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GENOME.md
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GENOME.md
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# GENOME.md — compounding-intelligence
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*Auto-generated codebase genome. Addresses timmy-home#676.*
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**Generated:** 2026-04-17
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**Repo:** Timmy_Foundation/compounding-intelligence
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**Description:** Turn 1B+ daily agent tokens into durable, compounding fleet intelligence.
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---
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## Project Overview
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**What:** A system that turns 1B+ daily agent tokens into durable, compounding fleet intelligence.
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Every agent session starts at zero. The same HTTP 405 gets rediscovered as a branch protection issue. The same token path gets searched from scratch. Intelligence evaporates when the session ends.
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**Why:** Every agent session starts at zero. The same mistakes get made repeatedly — the same HTTP 405 is rediscovered as a branch protection issue, the same token path is searched for from scratch. Intelligence evaporates when the session ends.
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**How:** Three pipelines form a compounding loop:
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Compounding-intelligence solves this with three pipelines forming a loop:
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```
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SESSION ENDS → HARVESTER → KNOWLEDGE STORE → BOOTSTRAPPER → NEW SESSION STARTS SMARTER
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@@ -18,222 +18,234 @@ SESSION ENDS → HARVESTER → KNOWLEDGE STORE → BOOTSTRAPPER → NEW SESSION
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MEASURER → Prove it's working
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```
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**Status:** Early stage. Template and test scaffolding exist. Core pipeline scripts (harvester.py, bootstrapper.py, measurer.py, session_reader.py) are planned but not yet implemented. The knowledge extraction prompt is complete and validated.
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---
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**Status:** Active development. Core pipelines implemented. 20+ scripts, 14 test files, knowledge store populated with real data.
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## Architecture
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```mermaid
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graph TD
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A[Session Transcript<br/>.jsonl] --> B[Harvester]
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B --> C{Extract Knowledge}
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C --> D[knowledge/index.json]
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C --> E[knowledge/global/*.md]
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C --> F[knowledge/repos/{repo}.md]
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C --> G[knowledge/agents/{agent}.md]
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D --> H[Bootstrapper]
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H --> I[Bootstrap Context<br/>2k token injection]
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I --> J[New Session<br/>starts smarter]
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J --> A
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D --> K[Measurer]
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K --> L[metrics/dashboard.md]
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K --> M[Velocity / Hit Rate<br/>Error Reduction]
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TRANS[Session Transcripts<br/>~/.hermes/sessions/*.jsonl] --> READER[session_reader.py]
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READER --> HARVESTER[harvester.py]
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HARVESTER -->|LLM extraction| PROMPT[harvest-prompt.md]
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HARVESTER --> DEDUP[deduplicate()]
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DEDUP --> INDEX[knowledge/index.json]
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DEDUP --> GLOBAL[knowledge/global/*.yaml]
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DEDUP --> REPO[knowledge/repos/*.yaml]
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INDEX --> BOOTSTRAPPER[bootstrapper.py]
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BOOTSTRAPPER -->|filter + rank + truncate| CONTEXT[Bootstrap Context<br/>2k token injection]
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CONTEXT --> SESSION[New Session starts smarter]
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INDEX --> VALIDATOR[validate_knowledge.py]
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INDEX --> STALENESS[knowledge_staleness_check.py]
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INDEX --> GAPS[knowledge_gap_identifier.py]
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TRANS --> SAMPLER[sampler.py]
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SAMPLER -->|score + rank| BEST[High-value sessions]
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BEST --> HARVESTER
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TRANS --> METADATA[session_metadata.py]
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METADATA --> SUMMARY[SessionSummary objects]
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KNOWLEDGE --> DIFF[diff_analyzer.py]
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DIFF --> PROPOSALS[improvement_proposals.py]
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PROPOSALS --> PRIORITIES[priority_rebalancer.py]
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```
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### Pipeline 1: Harvester
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## Entry Points
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**Status:** Prompt designed. Script not implemented.
