/learnergy A Python library providing an easy-to-use implementation of energy-based machine learning algorithms. 65
chakkaradeep/pycodeagi An AI-powered tool to generate Python applications based on user input 181
gugarosa/nalp A Python library for natural language processing with adversarial learning capabilities 23
charlierguo/gmail A Pythonic interface to Google's GMail 1,772
bowang-lab/scgpt A Jupyter Notebook-based framework for training and applying generative AI models to single-cell multi-omics data 1,039
gugarosa/opfython An implementation of an optimum-path forest classifier using Python 34
ethicalml/xai An eXplainability toolbox for machine learning that enables data analysis and model evaluation to mitigate biases and improve performance 1,125
openai/procgen A benchmark for evaluating reinforcement learning agent performance on procedurally generated game-like environments. 1,021
guildai/guildai Automates and optimizes machine learning experiments to capture run results and improve models 870
openai/generating-reviews-discovering-sentiment Generates reviews and discovers sentiment using a language model 1,510
i-gallegos/fair-llm-benchmark Compiles bias evaluation datasets and provides access to original data sources for large language models 110
jolibrain/joligen An integrated framework for training custom generative AI models 244