Microsoft Cancels AI Data Center Leases Amid Demand Concerns
Microsoft has started canceling leases for a significant amount of data center capacity in the United States, according to Bloomberg. This move is seen as a reflection of concerns over whether the company is building more AI computing infrastructure than necessary in the long term.
The company, which has pledged $80 billion towards computing capacity this fiscal year, has voided leases totaling "a couple of hundred megawatts" of capacity. Additionally, Microsoft has stopped converting statements of qualifications into formal leases, a tactic previously used by rivals like Meta Platforms when reducing capital spending.
TD Cowen analysts suggest that Microsoft's actions may indicate a potential oversupply position, as the company reallocates a portion of its planned international spending to the US. Despite these adjustments, Microsoft reiterated its commitment to the $80 billion spending target, stating that it will continue to grow strongly in all regions.
The cancellation of these leases has also impacted European stocks tied to the energy sector, with companies like Schneider Electric SE and Siemens Energy AG experiencing significant drops. This development raises questions about the future demand for AI infrastructure and Microsoft's strategic direction in the AI space.
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