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workflow-improvement

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npx machina-cli add skill athola/claude-night-market/workflow-improvement --openclaw
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SKILL.md
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Workflow Improvement

When To Use

Use this skill after running a command or completing a short session slice where execution felt slow, confusing, repetitive, or fragile.

This skill focuses on improving the workflow assets (skills, agents, commands, hooks) that were involved, not on feature work itself.

When NOT To Use

  • Implementing features - focus on feature work first

Required TodoWrite Items

  1. fix-workflow:context-gathered
  2. fix-workflow:slice-captured
  3. fix-workflow:workflow-recreated
  4. fix-workflow:improvements-generated
  5. fix-workflow:plan-agreed
  6. fix-workflow:changes-implemented
  7. fix-workflow:validated
  8. fix-workflow:lesson-stored

Step 0: Gather Improvement Context (context-gathered)

Before analyzing the current session, gather existing improvement data:

0.1: Check Skill Execution History

Query memory-palace logs for recent performance issues:

# Recent failures (last 7 days)
/skill-logs --failures-only --last 7d

# Performance metrics for involved plugins
pensive:skill-review --plugin sanctum --recommendations

Capture:

  • Skills with stability_gap > 0.3
  • Recent failure patterns and error messages
  • Performance degradation trends

0.2: Query Knowledge Base

Search for previously captured workflow lessons:

# If memory-palace review-chamber is available
/review-room search "workflow improvement" --room lessons
/review-room search "efficiency" --room patterns

Look for:

  • Similar workflow issues from past PRs
  • Recurring patterns in workflow failures
  • Architectural decisions affecting workflows

0.3: Check Git History

Identify recurring issues through commit patterns:

git log --oneline --grep="improve\|fix\|optimize" --since="30 days ago" \
  -- plugins/sanctum/skills/ plugins/sanctum/commands/

# Look for unstable components (frequent fixes)
git log --oneline --since="30 days ago" --follow \
  -- plugins/sanctum/skills/workflow-improvement/

Extract:

  • Components with frequent bug fixes (instability signals)
  • Patterns in improvement commit messages
  • Recurring issue themes

Output Format:

## Improvement Context

### Skill Performance Issues
- sanctum:workflow-improvement: stability_gap 0.35 (5 failures in 7 days)
- Error pattern: "Missing validation in Step 2"

### Knowledge Base Lessons
- PR #42 lesson: "Workflow validation should happen at start, not end"
- Pattern: Early validation reduces iteration time by 30%

### Git History Insights
- workflow-improvement skill: 8 commits in 30 days (instability signal)
- Recurring theme: "Add missing prerequisite checks"

Step 1: Capture the Session Slice (slice-captured)

Identify the most recent command or session slice in the current context window and capture:

  • Trigger: What command / request started it (include the literal /command if present)
  • Goal: What "done" meant for the user
  • Artifacts touched: Skills, agents, commands, hooks (names + file paths)
  • Evidence: Key tool calls / errors / retries that indicate inefficiency
  • Context from Step 0: Reference any relevant patterns from improvement context

If the slice is ambiguous, pick the most recent complete attempt and state the exact boundary you chose.

Step 2: Recreate the Workflow (workflow-recreated)

Reconstruct the workflow as a numbered list of 5 to 20 steps, identifying inputs, branch points for decisions, and outputs such as file changes or state modifications. During this reconstruction, identify specific friction points that reduce efficiency. These often include repeated steps or redundant tool calls, as well as missing guardrails where validation occurs too late or prerequisites are unclear. Other common issues are a lack of automation for tasks that should be scripted, and discoverability gaps caused by confusing naming conventions.

Cross-reference with Step 0 context:

  • Are friction points matching known failure patterns?
  • Do repeated steps align with git history themes?
  • Are missing guardrails mentioned in review-chamber lessons?

Step 3: Generate Improvements (improvements-generated)

Generate 3 to 5 distinct improvement approaches and score each on impact, complexity, reversibility, and consistency with existing sanctum patterns. The scoring should specifically address whether the change prevents the recurrence of patterns identified in Step 0. Prioritize improvements that address components with a high stability gap (greater than 0.3) or recurring issues found in the git history. You should also incorporate lessons from the review-chamber and aim to reduce failure modes identified in the skill logs. Prefer small, high-use changes such as tightening a skill's exit criteria, adding missing command options, improving hook guardrails for better observability, or splitting overloaded commands into clearer phases.

Step 4: Agree on a Plan (plan-agreed)

Choose 1 approach and define:

  • Acceptance criteria (“substantive difference”)
  • Files to change
  • Validation commands to run
  • Out-of-scope items to defer

Keep the plan bounded: aim for ≤ 5 files changed unless the workflow truly spans more.

