Technology Report
AI’s Trillion-Dollar Opportunity
AI’s Trillion-Dollar Opportunity
The market for AI products and services could reach between $780 billion and $990 billion by 2027.
- min read
- Summarize with Generative AI
Technology Report
The market for AI products and services could reach between $780 billion and $990 billion by 2027.
This article is part of Bain's 2024 Technology Report.
The pace of technological change has never been faster, and senior executives are looking to understand how these disruptions will reshape the sector. Generative AI is the prime mover of the current wave of change, but it is complicated by post-globalization shifts and the need to adapt business processes to deliver value.
Accelerated market growth. Nvidia’s CEO, Jensen Huang, summed up the potential in the company’s Q3 2024 earnings call: “Generative AI is the largest TAM [total addressable market] expansion of software and hardware that we’ve seen in several decades.” Bain estimates that the total addressable market for AI-related hardware and software will grow between 40% and 55% annually for at least the next three years, reaching between $780 billion and $990 billion by 2027 (see Figure 1). Fluctuations in supply and demand will create volatility along the way, but a long-term, durable trajectory seems like it is here to stay.
Three centers of innovation. So far, the largest cloud service providers (CSPs), or hyperscalers, have led the market in R&D spending, talent deployed, and innovation. They’ll continue to lead but will look for more innovation from the next tier of CSPs, software-as-a-service providers, sovereigns, and enterprise as well as independent software vendors to fuel the next wave of growth.
Disrupted industry structure with more verticalization. The AI workload is challenging and will continue to grow (see Figure 2). The underlying matrix algebra and data-heavy computation strains parallelism, memory and system bandwidth, networking, infrastructure, and application software. Technology vendors are responding by optimizing the technology stack vertically to deliver more efficiencies. For example, most hyperscalers have developed their own silicon for training and inference, like Amazon’s Trainium and Graviton, Google’s TPU, or Meta’s MTIA. Nvidia has expanded its “unit of compute” beyond the GPU alone, now integrated with fabrics, hybrid memory, DGX, and cloud offerings. Nvidia is also enhancing its software stack and offering hosted services, providing tailored solutions that leverage its hardware and create a more efficient ecosystem for developers and users. Apple is developing its own on-device LLM and already has its own silicon.
Other segment-specific disruptions include:
AI’s disruptive growth will continue to reshape the tech sector, as innovation spreads beyond the hyperscalers (where it is centered today) to smaller CSPs, enterprises, sovereigns, software vendors, and beyond. Bigger models will continue to push the boundaries, while smaller models will create new, more focused opportunities in specific verticals and domains. AI’s workload demands will also spark innovation in storage, compute, memory, and data centers. As the market becomes more competitive and complex, companies will need to adapt rapidly to capture their share of this potential trillion-dollar market.