Data Scientist - Search and Recommendations
Farfetch
Share this job
Porto, Portugal
Full Time
Role Highlights
Python
S3
Data Science
Computer Vision
NLP
Information Retrieval
Search
Microservices
Reliability
PhD
Transformers
BERT
Research
Google Analytics
Tools, Libraries and Frameworks
Tensorflow
PyTorch
Scikit-learn
Description
The role at Farfetch focuses on building an advanced personalization platform for online services, using large-scale data and state-of-the-art Machine Learning techniques. The Data Scientist will develop algorithms in domains like ranking, natural language processing, and computer vision specifically geared towards search and recommendations. Collaboration with the engineering team to integrate these algorithms into the platform is key. Tasks include designing, prototyping, testing, and productionizing machine learning pipelines to enhance information retrieval and recommendation systems.
Disclaimer: Job and company description information and some of the data fields may have been generated via GPT-4 summarisation and could contain inaccuracies. The full external job listing link should always be relied on for authoritative information.
FARFETCH is the leading global platform for the luxury fashion industry. Our mission is to be the global platform for luxury fashion, connecting creators, curators and consumers. Founded in 2007 by Jos Neves for the love of fashion, and launched in 2008, FARFETCH began as an e-commerce marketplace for luxury boutiques around the world. Today the FARFETCH Marketplace connects customers in over 190 countries and territories with items from more than 50 countries and over 1,300 of the worlds best brands, boutiques and department storesil initiative also encompasses FARFETCH Platform Solutions, which services enterprise clients with e-commerce and technology capabilities, and innovations such as Store of the Future, its connected retail solution. Learn more about us: www.aboutfarfetch.com www.farfetchinvestors.com Join us: farfetchgroupcareers.com
#J-18808-Ljbffr