Senior Data Scientist

Dowgate
1 week ago
Create job alert

Senior Data Scientist

Machine Learning, Predictive Modelling, Azure, Fabric & Synapse

Location: Hybrid (London-based office)
Salary: Competitive + 10% Bonus + 27% Civil Service Pension

This is a fantastic opportunity to join at the start of a major data transformation journey, as we move to the cloud with Microsoft Azure, Fabric, and Synapse technologies. We are investing in cutting-edge Cloud and AI-driven analytics, making this an exciting time to be part of our data science team.

If you’re a Senior Data Scientist with expertise in predictive modelling, segmentation, and data automation, and you're excited about shaping the future of data in a cloud-first environment, we want to hear from you!

Key Responsibilities

  • Lead and optimize automated reporting pipelines, ensuring high performance and quality assurance.

  • Build and deploy predictive models, enhancing customer behaviour forecasting and operational insights.

  • Maintain and further develop pricing analytics models and web applications for internal stakeholders.

  • Drive segmentation modelling projects, improving customer targeting and personalization strategies.

  • Develop and refine data pipelines and ETL processes, enabling efficient data integration into Azure Synapse & Fabric.

  • Play a key role in cloud migration projects, supporting the organization’s transition to Azure-based analytics.

  • Lead data discovery projects to onboard and analyze new data sources, helping shape our future data landscape.

  • Champion coding best practices, version control, and testing within the data science team.

  • Collaborate with internal teams and external partners, ensuring alignment with business goals.

    What We’re Looking For

  • Strong experience in machine learning, statistical methods, and predictive modelling.

  • Expertise in programming with Python or R, including optimization, modularization, and best practices.

  • Hands-on experience with SQL and working with relational databases, data lakes, and cloud platforms.

  • Exposure to Azure Data Services, Fabric, Synapse, or related cloud technologies is highly desirable.

  • Proven ability to create interactive data visualizations using tools like Plotly/Dash, Shiny, Tableau, or Power BI.

  • Experience in developing web applications for data insights using JavaScript, CSS, or similar frameworks is a plus.

  • Knowledge of Generative AI and experience using LLMs in data workflows.

  • Strong stakeholder management and communication skills, translating complex findings into actionable insights.

  • Degree in a numerate or statistical discipline (Mathematics, Statistics, Data Science, Computer Science, etc.).

    Why Join Us?

  • Be part of an exciting data transformation programme, helping shape a cloud-first analytics ecosystem.

  • Work with leading-edge cloud and data science technologies, including Azure, Fabric, and Synapse.

  • Competitive salary + 10% discretionary bonus.

  • Exceptional pension benefits with a 27% Civil Service pension scheme.

  • Hybrid working model with flexibility.

  • Collaborate with cross-functional teams and external data partners.

  • Excellent career development opportunities with continuous learning and leadership potential.

    This is an exceptional opportunity to play a key role in driving AI and cloud-based analytics innovation. If you’re passionate about data science, cloud transformation, and predictive modelling, we’d love to hear from you!

    Apply today and be part of our exciting data journey

Related Jobs

View all jobs

Senior Data Delivery Project Manager - Insurance/Financial Services

Senior Cyber Security Architect

Senior Security Architect

Senior / Principal Engineer, C

Senior Software Engineer

Senior Engineering Manager - Estate & Facilities

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Tips for Staying Inspired: How Edge Computing Pros Fuel Creativity and Innovation

Edge computing continues to disrupt traditional cloud-centric models, enabling low-latency data processing, reducing network congestion, and unlocking real-time insights across diverse industries. From smart manufacturing floors to autonomous vehicles and healthcare devices, the potential impact of edge computing is immense. Yet, professionals in this field face constant challenges—balancing constraints of limited on-device resources, ensuring security at the edge, and rapidly integrating new hardware and software innovations. How do edge computing experts keep fresh ideas flowing amid these demands? Below, we explore ten practical strategies that empower edge architects, IoT developers, infrastructure engineers, and solution consultants to stay inspired and continually innovate. Whether you’re building next-generation IoT solutions or refining multi-access edge computing (MEC) platforms, these tips can help you approach complex problems with creativity and renewed passion.

Top 10 Edge Computing Career Myths Debunked: Key Facts for Aspiring Professionals

Edge computing is rapidly reshaping how data is processed, analysed, and acted upon—bringing computation and storage closer to the actual sources of data, whether that’s a factory floor, a smart device, or an autonomous car. As the demand for latency-sensitive applications grows—think autonomous vehicles, augmented reality, and real-time analytics—so does the need for skilled professionals who can architect, implement, and maintain robust edge computing solutions. Yet, as with any emerging tech discipline, misconceptions about edge computing careers abound. Some assume the field is only for hardware wizards or giant telecoms; others believe you need a PhD in distributed systems to get started. At EdgeComputingJobs.co.uk, we see firsthand how such myths can dissuade bright minds from joining an industry that’s on the cusp of significant global impact. This article aims to debunk the top 10 myths around edge computing careers, providing clear-eyed insights into the actual opportunities and requirements within this exciting space. Whether you’re a seasoned tech professional exploring new horizons or a newcomer drawn to the prospect of real-time data processing, we invite you to read on and discover why edge computing might be the perfect new frontier for your career.

Global vs. Local: Comparing the UK Edge Computing Job Market to International Landscapes

A guide to opportunities, salaries, and work culture in edge computing across the UK, the US, Europe, and Asia For years, cloud computing has dominated conversations about digital transformation, providing the on-demand resources and scalability that organisations need to innovate. However, another paradigm is rapidly gaining momentum: edge computing. By processing data closer to its source (think sensors on a factory floor or cameras in a smart city), edge computing can reduce latency, improve reliability, and even lower bandwidth costs. It’s already transforming industries such as manufacturing, autonomous vehicles, healthcare, and telecom—sparking strong demand for professionals who can design, deploy, and manage distributed systems at the “edge.” In this blog post, we’ll explore how the UK’s edge computing job market compares to major international hubs: the United States, Europe, and Asia. We’ll evaluate current hiring trends, salary ranges, and work culture factors, offering insights for anyone considering an edge computing career—whether locally in the UK or abroad. Whether you’re an embedded systems engineer, a cloud specialist pivoting to edge, or a data scientist branching into IoT analytics, understanding these global vs. local nuances can help you plan your next career move. By the end, you’ll have a comprehensive view of the evolving edge computing landscape, including which regions are leading adoption, what skill sets are most valued, and how compensation stacks up around the world. Let’s delve in.