Remote Senior Data Engineer (m/f/d)

Founderful
Swindon
2 days ago
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Location

Remote Germany, Remote UK, Remote Spain, Remote Austria, Remote Ireland, Remote Belgium, Remote Portugal

Employment Type

Full time

Location Type

Remote

Department

Product & Engineering

OverviewApplication

About RoomPriceGenie ✨🧞♂️ Founded in 2017, RoomPriceGenie is dedicated to helping hoteliers around the globe achieve optimal pricing. We understand that many small hotels face challenges with digitalization, making their operations increasingly complex and often resulting in lost revenue. This is where we come in! We have developed a powerful solution that enables hotels to set the right prices in just seconds. Our state-of-the-art algorithm analyzes both internal hotel data and market trends to recommend pricing strategies that enhance revenue and improve booking rates. With customers spanning the globe—from the USA and Canada to Iceland, South Africa, China, Slovenia, Italy, and the UK—RoomPriceGenie has made a meaningful impact in the hospitality industry, and our clients love the results. Now, we are excited to expand our customer base and spread the word about how we can support hoteliers in optimizing their pricing strategies. We invite you to join us on this journey! We actively encourage applications from candidates with diverse backgrounds to enrich our team and drive innovation.

Your Role

As a Senior Data Engineer in the reservations data team, you will play a critical role in transforming raw reservation data from dozens of PMS systems into trusted, scalable, and high-quality KPI insights used across the company. You’ll work on production-grade data pipelines that power booking curves, occupancy rates, pickup analytics, and other core reports relied on daily by multiple teams and customers.

Your Responsibilities
  • Design, build, and maintain scalable and reliable data pipelines using our modern data stack (Snowflake, Dagster, and dbt).
  • Own end-to-end data flows, from ingestion services (Django & Celery) to analytics-ready models in the data warehouse.
  • Contribute to the migration of legacy Django/Celery-based pipelines toward our modern data platform architecture.
  • Collaborate closely with a Product Manager, Data Engineers, and Backend Engineers to prioritize integrations and deliver high-impact data capabilities.
  • Ensure data quality, reliability, and observability through testing, monitoring, and clear documentation.
  • Support multiple internal teams by providing accurate, timely, and well-documented reservation data they can trust.
  • Continuously improve scalability, automation, and operational efficiency as data volume and integrations grow.
  • Take ownership of features and improvements from design to production, including post-deployment monitoring and iteration.
Your Profile
  • 4+ years of professional Python experience, ideally in data engineering and/or backend systems.
  • Strong experience building and maintaining ETL/ELT pipelines in production environments on modern cloud data warehouses (e.g. Snowflake, Databricks, BigQuery, Redshift).
  • Strong experience in data modeling, including analytics-ready schema design, fact/dimension modeling, and performance optimization, along with data testing and documentation practices that ensure long-term data quality, trust, and maintainability.
  • Experience working with orchestrated data pipelines (e.g., Dagster, Airflow, or similar tools).
  • Experience building backend or ingestion services using Python web frameworks such as Django, FastAPI, or Flask.
  • Familiarity with background task processing and asynchronous workflows (e.g., Celery or similar systems).
  • Experience working with cloud infrastructure, preferably AWS (e.g., S3, RDS/Aurora).
  • Strong understanding of software design principles and data pipeline architecture.
  • Experience working with large datasets using tools such as pandas, polars or NumPy.
  • An analytical mindset with an interest in data quality, KPIs, and data-driven decision-making.
  • Excellent communication skills—you can explain complex technical topics clearly to both technical and non-technical stakeholders.
  • High ownership mentality—you take responsibility for reliability, quality, and long-term maintainability.
  • A collaborative, egoless team player who thrives in cross-functional environments.
  • Fluent in English and comfortable participating in technical discussions.
  • Based in or able to work within the European Time Zone (UTC+0 to UTC+2).
Nice to Have
  • Hands‑on experience with dbt (modeling, testing, documentation, performance tuning).
  • Experience with Dagster specifically.
  • Experience with or interest in modernizing legacy data pipelines.
  • Hands‑on experience with:
    • Celery & RabbitMQ
    • PostgreSQL
    • Django/FastAPI
    • Infrastructure as Code (OpenTofu / Terraform)
    • Datadog and/or Sentry
    • Experience building data observability and monitoring solutions.
    • Familiarity with product‑oriented data teams serving multiple stakeholders.
    • Located near Mannheim, Germany (bonus points!).
What We Offer at RoomPriceGenie

At RoomPriceGenie, we don’t just offer jobs; we offer an adventure! Join us in an exciting startup atmosphere where you can grow your career while changing the world for tens of thousands of independent hoteliers. Our global and diverse team is fueled by passion and a shared mission. We thrive in a culture that’s all about transparency, respect, and making a real impact together. Here’s what you can expect when you become part of our Genie family:

  • Remote‑First Model: You can work flexibly from anywhere. At the same time, we support co‑working and you’re of course welcome to work from our offices in Mannheim, Berlin, or Sydney whenever you like.
  • One Team, One Vision, One Goal: We’re in this together! Our Genies are laser‑focused on our mission, collaborating to make magic happen. It’s no wonder we score a stellar 9.3 from our team members!
  • Epic Team Gatherings: Every year, we bring our global crew together for a week of networking, brainstorming, and fun. Plus, enjoy regular hangouts in our offices to keep the camaraderie alive.
  • Growth and Development: We’re all about lifelong learning! Level up your skills with personal and professional development opportunities. You’ll even snag up to three extra days off each year to focus on your growth.
  • 5 Years? 5 Weeks! Stick with us, and we’ll reward your loyalty. After five years, you’ll earn an incredible five weeks of bonus vacation time.
  • Birthday Celebrations: It’s your day, so take it off! Celebrate your birthday the way you want, guilt‑free.
  • Flexible Hours: We get it—life happens! We offer flexible working hours to help you balance your work and personal life seamlessly.
  • Wellbeing Matters: Your mental health is a top priority. Every Genie gets access to Headspace, the leading meditation app, to help you cultivate a happier, healthier, and more zen life.
  • BetterHelp Support: We also offer BetterHelp, a professional online therapy and counseling platform, giving you additional support whenever you need it.

We kindly ask that recruitment agencies refrain from reaching out regarding this vacancy. Thank you for your understanding.


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