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metadata
license: cc-by-sa-4.0
language: en
multilinguality: monolingual
size_categories: n<1K
source_datasets:
  - original
annotations_creators:
  - machine-generated
language_creators:
  - machine-generated
tags:
  - rpg
  - game-ai
  - tactical-decision-making
  - fantasy
  - mud
  - llm
  - conversations
  - turn-based-combat
  - multi-turn
  - simulation
  - synthetic
  - dialogue
  - conversational-ai
  - large-language-models
  - instruction
  - llm-training
  - conversational-ai
  - training-data
  - retrieval-augmented-generation
  - agentic
task_categories:
  - text-generation
task_ids:
  - dialogue-generation
  - text-simplification
  - language-modeling

name: RPG_DM_Simulation_Combat_LLM_Training

pretty_name: Magician MUD Conversations

description: 20 turn-by-turn gameplay conversations from a text-based dungeon crawler RPG (MUD style). Each conversation captures strategic decision-making in fantasy combat, including player status, enemy encounters, resource management, and combat outcomes. Ideal for fine-tuning language models for RPG dialogue generation, tactical decision-making, and game state understanding.

Get the full 30K record dataset on Gumroad at https://datadeveloper1.gumroad.com/l/lmfhbg

The full CJ Jones' synthetic dataset catalog is available at: https://datadeveloper1.gumroad.com

Want more? 🚀 Get the AI Startup Bundle from Gumroad.

dataset_size: 500 splits: train: 400 validation: 50 test: 50 dataset_structure: description: Each instance represents a single conversation turn. fields: conversation_id: string game_id: string turn_number: int speaker: string message: string game_state: dict selected_choice: string choice_number: int choice_reason: string attacked_entities: list combat_outcome: dict game_outcome: string considerations: social_impact: Fantasy violence only; no real-world sensitive content. bias: > Contains combat-focused scenarios in a Western fantasy RPG setting. AI choices may not reflect human player behavior. limitations: > Small dataset (500 conversations). Synthetic data, domain-specific. Not suitable for large-scale pre-training. recommended_use_cases:

  • Fine-tuning small to medium language models (≤7B parameters)
  • Training supervised game-playing agents
  • RPG dialogue systems
  • Tactical AI research
  • Game design education not_recommended_use_cases:
  • Large-scale pre-training
  • Real-world decision-making systems
  • Medical, financial, or safety-critical applications citation: bibtex: | @dataset{magician-mud-conversations-2025, title = {Magician MUD Conversations: A Dataset of 500 Tactical RPG Dialogues}, author = {Magician MUD Simulator Team}, year = {2025}, publisher = {Hugging Face}, version = {1.0.0}, url = {https://huggingface.co/datasets/RPG_DM_Simulation_Combat_LLM_Training} }

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