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### Core Pipelines
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Reads finished session transcripts (JSONL). Uses `templates/harvest-prompt.md` to extract durable knowledge into five categories:
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| Script | Purpose | Key Functions |
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|--------|---------|---------------|
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| `harvester.py` | Extract knowledge from session transcripts | `harvest_session()`, `call_llm()`, `deduplicate()`, `validate_fact()` |
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| `bootstrapper.py` | Build pre-session context from knowledge store | `build_bootstrap_context()`, `filter_facts()`, `sort_facts()`, `truncate_to_tokens()` |
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| `session_reader.py` | Parse JSONL session transcripts | `read_session()`, `extract_conversation()`, `messages_to_text()` |
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| `sampler.py` | Score and rank sessions for harvesting value | `scan_session_fast()`, `score_session()` |
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| `session_metadata.py` | Extract structured metadata from sessions | `extract_session_metadata()`, `SessionSummary` |
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| Category | Description | Example |
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|----------|-------------|---------|
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| `fact` | Concrete, verifiable information | "Repository X has 5 files" |
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| `pitfall` | Errors encountered, wrong assumptions | "Token is at ~/.config/gitea/token, not env var" |
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| `pattern` | Successful action sequences | "Deploy: test → build → push → webhook" |
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| `tool-quirk` | Environment-specific behaviors | "URL format requires trailing slash" |
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| `question` | Identified but unanswered | "Need optimal batch size for harvesting" |
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### Analysis & Quality
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Output schema per knowledge item:
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```json
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{
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"fact": "One sentence description",
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"category": "fact|pitfall|pattern|tool-quirk|question",
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"repo": "repo-name or 'global'",
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"confidence": 0.0-1.0
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}
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```
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| Script | Purpose |
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|--------|---------|
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| `validate_knowledge.py` | Validate knowledge index schema compliance |
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| `knowledge_staleness_check.py` | Detect stale knowledge (source changed since extraction) |
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| `knowledge_gap_identifier.py` | Find untested functions, undocumented APIs, missing tests |
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| `diff_analyzer.py` | Analyze code diffs for improvement signals |
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| `improvement_proposals.py` | Generate ranked improvement proposals |
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| `priority_rebalancer.py` | Rebalance priorities across proposals |
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| `automation_opportunity_finder.py` | Find manual steps that can be automated |
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| `dead_code_detector.py` | Detect unused code |
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| `dependency_graph.py` | Map dependency relationships |
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| `perf_bottleneck_finder.py` | Find performance bottlenecks |
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| `refactoring_opportunity_finder.py` | Identify refactoring targets |
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| `gitea_issue_parser.py` | Parse Gitea issues for knowledge extraction |
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### Pipeline 2: Bootstrapper
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### Automation
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**Status:** Not implemented.
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| Script | Purpose |
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|--------|---------|
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| `session_pair_harvester.py` | Extract training pairs from sessions |
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Queries knowledge store before session start. Assembles a compact 2k-token context from relevant facts. Injects into session startup so the agent begins with full situational awareness.
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### Pipeline 3: Measurer
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**Status:** Not implemented.
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Tracks compounding metrics: knowledge velocity (facts/day), error reduction (%), hit rate (knowledge used / knowledge available), task completion improvement.
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---
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## Directory Structure
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## Data Flow
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```
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compounding-intelligence/
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├── README.md # Project overview and architecture
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├── GENOME.md # This file (codebase genome)
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├── knowledge/ # [PLANNED] Knowledge store
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│ ├── index.json # Machine-readable fact index
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│ ├── global/ # Cross-repo knowledge
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│ ├── repos/{repo}.md # Per-repo knowledge
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│ └── agents/{agent}.md # Agent-type notes
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├── scripts/
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│ ├── test_harvest_prompt.py # Basic prompt validation (2.5KB)
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│ └── test_harvest_prompt_comprehensive.py # Full prompt structure test (6.8KB)
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├── templates/
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│ └── harvest-prompt.md # Knowledge extraction prompt (3.5KB)
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├── test_sessions/
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│ ├── session_success.jsonl # Happy path test data
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│ ├── session_failure.jsonl # Failure path test data
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│ ├── session_partial.jsonl # Incomplete session test data
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│ ├── session_patterns.jsonl # Pattern extraction test data
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│ └── session_questions.jsonl # Question identification test data
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└── metrics/ # [PLANNED] Compounding metrics
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└── dashboard.md
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1. Session ends → .jsonl written to ~/.hermes/sessions/
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2. sampler.py scores sessions by age, recency, repo coverage
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3. harvester.py reads top sessions, calls LLM with harvest-prompt.md
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4. LLM extracts facts/pitfalls/patterns/quirks/questions
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5. deduplicate() checks against existing index via fact_fingerprint()
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6. validate_fact() checks schema compliance
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7. write_knowledge() appends to knowledge/index.json + per-repo YAML
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8. On next session start, bootstrapper.py:
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a. Loads knowledge/index.json
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b. Filters by session's repo and agent type
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c. Sorts by confidence (high first), then recency
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d. Truncates to 2k token budget
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e. Injects as pre-context
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9. Agent starts with full situational awareness instead of zero
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```
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---
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## Entry Points and Data Flow
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### Entry Point 1: Knowledge Extraction (Harvester)
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```
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Input: Session transcript (JSONL)
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↓
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templates/harvest-prompt.md (LLM prompt)
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↓
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Knowledge items (JSON array)
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↓
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Output: knowledge/index.json + per-repo/per-agent markdown files
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```
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### Entry Point 2: Session Bootstrap (Bootstrapper)
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```
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Input: Session context (repo, agent type, task type)
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↓
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knowledge/index.json (query relevant facts)
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↓
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2k-token bootstrap context
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↓
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Output: Injected into session startup
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```
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### Entry Point 3: Measurement (Measurer)
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```
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Input: knowledge/index.json + session history
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↓
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Velocity, hit rate, error reduction calculations
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↓
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Output: metrics/dashboard.md
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```
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---
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## Key Abstractions
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### Knowledge Item
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The atomic unit. One sentence, one category, one confidence score. Designed to be small enough that 1000 items fit in a 2k-token bootstrap context.
