Why Data Engineering?
Data quality is paramount for successful Data Science and AI projects, often consuming 70-80% of project time for data engineering and preparation. In the era of massive data accumulation, effective Data Engineering is essential for organizations to derive actionable insights, driving growth and innovation.
What We Offer

Data Strategy and Planning
-
-
- Data Strategy
- Data Science Workflow
- Cloud Migration Strategy
-

Architectural Design and Development
-
-
- Data Integration
- Analytics Applications
- Machine Learning Pipelines
-

Management & Governance
-
-
- Data Governance
- AI/ML Deployment
- Analytics Operations Management
- Monitoring
-
Our Approach

Data Foundation
Help build the enterprise data foundation so a range of Data Science solutions can be built on top.
Process Pipeline
Create an end-to-end pipeline for a data-to-information solution.
Value Creation
A sound Data Engineering process helps in creating a robust Data Science Engine, which helps to acquire cost leadership, increase competitive advantage, and anticipate business opportunities.
Case Studies
An Intelligent Transport Management System for Public Transportation. Road Transport Corporation’s need to seamlessly communicate between..
Reduced turn around time by 1/3rd on document search by providing AI enabled Search Solution.
Our client is a leading Oil and Gas....
Automated Video Surveillance system for a major Airport using deep learning technique. The field of transportation..
Data Science Enables Insights Into Spend And Cost Optimization For A HVAC Manufacturing Company. Our client is a leading HVAC..
Leveraging AI to Analyze Sentiment and Derive Insights from Customer....
Using Data Science to Deliver Strategic and Actionable insights for a Logistics Company..