Data Scientist - Retail/E-Commerce - Permanent

E Ngineers
London
1 year ago
Applications closed

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Data Scientist - Retail/E-Commerce - Permanent

Lewisham

Data Scientist
Permanent
London
50,000-70,000

My client is a specialist Retail and Design business that bridges the gap between designers and customers, making great products directly accessible to people. They are currently looking to hire a Data Scientist who is passionate about great products and has a focus on high-level predictive solutions.

You will sit within the Data Analytics team, working closely with Data Engineers, Analysts, and Product Owners, collaborating on projects such as:

  1. Targeted Modelling
  2. High-level Analytics
  3. Traffic Prediction
  4. Infrastructure Solutions

SKILLS

  1. Hands-on experience implementing data analytic solutions using SAS/SQL/R or Python (advanced skills in programming preferred).
  2. Fluency with advanced statistical and machine learning techniques: time series forecasting, product recommendations, classification problems.
  3. Ability to initiate and drive analytic projects from inception to delivery, and productionize and automate the process with excellent programming skills.
  4. Source control experience.

TO STAND OUT:

  1. Knowledge in cloud and engineering platform solutions such as AWS/GCP/Azure.
  2. Experience in retail, marketing, ecommerce, or digital advertising.

The client will be conducting the first round of interviews this week, so send the latest copy of your CV to (url removed) to arrange an introductory call.

Unfortunately, we are unable to offer visa sponsorship at this time.

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