VapusData Introduces an AI-Powered Data Operating System for Enterprise Scale

Mr Vikrant Singh, Co-Founder & CEO of VapusData. Bengaluru (Karnataka) [India], January 16: There’s no shortage of tools today, promising to “Unlock AI” for enterprises. Data platforms, governance layers, AI studios, observability dashboards each solving a slice of the problem. The result? Teams often move fast during pilots, only to slow down when their AI workflows [...]

Jan 16, 2026 - 12:58
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VapusData Introduces an AI-Powered Data Operating System for Enterprise Scale

VapusData Introduces an AI-Powered Data Operating System for Enterprise Scale-PNN

Bengaluru (Karnataka) [India], January 16: There’s no shortage of tools today, promising to “Unlock AI” for enterprises. Data platforms, governance layers, AI studios, observability dashboards each solving a slice of the problem. The result? Teams often move fast during pilots, only to slow down when their AI workflows encounter real-world complexity, multiple data sources, compliance requirements, cost controls, and cross-team usage. 

VapusData’s take on this is blunt: AI isn’t failing in enterprises because models aren’t good enough. It’s failing because the systems around them aren’t built for scale, trust, or accountability. 

Instead of adding yet another tool to the stack, VapusData is building something more opinionated: an AI-powered Data Operating System that treats governance, compliance, and observability as core infrastructure, not optional add-ons. 

“Most teams can get an AI pilot running in weeks,” says Vikrant Singh, Co-Founder & CEO of VapusData. “But getting that same system into production with those fragmented systems securely, compliantly, and at scale is where things break. That’s the gap we’re solving.” 

From pilots to production 

This challenge appears across enterprises. Data is scattered across clouds, regions, and business units. AI costs spike unpredictably. Compliance checks arrive late in the process. And when something goes wrong, no one has a clear view of who accessed what, how models behaved, or why costs ballooned. 

VapusData’s approach is to collapse those moving parts into a single system. Its platform combines Agentic DataOps, a governed AI Studio, and full-stack observability, all running on a decentralized architecture. At the core of the system is Nabhik AI, VapusData’s intelligent engine that orchestrates self learning agents across workflows.

These agents automate ingestion, transformation, reconciliation, validation, and monitoring, while continuously tracking lineage, access, and cost. The result is not just automation, but visibility and control that persist as systems scale. 

Under the hood 

VapusData’s AI Studio provides a single interface to build, train, deploy, and manage AI models with built-in access control, context management, caching, and guardrails. Full stack observability gives teams immediate insight into data quality, system usage, model behavior, and AI expense, helping them detect issues early and prevent misuse. 

The platform is designed to support continuous compliance rather than periodic checks, with policies and controls enforced in real time. This allows teams to move faster without sacrificing audit readiness or accountability. 

Into Production 

What’s notable is how quickly VapusData is moving from platform to real-world use cases. Recently, the company launched its flagship Finance Operating System, built on top of its core building blocks. The system brings together AP, AR, tax, and payroll automations, with built-in reconciliation, rule-based checks, approvals, audit trails, and exception handling which are all governed by default. 

Vapusdata’s Finance OS supports automated multi dimensional reconciliation, automated Tax filing, data cleaning, validation, rule based checks, approvals, audit trails, and exception handling. By embedding governance and observability directly into finance data pipelines, it helps teams reduce manual effort, improve data quality, and maintain continuous audit readiness. The result is faster close cycles, better control, and greater reliability in financial data.

For VapusData, the Finance OS is also about proving a broader point. The same operating layer that governs data and AI can also support complex, regulated business workflows without breaking down at scale. 

A Clear Stance 

Their message is clear: this isn’t AI built only for pilots that may break at scale, but an AI designed for production-ready operations. 

VapusData knows it’s entering a crowded market, competing with specialized governance tools, AI platforms, and data stacks that are often better funded and more established. But its bet is that enterprises don’t want more tools — they want fewer systems that actually work together without friction reliably

VapusData’s vision is to become the default operating layer for enterprise AI. Whether that comes true or not remains to be seen. But its stance is refreshing in a space crowded with promises: don’t bolt on trust, compliance, and control later. Build it in from day one! 

By building trust, compliance, and observability into the foundation, VapusData is focused on enabling organizations to scale AI responsibly and sustainably. 

And in an era where AI speed often comes at the cost of control, that might be exactly the point.

For more information on VapusData, please visit: https://vapusdata.ai/

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