Catalog
affaan-m/knowledge-ops

affaan-m

knowledge-ops

Knowledge base management, ingestion, sync, and retrieval across multiple storage layers (local files, MCP memory, vector stores, Git repos). Use when the user wants to save, organize, sync, deduplicate, or search across their knowledge systems.

global
New~1.7k
v1.1Saved May 11, 2026

Knowledge Operations

Manage a multi-layered knowledge system for ingesting, organizing, syncing, and retrieving knowledge across multiple stores.

Prefer the live workspace model:

  • code work lives in the real cloned repos
  • active execution context lives in GitHub, Linear, and repo-local working-context files
  • broader human-facing notes can live in a non-repo context/archive folder
  • durable cross-machine memory belongs in the knowledge base, not in a shadow repo workspace

When to Activate

  • User wants to save information to their knowledge base
  • Ingesting documents, conversations, or data into structured storage
  • Syncing knowledge across systems (local files, MCP memory, Supabase, Git repos)
  • Deduplicating or organizing existing knowledge
  • User says "save this to KB", "sync knowledge", "what do I know about X", "ingest this", "update the knowledge base"
  • Any knowledge management task beyond simple memory recall

Knowledge Architecture

Layer 1: Active execution truth

  • Sources: GitHub issues, PRs, discussions, release notes, Linear issues/projects/docs
  • Use for: the current operational state of the work
  • Rule: if something affects an active engineering plan, roadmap, rollout, or release, prefer putting it here first

Layer 2: Claude Code Memory (Quick Access)

  • Path: ~/.claude/projects/*/memory/
  • Format: Markdown files with frontmatter
  • Types: user preferences, feedback, project context, reference
  • Use for: quick-access context that persists across conversations
  • Automatically loaded at session start

Layer 3: MCP Memory Server (Structured Knowledge Graph)

  • Access: MCP memory tools (create_entities, create_relations, add_observations, search_nodes)
  • Use for: Semantic search across all stored memories, relationship mapping
  • Cross-session persistence with queryable graph structure

Layer 4: Knowledge base repo / durable document store

  • Use for: curated durable notes, session exports, synthesized research, operator memory, long-form docs
  • Rule: this is the preferred durable store for cross-machine context when the content is not repo-owned code

Layer 5: External Data Store (Supabase, PostgreSQL, etc.)

  • Use for: Structured data, large document storage, full-text search
  • Good for: Documents too large for memory files, data needing SQL queries

Layer 6: Local context/archive folder

  • Use for: human-facing notes, archived gameplans, local media organization, temporary non-code docs
  • Rule: writable for information storage, but not a shadow code workspace
  • Do not use for: active code changes or repo truth that should live upstream

Ingestion Workflow

When new knowledge needs to be captured:

1. Classify

What type of knowledge is it?

  • Business decision -> memory file (project type) + MCP memory
  • Active roadmap / release / implementation state -> GitHub + Linear first
  • Personal preference -> memory file (user/feedback type)
  • Reference info -> memory file (reference type) + MCP memory
  • Large document -> external data store + summary in memory
  • Conversation/session -> knowledge base repo + short summary in memory

2. Deduplicate

Check if this knowledge already exists:

  • Search memory files for existing entries
  • Query MCP memory with relevant terms
  • Check whether the information already exists in GitHub or Linear before creating another local note
  • Do not create duplicates. Update existing entries instead.

3. Store

Write to appropriate layer(s):

  • Always update Claude Code memory for quick access
  • Use MCP memory for semantic searchability and relationship mapping
  • Update GitHub / Linear first when the information changes live project truth
  • Commit to the knowledge base repo for durable long-form additions

4. Index

Update any relevant indexes or summary files.

Sync Operations

Conversation Sync

Periodically sync conversation history into the knowledge base:

  • Sources: Claude session files, Codex sessions, other agent sessions
  • Destination: knowledge base repo
  • Generate a session index for quick browsing
  • Commit and push

Workspace State Sync

Mirror important workspace configuration and scripts to the knowledge base:

  • Generate directory maps
  • Redact sensitive config before committing
  • Track changes over time
  • Do not treat the knowledge base or archive folder as the live code workspace

GitHub / Linear Sync

When the information affects active execution:

  • update the relevant GitHub issue, PR, discussion, release notes, or roadmap thread
  • attach supporting docs to Linear when the work needs durable planning context
  • only mirror a local note afterwards if it still adds value

Cross-Source Knowledge Sync

Pull knowledge from multiple sources into one place:

  • Claude/ChatGPT/Grok conversation exports
  • Browser bookmarks
  • GitHub activity events
  • Write status summary, commit and push

