Anatomy of a Software 3.0 Company // Sarah Guo // AI in Production Keynote

MLOps.community · Advanced ·🚀 Entrepreneurship & Startups ·2y ago
// Abstract If software 2.0 was about designing data collection for neural network training, software 3.0 is about manipulating foundation models at a system level to create great end-user experiences. AI-native applications are “GPT wrappers” the way SaaS companies are database wrappers. This talk discusses the huge design space for software 3.0 applications and explains Conviction’s framework for value, defensibility, and strategy in specifically assessing these companies. // Bio Sarah Guo is the Founder and Managing Partner at @Conviction, a venture capital firm founded in 2022 to invest in intelligent software, or "Software 3.0." Prior, she spent a decade as a General Partner at Greylock Partners. She has been an early investor or advisor to 40+ companies in software, fintech, security, infrastructure, fundamental research, and AI-native applications. Sarah is from Wisconsin, has four degrees from the University of Pennsylvania, and lives in the Bay Area with her husband and two daughters. She co-hosts the AI podcast @NoPriorsPodcast with Elad Gil. // Sign up for our Newsletter to never miss an event: https://mlops.community/join/ // Watch all the conference videos here: https://home.mlops.community/home/collections // Check out the MLOps Community podcast: https://open.spotify.com/show/7wZygk3mUUqBaRbBGB1lgh?si=242d3b9675654a69 // Read our blog: mlops.community/blog // Join an in-person local meetup near you: https://mlops.community/meetups/ // MLOps Swag/Merch: https://mlops-community.myshopify.com/ // Follow us on Twitter: https://twitter.com/mlopscommunity //Follow us on Linkedin: https://www.linkedin.com/company/mlopscommunity/
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