Episoder
-
Dedicated to the memory of Nick Russo. Your star was bright my friend and I wish we had more time together.A conversation with Ryan Booth, Engineering Manager at Juniper on AI development practices and related development tools.
Episode Description
Ryan Booth discusses his recent experiment building a complete application using AI assistance without writing code directly. He shares insights on managing AI development workflows, context management, testing practices, and practical tips for network engineers working with AI tools.
Building applications using Claude 3.5 Sonnet through Cline (VS Code extension)Managing AI context and token limits in developmentTesting and validation strategiesFrontend vs backend development experiences with AITroubleshooting techniques when working with AI
Key Topics Discussed
Claude 3.5 SonnetCline (VS Code extension)OpenRouterOllamaDeepSeek CoderLangChainLlamaIndexAnsibleRedis
Tools & Technologies Mentioned
Break down development into focused tasks rather than trying to handle everything at onceMaintain proper documentation and context files in directoriesValidate and test at each step rather than waiting until the endUse Git for granular version control of AI-generated code
Key Points
"I learned very early on when getting into the coding stuff that you can't overload it with information. You really have to kind of start just like you would a normal project. You have to build from the foundation up.""It's network automation is managing software at the end of the day. You're writing code that you have to rely on, that you have to test, that you have to validate."
Notable QuotesResources
Cline VS Code Extension: https://github.com/cline/cline
Claude AI: https://claude.ai
Claude AI Computer Use: https://www.anthropic.com/news/3-5-models-and-computer-use
OpenRouter: https://openrouter.ai
Episode Credits
Host: Kirk Byers
Guest: Ryan Booth
Recorded December 3, 2024 -
Summary
In this podcast, Kirk Byers and John Capobianco discuss the impact of AI on network automation and engineering. They explore the significance of ChatGPT, the challenges of inference, and the concept of Retrieval-Augmented Generation (RAG). John shares insights on using LangChain for building AI applications, and the role of AI agents. The conversation emphasizes the importance of adapting to AI technologies and the potential for enhancing productivity in network engineering.
Takeaways
ChatGPT marked a significant turning point in AI awareness.Retrieval-Augmented Generation (RAG) enhances AI capabilities.LangChain simplifies the integration of AI with network tools.AI agents can automate complex tasks in network management.Fine-tuning models can improve AI performance in specific domains.AI can significantly reduce the time needed for project development.Chapters
00:00 - Introduction to AI and Network Automation
01:42 - The Impact of ChatGPT
05:50 - Understanding Hallucinations and Inference
09:53 - Retrieval-Augmented Generation (RAG) Explained
14:42 - Building with LangChain
18:37 - Exploring Models and Local LLMs
22:55 - Exploring Fine-Tuning and RAG Techniques
25:34 - Integrating AI with Network Data
29:34 - The Rise of AI Agents
34:28 - Modernizing Code
39:53 - Future Directions for Network Engineers
Reference Materials
Selector https://www.selector.ai/
John Capobianco YouTube Video on "Multi Agent AI for Network Automation" https://www.youtube.com/watch?v=8GwSIRGae10
LangChain https://www.langchain.com/
LlamaIndex https://www.llamaindex.ai/
Streamlit https://streamlit.io/ -
Manglende episoder?