Vol. 2 No. 1 (2022): Journal of AI-Assisted Scientific Discovery
Articles

Reducing points of failure - a hybrid and multi-cloud deployment strategy with Snowflake

Sarbaree Mishra
Program Manager at Molina Healthcare Inc., USA
Cover

Published 10-01-2022

Keywords

  • Cloud scalability,
  • data security

How to Cite

[1]
Sarbaree Mishra, “Reducing points of failure - a hybrid and multi-cloud deployment strategy with Snowflake”, Journal of AI-Assisted Scientific Discovery, vol. 2, no. 1, pp. 568–595, Jan. 2022, Accessed: Dec. 24, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/241

Abstract

Reducing points of failure is an essential goal for organizations that rely heavily on data-driven operations, as any disruption can have cascading effects on business continuity. Snowflake, a robust cloud data platform, empowers businesses to adopt hybrid and multi-cloud deployment strategies that significantly enhance resilience, flexibility, and performance. By leveraging Snowflake's ability to seamlessly operate across multiple cloud environments & integrate with on-premises systems, organizations can ensure consistent access to their data while minimizing risks associated with vendor lock-in or infrastructure failures. A hybrid approach allows businesses to maintain critical data & applications on-premises or in private clouds for security and compliance while utilizing public clouds for scalability and cost-effectiveness. Snowflake's cross-cloud architecture supports data mobility and integration, fostering improved data governance, enhanced disaster recovery capabilities, and operational continuity. This approach reduces downtime risks and optimizes performance by enabling workload distribution and resource balancing across environments. With built-in replication, failover, and automated recovery capabilities, Snowflake offers a strong foundation for organizations aiming to build a future-ready data ecosystem. Adopting this strategy involves embracing best practices, such as ensuring seamless data synchronization.Implementing robust governance policies &Designing failover mechanisms that align with business objectives. The result is a resilient, agile infrastructure supporting growth, innovation, and uninterrupted operations. Snowflake's hybrid and multi-cloud deployment strategy represents a critical evolution in data management, enabling businesses to stay competitive in a fast-paced, data-driven world.

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