The 2021 State of Data Operations: Emerging Challenges in Expanding Cloud Data Ecosystems
More than half of organizations plan to adopt two or more cloud data platforms within the next two years, and the majority plan to use them for sensitive data analytics. Yet, despite the efficiency and deep insights that multiple cloud data platforms provide, what these organizations don’t know about data access governance in a cloud data ecosystem could introduce risk and void their data’s value.Immuta’s recent survey of data professionals uncovered some of the biggest obstacles to unlocking the value of sensitive data in a data analytics environment comprising multiple cloud data platforms. What did they find? The convergence of sensitive data use, cloud data platform adoption and regulatory enforcement and evolution is approaching at breakneck speed—data teams that want to stay competitive can’t be caught off guard.Join Sumit Sarkar, Senior Director of Product Marketing at Immuta, to learn more about what data professionals say about the current and future state of data access governance and sensitive data analytics, and how to avoid these challenges when creating a data governance strategy in a cross-cloud data ecosystem.
Sumit Sarkar is a technology researcher, thought leader and speaker. He has worked in the data access infrastructure field for over 10 years enabling data engineers, data scientists, business analysts and app developers. Sumit’s primary areas of focus include hybrid enterprise data management that supports open standards such as ODBC, JDBC, ADO.NET, GraphQL, OData/REST; and automation for privacy & governance for data analytics using privacy enhancing technologies such as differential privacy, k-anonymity, l-diversity, t-closeness and more. Sumit has presented 23 sessions live on stage to this audience at industry events such as Dreamforce, Oracle OpenWorld, MongoDB World, Modern Marketing Experience and Strata+Hadoop World.
Ready to Get Started? Here Are Some Resources to Help
What Is a Data Lakehouse?
The data lakehouse is a new architecture that combines the best parts of data lakes and data warehouses. Learn more about the data lakehouse and its key advantages.read more
Simplifying Data Mesh for Self-Service Analytics on an Open Data Lakehouse
The adoption of data mesh as a decentralized data management approach has become popular in recent years, helping teams overcome challenges associated with centralized data architecture.read more