dijkstra / README.md
user
More data, better trace quality
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metadata
license: cc-by-4.0
language:
  - en
tags:
  - dijkstra
  - shortest-path
  - graph-algorithms
  - algorithmic-reasoning
  - step-by-step-reasoning
  - chain-of-thought
  - planar-graphs
  - delaunay-triangulation
  - synthetic-data
  - procedural-generation
  - priority-queue
  - heapq
  - pathfinding
  - euclidean-graphs
  - reasoning-traces
  - structured-output
  - llm-evaluation
  - algorithm-execution
task_categories:
  - text-generation

Dijkstra Shortest-Path Algorithm Dataset

Overview

This dataset contains randomly generated shortest-path problems together with detailed, step-by-step reasoning traces of Dijkstra’s algorithm.

Each example presents:

  • A weighted, undirected planar graph
  • A source and target vertex
  • A complete execution trace of Dijkstra’s algorithm
  • The final shortest path and total distance

The dataset is designed for:

  • Training and evaluating reasoning-capable language models
  • Studying structured algorithmic execution traces
  • Benchmarking step-by-step graph reasoning

Graph Generation Procedure

Graphs were generated using the following pipeline:

  1. Vertex Sampling

    • Number of vertices: 3 to 25 (inclusive)
    • Points sampled uniformly at random in the unit square
  2. Graph Construction

    • A Delaunay triangulation was computed over the sampled points
    • The resulting triangulation defines the undirected planar graph structure
  3. Edge Weights

    • Edge weights are the Euclidean distances between connected vertices

This procedure ensures:

  • Planar graphs
  • Sparse but well-connected structures
  • Real-valued edge weights
  • Geometrically meaningful shortest paths

Algorithm Implementation

Shortest paths were computed using a Python implementation of Dijkstra’s algorithm, relying on the standard heapq priority queue.

Each reasoning trace includes:

  • Initialization of distances and predecessor mappings
  • Priority queue state updates
  • Node extraction steps
  • Edge relaxation steps
  • Early stopping when the target is reached
  • Final path reconstruction

The trace is structured to make each intermediate step explicit and machine-readable.

Dataset Schema

Each row contains:

Field Description
id Unique identifier (UUID)
input Natural-language problem description
output Full reasoning trace and final answer
vertices Number of vertices in the graph

Example

{
  "id": "49696006-c29f-4e36-bac8-2a1586f68549",
  "input": "Given these edge distances in an undirected planar graph:\n\nB-C 0.3152\nA-C 0.6862\nA-B 0.4033\n\nUse Dijkstra’s algorithm to find the minimum path between B and C, showing the full step-by-step process.",
  "output": "<think>\nStep 1: Initialization\nInitial distances: {'A': inf, 'B': 0, 'C': inf}\n...\n</think>\n\n<response>The shortest path from B to C is B -> C. Total distance 0.3152.</response>",
  "vertices": 3
}

Intended Use

This dataset is suitable for:

  • Training models to emulate classical algorithms
  • Evaluating chain-of-thought reasoning on structured problems
  • Studying how models execute graph traversal procedures
  • Benchmarking reasoning fidelity against deterministic ground truth

Limitations

  • Distribution mismatch: Uniformly distributed planar points may not reflect real-world graph distributions.
  • Scale limitations: Graph sizes are relatively small (maximum 25 vertices).
  • Algorithmic ground truth is trivial: For practical applications, directly running Dijkstra’s algorithm is more reliable and efficient than using a language model.
  • Experimental focus: The dataset is primarily intended for reasoning research rather than production pathfinding tasks.

Licence

This dataset is released under the Creative Commons Attribution 4.0 (CC BY 4.0) license.

You are free to:

  • Share — copy and redistribute the material
  • Adapt — remix, transform, and build upon the material

Under the condition that appropriate credit is given.