Youll be joining our Style Discovery team in our Customer Experience domain. The team will be responsibility for developing machine learning technology which supports or goal of enabling exciting and unique user experiences. As an org we are mobilefirst science led and datadriven and function under a product operating model meaning youll have close interactions with our product managers and designers to create the best shopping experiences for our customers.
In this role you will be leading a team that is at the heart of driving applied science into the fashion experience we serve our customers empowering them to discover and shop complete outfits that resonate with both their personal style and current fashion trends.
Engineering Leads are both technical leaders and people managers. They are responsible for how software is built (and how long it will take) covering all aspects of the Software Development Lifecycle (SDLC) including architecture design coding and qualityand for who builds the software focusing on team growth skills development and performance. Their Product Manager counterparts are accountable for why we build software to solve specific business problems and what we should build to enable our business and customers.
What you will be doing
- Working as part of an agile team of scientists machine learnings and data engineers to design and deliver highquality batch and online machine learning solutions atscale solutions for our hundreds of millions of customers/products creating measurable impact across the business.
- Supporting our services at hyperscale through critical trading periods.
- Coordinating with teams across ASOS to ensure that Customer Experience as a whole is a key consideration in organisationwide initiatives.
- Contributing to the wider engineering community through our working groups sharing your knowledge and helping to drive improvements across all of engineering.
- You will be continually developing and improving our code and technology taking an active role in the conception of brandnew features.
- You will be mentoring and coaching members of your team supporting their technical progress.
- You will contribute to the teams technical direction establish ML standards and drive quality across ASOSs ML community while sharing expertise gained from the team.
- Learning new things and always striving to develop your skills through our Tech Develops days and hackathons.
Qualifications :
About You
- You have professional experience in machine learning with expertise in deep learning methods and their practical applications in production environments.
- You have strong understanding of software development lifecycles and engineering practices (Data pipelines CI/CD containerisation observability) specifically ML Ops principles techniques and tooling.
- You possess mastery of deep learning frameworks (e.g. PyTorch TensorFlow) and distributed computing frameworks (e.g. Horovod DeepSpeed) for implementing largescale deep learning models.
- You have proven ability to create and manage multiinstance clusters for distributed and parallel training across GPUs demonstrating proficiency in data and model parallelism techniques.
- Youre comfortable providing technical leadership mentoring and coaching to engineers scientists and data professionals. You will contribute to wider engineering initiatives across ASOS.
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 were tech powered Check out the ASOS Tech Podcast here . Prefer reading Check out our ASOS Tech Blog here Work :
No
Employment Type :
Fulltime