Horizon Track
Track long-running objectives that span multiple sessions, days, or weeks.
When to use
When an objective is too large for a single session — multi-week features, research programs, migration projects, or any work that requires persistent progress tracking across conversations.
Steps
- Initialize horizon — define the objective, target date, and 3-7 milestones
- Store horizon — call
mcp__claude-flow__memory_storewith namespacehorizonsand keyhorizon-[name]:{ "objective": "...", "created": "2026-04-28", "targetDate": "2026-05-15", "milestones": [ {"id": "m1", "name": "...", "criteria": "...", "status": "pending"}, {"id": "m2", "name": "...", "criteria": "...", "status": "pending"} ], "currentMilestone": "m1", "sessions": [] } - Session check-in — at the start of each session:
- Recall horizon:
mcp__claude-flow__memory_retrievekeyhorizon-[name]namespacehorizons - Review milestone status
- Assess drift (are we still on track?)
- Plan this session's contribution
- Recall horizon:
- Work and record — as work progresses:
- Update milestone status
- Record session summary
- Store intermediate findings
- Session check-out — at the end of each session:
- Update horizon state in memory
- Record what was accomplished
- Note blockers or scope changes
- Estimate remaining effort
- Milestone completion — when a milestone is done:
- Verify completion criteria met
- Store learned patterns via
mcp__claude-flow__hooks_intelligence_pattern-store - Advance to next milestone
- Drift detection — flag when:
- Progress rate suggests target date will be missed
- Scope has grown beyond original definition
- Dependencies have changed
- Approach needs fundamental rethinking
Memory namespaces
horizons— active horizon definitions and statehorizon-sessions— per-session summaries keyed by[horizon]-[date]horizon-learnings— patterns and insights discovered during the horizon