zur Suche

Master Thesis Continous Learning and Data Acquisition in Machine Learning Operation (MLOps) (f/m/x)

Jetzt bewerben

Stellenbeschreibung

Abschlussarbeit
Homeoffice: Nach Absprache

SOME IT WORKS. SOME CHANGES WHAT'S POSSIBLE.

SHARE YOUR PASSION.

More than 90% of automotive innovations are based on electronics and software. That's why creative freedom and lateral thinking are so important in the pursuit of truly novel solutions. That’s why our experts will treat you as part of the team from day one, encourage you to bring your own ideas to the table – and give you the opportunity to really show what you can do. 

We, the BMW Group, offer you an interesting and varied Master thesis in the area of Continous Learning and Data Acquisition in Machine Learning Operation (MLOps). 

Machine Learning Operations (MLOps) aims to streamline the deployment, monitoring, and continuous development of machine learning models in production environments [1,2]. One of the critical challenges in MLOps is ensuring that models remain up-to-date and perform well as new data becomes available. Continuous learning addresses this challenge by focusing on the acquisition of data and the subsequent training enabling models to be adapted continuously over their lifetime. This thesis aims to develop and optimize techniques for continuous learning and data acquisition within MLOps frameworks, enhancing the efficiency and effectiveness of machine learning operations.

What awaits you?

  • Research state-of-the-art continuous learning on Vision Transformers for semantic segmentation on benchmark datasets such as CityScapes and ADE20k.
  • Gain practical AI experience by implementing a novel continuous learning method for Vision Transformers, contributing to our PyTorch based research stack.
  • Utilize our cutting-edge training infrastructure to conduct experiments and evaluate your approach efficiently.
  • Present the thesis results using the scientific method, both in written and oral formats.
  • Collaborate with an experienced team that has published at international peer-reviewed conferences.
  • Engage with an international and diverse team of doctoral candidates and students at the Autonomous Driving Campus in Unterschleißheim.

Please note that you must ensure that the thesis is supervised by a university.

What should you bring along?

  • You are a master student approaching the end of your degree in computer science or related fields with focus on machine learning or artificial intelligence.
  • You have strong knowledge in computer vision concepts, tasks and Vision Transformers.
  • You have excellent programming skills in Python, PyTorch and worked with modern programming environment tools such as Docker and Git.
  • You speak English fluently.
  • You are driven by curiosity and motivated to solve problems independently as well as sharing ideas and working in a team.

What do we offer?

  • Comprehensive mentoring & onboarding.
  • Personal & professional development.
  • Flexible working hours.
  • Digital offers & mobile working.
  • Attractive remuneration.
  • Apartment offers for students (subject to availability & only Munich).
  • And many other benefits - see bmw.jobs/benefits

You are enthused by new technologies and an innovative environment? Apply now!

At the BMW Group, we see diversity and inclusion in all its dimensions as a strength for our teams. Equal opportunities are a particular concern for us, and the equal treatment of applicants and employees is a fundamental principle of our corporate policy. That is why our recruiting decisions are also based on personality, experience and skills.

Find out more about diversity at the BMW Group at bmwgroup.jobs/diversity

Earliest starting date: from 10/01/2024

Duration: 6 months

Working hours: Full-time

Contact:
BMW Group HR Team
+49 89 382-17001

  Anstellungsart
Abschlussarbeit
  Homeoffice
Nach Absprache

Hallo, leider nutzt du einen AdBlocker.

Auf Studyflix bieten wir dir kostenlos hochwertige Bildung an. Dies können wir nur durch die Unterstützung unserer Werbepartner tun.

Schalte bitte deinen Adblocker für Studyflix aus oder füge uns zu deinen Ausnahmen hinzu. Das tut dir nicht weh und hilft uns weiter.

Danke!
Dein Studyflix-Team

Wenn du nicht weißt, wie du deinen Adblocker deaktivierst oder Studyflix zu den Ausnahmen hinzufügst, findest du hier eine kurze Anleitung. Bitte .