Hugging Face
Models
Datasets
Spaces
Buckets
new
Docs
Enterprise
Pricing
Website
Tasks
HuggingChat
Collections
Languages
Organizations
Community
Blog
Posts
Daily Papers
Learn
Discord
Forum
GitHub
Solutions
Team & Enterprise
Hugging Face PRO
Enterprise Support
Inference Providers
Inference Endpoints
Storage Buckets
Log In
Sign Up
40.0
TFLOPS
2
3
31
Иван Иванович Слеповичев
gurgutan
Follow
ishahzaibkhan's profile picture
phuongnhunghp2541's profile picture
2 followers
·
10 following
gurgutan
AI & ML interests
None yet
Recent Activity
reacted
to
philipp-zettl
's
post
with 👍
about 1 month ago
I've been cooking something neat over the past weeks 👨🍳 We all know that training LLMs requires a lot of resources and especially a lot of compute in form of GPUs, or is super slow and inefficient when done on CPUs. The big players use giant clusters of Nvidia H100s. But if I look at the profiles of my fellow home brewers, all we can get our hands on are those pesky consumer RTX's. If you're lucky you got yourself a 5080 with 16GB VRAM or something. To be frank, I don't have that 1.3k disposable cash laying around ¯\_(ツ)_/¯ But I can write rust and like building ML libraries. So I asked myself the question(s): - can I train SMLs at home on my hardware? - How hard can it be to build a ML library that can stream data between RAM and VRAM on demand, like llama.cpp's unified memory feature [^1]? - how hard can it be to implement bf16 support? The answers are wild, trust me! Image 1: Metrics form last nights build on my "tiny" RTX 2060 (6 GB VRAM) Image 2: Metrics from my most recent build on my RTX 4070 Laptop (8GB VRAM) The majority of my time went into the shared memory, but it's stable and I'm very excited! Here some debug logs, a la "trust me bro" ``` ---- Currently available: 1112735744, attempting to reclaim: 1073741824 --- VRAM STATE [backward pass] --- Driver Used: 6744 MB / 7805 MB Data on GPU: 1641 MB Grads on GPU: 3459 MB CPU Offloaded: 18230 MB --------------------------------- Currently available: 1079181312, attempting to reclaim: 1073741824 --- VRAM STATE [backward pass] --- Driver Used: 6776 MB / 7805 MB Data on GPU: 1561 MB Grads on GPU: 3279 MB CPU Offloaded: 18590 MB ----------------------------- ``` Final models get exported in `safetensors` format and are compatible with PyTorch and `transformers`, for accessibility. - [^1]: https://github.com/ggml-org/llama.cpp/blob/master/docs/build.md#unified-memory
upvoted
an
article
5 months ago
Mixture of Experts Explained
liked
a model
6 months ago
ubergarm/GigaChat3-10B-A1.8B-GGUF
View all activity
Organizations
None yet
gurgutan
's models
7
Sort: Recently updated
gurgutan/giga-embedding-instruct-bnb-4bit
Feature Extraction
•
4B
•
Updated
Oct 7, 2025
gurgutan/fastlm-n8-c16-r8-k32
Updated
Aug 4, 2025
•
1
gurgutan/fastlm-n7-c8-k32
Updated
Aug 1, 2025
•
1
gurgutan/FastSSLM-n5-c4-k128
Updated
Jul 27, 2025
gurgutan/MultiLayerAutomaton
Updated
Sep 29, 2023
gurgutan/saiga2-13b-4bit
Text Generation
•
Updated
Jul 29, 2023
•
4
gurgutan/ruGPT-13B-4bit
Text Generation
•
Updated
Jul 20, 2023
•
19
•
8