This is a autopost bolg frinds we are trying to all latest sports,news,all new update provide for you
Thursday, July 9, 2026
Show HN: Getting GLM 5.2 running on my slow computer https://ift.tt/wUr2mso
Show HN: Getting GLM 5.2 running on my slow computer The capabilities and security I was getting from this LLM are similar to those I've gotten from models like Claude or GPT, and this really surprised me. But then I thought, "I wonder how it would work on a normal computer like mine," and above all, "I wonder if it would work without going into OOM on a computer like mine." So I started working with the help of agents to test this possibility. I started converting the model to int4, understanding MTP usage, and if possible implementing DSA for long context. How it responds in int4 and whether the quality is maintained or not. Until I got to the point, on my computer with 32GB of RAM, I was able to communicate with GLM 5.2 with times that, of course, aren't high in cold start, but even then, we're talking about 0.1 tok/s, but that wasn't important to me. The important thing was the journey to reach this goal and, above all, changing the perspective on the project. I wanted it to work at all costs, even slowly. So I created Colibrì, which was born from a very simple idea, to be honest, but tested in every way, where a 744B Mixture-of-Experts model activates only ~40B parameters per token—and only ~11 GB of those change from token to token (the routed experts). So: The dense part (attention, shared experts, embeddings—~17B params) stays resident in RAM at int4 (~9.9 GB); The 21,504 routed experts (75 MoE layers × 256 experts + the MTP head, ~19 MB each at int4) live on disk (~370 GB) and are streamed on demand, with a per-layer LRU cache, an optional pinned hot-store, and the OS page cache as a free L2. The engine is a single C file (c/glm.c, ~1,300 lines) plus small headers. No BLAS, no Python at runtime, no GPU.No GPU or serious hardware because I don't have that hardware so I can't test it on hardware that is more powerful than my computer.Colibrì is a one-person project, written and tested entirely on a 12-core laptop with 25 GB of RAM — the numbers above are the ceiling of what I can measure at home. Any feedback is welcome! Repo: https://ift.tt/bQ8Xi2v https://ift.tt/bQ8Xi2v July 9, 2026 at 01:35PM
Subscribe to:
Post Comments (Atom)
Show HN: Getting GLM 5.2 running on my slow computer https://ift.tt/wUr2mso
Show HN: Getting GLM 5.2 running on my slow computer The capabilities and security I was getting from this LLM are similar to those I've...
-
Show HN: When is the next Caltrain? (minimal webapp) I was frustrated with the existing caltrain websites / apps, so I made a super minimali...
-
Show HN: I built Dirac, Hash Anchored AST native coding agent, costs -64.8 pct Fully open source, a hard fork of cline. Full evals on the gi...
-
Show HN: Total Recall – write-gated memory for Claude Code https://ift.tt/G7AugiK February 6, 2026 at 05:26AM
No comments:
Post a Comment