Data & Analytical Solutions
Data Engineering And Integration
A data pipeline with one main purpose — making sense of your raw data.
Key clients
The foundation needed for making your data a strategic asset
Issues related to inconsistent data and outdated systems are not news anymore. Compromised data quality, unavailable real-time analytics, lack of insights and accurate view of your business operations are just some of the consequences of poor/inadequate data handling in organizations.
Data engineering and integration are all about building and maintaining systems that gather, store, and analyze data to make it easily accessible and usable. Data engineers create pipelines that move data between sources; they set up reliable data workflows for analytics and machine learning, and ensure data quality and consistency.
This helps organizations make sense of their data, optimize their performance, and ultimately make better business decisions.
Where do Solvership’s Data engineering and integration come in?
- Creating unified systems that consolidate data across various sources
- Implementing processes that standardize data collection, storage, and management
- Integrating and organizing data for a comprehensive view of operations, customer behaviors, and market trends
- Building data infrastructure that can support larger data volumes and more complex analytics
- Developing systems that adhere to legal standards for data privacy and security
- Reducing the need for manual data handling — and the likelihood of errors
Our process
Data collection
Designing and executing systems to collect and extract data from different sources: from social media to sensor data from IoT devices.
Data storage
Using data warehouses or data lakes to store large volumes of data, and making sure the data is organized as well as easily accessible.
Data processing
Creating distributed processing systems to clean, aggregate, and transform data — ensuring it’s ready for analysis.
Data integration
Developing data pipelines that integrate data from various sources to create a comprehensive view.
Data quality and governance
Ensuring that data is of high quality, reliable, and in compliance with the relevant regulatory standards.
Data provisioning
Making the processed data available to end users and applications.