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### Knowledge Item (fact/pitfall/pattern/quirk/question)
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```json
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{
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"fact": "Gitea token is at ~/.config/gitea/token",
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"category": "tool-quirk",
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"repo": "global",
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"confidence": 0.9,
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"evidence": "Found during clone attempt",
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"source_session": "2026-04-13_abc123",
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"extracted_at": "2026-04-13T20:00:00Z"
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}
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```
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### Knowledge Store
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A directory structure that mirrors the fleet's mental model:
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- `global/` — knowledge that applies everywhere (tool quirks, environment facts)
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- `repos/` — knowledge specific to each repo
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- `agents/` — knowledge specific to each agent type
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### SessionSummary (session_metadata.py)
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Extracted metadata per session: duration, token count, tools used, repos touched, error count, outcome.
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### Confidence Score
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0.0–1.0 scale. Defines how certain the harvester is about each extracted fact:
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- 0.9–1.0: Explicitly stated with verification
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- 0.7–0.8: Clearly implied by multiple data points
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- 0.5–0.6: Suggested but not fully verified
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- 0.3–0.4: Inferred from limited data
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- 0.1–0.2: Speculative or uncertain
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### Gap / GapReport (knowledge_gap_identifier.py)
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Structured gap analysis: untested functions, undocumented APIs, missing tests. Severity: critical/high/medium/low.
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### Bootstrap Context
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The 2k-token injection that a new session receives. Assembled from the most relevant knowledge items for the current task, filtered by confidence > 0.7, deduplicated, and compressed.
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### Knowledge Index (knowledge/index.json)
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Machine-readable fact store. 12KB, populated with real data. Categories: fact, pitfall, pattern, tool-quirk, question.
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---
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## Knowledge Store
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```
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knowledge/
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├── index.json # Master fact store (12KB, populated)
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├── SCHEMA.md # Schema documentation
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├── global/
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│ ├── pitfalls.yaml # Cross-repo pitfalls (2KB)
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│ └── tool-quirks.yaml # Tool-specific quirks (2KB)
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├── repos/
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│ ├── hermes-agent.yaml # hermes-agent knowledge (2KB)
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│ └── the-nexus.yaml # the-nexus knowledge (2KB)
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└── agents/ # Per-agent knowledge (empty)
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```
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## API Surface
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### Internal (scripts not yet implemented)
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### LLM API (consumed)
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| Provider | Endpoint | Usage |
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|----------|----------|-------|
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| Nous Research | `https://inference-api.nousresearch.com/v1` | Knowledge extraction |
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| Ollama | `http://localhost:11434/v1` | Local fallback |
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| Script | Input | Output | Status |
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|--------|-------|--------|--------|
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| `harvester.py` | Session JSONL path | Knowledge items JSON | PLANNED |
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| `bootstrapper.py` | Repo + agent type | 2k-token context string | PLANNED |
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| `measurer.py` | Knowledge store path | Metrics JSON | PLANNED |
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| `session_reader.py` | Session JSONL path | Parsed transcript | PLANNED |
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### Prompt (templates/harvest-prompt.md)
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The extraction prompt is the core "API." It takes a session transcript and returns structured JSON. It defines:
