Will Kathryn Newton perform as Cassie Lang in Avengers: Doomsday?
This contract is priced at 84¢ on Kalshi. Current book: 84¢ bid, 99¢ ask, 15¢ spread.
Implied probability
Event outcomes
16
Family volume
$2K
Best sibling
Hugh Jackman as Wolverine? 72¢
Ticker
KXROLEINPRODUCTIONDOOMSDAY-KET
Market snapshot
Kathryn Newton as Cassie Lang? in market context.
This page tracks the Kalshi contract for Will Kathryn Newton perform as Cassie Lang in Avengers: Doomsday?. The displayed quote is 84¢ from the latest venue quote. The cached market record reports 24h volume of $6. In the KXROLEINPRODUCTIONDOOMSDAY family, this outcome ranks #1 of 16 by current quote across 16 sibling outcomes. The indicator bundle was refreshed May 9, 2026, 9:53 AM UTC.
Outcome
Kathryn Newton as Cassie Lang?
Family rank
#1 of 16
Venue
Kalshi
Current quote
84¢
Quote source
Latest venue quote
Timing
Listed until Jan 1, 2028
24h volume
$6
Family context
16 outcomes · KXROLEINPRODUCTIONDOOMSDAY
Quote range
17¢-84¢
Family leader
Kathryn Newton as Cassie Lang? 84¢
Last updated
May 9, 2026, 9:53 AM UTC · 3m ago
Venue identifier: KXROLEINPRODUCTIONDOOMSDAY-KET. Family volume: $2K.
Price history
84¢ current
+33¢Orderbook snapshot
84 / 99¢
Contract terms
Resolution, venue, and identifiers.
Resolution rules
If Kathryn Newton performs / is announced as Cassie Lang in Avengers: Doomsday, then the market resolves to Yes.
Venue
Kalshi
Closes
Jan 1, 2028
Identifier
KXROLEINPRODUCTIONDOOMSDAY-KET
Event family
KXROLEINPRODUCTIONDOOMSDAY.
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
$2K
Outcomes
16
Highest price
Kathryn Newton as Cassie Lang? 84¢
Current share
0%
Kathryn Newton as Cassie Lang?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-KET
Hugh Jackman as Wolverine?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-HUG
Tom Holland as Spider-Man?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-TOM
Don Cheadle as James Rhodes / War Machine?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-DON
Jon Favreau as Happy Hogan?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-JONF
Evangeline Lilly as the Wasp?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-EVA
Tobey Maguire as Spider-Man?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-TOB
Mark Ruffalo as Hulk?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-MAR
Hailee Steinfeld as Kate Bishop?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-HAI
Benedict Cumberbatch as Doctor Strange?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-BEN
Teyonah Parris as Monica Rambeau?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-TEY
Brie Larson as Captain Marvel?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-BRI
Jonathan Majors as Kang?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-JON
Halle Berry as Storm?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-HAL
Benedict Wong as Wong?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-BENE
Andrew Garfield as Spider-Man?
kalshi · KXROLEINPRODUCTIONDOOMSDAY-AND
Indicators
Yield, cliff risk, volatility, and regime.
Regime
neutral
Score
0.5
Full indicator table
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SimpleFunctions context
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Prediction Market Index
Market-wide volatility, geo risk, breadth, and activity around this contract.
Market Screener
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Event Probability API
Read 84% as a structured event probability object for agents and apps.
Realtime Data API
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World State API
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