this post was submitted on 14 Jun 2023
24 points (100.0% liked)

Technology

37724 readers
651 users here now

A nice place to discuss rumors, happenings, innovations, and challenges in the technology sphere. We also welcome discussions on the intersections of technology and society. If it’s technological news or discussion of technology, it probably belongs here.

Remember the overriding ethos on Beehaw: Be(e) Nice. Each user you encounter here is a person, and should be treated with kindness (even if they’re wrong, or use a Linux distro you don’t like). Personal attacks will not be tolerated.

Subcommunities on Beehaw:


This community's icon was made by Aaron Schneider, under the CC-BY-NC-SA 4.0 license.

founded 2 years ago
MODERATORS
 

cross-posted from: https://lemmy.world/post/135600

For anyone following the AI space of technology - this is pretty cool - especially since AMD has fallen behind its NVIDIA CUDA competitors.

(full article for convenience)

Hugging Face and AMD partner on accelerating state-of-the-art models for CPU and GPU platforms

Whether language models, large language models, or foundation models, transformers require significant computation for pre-training, fine-tuning, and inference. To help developers and organizations get the most performance bang for their infrastructure bucks, Hugging Face has long been working with hardware companies to leverage acceleration features present on their respective chips.

Today, we're happy to announce that AMD has officially joined our Hardware Partner Program. Our CEO Clement Delangue gave a keynote at AMD's Data Center and AI Technology Premiere in San Francisco to launch this exciting new collaboration.

AMD and Hugging Face work together to deliver state-of-the-art transformer performance on AMD CPUs and GPUs. This partnership is excellent news for the Hugging Face community at large, which will soon benefit from the latest AMD platforms for training and inference.

The selection of deep learning hardware has been limited for years, and prices and supply are growing concerns. This new partnership will do more than match the competition and help alleviate market dynamics: it should also set new cost-performance standards.

Supported hardware platforms

On the GPU side, AMD and Hugging Face will first collaborate on the enterprise-grade Instinct MI2xx and MI3xx families, then on the customer-grade Radeon Navi3x family. In initial testing, AMD recently reported that the MI250 trains BERT-Large 1.2x faster and GPT2-Large 1.4x faster than its direct competitor.

On the CPU side, the two companies will work on optimizing inference for both the client Ryzen and server EPYC CPUs. As discussed in several previous posts, CPUs can be an excellent option for transformer inference, especially with model compression techniques like quantization.

Lastly, the collaboration will include the Alveo V70 AI accelerator, which can deliver incredible performance with lower power requirements.

Supported model architectures and frameworks

We intend to support state-of-the-art transformer architectures for natural language processing, computer vision, and speech, such as BERT, DistilBERT, ROBERTA, Vision Transformer, CLIP, and Wav2Vec2. Of course, generative AI models will be available too (e.g., GPT2, GPT-NeoX, T5, OPT, LLaMA), including our own BLOOM and StarCoder models. Lastly, we will also support more traditional computer vision models, like ResNet and ResNext, and deep learning recommendation models, a first for us.

We'll do our best to test and validate these models for PyTorch, TensorFlow, and ONNX Runtime for the above platforms. Please remember that not all models may be available for training and inference for all frameworks or all hardware platforms.

The road ahead

Our initial focus will be ensuring the models most important to our community work great out of the box on AMD platforms. We will work closely with the AMD engineering team to optimize key models to deliver optimal performance thanks to the latest AMD hardware and software features. We will integrate the AMD ROCm SDK seamlessly in our open-source libraries, starting with the transformers library.

Along the way, we'll undoubtedly identify opportunities to optimize training and inference further, and we'll work closely with AMD to figure out where to best invest moving forward through this partnership. We expect this work to lead to a new Optimum library dedicated to AMD platforms to help Hugging Face users leverage them with minimal code changes, if any.

Conclusion

We're excited to work with a world-class hardware company like AMD. Open-source means the freedom to build from a wide range of software and hardware solutions. Thanks to this partnership, Hugging Face users will soon have new hardware platforms for training and inference with excellent cost-performance benefits. In the meantime, feel free to visit the AMD page on the Hugging Face hub. Stay tuned!

top 8 comments
sorted by: hot top controversial new old
[–] MentallyExhausted@reddthat.com 6 points 1 year ago (4 children)

Why is there a company called Hugging Face? Why does it exist? Who did this?

[–] Thalyssa@kbin.social 7 points 1 year ago

Odd name aside, it's a great resource for SD models.

[–] ColKoala@lemmy.world 6 points 1 year ago (1 children)

Its like github but specifict to AI Models.

[–] Blaed@lemmy.world 2 points 1 year ago

For anyone unaware, this is probably one of the better short and sweet explanations in regards to what HuggingFace is.

It is a hub for many code repositories hosting AI specific files and configurations, which has become a core ecosystem of many artificial intelligence breakthroughs, platforms, and applications.

[–] Blaed@lemmy.world 3 points 1 year ago
[–] AlmightySnoo@lemmy.world 2 points 1 year ago (1 children)

because the world needs more hugs 🤗

[–] AlmightySnoo@lemmy.world 3 points 1 year ago

The issue is and has always been the software, not really the hardware. AMD's ROCm libraries are still complete garbage and a headache to install. Can't say the same about CUDA which works on the vast majority of consumer GPUs from Nvidia out of the box.