RALSTP Consultant
Analyze problems using RALSTP (Recursive Agents and Landmarks Strategic-Tactical Planning). Based on PhD thesis by Dorian Buksz (RALSTP). Identifies agents,...
技能说明
name: ralstp-consultant description: Analyze problems using RALSTP (Recursive Agents and Landmarks Strategic-Tactical Planning). Based on PhD thesis by Dorian Buksz (RALSTP). Identifies agents, calculates difficulty, and suggests decomposition.
RALSTP Consultant
Based on "Recursive Agents and Landmarks Strategic-Tactical Planning (RALSTP)" by Dorian Buksz, King's College London, 2024.
Core Concepts (from the thesis)
1. Agents Identification
Definition: Agents are objects with dynamic types that are active during goal state search.
How to identify:
- Dynamic type = appears as first argument of a predicate in any action's effects
- Static type = never appears in action effects
- Example: In Driverlog,
truckanddriverare dynamic (they're indriveaction effects), butlocationis static
Real PDDL Example (RTAM Domain):
(:types
ambulance police_car tow_truck fire_brigade - vehicle
acc_victim vehicle car - subject
...
)
- Agents: ambulance, police_car, tow_truck, fire_brigade (appear in action effects like
at,available,busy) - Passive: acc_victim, car (acted upon but don't act)
2. Passive Objects
Objects that are NOT agents — things being acted upon but don't act themselves.
- Packages, cargo, data, files, victims in RTAM
3. Agent Dependencies
Definition: Relationships between agents based on what preconditions they satisfy for other agents.
Types:
- Independent — agents that don't depend on each other
- Dependent — agents that need other agents' preconditions satisfied
- Conflicting — agents that interfere with each other
4. Entanglement
Definition: When agents fight for shared resources (time, space, locations, etc.)
Measurement:
- Count of shared predicates
- Conflict frequency in goal states
Real PDDL Example (RTAM - Road Traffic Accident):
(:durative-action confirm_accident
:parameters (?V - police_car ?P - subject ?A - accident_location)
:condition (and (at start (at ?V ?A)) (at start (at ?P ?A)) ...)
:effect (and (at end (certified ?P)) ...)
)
(:durative-action untrap
:parameters (?V - fire_brigade ?P - acc_victim ?A - accident_location)
:condition (and (at start (certified ?P)) (at start (available ?V)) ...)
)
- Entanglement:
police_carmust certify BEFOREfire_brigadecan untrap - Resource conflict: Both need to be at same
accident_location - Availability:
fire_brigadebusy during untrap → others must wait
5. Landmarks
Definition: Facts that must be true in any valid plan (from goals back to initial state).
Types:
- Fact landmarks — propositions that must hold
- Action landmarks — actions that must be executed
- Relaxed landmarks — landmarks considering only positive effects (ignoring deletes)
Real PDDL Example (RTAM - sequential dependencies):
Goal: (delivered victim1) ∧ (delivered car1)
Required sequence of fact landmarks:
1. (certified victim1) ← police must confirm
2. (untrapped victim1) ← fire must free them
3. (aided victim1) ← ambulance must treat
4. (loaded victim1 ambulance) ← ambulance must load
5. (at victim1 hospital) ← deliver to hospital
6. (delivered victim1) ← FINAL
Action landmarks:
- confirm_accident → untrap → first_aid → load_victim → unload_victim → deliver_victim
6. Strategic vs Tactical
- Strategic: Abstract planning level. Solve "what needs to happen first" ignoring details.
- Tactical: Detailed execution level. Solve "exactly how to do it".
7. Difficulty Metrics
From the thesis, difficulty increases with:
- More agents in goal state
- More entangled agents (conflicting dependencies)
- More inactive dynamic objects not in goal
Buksz Complexity Score ≈ Agent Count × Entanglement Factor
Implementation Note (Natural Language vs PDDL)
This skill operates in two modes:
- Conceptual Mode (Default): Uses the LLM to apply RALSTP methodology to natural language problems (e.g., "Plan a marketing launch"). No PDDL files are required. The agent identifies Agents/Landmarks conceptually.
- Formal Mode (Optional): If you provide PDDL domain/problem files, the included
scripts/analyze.pycan be run to mathematically extract agents and landmarks.
The instructions below apply to both modes, but "Real PDDL Examples" are provided for technical context.
Usage
For any complex problem, just describe it and I'll apply RALSTP:
RALSTP analyze: I need to migrate 1000 VMs from datacentre A to B with minimal downtime
Output Format
## RALSTP Analysis
### Agents Identified
- [list agents and their types]
### Passive Objects
- [list objects being acted upon]
### Dependency Graph
- [which agents depend on which]
### Difficulty Assessment
- Agent Count: X
- Entanglement: Low/Medium/High
- Estimated Complexity: [score]
### Strategic Phase
- [high-level plan ignoring details]
### Tactical Phase
- [detailed execution]
### Decomposition Suggestion
- Split by: [agent type / landmark / location]
- Parallelize: [what can run concurrently]
- Risks: [potential conflicts/entanglements]
When to Use
USE for:
- Multi-step workflows with multiple actors
- Migration/tasks with dependencies
- Resource contention problems
- Complex orchestrations
SKIP for:
- Simple Q&A
- Single-task problems
Reference
PhD Thesis: "Recursive Agents and Landmarks Strategic-Tactical Planning (RALSTP)" — Dorian Buksz, King's College London, 2024.
Example: RTAM Domain (IPC-2014)
Domain: Road Traffic Accident Management
Full Analysis
Agents (4):
ambulance— transports victims to hospitalpolice_car— certifies accident/victimstow_truck— recovers vehiclesfire_brigade— untraps victims, extinguishes fires
Passive Objects:
acc_victim— people needing helpcar— vehicles involved in accidentaccident_location,hospital,garage
Dependencies (Critical Path):
police_car → fire_brigade → ambulance → hospital
↓ ↓ ↓
certify untrap deliver
Landmarks Chain (must execute in order):
confirm_accident(police at scene)untrap(fire frees victim)first_aid(ambulance treats)load_victim→unload_victim→deliver_victimload_car→unload_car→deliver_vehicle
Entanglement:
- Multiple vehicles must be at same location (accident scene)
- Vehicles have limited availability (busy during actions)
- Sequence constraints: can't deliver before certify
Difficulty: High — 4 agents, tight dependencies, shared locations
如何使用「RALSTP Consultant」?
- 打开小龙虾AI(Web 或 iOS App)
- 点击上方「立即使用」按钮,或在对话框中输入任务描述
- 小龙虾AI 会自动匹配并调用「RALSTP Consultant」技能完成任务
- 结果即时呈现,支持继续对话优化