Oklahoma City score over 104.5 points
Oklahoma City over 104.5 points scored is priced at 65¢ on Kalshi. Current book: 65¢ bid, 66¢ ask, 1¢ spread. This outcome ranks #7 of 16 inside KXNBATEAMTOTAL-26MAY28OKCSAS.
Price history
65¢ current
+13¢Contract brief
If the number of points scored by Oklahoma City in the Oklahoma City vs San Antonio professional basketball game originally scheduled for May 28, 2026 is above 104.5, then the market resolves to Yes.
Outcome
Oklahoma City over 104.5 points scored
Rank
#7 of 16
Leader
San Antonio over 97.5 points scored 91¢
Range
18¢-91¢
Family volume
$17K
Identifier
KXNBATEAMTOTAL-26MAY28OKCSAS-OKC104
May 28, 2026, 2:38 AM UTC · 3m ago
Implied probability
Bid
65¢
Ask
66¢
Spread
1¢
24h volume
$435
Family rank
#7 of 16
16 outcomes · KXNBATEAMTOTAL-26MAY28OKCSAS
Closes
Jun 12, 2026
Family volume
$17K
Orderbook snapshot
65 / 66¢
Contract terms
What resolves this market.
YES condition
If the number of points scored by Oklahoma City in the Oklahoma City vs San Antonio professional basketball game originally scheduled for May 28, 2026 is above 104.5, then the market resolves to Yes.
Venue
Kalshi
Closes
Jun 12, 2026
Identifier
KXNBATEAMTOTAL-26MAY28OKCSAS-OKC104
Event family
KXNBATEAMTOTAL-26MAY28OKCSAS.
The same race as a probability stack: rank, volume, and where this contract sits against the other outcomes.
Total volume
$17K
Outcomes
16
Highest price
San Antonio over 97.5 points scored 91¢
Current share
3%
San Antonio over 97.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS97
Oklahoma City over 95.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-OKC95
San Antonio over 103.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS103
Oklahoma City over 101.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-OKC101
San Antonio over 100.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS100
San Antonio over 106.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS106
Oklahoma City over 104.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-OKC104
San Antonio over 109.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS109
Oklahoma City over 107.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-OKC107
San Antonio over 112.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS112
Oklahoma City over 110.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-OKC110
San Antonio over 115.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS115
Oklahoma City over 113.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-OKC113
San Antonio over 118.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS118
Oklahoma City over 116.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-OKC116
San Antonio over 121.5 points scored
kalshi · KXNBATEAMTOTAL-26MAY28OKCSAS-SAS121
Browse this series
Indicators
Yield, cliff risk, volatility, and regime.
Regime
neutral
Score
0.5
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How we compute these odds
SimpleFunctions aggregates live prediction-market contracts from Kalshi and Polymarket. Each slug groups contracts that resolve on the same underlying event, identified by venue event_id.
For binary slugs, the headline probability is the liquidity-weighted mid-price across all bound contracts. For multi-outcome slugs (e.g. elections with 3+ candidates), the headline is the leader’s price; we never arithmetically average disjoint outcomes — that would produce a number with no real-world meaning.
Snapshots refresh every 5 minutes during market hours; daily aggregates are computed at 04:00 UTC. The 30-day sparkline is drawn from per-ticker daily means stored in market_indicator_daily; 24h delta and movement events are derived from the same source.