
ForgeBot Agent: RAG Pipeline Implementation Plan
Failed to add items
Add to Cart failed.
Add to Wish List failed.
Remove from wishlist failed.
Adding to library failed
Follow podcast failed
Unfollow podcast failed
-
Narrated by:
-
By:
About this listen
In this episode, we explore a practical overhaul of ForgeBot’s solution generation pipeline, guided by a detailed document on integrating advanced AI tools. We break down a workflow split into modular stages—solution creation, evaluation, and iterative refinement—using Jira API calls to fetch task data and retrieval-augmented generation to ground solutions in solid context. We dive into how LLM-as-judge evaluations score solution quality, with self-improvement loops refining outputs over time. We also cover multi-model orchestration, assigning tasks to models based on their strengths—like one for fast text generation, another for heavy reasoning—to keep costs and compute in check. It’s a no-nonsense look at building a maintainable system that autonomously tackles Jira tickets using prompt engineering, structured outputs, and modular services, cutting down on human hand-holding.