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Human-in-the-Loop AI: Building Systems That Align with Privacy, Ethics, and Regulation
#BuildingWithAI
Human-in-the-Loop AI Systems That Align with Privacy, Ethics, and Regulation
Gowra Palladium,
Hyderabad
Saturday, August 2, 2025
3:00 PM – 6:00 PM
Register Now
What's This Meetup All About?
The #BuildingWithAI Meetup Group is back with the 4th edition of its much-anticipated meetup on August 2, 2025. Hosted by Covasant Technologies, this edition brings together enterprise leaders, AI practitioners, and data experts to explore how human-in-the-loop systems are shaping responsible AI.
This edition will spotlight essential areas in developing real-world AI systems:
1
What Enterprises Really Expect from AI Teams Today
2
Privacy, Ethics, and Governance in the Age of Agentic AI
3
Prompts, Probabilities & Prejudices: Why AI Still Needs the Human Touch
4
Data Foundation for AI: Building Enterprise Identity for Hyper-Personalization

Featured Speakers

Kartikeya Prahlad
Senior Director – Global Inside Sales, Covasant Technologies

Sitaram Tadepalli
SVP – Machine Learning Engineering, DBS Bank India

CV Rammohan
Chief Delivery Officer, Covasant Technologies

Subhash Konduru
Senior Technology Manager, Leading UK-based Multinational Bank
Event Agenda
Saturday, August 2, 2025
Welcome and Networking
Welcome and check-in, with an opportunity to connect with fellow attendees.
What Enterprises Really Expect from AI Teams Today
This session uncovers real enterprise conversations into actionable insights for builders.
Privacy, Ethics, and Governance in the Age of Agentic AI
This talk walks through real systems being built at scale with privacy-aware architecture, ethical risk mitigation, and regulatory alignment.
Break
Prompts, Probabilities & Prejudices – Why AI Still Needs the Human Touch
This session highlights why human oversight remains critical in enterprise AI.
Data Foundation for AI – Building Enterprise Identity for Hyper-Personalization
This session decodes the architectural, regulatory, and engineering challenges.
Vote of Thanks and Conclusion
Closing remarks and appreciation for speakers and participants.
Key Sessions
Session 1

What Enterprises Really Expect from AI Teams Today
By: Kartikeya Prahlad
Senior Director – Global Inside Sales, Covasant Technologies- Understand the shift from experimentation to accountability
- Learn how AI success is now defined across enterprises
- Explore why explainability, compliance, and alignment are non-negotiable
Session 2
Privacy, Ethics, and Governance in the Age of Agentic AI
By: Sitaram Tadepalli
SVP – Machine Learning Engineering, DBS Bank India- Understand the role of human oversight in complex AI workflows
- Learn how enterprises are embedding governance into AI systems
- Explore regulatory trends and compliance frameworks
Session 3
Prompts, Probabilities & Prejudices : Why AI Still Needs the Human Touch
By: CV Rammohan
Chief Delivery Officer, Covasant Technologies- Understand where generative AI still fails without human context
- Learn how human oversight reduces false positives and blind spots
- Explore how bias creeps into even the most advanced systems
Session 4
Data Foundation for AI – Building Enterprise Identity for Hyper-Personalization
By: Subhash Konduru
Senior Technology Manager, Leading UK-based Multinational Bank- Understand how enterprise identity graphs are applied in AI workflows
- Learn techniques for building consent-aware data pipelines
- Explore integration patterns that ensure privacy and compliance at scale
Who Should Attend?

AI/ML Practitioners and Engineers
Professionals developing and deploying machine learning models and AI systems across various domains.
Founders and product teams building GenAI applications
Innovators creating next-generation AI products using generative technologies like LLMs and diffusion models.
Researchers and enthusiasts exploring agentic AI and LLM governance
Individuals investigating autonomous AI agents and the responsible development and oversight of large language models.