Agentic AI

Autonomous AI Agents that learn from every decision.

Deploy self-learning agents that orchestrate complex workflows, adapt strategies in real-time, and inherit platform governance – no manual retraining required.

Built for regulated industries. Pre-built templates for collections, fraud, claims, and underwriting - or build custom agents with no-code tools. Complete audit trails included.

Where traditional automation falls short for regulated industries

Static Playbooks

Traditional "agents" follow pre-programmed rules. When strategies fail, humans manually update logic. No learning. No adaptation. Every change requires development cycles.

Disconnected Intelligence

Automation operates separately from predictive models and GenAI. Teams manually bridge systems, losing context and creating compliance gaps. Value trapped at the insight stage.

Governance Retrofitted

Rule-based automation lacks explainability, audit trails, and approval workflows. Compliance teams reconstruct evidence manually after deployment - or worse, during examinations.

WHY iTURING?​

Four capabilities.
One autonomous platform.

Predictive-Powered

Predictive-Powered

Agents execute decisions grounded in real-time intelligence, not guesses.

Self-Learning

Self-Learning

Agents observe outcomes and self-optimize strategies autonomously.

Multi-Modal Orchestration

Multi-Modal Orchestration

Agents coordinate across channels, tools, and data sources seamlessly.

Governance-Native

Governance-Native

Agents inherit platform compliance – not retrofitted after deployment.

Not standalone automation. Integrated intelligence.

iTuring’s agentic layer connects predictive models and generative AI – feeding from forecasts, triggering personalization, closing the learning loop.

Collections
Orchestration

Agents predict payment propensity, generate personalized messages, and execute multi-channel outreach automatically across SMS, email, and calls.

20%+ recovery lift, 60% cost reduction.

Underwriting
Intelligence

Agents extract data from applications and bank statements, assess credit risk with ML models, then generate complete underwriting memorandums with causation.

40% faster approvals, 25% lower defaults.

Fraud
Investigation

Agents detect anomalies, synthesize evidence from multiple sources, generate investigation summaries, and route cases to investigators with full audit trails.

30-minute investigations vs. 3 weeks.

Claims
Triage

Agents intake FNOL reports, assess severity, classify claim types, predict indemnity costs, and assign to the right adjuster automatically.


60% faster triage, 25% lower LAE.

Enterprise-Grade Agent Infrastructure - Built for scale, security, and continuous compliance.

Agent Development

Built for regulated industries, not generic enterprise.

Capability

Decision Logic

Learning

Personalization

Integration

Governance

Deployment

Compliance

Agentic AI

Predictive models + reinforcement learning

Self-optimizing from outcomes (5-15% quarterly lift)

GenAI market-of-one messaging

Unified with predictive + GenAI layers

Immutable audit trails, maker-checker, explainability

Weeks (pre-built templates)

Examination ready

Traditional Automation

Hard-coded if-then rules

Manual rule updates by humans

Static templates

Standalone scripts, manual integration

Limited logging, manual documentation

Months (custom development)

Manual compliance review required

Frequently Asked Questions

What makes iTuring agents "self-learning"?

Agents observe outcomes (payment success, fraud detection accuracy, conversion rates) and feed that data back to predictive models via reinforcement learning. Models retrain automatically within governed workflows, improving 5-15% per quarter without manual intervention.

Both. Pre-built templates (collections, fraud, claims, underwriting) deploy in 4-6 weeks. Custom agents built with no-code workflow builder or code-first Python/R deploy in 8-12 weeks. All agents inherit platform governance regardless of how they’re built.

Agents call your CRM, core banking, payment gateways, and communication platforms via APIs. No rip-and-replace. Agents operate as intelligent middleware between predictive models, GenAI, and operational systems.

Yes. Most clients start with one use case (collections or fraud) to prove ROI, then expand to other workflows. All agents share the same platform infrastructure – no redeployment required.

RPA follows static rules and breaks when conditions change. Agentic AI uses predictive intelligence to make decisions, generative AI to personalize actions, and reinforcement learning to improve continuously. Agents adapt without manual reprogramming.

Every agent action logs: (1) Which predictive models triggered it, (2) Feature-level explanations for model scores, (3) Why this action vs. alternatives, (4) Outcome tracking. Complete audit trails ready for examination.

