Awesome-openclaw-skills causal-inference
Add causal reasoning to agent actions. Trigger on ANY high-level action with observable outcomes - emails, messages, calendar changes, file operations, API calls, notifications, reminders, purchases, deployments. Use for planning interventions, debugging failures, predicting outcomes, backfilling historical data for analysis, or answering "what happens if I do X?" Also trigger when reviewing past actions to understand what worked/failed and why.
git clone https://github.com/sundial-org/awesome-openclaw-skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/sundial-org/awesome-openclaw-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/causal-inference" ~/.claude/skills/sundial-org-awesome-openclaw-skills-causal-inference && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/sundial-org/awesome-openclaw-skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/causal-inference" ~/.openclaw/skills/sundial-org-awesome-openclaw-skills-causal-inference && rm -rf "$T"
skills/causal-inference/SKILL.mdCausal Inference
A lightweight causal layer for predicting action outcomes, not by pattern-matching correlations, but by modeling interventions and counterfactuals.
Core Invariant
Every action must be representable as an explicit intervention on a causal model, with predicted effects + uncertainty + a falsifiable audit trail.
Plans must be causally valid, not just plausible.
When to Trigger
Trigger this skill on ANY high-level action, including but not limited to:
| Domain | Actions to Log |
|---|---|
| Communication | Send email, send message, reply, follow-up, notification, mention |
| Calendar | Create/move/cancel meeting, set reminder, RSVP |
| Tasks | Create/complete/defer task, set priority, assign |
| Files | Create/edit/share document, commit code, deploy |
| Social | Post, react, comment, share, DM |
| Purchases | Order, subscribe, cancel, refund |
| System | Config change, permission grant, integration setup |
Also trigger when:
- Reviewing outcomes — "Did that email get a reply?" → log outcome, update estimates
- Debugging failures — "Why didn't this work?" → trace causal graph
- Backfilling history — "Analyze my past emails/calendar" → parse logs, reconstruct actions
- Planning — "Should I send now or later?" → query causal model
Backfill: Bootstrap from Historical Data
Don't start from zero. Parse existing logs to reconstruct past actions + outcomes.
Email Backfill
# Extract sent emails with reply status gog gmail list --sent --after 2024-01-01 --format json > /tmp/sent_emails.json # For each sent email, check if reply exists python3 scripts/backfill_email.py /tmp/sent_emails.json
Calendar Backfill
# Extract past events with attendance gog calendar list --after 2024-01-01 --format json > /tmp/events.json # Reconstruct: did meeting happen? was it moved? attendee count? python3 scripts/backfill_calendar.py /tmp/events.json
Message Backfill (WhatsApp/Discord/Slack)
# Parse message history for send/reply patterns wacli search --after 2024-01-01 --from me --format json > /tmp/wa_sent.json python3 scripts/backfill_messages.py /tmp/wa_sent.json
Generic Backfill Pattern
# For any historical data source: for record in historical_data: action_event = { "action": infer_action_type(record), "context": extract_context(record), "time": record["timestamp"], "pre_state": reconstruct_pre_state(record), "post_state": extract_post_state(record), "outcome": determine_outcome(record), "backfilled": True # Mark as reconstructed } append_to_log(action_event)
Architecture
A. Action Log (required)
Every executed action emits a structured event:
{ "action": "send_followup", "domain": "email", "context": {"recipient_type": "warm_lead", "prior_touches": 2}, "time": "2025-01-26T10:00:00Z", "pre_state": {"days_since_last_contact": 7}, "post_state": {"reply_received": true, "reply_delay_hours": 4}, "outcome": "positive_reply", "outcome_observed_at": "2025-01-26T14:00:00Z", "backfilled": false }
Store in
memory/causal/action_log.jsonl.
B. Causal Graphs (per domain)
Start with 10-30 observable variables per domain.
Email domain:
send_time → reply_prob subject_style → open_rate recipient_type → reply_prob followup_count → reply_prob (diminishing) time_since_last → reply_prob
Calendar domain:
meeting_time → attendance_rate attendee_count → slip_risk conflict_degree → reschedule_prob buffer_time → focus_quality
Messaging domain:
response_delay → conversation_continuation message_length → response_length time_of_day → response_prob platform → response_delay
Task domain:
due_date_proximity → completion_prob priority_level → completion_speed task_size → deferral_risk context_switches → error_rate
Store graph definitions in
memory/causal/graphs/.
C. Estimation
For each "knob" (intervention variable), estimate treatment effects:
# Pseudo: effect of morning vs evening sends effect = mean(reply_prob | send_time=morning) - mean(reply_prob | send_time=evening) uncertainty = std_error(effect)
Use simple regression or propensity matching first. Graduate to do-calculus when graphs are explicit and identification is needed.
D. Decision Policy
Before executing actions:
- Identify intervention variable(s)
- Query causal model for expected outcome distribution
- Compute expected utility + uncertainty bounds
- If uncertainty > threshold OR expected harm > threshold → refuse or escalate to user
- Log prediction for later validation
Workflow
On Every Action
BEFORE executing: 1. Log pre_state 2. If enough historical data: query model for expected outcome 3. If high uncertainty or risk: confirm with user AFTER executing: 1. Log action + context + time 2. Set reminder to check outcome (if not immediate) WHEN outcome observed: 1. Update action log with post_state + outcome 2. Re-estimate treatment effects if enough new data
Planning an Action
1. User request → identify candidate actions 2. For each action: a. Map to intervention(s) on causal graph b. Predict P(outcome | do(action)) c. Estimate uncertainty d. Compute expected utility 3. Rank by expected utility, filter by safety 4. Execute best action, log prediction 5. Observe outcome, update model
Debugging a Failure
1. Identify failed outcome 2. Trace back through causal graph 3. For each upstream node: a. Was the value as expected? b. Did the causal link hold? 4. Identify broken link(s) 5. Compute minimal intervention set that would have prevented failure 6. Log counterfactual for learning
Quick Start: Bootstrap Today
# 1. Create the infrastructure mkdir -p memory/causal/graphs memory/causal/estimates # 2. Initialize config cat > memory/causal/config.yaml << 'EOF' domains: - email - calendar - messaging - tasks thresholds: max_uncertainty: 0.3 min_expected_utility: 0.1 protected_actions: - delete_email - cancel_meeting - send_to_new_contact - financial_transaction EOF # 3. Backfill one domain (start with email) python3 scripts/backfill_email.py # 4. Estimate initial effects python3 scripts/estimate_effect.py --treatment send_time --outcome reply_received --values morning,evening
Safety Constraints
Define "protected variables" that require explicit user approval:
protected: - delete_email - cancel_meeting - send_to_new_contact - financial_transaction thresholds: max_uncertainty: 0.3 # don't act if P(outcome) uncertainty > 30% min_expected_utility: 0.1 # don't act if expected gain < 10%
Files
— all logged actions with outcomesmemory/causal/action_log.jsonl
— domain-specific causal graph definitionsmemory/causal/graphs/
— learned treatment effectsmemory/causal/estimates/
— safety thresholds and protected variablesmemory/causal/config.yaml
References
- See
for formal intervention semanticsreferences/do-calculus.md - See
for treatment effect estimation methodsreferences/estimation.md