Data Operations Engineer

Manchester
3 weeks ago
Create job alert

The Role: DataOps Engineer

As a DataOps Engineer, your responsibilities will span the development and implementation of automated solutions for data integration, quality control, and continuous delivery. This role demands a solid grounding in software engineering principles, fluency in programming languages such as Python or Scala, and an adeptness with DevOps tools. You'll play a crucial role in constructing and maintaining sophisticated data pipelines that support the organization's data science and analytics ambitions.

Collaboration is a cornerstone of this position. You will work closely with teams across the organization, assimilating their data requirements and challenges, and crafting agile, robust data solutions. Your efforts in implementing best practices in DataOps will aim to eliminate bottlenecks, elevate data quality, and ensure that data management processes are in tight alignment with our strategic analytics and decision-making objectives.

In this role, automating data pipelines and implementing scalable solutions will be just the beginning. You will also ensure data availability and integrity through effective governance, advocate for DataOps methodologies alongside IT and data teams, and continuously monitor, troubleshoot, and optimize data systems for superior performance.

 Skillset:-

Advanced proficiency in database technologies such as SQL Server, Oracle, MySQL, or PostgreSQL for data management and querying.

Expertise in implementing and managing data pipelines.

Strong understanding of data warehousing concepts, data modelling techniques, and schema design for building and maintaining data warehouses or data lakes.

Proficiency in cloud platforms such as AWS, Azure, or Google Cloud for deploying and managing scalable data infrastructure and services.

Knowledge of DevOps principles and practices for automating infrastructure provisioning, configuration management, and continuous integration/continuous deployment (CI/CD) pipelines.

Strong scripting and programming skills in languages like Python, Bash, or PowerShell for automation, data manipulation, and orchestration tasks.

Ability to collaborate with cross-functional teams including data engineers, data scientists, and business stakeholders to understand requirements, design data solutions, and deliver projects.

Excellent communication skills to effectively convey technical concepts to non-technical stakeholders and collaborate with team members.

Strong problem-solving skills to troubleshoot data issues, optimize performance, and improve reliability of data pipelines and infrastructure.

Ability to stay updated with emerging technologies, trends, and best practices in the field of DataOps and data engineering.

Initiative and drive to continuously improve skills, automate repetitive tasks, and streamline data operations processes for increased efficiency and productivity

Related Jobs

View all jobs

Senior Data Engineer

SQL Developer - Manchester Hybrid - Perm

Data Centre Engineer

PHP Developer

Content & Buying Administrator

Insights Analyst

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 Engineering Apprenticeships: Your In-Depth Guide to a High-Growth Tech Career

Data sits at the heart of modern business. From predictive analytics in finance to personalised recommendations in e-commerce, virtually every sector relies on data to make informed decisions, optimise operations, and drive innovation. Yet, as data volumes grow exponentially, so does the complexity of managing and utilising it effectively. In this evolving environment, data engineering has emerged as a critical discipline—responsible for designing, building, and maintaining the pipelines that transform raw information into actionable insights. If you’re looking to break into this vibrant and future-oriented field, data engineering apprenticeships offer a hands-on, cost-effective route. Designed to fast-track your skills, apprenticeships combine formal training with practical, on-the-job learning. Whether you’re a school leaver or a professional seeking a career change, this guide will walk you through everything you need to know about data engineering apprenticeships in the UK—from the roles you might undertake, to the skills you’ll master, and the exciting career paths that await.

Tips for Staying Inspired: How Data Engineering Pros Fuel Creativity and Innovation

Data engineering stands at the core of modern business intelligence, analytics, and machine learning initiatives. As more organisations become data-driven, the demands on data engineers—everything from building robust pipelines and optimising data warehouses to cleaning and transforming petabytes of raw information—only intensify. Yet, remaining innovative and creative in this rapidly evolving space can be challenging when faced with routine maintenance, endless transformations, and the pressure of meeting tight deadlines. So, how do data engineers stay inspired and consistently generate new ideas? Below are ten actionable strategies to help data pipeline experts, ETL developers, and cloud data architects maintain an inventive outlook, even when operations are complex and the stakes are high. If you’re looking to expand your skills, tackle challenges from fresh angles, and reinvigorate your passion for data engineering, these tips can guide you toward a more fulfilling and impactful career.

Top 10 Data Engineering Career Myths Debunked: Key Facts for Aspiring Professionals

Data is the lifeblood of modern businesses. Whether it’s guiding strategic decisions, powering advanced analytics, or fuelling machine learning models, the role of data has evolved from a back-office function to a primary driver of innovation. In this ecosystem, data engineers serve as architects and builders, designing the infrastructure and pipelines that allow organisations to collect, transform, and mobilise data efficiently. Despite the importance and rapid growth of this field, plenty of myths and misconceptions continue to cloud the realm of data engineering. Are data engineers merely “ETL developers”? Does the role only exist in big tech companies? Must you be a Python guru with a master’s degree in computer science? At DataEngineeringJobs.co.uk, we see firsthand how these myths can deter aspiring professionals from stepping into one of the most dynamic fields in data. This article aims to dispel the top 10 misconceptions about data engineering careers—shedding light on the real opportunities, necessary skills, and diverse pathways that define this vital profession. Whether you’re a student considering data engineering as your future vocation or a seasoned professional seeking a career pivot, read on. You might discover that data engineering is more inclusive and wide-ranging than you ever imagined.