Scania logo

Scania Södertälje Heltid

Data Scientist to Retail Digitalization

Detta jobb är inaktivt och går inte att söka längre.

About the job

Are you passionate about data and creating business value out of it? That’s what we do at Retail Digitalization!

Who are we?

Scania is undergoing a digital transformation where data is the driving force. We at KY under Sales & Marketing is accountable for Scania’s service portfolio and end-to-end service delivery to our customers. Our daily work is organized by the tribe set-up. This role will be located under the Prospecting and Planning tribe, where we strive for improving retail networks overall efficiency, boost service sales and enhance customer experience.

Data management and insight squad is responsible for enabling the whole retail digitalization. We aim for a sustainable data structure to long-term support data-driven initiatives. Both for advanced analytics and BI. We have an exciting journey to set-up data mesh and explore in hybrid cloud platforms. You as a data scientist is part of a cross-functional data team where we have dedicated resources and a full set of data competences to create the end-to-end data flow. We are in the right condition and moment to speed up!

Who are you as a person?

You are driven. You see possibilities more than problems. You are not afraid to question and act. You are curious and dare to try. You start something and you make sure to take it through.

You are not only a data nerd, you are rather business oriented. You love to create end-to-end value from data. We create MVPs and put them into production. Not just on PowerPoint.

You are comfortable with presentations and sharing ideas. Being a team player and working cross functionally is what we do daily.

What do you have in your backpack?

  • MSc or equivalent in Computer Science, Statistics or Math
  • Hands-on experience in manipulating and analyzing large datasets. Have worked in all steps of data science workflow and understand the appropriate statistical or machine learning techniques to use in different circumstances
  • Be able to understand business problems, refine business requirements, develop hypothesis and formulate short- and long term solution to them
  • Experience in putting machine learning algorithms in production in collaboration with software engineers from application team.
  • Familiar with concepts of agile methodologies, CI/CD, DataOps/MLOps.
  • Experience in Big data tools such as Hadoop/cloudera ecosystem, Spark, Kafka etc.
  • Experience working with Analytics tools offered by AWS Cloud Platform such as Amazon Sagemaker, Kinesis, Lambda, EC2, DynamoDB etc. Experience in Snowflake is a plus.
  • Coding skills in Python and/or Scala
  • Domain competence working with aftersales services data is a plus

For more information please contact:

Bei Qiu, Head of Prospecting and Planning

Tel:0700-827-669 Email: bei.qiu@scania.com

Application

We look forward to receiving your application, including CV, cover letter and diploma, by June 8th.

Om företaget

Scania is a world-leading provider of transport solutions, including trucks and buses for heavy transport applications combined with an extensive product-related service offering. Scania offers vehicle financing, insurance and rental services to enable our customers to focus on their core business. Scania is also a leading provider of industrial and marine engines. In 2019, we delivered 91,700 trucks, 7,800 buses as well as 10,200 industrial and marine engines to our customers. Net sales totalled to over SEK 152 billion, of which about 20 percent were services-related. Founded in 1891, Scania now operates in more than 100 countries and employs some 51,000 people. Research and development are concentrated in Sweden, with branches in Brazil and India. Production takes place in Europe, Latin America and Asia, with regional production centers in Africa, Asia and Eurasia. Scania is part of TRATON SE.

Bild #0 - Scania
Bild #1 - Scania
Bild #2 - Scania

Uptrail AB • Katarinavägen 15, 116 45 Stockholm
© 2014-2021