The phenomenon of big data continues to underscore the importance of having the right database to manage ever-growing volumes. According to IBM Databand, we create approximately 33 quintillion bytes of data daily.

For data-driven organizations, it’s clear that having the right database is critical to successfully managing this explosion of data. What’s less clear is how to transition from legacy relational database management systems to modern NoSQL cloud databases. Successfully migrating from a relational world to a NoSQL world requires careful planning and training and the right tools.

Best practices for migrating from an RDBMS to NoSQL cloud database

One of the biggest dings against NoSQL databases is that they’re so easy to work with that developers end up jumping in headfirst, without bothering to properly construct their data model, thereby causing problems later. While NoSQL databases do provide significantly more developer agility and flexibility, they still shouldn’t be used willy-nilly.

SEE: There are a great deal of NoSQL resources to help migrate from an RDBMS.

Here are some key best practices and strategies to ensure a successful migration.

Understand your data requirements

  • Assess data types and volume: Evaluating the types of data and amount you have will assist you in selecting a suitable NoSQL database for your specific data requirements.
  • Identify data access patterns: Understanding how your data is accessed and queried will help guide the optimization of database structure and indexing strategies for efficient manipulation and retrieval.

Plan for migration

  • Develop a migration strategy: This involves selecting appropriate migration tools, establishing a migration schedule and determining how to map data from the relational schema to the NoSQL model.
  • Test the migration process: Before executing a full scale migration, conduct a pilot test to identify any issues and refine the migration process.

Ensure data integrity

  • Validate data: Check for data completeness, accuracy and consistency on a regular basis during the migration process to ensure its integrity.
  • Manage data consistency: Understand how the consistency model of your chosen NoSQL database affects your application, especially if you are transitioning from an ACID-compliant RDBMS.

Choose the right NoSQL technology

  • Match technology to need: As different NoSQL databases — like document stores, key-value stores and column stores — have different strengths, be sure to choose one that aligns with your specific use case and data requirements.

Train for new technologies

  • Educate your team: Familiarize your team with the NoSQL database you have chosen and its query language, as well as best practices for NoSQL design and development.
  • Leverage community and vendor resources: Make use of resources provided by NoSQL database communities and vendors, such as online documentation, forums and official training programs.

Construct a proper data model

  • Design for NoSQL: Focus on how the data will be accessed rather than how it will be stored, and think about how to represent your model in its document store.
  • Iterative design: Be prepared to iterate on your data model. NoSQL databases offer flexibility to evolve your data model as your application requirements change.

Manage the transition carefully

  • Gradual transition: Consider implementing a phased approach when migrating. This allows you to monitor and adjust the new system without disrupting existing operations.
  • Parallel run: Ensure the performance and functionality of the new system meet expectations by operating the NoSQL system alongside the existing RDBMS for a period of time.

Follow up with post-migration practices

  • Monitor performance and scalability: After migration, continuously monitor the performance of the NoSQL database and its scalability capabilities to ensure it meets the expected demand.
  • Update operational practices: Revise your backup, recovery and maintenance procedures to align with the capabilities and requirements of the NoSQL environment, and rewrite your application code to query your NoSQL database through statements such as insert() or find().

Choosing a NoSQL cloud database

It is critical to understand that selecting the right database is a key success factor for your organization’s goals in migrating to a NoSQL database. Each NoSQL database has unique strengths and features and is suited to different types of applications and business needs.

To assist you in making an informed decision, below are a few of the top NoSQL databases in the market, each excelling in a specific area and offering robust cloud functionalities.

Amazon DynamoDB

As a part of AWS, DynamoDB provides seamless integration with other AWS services, offering features like built-in security, backup and restore, in-memory caching and real-time data processing. It is best for projects requiring a highly reliable and scalable NoSQL database with minimal maintenance, ideal for web, gaming, mobile, ad-tech, IoT and many other applications.

MongoDB Atlas

MongoDB Atlas a fully-managed cloud NoSQL service. It is best for applications requiring a flexible schema for diverse and evolving data formats, particularly in web, mobile and IoT sectors.

Apache Cassandra

Cassandra is another NoSQL database that is supported on several cloud platforms. It provides a cloud-native service with features like automated scaling and simplified operations and is best suited to scenarios demanding high scalability and fault tolerance across multiple data centers, such as real-time big data applications.

Couchbase

Couchbase is a fully managed database as a service, offering automated scaling, in-memory performance and cross data center replication. It is best suited to interactive applications needing high throughput and low latency, such as in mobile and edge computing.

Editor note: This article was originally written by Matt Asay and later updated by Kihara Kimachia to provide insight on the latest migration best practices.

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