Blog

Scaling Up for Better Care: A Case Study in Migrating a US Healthcare Leader’s Data Warehouse from Hive to BigQuery with DataSwitch

MicrosoftTeams-image (17)
Case Study / Success Story

Scaling Up for Better Care: A Case Study in Migrating a US Healthcare Leader’s Data Warehouse from Hive to BigQuery with DataSwitch

This case study delves into how a leading American health solutions company leveraged DataSwitch to transition their data from Hive, a source environment, to Google Cloud Platform’s BigQuery technology. This case study reveals the detailed actions undertaken, emphasizing the obstacles encountered and the clever solutions created. Ultimately, it demonstrates how DataSwitch enabled the company to discover fresh pathways for efficiency, scalability, and innovation within the ever-evolving realm of healthcare technology. 

Challenge: 

The client, a healthcare leader in the US, needed to migrate a massive dataset exceeding 1000+ scripts from their existing Hive data warehouse to GCP BigQuery. This Conversion presented several challenges: 

  • Data Volume: The sheer size of the data (1000+ scripts) demanded a robust and efficient migration solution. 
  • Automation: Minimizing manual intervention was crucial for reducing errors and streamlining the process. 
  • Cost Optimization: Keeping migration costs within budget was a key priority. 
  • Time Efficiency: Completing the migration within a reasonable time-frame was essential. 

Solution: 

The client implemented DataSwitch, a robust data migration tool, to automate and expedite the migration from Hive to BigQuery. DataSwitch streamlined the process, offering benefits such as- 

  • Process Converter: DataSwitch’s DS Migrate Process Converter, a tool, expedited the migration process by transforming existing processes into formats compatible with GCP BigQuery. This conversion not only maintained accuracy but also heightened overall efficiency. 
  • High-Performance Conversion: DataSwitch efficiently converted the scripts from Hive format to BigQuery’ s native format, ensuring seamless integration with the new platform. 
  • Cost Savings: Compared to traditional migration methods, DataSwitch delivered significant cost savings of up to 80%. 
  • Time Reduction: The migration process was completed within a time-frame of 4 months, representing a time saving of 75% compared to manual approaches. 

Results: 

Through the strategic utilization of DataSwitch, the healthcare company accomplished a seamless and efficient conversion of their extensive dataset from Hive to BigQuery, yielding significant outcomes: 

  • Automated conversion of 1000+ scripts: DataSwitch successfully automated the migration of over 1000+ scripts, eliminating the need for extensive manual intervention. 
  • 95% Automation: The conversion process achieved a remarkable 95% automation rate, significantly reducing the risk of errors and streamlining the overall effort. 
  • 80% Cost Reduction: DataSwitch delivered substantial cost savings of 80% compared to traditional migration methods. 
  • 75% Time Saving: The migration was completed within 4 months, representing a time saving of 75% compared to manual approaches. 

Conclusion: 

 This engagement serves as a testament to the effectiveness of DataSwitch in facilitating large-scale data migrations. The healthcare company’s seamless transition to BigQuery underscores the tool’s capacity to automate processes, decrease costs, and save invaluable time. Through the utilization of DataSwitch, organizations can streamline their data migration endeavours and fully capitalize on the capabilities offered by cloud-based data warehousing solutions like BigQuery.

Book For a demo