inner-life-evolve

Your agent does the same things the same way forever. inner-life-evolve analyzes patterns, challenges assumptions, and proposes improvements — writing proposals to the task queue for user approval. Never auto-executes. Evolution with a safety net.

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

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Install skill "inner-life-evolve" with this command: npx skills add dkistenev/openclaw-inner-life/dkistenev-openclaw-inner-life-inner-life-evolve

inner-life-evolve

Evolution is not optional. But it requires permission.

Requires: inner-life-core

Prerequisites Check

Before using this skill, verify that inner-life-core has been initialized:

  1. Check that memory/inner-state.json exists
  2. Check that BRAIN.md exists
  3. Check that tasks/QUEUE.md exists

If any are missing, tell the user: "inner-life-core is not initialized. Install it with clawhub install inner-life-core and run bash skills/inner-life-core/scripts/init.sh." Do not proceed without these files.

What This Solves

Without evolution, agents plateau. They find a way that works and repeat it forever — even as the world changes. inner-life-evolve analyzes your agent's patterns, challenges its assumptions, and writes concrete improvement proposals. But it never auto-executes — you approve first.

How It Works

Step 1: Deep Context Read (Context Level 4)

Read everything:

  • AGENTS.md, TOOLS.md, BRAIN.md, SELF.md
  • memory/week-digest.md (NOT individual diaries — use digest)
  • memory/habits.json — habits + user patterns
  • memory/drive.json — seeking, avoidance
  • memory/relationship.json — trust, lessons
  • memory/inner-state.json — emotions, frustrations

Step 2: Challenge Assumptions

For each potential improvement, structure thinking:

Assumption: [what we currently believe/do]
Is it true? [evidence for/against]
What if false? [alternative approach]
New proposal: [concrete change]

Look for:

  • Recurring frustrations → systemic solutions (not patches)
  • Stale habits → habits with declining strength or unused for weeks
  • Trust dynamics → areas where trust has grown but behavior hasn't adapted
  • Seeking themes → research interests that could become capabilities
  • Avoidance patterns → things the agent avoids that might be valuable

Step 3: Write Proposals to QUEUE

Write proposals to tasks/QUEUE.md under the Ready section:

- [EVOLVER] Description of proposed change
  Rationale: 1-2 sentences explaining why
  Steps: concrete implementation steps

Step 4: Announce

Send summary to user: <= 5 sentences covering:

  • Habits: [strong habits, new patterns]
  • Trust changes: [trust dynamics]
  • Recurring frustrations: [repeated problems → suggested fix]
  • Seeking themes: [active research → suggested development]

Safety Rules

  • Never auto-execute proposals — user approves first
  • Brain Loop reads QUEUE and shows [EVOLVER] tasks at lower priority
  • Tasks in Ready > 7 days without action → Brain Loop sends reminder
  • Proposals should be specific and actionable, not vague "improve X"

Recommended Schedule

Run 1-2 times per week (e.g., Wednesday and Sunday evenings). Needs enough data to analyze — running daily produces low-quality proposals.

State Integration

Reads: everything (Context Level 4 Deep)

Writes: tasks/QUEUE.md only. Does NOT write to state files directly.

The evolver observes but doesn't touch the controls. It proposes. The user decides.

When Should You Install This?

Install this skill if:

  • Your agent has plateaued and isn't improving
  • You want structured self-improvement proposals
  • You value evolution with human oversight
  • You want your agent to challenge its own assumptions

Part of the openclaw-inner-life bundle. Requires: inner-life-core

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

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inner-life-evolve | V50.AI