The first wave of artificial intelligence (AI) undoubtedly created some millionaires, but it was pretty concentrated in a few stocks. Nvidia was far and away the biggest winner, as its graphics processing units (GPUs) became the de facto chips for AI model training. With a 90% market share, it dominated the hardware space.
However, the market is shifting toward inference and agentic AI. Nvidia doesn’t have nearly as wide a moat in these areas, so there likely will be more opportunities for more AI millionaires, as the second phase of AI looks like it will be much more broad based.
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Let’s look at three AI stocks to own for the second phase of AI.
AMD: An inference and agentic AI winner
Advanced Micro Devices (NASDAQ: AMD) is one of the companies in the best position for the age of inference and AI agents. It had long found a niche with its GPUs for inference, and its modular chiplet design, which allows for more memory capacity, positions it well in this area. Meanwhile, it has partnerships and large commitments from OpenAI and Meta Platforms for its next generation of GPUs for inference, which should drive strong growth in the coming years.
Equally exciting, though, is the company’s opportunity in the data center central processing unit (CPU) market. With the rise of agentic AI, the ratio of GPUs to CPUs in AI servers is expected to move from 8:1 to 1:1. AMD is already the leader in this space, and with demand expected to outpace supply, it has a huge growth opportunity in front of it.
Meanwhile, following its acquisition of ZT Systems, it can now offer complete AI racks designed specifically for tasks such as inference or agentic AI, opening up another growth driver for the company.
Broadcom: The custom chip winner
As the market moves more toward inference, more and more hyperscalers (owners of large data centers) are looking to turn to custom AI ASICs (application-specific integrated circuits) to save costs. AI ASICs are custom chips that are hardwired for a specific purpose, and as such, they tend not only to have high performance, but they also tend to be more energy efficient. And, as the leader in ASIC technology, hyperscalers are increasingly turning to Broadcom (NASDAQ: AVGO) for help developing these chips.
Broadcom helped co-develop Alphabet‘s highly successful tensor processing units (TPUs), and it continues to profit from Alphabet’s deployment of these chips, as well as the company beginning to let some of its largest customers directly place orders with Broadcom. This includes Anthropic, which has already placed a $21 billion order for this year and has made commitments for more chips in the future. Meanwhile, other hyperscalers are also beginning to ramp up production of their own custom chips.