Key Job Responsibilities and Duties:
You will lead & own all related technical aspects of the ML based solution and collaborate with additional stakeholders (Engineering & Product) for providing the best outcome for our customers.
Your responsibilities include:
- Build a strong team within their area, by coaching and developing individual contributors
- Prioritize work in collaboration with Product Managers, depending on business needs and keeping stakeholders aligned at all times.
- Translate machine learning vision and strategy into planning and execution, and ensure timely delivery of their plans.
- Develop innovative ML models, algorithms, and engineering approaches or identify existing ones, with the potential to impact our business. Design and execute applied research plans to understand, apply, test, evolve, and generalise these technologies into reusable frameworks.
- Translate business problems into viable, reliable and robust ML and AI solutions, accounting for constraints of the production environment.
- Monitor product health, performance and business impact and act accordingly when requirements are not met.
- Identify underlying issues and opportunities across domains and situations that are not obviously related through application of structured thinking and logic.
- Solve issues by applying methods and insights gained from a variety of disciplines, navigating different environments.
- Make things happen by maintaining motivation and conveying a sense of urgency, focusing on outcomes and accomplishments, while respecting the need to balance long- and short-term goals, by applying influencing techniques and decision making skills.
- Drive, coach and mentor others through evidence and clear communication, explaining advanced technical concepts in simpler terms.
- Continuously evolve your craft. Keep up to date with industry and academic standard methodologies, periodically explore new technologies, introduce them to the machine learning community and promote their application in areas where they can generate impact.
- Actively contribute to Machine Learning at Booking.com through training, exploration of new technologies, interviewing, onboarding and mentoring colleagues.
- Push for improvements, scaling and extending machine learning tooling and infrastructure, collaborating with central teams.
We have found that people who match the following requirements are the ones who fit us best:
- Strong programming skills in languages such as Python and Java.
- Experience with cloud frameworks like AWS sagemaker and training models using TensorFlow or PyTorch
- Experience with data at scale using MySQL, Pyspark, Snowflake and similar frameworks.
- Deep understanding of machine learning algorithms, statistical models, and data structures.
- Experience with experimental design, A/B testing, and evaluation metrics for ML models.
- Experience of working on products that impact a large customer base is an advantage
- Advanced knowledge and experience in Recommendation systems, including engineering aspects of developing ML models at scale.
- Experience designing and driving end-to-end research and development plans and generating impact through large-scale machine learning model development. Preferably evidenced by peer-reviewed publication, patents, open sourced code or the like.
- Relevant work or academic experience (MSc + 5 years of working experience, or PhD + 3 years of working experience), involved in the application of Machine Learning to business problems.
- Experience on multiple machine learning facets: working with large data sets, model development, statistics, experimentation, data visualization, optimization, software development.
- Experience collaborating cross functionally in the development of machine learning products (e.g. Developers, UX specialists, Product Managers, etc.).
- Excellent English communication skills, both written and verbal.
- 3+ years leading an ML team of a minimum of 4 people in a fast-paced production environment.
- Successfully driving technical, business and people related initiatives that improve productivity, performance and quality while communicating with stakeholders at all levels
- Leading by example, gaining respect through actions, not your title. Developing your team and motivating them to achieve their goals. Providing feedback timely and leading your key team-performance indicators
Booking.com’s Total Rewards Philosophy is not only about compensation but also about benefits. Our Total Rewards strive to make it easier for you to experience all that life has to offer on your terms so that you can focus on what really matters. We offer competitive compensation as well as thoughtful, valuable, and even fun benefits which include:
- Headquarters located in one of the most dynamic and cosmopolitan cities in Europe: Amsterdam.
- Contribute to a high scale, sophisticated, world-class product and see the real time impact of your work on millions of travelers worldwide.
- Be part of a truly international fast paced environment and performance driven culture.
- Performance-based company that offers career advancement, and lucrative compensation, including bonuses and stock potential.
- Discount on Booking.com accommodations with the “Booking Deal” including other perks and benefits.
- Company-sponsored family and social activities to help our employees become integrated with each other and the company's culture.
- Diverse and creative colleagues from every corner of the world.
- Health, life, and disability insurance*
- Annual paid time off and generous paid leave scheme including: parent, grandparent, bereavement, and care leave.
- Hybrid working including flexible working arrangements, and up to 20 days per year working from abroad (home country).
- Industry leading product discounts for yourself, friends, and family, including automatic Genius Level 3 status and quarterly Booking.com wallet credit.
- Free access to online learning platforms, development and mentorship programs, and a complimentary Headspace membership
- On-site meals, coffee, and snacks, including healthy and vegan options, daily*
If your application is successful, your personal data may be used for a pre-employment screening check by a third party as permitted by applicable law. Depending on the vacancy and applicable law, a pre-employment screening may include employment history, education and other information (such as media information) that may be necessary for determining your qualifications and suitability for the position.