talk-data.com talk-data.com

Topic

Analytics

data_analysis insights metrics

178

tagged

Activity Trend

398 peak/qtr
2020-Q1 2026-Q1

Activities

Showing filtered results

Filtering by: Data + AI Summit 2025 ×
Unify Your Data and Governance With Lakehouse Federation

In today's data landscape, organizations often grapple with fragmented data spread across various databases, data warehouses and catalogs. Lakehouse Federation addresses this challenge by enabling seamless discovery, querying, and governance of distributed data without the need for duplication or migration. This session will explore how Lakehouse Federation integrates external data sources like Hive Metastore, Snowflake, SQL Server and more into a unified interface, providing consistent access controls, lineage tracking and auditing across your entire data estate. Learn how to streamline analytics and AI workloads, enhance compliance and reduce operational complexity by leveraging a single, cohesive platform for all your data needs.

AI/BI Driving Speed to Value in Supply Chain

Conagra is a global food manufacturer with $12.2B in revenue, 18K+ employees, 45+ plants in US, Canada and Mexico. Conagra's Supply Chain organization is heavily focused on delivering results in productivity, waste reduction, inventory rationalization, safety and customer service levels. By migrating the Supply Chain reporting suite to Databricks over the past 2 years, Conagra's Supply Chain Analytics & Data Science team has been able to deliver new AI solutions which complement traditional BI platforms and lay the foundation for additional AI/ML applications in the future. With Databricks Genie integrated within traditional BI reports, Conagra Supply Chain users can now go from insight to action faster and with fewer clicks, enabling speed to value in a complex Supply Chain. The Databricks platform also allows the team to curate data products to be consumed by traditional BI applications today as well as the ability to rapidly scale for the AI/ML applications of tomorrow.

How an Open, Scalable and Secure Data Platform is Powering Quick Commerce Swiggy's AI

Swiggy, India's leading quick commerce platform, serves ~13 million users across 653 cities, with 196,000 restaurant partners and 17,000 SKUs. To handle this scale, Swiggy developed a secure, scalable AI platform processing millions of predictions per second. The tech stack includes Apache Kafka for real-time streaming, Apache Spark on Databricks for analytics and ML, and Apache Flink for stream processing. The Lakehouse architecture on Delta ensures data reliability, while Unity Catalog enables centralized access control and auditing. These technologies power critical AI applications like demand forecasting, route optimization, personalized recommendations, predictive delivery SLAs, and generative AI use cases.Key Takeaway:This session explores building a data platform at scale, focusing on cost efficiency, simplicity, and speed, empowering Swiggy to seamlessly support millions of users and AI use cases.

How to Get the Most Out of Your BI Tools on Databricks

Unlock the full potential of your BI tools with Databricks. This session explores how features like Photon, Databricks SQL, Liquid Clustering, AI/BI Genie and Publish to Power BI enhance performance, scalability and user experience. Learn how Databricks accelerates query performance, optimizes data layouts and integrates seamlessly with BI tools. Gain actionable insights and best practices to improve analytics efficiency, reduce latency and drive better decision-making. Whether migrating from a data warehouse or optimizing an existing setup, this talk provides the strategies to elevate your BI capabilities.

In today's rapidly evolving digital landscape, organizations must prioritize robust data architectures and AI strategies to remain competitive. In this session, we will explore how Procter & Gamble (P&G) has embarked on a transformative journey to digitize its operations via scalable data, analytics and AI platforms, establishing a strong foundation for data-driven decision-making and the emergence of agentic AI.Join us as we delve into the comprehensive architecture and platform initiatives undertaken at P&G to create scalable and agile data platforms unleashing BI/AI value. We will discuss our approach to implementing data governance and semantics, ensuring data integrity and accessibility across the organization. By leveraging advanced analytics and Business Intelligence (BI) tools, we will illustrate how P&G harnesses data to generate actionable insights at scale, all while maintaining security and speed.

Simplifying Data Pipelines With Lakeflow Declarative Pipelines: A Beginner’s Guide

As part of the new Lakeflow data engineering experience, Lakeflow Declarative Pipelines makes it easy to build and manage reliable data pipelines. It unifies batch and streaming, reduces operational complexity and ensures dependable data delivery at scale — from batch ETL to real-time processing.Lakeflow Declarative Pipelines excels at declarative change data capture, batch and streaming workloads, and efficient SQL-based pipelines. In this session, you’ll learn how we’ve reimagined data pipelining with Lakeflow Declarative Pipelines, including: A brand new pipeline editor that simplifies transformations Serverless compute modes to optimize for performance or cost Full Unity Catalog integration for governance and lineage Reading/writing data with Kafka and custom sources Monitoring and observability for operational excellence “Real-time Mode” for ultra-low-latency streaming Join us to see how Lakeflow Declarative Pipelines powers better analytics and AI with reliable, unified pipelines.

