DVCE Event Grammar Model

Universal Event Grammar Model — predicts the next event in any sequential system.

Trained on 1.3M+ real-world events across 30+ domains.

What it does

Given a sequence of past events, predicts:

  1. What happens next (291 event types)
  2. When it happens (inter-event time)
  3. How severe (0-1 severity score)

Domains trained on

Geopolitics (GDELT), earthquakes (USGS), sports (StatsBomb), commodities, cybersecurity, weather, clinical trials, logistics, financial markets, manufacturing, healthcare, e-commerce, energy grid, IT incidents, DeFi/blockchain, agriculture, construction, and more.

Architecture

  • Transformer Decoder (GPT-style)
  • d_model=256, n_layers=4, n_heads=8
  • 4.5M parameters
  • Continuous time encoding
  • Multi-task output (type + time + severity)

Usage

Training

  • 1.3M events from 30+ domains
  • 100 epochs on balanced dataset with domain tokens
  • Trained on AWS SageMaker (g5.xlarge)
  • Total training cost: ~

License

MIT

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