AI + a16z

Building Production Workflows for AI Applications

20 snips
Jun 14, 2024
In this podcast, Tony Holdstock-Brown discusses the challenges of running AI workflows in production. He highlights the parallel tracks of CPU and GPU engineering, emphasizing the differences between application-level and mathematical sides. The conversation explores opportunities for improvement in developer tools for generative AI and offers advice for engineers entering the field.
Ask episode
AI Snips
Chapters
Transcript
Episode notes
INSIGHT

Orchestration Simplifies AI Workflow

  • Building AI pipelines traditionally requires managing multiple queues and state externally.
  • Using an orchestration layer like Inngest simplifies complex multi-step AI workflows and state handling.
INSIGHT

Low Barrier to Start, High to Scale

  • Exploring AI models locally is easy and accessible for developers.
  • The challenge lies in productionizing AI, requiring robust infrastructure and thoughtful design.
INSIGHT

AI as Development Aid Not Core Product

  • AI is an auxiliary tool that enhances development speed and effectiveness rather than a core product layer for Inngest.
  • Infrastructure concerns like queuing and concurrency remain fundamental despite AI capabilities.
Get the Snipd Podcast app to discover more snips from this episode
Get the app