# REALM-Bench JSSP (clean) Four JSON files only — one per tier — with all instances in a **unified schema**. ## Files | File | Tier | Instances | Description | |------|------|-----------|-------------| | `J1.json` | J1 | 109 | Static benchmarks (DMU, TA, ABZ, SWV, YN) | | `J2.json` | J2 | 109 | J1 + dynamic disruptions | | `J3.json` | J3 | 100 | Large-scale static (200×50) | | `J4.json` | J4 | 100 | Large-scale + disruptions | ## Top-level structure (each file) ```json { "tier": "J1", "format_version": "1.0", "description": "...", "objective": "minimize_makespan", "num_instances": 109, "instances": [ ... ] } ``` ## Instance object (inside `instances`) ```json { "instance_id": "rcmax_50_20_9", "tier": "J1", "num_jobs": 50, "num_machines": 20, "jobs": [ [ {"operation": 1, "machine": 19, "processing_time": 64}, {"operation": 2, "machine": 16, "processing_time": 34} ] ], "disruptions": [], "metadata": { "source_file": "DMU/rcmax_50_20_9.txt", "benchmark": "DMU", "objective": "minimize_makespan", "description": "JSSP Basic (Static)" } } ``` - **machine** — 1-based machine ID - **disruptions** — empty for J1/J3; events for J2/J4 ## Load in Python ```python import json with open("datasets/clean/JSSP/J1.json") as f: data = json.load(f) for inst in data["instances"]: print(inst["instance_id"], inst["num_jobs"], inst["num_machines"]) ``` ## Rebuild ```bash cd datasets && python3 build_jssp_dataset.py ``` Writes only `clean/JSSP/J1.json` … `J4.json`. Re-copy this README after rebuild if needed. ## Hugging Face Upload `datasets/clean/JSSP/` to **GloriaGeng/REALM-Bench** on the Hugging Face Hub.