talk-data.com talk-data.com

A

Speaker

Adam Morton

3

talks

author

Filter by Event / Source

Talks & appearances

3 activities · Newest first

Search activities →
Unlock Data Agility with Composable Data Architecture

Are your data systems slowing down your AI initiatives? The potential of AI to revolutionize business is undeniable, but many organizations struggle to bridge the gap between ambitious ideas and real-world results. The cause? Traditional data architectures remain too rigid and siloed to support today's dynamic, data-intensive demands. If you're a data leader searching for a solution, composable data architecture is the answer. This essential guide provides a clear, actionable framework for you to discover how this modular, adaptable approach empowers data teams, streamlines pipelines, and fuels continuous innovation. So, you'll not only keep pace with your most agile competitors—you'll surpass them. Understand the fundamental concepts that make composable architecture a game-changer Design pipelines that optimize performance and adapt to your organization's unique data needs See how composable architecture breaks down silos, enabling faster, more collaborative data processes Discover tools to streamline data management of high-volume streams or multicloud environments Leverage flexible architecture that simplifies data sharing, enabling easier access to insights

Designing a Modern Application Data Stack

Today's massive datasets represent an unprecedented opportunity for organizations to build data-intensive applications. With this report, product leads, architects, and others who deal with applications and application development will explore why a cloud data platform is a great fit for data-intensive applications. You'll learn how to carefully consider scalability, data processing, and application distribution when making data app design decisions. Cloud data platforms are the modern infrastructure choice for data applications, as they offer improved scalability, elasticity, and cost efficiency. With a better understanding of data-intensive application architectures on cloud-based data platforms and the best practices outlined in this report, application teams can take full advantage of advances in data processing and app distribution to accelerate development, deployment, and adoption cycles. With this insightful report, you will: Learn why a modern cloud data platform is essential for building data-intensive applications Explore how scalability, data processing, and distribution models are key for today's data apps Implement best practices to improve application scalability and simplify data processing for efficiency gains Modernize application distribution plans to meet the needs of app providers and consumers About the authors: Adam Morton works with Intelligen Group, a Snowflake pure-play data and analytics consultancy. Kevin McGinley is technical director of the Snowflake customer acceleration team. Brad Culberson is a data platform architect specializing in data applications at Snowflake.

Mastering Snowflake Solutions: Supporting Analytics and Data Sharing

Design for large-scale, high-performance queries using Snowflake’s query processing engine to empower data consumers with timely, comprehensive, and secure access to data. This book also helps you protect your most valuable data assets using built-in security features such as end-to-end encryption for data at rest and in transit. It demonstrates key features in Snowflake and shows how to exploit those features to deliver a personalized experience to your customers. It also shows how to ingest the high volumes of both structured and unstructured data that are needed for game-changing business intelligence analysis. Mastering Snowflake Solutions starts with a refresher on Snowflake’s unique architecture before getting into the advanced concepts that make Snowflake the market-leading product it is today. Progressing through each chapter, you will learn how to leverage storage, query processing, cloning, data sharing, and continuous data protection features. This approach allows for greater operational agility in responding to the needs of modern enterprises, for example in supporting agile development techniques via database cloning. The practical examples and in-depth background on theory in this book help you unleash the power of Snowflake in building a high-performance system with little to no administrative overhead. Your result from reading will be a deep understanding of Snowflake that enables taking full advantage of Snowflake’s architecture to deliver value analytics insight to your business. What You Will Learn Optimize performance and costs associated with your use of the Snowflake data platform Enable data security to help in complying with consumer privacy regulations such as CCPA and GDPR Share data securely both inside your organization and with external partners Gain visibility to each interaction with your customersusing continuous data feeds from Snowpipe Break down data silos to gain complete visibility your business-critical processes Transform customer experience and product quality through real-time analytics Who This Book Is for Data engineers, scientists, and architects who have had some exposure to the Snowflake data platform or bring some experience from working with another relational database. This book is for those beginning to struggle with new challenges as their Snowflake environment begins to mature, becoming more complex with ever increasing amounts of data, users, and requirements. New problems require a new approach and this book aims to arm you with the practical knowledge required to take advantage of Snowflake’s unique architecture to get the results you need.