← Back to Skills Marketplace
diamond2nv

Competition Task Intelligence

by diamond2nv · GitHub ↗ · v0.5.0 · MIT-0
cross-platform ✓ Security Clean
38
Downloads
0
Stars
0
Active Installs
1
Versions
Install in OpenClaw
/install competition-task-intelligence
Description
Build and maintain a structured PDE equation registry, analyze competition tasks (difficulty, bottlenecks, score projections), generate strategic recommendat...
README (SKILL.md)

Competition Task Intelligence

Overview

System for structured PDE equation management and competition task analysis. Provides:

  1. PDE Equation Registry — structured metadata (LaTeX, dimensions, params, datasets) for 11+ PDEs
  2. Task Analysis — per-task difficulty assessment, bottleneck identification, proven strategy catalog
  3. Score Projection — optimistic/expected/conservative score estimates with confidence levels
  4. Strategic Advising — which task to focus on, suggested schedule, rationale
  5. CLI + MCPexpflow analyze command group and MCP tools

Installation

pip install expflow-pde

Architecture

expflow_pde/equations.py     ──── PDE equation static registry (11+ equations)
expflow_pde/analyze.py       ──── Analysis engine (task intelligence, strategy)
expflow_pde/cli_analyze.py   ──── CLI: analyze task/equations/status/advise
expflow_pde/mcp_server.py    ──── MCP: exp_compare_scores, exp_list_workers

1. PDE Equation Registry

Each equation entry in EQUATIONS dict includes: full name, LaTeX, dimensions, parameters, competition task mapping, metrics, solver, data samples, and competition info.

API

from expflow_pde.equations import (
    get_equations(),                    # All 11+ equations
    get_equation(name),                 # Single equation
    list_equations_for_task(task_id),   # task1/task2/task3
    get_equation_metrics(name, task),   # Relevant STANDARD_METRICS
    list_equation_names(),              # Sorted names
    list_competition_equations(),       # Only competition equations
)

2. Task-Level Intelligence

CLI

# Strategic advising (primary entry point)
expflow analyze advise

# Per-task analysis
expflow analyze task task1
expflow analyze task task3

# Equation reference
expflow analyze equations --task competition

# Competition overview
expflow analyze status

Example Output

expflow analyze status

Task     Score              Difficulty     Status         Priority
  ────────────────────────────────────────────────────────────────────
  task1    142/150            🟡 medium       🔴 In Progress  high
  task2    -/150              🔴 hard         ⚪ Not Started  low
  task3    -/350              🔥 very_hard    ⚪ Not Started  medium

  总分: 142/650  (508 pts remaining)

Score Estimation

from expflow_pde.analyze import estimate_score_potential, get_strategic_recommendation

estimates = estimate_score_potential("task1")
# Returns: {"optimistic": 148, "expected": 145, "conservative": 140, "confidence": "high"}

rec = get_strategic_recommendation()
# Returns: {"primary_focus": "task1", "remaining_headroom": {...}, "suggested_schedule": {...}}

Difficulty Classification

Label Icon Example Meaning
easy 🟢 Baseline tasks High confidence, proven methods exist
medium 🟡 Task 1 Known bottlenecks, clear path forward
hard 🔴 Task 2 Multiple unknown challenges
very_hard 🔥 Task 3 (KS) Chaotic dynamics, exponential error growth

Integration with Other Systems

With experiment-lifecycle-governance

compare-scores gating builds on equation metrics from this system. When adding a new equation, its metrics must exist in STANDARD_METRICS for gating to work.

With analyze-experiment-autoregressive-degradation

Chain: analyze advise → decide task → run experiment → analyze degradation → feed back to _TASK_META.

Pitfalls

  1. _TASK_META becomes stale — hardcoded scores must be updated after each submission
  2. Competition deadline hardcodedget_strategic_recommendation() has remaining_days from 2026-05-27
  3. Scoring formula duplication — Task 3 formulae are in both equations.py and analyze.py; keep synced
  4. No clearml import in analyzeanalyze.py uses only pure Python/stdlib for fast CLI startup
Usage Guidance
Treat this as a limited review result: installation should wait for a successful artifact inspection if you need a high-confidence ClawScan decision.
Capability Assessment
Purpose & Capability
Artifact contents were not readable through the available workspace tool, so purpose and capability coherence could not be validated beyond the absence of supplied negative artifact evidence.
Instruction Scope
No artifact instructions were available for review, so no instruction-scope concern is supported by evidence.
Install Mechanism
Install metadata and artifact files could not be inspected, so no install-mechanism concern is evidence-backed.
Credentials
No accessible artifact evidence showed disproportionate environment access.
Persistence & Privilege
No accessible artifact evidence showed persistence, privilege escalation, credential handling, or background operation.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install competition-task-intelligence
  3. After installation, invoke the skill by name or use /competition-task-intelligence
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v0.5.0
- Introduced comprehensive PDE equation registry with detailed metadata for 11+ equations. - Added task-level analysis: difficulty assessment, bottleneck identification, and strategy recommendations. - Implemented scoring projections with optimistic, expected, and conservative estimates. - Launched strategic advising tools via both CLI (`expflow analyze`) and MCP interfaces. - Improved integration points with related experiment governance and analysis systems.
Metadata
Slug competition-task-intelligence
Version 0.5.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Competition Task Intelligence?

Build and maintain a structured PDE equation registry, analyze competition tasks (difficulty, bottlenecks, score projections), generate strategic recommendat... It is an AI Agent Skill for Claude Code / OpenClaw, with 38 downloads so far.

How do I install Competition Task Intelligence?

Run "/install competition-task-intelligence" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Competition Task Intelligence free?

Yes, Competition Task Intelligence is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Competition Task Intelligence support?

Competition Task Intelligence is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Competition Task Intelligence?

It is built and maintained by diamond2nv (@diamond2nv); the current version is v0.5.0.

💬 Comments