PodcastsTecnologíaMLOps.community

MLOps.community

Demetrios
MLOps.community
Último episodio

542 episodios

  • MLOps.community

    AI Agents Should Be Treated Like Hackers

    06/07/2026 | 31 min
    In this episode, we're joined by Matt DeBergalis, CTO and Co-Founder of Apollo GraphQL, to explore what happens when AI agents start interacting with enterprise systems that were never designed for them.

    We dive into the collision between APIs, MCP, GraphQL, and agentic AI, and why traditional assumptions about trust, permissions, and security are breaking down. Matt argues that AI agents should be treated as untrusted actors by default, and explains why giving agents access to enterprise data creates entirely new challenges around governance, access control, and risk management.
    Along the way, we discuss semantic APIs, enterprise data silos, citizen developers, agent permissions, security boundaries, and how GraphQL and MCP can work together to make enterprise systems more accessible to both humans and AI. The conversation also explores why companies are racing to deploy agents despite the risks, and what the future of enterprise software might look like when AI becomes the primary consumer of APIs.

    Apollo GraphQL: https://www.apollographql.com

    Matt DeBergalis: https://www.linkedin.com/in/debergalis
    Alex Salkever: https://www.linkedin.com/in/alexsalkever
  • MLOps.community

    Agentic Conversation Trailer 3

    06/07/2026 | 1 min
    Matt DeBergalis, CTO and Co-Founder of Apollo GraphQL
  • MLOps.community

    Developers May Stop Depending on Libraries

    06/07/2026 | 46 min
    In this episode of Agentic Conversations, we're joined by Shaun Smith, software engineer, open source advocate, and contributor at Hugging Face, to explore how AI coding has changed almost overnight.
    We dive into reinforcement learning, MCP (Model Context Protocol), Fast Agent, Claude Code, open source AI, and why today's language models have become so capable that many traditional software libraries are becoming "liquefied." Shaun explains how reinforcement learning unlocked long-running autonomous agents, why ideas are becoming more valuable than code, and how developers should think about building software in an era where AI can generate entire applications.
    Along the way, we discuss Hugging Face's MCP server, Fast Agent, AI-powered developer tools, multimodal applications, MCP Apps, context windows, coding assistants, Rust, Python, TypeScript, open-weight models, software architecture, and what the future of programming looks like when humans increasingly focus on design instead of implementation.
    Shaun Smith: https://www.linkedin.com/in/smithshaunDemetrios: https://www.linkedin.com/in/dpbrinkm
    Hugging Face: https://huggingface.co
    Timestamps:

    00:00 Introduction
    01:56 The State of Open Source AI
    05:18 Reinforcement Learning Changed Everything
    07:50 Fast Agent Explained
    10:18 Fast Agent as an MCP Reference Platform
    12:20 Building Smarter AI Tools at Hugging Face
    15:17 Natural Language Search Instead of APIs
    17:46 Why MCP Apps Matter
    20:06 The Evolution of MCP Apps
    23:05 Building AI-Native User Interfaces
    26:12 Context Is the New Programming Language
    28:00 The End of Code Libraries
    29:50 Why Developers Aren't Writing Code
    31:25 AI Changes Software Engineering
    33:05 The Future of Open Source AI
    35:43 Claude Skills That Save Hours
    38:02 Training Models with AI
    39:05 Building Your Own AI Tools
    40:50 MCP for Consumers, Enterprises, and Developers
    43:42 Why Shell Access Makes Agents Smarter
    45:18 Secure Agent Workflows
    46:08 The Future of AI Interfaces
    47:02 Outro
  • MLOps.community

    10 Cities. 4 Countries. One Unexpected MCP Lesson.

    06/07/2026 | 22 min
    In this episode, we're joined by Ben Morss, Developer Advocate at DeepL, who spent months traveling across North America and Europe teaching developers about MCP, building MCP servers, and helping teams understand how AI agents actually use tools.
    We dive into the biggest misconceptions around MCP, why so many developers still misunderstand how it works, and what Ben learned after giving talks and workshops in 10 cities across four countries. Along the way, we explore MCP server design, tool calling, security concerns, translation workflows, developer education, and how DeepL is using MCP to bring high-quality language translation into AI-powered applications.
    DeepL: https://www.deepl.com
    Ben Morss: https://www.linkedin.com/in/ben-morss-ph-d-15bab15Alex Saltkever: https://www.linkedin.com/in/alexsalkever
    Timestamps:
    [00:00] AI and API Integration
    [00:41] DeepL at DevSummit
    [01:19] MCP Roadshow Origins
    [03:47] MCP Hackathon Insights
    [07:52] Security in Model Protocols
    [10:25] AI Expert vs Noob Queries
    [16:08] DeepL vs Frontier LLMs
    [18:16] MCP vs REST API
    [21:39] MCP Servers and DeepL
  • MLOps.community

    The Next Programming Language Is English

    06/07/2026 | 38 min
    In this episode, we're joined by Cornelia Davis, Developer Advocate at Temporal and a longtime software architect who has spent decades helping shape modern cloud-native systems.
    We explore how programming has evolved from assembly language to cloud-native architectures, and why AI is forcing us to rethink software development once again. Cornelia argues that natural language is becoming a new programming abstraction, while durable execution may be the missing layer that makes AI agents reliable in production.
    The conversation dives into probabilistic software, long-running AI agents, MCP tasks, human-in-the-loop workflows, durable timers, distributed systems, and why developers may no longer need to think about infrastructure the way they once did.
    Cornelia Davis: https://www.linkedin.com/in/corneliadavisDemetrios: https://www.linkedin.com/in/dpbrinkm
    Temporal: https://temporal.io
    Timestamps
    [00:00] AI Programming Abstractions
    [00:52] Abstraction Evolution in Programming
    [04:05] Text to SQL Evolution
    [10:08] Compensations for Natural Language
    [12:13] Durable MCP in AI
    [18:34] Streaming Session Explanation
    [21:31] Batch Processes with Tasks
    [29:29] Complexity Relocation in Systems
    [33:10] Complexity Relocation in Dev
    [36:36] Programming Model Shifts
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Relaxed Conversations around getting AI into production, whatever shape that may come in (agentic, traditional ML, LLMs, Vibes, etc)
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