Lifesight Migrates To GCP To Modernize Its Infrastructure Leveraging Google BigQuery And Google Kubernetes Engine

Lifesight partnered with Searce to move to Google Cloud Platform from a different cloud provider, modernizing infrastructure along the way and adopting serverless and managed Big Data services.

Lifesight’s Agenda to use Google Cloud Platform (GCP) for Reducing the Average Query Processing Time

Lifesight wanted to adopt a data platform that supports building a Data Warehouse for external and internal use cases, running ad-hoc queries on data sitting in storage using a powerful querying engine, data transformation and cleaning in a faster and effective way using a spark or traditional MapReduce based pipeline. Through a Data Strategy workshop for assessing the Lifesight’s current data pipelines and other workloads, Searce proposed a set of optimizations that could be achieved through the Google Cloud Platform (GCP). Subsequently, a POC was performed to replicate 2 of the Lifesight’s pipelines with 3-months’ data of 40 TB on GCP and validated the performance. The average query processing time was reduced by 75% with BigQuery. As a result of this successful workshop, the Lifesight team realized the huge opportunity that lied in migrating and optimizing their data engineering workloads, and hence decided to move ahead with the help of the Searce team.

Lifesight’s Intention to Adopt a Data Platform

Lifesight Data Engineering Platform Requirement to scale Analytical Data

Lifesight wanted a data engineering platform that was secure, durable, and highly scalable for its analytical data. The Searce team used BigQuery to build a data warehouse and migrate the EMR data processing frameworks to handle the analytical processing part. Additionally, the application stack was moved to GKE for seamless scalability and better usage of the underlying infrastructure. Simultaneously, all the corresponding services like S3, Route53, SES, ElasticSearch were migrated to the corresponding GCP alternatives.

Broadly, as a part of the migration process, the following tasks were performed:

The Business Impact of using BigQuery, GKE and serverless GCP services

more case studies

Driving Logistics Innovation with Searce & Google Cloud

Driving Logistics Innovation with Searce & Google Cloud

Driving Logistics Innovation with Searce & Google CloudThis case study showcases how Searce empowered FRONTdoor Collective (FDC), a pioneering logistics ...
Yaantra partners with Searce & Google Cloud to help consumers with a single window stopover for smart gadgets in India

Yaantra partners with Searce & Google Cloud to help consumers with a single window stopover for smart gadgets in India

Yaantra partners with Searce & Google Cloud to help consumers with a single window stopover for smart gadgets in India ...
Xeno Runs Their AI Powered CRM Through the Infrastructure and Apps Hosted on AWS

Xeno Runs Their AI Powered CRM Through the Infrastructure and Apps Hosted on AWS

Xeno Runs Their AI Powered CRM Through the Infrastructure and Apps Hosted on AWS IntroductionXeno is an AI-powered CRM that ...
Scroll to Top