Computer Science / Data Science Intern

Siemens Energy
Lincoln
1 day ago
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Snapshot of a Typical Day

As an intern at Siemens Energy Lincoln, you will be working closely with a team of data scientists and engineers to develop data-driven solutions that contribute to the overall efficient and effectiveness of ourbusiness.



  • Analysing complex data sets to identify trends and patterns
  • Developing and implementing machine learning models
  • Collaborating with cross‑functional teams to integrate data‑driven insights into business decisions
  • Producing visual representations to support business decisions
  • Presenting findings and recommendations to stakeholders

How You Will Make An Impact

As an intern, you will be an integral part of the Siemens Energy Lincoln team, working on real‑world projects that have a direct impact on the Company’s overall performance. By applying your skills and knowledge you will help us:



  • Optimise energy production and distribution processes
  • Reduce greenhouse gas emissions and environmental impacts
  • Develop innovative solutions for a more sustainable energy future.

What You Bring To The Role

To be successful in this role, you should be studying towards or have graduated with a data or computer science degree at 2:2 level or above.



  • Strong analytical and problem‑solving skills
  • Proficiency in programming languages such as C++
  • Proficiency in the use of Power BI Knowledge of machine learning algorithms and techniques
  • Excellent communication and presentation skills
  • A passions for sustainability and energy innovation

About The Team

You will be joining a diverse and inclusive team of data scientists, engineers and business professionals who are dedicated to creating a better future through sustainable energy solutions. At Siemens Energy Lincoln, we value collaboration, continuous learning and innovation and we are committed to providing a supportive environment where you can grow and thrive.


Who is Siemens Energy Lincoln?

Siemens Energy Lincoln is a leading global engineering company that specialises in innovative technologies and solutions for sustainable energy production and management. With a strong commitment to innovation and sustainability Siemens Energy Lincoln is at the forefront of developing cutting‑edge solutions for a greener future.


Rewards And Benefits

At Siemens Energy Lincoln, we believe in rewarding our interns for their hard work and dedication.


In additional to a competitive salary of £24,454 you will enjoy:



  • 26 days holiday per year, plus public holidays
  • A supportive and nurturing work environment
  • Opportunities for networking and professional development
  • The chance to contribute to meaningful, real‑world projects

Value and Support for the Intern

At Siemens Energy Lincoln, we recognise the value that interns bring to our organisation. As an intern you will receive ongoing support and mentoring from experienced professional, as well as opportunities to develop your skills and knowledge through training and hands‑on experience. We are committed to helping you succeed and grow both personally and professionally during your time with us.


To Apply

Please submit your CV and a cover letter detailing your interest in the Data Analyst/Computer Science positions at Siemens Energy Lincoln. We look forward to hearing from you and exploring the potential for a brighter more sustainable future together.


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