The Build - Ai dev and product show.

Cameron Rohn and Tom Spencer

Weekly deep dives on the most interesting dev, ai and product releases, research updates and emerging trends in the AI engineering, agent development and software industry.

  1. 8월 8일

    EP 11 - Open ai OSS via open coder, Langchain open SWE, local inference with ollama turbo, virtual audiences content testing

    We recorded August 7th, right before ChatGPT launched. We dove into GPT open source, OpenCode, Ollama Turbo, and deep agent setups. I wanted to see LangChain’s open suite and test agent environments. OpenCode stood out for its flexibility — multiple model providers, easy local setup, works with Ollama Turbo for $20/month. LM Studio runs similarly. I’m considering a high-spec NVIDIA rig and DGX Spark for local inference. GPT-OSS is cheap, fast, and excellent for coding and tool-calling, but weaker on general knowledge. Running it locally means more setup work but more control. Hybrid local-plus-cloud routing feels inevitable. We demoed OpenAgent Platform — fast, multi-provider agents without writing code. Then explored LangChain SWE — an open-source, multi-threaded coding agent with planner/programmer loops, GitHub integration, Daytona sandboxes, and detailed token-cost tracking. We looked at Vercel’s v0 API for quick generative UI, and the potential to run it privately for internal teams. I closed with Google’s upcoming AI-mode ads and Societies.io — a virtual audience simulation tool for testing and optimizing content before publishing. Chapters 00:00 Introduction to ChatGPT Launch and Demos 01:40 Exploring Open Code and LangChain 04:37 Local Inference and Olamma Integration 07:25 Cloud Acceleration with Turbo Service 10:11 Open Source Model Benchmarks and Feedback

    1시간 39분
  2. 7월 25일

    EP - 9 - AI Exec Orders, Qwen 3 Coder, JSON Veo3 Demo and Graph RAG Deep Dive with Neo4J

    In this episode, we dive into the latest AI news, covering new open-source models like Qwen3 Coder and OpenAI's new agent. We discuss a major AI breakthrough at the Math Olympiad, where models achieved gold medal scores, and unpack recent AI executive orders from the Trump administration. In our demo segment, we show how to use JSON for ad vanced AI video generation. We also introduce "The Build Vault," our new project for creating a searchable knowledge base from our podcast content using tools like LangGraph and Neo4j. Chapters 00:04:42 - New Open-Source AI Models00:13:45 - AI Wins Gold at the Math Olympiad00:22:42 - Trump Administration's New AI Policies00:40:48 - Demo: Advanced AI Video Generation with JSON01:00:25 - Introducing "The Build Vault"01:09:25 - How We Built the Vault: GraphRAG & Demos Insights The pace of AI development is accelerating faster than predicted, especially in complex reasoning.Training AI agents in virtual, sandboxed environments is becoming a new industry standard.Structured data like JSON provides granular control for getting better results from creative AI models.New government policies are set to significantly impact AI development, data center construction, and federal use.Knowledge graphs and retrieval-augmented generation (RAG) are powerful techniques for building intelligent apps on top of unstructured data. Keywords Qwen3 CodaOpenAI AgentJSON Veo3AI PolicyLangGraphNeo4jGraphRAGMCP 📢 Show Links📰 News & Updates Advanced version of Gemini with Deep Think (IMO Gold Medal – DeepMind) QWEN3 Coder ModelStudio Console WebDev Arena Introducing ChatGPT Agent (OpenAI) Model training in simple terms 🏛️ Executive Orders Promoting The Export of the American AI Technology Stack Accelerating Federal Permitting of Data Center Infrastructure Preventing Woke AI in the Federal Government 🧪 Demos and Discussion Veo3 JSON mode – Examples, Templates and Docs JSON Veo App JSON Veo App – GitHub The Build Vault The Build Podcast – GitHub Jupyter Notebook Embeddings Demo AssemblyAI

    2시간 3분
  3. 7월 19일

    Ep 8 - Kimi2, Is RAG still a thing? and the coming SaaS bloodbath.

    Tom and Cam explore recent AI advancements, with particular focus on the Kimi model, its capabilities, and developer implications. They address SaaS industry challenges, including rising customer acquisition costs and the trend toward consumption-based pricing models. The conversation highlights developers' growing influence in AI technology development and the critical role of customer retention in SaaS business success. They also discuss enterprise AI adoption, RAG (Retrieval-Augmented Generation) applications, and effective data vectorization techniques. Additional topics include Cognition's acquisition of Windsurf, the continuing importance of ETL processes, and how local models can improve data processing efficiency. Throughout their discussion, they emphasize the value of layered data management approaches and how traditional methods remain relevant alongside emerging technologies. Chapters 00:00 Introduction and Technical Setup03:56 Exploring the Kimmy Model15:46 Developer-Centric AI Models23:25 Rapid Development in AI Tools25:00 Exploring Kimmy's Capabilities29:21 SaaS Industry Challenges and Changes33:23 Customer Acquisition Cost Insights38:13 The Future of SaaS in an AI-Driven World42:47 RAG and Vectorization in AI Development59:18 Understanding UMAP and Clustering in Data Representation01:02:14 Building a Mobile Inspection Tool for Real Estate01:05:23 Transforming Natural Language into Structured Data01:09:46 The Importance of ETL Processes in AI01:14:50 Defining Effective ETL Pipelines01:20:23 Exploring RAG and Its Applications01:28:39 The Role of Vector Stores in Data Management Links https://github.com/lmcinnes/umap https://www.nomic.ai https://pair-code.github.io/understanding-umap/ https://www.pinecone.io/ https://superlinked.com/ https://www.meilisearch.com/ https://www.pinecone.io/learn/vector-database/ LLM vectorization - https://bbycroft.net/llm UMAP - Vizualisation of embeddings, Nomic Atlas Vizualisation - https://atlas.nomic.ai/data/andrewgao22/hacker-news/map https://projector.tensorflow.org/ Example Superlinked Demo -https://hotel-search-recipe.superlinked.io/ https://docs.unsloth.ai/basics/kimi-k2-how-to-run-locally https://developers.googleblog.com/en/gemini-embedding-available-gemini-api/ https://moonshotai.github.io/Kimi-K2/ https://platform.moonshot.ai/docs/introduction#text-generation-model https://docs.superlinked.com/getting-started/why-superlinked Keywords AI, Kimi2 Model, SaaS, Technology, Coding, Developer Tools, Machine Learning, Open Source, API, Performance, SaaS, AI adoption, cloud computing, RAG, vectorization, ETL, Cognition, Windsurf, local models, data processing

    1시간 25분

소개

Weekly deep dives on the most interesting dev, ai and product releases, research updates and emerging trends in the AI engineering, agent development and software industry.

좋아할 만한 다른 항목