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WalkingTree Technologies
WalkingTree Technologies

Posted on • Originally published at walkingtree.tech

Agentic AI in BFSI: Moving from Pilots to Production with Confidence

Agentic AI is expected to drive over $450 billion in business impact by 2028, with financial services positioned to capture a significant share.

For decision-makers in banking, insurance, and capital markets, the real question isn’t what Agentic AI is. It’s how to move beyond pilots and into production, where intelligent agents automate decision-heavy workflows, reduce risk, and create tangible value.

In this blog, we’ll break down what Agentic AI in BFSI really means for the sector, why most organizations are stuck in experimentation, and how early adopters are building a competitive edge. We’ll also share how WalkingTree is helping firms go from proof of concept to production-grade deployments using frameworks like AgenTree, AlphaTree, and Intellexi.

The Pressure is Mounting

Financial institutions are operating in a world of increasing complexity. Regulations aren’t easing. Customer expectations are rising. And core systems, while stable, weren’t built for speed or adaptability.

Meanwhile, data continues to explode. Unstructured forms. Call logs. Emails. PDFs. Claims. Spreadsheets. It’s everywhere and nowhere, all at once.

Here’s what this means: banks and insurers that still rely on brittle automation or static AI tools are already behind.

That’s why Agentic AI is gaining ground. Because it doesn’t just process data. It reasons. It acts. It learns. And it works across silos.

What is Agentic AI?

At its core, Agentic AI refers to intelligent agents that perceive, decide, and act autonomously within a defined scope. These aren’t traditional bots. They’re task-specific systems capable of breaking down objectives, adapting in real time, and triggering the right workflows with minimal human input.

These agents can:

  • Parse documents and extract key fields
  • Trigger next-best actions across enterprise systems
  • Collaborate with other agents
  • Improve through continuous feedback
  • Interact via natural language while maintaining traceability

Unlike conventional AI tools, which act on predefined prompts or workflows, agentic systems are goal-driven and context-aware.

Capgemini estimates that AI agents could unlock $450 billion in value by 2028, through a mix of cost savings and revenue uplift. Yet fewer than 16% of enterprises have a clear strategy for deploying them at scale.

Why Agentic AI in BFSI is a Natural Fit

Agentic AI isn’t a generic solution. It thrives where processes are:

  • Data-intensive
  • Repeatable but decision-heavy
  • Regulated
  • Spread across teams or systems

That’s the BFSI sector in a nutshell.

Whether you’re underwriting a loan, investigating fraud, settling claims, or monitoring transactions, these are precisely the kinds of high-friction, high-volume workflows where agentic automation can deliver.

In fact, 93% of leaders in financial services believe those who scale AI agents in the next year will gain a competitive edge.

But success isn’t just about ambition. It’s about execution.

Where BFSI Firms Are Struggling

Most BFSI organizations start strong, a chatbot pilot, a document parser, maybe an RAG-powered assistant. But then progress stalls.

Agentic AI in BFSI

Here’s why:

1. Compliance & Explainability

Financial workflows don’t tolerate black boxes. Agents must justify their decisions, be auditable, and align with local and global regulations (GDPR, HIPAA, SOX, etc.).

2. Data Fragmentation

Information sits in policy systems, underwriting tools, CRM platforms, legacy databases, and Excel files. Integrating these sources is non-trivial.

3. Lack of Trust

According to Capgemini, only 27% of organizations currently trust fully autonomous AI agents, down from 43% the previous year. That’s a steep decline, driven by real-world concerns, not just fear of the unknown.

4. Process Diversity

A claims process in India looks nothing like one in the UK. Same goes for underwriting or onboarding. Local rules and institutional quirks add complexity.

5. Weak ROI Visibility

Even when agents are deployed, many organizations struggle to justify the cost. The issue isn’t always the technology, it’s poor alignment between agent capabilities and business value. When companies don’t plan around the right use cases, or fail to define success metrics upfront, the result is a solution in search of a problem. Without a clear ROI story, AI adoption loses momentum internally and buy-in starts to fade.

Where Agentic AI is Already Working in BFSI

Let’s look at actual use cases across banking, insurance, and financial services:

Agentic AI in BFSI

Crédit Agricole, for instance, deployed AI agents for document classification and emotional tone detection, saving 750+ hours per month and accelerating complex case resolution.

Here’s a structured and precise framework we follow at WalkingTree to operationalize agentic systems:

The Results You Can Expect

Phase 1: Define Use Case and KPIs

● Pick high-volume, low-judgment workflows with measurable ROI in hours saved, processing speed, or CSAT gains. Start with onboarding, claims intake, or loan verification.
● Set measurable KPIs: turnaround time, error rate, FTE hours saved, CSAT

Phase 2: Architect the Agent System

● Choose roles: task agent, orchestrator, planner, monitor
● Select orchestration protocols (LangGraph, ReAct, CrewAI)
● Define boundaries and escalation logic

Phase 3: Integrate Data & Systems

● Use OCR for legacy data
● Build vector databases or structured knowledge bases
● Implement secure APIs and access controls

Phase 4: Establish Guardrails

● Introduce explainability agents
● Embed policy checks before decisions are triggered
● Map to internal audit and compliance frameworks

Phase 5: Build Feedback Loops

● Capture user feedback on agent actions
● Retrain models or refine prompts periodically
● Monitor drift, performance, and governance metrics

Agentic AI in BFSI

These results reflect modeled benchmarks and typical outcomes observed across pilot programs and early deployments. Actual gains depend on the use case, data readiness, and integration depth, but the directional value is clear.

Why WalkingTree

At WalkingTree Technologies, we specialize in building and deploying production-grade agentic systems for BFSI.

Our internal framework, AgenTree, supports secure, observable agent orchestration. This isn’t a prototype stack. It’s live and running.

AlphaTree (our investment research agent) enables financial analysts to process earnings calls, filings, and portfolio data through document-level Q&A, trend detection, and multi-source grounding.

Intellexi supports insurance and healthcare clients with intelligent document classification, validation, and secure data handling; all through explainable agent chains with full audit logs.

We don’t just build agents. We build trust in them.

Where This is Headed

According to Capgemini, by 2028:

  • 25% of business processes in BFSI will be handled by agents with Level 3 autonomy or higher
  • 58% of core functions like customer service, IT, and operations will have daily agent involvement
  • The BFSI sector could contribute significantly to the $450B economic potential unlocked by AI agents globally

This isn’t hype. Its direction.

But getting there means bridging the trust gap, investing in architectural maturity, and selecting the right use cases.

What You Can Do Next

  1. Start with a Pilot
    We offer a 3–4 week sprint to identify, build, and deploy a narrow-scope agent inside your environment, using your data, your systems, and your governance model. Low-risk, high-visibility, measurable ROI.

  2. Watch the Recorded Webinar
    Topic: Agentic AI for BFSI: Redefining Financial Intelligence
    Get real insights, live demos, and proven adoption strategies. No theory. Just what works.

Final Thoughts

Agentic AI in BFSI is not another AI trend. It’s the new operating logic for modern BFSI. One that reduces waste, elevates compliance, and drives intelligent decisions in real time.

Those who figure out how to scale this shift, securely, explainably, and with the right architecture, will define the next decade of financial innovation.

If you’re ready to move beyond experimentation, let’s talk.

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