Essayer OR - Gratuit

SCALING WITH AI

DataQuest

|

April 2020

Organisations that are the early adopters of artificial intelligence, are struggling to accrue the benefits because they have not been successful in scaling and using AI widely. Infosys has implemented a Centre of Excellence-driven strategy for the discovery and delivery of AI and automation opportunities, among others. Balakrishnan D R, Head, AI and Automation, Infosys, tells us more

- Pradeep Chakraborty

SCALING WITH AI

How is Infosys identifying and mitigating the hurdles thwarting AI’s business implications?

While digital natives are comfortable adopting AI, traditional large enterprises are yet to embrace it extensively. While the potential of AI is lucrative, yet enterprises aren’t exactly rolling it out because of factors such as the absence of a clear strategy, lack of organized data, skills shortage, and functional silos within the organization. As per a Mckinsey study, a mere 17 percent of respondents said their companies have mapped out the potential areas in an organisation where AI can succeed.

Organizations who are early adopters of AI, are struggling to accrue the benefits because they have not been successful in scaling and democratising AI. Also, only 18 percent have a clear strategy in place for sourcing the data that enables AI work.

The dearth of trained talent with AI skills also plays a role in slowing adoption. At the same time, to adopt AI seamlessly, organisations need to take additional measures to ensure better security, governance, and change management. Having said that, we’re likely to see most of the stated hurdles being overcome as technology evolves at breakneck speed. For instance, data synthesis methodologies are now available to combat data challenges in AI. With the emergence of techniques such as transfer learning and meta learning, reduces the need for high volume data. Aspects like the explainability of AI, elimination of bias and ensuring AI is used ethically are becoming mainstream helping in adoption of AI in the enterprise context.

PLUS D'HISTOIRES DE DataQuest

DataQuest

DataQuest

Engineering India's Al-First Data Centres at Hyperscale

Rohan Sheth explains how AI and HPC are reshaping India's data centres, from density and cooling to power economics, sustainability, and hyperscale decision criteria.

time to read

4 mins

February 2026

DataQuest

DataQuest

From copilots to colleagues: Why agentic AI is forcing enterprises to rethink control, trust, and culture

As AI agents shift from assisting to acting, enterprises must redesign governance, data controls, and security guardrails so autonomy stays auditable, reversible, and trusted.

time to read

2 mins

February 2026

DataQuest

DataQuest

Reclaiming Control in the AI Era: A Conversation with Kalyan Kumar, CPO, HCLSoftware

Enterprises are reassessing cloud-first strategies as AI becomes core to operations. HCLSoftware's Kalyan Kumar explains why sovereignty, choice and control now shape decisions.

time to read

5 mins

February 2026

DataQuest

DataQuest

When infrastructure learns: The rise of the Al-native core

AI-native infrastructure is moving from concept to operational reality, reshaping how organisations build, govern, and scale intelligence across their digital core.

time to read

6 mins

February 2026

DataQuest

DataQuest

Bridging the gap between connectivity and compute at scale

As AI scales in India, data centres are evolving into high-density, low-latency platforms that unify connectivity, compute, and sustainability at national scale.

time to read

4 mins

February 2026

DataQuest

DataQuest

PUE is not a grapefruit metric, anymore

So what are the new high-hanging fruits for data centre strategists today? And are players going after them?

time to read

4 mins

February 2026

DataQuest

DataQuest

Even if Al demand fades, India need not worry - about data centres

For every megawatt (MW) of installed colocation capacity, users here generate approximately 13.2 PB of data monthly- compared to 0.3 PB for Australia and just 0.01 PB for Singapore. India's data centre growth is not dependent on one tech lever. Plus, it is phased and modular and not kneejerk. Manoj Paul explains these contours in detail.

time to read

7 mins

February 2026

DataQuest

DataQuest

AI infrastructure and systemic risk

What has been the biggest change in data centre industry-specially after AI workloads? Is Al-bubble a big risk for data centre infra- how much will it affect data centres if something cracks?

time to read

1 min

February 2026

DataQuest

DataQuest

Inside the Shift to High-Density, Al-Ready Data Centres

CtrlS' Vipin Jain discusses what it truly takes to build AI-ready data centres in India, balancing high density, liquid-ready cooling, resilience, and ESG accountability.

time to read

4 mins

February 2026

DataQuest

DataQuest

Sustainability is now the headline, not a footnote

Sanjay Agrawal, Head Presales and CTO at Hitachi Vantara India and SAARC opines that the conversation is moving beyond headline metrics like PUE toward a broader view of how data lifecycle management and infrastructure efficiency reduce the overall environmental footprint. Let's see why and how- while also touching upon adjacent (or not-so-adjacent) factors like redundancies, availability and AI-readiness

time to read

3 mins

February 2026

Translate

Share

-
+

Change font size