“Today we report a significant advance in understanding the inner workings of AI models. We have identified how millions of concepts are represented inside Claude Sonnet, one of our deployed large language models. This is the first ever detailed look inside a modern, production-grade large language model. This interpretability discovery could, in future, help us make AI models safer.”
#Anthropic is killing it with their AI game, especially for a small startup. Their models are way better than #OpenAI's, but they're focusing more on enterprise stuff rather than hyping it up. This might be a risky move since they don't have a cult following like other AI companies. Still, gotta give them props for their impressive tech. It'll be interesting to see how they balance enterprise with getting more attention from the AI community.
My first troublesome hallucination with a #LLM in a while: #Claude3#Opus (200k context) insisting that I can configure my existing #Yubikey#GPG keys to work with PKINIT with #Kerberos and helping me for a couple of hours to try to do so — before realising that GPG keys aren't supported for this use case. Whoops.
No real bother other than some wasted time, but a bit painful and disappointing.
After months of work and $10 million, Databricks has unveiled DBRX - the world's most potent publicly available open-source large language model.
DBRX outperforms open models like Meta's Llama 2 across benchmarks, even nearing the abilities of OpenAI's closed GPT-4. Novel architectural tweaks like a "mixture of experts" boosted DBRX's training efficiency by 30-50%.