Sponsored by: EY | Navigating the Future: Knowledge-Powered Insights on AI, Information Governance, Real-Time Analytics

In an era where data drives strategic decision-making, organizations must adapt to the evolving landscape of business analytics. This session will focus on three pivotal themes shaping the future of data management and analytics in 2025. Join our panel of experts, including a Business Analytics Leader, Head of Information Governance, and Data Science Leader, as they explore: - Knowledge-Powered AI: Discover trends in Knowledge-Powered AI and how these initiatives can revolutionize business analytics, with real-world examples of successful implementations. - Information Governance: Explore the role of information governance in ensuring data integrity and compliance. Our experts will discuss strategies for establishing robust frameworks that protect organizational assets. - Real-Time Analytics: Understand the importance of real-time analytics in today’s fast-paced environment. The panel will highlight how organizations can leverage real-time data for agile decision-making.

Accelerating Analytics: Integrating BI and Partner Tools to Databricks SQL

This session is repeated. Did you know that you can integrate with your favorite BI tools directly from Databricks SQL? You don’t even need to stand up an additional warehouse. This session shows the integrations with Microsoft Power Platform, Power BI, Tableau and dbt so you can have a seamless integration experience. Directly connect your Databricks workspace with Fabric and Power BI workspaces or Tableau to publish and sync data models, with defined primary and foreign keys, between the two platforms.

In this course, you’ll learn how to orchestrate data pipelines with Lakeflow Jobs (previously Databricks Workflows) and schedule dashboard updates to keep analytics up-to-date. We’ll cover topics like getting started with Lakeflow Jobs, how to use Databricks SQL for on-demand queries, and how to configure and schedule dashboards and alerts to reflect updates to production data pipelines. Pre-requisites: Beginner familiarity with the Databricks Data Intelligence Platform (selecting clusters, navigating the Workspace, executing notebooks), cloud computing concepts (virtual machines, object storage, etc.), production experience working with data warehouses and data lakes, intermediate experience with basic SQL concepts (select, filter, groupby, join, etc), beginner programming experience with Python (syntax, conditions, loops, functions), beginner programming experience with the Spark DataFrame API (Configure DataFrameReader and DataFrameWriter to read and write data, Express query transformations using DataFrame methods and Column expressions, etc.) Labs: No Certification Path: Databricks Certified Data Engineer Associate

Getting Started With Lakeflow Connect

Hundreds of customers are already ingesting data with Lakeflow Connect from SQL Server, Salesforce, ServiceNow, Google Analytics, SharePoint, PostgreSQL and more to unlock the full power of their data. Lakeflow Connect introduces built-in, no-code ingestion connectors from SaaS applications, databases and file sources to help unlock data intelligence. In this demo-packed session, you’ll learn how to ingest ready-to-use data for analytics and AI with a few clicks in the UI or a few lines of code. We’ll also demonstrate how Lakeflow Connect is fully integrated with the Databricks Data Intelligence Platform for built-in governance, observability, CI/CD, automated pipeline maintenance and more. Finally, we’ll explain how to use Lakeflow Connect in combination with downstream analytics and AI tools to tackle common business challenges and drive business impact.

Sponsored by: Lovelytics | Predict and Mitigate Asset Risk: Unlock Geospatial Analytics with GenAI

Discover how Xcel Energy and Lovelytics leveraged the power of geospatial analytics and GenAI to tackle one of the energy sector’s most pressing challenges—wildfire prevention. Transitioning from manual processes to automated GenAI unlocked transformative business value, delivering over 3x greater data coverage, over 4x improved accuracy, and 64x faster processing of geospatial data. In this session, you'll learn how Databricks empowers data leaders to transform raw data, like location information and visual imagery, into actionable insights that save costs, mitigate risks, and enhance customer service. Walk away with strategies for scaling geospatial workloads efficiently, building GenAI-driven solutions, and driving innovation in energy and utilities.

Sponsored by: Qlik | Turning Data into Business Impact: How to Build AI-Ready, Trusted Data Products on Databricks

Explore how to build use case-specific data products designed to power everything from traditional BI dashboards to machine learning and LLM-enabled applications. Gain an understanding of what data products are and why they are essential for delivering AI-ready data that is integrated, timely, high-quality, secure, contextual, and easily consumable. Discover strategies for unlocking business data from source systems to enable analytics and AI use cases, with a deep dive into the three-tiered data product architecture: the Data Product Engineering Plane (where data engineers ingest, integrate, and transform data), the Data Product Management Plane (where teams manage the full lifecycle of data products), and the Data Product Marketplace Plane (where consumers search for and use data products). Discover how a flexible, composable data architecture can support organizations at any stage of their data journey and drive impactful business outcomes.

