What's next for the generative AI revolution
We are into the second year of the generative AI
revolution, and some clarity is beginning to emerge from the noise and babble of the last
18 months. The initial hyperventilation of AI doomerism and the risk of human extinction
by AI advances like Artificial General Intelligence (AGI) has quietened down. People have
accepted that, like any other general-purpose technology be it electricity, nuclear
energy, the internet or even a discovery like fire, gen AI has enormous potential for good
when explored and advanced within the guardrails of responsibility. Besides, many of the
doomsday prophets pleading for extensive AI regulation have revealed themselves to be just
protectionists who want to limit the fruits of gen AI to a few companies and investors.
It is also clear that there won't be a scenario where we'll
have one model to rule them all'. Every day brings new advances in large language
models from a dizzying set of actors all pushing for greater innovation. These range from
very large models which need massive computing infrastructure to small ones that can run
locally on the phone. The real power of AI will come from configuring all the different
models and tools to get the best solutions. This is not very different from previous
generations of technology. What's more, the rise of powerful open-source AI models has
accelerated the deployment of AI to solve tough business and societal challenges. Although
there could be concentration risk in the hardware and cloud infrastructure space, as we
move into actual use cases, a thousand flowers will bloom. It is more than evident that
enterprise AI will be markedly different from consumer AI. The manifestations of consumer
AI will be packaged in wondrous ways to make life easier and more productive for millions
of people. New ways of conducting search; agents that help plan work and leisure;
intuitive interfaces that can serve up what's needed and reason with users; even speech
recognition that understands the nuances of dialects and colloquialisms. Not unlike the
smartphone that brought the magic of apps and touchscreen to billions, consumer AI will
push the envelope of usability, convenience, and accessibility for everyone. Enterprise
AI, on the other hand, requires a root and branch surgery of the complex and
multigeneration technology (both legacy and modern), that lie within firms. The AI models
themselves will become commodities. The challenge will be to orchestrate the extensive
data inside the corporation, both structured and unstructured, explicit and tacit, in a
way that it is consumable by AI. The quality of output needs to be managed to ensure
correct and factual responses and insights with no hallucinations. Given that the
leaderboard of technologies will be changing at a bewildering pace, enterprises will have
to future proof' their AI infrastructure with suitable abstractions to be able to
switch models easily and not be trapped in a technological cul de sac. As various nations
come up with different ways of regulating AI, global companies will have to build their AI
applications in a way that they are compliant in every country. While application can be
trialled on very large models, deployment will be on narrow transformers, trained on
relevant enterprise data, fully secure and efficient in their inferencing. Enterprises
will need both an AI foundry for experimentation and an AI factory for scaling up. AI
architecture must facilitate an approach that combines the analytical thinking of the left
brain with the intuitive approach of the right brain. The constraint of resources will
require a transparent way of identifying the highest value AI use cases. AI must amplify
the potential of every human being in the enterprise. Firms in the business of enabling
digital transformation, like Infosys, will be in the eye of the storm. Software
development will be rapidly automated and amplified. We have to seize the productivity
benefits and share them with our customers. The productivity gains from automation, must
lead to talent redeployment in new areas with new opportunities. We must learn from
applying AI to ourselves, be it in creating an AI-first enterprise or in accelerating the
massive talent amplification that's now needed. We are already doing it, at Infosys, by
applying Infosys Topaz to transform all the services we offer to become AI-first and to
accelerate business value using generative AI technologies. We are certain that change
will have to be embraced not resisted.
Above all, the gen AI revolution presents an unrivaled
opportunity. The flux of change as the whole technological landscape is being reset will
create many large openings. Packaged solutions will be reimagined, and we will see a
resurgence of custom-built solutions that must be enabled with new types of AI building
blocks. The puck is clearly and quickly moving to a place where the balance of advantage
will be with Infosys.
Bengaluru |
Nandan M. Nilekani |
May 16, 2024 |
Chairman |