Senior Machine-Learning Pricing Scientist

London
6 months ago
Applications closed

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Ready for a challenge?

Then Just Eat Takeaway.com might be the place for you. We’re a leading global online food delivery platform, and our vision is to empower everyday convenience. Whether it’s a Friday-night feast, a post-gym poke bowl, or grabbing some groceries, our tech platform connects tens of millions of customers with hundreds of thousands of restaurant, grocery and convenience partners across the globe.

About this role:

The Revenue Management team owns the consumer pricing agenda globally at JET and is responsible for building the global framework and capabilities around consumer fees. Our team is seeking a talented ML Scientist with passion for solving business problems through the creation and management of advanced machine-learning capabilities and data science tools. 

This is a high-impact role where your expertise will directly shape the future of our pricing features. Our team values exploration and continuous learning, encouraging you to drive meaningful innovation and take on exciting challenges. If you're a proactive problem-solver with a passion for machine learning, experimentation and pricing, we'd love to meet you.

These are some of the key ingredients to the role:

Model development & deployment: develop, test, deploy at scale and maintain machine learning models and pricing algorithms, ensuring their scalability, robustness and performance in production. Automate tasks and build infrastructure capable of handling large-scale data processing and complex model serving.

Experimentation & innovation: explore emerging ML techniques, deep learning methods and advanced algorithms to enhance model capabilities and introduce new pricing solutions. 

Model performance monitoring & improvement: implement tools for real-time model monitoring, evaluate performance and drive continuous improvements to pricing models and pipelines. Implement feedback loops and conduct regular updates to refine models in response to market changes and business needs.

Data analysis & optimization: conduct data preprocessing, feature engineering and exploratory analysis to optimize our pricing models. 

Collaboration & cross-functional integration: work closely with data engineers, product engineers and tech teams to integrate our pricing models and engines into production systems aligning with business requirements. Foster a collaborative team environment.

Strategic recommendations & knowledge sharing: share and present findings, key insights and model impacts with both technical and non-technical stakeholders to foster understanding and drive strategic decisions.

What will you bring to the table?

A degree in Mathematics, Engineering, Statistics, Computer Science, Physics or a related field. An advanced degree is highly preferred.

Strong foundations in Machine Learning engineering. 3+ years experience in building, deploying and maintaining ML models in production environments.

Proficient in Python and strong experience with SQL or similar querying languages. 

Strong experience with cloud environments (e.g. AWS, Google Cloud, etc.) and deployment of ML models at scale. 

Familiarity with tools like Vertex (or other ML-Ops platforms) and Vertex AI for managing machine learning workflows.

Self-motivated, collaborative and adaptable, with a "can-do" attitude and comfort in a fast-paced, often ambiguous environment.

Problem-solving mindset. Proactive approach and a passion for solving complex pricing challenges through advanced engineering solutions

Excellent communication and interpersonal skills, capable of bridging technical work with business applications.

At JET, this is on the menu:

Our teams forge connections internally and work with some of the best-known brands on the planet, giving us truly international impact in a dynamic environment. Fun, fast-paced and supportive, the JET culture is about movement, growth and about celebrating every aspect of our JETers. Thanks to them we stay one step ahead of the competition.

Inclusion, Diversity & Belonging

No matter who you are, what you look like, who you love, or where you are from, you can find your place at Just Eat Takeaway.com. We’re committed to creating an inclusive culture, encouraging diversity of people and thinking, in which all employees feel they truly belong and can bring their most colourful selves to work every day.

What else is cooking?

Want to know more about our JETers, culture or company? Have a look at our career site where you can find people's stories, blogs, podcasts and more JET morsels.

Are you ready to take your seat? Apply now!

#LI-CB2

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