Visual UI for sessions for #claudecode and #codex #agents #programming

nimbalyst · Intermediate ·🧠 Large Language Models ·4mo ago

Key Takeaways

The video demonstrates a visual UI for sessions using #claudecode and #codex #agents, showcasing feature gap analysis and interactive visual conversations.

Full Transcript

You can see it shows some nice graphs for you and sort of feature gap analysis. So really nice to have a visual conversation because it can show you more things. You can interact with that. And so then I might um now let me explain the right side of the screen to you. We'll get into this later when we implement and the like. It's showing you the task as it goes along. But over here I really like this. It's the files that have been edited and worked on by the um by this session or we'll get into work streams if you have multiple sessions together tied in a workstream. All of the ones by that workstream. And so um now you can just click on it and see what it said.
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The video teaches how to create a visual UI for sessions using #claudecode and #codex #agents, allowing for interactive feature gap analysis and visual conversations. This is useful for programmers and developers working with LLMs. By watching this video, viewers can learn how to build and implement visual UI for LLM sessions.

Key Takeaways
  1. Launch the visual UI for sessions
  2. Analyze feature gaps using interactive visual conversations
  3. Click on edited files to view session details
  4. Implement work streams for multiple sessions
  5. Interact with the visual UI to explore session data
💡 Using a visual UI for sessions can enhance interactive feature gap analysis and visual conversations, making it easier to work with LLMs and agents.

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