Document agentic onboarding to prompt management#2357
Document agentic onboarding to prompt management#2357marcklingen wants to merge 1 commit intomainfrom
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Co-authored-by: marc <marc@langfuse.com>
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📦 Next.js Bundle Analysis for langfuse-docsThis analysis was generated by the Next.js Bundle Analysis action. 🤖 One Page Changed SizeThe following page changed size from the code in this PR compared to its base branch:
DetailsOnly the gzipped size is provided here based on an expert tip. First Load is the size of the global bundle plus the bundle for the individual page. If a user were to show up to your website and land on a given page, the first load size represents the amount of javascript that user would need to download. If Any third party scripts you have added directly to your app using the The "Budget %" column shows what percentage of your performance budget the First Load total takes up. For example, if your budget was 100kb, and a given page's first load size was 10kb, it would be 10% of your budget. You can also see how much this has increased or decreased compared to the base branch of your PR. If this percentage has increased by 20% or more, there will be a red status indicator applied, indicating that special attention should be given to this. If you see "+/- <0.01%" it means that there was a change in bundle size, but it is a trivial enough amount that it can be ignored. |
Adds agentic onboarding documentation and a prompt to guide AI assistants in migrating hardcoded prompts to Langfuse Prompt Management.
This feature provides a step-by-step guide and a detailed agent prompt, enabling AI coding assistants (like Cursor or Claude Code) to automate the discovery of hardcoded prompts, their creation in Langfuse via the MCP server, and the subsequent update of the codebase to fetch these prompts at runtime. This streamlines the adoption of Langfuse Prompt Management for improved iteration, versioning, and collaboration.
Linear Issue: LFE-7942