India needs homegrown foundational AI models to avoid US-China gap: Bernstein
Synopsis
Key Takeaways
India must develop its own foundational artificial intelligence (AI) models to avoid falling critically behind the United States and China, according to a new report by global brokerage Bernstein released on 22 June. The report urges Indian policymakers to prioritise domestic large language model (LLM) development, warning that geopolitical forces — not market dynamics — now govern access to frontier AI.
The Geopolitical Risk to AI Access
The Bernstein report points to a concrete recent example: Anthropic's frontier AI models were restricted for non-US citizens, demonstrating that access to cutting-edge AI systems cannot be assumed. The brokerage warns that if India continues on its current path, Indian firms could find themselves operating with systems 'one or two generations' behind those available to competitors in the US and China.
Even companies with deep engineering talent would struggle to build competitive products if they are forced to rely on older AI architectures while global rivals access the latest systems. 'AI is the next fighter jet,' Bernstein stated, framing advanced LLMs as strategic national assets rather than commercially available software.
A Historical Pattern India Cannot Afford to Repeat
Bernstein draws a direct parallel between frontier AI and technologies such as nuclear energy, defence systems, and semiconductors — all of which saw access shaped by geopolitics rather than open markets. The report argues that India risks ceding control over a critical layer of future technology if it focuses solely on AI application development while depending on foreign foundational models. According to the brokerage, the country's AI future cannot be built on 'borrowed models.'
This comes amid a broader global race in which the US and China are investing heavily in sovereign AI infrastructure, while India has so far concentrated on services-layer and application-level development.
Why India Fell Behind on Foundational Platforms
The report attributes India's lag in foundational AI to its historical technology ecosystem, which was driven by IT services rather than consumer internet platforms. Unlike the US or China, India did not develop large proprietary datasets at scale — a prerequisite for training frontier models. This gap, the report notes, led policymakers and industry leaders to argue that India should focus on AI applications rather than foundational development.
Notably, foundational models require massive, domain-specific proprietary datasets to achieve competitive performance — something India's services-oriented tech industry has not historically generated at the required scale.
Where India Can Build an Advantage
Despite the structural challenge, Bernstein identifies a viable path forward. India can develop specialised, domain-specific LLMs using proprietary datasets in high-value sectors including healthcare, industrials, and defence. These verticals offer India both unique data assets and strategic incentive to build sovereign AI capability.
As global AI governance frameworks tighten and frontier model access becomes increasingly politicised, India's window to establish foundational AI capacity — rather than perpetual dependence — may be narrowing faster than policymakers have acknowledged.