AI-powered
podcast player
Listen to all your favourite podcasts with AI-powered features
Exploring Attention-Free Transform in Language Model Architecture
The speakers delve into the concept of attention and introduce weighted receptors as an alternative in their approach, inspired by the 'Attention-Free Transform' paper by Apple. They discuss the advantages of their 'light tension' approach and provide insights into the model architecture, such as layering, scaling, training, and the inclusion of different data sets and instructionally tuned models.
The AI Engineer Summit Expo has been announced, presented by AutoGPT (and future guest Toran Bruce-Richards!) Stay tuned for more updates on the Summit livestream and Latent Space University.
This post was on HN for 10 hours.
What comes after the Transformer? This is one of the Top 10 Open Challenges in LLM Research that has been the talk of the AI community this month. Jon Frankle (friend of the show!) has an ongoing bet with Sasha Rush on whether Attention is All You Need, and the most significant challenger to emerge this year has been RWKV - Receptance Weighted Key Value models, which revive the RNN for GPT-class LLMs, inspired by a 2021 paper on Attention Free Transformers from Apple (surprise!).
What this means practically is that RWKV models tend to scale in all directions (both in training and inference) much better than Transformers-based open source models:
While remaining competitive on standard reasoning benchmarks:
swyx was recently in Singapore for meetings with AI government and industry folks, and grabbed 2 hours with RWKV committee member Eugene Cheah for a deep dive, the full recording of which is now up on Latent Space TV:
Today we release both the 2hr video and an edited 1hr audio version, to cater to the different audiences and provide “ablation opportunities” on RWKV interest level.
The Eleuther Mafia?
The RWKV project is notable not merely because of the credible challenge to the Transformers dominance. It is also a distributed, international, mostly uncredentialed community reminiscent of early 2020s Eleuther AI:
* Primarily Discord, pseudonymous, GPU-poor volunteer community somehow coordinating enough to train >10B, OPT/BLOOM-competitive models
* Being driven by the needs of its community, it is extremely polyglot (e.g. English, Chinese, Japanese, Arabic) not because it needs to beat some benchmarks, but because its users want it to be for their own needs.
* “Open Source” in both the good and the bad way - properly Apache 2.0 licensed (not “open but restricted”), yet trained on data taken from commercially compromised sources like the Pile (where Shawn Presser’s Books3 dataset has been recently taken down) and Alpaca (taking from Steven Tey’s ShareGPT which is technically against OpenAI TOS)
The threadboi class has loved tracking the diffusion of Transformers paper authors out into the industry:
But perhaps the underdog version of this is tracking the emerging Eleuther AI mafia:
It will be fascinating to see how both Eleuther and Eleuther alums fare as they build out the future of both LLMs and open source AI.
Audio Version Timestamps
assisted by smol-podcaster. Different timestamps vs the 2hr YouTube
* [00:05:35] Eugene's path into AI at UIlicious
* [00:07:33] Tokenizer penalty and data efficiency of Transformers
* [00:08:02] Using Salesforce CodeGen
* [00:10:17] The limitations of Transformers for handling large context sizes
* [00:13:17] RWKV compute costs compared to Transformers
* [00:16:06] How Eugene found RWKV early
* [00:18:52] RWKV's focus on supporting many languages, not just English
* [00:21:24] Using the RWKV model for fine-tuning for specific languages
* [00:24:45] What is RWKV?
* [00:33:46] Overview of the different RWKV models like World, Raven, Novel
* [00:41:34] Background of Blink, the creator of RWKV
* [00:49:55] The linear vs quadratic scaling of RWKV vs Transformers
* [00:53:29] RWKV matching Transformer performance on reasoning tasks
* [00:54:31] The community's lack of marketing for RWKV
* [00:57:00] The English-language bias in AI models
* [01:00:33] Plans to improve RWKV's memory and context handling
* [01:03:10] Advice for AI engineers wanting to get more technical knowledge
Show Notes
Companies/Organizations:
* RWKV - HF blog, paper, docs, GitHub, Huggingface
* Raven 14B (finetuned on Alpaca+ShareGPT+...) Demo
* World 7B (supports 100+ world languages) Demo
* How RWKV works in 100 LOC, RWKV overview
* EleutherAI - Decentralized open source AI research group
* Stability AI - Creators of Stable Diffusion
* Conjecture - Spun off from EleutherAI
People:
* Eugene Chia - CTO of UIlicious, member of RWKV committee (GitHub, Twitter)
* Blink/Bo Peng - Creator of RWKV architecture
* Quentin Anthony - our Latent Space pod on Eleuther, coauthor on RWKV
* Sharif Shameem - our Latent Space pod on being early to Stable Diffusion
* Tri Dao - our Latent Space pod on FlashAttention making Attention subquadratic
* Linus Lee - our Latent Space pod in NYC
* Jonathan Frankle - our Latent Space pod about Transformers longevity
* Chris Re - Genius at Stanford working on state-space models
* Andrej Karpathy - Zero to Hero series
* Justine Tunney ("Justine.lol") - mmap trick
Models/Papers:
* Top 10 Open Challenges in LLM Research
* Retentive Network: A Successor to Transformer for Large Language Models
* GPT-NeoX - Open source replica of GPT-3 by EleutherAI
* Salesforce CodeGen and CodeGen 2
* Attention Free Transformers paper
* The Pile
* Monarch Mixer - Revisiting BERT, Without Attention or MLPs
Misc Notes
RWKV is not without known weaknesses - Transformers do well in reasoning because they are expressive in the forward pass, yet the RWKV docs already note that it is sensitive to prompt formatting and poor at lookback tasks. We also asked pointed questions about RWKV’s challenges in the full podcast.
Listen to all your favourite podcasts with AI-powered features
Listen to the best highlights from the podcasts you love and dive into the full episode
Hear something you like? Tap your headphones to save it with AI-generated key takeaways
Send highlights to Twitter, WhatsApp or export them to Notion, Readwise & more
Listen to all your favourite podcasts with AI-powered features
Listen to the best highlights from the podcasts you love and dive into the full episode