AMD’s Strategic AI Expansion Plans

AMD is doubling down on Artificial Intelligence with plans for new chips and software division.

Advanced Micro Devices, Inc. (AMD) is making a strategic pivot towards Artificial Intelligence, with a significant commitment to innovation in this space. Led by CEO Lisa Su, the company plans to introduce new AI chips annually, aiming to stand out in a competitive market currently dominated by Nvidia. This ambitious roadmap underscores AMD’s determination to carve out a substantial share in the rapidly growing AI industry.

Apart from hardware advancements, AMD is branching into software, which has been a stronghold for its rival. This move includes building a software division tailored to complement its AI hardware offerings, potentially boosting the company’s market position. By integrating hardware and software solutions, AMD aims to provide a more comprehensive and efficient AI toolkit for developers and businesses.

This strategic effort reflects AMD’s broader initiative to expand beyond its traditional products, which have primarily focused on computer processors and graphics cards. By diversifying into AI, AMD not only broadens its product portfolio but also positions itself as a more versatile player in the semiconductor industry. As the AI market continues to explode, AMD’s focused efforts could lead to significant advancements in technology and competitive dynamics in this field.

65

Impact Score

Capgemini sees 2026 as turning point for artificial intelligence in retail

Capgemini executives argue that retailers and financial services firms must move from experimental artificial intelligence pilots to measurable, strategic deployments by 2026, a shift they describe as the “Year of Truth for AI.” They highlight agentic artificial intelligence, cloud strategy, and proactive cybersecurity as decisive factors for competitiveness.

How China built a semiconductor push to rival western Artificial Intelligence leadership

China has developed a state-backed initiative to close the gap with western semiconductor and Artificial Intelligence leaders, channeling extensive resources, political backing, and industrial coordination into what officials liken to a new Manhattan Project. The effort spans advanced chips, lithography tools, and domestic ecosystems designed to blunt foreign export controls and reduce reliance on companies like Nvidia and TSMC.

How to deploy large language models on iOS and Android with Executorch

Unsloth and Executorch provide a workflow to fine tune large language models with quantization aware training and run them locally on iOS and Android devices, including Qwen3 models on recent flagship phones. The tutorial walks through model training, export to .pte, and end to end deployment on both iPhone and Android with detailed tooling setup and file transfer steps.

Contact Us

Got questions? Use the form to contact us.

Contact Form

Clicking next sends a verification code to your email. After verifying, you can enter your message.