You Can't Fix
What You Can't See
The practice of Data Management is essential to virtually all organizations in all industries that desire to reduce operating costs and increase revenue. Data Management methodologies and processing techniques are used extensively in virtually all aspects of today’s enterprise to satisfy organizational information and knowledge needs ranging from customer service requests to forecasting sales and production needs.
There are six primary considerations in effective data management strategies: data integrity; accessibility, backup, archive, disaster recovery and data availability. In our Data Management consulting and implementation efforts, we carefully analyze and consider each of these factors in designing the best overall solution with the lowest TOTAL cost of ownership for our clients.

Comprehensive
Data Visualization
Integrating Diverse Data Streams
Presenting Information To The User
Understanding The Complete Picture
Reporting Results To Upper Management
In today’s business environment, an organization’s information processing needs not only continuously grow larger, but become more complex as business processes and software systems evolve. Multiple geographical locations, data sources, data formats and applications present unique challenges and contribute to the difficulty of data storage, maintenance and utilization. Data Science Automation extends enterprise data management to other organizational layers from the production floor to the boardroom.
What We Perfect
Graphical System Design
Data Integrity
Data Accessibility
Data Archive
Data Analytics
Database Tools
Real-Time
Data Processing
Data Governance & Compliance
Interactive Charts & Graphs
Traceability
Custom Data
Dashboards
Automated Report Generation
LabVIEW
MES/MOM/SCADA
Access/SQL/Oracle
Remote Diagnostics
Business Intelligence
Augmented Reality
Key Performance Indicators
Live Website Data Streaming
Self-Qualification Form
As a technical user, you may know exactly what you need from us already. If you do, save time and streamline the discovery process with our self-qualification form, where you can let DSA know exactly what you need.
Get Started Today
Robust, modular test system architectures can result in short test development times and higher test capacities; and with more products getting tested sooner, more products will be sold and shipped. High throughput testing for pass/fail results is a worthy goal, but so much more can be accomplished. Data Science Automation extends the test strategy to automated text, web and database reporting, and ultimately to process improvements focused on defect prevention.
Would you like one of our Automated Test experts to contact you to discuss your application?