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Data Scientist - Ad Campaign Performance

London
2 weeks ago
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Experienced Data Scientist
12 month contract TBC
Market Rate - Depending on experience level
IR35 Status Outside TBC
Hybrid/Remote (UK Right to work) with Travel to London

Experienced Data Scientist working on a new initiative to build and deploy a modelling solution to predict & optimise advertising campaign performance as part of a productionised, customer-facing SaaS product. Ideally looking for experience in Media/Advertising sector or similar.

Experience - Must-haves:

  • Must have a number of years working commercially as a Data Scientist
  • Solid understanding of & real-world experience implementing data science & statistical principles - e.g. applied statistics, model selection, cross-validation, objective functions, hyperparameter tuning, continuous & discrete optimisation problems, etc.
  • Strong interpersonal skills & ability to explain data science principles with clarity to non-technical stakeholders when required
  • Extensive knowledge of Python programming principles including object-oriented programming, performance optimisation
  • Experience developing & deploying productionised Machine Learning applications on a cloud platform (GCP ideal, AWS & Azure also acceptable)
  • Experience with common Python packages for Machine Learning - examples include PyTorch, TensorFlow, XGBoost, scikit-learn, SciPy, NumPy, pandas, etc.
  • Strong knowledge of SQL and its use for data preparation & feature engineering
  • Understanding of & practical experience with implementing MLOps principals - including automated model retraining, monitoring & deployment strategies
  • Some knowledge of containerisation & use of tools like Docker & Docker Compose

    Nice-to-haves (Mix of the following but not all essential):
  • Experience working with Google Cloud products for ML including Vertex AI Pipelines & BigQuery
  • Experience with dbt (data build tool)
  • Previous experience working with advertising data
  • Experience with FastAPI or other Python API frameworks
  • Experience with dashboarding tools such as Looker Studio, Tableau or PowerBI
  • Experience working on a SaaS (Software-as-a-Service) application
  • Experience working with Kubeflow Pipelines
  • Experience developing on a Mac / Unix environment
  • Knowledge of CICD pipeline design & implementation
  • Experience modelling using GenAI, LLMs or neural networks in general
  • A/B testing experience / Statistical hypothesis testing experience

    Everybody is welcome
    Diversity and Inclusion Statement. | PCR Digital
    "At PCR Digital, we are committed to ensuring that diversity, equity and inclusion play a role at all stages of our recruitment - it is important to us that our own company culture and the culture of our network is as varied and supportive as possible. We love people (it's why we do what we do), so, regardless of background, we welcome you to work with us or apply to any of our jobs if you feel that they are right for you

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