Senior Data Engineer - Contract

Methods
Great Malvern
9 months ago
Create job alert

Methods Analytics

Methods Analytics (MA) exists to improve society by helping people make better decisions with data. Combining passionate people, sector-specific insight, and technical excellence to provide our customers an end-to-end data service.

We use a collaborative, creative and user centric approach to data to do good and solve difficult problems. Ensuring that our outputs are transparent, robust, and value discussion and debate as part of our approach. We will question assumptions, ambition, and process – but do so with respect and humility.

We relish difficult problems, and overcome them with innovation, creativity, and technical freedom to help us design optimum solutions. Ethics, privacy, and quality are at the heart of our work, and we will not sacrifice these for outcomes.

We treat data with respect and use it only for the right purpose. Our people are positive, dedicated, and relentless. Data is a vast topic, but we strive for interactions that are engaging, informative and fun in equal measure. But maintain a steely focus on outcomes and delivering quality products for our customers.

We are passionate about our people; we want out colleagues to develop the things they are good at and enjoy.

Methods was acquired by the Alten Group in early 2022.

Requirements

On-site, Full time.
 

We are seeking a seasoned Senior Data Engineer (Infrastructure) to join our team. This role is essential for designing, building, and maintaining sophisticated data infrastructure systems that operate across both on-premises and Azure cloud environments. The position involves deploying and managing scalable data operations that support advanced analytics and data-driven decision-making, crucial for our organisational growth and innovation. 

Requirements 

Develop and Manage Data Pipelines: You will design, construct, and maintain efficient and reliable data pipelines using Python, capable of supporting both streaming and batch data processing across structured, semi-structured, and unstructured data in on-premises and Azure environments.  Hybrid Cloud and Data Storage Solutions: Implement and manage data storage solutions leveraging both on-premises infrastructure and Azure, ensuring seamless data integration and accessibility across platforms.  Containerisation and Orchestration: Utilise Docker for containerisation and Kubernetes for orchestration, ensuring scalable and efficient deployment of applications across both cloud-based and on-premises environments.  Workflow Automation: Employ tools such as Apache Airflow to automate data flows and manage complex workflows within hybrid environments.  Event Streaming Experience: Utilise event-driven technologies such as Kafka to handle real-time data streams effectively.  Security and Compliance: Manage security setups and access controls, incorporating tools like Keycloak to protect data integrity and comply with legal standards across all data platforms.  Data Search and Analytics: Oversee and enhance Elasticsearch setups for robust data searching and analytics capabilities in mixed infrastructure settings.  Database Management: Administer and optimise PostgreSQL databases, ensuring high performance and availability across diverse deployment scenarios. 

Essential Skills and Experience 

Strong Python Skills: Expertise in Python for scripting and automating data processes across varied environments.  Experience with ETL/ELT: Demonstrable experience in developing and optimising ETL or ELT workflows, particularly in hybrid (on-premises and Azure) environments.  Expertise in Hybrid Cloud Data Architecture: Profound knowledge of integrating on-premises infrastructure with Azure cloud services.  Containerisation and Orchestration Expertise: Solid experience with Docker and Kubernetes in managing applications across both on-premises and cloud platforms.  Proficiency in Workflow Automation Tools: Practical experience Apache Airflow in hybrid data environments.  Experience in Event Streaming: Proven ability in managing and deploying event streaming platforms like Kafka. Data Security Knowledge: Experience with implementing security practices and tools, including Keycloak, across multiple platforms.  Search and Database Management Skills: Strong background in managing Elasticsearch and PostgreSQL in environments that span on-premises and cloud infrastructures. 

Your Impact 

In this role, you will empower business leaders to make informed decisions by delivering timely, accurate, and actionable data insights from a robust, hybrid infrastructure. Your expertise will drive the seamless integration of on-premises and cloud-based data solutions, enhancing both the flexibility and scalability of our data operations. You will champion the adoption of modern data architectures and tooling, and play a pivotal role in cultivating a data-driven culture within the organisation, mentoring team members, and advancing our engineering practices. 

Desirable Skills and Experience 

Certifications in Azure and Other Relevant Technologies: Certifications in cloud and on-premises technologies are highly beneficial and will strengthen your application.  Experience in Data Engineering: A minimum of 5 years of experience in data engineering, with significant exposure to managing infrastructure in both on-premises and cloud settings. 

This role will require you to have or be willing to go through Security Clearance. As part of the onboarding process candidates will be asked to complete a Baseline Personnel Security Standard; details of the evidence required to apply may be found on the government website If you are unable to meet this and any associated criteria, then your employment may be delayed, or rejected . Details of this will be discussed with you at interview. 

This role requires candidates to currently hold active SC clearance and be eligible and willing to undergo Developed Vetting (DV) clearance. This aspect will be discussed in detail during the interview process. 


The position also requires an on-site presence 5 days per week at our location around Worcester, Gloucester, Great Malvern (England), Ebbw Vale, and Brynmawr (Wales). If you are passionate about using data to drive decisions and technological innovation in a hybrid infrastructure environment, we encourage you to apply. 

Benefits

Related Jobs

View all jobs

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer - Snowflake & AWS

Senior Data Engineer - Snowflake - £90,000 - London - Hybrid

Senior Data Engineer - Remote - £70k

Senior Data Engineer - MS Fabric - Remote - £70k - £75k

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.

Data Science Jobs in the Public Sector: Exploring Opportunities Across GDS, NHS, MOD, and More

Data science has emerged as one of the most influential fields in the 21st century, transforming how organisations make decisions, improve services, and solve complex problems. Nowhere is this impact more visible than in the UK public sector. From the Government Digital Service (GDS) to the National Health Service (NHS) and the Ministry of Defence (MOD), government departments and agencies handle vast amounts of data daily to support the well-being and security of citizens. For data enthusiasts looking to make a meaningful contribution, data science jobs in the public sector can offer rewarding roles that blend innovation, large-scale impact, and societal benefit. In this comprehensive guide, we’ll explore why data science is so pivotal to government, the roles you might find, the skills needed, salary expectations, and tips on how to succeed in a public sector data science career.

Contract vs Permanent Data Science Jobs: Which Pays Better in 2025?

Data science sits at the intersection of statistics, machine learning, and domain expertise, driving crucial business decisions in almost every sector. As UK organisations leverage AI for predictive analytics, customer insights, and automation, data scientists have become some of the most in-demand professionals in the tech job market. By 2025, data scientists with expertise in deep learning, natural language processing (NLP), and MLOps are commanding top-tier compensation packages. However, deciding whether to become a day‑rate contractor, a fixed-term contract (FTC) employee, or a permanent member of an organisation can be challenging. Each path offers a unique blend of earning potential, career progression, and work–life balance. This guide will walk you through the UK data science job market in 2025, examine the differences between these three employment models, present sample take‑home pay scenarios, and offer strategic considerations to help you determine the best fit for your career.

Data Science Jobs for Non‑Technical Professionals: Where Do You Fit In?

Beyond Jupyter Notebooks Ask most people what a data‑science career looks like and they’ll picture Python wizards optimising XGBoost hyper‑parameters. The truth? Britain’s data‑driven firms need storytellers, strategists, ethicists and project leaders every bit as much as they need statisticians. The Open Data Institute’s UK Data Skills Gap 2024 places demand for non‑technical data talent at 42 % of all data‑science vacancies—roles focused on turning model outputs into business value and trustworthy decisions. This guide highlights the fastest‑growing non‑coding roles, the transferable skills many professionals already have, and a 90‑day action plan to land a data‑science job—no pandas required.