NTT DATA and Cursor partner to accelerate enterprise-grade modernization and AI governance


  • NTT DATA leveraging Cursor to strengthen its own engineering and delivery model.
  • Enterprise-grade governance helps modernize and transform delivery with greater trust and control.

India — June 25th , 2026 — NTT DATA, a global leader in AI, digital business and technology services, today announced a strategic partnership with Cursor, the leading multi-model AI coding platform. Under this initiative, NTT DATA will use Cursor’s advanced AI agents to power the innovation of its global software engineering and delivery models. Cursor will enable NTT DATA to design, build and modernize enterprise systems with greater speed and control, while supporting the governance enterprises require.

The collaboration marks a strategic advancement in NTT DATA’s transformation into an AI-native services company, enhancing how the company designs, builds and modernizes mission-critical systems. NTT DATA is operationalizing AI inside its engineering and delivery engine with enterprise-grade controls to enable faster modernization of clients’ legacy estates, accelerate cloud and AI transformation initiatives, and drive greater consistency across delivery environments.

Including AI agents directly in the engineering layer helps ensure that application modernization and development efforts remain aligned with enterprise-wide AI strategies. These capabilities enhance NTT DATA’s broader full-stack portfolio.

“Enterprise modernization is no longer just about moving systems to the cloud—it is about reimagining how software is built and operated in the age of AI,” said Abhijit Dubey, CEO and Chief AI Officer, NTT DATA, Inc. “Through our partnership with Cursor, we will use AI in the core of our engineering and delivery model, enabling us to modernize faster, improve consistency at scale and deliver greater value to clients. By applying these capabilities inside our own business first, we can help organizations adopt AI with greater confidence, governance and measurable impact.”

Cursor is the leading multi-model AI coding platform, embedding advanced AI agents directly into developers’ environments to write, review, refactor and modernize code with codebase-wide context across leading models. For NTT DATA, this brings AI-native acceleration into the core of its global engineering and delivery model, paired with enterprise-grade governance, including organization-wide privacy mode, Single Sign-On, centralized administration, granular agent controls, and audit-ready policy enforcement so modernization happens faster, with greater consistency, trust and control. For joint clients, NTT DATA’s use of Cursor turns into real-world results, guiding enterprises through secure scalable, and responsible AI adoption and accelerating the modernization of legacy code bases and AI transformation while keeping delivery aligned with enterprise-wide AI strategies.

“NTT DATA is putting AI at the core of how engineers modernize complex systems,” said Jordan Topoleski, Chief Operating Officer, Cursor. “By pairing Cursor agents with enterprise-grade governance and structured enablement, NTT DATA is proving how AI changes the way software gets built and delivered at global scale, and we are proud to support their teams as they bring it to enterprises worldwide.”

NTT DATA is initially deploying Cursor Enterprise to priority engineering teams and will expand deployments as adoption scales globally. The company also plans to establish a Cursor Center of Excellence to help scale these capabilities across global practices and industries.

To learn more about NTT DATA, visit our website.

About NTT DATA

NTT DATA is a $30+ billion business and technology services leader, serving 75% of the Fortune Global 100. We are committed to accelerating client success and positively impacting society through responsible innovation. We are one of the world’s leading AI and digital infrastructure providers, with unmatched capabilities in enterprise-scale AI, cloud, security, connectivity, data centers and application services. Our consulting and industry solutions help organizations and society move confidently and sustainably into the digital future. As a Global Top Employer, we have experts in more than 70 countries. We also offer clients access to a robust ecosystem of innovation centers as well as established and start-up partners. NTT DATA is part of NTT Group, which invests over $3 billion each year in R&D.

Visit us at nttdata.com.

About Cursor
Cursor is the best way to build software with AI. Helping teams solve the hardest problems, Cursor builds an ecosystem of tools to write, review, and maintain code more efficiently and intelligently. Serving the majority of the Fortune 500 and tens of thousands of engineering teams globally, Cursor is accelerating the future of software development with enterprise-grade AI-assisted coding capabilities. Learn more at https://cursor.com/





Source link

Leave a Reply

Subscribe to Our Newsletter

Get our latest articles delivered straight to your inbox. No spam, we promise.

Recent Reviews


25 AI employees who talk to each other and run my company without me.

Most CEOs don’t have time to play with AI.

Maybe they use ChatGPT to write an email or as a sparring partner, but that’s about it.

And I get it. Between back-to-back meetings, managing people, and putting out fires, when are you supposed to sit down and experiment?

