Any questions? Feel completely free to contact us

Data Labs

All-in-One Platform to Efficiently Deploy Predictive Analytics Solutions

More and more companies are building their own enterprise Data Labs to build and deploy in-house strategic advantages from raw data. That’s right, the Data Lab is where your enterprise creates custom, in-house solutions to answer specific business needs or resolve problems with data. DSS is the perfect tool to help companies start their own Data Labs because it leverages all the technologies you need to design, build, and deploy predictive services quickly. It’s also increasingly being adopted by more mature, growing Data Labs because on-boarding is quick and painless. Finally, DSS let’s expert data miners (accustomed to using technologies like SPSS or SAS) work with newer data science recruits who are more efficient with technologies such as R, Python, Spark, Hive, Pig, and so on. All in all, DSS is sure to help your Data Lab deliver on its promises on time.

Success Stories

User Feedback

“Before DSS, we'd externalise the whole research phase that leads to concrete solutions. Our work mainly consisted of descriptive analytics on past data. With DSS, we have internalised the design & deployment of our data solutions. We can now predict the future actions of our customers and act accordingly."

Damien Garzilli

Strategy and Business Intelligence Manager - Showroomprive

“DSS is the tool that lets us automatize the cleaning and centralization of all our data in one single place. Thanks to DSS, we can manage our numerous data streams, from input to output, and therefore make the best use out of them."

Raphael Guillet

CTO - Cityvox

“With DSS, we built an app in only 3 months that enabled a 30% boost in our team’s productivity. We were able to adopt Hadoop and Machine Learning faster than we had anticipated."

Erwan Pigneul

Project Manager - Pages Jaunes

Receive success story

Please fill out the form below to receive the success story by email:

Contact us

How can we come back to you ?