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Amazon Plans $200 Billion Capex Push In 2026 As AI Demand Drives AWS Growth

Amazon Plans $200 Billion Capex Push In 2026 As AI Demand Drives AWS Growth

Bengaluru, 13 Apr, (CXO Media): Amazon plans to sharply increase capital spending in 2026.

Amazon AI And Cloud Investment Strategy

Amazon is preparing to invest about $200 billion in capital expenditure in 2026, signalling a major expansion of its artificial intelligence and cloud infrastructure. A large share of this spending is expected to support the continued growth of Amazon Web Services (AWS), where AI-driven services are contributing significantly to revenue expansion. AWS reported that revenue linked to artificial intelligence workloads has crossed a $15 billion annualised run rate in early 2026, reflecting rising enterprise demand for computing capacity.

Custom Chips And Infrastructure Expansion

The company is also accelerating the rollout of its in-house semiconductor technologies, particularly its Trainium chips designed for machine learning workloads. These chips are being adopted to reduce reliance on third-party processors and to manage the increasing cost of AI model training. At the same time, Amazon continues to expand data centre capacity to support large-scale AI deployments and enterprise cloud adoption across regions.

Competition And Internal AI Development

Amazon is strengthening its internal use of artificial intelligence across products and development processes. The company is using AI tools to speed up software development cycles and to enhance consumer-facing technologies such as Amazon Alexa. These moves come as other AI developers, including OpenAI and Anthropic, continue to scale their infrastructure and model capabilities, intensifying competition across the AI ecosystem.

The scale of planned spending reflects the growing infrastructure requirements of generative AI and enterprise cloud adoption, as technology companies compete to build capacity capable of handling increasingly complex AI workloads.

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