AI Coding Agents Change Software Development Forever
Skills:
AI Pair Programming80%
//Abstract
Demetrios hosts a conversation with Aparna Dhinakaran, Michele Catasta, and Erik Schluntz on the promise and limitations of coding agents. They discuss key challenges like verification, debugging, and dependency management, while exploring how agents can support developers through abstraction, collaboration, and long-term task handling. This conversation reflects on what’s needed to make coding agents reliable, usable, and truly effective.
//Bio
Michele Catasta
Michele Catasta currently holds the role of VP of Artificial Intelligence at Replit, a software development platform to build and collaborate in any programming language. As of today, they have a community of 22M+ creators and learners with a mission to empower the next billion software creators with the help of AI.
Aparna Dhinakaran
Aparna Dhinakaran is the Co-Founder and Chief Product Officer at Arize AI, a leader in AI observability and evaluation that recently secured a Series C round. Prior to Arize, she was an ML engineer and leader at Uber, Apple, and TubeMogul (acquired by Adobe), where she built several core ML infrastructure platforms, including Michelangelo. Dhinakaran was a PhD researcher in the computer vision program at Cornell University before taking a leave of absence to start Arize. A frequent speaker at leading conferences and a recognized thought leader, she has been named to Forbes 30 Under 30, among other accolades.
Erik Schluntz
Erik Schluntz is a Member of Technical Staff at Anthropic, where he works on Large Language Models. He was previously the co-founder and CTO of Cobalt Robotics, which developed AI-powered security robots and scaled to over 100 deployments globally. Erik began his career at SpaceX and Google[x], and was an early Y Combinator founder after dropping out of Harvard.
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