Remove Data Engineering Remove Software Remove Software Engineering Remove Sport
article thumbnail

MLSE looks to revolutionize sports experience with digital R&D lab

CIO

Digital solutions and data analytics are changing the world of sports entertainment at a rapid clip. From how players train, to how teams make strategic decisions during games, to how venues operate and fans engage, sports organizations are turning to software engineers and data scientists to help transform the sport experience.

Sport 241
article thumbnail

Enhancing customer care through deep machine learning at Travelers

CIO

This is kind of a team sport for us, so itâ??s Collectively, the scope spans about 1,600 data analytics professionals in the company and we work closely with our technology partnersâ??more that cover areas of software engineering, infrastructure, cybersecurity, and architecture, for instance. more than 3,000 of themâ??that

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

StubHub’s Rockstar Summer Interns

StubHub

The group of 20 is a diverse mix of college, grad school and PhD students who hail from a variety of disciplines: computer science, data science, business, software engineering, design, informatics, applied mathematics and economics. They are like our customers: they love concerts, festivals, sporting events, theater?—?basically

article thumbnail

Organise your engineering teams around the work by reteaming

Abhishek Tiwari

Warehouse engineering squad - managing software services related inventory, stocktake, dispatch, allocation, transfer, robotics, etc. Customer experience engineering squad - focus on end-to-end customer life-cycle, marketing, targeting, personalisation, loyalty, etc. You want to move fast. How is that even possible?

article thumbnail

Analytics Maturity Model: Levels, Technologies, and Applications

Altexsoft

Today, most businesses use some kind of software to gather historical and statistical data and present it in a more understandable format; the decision-makers then try to interpret this data themselves. At this stage, data is siloed, not accessible for most employees, and decisions are mostly not data-driven.

Analytics 102