ChatGPT Last In Crypto Trading Race, Qwen3 Wins With 20x Bitcoin Long

Two Chinese artificial intelligence chatbots outperformed some of the worldโ€™s most advanced models, including OpenAIโ€™s ChatGPT, in an autonomous cryptocurrency trading competition that ended Tuesday.

Budget AI models QWEN3 MAX and DeepSeek finished first and second in the trading challenge, outpacing higher-profile and more expensive competitors.

QWEN3 was the only AI chatbot to generate positive returns, making a total profit of $751 at a 7.5% return rate, while all other AI bots ended the competition in the red, according to data aggregator CoinGlass.

AI models, crypto trading competition. Source: CoinGlass

OpenAIโ€™s ChatGPT brought up the rear with a 57% loss, reducing its initial investment of $10,000 to just $4,272 by the end of the competition.

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To win the trading competition, QWEN3 was running a 20x leveraged long position on Bitcoin (BTC), as the AI models only open positions as of Wednesday.

QWEN 3 initiated the leveraged bet when Bitcoin traded at $104,556 and stands to be liquidated if BTC falls below $100,630, CoinGlass data shows.

QWEN 3 crypto portfolio on Wednesday. Source: CoinGlass

Before the end of the competition, QWEN 3 had primarily maintained leveraged long positions on Bitcoin, Ether (ETH) and Dogecoin (DOGE).

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OpenAIโ€™s ChatGPT underperforms in crypto trading, despite a massive budget

The surprising results of the competition underscore that even the most heavily funded AI models still lack real-time capabilities in crypto trading.

ChatGPT came in last despite OpenAI spending $5.7 billion on research and development initiatives in the first half of 2025 alone, according to Reuters.

While QWEN3โ€™s budget was not public, the modelโ€™s training may have cost between $10 million and $20 million, according to estimates from machine learning engineer Aakarshit Srivastava.

DeepSeek took second place, despite being developed at a total training cost of $5.3 million, according to the modelโ€™s technical paper.

Alpha Arenaโ€™s competition began with $200 in starting capital for each bot, which was later increased to $10,000 per model, with trades executed on the decentralized exchange Hyperliquid.

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