Senior Applied Scientist - 12 month FTC

ASOS
London
1 year ago
Applications closed

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Job Description

We are looking for a Senior Applied Scientist, with expertise in deep learning, to join our cross-functional AI Trade Optimisation team. We build algorithms and machine learning systems for pricing, customer targeting, and product understanding. To do so, we are able to leverage unique datasets of transactions and click streams for millions of ASOS customers and hundreds of thousands of products. 

What you’ll be doing: 

  • You will be part of an agile, cross-functional team to build causal algorithms for the pricing, forecasting and customer targeting space.   

  • You will personally drive the design and implementation of algorithms that create measurable impact across the business. You will work independently to conduct R&D, lead stakeholder conversations, and conduct large-scale experiments to test hypotheses and drive product development.  

  • You will write production grade code, and contribute to the continual development and improvement of our codebases and technology, following best practices regarding MLOps. 

  • You will keep up to date with relevant state-of-the-art research, taking part in reading groups alongside other scientists, with the opportunity to publish novel prototypes for the business at top conferences.  

  • You will be mentoring and coaching junior members of the team, supporting their technical progress.  


Qualifications

About You 

  • You have professional experience in machine learning and their practical applications in production environments. You are familiar with statistics, regression and ensemble methods, and have particular expertise with deep learning. Expertise and exposure to optimization, causal methods or reinforcement learning are a plus. 

  • You are comfortable working in Python and familiar with at least one deep learning framework (e.g., PyTorch, TensorFlow). Experience with distributed computing frameworks (e.g., Horovod, DeepSpeed) for training deep learning models is a plus. 

  • You have a solid understanding of software development lifecycles and engineering practices (including version control, data pipelines, CI/CD), and are able to write production-grade code. 

  • You are able to work independently to manage projects and deliver prototypes against a timeline. You also have experience managing non-technical business stakeholders and working collaboratively with other machine learning professionals. 

  • We are keen to speak to people who are comfortable with R&D, and would love to meet someone who has authored publications in top-tier machine learning conferences or journals (e.g. NeurIPS, ICLR, ICML, KDD, CVPR, ICCV, ECCV, ACL, EMNLP). 



Additional Information

BeneFITS’ 

  • Employee discount (hello ASOS discount!) 
  • ASOS Develops (personal development opportunities across the business) 
  • Employee sample sales  
  • Access to a huge range of LinkedIn learning materials 
  • 25 days paid annual leave + an extra celebration day for a special moment 
  • Discretionary bonus scheme  
  • Private medical care scheme 
  • Flexible benefits allowance - which you can choose to take as extra cash, or use towards other benefits 

Why take our word for it? Search #InsideASOS on our socials to see what life at ASOS is like. 

Want to find out how we’re tech powered? Check out the ASOS Tech Podcast herehttps://open.spotify.com/show/6rT4V6N9C7pAXcX60kzzxo. Prefer reading? Check out our ASOS Tech Blog herehttps://medium.com/asos-techblog

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