The Future of Real Time Insights with Databricks and SAP

Tired of waiting on SAP data? Join this session to see how Databricks and SAP make it easy to query business-ready data—no ETL. With Databricks SQL, you’ll get instant scale, automatic optimizations, and built-in governance across all your enterprise analytics data. Fast and AI-powered insights from SAP data are finally possible—and this is how.

ThredUp’s Journey with Databricks: Modernizing Our Data Infrastructure

Building an AI-ready data platform requires strong governance, performance optimization, and seamless adoption of new technologies. At ThredUp, our Databricks journey began with a need for better data management and evolved into a full-scale transformation powering analytics, machine learning, and real-time decision-making. In this session, we’ll cover: Key inflection points: Moving from legacy systems to a modernized Delta Lake foundation Unity Catalog’s impact: Improving governance, access control, and data discovery Best practices for onboarding: Ensuring smooth adoption for engineering and analytics teams What’s next? Serverless SQL and conversational analytics with Genie Whether you’re new to Databricks or scaling an existing platform, you’ll gain practical insights on navigating the transition, avoiding pitfalls, and maximizing AI and data intelligence.

Transforming Credit Analytics With a Compliant Lakehouse at Rabobank

This presentation outlines Rabobank Credit analytics transition to a secure, audit-ready data architecture using Unity Catalog (UC), addressing critical regulatory challenges in credit analytics for IRB and IFRS9 regulatory modeling. Key technical challenges included legacy infrastructure (Hive metastore, ADLS mounts using Service Principals and Credential passthrough) lacking granular access controls, data access auditing and limited visibility into lineage, creating governance and compliance gaps. Details cover a framework for phased migration to UC. Outcomes include data lineage mapping demonstrating compliance with regulatory requirements, granular role based access control and unified audit trails. Next steps involve a lineage visualization toolkit (custom app for impact analysis and reporting) and lineage expansion to incorporate upstream banking systems.

Transforming Government With Data and AI: Singapore GovTech's Journey With Databricks

GovTech is an agency in the Singapore Government focused on tech for good. The GovTech Chief Data Office (CDO) has built the GovTech Data Platform with Databricks at the core. As the government tech agency, we safeguard national-level government and citizen data. A comprehensive data strategy is essential to uplifting data maturity. GovTech has adopted the service model approach where data services are offered to stakeholders based on their data maturity. Their maturity is uplifted through partnership, readying them for more advanced data analytics. CDO offers a plethora of data assets in a “data restaurant” ranging from raw data to data products, all delivered via Databricks and enabled through fine-grained access control, underpinned by data management best practices such as data quality, security and governance. Within our first year on Databricks, CDO was able to save 8,000 man-hours, democratize data across 50% of the agency and achieve six-figure savings through BI consolidation.

In this course, you’ll learn how to use the features Databricks provides for business intelligence needs: AI/BI Dashboards and AI/BI Genie. As a Databricks Data Analyst, you will be tasked with creating AI/BI Dashboards and AI/BI Genie Spaces within the platform, managing the access to these assets by stakeholders and necessary parties, and maintaining these assets as they are edited, refreshed, or decommissioned over the course of their lifespan. This course intends to instruct participants on how to design dashboards for business insights, share those with collaborators and stakeholders, and maintain those assets within the platform. Participants will also learn how to utilize AI/BI Genie Spaces to support self-service analytics through the creation and maintenance of these environments powered by the Databricks Data Intelligence Engine. Pre-requisites: The content was developed for participants with these skills/knowledge/abilities: A basic understanding of SQL for querying existing data tables in Databricks. Prior experience or basic familiarity with the Databricks Workspace UI. A basic understanding of the purpose and use of statistical analysis results. Familiarity with the concepts around dashboards used for business intelligence. Labs: Yes

AI/BI for Self-Service Analytics

In this course, you will learn how to self-serve business insights from your company’s Databricks Data Intelligence Platform using AI/BI. After a tour of the fundamental components of the platform, you’ll learn how to interact with pre-created AI/BI Dashboards to explore your company’s data through existing charts and visualizations. You’ll also learn how to use AI/BI Genie to go beyond dashboards by asking follow-up questions in natural language to self-serve new insights, create visualizations, and share them with your colleagues. Pre-requisites: A working understanding of your organization’s business and key performance indicators. Labs: No Certification Path: N/A