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California Lottery Powerball, Daily 3 Midday winning numbers for May 31, 2025

California Lottery Powerball, Daily 3 Midday winning numbers for May 31, 2025

Yahoo4 days ago

The California Lottery offers multiple draw games for those aiming to win big. Here's a look at May 31, 2025, results for each game:
01-29-37-56-68, Powerball: 13, Power Play: 2
Check Powerball payouts and previous drawings here.
Midday: 1-6-1
Evening: 0-9-4
Check Daily 3 payouts and previous drawings here.
1st:10 Solid Gold-2nd:12 Lucky Charms-3rd:3 Hot Shot, Race Time: 1:40.33
Check Daily Derby payouts and previous drawings here.
20-23-27-34-38
Check Fantasy 5 payouts and previous drawings here.
7-0-2-6
Check Daily 4 payouts and previous drawings here.
03-14-29-33-47, Mega Ball: 17
Check SuperLotto Plus payouts and previous drawings here.
Feeling lucky? Explore the latest lottery news & results
This results page was generated automatically using information from TinBu and a template written and reviewed by a Desert Sun producer. You can send feedback using this form.
This article originally appeared on Palm Springs Desert Sun: California Lottery Powerball, Daily 3 Midday winning numbers for May 31, 2025

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The real data revolution hasn't happened yet
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