WorldDisasterLM-8B / MODEL_CARD.md
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Model Card: WorldDisasterLM

Model Details

  • Model Name: WorldDisasterLM
  • Alternative Names: DisasterGPT, CrisisMind, OpenDisasterAI, GlobalRescueLM, HumanitarianGPT
  • Base Model: meta-llama/Llama-3.1-8B-Instruct
  • Architecture: Decoder-only transformer, instruction tuned
  • Future Upgrades: 70B checkpoints, MoE variants
  • Primary Domains: Disaster management, emergency response, humanitarian aid, risk analytics

Intended Use

Primary Users

  • Government agencies
  • NGOs and humanitarian organizations
  • Emergency responders
  • Researchers and policy groups
  • Healthcare organizations
  • Citizens and volunteers

Intended Tasks

  • Disaster Q&A
  • Emergency guidance generation
  • Incident classification
  • Risk scoring by region/event
  • Resource planning recommendations
  • Situation report summarization

Training Data

Aggregated disaster corpora from international organizations, open disaster databases, research literature, and near-real-time alert metadata. Data is normalized into instruction-friendly samples and multilingual pairs.

Evaluation

Core metrics include:

  • Response accuracy
  • Hallucination rate
  • Safety policy compliance
  • Emergency-response correctness
  • Multilingual performance across 10 target languages

Safety and Risk

  • Not a replacement for emergency command centers
  • Outputs should be verified with authoritative real-time sources
  • Critical instructions must involve human oversight
  • High-risk outputs are tagged for escalation

Limitations

  • Data availability and timeliness may vary by region
  • Some low-resource languages may have lower response quality
  • Unknown edge-case events may reduce reliability

License

MIT