Ai Research Eta Optimization
/install ai-research-eta-optimization
AI Research Task ETA Optimization Workflow
Created: 2026-04-11
Based on: Arkose Labs 50-Prospect Research (1h 41m vs. 5-6h estimate)
Status: ✅ Operational
Quick Reference Formula
AI Research Time = Human Benchmark × 0.2-0.3
Standard Estimate - 30% buffer = Realistic AI Timeline
Optimized scenarios = Standard Estimate - 50%
Example:
- Human research (50 prospects): 8-10 hours
- AI agent optimized: 2-3 hours
- With parallel execution: 1-2 hours
Dynamic ETA Protocol
Hour 1 (Start): Conservative Initial Estimate
- Commit to conservative timeline
- Add note: "ETA may accelerate based on execution patterns"
- Do not commit to fixed deadline
Hour 2 (Mid-Task): Re-evaluate
- Check if accelerating or decelerating
- Look for parallel execution opportunities
- Adjust ETA if needed
- If accelerating: Notify stakeholder early
Hour 3+: Confirm or Finalize
- Confirm final ETA
- Adjust if unexpected patterns emerge
- Document acceleration/deceleration factors
Parallel Execution Optimization
When to Parallelize
- Multiple web searches
- Cross-source verification
- Data aggregation
- Template filling
How to Parallelize
✅ Use concurrent web_search() calls
✅ Batch data verification tasks
✅ Run multiple source queries simultaneously
✅ Avoid sequential bottlenecks
Impact: +30-60 minutes on 2-4 hour tasks
Smart Filtering Framework
Early Elimination Criteria
- Low fraud signal: \x3C2 verifiable incidents
- Weak Arkose fit: No clear value proposition
- Missing decision-makers: Cannot identify contacts
- Low urgency: No recent incidents or regulatory pressure
Prioritization Strategy
- Tier 1 (Urgent): Recent breach + regulatory action + clear value prop
- Tier 2 (High): Strong fraud signal + good fit
- Tier 3 (Long-term): Moderate signal, build over time
Impact: +50-60 minutes saved, focus on high-value prospects
Template-Driven Research
Pre-Built Templates
- Prospect dossier structure
- Verification protocol checklist
- Decision-maker mapping framework
- Value proposition calculator
Consistent Patterns
- Standard data collection (company, fraud signals, fit analysis)
- Reusable source verification (15 high-signal sources)
- Automated prioritization scoring
Impact: +30-40 minutes saved per task
Communication Protocol
Early Acceleration Detection
Signs of potential speedup:
- First 3-5 prospects completed faster than expected
- Parallel execution running smoothly
- No verification roadblocks
- High-signal sources yielding quick results
Action:
- Send progress update: "Accelerating faster than expected"
- Adjust ETA: "Completing ~3 hours early"
- Maintain quality standards
Real-Time Progress Updates
Instead of: Silent execution until completion Use:
- Hourly status (if task >2 hours)
- Early acceleration alerts
- Mid-task ETA adjustments
Impact: Reduced stakeholder anxiety, better expectations management
Token Efficiency Benchmarks
Target Metrics
- Tokens/prospect: 10-15k (sweet spot for quality)
- Output ratio: 3-5% of total tokens
- Token/hour: 300-400k (sustainable pace)
Red Flags
-
20k tokens/prospect = over-researching
- \x3C8k tokens/prospect = potentially skipping verification
- \x3C3% output ratio = excessive reasoning
-
500k tokens/hour = burning through efficiency
Quality Gates (Must Maintain)
Non-Negotiables
- ✅ All fraud signals verified from 2+ sources
- ✅ Decision-makers mapped (LinkedIn, org charts, SEC filings)
- ✅ Clear Arkose Labs value proposition for each prospect
- ✅ Recent incidents prioritized (last 12-18 months)
- ✅ Urgency signals flagged
Acceptable Trade-offs (if accelerating)
- ⚠️ Some Tier 3 prospects may have older incident data
- ⚠️ Decision-maker names may vary (role identification acceptable)
- ⚠️ Dark web claims flagged as [NEEDS VERIFICATION]
Implementation Checklist
Before Starting Task:
- Create prospect dossier templates
- Identify 15 high-signal data sources
- Prepare filtering criteria
- Set up parallel execution plan
- Establish communication protocol
During Task:
- Monitor execution speed in Hour 1
- Identify acceleration opportunities in Hour 2
- Send progress update if accelerating
- Document patterns for future tasks
- Maintain quality gates
After Task:
- Calculate actual runtime vs. estimate
- Document acceleration factors
- Update benchmarks if needed
- Share results with stakeholders
- Refine templates for next task
Success Metrics
Excellent Performance (9-10/10)
- 3x+ faster than estimate
- Zero quality compromises
- All deliverables complete
- High token efficiency
Good Performance (7-8/10)
- 2x+ faster than estimate
- Minor quality trade-offs acceptable
- All core deliverables complete
- Reasonable token usage
Needs Improvement (below 7/10)
- Slower than estimate
- Quality compromises
- Missing deliverables
- Inefficient token usage
Last Updated: 2026-04-11
Based on: 1 optimized research task (Arkose Labs)
Next Review: After 10 tasks (update benchmarks)
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install ai-research-eta-optimization - After installation, invoke the skill by name or use
/ai-research-eta-optimization - Provide required inputs per the skill's parameter spec and get structured output
What is Ai Research Eta Optimization?
Optimizes AI research ETAs with dynamic updates, parallel execution, smart filtering, and template-driven workflows to accelerate prospect analysis by 2-5x w... It is an AI Agent Skill for Claude Code / OpenClaw, with 87 downloads so far.
How do I install Ai Research Eta Optimization?
Run "/install ai-research-eta-optimization" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Ai Research Eta Optimization free?
Yes, Ai Research Eta Optimization is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Ai Research Eta Optimization support?
Ai Research Eta Optimization is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Ai Research Eta Optimization?
It is built and maintained by AchillesProtocol (@achillesprotocol); the current version is v1.0.0.