Consultant in Advanced Analytics, focus Data Engineering (f/m/d)

Job Description

Job ID: 113953
Location: Munich
Organisation: Siemens Management Consulting
Mode of Employment: Permanent / Full-time

Siemens Management Consulting is the global management consultancy for one of the world’s most innovative engineering and technology companies. We drive the digital transformation forward and provide Siemens and numerous other clients in the technology sector with consulting services, ranging from strategy through to implementation. Our mission is to transform our clients’ future and to develop the talent of today into the business leaders and experts of tomorrow.

The role
As a Consultant in Advanced Analytics with a focus on data engineering, you are part of the Digital Consulting unit. You will work in agile teams to find solutions for the most far-reaching issues faced by our clients in different industries. It will be your responsibility to generate reliable, robust and efficient data models, thus creating the foundation for analytical models and convincing visualizations. High-growth business fields and future technologies in electrification, automation and digitalization await you. With us, you will have the opportunity to specialize in your field and in related disciplines in large and exciting industries. Grow with us and use your chance to follow successful SMC alumni into leadership positions. 

What you'll do
  • Assume responsibility for the ETL process and design and implement data models. You understand the analysis needs of our clients and implement these appropriately. You'll prepare the necessary data and purge it in order to carry out the necessary analysis 
  • Build ad-hoc analysis and work with large volumes of structured and unstructured data
  • Develop visualization solutions in tools such as QlikSense, Tableau or D3 in order to present the results of your analysis
  • Help implement data-driven solutions
  • Scale machine learning pilot solutions in the cloud
  • Assume responsibility for communicating results within data and ensure smooth collaboration with your stakeholders along the value-creation process

What you'll need

  • Up to three years of experience in data science, software engineering, big data or a similar field, with outstanding performance
  • Confident in programming languages such as SQL and Python and have experience in developing solutions in distributed teams using Version Control tools like GIT
  • Familiarity with visualization tools such as Tableau and QlikSense 
  • Initial experience with cloud technologies like AWS is a plus
  • Initial experience with cluster systems such as Hadoop, Spark or SAP HANA is a plus
  • Excellent university degree (master's/diploma/PhD) in IT, Statistics, Mathematics, Physics, Data Science / Engineering or a related field
    Interest in new technologies in data management and machine learning and committed to keeping abreast of changes in this field
  • Outstanding analytical and conceptual skills and an entrepreneurial mindset
  • Relevant international experience (e.g., studies abroad, internship or employment)
  • Highly developed communication skills in English, German is a plus
  • Team player with strong interpersonal skills and willingness to travel (approx. 80 percent)
A career at SMC means you'll see the real-world impact of your thinking from day one. Apply now.

Getting in touch with us - straightforward and direct


www.smc.siemens.com - if you wish to find out more about Siemens Management Consulting before applying.


+49 (9131) 17-1717 - if you wish to discuss any initial questions with our recruitment team. The contact person handling this job ad is Matthias Lehmann.


Siemens places great value on equal employment opportunities. We look forward to receiving applications from individuals with disabilities.

Job ID: 113953

Organization: Internet of Things

Company: Siemens AG

Experience Level: Early Professional

Job Type: Full-time

Can't find what you are looking for?

Let's stay connected

Can't find what you are looking for?