Company overview:
Machine Learning Reply provides customized end-to-end solutions in the data science field that cover the entire project life cycle - from initial strategic consulting to data architecture and infrastructure topics, through to data processing and quality assurance using machine learning algorithms. We enable our customers to successfully implement new data-driven business models as well as optimize existing processes and products - with a focus on open-source and cloud technologies.
About the role:
We are seeking a talented and highly skilled Cloud and Data Engineer Consultant with a technical background to join our team. As a Consultant, you will be responsible for providing expert guidance and technical support to our clients in leveraging cloud-based data and machine learning solutions, with a specific focus on AWS, GCP, or Azure. The ideal candidate for this role possesses a solid background in Software Development, knowledge of Cloud Solutions, and shares our passion for Data and AI.
Responsibilities:
- Consult with clients to understand their business objectives, data engineering, and machine learning requirements.
- Design and develop cloud-based data and machine learning solutions using AWS, GCP, and/or Azure services and tools.
- Build and maintain scalable data pipelines, ensuring data quality and reliability.
- Collaborate with cross-functional teams to implement machine learning models and data pipelines.
- Stay up to date with the latest trends and advancements in cloud-based technologies, data engineering, and AI.
- Advise clients on strategic decisions and take ownership of the implementation of the suggested solutions.
What we offer you:
- Access to work on projects across industries (large and mid-market companies in Banking, Insurance, Automotive, Retail, etc.).
- Broaden your skills through interdisciplinary work and training in the areas of data engineering, cloud architecture, and data science.
- Benefit from industry-leading cooperations in the cloud, BI, and AutoML fields.
- A very active social program, including training, conferences, team buildings, Reply Exchange, communities of practice, and hackathons.
- Work in an open, flat environment within a broad Reply knowledge-sharing network.
- Award-winning office space in downtown Munich with access to “Stammstrecke.”
- State-of-the-art equipment of your choice.
- Public transport ticket with Deutschlandticket.
- Gym membership subsidy for a gym of your choice.
- Flexible work environment between client, Reply office, and remote work.
Minimum Qualifications:
- Previous experience and/or interest in the area of Artificial Intelligence projects and Cloud.
- Project experience, either through internships or similar corporate experience, in designing complex cloud-based solutions.
- Experience in Python, Java, and SQL.
- Knowledge of Distributed Data Processing technologies like Hadoop or Spark.
- Successfully completed university studies with a strong quantitative background, for example in Business Informatics, Data Science, Informatics, Computer Science, or similar.
- Ability to convincingly communicate and present analytical results to management.
- Interest and/or experience in the full lifecycle of Data: from Cloud Infrastructure, Data Engineering, Data Analytics, and Visualization to ML Engineering and MLOps.
- Fluent in English and able to speak German at least at a B2 Level.
Desired Qualifications:
- Extensive experience working with cloud technologies (AWS, Azure, GCP).
- Certificates from Cloud Providers are an advantage.
- Understanding of underlying database infrastructure (data models, ETL processes).
- Kubernetes and/or Docker knowledge is a plus.
- Experience in Infrastructure as Code technologies (Terraform, CodeFormation) is a plus.
- Interest in (agile) project management.
What are you waiting for?
Join our team at Machine Learning Reply as a Cloud and Data Engineer Consultant in Munich!
If you have any further questions or would like to apply, please do not hesitate to write directly to Jonas Heepen (j.heepen@reply.de).