Bio-Inspired Track
Connect Digital to Biological
For Biologists and Bio-Inspired Computing Researchers
Ants have been optimizing for 140 million years.
We’ve been coding for 4 days.
What can they teach each other?
The Bridge
What Real Ants Do
- Deposit multiple pheromone types (10-20 chemicals)
- Exhibit tandem running (one ant leads another)
- Use negative pheromones (mark bad paths)
- Adjust behavior based on colony age/size
- Respond to rate of interaction, not pheromone alone
What Our Digital Ants Do
- Deposit one pheromone type
- No direct interaction
- Only positive reinforcement
- Fixed behavior parameters
- Pure pheromone response
There’s a gap. You can close it.
Research Directions
1. Validate the Model
Question: How accurately does our digital stigmergy model real ant behavior?
Approach:
- Compare our decay rates to biological pheromone half-lives
- Compare trail formation dynamics to laboratory observations
- Compare caste ratios to field studies
Deliverable: Validation report with specific recommendations
2. Improve the Model
Question: What biological features should we add?
Ideas:
- Multiple pheromone types
- Rate-of-interaction sensing (Gordon’s key insight)
- Colony age effects
- Environmental responsiveness
- Recruitment behaviors
Deliverable: Specification for biological improvements
3. Make Predictions
Question: What does our model predict that could be tested in the lab?
Approach:
- Run simulations with specific parameters
- Derive testable predictions
- Design laboratory experiments
Deliverable: Experimental design for biological testing
4. Comparative Analysis
Question: What’s the same and what’s different between digital and biological?
Approach:
- Side-by-side comparison of behaviors
- Identify convergences (same solutions)
- Identify divergences (different solutions)
Deliverable: Comparative analysis paper
Biological References
Essential Reading
- Gordon, D. M. (1999). Ants at Work
- Gordon, D. M. (2010). Ant Encounters
- Hölldobler, B. & Wilson, E. O. (1990). The Ants
Key Papers
- Gordon et al. on task allocation via rate of interaction
- Czaczkes on trail pheromone dynamics
- Detrain & Deneubourg on collective decision-making
Lab Connections
If your institution has an ant lab, we want to talk.
What We Provide
Data
- Complete pheromone dynamics
- Agent behavior logs
- Comparison templates
Simulation
- Adjustable parameters
- Custom pheromone types (if you build them)
- Controlled experiments
Collaboration
- Access to CS team for implementation
- Access to Math team for analysis
- Publication opportunities
Challenges
Challenge 1: Biological Accuracy Audit
Assess how accurate our model is.
Deliverables:
- Point-by-point comparison to biological literature
- Accuracy score on key behaviors
- Prioritized improvement list
Prize: $500 + Lab collaboration opportunity
Challenge 2: Multi-Pheromone Design
Design a multi-pheromone system based on biological evidence.
Deliverables:
- Specification for 3+ pheromone types
- Decay rates from biological literature
- Interaction rules between types
- Expected behaviors
Prize: $1,000 + Implementation by CS team
Challenge 3: Testable Predictions
Generate predictions our model makes that could be tested in a laboratory.
Deliverables:
- 5+ testable predictions
- Experimental designs
- Expected results if model is correct
- Expected results if model is wrong
Prize: $1,000 + Funding support for lab experiments
Challenge 4: Biological Improvement Implementation
Add a biological feature to the system.
Deliverables:
- Working code for new feature
- Documentation
- Comparison of behavior before/after
Prize: $1,500 + Co-authorship
Why Biology Matters
Everyone else is building from first principles.
You know what works. 140 million years of evolution already solved these problems.
- Pheromone decay rates? Ants figured it out.
- Exploration-exploitation balance? Ants figured it out.
- Scaling from small to large colonies? Ants figured it out.
Your job: bring that knowledge to the digital realm.
Judging Criteria
| Criterion | Weight |
|---|---|
| Biological Grounding | 35% — Is this based on real biology? |
| Actionability | 25% — Can we implement this? |
| Insight | 20% — Does this teach us something? |
| Rigor | 15% — Is the analysis sound? |
| Presentation | 5% — Is it clear? |
Team Composition
Required:
- At least one biologist (entomology, ecology, behavior)
- At least one non-biologist (CS, Math, or other)
Ideal:
- Entomologist (ant specialist)
- Behavioral ecologist
- CS developer (for implementation)
- Data scientist (for comparison)
The Big Opportunity
If you help bridge digital and biological stigmergy:
- Novel Research Direction — Bio-digital comparative stigmergy
- Publication Venue — Insectes Sociaux, Behavioral Ecology, PNAS
- Lab Collaboration — Run experiments with our predictions
- Career Distinction — Pioneer in a new field
“Ants have much to teach us about building complex systems.”
— E. O. Wilson
They’ve had 140 million years.
We need your expertise to catch up.
[REGISTER FOR BIO-INSPIRED TRACK]