India’s AI Leap: Why application lifecycle management platforms will define enterprise success

The AI hype is giving way to a hard reality. Generative and agentic AI have moved from breakthrough to baseline – no longer novel but expected. From chatbots to copilots, the first wave of adoption has redefined how enterprises interact with customers, data, and internal processes. However, as deployments expand, many are facing a tougher truth: scaling these systems securely, reliably, and across functions is far more complex than early wins suggested.
Across Indian enterprises, this gap is becoming starkly visible, an EY report found that while 92% of Indian employees regularly use GenAI tools, only about 15% of companies have GenAI workloads running in production, and just 8% can fully measure or allocate the associated costs.
This data shows the real bottleneck isn’t imagination or programming expertise, it’s the architecture needed to manage end-to-end agentic AI lifecycles: platforms that support secure deployment, real-time behavior monitoring, compliance enforcement, and explainability in production environments.
The real challenge
Agentic AI refers to autonomous agents capable of reasoning and acting with minimal human input, fundamentally redefining enterprise software. These systems aren’t just assistants; they are decision-makers that can, for example, initiate procurement, flag compliance risks, or optimise logistics in real time.
Many believe that the building of agentic AI systems is but an extension of generative AI, which means that AI or the tools are prompted to generate code or a daytime workflow. Entering into complexities, however, the major challenge in any industry in practice lies not in its creation but in orchestrating and governing those agents after their deployment.
Unlike traditional applications, agentic systems must monitor themselves in production, adapt to dynamic data and user behaviour, operate within strict compliance constraints, and be explainable to business users and regulators. However, most platforms are not designed to support this.
India’s context: Huge potential, hidden friction
India stands at a critical inflection point in the AI journey. The most cited barriers? Lack of integration with legacy systems, poor data governance, and high implementation costs.
This is reflective of the uniquely heterogeneous Indian enterprise tech landscape perplexingly intermixes with cloud-native applications, on-premises infrastructure, and legacy software tools. Now, businesses are moving from basic GenAI experimentation to deploying agentic AI at scale, creating a necessity for more robust, lifecycle-driven platforms. Absent foundational architecture to handle increasing complexity, these systems may find themselves highly fragmented, insecure, or totally ungoverned.
Why lifecycle platforms are the missing link
Indian enterprises today don’t just need a more advanced chatbot. Rather, they need an AI platform that can manage the whole lifecycle of an agent: from development to deployment, iteration, and retirement. Confluent’s 2025 Data Streaming Report reveals that 96% of Indian IT leaders plan to increase data streaming investments in 2025, and a majority of IT leaders (95%) see DSPs easing AI adoption by tackling data access, quality, and governance challenges head-on.
It is clear that the success of agents mostly depends on real-time data flow and integration across fragmented systems. Indian enterprises often work in hybrid environments spanning cloud and legacy tools landscapes, making lifecycle management critical so that pilots don’t either starve or fragment across silos.
Governance and observability remain equally critical. As agents begin to make decisions that have real relevance to business, CIOs want platforms to track and monitor this. Without some guardrails, embedded in defining what an agent can and cannot do, and within real-time logs to track what they are doing, the agentic AI will turn grey and ungovernable. Platforms that embed governance and orchestration into every stage of the agent lifecycle are built to meet this need at scale.
Build what you can control
India has the scale, talent, and ambition to lead the agentic AI revolution. However, to get there, the focus must shift from hype to infrastructure. Enterprises need more than experimental pilots; they need AI systems they can trust, explain, and evolve.
This is where AI-empowered application life-cycle management platforms become indispensable. Unlike the black-box nature of generative AI, low-code approaches provide a deterministic element that allow to govern and predict outcomes, ensuring AI scales with both speed and reliability across industries such as BFSI, healthcare, and manufacturing. They would enable Indian enterprises to build trust and accountability in every layer of the AI stack while allowing for flexibility in hybrid tech realities within which most firms operate. Next in line are the ones who will be the winners of it will not be those who will adopt AI fastest, but those who operationalise it smartest.
The future isn’t about building faster; it’s about building smarter. And that begins with platforms that turn intelligence into outcomes.
Vivek Ganesh, Regional Vice President – India, OutSystems
Discover more from News Link360
Subscribe to get the latest posts sent to your email.
