happyhotel logo
happyhotel

The revenue management software for the hotel industry. Generate more revenue with dynamic price management.

Staff Machine Learning Engineer – Pricing & Revenue

Machine Learning EngineerMachine Learning EngineerFull TimeRemoteLeadTeam 11-50Since 2019H1B No SponsorCompany SiteLinkedIn

Location

Germany

Posted

108 days ago

Salary

0

Seniority

Lead

Bachelor Degree5 yrs expGermanEnglishPythonSQL

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

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