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---
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**](https://en.wikipedia.org/wiki/Dijkstra%27s_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

```json
{
  "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.