Chinese tech giant Tencent's quarterly revenue rises 15%, fueled by AI - CNBC
<a href="https://news.google.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?oc=5" target="_blank">Chinese tech giant Tencent's quarterly revenue rises 15%, fueled by AI</a> <font color="#6f6f6f">CNBC</font>
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