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2026-04-02T00:00:00
2026-04-02T21:10:43.624Z
{ "uncertainty": 22, "geopolitical": 62, "momentum": 0.06 }
[ { "symbol": "SPY", "price": 655.13, "changePct": 0.81 }, { "symbol": "VIXY", "price": 33.54, "changePct": -1.84 }, { "symbol": "TLT", "price": 86.45, "changePct": -0.18 }, { "symbol": "GLD", "price": 436.88, "changePct": 1.82 }, { "symbol": "USO", ...
[ { "name": "Geopolitical", "movers": [ { "title": "Will China invade Taiwan by end of 2026?", "ticker": "0xd9fb1184af0064e5e3", "price": 10, "delta": 0, "volume": 359444.58327400027, "venue": "polymarket", "isAnchor": true }, { ...
[ { "title": "Will the 7-day moving average of daily vessel transit calls ", "edge": 85, "direction": "no", "price": 100 }, { "title": "Will the 7-day moving average of daily vessel transit calls ", "edge": 82, "direction": "no", "price": 97 }, { "title": "Which countries w...
[ { "description": "Energy sector split: some contracts rising while others falling" }, { "description": "Stocks and gold both up (SPY +0.81%, GLD +1.82%) — unusual risk-on + haven bid" }, { "description": "Equity-oil divergence: SPY +0.81% vs Oil -2.7%" } ]
# World State — 2026-04-02T21:06 UTC SF Index: Uncertainty 22/100 | Geopolitical Risk 62/100 | Momentum +0.06 Markets: SPY $655.13 (+0.81%) | VIXY $33.54 (-1.84%) | TLT $86.45 (-0.18%) | GLD $436.88 (+1.82%) | USO $123.39 (-2.7%) ## Geopolitical - Will China invade Taiwan by end of 2026?: 10c [polymarket] - Putin ou...
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World State Daily Snapshots

Daily snapshots of the world's state as measured by prediction markets. Each snapshot contains calibrated probabilities for geopolitics, economy, energy, elections, crypto, and tech — derived from 9,706 contracts on Kalshi (CFTC-regulated) and Polymarket.

Why This Dataset Exists

LLMs have a knowledge cutoff. This dataset provides ground truth for what the world looked like on any given day — not from news (narratives) or surveys (opinions), but from prediction markets where participants risk real money. Get it wrong, lose money.

Use cases:

  • Agent evaluation: Test whether your agent can accurately answer "what's the recession probability?" on a given date
  • Training data: Fine-tune models with calibrated world state data
  • Research: Analyze how prediction market probabilities evolve over time
  • Backtesting: Validate agent decisions against historical world state

Schema

Each daily JSON file contains:

{
  "date": "2026-04-02",
  "timestamp": "2026-04-02T20:56:00Z",
  "index": {
    "uncertainty": 22,
    "geopolitical": 62,
    "momentum": 0.06
  },
  "traditional": [
    {"symbol": "SPY", "price": 655.13, "changePct": 0.81}
  ],
  "topics": [
    {
      "name": "Geopolitical",
      "movers": [
        {"title": "Iran invasion probability", "price": 53, "delta": 5, "volume": 225000, "venue": "kalshi"}
      ]
    }
  ],
  "topEdges": [
    {"title": "Market X", "edge": 15, "direction": "yes", "price": 35}
  ],
  "divergences": [
    {"description": "Stocks and gold both up — unusual risk-on + haven bid"}
  ],
  "markdown": "# World State — ...",
  "markdownTokenEstimate": 667
}

Fields

Field Description
index.uncertainty Market uncertainty (0-100), derived from orderbook spreads
index.geopolitical Geopolitical risk (0-100), from geo-related market velocity
index.momentum Directional market bias (-1 to +1)
traditional SPY, VIX, TLT, GLD, USO prices and daily change
topics 6 categories with anchor contracts and significant movers
topEdges Largest mispricings detected by thesis models
divergences Cross-market anomalies (e.g., stocks and gold both rising)
markdown Raw markdown output (~800 tokens, ready for LLM injection)

Data Source

SimpleFunctions — aggregates 9,706 prediction market contracts from Kalshi (CFTC-regulated) and Polymarket. Updated every 15 minutes. The daily snapshot captures the final state of each day.

Live API

For real-time data (not just daily snapshots):

pip install simplefunctions-ai

from simplefunctions import world, delta
print(world())           # current state (~800 tokens)
print(delta(since="1h")) # what changed (~30-50 tokens)

Citation

@dataset{simplefunctions_world_state_2026,
  title={World State Daily Snapshots: Calibrated Probabilities from Prediction Markets},
  author={SimpleFunctions},
  year={2026},
  url={https://huggingface.co/datasets/SimpleFunctions/world-state-daily},
  note={Daily snapshots from 9,706 prediction markets on Kalshi and Polymarket}
}

License

MIT

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