But a few months ago, I started playing with agents, and it’s changed the way I think about scaling a company.

Baby Steps

It started with a single agent I built in Claude Cowork. It was a super-powered EA, which read my emails, checked my calendar, and gave me a morning brief. It helped me manage my to-do list, clarify my priorities, and set reminders.

It was really helpful. But what I really wanted was a full support team.

I wanted multiple agents, talking to each other, running on their own schedules, and working without me needing to be involved.

So I started building my own AI organisation. Finance, marketing, sales, strategy and relationship management… even Agent Resources (the HR equivalent).

Department by department, role by role, the organisation started to grow.

Burning the Ships

As more and more work was being taken on by agents, it became clear I didn’t need as large a support team.

So I took the decision to ramp down my human org, and invest in creating more agents.

Like Cortés, I burned the ships so there was no chance of retreat, and this forced me to figure out how to make an AI organisation work.

What used to be run by a Chief of Staff, a Head of Ops, and a Founder Associate is now run by my AI organisation and an EA.

I currently have 25 AI employees which cost about $2,500 a year to run. They replace over $250,000 a year in salaries, along with several SaaS tools I no longer use.

My AI employees manage accounts receivable and financial projects. They analyse my social media and create new pieces of content for my review. They proactively draft emails to help me build important relationships. 

I estimate I’ve got a 100X return on investment on my Claude Max plan.

How to Build an AI Support Team

Within a year or two, every leader will have their own AI organisation, each designed to fit the way they think and work.

When I show CEOs what I’ve built, their reaction is always the same: “I want this.”

So how do you go about building your AI support team?

Here are the three stages, although in practice they overlap a lot.

Stage 1: Connect Your Data

Before your agents can do anything useful, they need your knowledge.

You’ll need to connect your emails, meeting transcripts, data from your existing systems.

This stage is brutal, especially if you need to give the system historical data.

I spent entire nights feeding in data one chunk at a time, taking care not to overload the models with too much context.

Stage 2: Build the Workflows aka. Employees

Each AI employee is a workflow: a prompt that outlines a set of instructions, data it can access, and the output it creates.

Creating workflows is when things start to feel exciting.

You watch your first agent produce real work, and your brain starts firing with ideas for the next one.

It’s quite addictive.

Stage 3: Get Your Employees to Work Together

It turns out many of the challenges of building an AI organisation are the same as a human one.

For example, my Chief of Staff acts as a messenger between me and my other AI employees. It reads all their reports, keeps track of what’s happening across the organisation.

But a few weeks in, the volume of reports generated by AI employees grew out of control.

One day, my AI Chief of Staff said to me: “Dave, there’s a lot for me to read. Do you really need me to read every single report?”

In other words, it was overwhelmed.

We want our chiefs of staff (human or AI) to be our interface with the world, but we often forget how much context this requires.

This led us to redesign our reporting systems, and create some Python scripts to make the work more efficient.

Be Careful With Subagents

Another familiar problem came from how AI agents spawn subagents to do things in parallel.

One evening, I’d kicked off a CRM project. About fifteen minutes in, I checked the progress and realised I hadn’t been clear enough.

I stopped the process and asked the agent to ‘undo’ what it had done.

A minute later, I looked at my data folders, and half of them were missing. As in deleted.

“Where are my files?” I asked, as beads of sweat started to form on my brow.

“This is my fault. The subagents overwrote the data files. I’m sorry.”

You’re sorry?

It turns out your agents will “subcontract” out their work to subagents… except these subagents don’t have the full context and often make mistakes.

Also, they aren’t the tidiest of agents either, often leaving random summary files littered around your filing system.

Luckily, my files were in Dropbox so I was able to recover the 571 files it deleted.

The Agents Are Coming

Now, someone skilled at building agent systems can do the work of dozens, maybe even hundreds of people.

I’m about a month away from having an AI organisation that can run my business with only minor involvement from me.

However, this poses a real challenge for CEOs.

In The Innovator’s Dilemma, Clay Christensen shows that incumbents get disrupted not because they make bad decisions, but because they make good ones.

They keep investing in what’s working today and rationally ignore the scrappy new thing that isn’t good enough yet.

Until it is.

For many CEOs, right now keeping their people is a good decision. AI agents aren’t reliable enough to replace a great team.

But within just a few years, smaller teams who leverage agents will outperform larger teams who don’t.

So if you haven’t started building with agents yet, consider this your permission to start.

Related Reading: 

 

Originally published on April 1st, 2026

 





Source link