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Hierarchical Korean-English Code-Switching Speech Recognition Benchmark (EACL Findings 2026) | 한영 혼용 음성인식 벤치마크
Raw Data API is a set of high-performant APIs for transforming and exporting OpenStreetMap (OSM) data in different GIS file formats
🥪🦘 An open source sandbox project exploring dbt workflows via a fictional sandwich shop's data.
AI-powered real estate platform with conversational property search, analytics, and market insights. Built with FastAPI + Next.js + ChromaDB.
The Context Platform for your Data and AI Stack
Give your agents the power of the Hugging Face ecosystem
🦞 Just talk to your agent — it learns and EVOLVES 🧬.
Pytorch domain library for recommendation systems
A List of Recommender Systems and Resources
High-quality multi-lingual text-to-speech library by MyShell.ai. Support English, Spanish, French, Chinese, Japanese and Korean.
Fully autonomous & self-evolving research from idea to paper. Chat an Idea. Get a Paper. 🦞
A curated list of awesome Recommender System (Books, Conferences, Researchers, Papers, Github Repositories, Useful Sites, Youtube Videos)
Conversational Recommender System (CRS) paper list. 对话推荐系统论文列表
LibRerank is a toolkit for re-ranking algorithms. There are a number of re-ranking algorithms, such as PRM, DLCM, GSF, miDNN, SetRank, EGRerank, Seq2Slate.
👕 Open-source course on architecting, building and deploying a real-time personalized recommender for H&M fashion articles.
TensorFlow Recommenders is a library for building recommender system models using TensorFlow.
Run AI models locally on your machine with node.js bindings for llama.cpp. Enforce a JSON schema on the model output on the generation level
Best Practices on Recommendation Systems
RLAnything (ICML 2026) & AutoTool (ICML 2026), DemyAgent: Open-Source RL for LLMs and Agentic Scenarios
OpenClaw-RL: Train any agent simply by talking
A comprehensive book on neural networks and large language models in NLP
Learn System Design concepts and prepare for interviews using free resources.
Planning for Success: Exploring LLM Long-term Planning Capabilities in Table Understanding