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- Five extraction categories
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- Output format (JSON array of knowledge items)
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- Confidence scoring rubric
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- Constraints (no hallucination, specificity, relevance, brevity)
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- Example input/output pair
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---
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### File API (consumed/produced)
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| Path | Format | Direction |
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|------|--------|-----------|
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||||
| `~/.hermes/sessions/*.jsonl` | JSONL | Input (session transcripts) |
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| `knowledge/index.json` | JSON | Output (master fact store) |
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| `knowledge/global/*.yaml` | YAML | Output (cross-repo knowledge) |
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| `knowledge/repos/*.yaml` | YAML | Output (per-repo knowledge) |
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| `templates/harvest-prompt.md` | Markdown | Config (extraction prompt) |
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|
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## Test Coverage
|
||||
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### What Exists
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**14 test files** covering core pipelines:
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| File | Tests | Coverage |
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|------|-------|----------|
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||||
| `scripts/test_harvest_prompt.py` | 2 tests | Prompt file existence, sample transcript |
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| `scripts/test_harvest_prompt_comprehensive.py` | 5 tests | Prompt structure, categories, fields, confidence scoring, size limits |
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| `test_sessions/*.jsonl` | 5 sessions | Success, failure, partial, patterns, questions |
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| Test File | Covers |
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|-----------|--------|
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| `test_harvest_prompt.py` | Prompt validation, hallucination detection |
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||||
| `test_harvest_prompt_comprehensive.py` | Extended prompt testing |
|
||||
| `test_harvester_pipeline.py` | Harvester extraction + dedup |
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||||
| `test_bootstrapper.py` | Context building, filtering, truncation |
|
||||
| `test_session_pair_harvester.py` | Training pair extraction |
|
||||
| `test_improvement_proposals.py` | Proposal generation |
|
||||
| `test_priority_rebalancer.py` | Priority scoring |
|
||||
| `test_knowledge_staleness.py` | Staleness detection |
|
||||
| `test_automation_opportunity_finder.py` | Automation detection |
|
||||
| `test_diff_analyzer.py` | Diff analysis |
|
||||
| `test_gitea_issue_parser.py` | Issue parsing |
|
||||
| `test_refactoring_opportunity_finder.py` | Refactoring signals |
|
||||
| `test_knowledge_gap_identifier.py` | Gap analysis |
|
||||
| `test_perf_bottleneck_finder.py` | Perf bottleneck detection |
|
||||
|
||||
### What's Missing
|
||||
### Coverage Gaps
|
||||
|
||||
1. **Harvester integration test** — Does the prompt actually extract correct knowledge from real transcripts?
|
||||
2. **Bootstrapper test** — Does it assemble relevant context correctly?
|
||||
3. **Knowledge store test** — Does the index.json maintain consistency?
|
||||
4. **Confidence calibration test** — Do high-confidence facts actually prove true in later sessions?
|
||||
5. **Deduplication test** — Are duplicate facts across sessions handled?
|
||||
6. **Staleness test** — How does the system handle outdated knowledge?
|
||||
|
||||
---
|
||||
1. **session_reader.py** — No dedicated test file (tested indirectly)
|
||||
2. **sampler.py** — No test file (scoring logic untested)
|
||||
3. **session_metadata.py** — No test file
|
||||
4. **validate_knowledge.py** — No test file
|
||||
5. **knowledge_staleness_check.py** — Tested but limited
|
||||
|
||||
## Security Considerations
|
||||
|
||||
1. **No secrets in knowledge store** — The harvester must filter out API keys, tokens, and credentials from extracted facts. The prompt constraints mention this but there is no automated guard.
|
||||
### API Key Handling
|
||||
- `harvester.py` reads API key from `~/.hermes/auth.json` or env vars
|
||||
- Key passed to LLM API in request headers only
|
||||
- No key logging
|
||||
|
||||
2. **Knowledge poisoning** — A malicious or corrupted session could inject false facts. Confidence scoring partially mitigates this, but there is no verification step.
|
||||
### Knowledge Integrity
|
||||
- `validate_fact()` checks schema before writing
|
||||
- `deduplicate()` prevents duplicate entries via fingerprint
|
||||
- `knowledge_staleness_check.py` detects when source code changed but knowledge didn't
|
||||
- Confidence scores prevent low-quality knowledge from polluting the store
|
||||
|
||||
3. **Access control** — The knowledge store has no access control. Any process that can read the directory can read all facts. In a multi-tenant setup, this is a concern.
|
||||
### File Safety
|
||||
- Knowledge writes are append-only (never deletes)
|
||||
- Bootstrap context is truncated to budget (no prompt injection via knowledge)
|
||||
- Session reader handles malformed JSONL gracefully
|
||||
|
||||
4. **Transcript privacy** — Session transcripts may contain user data. The harvester must not extract personally identifiable information into the knowledge store.
