We empower. You create.
AI Engineer – Berlin
Location
Germany
Posted
3 days ago
Salary
0
Seniority
Senior
Job Description
AI Engineer – Berlin
Hypoport SE
• Development and operation of production AI- and ML-based applications for products, platforms, and internal workflows • Design and implementation of solutions using LLMs, RAG, and Graph-RAG systems • Building robust backend services, APIs, and data pipelines • Monitoring and optimizing model quality, data quality, performance, latency, costs, and reliability of AI systems
Job Requirements
- Solid experience in developing production AI or ML-based applications
- Strong software engineering skills
- Knowledge of LLMs, RAG, embeddings, agents, knowledge graphs, AI APIs, or automations
- Experience with modern AI/ML platforms, ideally in an AWS environment with services such as Bedrock or SageMaker
- Cross-functional collaboration with Product, Engineering, Data, and business teams
Benefits
- Flexible part-time options — whether due to childcare, mental health challenges, caregiving responsibilities, or returning to work after a longer break, part-time arrangements are possible.
- We are inclusive! Whether you need special aids, have specific needs, or face other barriers, we are committed to finding solutions so you can work with us as accessibly as possible.
- Transparent working environment
Related Guides
Related Job Pages
More AI Engineer Jobs
Applied AI Engineer II
LearneoPioneering a platform of builder-driven productivity and learning businesses.
• Collaborate with experienced data scientists and software engineers to gain insights into building scalable and efficient data pipelines, model training, and deployment systems. • Troubleshoot issues in the entire machine learning infrastructure, from Linux, Docker, and Kubernetes up to the highest levels of our ML stack. Resolve issues, improve system performance, and make our stack the best in the industry. • Assist in the design and development of on-premises MLOps solutions to support the delivery of machine learning models, and a seamless handover between research and productionization of ML artifacts. • Drive and uphold high engineering standards, bringing consistency to codebases encountered and ensuring software is adequately reviewed, tested, and integrated. • Optimize existing models for better performance and throughput. • Incorporate ML model training, validation, and evaluation settings in addition to traditional coding tests like unit and integration testing. • Build and maintain tools for deployment, monitoring, and operations. - Continuously refine and enhance CI/CD workflows to support the evolving needs of the machine learning infrastructure.
Applied AI Engineer – Level II
360 Social AgencyWe Provides 360 services for Digital Marketing, Event Management & Web Development
• Collaborate with experienced data scientists and software engineers to gain insights into building scalable and efficient data pipelines, model training, and deployment systems. • Troubleshoot issues in the entire machine learning infrastructure, from Linux, Docker, and Kubernetes up to the highest levels of our ML stack. Resolve issues, improve system performance, and make our stack the best in the industry. • Assist in the design and development of on-premises MLOps solutions to support the delivery of machine learning models, and a seamless handover between research and productionization of ML artifacts. • Drive and uphold high engineering standards, bringing consistency to codebases encountered and ensuring software is adequately reviewed, tested, and integrated. • Optimize existing models for better performance and throughput. • Incorporate ML model training, validation, and evaluation settings in addition to traditional coding tests like unit and integration testing. • Build and maintain tools for deployment, monitoring, and operations. - Continuously refine and enhance CI/CD workflows to support the evolving needs of the machine learning infrastructure.
• Responsible for transforming AI capabilities into real business solutions by building systems that not only respond but also execute tasks, automate processes, and deliver results. • Will work at the intersection of software engineering, data, and AI, designing and operating intelligent applications integrated into the corporate environment.
AI/Machine Learning Engineer
MoonshotSocial enterprise working to end online harms, applying evidence, ethics and human rights.
• Developing, training, tuning and running ML models on our data to get answers to key questions. • Integrating and maintaining these models within our software products. • Monitoring model inference outputs to assess performance degradation over time. • Establishing feedback mechanisms with end users to continuously improve model performance. • Developing and integrating new analytical algorithms to run against large datasets. • Guiding our teams on how best to utilise AI/ML in ethical, appropriate and values driven ways.




