Graduate Data Scientist

OCU
Preston
1 month ago
Applications closed

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Role Overview

The Graduate Data Scientist will join an established team of Data Scientists, Data Engineers and Data Analysts working on the OCU Data Platform. They will apply modern Data Science and Machine Learning techniques to analyse complex datasets, develop predictive models and deliver actionable insights to support strategic and operational decision‑making across the Group. The role involves end‑to‑end analytical development from data exploration and feature engineering through to model evaluation, deployment and communication of findings to stakeholders. You will gain hands‑on experience with modern data science tools while receiving structured training, mentoring and professional development as part of our Graduate Programme.


Duties and Responsibilities

The following duties and responsibilities form part of the role and you will receive full training, guidance and support to develop the skills needed to carry them out effectively. As an apprentice you won’t be expected to know everything from day one; you’ll learn gradually through hands‑on experience, mentoring from the team and structured training as you grow into the role.



  • Data Exploration and Analysis: Conduct exploratory data analysis (EDA) investigating trends, patterns and anomalies in diverse datasets sourced from across the Group.
  • Model Development: Assist in the design, development and validation of statistical models and machine‑learning algorithms to support forecasting, optimisation, anomaly detection and operational efficiency.
  • Feature Engineering and Preparation: Prepare clear and transform data for modelling purposes ensuring datasets are structured and optimised for analytical accuracy and performance.
  • Insights and Visualisation: Translate analytical findings into clear, meaningful insights and visualisations that support business decision‑making, ensuring results are accessible to both technical and non‑technical audiences.
  • Collaboration and Cross‑Functional Support: Work closely with Data Engineers, Analysts and business stakeholders to understand analytical requirements and contribute to data‑driven solutions aligned with Group objectives.
  • Research and Innovation: Maintain awareness of emerging Data Science methodologies, technologies and industry trends—particularly in areas relevant to utilities, construction and energy transition—and apply this knowledge to enhance analytical approaches.
  • Model Monitoring and Continuous Improvement: Support the deployment, monitoring and iterative refinement of predictive models to ensure sustained accuracy and relevance.
  • Machine Learning Lifecycle Management: Support the full lifecycle of machine‑learning models, including versioning, experiment tracking, performance monitoring and iterative improvement to ensure models remain accurate and reliable over time.
  • Off‑the‑Job Training: Participate in structured off‑the‑job learning, including theoretical training, practical exercises and exposure to industry best practices.
  • Graduate Programme Participation: Engage fully in the Graduate Programme, combining hands‑on data science experience with formal training to meet statutory and programme requirements.
  • Development Standards: Follow established OCU Data Team development standards, ensuring analytical work, scripts, notebooks and models are appropriately documented and source‑controlled.

Qualifications and Skills

Desirable:



  • Knowledge of statistical concepts, data analysis techniques and basic machine‑learning principles.
  • A genuine interest in data science and strong commitment to ongoing professional development.
  • Problem‑solving ability with a logical, analytical mindset.
  • Strong attention to detail, ensuring high‑quality data preparation and model validation.
  • Effective communication skills, including the ability to present complex insights in a clear and understandable way.
  • Ability to work collaboratively as part of a multi‑disciplinary team.
  • Familiarity with data analysis or coding tools (such as Python, SQL, R or relevant libraries).
  • Awareness of source‑control tools (e.g. Git).
  • Familiarity with cloud‑based data platforms and tools such as Microsoft Azure Databricks, Apache Spark or related technologies, with an interest in developing practical skills in modern, scalable data‑processing environments.

What We Value

We value our commitment to each other, summed up in our five values we all sign up to: We care about safety. We lead with integrity. We strive to be better every day. We make a positive impact. We deliver to grow. We are one company, united.


Our Aim & Vision at OCU

To be the UK’s leading energy transition and utilities contractor.


We are committed to leading the way in utilities and energy transition contracting. Our mission is to innovate and deliver sustainability. At OCU, our passion for addressing complex challenges brings new standards of growth in our people and capabilities. OCU is an equal opportunities employer.


Key Skills

Laboratory Experience, Immunoassays, Machine Learning, Biochemistry, Assays, Research Experience, Spectroscopy, Research & Development, cGMP, Cell Culture, Molecular Biology, Data Analysis Skills


Employment Type: Full Time


Experience: years


Vacancy: 1


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