Dallas vs Indiana
This contract is priced at 56¢ on Kalshi. Current book: 35¢ bid, 56¢ ask, 21¢ spread.
Implied probability
Event outcomes
1
Family volume
$854
Best sibling
—
Ticker
KXWNBATOTAL-26MAY09DALIND-180
Market snapshot
Dallas vs Indiana in market context.
This page tracks the Kalshi contract for Dallas vs Indiana. The displayed quote is 56¢ from the latest venue quote. The cached market record reports 24h volume of $849. It is currently represented as a standalone prediction-market contract. The indicator bundle was refreshed May 9, 2026, 7:36 AM UTC.
Outcome
Dallas vs Indiana
Family rank
—
Venue
Kalshi
Current quote
56¢
Quote source
Latest venue quote
Timing
Listed until May 23, 2026
24h volume
$849
Family context
Standalone contract
Quote range
—
Family leader
—
Last updated
May 9, 2026, 7:36 AM UTC · 0m ago
Venue identifier: KXWNBATOTAL-26MAY09DALIND-180. Family volume: $854.
Price history
56¢ current
+54¢Orderbook snapshot
35 / 56¢
Contract terms
Resolution, venue, and identifiers.
Resolution rules
If the teams in the Dallas vs Indiana women's professional basketball game originally scheduled for May 9, 2026 collectively score more than 179.5 points, then the market resolves to Yes.
Venue
Kalshi
Closes
May 23, 2026
Identifier
KXWNBATOTAL-26MAY09DALIND-180
Event family
This market.
This view keeps the individual contract next to its sibling outcomes. For long-tail search traffic, this is the useful context: where the current price sits inside the event, how much volume exists around the family, and which outcomes have actual depth.
Total volume
$854
Outcomes
1
Highest price
Dallas vs Indiana 56¢
Current share
100%
Dallas vs Indiana
kalshi · KXWNBATOTAL-26MAY09DALIND-180
Indicators
Yield, cliff risk, volatility, and regime.
Regime
neutral
Score
0.5
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