yes Kevin Durant: 20+,no Milwaukee wins by over 19.5 points,no Atlanta wins by over 16.5 points,no San Antonio wins by over 27.5 points,no Charlotte wins by over 13.5 points,no Portland wins by over 11.5 points,no Utah wins by over 13.5 points,no Miami wins by over 26.5 points,no Houston wins by over 19.5 points,no Boston wins by over 26.5 points,no Denver wins by over 20.5 points,no Orlando wins by over 23.5 points,no Philadelphia wins by over 21.5 points,no New York wins by over 15.5 points,yes Over 219.5 points scored,yes Over 211.5 points scored,yes Over 219.5 points scored,yes Over 204.5 points scored
What do these odds mean?
Cross-platform data for yes Kevin Durant: 20+,no Milwaukee wins by over 19.5 points,no Atlanta wins by over 16.5 points,no San Antonio wins by over 27.5 points,no Charlotte wins by over 13.5 points,no Portland wins by over 11.5 points,no Utah wins by over 13.5 points,no Miami wins by over 26.5 points,no Houston wins by over 19.5 points,no Boston wins by over 26.5 points,no Denver wins by over 20.5 points,no Orlando wins by over 23.5 points,no Philadelphia wins by over 21.5 points,no New York wins by over 15.5 points,yes Over 219.5 points scored,yes Over 211.5 points scored,yes Over 219.5 points scored,yes Over 204.5 points scored is still being collected.
How to read cross-platform spreads
When two platforms price the same event meaningfully differently, it usually means one of three things: liquidity is thin on one side, fee structures are pushing a spread, or traders on one platform have information the other lacks. Spreads larger than 5 percentage points on events with over $50K in volume often resolve toward the higher-volume platform's price.
About this data
Beeks.ai aggregates prediction market data from Polymarket, Kalshi, and Manifold. Updates run every minute. Consensus probability is a volume-weighted average across all matched markets. Historical snapshots are stored for calibration analysis.
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