Running 27 27 SmolLM2 1.7B Instruct WebGPU 🚀 A blazingly fast & powerful AI chatbot that runs in-browser!
view post Post 6512 11 new types of RAGRAG is evolving fast, keeping pace with cutting-edge AI trends. Today it becomes more agentic and smarter at navigating complex structures like hypergraphs.Here are 11 latest RAG types: 1. InstructRAG -> InstructRAG: Leveraging Retrieval-Augmented Generation on Instruction Graphs for LLM-Based Task Planning (2504.13032)Combines RAG with a multi-agent framework, using a graph-based structure, an RL agent to expand task coverage, and a meta-learning agent for better generalization2. CoRAG (Collaborative RAG) -> CoRAG: Collaborative Retrieval-Augmented Generation (2504.01883)A collaborative framework that extends RAG to settings where clients train a shared model using a joint passage store3. ReaRAG -> ReaRAG: Knowledge-guided Reasoning Enhances Factuality of Large Reasoning Models with Iterative Retrieval Augmented Generation (2503.21729)It uses a Thought-Action-Observation loop to decide at each step whether to retrieve information or finalize an answer, reducing unnecessary reasoning and errors4. MCTS-RAG -> MCTS-RAG: Enhancing Retrieval-Augmented Generation with Monte Carlo Tree Search (2503.20757)Combines RAG with Monte Carlo Tree Search (MCTS) to help small LMs handle complex, knowledge-heavy tasks5. Typed-RAG - > Typed-RAG: Type-aware Multi-Aspect Decomposition for Non-Factoid Question Answering (2503.15879)Improves answers on open-ended questions by identifying question types (a debate, personal experience, or comparison) and breaking it down into simpler parts6. MADAM-RAG -> Retrieval-Augmented Generation with Conflicting Evidence (2504.13079)A multi-agent system where models debate answers over multiple rounds and an aggregator filters noise and misinformation7. HM-RAG -> HM-RAG: Hierarchical Multi-Agent Multimodal Retrieval Augmented Generation (2504.12330)A hierarchical multi-agent RAG framework that uses 3 agents: one to split queries, one to retrieve across multiple data types (text, graphs and web), and one to merge and refine answers8. CDF-RAG -> CDF-RAG: Causal Dynamic Feedback for Adaptive Retrieval-Augmented Generation (2504.12560)Works with causal graphs and enables multi-hop causal reasoning, refining queries. It validates responses against causal pathwaysTo explore what is Causal AI, read our article: https://www.turingpost.com/p/causalaiSubscribe to the Turing Post: https://www.turingpost.com/subscribeRead further 👇 See translation 1 reply · 👍 22 22 🤝 2 2 + Reply
Running on Zero 9 9 WORLDMEM:Long-term Consistent World Generation with Memory 🎮 Generate Minecraft-like video from image and actions
WORLDMEM: Long-term Consistent World Simulation with Memory Paper • 2504.12369 • Published 8 days ago • 30
NormalCrafter: Learning Temporally Consistent Normals from Video Diffusion Priors Paper • 2504.11427 • Published 9 days ago • 17
DataDecide Collection A suite of models, data, and evals over 25 corpora, 14 sizes, and 3 seeds to measure how accurately small experiments predict rankings at large scale. • 358 items • Updated 8 days ago • 13
SmolVLM: Redefining small and efficient multimodal models Paper • 2504.05299 • Published 17 days ago • 171
distil-large-v3.5 Collection This collection contains the model repositories for distil-large-v3.5, which provides support for the most popular Whisper libraries. • 5 items • Updated about 1 month ago • 7