Agentic ai

Building an Agentic Platform — Ben Kus, CTO Box

Building an Agentic Platform — Ben Kus, CTO Box

Ben Kus, CTO of Box, outlines the technical evolution of their AI platform, detailing the transition from a promising but fragile LLM-based metadata extraction system to a robust, scalable agentic architecture. He explains why this shift was necessary to handle enterprise-level complexity and the key lessons learned.

Form factors for your new AI coworkers — Craig Wattrus, Flatfile

Form factors for your new AI coworkers — Craig Wattrus, Flatfile

An exploration of designing AI-native user experiences by treating AI systems as "coworkers." This summary covers a framework for AI interaction (invisible, ambient, inline, conversational), a design philosophy based on "feeling the material" and "courting emergence," and novel UX patterns for collaborative AI tools.

No Priors Ep. 128 | With DeepLearning.AI Founder Andrew Ng

No Priors Ep. 128 | With DeepLearning.AI Founder Andrew Ng

Andrew Ng discusses the rise of agentic AI, moving beyond scale as the sole driver of progress. He explores how AI-assisted coding is creating a new startup paradigm, shifting the bottleneck from engineering to product management and favoring technical founders. Ng argues for smaller, highly-skilled teams and predicts AI will profoundly empower individuals across all job functions.

Self-Driving Storage: AI Agent Automation for Data Infrastructure

Self-Driving Storage: AI Agent Automation for Data Infrastructure

Explore the concept of "self-driving storage," where AI and AIOps autonomously manage data infrastructure. Learn how mobile storage partitions, predictive analytics, and agentic AI are used to automate capacity management, workload placement, and on-demand performance optimization without human intervention.

Traditional vs LLM Recommender Systems: Are They Worth It?

Traditional vs LLM Recommender Systems: Are They Worth It?

This summary explores Arpita Vats's insights on how Large Language Models (LLMs) are revolutionizing recommender systems. It contrasts the traditional feature-engineering-heavy approach with the contextual understanding of LLMs, which shifts the focus to prompt engineering. Key challenges like inference latency and cost are discussed, along with practical solutions such as lightweight models, knowledge distillation, and hybrid architectures. The conversation also touches on advanced applications like sequential recommendation and the future potential of agentic AI.

OpenAI dropped GPT-5, is AGI here?

OpenAI dropped GPT-5, is AGI here?

In this analysis, experts Bryan Casey, Mihai Criveti, and Chris Hay dissect the OpenAI GPT-5 release, comparing its capabilities against Anthropic's Claude Opus 4.1. While GPT-5 introduces significant improvements in accessibility, agentic capabilities, and reliability, the consensus is that it does not yet dethrone Claude as the daily driver for developers due to key differences in user experience and workflow management.