エピソード

  • Claude Opus 4.8 Benchmarks, Dynamic Workflows, Pricing
    2026/05/29

    In This Episode:


    • What changed between Claude Opus 4.7 and Opus 4.8
    • The full benchmark table for Opus 4.8 vs Opus 4.7 and GPT-5.5
    • How Anthropic's new dynamic workflows feature works in Claude Code
    • Opus 4.8 pricing across standard, fast mode, and prompt caching
    • Why honesty is the headline non-coding improvement
    • The new effort control on claude.ai and Cowork
    • What Mythos is and when Anthropic plans to release it


    Dive deeper into this topic →

    Listen to the episode: https://nerdleveltech.com/podcast/episode-claude-opus-4-8-benchmarks-dynamic-workflows-pricing/

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    7 分
  • Building Private AI Models with Open Source LLMs
    2026/05/09

    What You'll Learn

    • Why organizations are increasingly adopting private AI models.
    • How open-source LLMs enable customization, transparency, and cost savings.
    • The technical steps to fine-tune and deploy your own private LLM.
    • How to optimize models through quantization and distillation.
    • Key security and compliance considerations for private AI infrastructure.


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    5 分
  • iOS 27 Extensions_ Pick Gemini, Claude, or ChatGPT
    2026/05/07

    What you'll learn

    • What "Extensions" actually is and how it differs from a model swap
    • Why this is a much bigger architectural shift than the existing ChatGPT integration
    • How the user experience changes for Siri, Writing Tools, and Image Playground
    • How this is different from Apple's behind-the-scenes Gemini-powered Siri rebuild
    • What questions remain unanswered until WWDC 2026
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    4 分
  • Mastering Edge Function Development
    2026/05/04

    What You'll Learn

    1. The fundamentals of edge functions and how they differ from conventional serverless models.
    2. How to develop, test, and deploy edge functions using modern frameworks.
    3. Real-world use cases and performance implications.
    4. Security and scalability considerations for production-ready edge workloads.
    5. Common pitfalls, debugging strategies, and monitoring techniques.
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    5 分
  • Prompt Engineering Mastery
    2026/05/04

    What You’ll Learn

    1. The core principles of prompt engineering and why it matters.
    2. How to design, test, and optimize prompts for reliability and accuracy.
    3. When to use prompt engineering vs. fine-tuning.
    4. Real-world examples of prompt-driven systems in production.
    5. Security and scalability considerations for enterprise-grade AI applications.
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    5 分
  • Building Robust Data Pipelines
    2026/05/04

    What You'll Learn

    • The core concepts and components of a modern data pipeline.
    • How to design, build, and deploy a robust pipeline using Python.
    • When to use batch vs streaming approaches.
    • How to handle data quality, monitoring, and error recovery.
    • Common pitfalls and how to avoid them.
    • Real-world lessons from large-scale data systems.
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    5 分
  • Integrating Cryptocurrency Platforms
    2026/04/01

    What You'll Learn

    • The architecture of cryptocurrency platform integrations.
    • How to choose between different integration models.
    • How to use APIs from major crypto platforms (e.g., Coinbase, Binance, Kraken).
    • Security, scalability, and monitoring best practices.
    • How to build, test, and deploy crypto-enabled functionality safely.
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    5 分
  • Mastering Event Streaming Architecture
    2026/04/01

    What You’ll Learn

    • The core principles and architecture of event streaming systems.
    • How event streaming differs from traditional message queues.
    • When to use (and when not to use) event streaming.
    • How to design, build, and scale a streaming data pipeline.
    • Common pitfalls, performance tuning, and security considerations.
    • Real-world examples from major tech companies.
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    5 分