Global M&A hits $2.6T boosted by AI and quest for growth

Hacker News - AI
Aug 4, 2025 18:14
andrew_lastmile
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Summary

Global mergers and acquisitions (M&A) have reached $2.6 trillion year-to-date, driven in part by companies seeking growth opportunities through artificial intelligence. The surge highlights AI's growing influence as a catalyst for major business deals, signaling its central role in shaping future corporate strategies and investments.

Article URL: https://www.reuters.com/business/finance/global-ma-hits-26-trillion-peak-year-to-date-boosted-by-ai-quest-growth-2025-08-04/ Comments URL: https://news.ycombinator.com/item?id=44789533 Points: 2 # Comments: 0

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