Making artificial intelligence practical, productive, and accessible to everyone. Practical AI is a show in which technology professionals, business people, students, enthusiasts, and expert guests engage in lively discussions about Artificial Intelligence and related topics (Machine Learning, Deep Learning, Neural Networks, etc). The focus is on productive implementations and real-world scenarios that are accessible to everyone. If you want to keep up with the latest advances in AI, while keeping one foot in the real world, then this is the show for you!
Large models on CPUs
Model sizes are crazy these days with billions and billions of parameters. As Mark Kurtz explains in this episode, this makes inference slow and expensive despite the fact that up to 90%+ of the parameters don’t influence the outputs at all.
Mark helps us understand all of the practicalities and progress that is being made in model optimization and CPU inference, including the increasing opportunities to run LLMs and other Generative AI models on commodity hardware.
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.
Featuring:
Show Notes:
- Neural Magic
- SparseML
- SparseZoo
- Neural Magic Scales up MLPerf™ Inference v3.0 Performance With Demonstrated Power Efficiency; No GPUs Needed
- Deploy Optimized Hugging Face Models With DeepSparse and SparseZoo
- SparseGPT: Remove 100 Billion Parameters for Free
Something missing or broken? PRs welcome!
Timestamps:
(00:44) - Neural Magic Mark Kurtz
(03:24) - Why does LLM size matter?
(06:15) - GPUs vs. CPUs
(08:45) - Overcoming perception
(10:54) - Most parameters dont affect results
(16:01) - Balancing space & sparsity
(17:47) - Tackling performance hits
(20:38) - Aware optimization vs not?
(23:52) - Community tools
(26:11) - Neural Magic tools
(29:56) - Supporting new architecture
(31:40) - Exciting research trends
(34:52) - Looking forward in this space
(37:05) - Outro