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PC AI Takes Center Stage At Intel Innovation, but It Is Not Alone in the On-Device-Market |
NEWS |
Existing Artificial Intelligence (AI), especially generative AI, was born in and still functions mainly in the cloud. There are multiple reasons for this: massive compute power needed for training and inferencing, especially with the advent of billion to trillion parameter language models; size of memory necessary to support huge models and datasets; and power consumption far exceeds the capabilities of edge environments or devices. But from an end-user perspective, the edge or device makes more sense for AI deployment as it reduces latency, eliminates networking costs, improves data security, and reduces cloud lock-in, and most importantly, ensures that user data are protected. Silicon dealing with edge AI inference has already shown significant growth with computer vision and graph-based AI models increasingly being deployed at the edge and in some devices (e.g., smartphones), but Personal Computers (PCs) have, until now, been largely untouched.
This is changing. At Intel Innovation, Intel Chief Executive Officer (CEO) Pat Gelsinger’s most exciting announcement centered on AI PCs. He announced that by 2024, Intel’s new core processor, Meteor Lake (aka Core Ultra) would be deployed on laptops and PCs to support on-device AI inferencing. Meteor Lake processors are innovative chiplets with a tailed architecture, including a core performance Central Processing Unit (CPU), a Graphics Processing Unit (GPU), an Input/Output (I/O) interface, and Intel’s first-ever Neural Processing Unit (NPU) for handling typical AI inference workloads. More advanced workloads, including generative AI may be handled by the combination of the CPU, GPU, and the NPU, depending on the use case. This move underpins Intel’s wider strategy to regain primacy in the PC/laptop hardware market and shift commercial exposure away from the (NVIDIA dominated) AI data center market. As part of Intel’s showcase, it demonstrated use cases across modalities using Stable Diffusion and Llama 2, as well as simpler data analytics AI algorithms.
Intel’s decision to extend Meteor Lake to the PC looks like a good decision. It will spur further innovation within its software ecosystem, especially focused on productivity-related AI tools, which improve their position in the wider AI ecosystem. In addition, its “chiplet” approach will be received well by Original Equipment Manufacturers (OEMs). It will offer a more flexible and custom approach to the short AI innovation cycle. It will also save significant energy by improving management of applications and hardware resources, also improving PC battery life. The PC market needs a shot in the arm and Intel’s AI deployment may offer just that.
But Intel is not the only vendor looking to build on-device AI. Qualcomm has unsurprisingly been bullish on this opportunity with a strong partnership with Meta. Announcements have been flowing all year, starting with the deployment of Meta’s Llama 2 on Android devices leveraging the Snapdragon platform. Recently, it extended its partnership with Meta to provide AI hardware for Quest 3 and Meta’s new Ray-Bans. AMD has also been active in this market, targeting laptops with Ryzen AI hardware (dedicated AI processing silicon on x86), alongside Radeon software to support accessibility.
Hardware Is Just the Start of the Story; Software Is the Next Chapter |
IMPACT |
With Intel, Qualcomm, and AMD making waves in the on-device AI market, plenty is still needed on the software side to complete the circle. Three problems stick out when we look at deploying AI inferencing (and potentially training) on devices: 1) AI power consumption; 2) growing memory requirements for large models; and 3) inefficient and ineffective distributed training and fine-tuning methods. ABI Research has identified several ways that software innovation can begin to solve these challenges and accelerate on-device AI’s viability:
Qualcomm has already been very actively supporting software advances. Its announcement with Meta was just the start. It has also demonstrated how Stable Diffusion can be deployed on smartphones and recently partnered with Microsoft to scale AI capabilities on devices across consumer, enterprise, and industrial domains. This is particularly interesting given Microsoft’s recent activity embedding Copilot across its suite of productivity tools. Intel has demonstrated generative AI models via its new PC AI, but it remains unclear if it is partnering with or simply using in-house generative models.
Commercial Success Is the Conclusion, but It Will Be Tough to Achieve |
RECOMMENDATIONS |
Completing the technological circle with deep software innovation will not be sufficient to make on-device AI targeted at laptops/PCs or consumer devices (like Augmented Reality (AR)/Virtual Reality (VR) headsets) a commercial success. Development costs will be extraordinarily high, but with highly elastic demand in the device market, these R&D costs cannot be fully pushed onto the consumer through an increased Average Selling Price (ASP) without a clear Return on Investment (ROI). On top of this, both markets have shown market saturation as technology refresh cycles in the Business-to-Business (B2B) and Business-to-Consumer (B2C) markets continue to lengthen. To overcome these market inhibitors, vendors should focus on proving ROI, which relies on software to build a “productivity-led” value proposition:
For Intel, Qualcomm, AMD, and other vendors looking to build out this market space, one question will keep being asked: will NVIDIA turn its attention to this market? ABI Research’s answer is yes. NVIDIA not only has the hardware, but it also has AI models capable of running at the device level. In addition, its DGX Cloud walled garden already boasts plenty of developers creating applications and it has started to build out partnerships with ISVs (most notably, its partnership with Hugging Face, enabling and on-boarding developers onto its platform). On top of this, NVIDIA has experience at the device level and a dominant position in the all-important gaming market. All in all, NVIDIA could make a very strong play in this market, and competitors should be wary.