AMD CEO Lisa Su said AI isn’t decreasing hiring at AMD — however it’s reshaping which candidates take the lead.
Speaking Tuesday from CES in Las Vegas, Su told CNBC’s Jon Fortt that AMD continues to add headcount as it increase its product roadmap and scales to fulfill demand for AI compute. “I could say that we’re in-fact not hiring limited people,” Su said. “Honestly, we’re developing very considerably as a corporation, so we simply are hiring lots of people , but we’re hiring different people. We’re hiring those who are AI forward.”
That distinction matters for job seekers throughout engineering, data, and product roles. Su’s message suggests the baseline expectations are transferring: it’s not enough to be adjacent to AI. Candidates who can apply AI tools and workflows directly — in their day by day work, now not simply in theory— are much more likely to stand out.
AI As A Productivity Multiplier, Not A Headcount Strategy
Su placed AI as an augmentation layer throughout AMD’s internal methods, which include how the corporation builds, designs, productions, and tests chips. In her framing, AI rises the pace of execution and the breadth of what teams can supply. “I could say that AI is strengthening our capabilities,” she stated. “It’s now not changing people, it’s really just strengthening our productivity in phrases of the quantity of products we will bring up at any given time.”
For data professionals, the subtext is simple: corporations endorsing AI at scale will still hire, but they’ll prioritize folks that can flip AI into measurable throughput — faster iteration cycles, stronger validation, better automation, and clearer decision guide.
Competitive Pressure Increases The Bar
AMD’s hiring posture sits inside a highly competitive AI hardware market.. AMD creates GPUs used to train models and run massive AI workloads, setting it in direct contention with Nvidia, which stays the dominant player in data center GPUs and AI accelerators by many industry estimates.
In that environment, “AI-forward” hiring signals a practical requirement: corporations fighting for AI infrastructure share can’t afford slow execution. They require skills that may use AI-supported development, testing out, and analytics to compress timelines and improve reliability at scale.
A Different View Than The Fed
Su’s stance also contrasts with latest comments from Minneapolis Federal Reserve President Neel Kashkari, who said that AI-driven productivity gains are foremost some huge corporation to gradual their hiring. Kashkari defined a “low hiring and low firing” dynamic that could persist as corporation incorporate AI into operations.
Taken collectively, the two perspectives assists a split labor-market reality: some corporations might also keep hiring consistent or gradual it. In evaluation, others continue to develop— but across both camps, the selection standards increasingly reward candidates who embrace AI and might display effect.
What “AI-Forward” Likely Means For Candidates
Su did no longer reduce “AI-forward” to a single skill, but the implication for data scientists, analysts, and engineers is clear: employers want applied capability. That could consist of the use of AI tools to speed up coding and debugging, automate routine analysis, improve documentation, assist experiment tracking, or make stronger testing out and evaluation workflows.
AI may not replace maximum roles outright in the near term. But it’s already changing who gets hired.












