No description provided.
various machine learning routines for node
An open-source machine learning framework.
Web Assembly streaming Opus decoder with Machine Learning enhancements
Ultra-fast MicroLoRA adaptation for WASM - rank-2 LoRA with <100us latency for per-operator learning
AWS SDK for JavaScript Machine Learning Client for Node.js, Browser and React Native
Self-learning LLM runtime — TurboQuant KV-cache (6-8x compression), SONA adaptive learning, FlashAttention, speculative decoding, GGUF inference
Machine learning category of aws-amplify
Daily learning schedules: Daf Yomi, Mishna Yomi, etc
Self-Optimizing Neural Architecture (SONA) - Runtime-adaptive learning with LoRA, EWC++, and ReasoningBank for LLM routers and AI systems. Sub-millisecond learning overhead, WASM and Node.js support.
RVF self-learning temporal solver — Thompson Sampling, PolicyKernel, ReasoningBank
  
Machine learning algorithms.
Initial React package scaffold for launching the Learning Agent user experience.
A Education First learning activity
Learning-mode tutoring, review loops, and definition overlays for pi.
V3 Hooks System - Event-driven lifecycle hooks with ReasoningBank learning integration
State-of-the-art Machine Learning for the web. Run 🤗 Transformers directly in your browser, with no need for a server!
Self-learning vector database for Node.js — hybrid search, Graph RAG, FlashAttention-3, HNSW, 50+ attention mechanisms
Scaffold a Svelte SCORM e-learning project
Learning content platform
AI Manipulation Defense System (AIMDS) with self-learning, prompt injection detection, and vector search integration
State-of-the-art Machine Learning for the web. Run 🤗 Transformers directly in your browser, with no need for a server!
learning npm packaging tools
A tool to read a file
OptiRS learned optimizers and meta-learning
Self-Optimizing Neural Architecture - Runtime-adaptive learning for LLM routers with two-tier LoRA, EWC++, and ReasoningBank
swiss army knife for chess file formats
Experimental Rust implementation of the Millrace runtime.
GNN-based learning and embedding refinement for 7sense bioacoustics platform
Safe Rust. No Deps. RL for the CPU.
Deep reinforcement learning algorithms for rlevo (internal crate — use `rlevo` for the full API)
Training loops, loss composition, and optimization schedules for TensorLogic
High-performance PostgreSQL vector database extension v2 - pgvector drop-in replacement with 230+ SQL functions, SIMD acceleration, Flash Attention, GNN layers, hybrid search, multi-tenancy, self-healing, and self-learning capabilities
A Turing-complete but dead-simple spaced repetition CLI that helps you learn stuff.
A CLI and TUI for self-paced learning with AI tutors. Features auto-graded quizzes, exercise tracking, and spaced repetition.
Listing links from Ruby-BR community
Rumale::MetricLearning provides metric learning algorithms, such as Fisher Discriminant Analysis and Neighboourhood Component Analysis with Rumale interface.
Extracts course's titles, descriptions, images and links from Coursera and Udacity. And searches relating resource on Youtube.
Supervised learning is the machine learning task of inferring a function from labeled training data. A supervised learning algorithm analyzes the training data and produces an inferred function, which can be used for mapping new examples.
This workbench holds a collection of machine learning methods in Ruby. Rather than specializing on a single task or method, this gem aims at providing an encompassing framework for any machine learning application.
A machine learning gem
Microsoft Azure Machine Learning Management Client Library for Ruby
A tiny demo gem generating palindromes, from the learnenough.com Ruby course.
Exercise files for Pragmatic Studio's Learn Ruby Course; The Larry Moe and Curly Knuckleheads Game.
LEX agentic learning domain: adaptation, memory consolidation, skill acquisition
Gem to build simple regressors and classifiers into your application, without necessarily having to understand all the math behind.
Microsoft Azure Machine Learning Services Management Client Library for Ruby
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.
No description provided.