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| Package |
Description |
Version |
|
openai-whisper
☆
formula
92,427
|
General-purpose speech recognition model |
20250625 |
|
llama.cpp
☆
formula
92,086
|
LLM inference in C/C++ |
7540 |
|
netron
☆
cask
32,097
|
Visualiser for neural network, deep learning, and machine learning models |
8.9.0 |
|
mlx-lm
☆
formula
3,153
|
Run LLMs with MLX |
0.29.0 |
|
ai-studio
☆
cask
|
Data science platform |
2026.0.5 |
|
anaconda
☆
cask
|
Distribution of the Python and R programming languages for scientific computing |
2025.12-2 |
|
apache-opennlp
☆
formula
|
Machine learning toolkit for processing natural language text |
2.5.7 |
|
apache-spark
☆
formula
|
Engine for large-scale data processing |
4.1.1 |
|
autodiff
☆
formula
|
Automatic differentiation made easier for C++ |
1.1.2 |
|
backgroundremover
☆
formula
|
Remove background from images and video using AI |
0.3.7 |
|
backyard-ai
☆
cask
|
Run AI models locally |
0.37.0 |
|
carrot2
☆
formula
|
Search results clustering engine |
4.8.3 |
|
classifier
☆
formula
|
Text classification with Bayesian, LSI, Logistic Regression, and kNN |
|
|
cog
☆
formula
|
Containers for machine learning |
0.16.9 |
|
crf++
☆
formula
|
Conditional random fields for segmenting/labeling sequential data |
0.58 |
|
crfsuite
☆
formula
|
Fast implementation of conditional random fields |
0.12 |
|
data-science-studio
☆
cask
|
Quick experimentation and operationalization for machine learning at scale |
14.0.3 |
|
dataspell
☆
cask
|
IDE for Professional Data Scientists |
2025.3.2,253.30387.154 |
|
diffusionbee
☆
cask
|
Run Stable Diffusion locally |
2.5.3 |
|
djl-serving
☆
formula
|
This module contains an universal model serving implementation |
0.35.0 |
|
dlib
☆
formula
|
C++ library for machine learning |
20.0 |
|
draw-things
☆
cask
|
Run Stable Diffusion locally |
1.20260207.0-ca5be5b9 |
|
dud
☆
formula
|
CLI tool for versioning data |
0.4.5 |
|
dynet
☆
formula
|
Dynamic Neural Network Toolkit |
2.1.2 |
|
enzyme
☆
formula
|
High-performance automatic differentiation of LLVM |
0.0.231 |
|
faiss
☆
formula
|
Efficient similarity search and clustering of dense vectors |
1.13.1 |
|
fann
☆
formula
|
Fast artificial neural network library |
2.2.0 |
|
fasttext
☆
formula
|
Library for fast text representation and classification |
0.9.2 |
|
flann
☆
formula
|
Fast Library for Approximate Nearest Neighbors |
|
|
geekbench-ai
☆
cask
|
Cross-platform AI benchmark to evaluate AI workload performance |
1.7.0 |
|
grt
☆
formula
|
Gesture Recognition Toolkit for real-time machine learning |
|
|
huggingface-cli
☆
formula
|
Client library for huggingface.co hub |
1.2.3 |
|
jumanpp
☆
formula
|
Japanese Morphological Analyzer based on RNNLM |
|
|
khiva
☆
formula
|
Algorithms to analyse time series |
|
|
knime
☆
cask
|
Software to create and productionise data science |
5.8.2 |
|
kytea
☆
formula
|
Toolkit for analyzing text, especially Japanese and Chinese |
|
|
langflow
☆
cask
|
Low-code AI-workflow building tool |
1.6.2,1.6.9 |
|
langgraph-studio
☆
cask
|
Desktop app for prototyping and debugging LangGraph applications locally |
0.0.37 |
|
lbfgspp
☆
formula
|
Header-only C++ library for L-BFGS and L-BFGS-B algorithms |
0.4.0 |
|
liblinear
☆
formula
|
Library for large linear classification |
|
|
libsvm
☆
formula
|
Library for support vector machines |
3.36 |
|
libtensorflow
☆
formula
|
C interface for Google's OS library for Machine Intelligence |
|
|
lightgbm
☆
formula
|
Fast, distributed, high performance gradient boosting framework |
|
|
livebook@nightly
☆
cask
|
Code notebooks for Elixir developers |
|
|
lm-studio
☆
cask
|
Discover, download, and run local LLMs |
0.4.2,2 |
|
localai
☆
formula
|
OpenAI alternative |
3.8.0 |
|
mahout
☆
formula
|
Library to help build scalable machine learning libraries |
0.13.0 |
|
mallet
☆
formula
|
MAchine Learning for LanguagE Toolkit |
202108 |
|
mitie
☆
formula
|
Library and tools for information extraction |
|
|
mlpack
☆
formula
|
Scalable C++ machine learning library |
2.30 |