Memory Patterns

# Short-term: current session context
Use TodoWrite for in-session task tracking

# Medium-term: project memory files
Write to ~/.claude/projects/*/memory/ for cross-session recall

# Long-term: GitHub / Linear / KB
Put active execution truth in GitHub + Linear
Put durable synthesized context in the knowledge base repo

# Semantic layer: MCP knowledge graph
Use mcp__memory__create_entities for permanent structured data
Use mcp__memory__create_relations for relationship mapping
Use mcp__memory__add_observations for new facts about known entities
Use mcp__memory__search_nodes to find existing knowledge

Best Practices

  • Keep memory files concise. Archive old data rather than letting files grow unbounded.
  • Use frontmatter (YAML) for metadata on all knowledge files.
  • Deduplicate before storing. Search first, then create or update.
  • Prefer one canonical home per fact set. Avoid parallel copies of the same plan across local notes, repo files, and tracker docs.
  • Redact sensitive information (API keys, passwords) before committing to Git.
  • Use consistent naming conventions for knowledge files (lowercase-kebab-case).
  • Tag entries with topics/categories for easier retrieval.

Quality Gate

Before completing any knowledge operation:

  • no duplicate entries created
  • sensitive data redacted from any Git-tracked files
  • indexes and summaries updated
  • appropriate storage layer chosen for the data type
  • cross-references added where relevant
Files1
1 files · 1.0 KB

Select a file to preview

Overall Score

78/100

Grade

B

Good

Safety

82

Quality

75

Clarity

80

Completeness

72

Summary

A comprehensive knowledge management skill that guides agents to ingest, organize, and sync information across six distinct storage layers (GitHub/Linear, Claude Code memory, MCP memory graph, knowledge base repos, external databases, and local archives). The skill provides a structured ingestion workflow with deduplication, sync operations, and memory patterns to help developers maintain a unified, queryable knowledge system across multiple platforms.

Detected Capabilities

file read (memory files, GitHub, Linear, Supabase)file write (Claude Code memory, knowledge base repos, local archives)Git operations (commit, push)MCP memory access (create_entities, create_relations, add_observations, search_nodes)External API calls (Supabase, PostgreSQL, GitHub API, Linear API)

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

save to knowledge basesync knowledge across systemsingest documentsdeduplicate informationsearch knowledge grapharchive session notesorganize project memory

Risk Signals

INFO

Writes to ~/.claude/projects/*/memory/ and knowledge base repos — this is project-scoped, well-documented file write

Knowledge Architecture, Layer 2 & 4
INFO

Redaction of sensitive data required before Git commit — explicit guardrail for credentials

Best Practices section
WARNING

No secrets examples or credential handling guidance provided — relies on developer to know what 'sensitive data' means

Quality Gate section
INFO

MCP memory operations (create_entities, search_nodes) assume MCP server availability — no fallback if service unavailable

Layer 3: MCP Memory Server
WARNING

GitHub/Linear API access not explicitly gated with scope documentation — assumes agent has appropriate auth

Layer 1: Active execution truth

Use Cases

  • Save conversations or session data to a durable knowledge base for future reference
  • Ingest and deduplicate information from multiple sources (GitHub, Linear, emails, documents) into structured storage
  • Sync workspace configuration, project decisions, and roadmap changes across GitHub, Linear, and local memory files
  • Search and retrieve cross-project knowledge using MCP memory graph queries and semantic search
  • Archive and organize long-form documentation, session notes, and decision records without polluting active code repos

Quality Notes

  • Well-structured six-layer architecture with clear use case for each storage medium
  • Comprehensive ingestion workflow covers classify → deduplicate → store → index, addressing common knowledge management pain points
  • Excellent best practices section: concise files, deduplication-first, canonical sources, sensitive data handling
  • Quality gate checklist provides concrete verification criteria before task completion
  • Clear distinction between 'active execution truth' (GitHub/Linear) vs. 'durable synthesis' (KB repos) prevents anti-pattern of shadow code workspaces
  • Missing: concrete examples of memory file formats, frontmatter structure, or naming conventions (lowercase-kebab-case mentioned but no examples)
  • Missing: error handling guidance — what happens if deduplication search returns ambiguous results, or if Git commit fails?
  • Missing: size/scale guidance — when should a developer move from local memory files to external data store (Layer 5)?
  • Missing: conflict resolution strategy — how to handle out-of-sync knowledge across layers if a sync fails partway through
  • Frontmatter recommendation stated but no template or example provided
Model: claude-haiku-4-5-20251001Analyzed: May 11, 2026

Reviews

Add this skill to your library to leave a review.

No reviews yet

Be the first to share your experience.

Version History

v1.1

Content updated

2026-04-20

Latest
v1.0

No changelog

2026-04-12

Add affaan-m/knowledge-ops to your library

Command Palette

Search for a command to run...

affaan-m/knowledge-ops | SkillRepo