Listen "Inside Nvidia’s Nemotron Play, Real Agent Usage Data, and US Tech Force"
Episode Synopsis
The DAS crew focused on Nvidia’s decision to open source its Nemotron model family, what that signals in the hardware and software arms race, and new research from Perplexity and Harvard analyzing how people actually use AI agents in the wild. The second half shifted into Google’s new Disco experiment, tab overload, agent driven interfaces, and a long discussion on the newly announced US Tech Force, including historical parallels, talent incentives, and skepticism about whether large government programs can truly attract top AI builders.Key Points DiscussedNvidia open sources the Nematron model family, spanning 30B to 500B parametersNematron Nano outperforms similar sized open models with much faster inferenceNvidia positions software plus hardware co design as its long term moatChinese open models continue to dominate open source benchmarksPerplexity confirms use of Nematron models alongside proprietary systemsNew Harvard and Perplexity paper analyzes over 100,000 agentic browser sessionsProductivity, learning, and research account for 57 percent of agent usageShopping and course discovery make up a large share of remaining queriesUsers shift toward more cognitively complex tasks over timeGoogle launches Disco, turning related browser tabs into interactive agent driven appsDisco aims to reduce tab overload and create task specific interfaces on the flyDebate over whether apps are built for humans or agents going forwardCursor moves parts of its CMS toward code first, agent friendly designUS Tech Force announced as a two year federal AI talent recruitment programProgram emphasizes portfolios over degrees and offers 150K to 200K compensationHistorical programs often struggled due to bureaucracy and cultural resistancePanel debates whether elite AI talent will choose government over private sector rolesConcerns raised about branding, inclusion, and long term effectiveness of Tech ForceTimestamps and Topics00:00:00 👋 Opening, host lineup, StreamYard layout issues00:04:10 🧠 Nvidia Nematron open source announcement00:09:30 ⚙️ Hardware software co design and TPU competition00:15:40 📊 Perplexity and Harvard agent usage research00:22:10 🛒 Shopping, productivity, and learning as top AI use cases00:27:30 🌐 Open source model dominance from China00:31:10 🧩 Google Disco overview and live walkthrough00:37:20 📑 Tab overload, dynamic interfaces, and agent UX00:43:50 🤖 Designing sites for agents instead of people00:49:30 🏛️ US Tech Force program overview00:56:10 📜 Degree free hiring, portfolios, and compensation01:03:40 ⚠️ Historical failures of similar government tech programs01:09:20 🧠 Inclusion, branding, and talent attraction concerns01:16:30 🏁 Closing, community thanks, and newsletter remindersThe Daily AI Show Co Hosts: Brian Maucere, Andy Halliday, Anne Townsend, and Karl Yeh
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