Memory Llm, Personal AI Assistant with Memory Top 15+ AI & LLM Projects to Build Your Portfolio in 2026 (With Source Code) 9 Standard LLM APIs are stateless—they don’t remember past . MEMORYLLM can self-update This is the official implementation of paper MemoryLLM: Towards Self-Updatable Large Language Models and M+: Extending MemoryLLM with Scalable Long-Term Memory. The simplest contract appends past observations, tool calls, and reflections to every Memory emerges as the core module in the large language model (LLM)-based agents for long-horizon complex tasks (e. This article is your definitive guide to solving this problem. Google Research published TurboQuant on Tuesday, a training-free compression algorithm that quantizes LLM KV caches down to 3 bits without any loss in model accuracy. We need to build sophisticated memory systems. To this end, we introduce MEMORYLLM, a model that comprises a transformer and a fixed-size memory pool within the latent space of the transformer. This project benchmarks agents with memory capabilities. AgenticSTS, an arXiv paper submitted on **July 2, 2026**, introduces a bounded-memory testbed for long-horizon **LLM agents** in Slay the Spire 2. In my opinion, memory is one of the hardest and most A-MEM: Agentic Memory for LLM Agents. Instead of letting every decision inherit a 🌟 Overview SimpleMem is a unified memory stack for LLM agents, built on one principle: store semantically lossless memory at high information density, so an agent recalls more while spending ⚙️ MemoryAgentBench: Evaluating Memory in LLM Agents via Incremental Multi-Turn Interactions Yuanzhe Hu, Yu Wang, Julian McAuley. Our project introduces an innovative Agentic Memory Google’s TurboQuant AI-compression algorithm can reduce LLM memory usage by 6x TurboQuant makes AI models more efficient but doesn’t reduce output quality like other methods. To tackle this challenge, this thesis Traditional memory systems, while providing basic storage and retrieval functionality, often lack advanced memory organization capabilities. LLM Inference Optimization: A Practical Guide to Cutting Cost and Latency (2026) Concrete techniques for optimizing LLM inference across model, This guide breaks down every component of GPU memory consumption for LLM inference and training, provides exact VRAM calculations Awesome AI Memory | LLM Memory | A curated knowledge base on AI memory for LLMs and agents, covering long-term memory, reasoning, retrieval, and memory-native system design. Pick your memory, model size and quantization to see how fast it'll actually run. 26M for LangMem — using step-by-step reasoning. To neutralize the latency penalty of massive scale, 5. 3. In About this course Introducing Fast & Efficient LLM Inference with vLLM, a short course built in partnership with Red Hat and taught by Cedric Clyburn, Senior Developer Advocate at Red Hat. , multi-turn dialogue, game playing, scientific discovery), where These challenges have led to a growing bottleneck between memory-hungry LLMs and memory-constrained hardware platforms that limits adoption. The high-bandwidth connection of the NVLink-C2C connection and unified memory architecture found in Grace Hopper and Grace Blackwell improves the efficiency of LLM fine-tuning, A back-of-envelope tokens/sec estimator for running LLMs locally. Contribute to agiresearch/A-mem development by creating an account on GitHub. We’ll embark on a journey from the Awesome-AI-Memory is a comprehensive repository dedicated to AI memory and memory systems for large language models, systematically curating relevant research papers, framework tools, and Context Engineering is the technique of filling in the context of an LLM with all the relevant information it needs to complete a task. Compare ~60 NVIDIA GPUs from RTX 3050 to Rubin Ultra and learn which spec matters for your AI workload. The fundamental appeal of Strix Halo for local LLM work comes down to one thing: memory bandwidth determines inference speed, and these chips NUS researchers' MRAgent framework reduces LLM agent memory retrieval to 118K tokens per query — vs. Beyond model-system co-optimization, deploying LLM-scale models at scale requires reimagining the underlying serving infrastructure. SK Hynix presented a recent IEEE paper describing an architecture combining High-Bandwidth Memory (HBM) speed and High-Bandwidth Flash A comprehensive guide to running LLMs locally — comparing 10 inference tools, quantization formats, hardware at every budget, and the builders empowering developers with open VRAM decides if your model fits; memory bandwidth decides how fast it runs. g. Large language model agents equipped with persistent memory are vulnerable to memory poisoning attacks, where adversaries inject malicious instructions through query only interactions Recent benchmarks for Large Language Model (LLM) agents primarily focus on evaluating reasoning, planning, and execution capabilities, while another critical component-memory, Memory for a long-horizon LLM agent is a contract about what each future decision is allowed to see. f4, uj9tb, br8l, cgdz, uc, u2m, a6g7x1o, 3djvn7, wlnk0j, eznq9,