The revenue management software for the hotel industry. Generate more revenue with dynamic price management.
Staff Machine Learning Engineer – Pricing & Revenue
Location
Germany
Posted
108 days ago
Salary
0
Seniority
Lead
Job Description
Staff Machine Learning Engineer – Pricing & Revenue
happyhotel
• Technical leadership and end-to-end ownership of pricing and revenue ML initiatives • Develop and optimize forecasting and pricing models • Combine time series, demand signals, and heterogeneous data sources • Build a robust measurement system and define clear rollout criteria • Establish standards for backtesting, reproducibility, and versioning • Ensure operational reliability through monitoring, drift detection, and retraining mechanisms • Automate high-impact processes to improve throughput and quality • Design data models in the data warehouse to serve as the basis for reliable metrics • Standardize dashboards for business KPIs • Prioritize requirements together with Product and Revenue teams
Job Requirements
- 5+ years of relevant experience in ML engineering, data science, or analytics
- Proven success in pricing, revenue, forecasting, or similar revenue/monetization systems
- Mindset for offline vs. online evaluation and the ability to detect bias and leakage
- Production-grade Python and SQL skills
- Pragmatic working style and willingness to take full ownership of projects
- Fluent communication in German and strong English skills
Benefits
- No formal managerial/disciplinary responsibility
- Full transparency
Related Guides
Related Job Pages
More Machine Learning Engineer Jobs
• Develop and manage scalable, automated machine learning pipelines, CI/CD workflows, and orchestration frameworks • Design and implement robust model serving infrastructure using platforms like TorchServe, TensorFlow, Triton etc. • Develop scalable inference architectures optimized, with ultra-low latency and high throughput • Ensure seamless model deployment by implementing A/B testing, canary releases, and rollback capabilities • Develop logging, alerting, and monitoring solutions to track model development, and reliability • Improve GPU usage, enable autoscaling, and streamline resource allocation to boost efficiency • Design, implement, and maintain feature stores, robust data pipelines, and scalable storage solutions to efficiently handle large volumes of data
• Lead and mentor a team of MLOps engineers, fostering technical growth and a culture of operational excellence • Define and drive the MLOps roadmap, aligning infrastructure capabilities with Research, Engineering and product objectives • Establish best practices, standards, and processes for ML infrastructure, deployment, and operations • Own technical decision-making for ML infrastructure architecture and tooling choices • Architect and oversee scalable, automated machine learning pipelines, CI/CD workflows, and orchestration frameworks • Drive the design and implementation of robust model serving infrastructure using platforms like Triton, TorchServe, TensorFlow Serving, and KServe • Define inference architecture strategy optimized for ultra-low latency and high throughput • Design and maintain feature stores, robust data pipelines, and scalable storage solutions to efficiently handle large volumes of data • Collaborate with research teams to bridge the gap between experimentation and production • Define logging, alerting, and monitoring strategy to track model performance, drift, and system reliability
Senior Machine Learning Engineer
MenTMenT is een executive search kantoor dat bedrijven sinds 2001 helpt bij het oplossen van hun rekruteringsproblemen.
• A Senior ML Engineer is responsible for designing, implementing, and maintaining AI systems across various applications. • They contribute to the organization's AI strategy, work on complex solutions and optimize existing systems to enhance performance. • Responsibilities include mentoring junior ML engineers and collaborating with cross-functional teams. • Develop AI applications and solutions by understanding business needs, collaborating with stakeholders, analyzing data, and implementing AI algorithms. • Design, develop, and maintain robust AI systems, including machine learning models and deep learning networks. • Document and demonstrate solutions with clear technical documentation, diagrams, and code comments. • Contribute to the organization’s AI strategy by researching cutting-edge tools and techniques, participating in educational opportunities, and maintaining professional networks. • Identify and resolve performance and scalability issues in AI applications by improving software and addressing bottlenecks and bugs. • Lead and collaborate with cross-functional teams to define and implement innovative AI solutions, optimizing user interaction and experience. • Conduct code reviews and mentor team members to uphold high coding standards. • Translate business requirements into actionable technical requirements. • Work closely with data engineering and data science teams to implement automated and unit testing. • Improve operations by analyzing systems and recommending procedural changes. • Support engineering goals by delivering project outcomes as needed.
• Design, build, and operate production-grade AI/ML systems that power Asteri’s orchestration platform • Collaborate closely with backend, platform, and frontend engineers to integrate AI capabilities into scalable, reliable product workflows • Deploy and iterate on LLM-based applications in production, continuously evaluating quality, latency, and cost • Own retrieval and agentic systems (e.g., RAG pipelines, workflow agents, policy-driven logic) end-to-end • Define and run rigorous evaluation and testing for AI systems, including offline experiments and production monitoring • Improve model performance and system behavior over time through experimentation, tuning, and system-level optimizations • Implement strong engineering practices for AI development, including testing, CI/CD, versioning, and rollback strategies • Stay current with advances in applied AI and generative models and translate relevant techniques into practical product improvements • Partner with cross-functional teams to understand product requirements and translate them into robust AI solutions


