Event Format
Duration: 10:00 AM – 4:00 PM IST
Format: In-person
Registration: Open for registration till 14th Feb 2026
Final Attendance: Invite-only confirmation (based on relevance and capacity)
Location: Will be shared only with confirmed participants
Register here: https://forms.gle/4uHZNKxBH7xcCwEU6
Event Overview
Generative AI is rapidly evolving from experimentation to enterprise adoption. However, building reliable, secure, and scalable GenAI solutions requires strong data foundations, governance, and architecture — not just access to large language models.
This full-day session focuses on how Databricks enables organisations to move from raw data to governed intelligence using Generative AI. The session is designed to be practical, architecture-driven, and grounded in real-world enterprise use cases.
While registration is open to all, final participation will be confirmed via invitation to ensure a focused and high-quality learning environment.
Who Should Attend
This event is open to:
- Data Engineers
- Data Scientists
- ML / AI Engineers
- Analytics Engineers
- BI professionals exploring GenAI
- Final-year students (Data, AI, or Engineering backgrounds)
Note: This is not an introductory AI session. Participants are expected to have basic familiarity with data or analytics concepts.
Full-Day Agenda (10:00 AM – 4:00 PM)
10:00 – 10:20 | Welcome and Session Orientation
- Event objectives and structure
- How the day will progress
- What participants should expect by the end of the session
10:20 – 11:00 | GenAI in the Enterprise: Reality vs Hype
- Why GenAI initiatives fail without strong data foundations
- Why ChatGPT-style demos don’t translate to enterprise success
- Common challenges such as hallucinations, data leakage, and lack of governance
- Why GenAI is a data engineering and ML problem, not just prompting
- Where Databricks fits in the enterprise GenAI landscape
- 11:00 – 11:45 | Databricks GenAI Reference Architecture
- Lakehouse architecture for GenAI workloads
- Delta Lake as a reliable and auditable data layer
- Feature engineering and data preparation for AI
- Vector search and embedding workflows
- Unity Catalog for governance and access control
- MLflow for experiment tracking and model lifecycle
11:45 – 12:00 | Break
12:00 – 12:45 | Core GenAI Concepts and Design Patterns
- How production-grade GenAI systems are built
- LLMs (OpenAI, Azure OpenAI, and open-source models)
- Embeddings and semantic similarity
- Retrieval-Augmented Generation (RAG)
- Prompt versioning, evaluation, and observability
- Structured versus unstructured GenAI use cases
Real-world examples include:
- Internal knowledge assistants
- Compliance and policy search
- GenAI over enterprise BI data
12:45 – 1:30 | Lunch Break
1:30 – 2:45 | Live Demo: Building GenAI on Databricks
- Ingesting enterprise data into Delta Lake
- Creating embeddings and vector indexes
- Implementing a RAG pipeline
- Querying data using an LLM
- Tracking experiments with MLflow
- Applying governance using Unity Catalog
Focus will be on architecture, data flow, and decision-making rather than UI demonstrations.
2:45 – 3:00 | Break
3:00 – 3:30 | Governance, Security and Cost Control
- What makes GenAI enterprise-ready
- Role-based access control for GenAI systems
- Handling sensitive and regulated data
- Monitoring, observability, and model drift
- Cost optimisation strategies
- Why Databricks is safer than ad-hoc GenAI stacks
3:30 – 3:50 | Career and Industry Mapping
- GenAI roles, skills, and expectations
- Data Engineer vs ML Engineer vs AI Engineer
- Skill expectations for GenAI projects
- Portfolio and project guidance
- What not to over-focus on, such as prompt-only roles
3:50 – 4:00 | Q and A and Closing
Learning Outcomes
Participants will:
- Understand enterprise GenAI architecture on Databricks
- Learn how Lakehouse and GenAI work together
- Gain clarity on RAG, embeddings, vector search, and governance
- See a real-world GenAI implementation end to end
- Understand career pathways in GenAI
Prerequisites
- Basic understanding of data pipelines or analytics
- Familiarity with SQL or Python is beneficial
- Willingness to think beyond GenAI demos
Registration and Selection Process
- Registration is open to all
- Participants must fill out the registration form
- Final participation will be confirmed via email invitation
- Seats are limited to maintain quality and interaction
Register here: https://forms.gle/4uHZNKxBH7xcCwEU6