distributions/codex/skills/session-lifecycle-patterns/SKILL.md
Manage AI agent session lifecycles with structured phases (FRAME, SHAPE, BUILD, PROVE), context preservation across sessions, handoff protocols, and session metadata tracking. Triggers on session management, agent lifecycle, or multi-session workflow requests.
npx skillsauth add a-organvm/a-i--skills session-lifecycle-patternsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Structure AI agent sessions for predictable outcomes, context preservation, and clean handoffs.
FRAME → SHAPE → BUILD → PROVE → DONE
↑ ↑ ↑ ↑
└───────┴───────┴───────┘
(back-transitions allowed)
| Phase | Purpose | Activities | Gate | |-------|---------|-----------|------| | FRAME | Understand context | Explore code, read docs, ask questions | Can articulate the problem | | SHAPE | Design approach | Create plan, identify files, consider tradeoffs | Plan reviewed and approved | | BUILD | Implement | Write code, create files, apply changes | Implementation complete | | PROVE | Verify | Run tests, validate output, check quality | All checks pass | | DONE | Close | Summarize, commit, document decisions | Session artifacts preserved |
VALID_TRANSITIONS = {
"FRAME": ["SHAPE"],
"SHAPE": ["FRAME", "BUILD"], # Can go back to reframe
"BUILD": ["SHAPE", "PROVE"], # Can go back to reshape
"PROVE": ["BUILD", "DONE"], # Can go back to fix
"DONE": [], # Terminal
}
def can_transition(current: str, target: str) -> bool:
return target in VALID_TRANSITIONS.get(current, [])
session:
id: "sess_2026-03-20_a1b2c3"
started: "2026-03-20T10:58:00Z"
ended: "2026-03-20T12:30:00Z"
phase_history:
- phase: FRAME
entered: "2026-03-20T10:58:00Z"
duration_minutes: 15
- phase: SHAPE
entered: "2026-03-20T11:13:00Z"
duration_minutes: 20
- phase: BUILD
entered: "2026-03-20T11:33:00Z"
duration_minutes: 45
- phase: PROVE
entered: "2026-03-20T12:18:00Z"
duration_minutes: 12
scope:
organ: IV
repo: a-i--skills
task: "Create python-packaging-patterns skill"
artifacts:
files_created: [skills/development/python-packaging-patterns/SKILL.md]
files_modified: []
commits: ["abc123"]
decisions:
- "Chose hatchling as recommended build backend"
- "Included namespace package pattern for multi-repo use"
Maintain context as the session progresses through phases:
class SessionContext:
def __init__(self):
self.discoveries: list[str] = [] # FRAME findings
self.plan: dict = {} # SHAPE output
self.changes: list[str] = [] # BUILD artifacts
self.evidence: list[str] = [] # PROVE results
def frame_discovery(self, finding: str):
self.discoveries.append(finding)
def shape_decision(self, key: str, value: str, rationale: str):
self.plan[key] = {"value": value, "rationale": rationale}
For multi-session work, preserve essential context at session end:
## Session Close Summary
### What was accomplished
- Created 6 Wave 0 skills (python-packaging-patterns through vector-search-patterns)
### What remains
- 18 more Wave 0 skills in Batches 2-4
- Waves 1-4 pending
### Key decisions
- Using governance_norm_group: repo-hygiene for packaging/config skills
- Using organ_affinity: [all] for cross-cutting infrastructure skills
### Blockers
- None
### Next session should start by
- Reading this summary
- Continuing with Wave 0 Batch 2
FRAME (80%) → SHAPE (20%) → DONE
Heavy on reading, light on planning, no implementation. Produces understanding and a plan for a future BUILD session.
FRAME (10%) → SHAPE (15%) → BUILD (55%) → PROVE (20%) → DONE
Quick reorientation, then focused building and verification.
FRAME (40%) → BUILD (30%) → PROVE (30%) → DONE
Heavy investigation, targeted fix, thorough verification.
FRAME (30%) → PROVE (70%) → DONE
Mostly reading and validating existing work.
When work spans multiple sessions, each session references the chain:
chain:
id: "skill-fortification-campaign"
session_index: 3
total_sessions_estimated: 15
previous_session: "sess_2026-03-20_wave0-batch1"
completed_items: ["A1", "A2", "A3", "A4", "A5", "A6"]
remaining_items: ["A7", "A8", "A13", "A14", "B1", "B2", ...]
At session end, produce a handoff document:
| Signal | Healthy | Unhealthy | |--------|---------|-----------| | Phase transitions | Sequential with occasional back-steps | Skipping phases, staying in one phase | | FRAME duration | 10-30% of session | <5% or >50% | | PROVE evidence | Concrete test/validation output | "I think this works" | | Context preserved | Summary written at DONE | Session ends abruptly | | Scope creep | Stays within stated scope | Expanding mid-BUILD |
testing
Designs systems for encoding, scoring, and generating choreographic movement using Laban notation, computational geometry, and procedural animation principles.
tools
Manage monorepos and multi-package repositories with workspace tools, dependency management, selective builds, and change detection. Covers npm/pnpm workspaces, Turborepo, and Python monorepo patterns. Triggers on monorepo setup, workspace management, or multi-package repository requests.
development
Curated bundle for managing monorepos with containerized deployment pipelines. Includes monorepo management, Docker containerization, CI/CD deployment, and coding standards. Use when setting up or improving multi-package repository infrastructure.
development
Apply modular synthesis principles to system design, workflow architecture, and conceptual frameworks. Use when designing modular systems, creating architecture diagrams using synthesis metaphors, applying signal flow thinking to data pipelines, or translating between audio engineering and software concepts. Triggers on modular architecture design, signal flow diagrams, synthesis-inspired system thinking, or "oscillator/patch" metaphors.