AI trends: a Latent Space crossover
Practical AI: Machine Learning, Data Science
English - June 14, 2023 19:00 - 59 minutes - 54.8 MB - ★★★★★ - 37 ratingsTechnology Education How To changelog machine learning deep learning artificial intelligence neural networks computer vision Homepage Download Apple Podcasts Google Podcasts Overcast Castro Pocket Casts RSS feed
Daniel had the chance to sit down with @swyx and Alessio from the Latent Space pod in SF to talk about current AI trends and to highlight some key learnings from past episodes. The discussion covers open access LLMs, smol models, model controls, prompt engineering, and LLMOps. This mashup is magical. Don’t miss it!
Daniel had the chance to sit down with @swyx and Alessio from the Latent Space pod in SF to talk about current AI trends and to highlight some key learnings from past episodes. The discussion covers open access LLMs, smol models, model controls, prompt engineering, and LLMOps. This mashup is magical. Don’t miss it!
Changelog++ members save 1 minute on this episode because they made the ads disappear. Join today!
Sponsors:
Fastly – Our bandwidth partner. Fastly powers fast, secure, and scalable digital experiences. Move beyond your content delivery network to their powerful edge cloud platform. Learn more at fastly.com
Fly.io – The home of Changelog.com — Deploy your apps and databases close to your users. In minutes you can run your Ruby, Go, Node, Deno, Python, or Elixir app (and databases!) all over the world. No ops required. Learn more at fly.io/changelog and check out the speedrun in their docs.
Typesense – Lightning fast, globally distributed Search-as-a-Service that runs in memory. You literally can’t get any faster!
Featuring:
Shawn Wang – Twitter, GitHub, WebsiteAlessio Fanelli – Twitter, GitHub, WebsiteDaniel Whitenack – Twitter, GitHub, Website
Show Notes:
Latent Space podcast
Featured Latent Space episodes:
Benchmarks
Reza Shabani
MosaicML and MPT
Segment Anything
Mike Conover
Featured Practical AI episodes:
From notebooks to Netflix scale with Metaflow
Capabilities of LLMs 🤯
ML at small organizations
Something missing or broken? PRs welcome!