top of page

Migrations of Analytics Workload from AWS to GCP

Google Cloud Data Analytics.png
Google Cloud Premier Partner.png
Elastic Partner Reseller.png
35393634_10.jpg

Client

The client is a fast-growing EdTech company delivering personalized learning experiences at scale. Their platform processes large volumes of learner data and required a modern, cost-efficient analytics stack to support real-time insights and machine learning use cases.

Project Context

The client wanted to migrate to a near-real-time, large-scale data platform to consolidate and enrich business data for analytics and ML use cases.

CTA-Bg.png

Project Objectives

Build a data lake with time-series and summary analytics, enable ML use cases, and reduce TCO.

35393634_10.jpg

Challenges

Required real-time data pipelines
Needed support for ML and advanced analytics
Wanted lower TCO than AWS stack

Solution

Built real-time pipelines with Kafka and enriched data using Spark
Performed detailed TCO analysis
Managed a centralized data lake with GCP serverless stack

Solution Delivery

SquareShift migrated the analytics workload from AWS to GCP using a fully serverless setup, enabling real-time analytics and supporting ML use cases while reducing cost.

To explore the full scope, use the download link below.

Testimonial

Migrating to GCP with SquareShift’s help has transformed our data operations - faster, smarter, and more cost-effective.

Technology Stack

bottom of page