Delivering Insights at the Point of Action
As Digital shifts from the interaction with the customer to embrace all facets of the value chain, new business domains will be redefined by advanced analytics. So real-time Insights are becoming the defining value part of the equation for the business, with self-service delivery - at the point of action.
But Data is still the foundation of every decision - it is the engine of a successful digital business - with a new, federated data landscape where the EDW is complemented by Business Data Lakes.
The Insights & Data Global Practice combines technology excellence, data science and business and industry expertise to help organizations drive valuable and actionable insights from internal and external data. And our 7 Guiding Principles help this transition from classical to modern BI landscapes for both the business and IT, with international scale, proprietary solutions, innovation labs and extensive partner and data ecosystem.
The evidence? We are recognized as a “Leader in Gartner Magic Quadrant for Business Analytics Services, Worldwide 2016" and "Leader in NelsonHall’s Vendor Evaluation & Assessment Tool (NEAT), 2017".
View all our main services solutions
- Application Services
- Digital Customer Experience
- Business Services
- Infrastructure Services
- Cloud Choice
- Insights & Data
- Consulting Services
- Technology and Engineering Services
- Digital Services
- Digital Manufacturing
- Secure Your Assets
- Testing Services
- Service Management
- Application Outsourcing Services
- Business Process Management (BPM)
- Finance & Accounting
- Product and Engineering Services
- Green IT
- Mobile Solutions
- Service Integration
- Supply Chain Management
- Workforce Management
Got a question?
Join the conversation
#Podcast: How businesses can roll out #AI and #datascience programs within their organization. https://t.co/FJyqdfMcV7
RT @ipfconline1: Industry Experts’ Top IoT Predictions for 2017 and Beyond [Infographic]
[via @UPSLongitudes] #IoT #IloT #BigData #Analytic…
#DataLake: Die große Menge an zeitversetzten Daten in Abhängigkeit zu bringen, ist oft schwieriger als gedacht https://t.co/ScERi1frdS ^ka