Data Scientist/ML Analyst - Outside IR35 - SC Cleared

SR2
Charing Cross, United Kingdom
2 days ago

Role details

Contract type
Temporary contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Compensation
£ 130K

Job location

Charing Cross, United Kingdom

Tech stack

Agile Methodologies
Artificial Intelligence
Amazon Web Services (AWS)
Amazon Web Services (AWS)
Cloud Computing
Python
Machine Learning
Natural Language Processing
Tableau
Unstructured Data
Data Processing
PyTorch
Large Language Models
Pandas
PySpark
Scikit Learn
Kubernetes
Cloudwatch
Terraform

Job description

We are seeking a Data Scientist/ML Analyst to support a critical government data and analytics workstream focused on innovation, experimentation, and rapid proof-of-concept delivery.

Working as part of a multidisciplinary team, you will contribute to 2-3 week innovation sprints aimed at developing and testing new approaches to help surface insight to Tableau users across a complex operational environment. The work will sit at the intersection of data science, machine learning, AI experimentation, analytics enablement, and cloud-based engineering.

This is an opportunity for someone who enjoys hands-on problem solving, prototyping, and translating data into practical use cases that can improve decision-making in high-profile environments., * Support the design and delivery of data science and AI proof-of-concepts within short innovation sprint cycles.

  • Build, test and iterate models and analytical approaches across use cases such as:
  • LLM-based documentation summarisation
  • machine learning for data quality improvement
  • anomaly detection
  • statistical modelling
  • Explore, prepare and analyse structured and unstructured data to identify patterns, issues, and opportunities for insight generation.
  • Develop robust Python-based analytical workflows using tools across the wider Python ecosystem, including libraries and frameworks relevant to machine learning and data processing.
  • Contribute to experimentation in AWS-based environments, using services such as SageMaker, S3, Athena, Lambda and CloudWatch.
  • Help surface model outputs and analytical findings in a way that can be consumed by Tableau users and wider stakeholders.
  • Work closely with engineers, analysts and stakeholders to understand business problems and turn them into testable hypotheses and data science solutions.
  • Support model evaluation, validation and documentation, ensuring outputs are explainable, proportionate and usable.
  • Contribute to infrastructure-aware delivery, including working within environments using Terraform IaC and supporting migration from Kubernetes-based pipelines into Terraform-managed infrastructure.
  • Assist with documenting methods, assumptions, limitations and recommended next steps following sprint activity.

Requirements

  • Experience working in a data science, machine learning, advanced analytics or data analyst role in a complex environment.
  • Strong hands-on capability with Python and relevant data science/machine learning tooling such as PySpark, PyTorch, pandas, scikit-learn or similar.
  • Experience building and testing analytical models or proof-of-concepts using statistical, ML or AI techniques.
  • Understanding of common data science use cases such as anomaly detection, predictive modelling, NLP or data quality analysis.
  • Exposure to cloud-based data and ML tooling, ideally within AWS.
  • Ability to interrogate datasets, assess data quality, and prepare data for experimentation and analysis.
  • Experience communicating technical findings clearly to non-technical or mixed audiences.
  • Comfortable working in Agile or sprint-based delivery environments with changing priorities and exploratory work.
  • Awareness of reproducible workflows, good analytical documentation, and governance considerations in data and AI delivery.
  • Experience supporting visualisation or downstream reporting outputs, ideally where insights are consumed in tools such as Tableau.

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