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Data Scientist - Attribution

Harnham
London
1 week ago
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Overview:

We are working with an innovative, fast-paced organisation focused on delivering data-driven insights across customer journeys and B2C purchase paths. The team values practical, hands-on problem-solving and seeks to build proof-of-concept models that deliver real business value, rather than perfect deployable solutions. You will have the opportunity to work independently and contribute to high-impact projects within a collaborative environment.

Key Responsibilities:

  • Build multi-touch attribution models to analyze customer journeys and B2C purchase paths

  • Prototype proof-of-concept solutions from imperfect or incomplete datasets

  • Deliver actionable insights that inform business decisions

  • Communicate complex findings clearly to stakeholders

  • Collaborate with cross-functional teams to solve challenging data problems

Required Skills and Experience:

  • Proven experience in multi-touch attribution modelling

  • Background in R&D, innovation, start-ups, or consulting

  • Comfortable working independently with strong communication skills

  • Experience with customer journey or B2C purchase path analysis

  • Ability to make models work with imperfect data and deliver tangible results

Desirable Skills:

  • Experience in full-stack data science roles

  • Familiarity with hacky, fast prototyping approaches in analytics

How to Apply:


Please submit your CV to Atif Ahmad.

Desired Skills and Experience

Required Skills and Experience:

Proven experience in multi-touch attribution modelling

Background in R&D, innovation, start-ups, or consulting

Comfortable working independently with strong communication skills

Experience with customer journey or B2C purchase path analysis

Ability to make models work with imperfect data and deliver tangible results

Desirable Skills:

Experience in full-stack data science roles

Familiarity with hacky, fast prototyping approaches in analytics

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