OKX (OKEx) TORN Recharge Event Winners Announced: Tesla and iPhone12 Recipients Revealed

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Final Winner Announcement

We are pleased to announce the official winners of OKX's "Recharge TORN, Win a Tesla" campaign. Congratulations to all recipients!

Tesla Model Y Winner:

iPhone12 Winners:

  1. 1581*4944
  2. 1182*2432
  3. 1755*7008
  4. 1488*5632
  5. 6263*3744
  6. 5370*0432
  7. 1450*6992
  8. 2476*4928
  9. 5661*9456
  10. 8544*2976

Action Required:
Winners must submit their complete account UID information via the official claim form within 5 business days to receive their rewards.

👉 Claim your Tesla or iPhone12 reward here


Event Rules Recap

Campaign 1: Recharge TORN, Win a Tesla & iPhones

  1. Tesla Model Y Giveaway:

    • During the first 48 hours after TORN recharge opened on OKX, if the total chain-based TORN recharge volume reached $8.88 million USD equivalent, one random eligible user was awarded a Tesla Model Y.
  2. iPhone12 Giveaway:

    • For every $300,000 USD equivalent in TORN recharged within the same 48-hour window, one iPhone12 was awarded (10 total).
    • Participation was automatic upon TORN deposit to OKX.

Campaign 2: Order Book Mining – Share 100% Fee Rewards


FAQ

Q1: How were winners selected?

A: Winners were randomly chosen from eligible users who recharged TORN to OKX during the campaign period, verified via blockchain records.

Q2: What if I miss the 5-day claim window?

A: Unclaimed rewards will be forfeited. Ensure timely submission to avoid disqualification.

Q3: Can I participate if I didn’t recharge TORN during the event?

A: No. Only users who deposited TORN within the specified 48-hour window were eligible.

👉 Explore ongoing OKX campaigns for new opportunities


Note: All rewards are subject to OKX’s terms and conditions. For transparency, refer to the official OKX announcement for additional details.


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