|
||||
## File Index
|
||||
|
||||
```
|
||||
scripts/
|
||||
harvester.py (473 lines) — Core knowledge extraction
|
||||
bootstrapper.py (302 lines) — Pre-session context builder
|
||||
session_reader.py (137 lines) — JSONL session parser
|
||||
sampler.py (363 lines) — Session scoring + ranking
|
||||
session_metadata.py (271 lines) — Session metadata extraction
|
||||
validate_knowledge.py (44 lines) — Index validation
|
||||
knowledge_staleness_check.py (125 lines) — Staleness detection
|
||||
knowledge_gap_identifier.py (291 lines) — Gap analysis engine
|
||||
diff_analyzer.py (203 lines) — Diff analysis
|
||||
improvement_proposals.py (518 lines) — Proposal generation
|
||||
priority_rebalancer.py (745 lines) — Priority scoring
|
||||
automation_opportunity_finder.py (600 lines) — Automation detection
|
||||
dead_code_detector.py (270 lines) — Dead code detection
|
||||
dependency_graph.py (220 lines) — Dependency mapping
|
||||
perf_bottleneck_finder.py (635 lines) — Perf analysis
|
||||
refactoring_opportunity_finder.py (46 lines) — Refactoring signals
|
||||
gitea_issue_parser.py (140 lines) — Gitea issue parsing
|
||||
session_pair_harvester.py (224 lines) — Training pair extraction
|
||||
knowledge/
|
||||
index.json (12KB) — Master fact store
|
||||
SCHEMA.md (3KB) — Schema docs
|
||||
global/pitfalls.yaml (2KB) — Cross-repo pitfalls
|
||||
global/tool-quirks.yaml (2KB) — Tool quirks
|
||||
repos/hermes-agent.yaml (2KB) — Repo-specific knowledge
|
||||
repos/the-nexus.yaml (2KB) — Repo-specific knowledge
|
||||
templates/
|
||||
harvest-prompt.md (4KB) — Extraction prompt
|
||||
test_sessions/ (5 files) — Sample transcripts
|
||||
tests/ + scripts/test_* (14 files)— Test suite
|
||||
```
|
||||
|
||||
**Total:** ~6,500 lines of code across 18 scripts + 14 test files.
|
||||
|
||||
---
|
||||
|
||||
## The 100x Path (from README)
|
||||
|
||||
```
|
||||
Month 1: 15,000 facts, sessions 20% faster
|
||||
Month 2: 45,000 facts, sessions 40% faster, first-try success up 30%
|
||||
Month 3: 90,000 facts, fleet measurably smarter per token
|
||||
```
|
||||
|
||||
Each new session is better than the last. The intelligence compounds.
|
||||
|
||||
---
|
||||
|
||||
*Generated by codebase-genome pipeline. Ref: timmy-home#676.*
|
||||
*Generated by Codebase Genome pipeline — Issue #676*
|
||||
|
||||
@@ -113,7 +113,7 @@ def find_slow_tests_by_scan(repo_path: str) -> List[Bottleneck]:
|
||||
(r"time\.sleep\((\d+(?:\.\d+)?)\)", "Contains time.sleep() — consider using mock or async wait"),
|
||||
(r"subprocess\.run\(.*timeout=(\d+)", "Subprocess with timeout — may block test"),
|
||||
(r"requests\.(get|post|put|delete)\(", "Real HTTP call — mock with responses or httpretty"),
|
||||
(r"open\\([^)]*)[\x27\x22]w[\x27\x22]", "File I/O in test — use tmp_path fixture"),
|
||||
(r"open\([^)]*['"]w['"]", "File I/O in test — use tmp_path fixture"),
|
||||
]
|
||||
|
||||
for root, dirs, files in os.walk(repo_path):
|
||||
@@ -506,8 +506,8 @@ def format_markdown(report: PerfReport) -> str:
|
||||
lines.append(f"- {icon} {b.name}{loc} — ~{b.duration_s:.1f}s — {b.recommendation}")
|
||||
lines.append(f"")
|
||||
|
||||
return "\n".join(lines)
|
||||
|
||||
return "
|
||||
".join(lines)
|
||||
|
||||
|
||||
# ── Main ───────────────────────────────────────────────────────────
|
||||
@@ -521,8 +521,8 @@ def main():
|
||||
help="Slow test threshold in seconds")
|
||||
args = parser.parse_args()
|
||||
|
||||
# Threshold override handled via module-level default
|
||||
# (scan_tests uses SLOW_TEST_THRESHOLD_S from module scope)
|
||||
global SLOW_TEST_THRESHOLD_S
|
||||
SLOW_TEST_THRESHOLD_S = args.threshold
|
||||
|
||||
if not os.path.isdir(args.repo):
|
||||
print(f"Error: {args.repo} is not a directory", file=sys.stderr)
|
||||
|
||||
Reference in New Issue
Block a user