Step 5: Implement (changes-implemented)

Apply changes following sanctum conventions:

  • Keep naming consistent across commands/, agents/, skills/, hooks/
  • Prefer documentation-first improvements if ambiguity was the primary issue
  • If behavior changes, add/adjust tests in plugins/sanctum/tests/

Step 6: Validate Substantive Improvement (validated)

Validation should include at least 2 of:

  • Plugin validators / unit tests passing (targeted)
  • Re-running the minimal workflow reproduction with fewer steps or less manual work
  • A clear reduction in failure modes (e.g., earlier validation, clearer options)

Record the before/after comparison as metrics, not prose:

  • Step count reduction
  • Tool call reduction
  • Errors avoided (what would have failed before)
  • Duration improvement (if measurable)

Metrics Comparison Template

## Validation Results

### Before Improvement
- Step count: 15
- Tool calls: 23
- Failure points: 3
- Duration: ~8 minutes
- Manual interventions: 5

### After Improvement
- Step count: 11 (-4, -27%)
- Tool calls: 17 (-6, -26%)
- Failure points: 0 (-3, -100%)
- Duration: ~5 minutes (-37%)
- Manual interventions: 2 (-3, -60%)

### Verification
[E1] Command: `python3 plugins/sanctum/scripts/test_workflow.py`
Output: All tests passed (0.5s)

[E2] Command: `/validate-plugin sanctum`
Output: No issues found

Step 7: Close the Loop (Store Lessons)

After validation, capture the improvement for future reference:

7.1: Update Git History

Commit with descriptive message that future searches will find:

git add <changed-files>
git commit -m "improve(sanctum): <component> - <specific fix>

Addresses recurring issue: <pattern from Step 0>
Reduces <metric> by <percentage>

Evidence: stability_gap reduced from 0.35 to 0.12

Co-Authored-By: Claude Sonnet 4.5 <noreply@anthropic.com>"

7.2: Capture Lesson in Memory Palace (Optional)

If the improvement addresses a high-value pattern:

# Store in review-chamber lessons
/review-room capture --room lessons --title "Workflow: <pattern name>"

7.3: Update Improvement Metrics

Track the improvement's impact:

# Check post-improvement stability
pensive:skill-review --skill sanctum:<component> --recommendations

This creates a feedback loop where future /fix-workflow and /update-plugins runs will reference this lesson.

Supporting Modules

Troubleshooting

Common Issues

If a command is not found, confirm that all dependencies are installed and accessible in your PATH. For permission errors, check file system permissions and run the command with appropriate privileges. If you encounter unexpected behavior, enable verbose logging using the --verbose flag to capture more detailed execution data.

Source

git clone https://github.com/athola/claude-night-market/blob/master/plugins/sanctum/skills/workflow-improvement/SKILL.mdView on GitHub

Overview

This skill enables retrospective evaluation of workflow assets—skills, agents, commands, and hooks—to identify slowdowns and confusion and drive concrete improvements. It focuses on optimizing the workflow itself rather than adding new features, helping teams reduce iteration time and raise reliability.

How This Skill Works

It works by gathering Improvement Context from performance logs, knowledge base lessons, and Git history to surface recurring issues and improvement opportunities. It then captures the most recent session slice, including trigger, goal, artifacts, and evidence, and uses that data to recreate the workflow as a step-by-step sequence. Finally, it generates an actionable improvement plan with changes, validation steps, and a stored lesson.

When to Use It

  • When a workflow feels slow, confusing, repetitive, or fragile.
  • After a command or session slice where execution lagged or produced unclear outcomes.
  • When you notice persistent failure patterns or instability signals in memory-palace logs or plugin performance.
  • To optimize workflow assets (skills, agents, commands, hooks) rather than implementing new features.
  • Before a retrospective or release, to capture lessons and prepare a validated improvement plan.

Quick Start

  1. Step 1: Determine if the current session qualifies for workflow improvement (slow, confusing, or fragile).
  2. Step 2: Gather Improvement Context by reviewing skill execution history, knowledge base, and Git history.
  3. Step 3: Capture the session slice, recreate the workflow as step-based tasks, and generate an improvement plan.

Best Practices

  • Run after a session with noticeable speed issues or confusion.
  • Capture concrete evidence: failure messages, performance metrics, stability_gap, and error patterns.
  • Consult the knowledge base and Git history for recurring patterns and lessons.
  • Fill and sequence the required TodoWrite items in order before proceeding.
  • Recreate the workflow as a concise, testable step list and validate changes with a small slice.

Example Use Cases

  • An analysis flags stability_gap of 0.35 and an error pattern Missing validation in Step 2, prompting a validation early in the flow.
  • A lesson shows that early validation reduces iteration time by 30%, guiding the redesign to perform checks at the start.
  • Git history reveals recurring needs to add missing prerequisite checks, leading to a preflight checklist in the workflow.
  • A plan includes fixing context gathering and agreeing on a plan before implementing changes.
  • Post-improvement, the workflow executes with fewer retries and improved reliability.

Frequently Asked Questions

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