Data Analyst

Stockholm, SE, 11144

Volvo Group

13 brands. 105,000 employees. 190 markets. Trucks, buses, construction equipment, marine and industrial engines. Complete solutions for financing and service.

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Work at the horizon of innovation in mobility finance
Volvo Cars is on an ambitious journey to redefine what it means to give people freedom to move during one of the most innovative times in the mobility industry. The old automotive manufacturers’ model of selling cars to retailers is being replaced with direct-to-consumer sales and new types of ownership options for consumers. Through our offers, we take the complexity out of car ownership and offer more flexibility and convenience. For the customer, Volvo and our financial partners are strongly intertwined, and Volvo Cars works to create exceptional, integrated customer experiences.

Our customers expect the financial services and processes surrounding the industry to modernise and adapt to keep up with the rapid pace of technological innovation. As part of our team, you will play a key role in redefining the future ownership experience and mobility products by leading the creation innovative financial solutions.


What we need

As a Data Analyst, you will play a pivotal role in providing invaluable analytical insights to drive performance steering of Volvo Cars Financial & Mobility Services. Your expertise will be crucial in driving profitability, managing risk, and steering performance through the development of insightful models to interpret large and varied datasets. You have experience with:

  • SQL, Python or R (Python preferred), Excel
  • Data visualization with Python, R or Power Bi
  • Report preparation with Power Point

 

Other skills that will be favorably looked upon include

  • Deep familiarity with Snowflake, showcasing the ability to navigate and leverage its functionalities.
  • Strong Power Bi skills.

.

Background & Experience

  • Background in a quantitative field - finance, economics, econometrics mathematics, engineering etc
  • Minimum of 3-5 years of post-qualification experience in a relevant field (excluding internship experience).
  • Exhibit maturity in approach and a keen ability to collaborate within a diverse team environment.
  • Self-starter with strong internal drive to succeed.
  • High attention to detail, although strongly focused on driving insights and deriving actionable outcomes from analyses.
  • Curiosity and desire to develop business domain knowledge in financial and mobility services.

Key Responsibilities:

  • Develop and implement various financial, statistical and predictive models to identify insights aimed at enhancing portfolio value.
  • Conduct statistical analysis on extensive datasets to extract meaningful trends and patterns.
  • Undertaking rapid ad-hoc analyses to provide quick steering opportunities.
  • Querying, joining and manipulating large datasets to generate data sets that can be used for analysis by Portfolio Management team members.
  • Collaborate with team members to interpret data findings, generate targeted reports, and formulate actionable recommendations

 

Location
Stockholm


How to apply
Does this sound like your next challenge? Welcome with your application by submitting your resume no later than 15 April 2024.
For questions regarding the recruitment process, please contact senior recruiter craig.schlebusch@volvocars.com

 

We do not accept email applications directly due to GDPR so we welcome your application via the link.  We are reviewing applications on a rolling basis so don't delay sending in your interests.

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* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

Tags: Data visualization Econometrics Economics Engineering Excel Finance Mathematics Power BI Python R Snowflake SQL Statistics

Region: Europe
Country: Sweden
Job stats:  41  8  0
Category: Analyst Jobs

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