Machine Learning Engineer Salary in Munich, Germany

Updated on Jun 28, 2025

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As of 2025, the average salary for Machine Learning Engineer in Munich, Germany starts from €55k per year and goes up to €150k per year.

0-2 years

€55k-€75k per annum

3-5 years

€75k-€95k per annum

6-10 years

€95k-€120k per annum

10+ years

€120k-€150k per annum

Machine Learning Engineer Salary Trend in Munich, Germany

Machine Learning Engineer Salaries in Other Locations

Brazil
R$50k - R$250k
Colombia
COP22M - COP900M
Honduras
L.15k - L.80k
Vanuatu
VT18k - VT80k
Denmark
kr60k - kr150k
Panama
30k - 150k
Aruba
AWG35k - AWG200k
Finland
€40k - €150k
Macau
MOP20k - MOP100k
Malaysia
RM48k - RM300k

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About Machine Learning Engineer

A Machine Learning Engineer is a professional who specializes in using data and algorithms to create predictive models and machine learning systems. They work on developing and implementing machine learning solutions to solve complex problems, such as recommendation systems, natural language processing, and computer vision. They need a strong understanding of computer science, statistics, and programming skills to build and optimize machine learning models. Machine Learning Engineers typically work in industries such as technology, finance, healthcare, and e-commerce.

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About Munich, Germany

Munich is the capital and largest city of the German state of Bavaria. It is known for its cultural scene, art museums, and a rich history that dates back to the 12th century. The city has a population of approximately 1.5 million residents, making it one of the most populous cities in Germany. Munich experiences a temperate oceanic climate, featuring cold winters and warm summers. The city is famous for its traditional Bavarian cuisine, including dishes like Weisswurst, pretzels, and various sausages, as well as being the host of the annual Oktoberfest celebration.

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