All decisions are logged with full context. You can trace errors to root causes, adjust thresholds, or add human-in-the-loop approvals. Maker-checker workflows gate all agent logic changes. One-click rollback restores previous versions.

Pre-built templates: 4-6 weeks including data integration and validation. Custom agents: 8-12 weeks. Compare to 6-12 months for traditional automation or RPA implementations.

Tarika Bhutani

Senior Director – Sales and Marketing Operations

Tarika is a market development leader driving global growth through strategic partnerships and go-to-market initiatives.

 

She focuses on expanding enterprise adoption of AI solutions across international markets, working closely with partners and clients to enable data-driven transformation.

 

Her work centres on scaling enterprise AI through partner-led growth and direct customer engagement, supporting organisations in implementing impactful, data-driven solutions worldwide.

Vipin Johnson

Vice President – Customer Acquisition

Description Goes Here

Rajnish Ranjan

Vice President, Head – Data Science

Rajnish brings over two decades of experience leading data-driven transformation across Fortune 500 organisations.

 

His career spans senior roles at HSBC, Zafin, Cisco, TCS, Nielsen, iQuanti, Symphony, Supervalu, and Harman, delivering measurable cost savings, operational efficiencies, and revenue growth.

 

With experience across banking, retail, telecom, pharma, CPG, and digital marketing, he leads cross-functional teams at iTuring.ai to deliver advanced analytics, machine learning, and AI solutions.

Aishwarya Hegde

VP Operations & Content Head

Aishwarya has been instrumental in building iTuring.ai from inception and continues to manage core operations across the organisation. Her responsibilities span project operations, financial planning, and evaluating future expansion opportunities.

 

Prior to iTuring.ai, she worked with Market Probe and WNS Research & Analytics, delivering high-impact decision support and actionable analysis for IBM with a record of zero errors.

 

Aishwarya holds a postgraduate degree in Data Science and Machine Learning from Manipal University.

Bryan McLachlan

Managing Director – Africa

Bryan has 30 years of experience driving innovation and growth across technology, banking, insurance, and retail.

 

Prior to iTuring.ai, he held executive leadership roles at Instant Life, AIG, Nedbank, FNB, and TransUnion. He focuses on enabling enterprises to adopt AI and machine learning within trusted, governed, and risk-managed frameworks.

 

Bryan holds a Master’s degree in Commerce from the University of Johannesburg.

Mohammed Nawas M P

Co-Founder, VP Product Development

Nawas brings 20 years of experience in designing and delivering cloud-native software and data systems. He has held senior technology roles at HCL, Radisys, Kyocera, and Mindtree, leading large development teams and complex product builds.

 

At iTuring.ai, he oversees product roadmap and customer delivery, applying cloud-first thinking, deep systems expertise, and a focus on building robust, scalable AI solutions that challenge industry norms.

 

He is a graduate of Rajiv Gandhi Institute of Technology.

Amit Kumar

Amit is a technology architect with over 18 years of experience designing data-intensive systems and enterprise analytics platforms. He has built highly scalable products across open architecture models and virtualised infrastructure, aligning deep technical detail with business requirements for AI and ML solutions.

 

Prior to iTuring.ai, he held senior technical roles at Radisys and Aricent. Amit leads platform architecture with a focus on governance, lineage, and traceability.

 

He holds a First Class with Distinction BTech in Computer Science from Cochin University.

Valsan Ponnachath

President, COO and Co-founder

Valsan brings over two decades of global leadership across sales, professional services, and product operations in technology and SaaS enterprises.

 

Prior to iTuring.ai, he held senior executive roles at Fiserv, Cisco, and Sun Microsystems, most recently serving as Senior Vice President at Fiserv overseeing global system integration and international professional services. Based in California, he leads iTuring.ai’s growth in the Americas.

 

Valsan holds an MBA from the University of Nebraska and a BE in Computer Science from Bangalore University.

Suman Singh

Founder & CEO

Before founding iTuring.ai in 2018, Suman led analytics at Zafin and Fiserv as CAO and General Manager Analytics, delivering enterprise-scale solutions still running in production.

 

His work includes fraud detection systems saving clients over $19M, patented Customer Relationship Score methodology, and price optimisation recognised by the INFORMS Edelman Award (2014). He has authored multiple research papers and pioneered the data-to-value approach.

 

Suman holds a Master’s in Statistics from CCS HAU and a Bachelor’s in Agricultural Engineering from BHU.