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Gujarat
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Gujarat

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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