Senior Data Scientist (Operations Research)

ASOS
London
5 days ago
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Job Description

The Senior Data Scientist in Strategic Projects at ASOS Supply Chain drives business value by applying advanced analytics, predictive modelling, and or operations research to optimise supply chain processes—including inbound routing, inventory management, warehousing, and last-mile delivery & returns.

The role requires clear communication of insights to diverse stakeholders, collaboration across teams, and a strong academic or applied background. We are looking for someone who is adaptable, entrepreneurial, and committed to continuous improvement, integrity, and inclusivity. You'll also have the chance to mentor others and deliver actionable insights for strategic decisions. 

The Details

  • Analyse supply chain data to identify inefficiencies and opportunities for improvement in inbound operations, warehouse operations, and delivery & returns.  
  • Develop and deploy predictive and optimisation models delivering measurable business outcomes (cost savings, efficiency gains, mean shift improvements) 
  • Collaborate with supply chain, technical, and senior management teams to present findings and drive adoption of solutions  
  • Evangelise data quality and governance standards, identifying and resolving data quality gaps  
  • Mentor data analysts within Supply Chain and contribute to the broader data science community within ASOS  
  • DE&I: Supporting our culture by championing Diversity, Equity & Inclusion strategies. 

We believe being together in person helps us move faster, connect more deeply, and achieve more as a team. That’s why our approach to working together includes spending at least 3 days a week in the office. With this role there is also a requirement for you travel across our Warehouses in Barnsley and Berlin. 


Qualifications

About You

  • Advanced analytics, predictive modelling, and or operations research expertise 
  • Strong Python and SQL proficiency; adaptable to new tools and domains  
  • Proven ability to optimise real-world processes and deliver measurable business value insights. 
  • Strong academic background or equivalent applied experience  
  • Strategic mindset with strong problem-solving skills.  
  • Adaptable and comfortable working on high-impact, ambiguous projects within a fast-paced environment. 
  • Entrepreneurial and excited by the domain expanse, i.e. end-to-end supply chain  
  • Ability to translate complex technical concepts into clear business language that can be tailored dependent on the audience 
  • Excellent communication and stakeholder management abilities including effective storytelling with data  
  • Commitment to data quality, governance, and integrity with a bias for the right action. 
  • Data driven but anecdote aware. Not confined to the perfect result.  



Additional Information

BeneFITS’

  • Employee discount (hello ASOS discount!)
  • Employee sample sales
  • 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

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