2.0 KiB
2.0 KiB
Implementation Plan: Component IV - Peripheral Vision Extraction
Objective
Implement a sophisticated "Foveal-Peripheral" context model. This ensures the agent has high-resolution focus on the current task (Foveal) while maintaining a low-resolution "skeletal" awareness of the broader Memex structure (Peripheral), optimized for token efficiency and reasoning accuracy.
Key Files & Context
- Target:
projects/org-agent/literate/context.org(Source ofsrc/context.lisp) - Core Concept: Deep pruning of the Org AST based on semantic distance and structural hierarchy.
Implementation Steps
1. Identify Foveal Focus
- Extend the
SIGNALstructure processing to identify atarget-id(the current headline being operated on).
2. Implement Tree Pruning (context-extract-peripheral-vision)
- Create a recursive function that walks the Object Store starting from the root (or active projects).
- Rule A (Foveal): If the node matches
target-id, include it and its immediate children in Full Resolution (Content + Attributes). - Rule B (Peripheral): For ancestors and siblings of the target, include only Title and ID.
- Rule C (Background): For unrelated nodes, omit entirely or include only at Level 1.
3. AST to Org Renderer (context-render-to-org)
- Implement a serializer that transforms our
org-objectstructures back into valid Org-mode strings. - This allows the LLM to "see" the Memex in its native habitat.
4. Integrate with context-assemble-global-awareness
- Update this function to use the new extraction and rendering logic.
- Ensure it respects a maximum token/character budget to prevent context overflow.
Phase E: Chaos (Verification)
- Structural Test: Verify that ancestors are rendered as "skeletons" (no body text).
- Foveal Test: Verify that the target node is rendered with its full body text.
- Budget Test: Verify that the output string stays within defined limits even for large Memex structures.