AI) Machine Learning Research Engineer

London
1 week ago
Create job alert

Job Title: AI Machine Learning Research Engineer

Duration: 6 Months

Location: Remote - With Branch/clients visit when required, London / Windsor

Rate: £850 - £900 inside umbrella

About the Role:

Join our client's Innovation Team as an AI Machine Learning Research Engineer, where you will play a pivotal role in turning visionary ideas into reality. This position is integral to the technical execution of innovative projects in the energy sector, leveraging your expertise in AI, full-stack development, and cloud architecture. If you are passionate about pioneering technologies and enjoy bridging the gap between theoretical concepts and practical applications, this role is for you.

Key Responsibilities:

POC Development & Prototyping: Create robust prototypes and proof of concepts (POCs) that showcase the value of new ideas, integrating AI with front-end and back-end systems to align with sustainable energy solutions.
AI & Machine Learning Implementation: Design and deploy AI/ML models to extract insights from energy data, optimise systems, and enhance customer experiences.
Full-Stack Development: Develop end-to-end solutions, ensuring seamless integration between components and optimal performance across the technology stack.
Technical Innovation: Utilise advanced technologies, including large language models and predictive analytics, to tackle complex challenges in the energy industry.
Cross-Functional Collaboration: Work alongside Innovation Designers to align technical development with design concepts and business objectives, translating AI capabilities into user-friendly experiences.
Agile Methodology: Apply agile practises to produce high-quality code rapidly and facilitate iterative feedback for continuous improvement.
Cloud and DevOps Implementation: Manage applications in cloud environments (AWS/Azure) and implement CI/CD pipelines to streamline development and deployment.
Design Skills Application: Contribute to user interface and experience design, focusing on AI interactions and data visualisations to create intuitive products.
Knowledge Sharing: Act as a mentor within the Innovation Team, sharing insights on emerging AI technologies and fostering a culture of learning and growth.
Stakeholder Interaction: Collaborate with stakeholders to refine requirements, gather feedback, and validate the technical aspects of innovations, clearly communicating the capabilities of AI solutions.

Required Skills and Experience:

Innovation Background: Experience in an innovation or product team, ideally with exposure to both large organisations and startups.
POC Development: Proven track record of transforming complex ideas into workable prototypes and POCs.
Technical Proficiency: Strong programming skills in various languages and frameworks relevant to project needs.
Emerging Technology Experience: Hands-on experience with advanced technologies such as AI, LLMs, and SLMs.
Cloud and DevOps Understanding: Basic knowledge of cloud services and DevOps principles to support efficient development and deployment processes.
Design Capability: Skills in designing user-friendly interfaces that enhance the user experience of prototypes.
Agile Expertise: Proficiency in agile methodologies, with experience in fast-paced, iterative environments.

Adecco is a disability-confident employer. It is important to us that we run an inclusive and accessible recruitment process to support candidates of all backgrounds and all abilities to apply. Adecco is committed to building a supportive environment for you to explore the next steps in your career. If you require reasonable adjustments at any stage, please let us know and we will be happy to support you

Related Jobs

View all jobs

ML/AI Software Engineer

Senior Security Architect

Data Engineer

Lead Data Engineer

DevOps Engineer

Azure AI Engineer

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.

AWS Cloud Jobs in 2025: Your Complete UK Guide to Joining the Engine Behind Modern Computing

From the smallest side‑project to the largest cinematic rendering farm, Amazon Web Services (AWS) powers a staggering share of the world’s compute workloads. In 2024 AWS passed US $100 bn in annualised revenue and opened the UK West (Manchester) region, adding to the existing London (eu‑west‑2) region. AWS now employs more than 6,500 people across the UK, spanning engineering, sales, data‑centre operations and professional services. The official AWS careers site lists over 1,200 UK vacancies at the time of writing, many tagged “cloud infrastructure”, “generative AI” or “sovereign cloud”. Whether you’re a graduate eager to automate infrastructure with CDK, a security specialist protecting hyperscale data centres, or a solutions architect helping FTSE 100 firms modernise workloads, this guide shows you how to land an AWS cloud job in 2025.

Cloud Computing vs. DevOps vs. Site Reliability Engineering (SRE) Jobs: Which Path Should You Choose?

Cloud computing has evolved from a niche concept to an essential backbone for modern businesses across virtually every industry. Whether a startup looking to scale quickly or a large enterprise aiming to reduce on-premise infrastructure costs, organisations are migrating applications and services to the cloud at an unprecedented pace. As a result, there’s a booming market for skilled professionals who can design, deploy, and maintain these cloud environments, fueling demand for cloud jobs at all levels. However, many aspiring cloud professionals find themselves confused by the overlap of terms like “Cloud Computing,” “DevOps,” and “Site Reliability Engineering (SRE).” While these disciplines share certain tools and philosophies, each one has a distinct focus. Understanding these differences can help you determine which career path fits your strengths, interests, and professional goals. In this blog post, we’ll delve into the nuances separating Cloud Computing, DevOps, and SRE. We’ll explore overlapping skill sets, outline typical job responsibilities, discuss salary expectations in the UK market, provide real-world examples, and offer guidance on how to break into these fields. By the end, you’ll have a clearer roadmap to identify where your talents and aspirations align, enabling you to pursue the right opportunities in this fast-growing sector. And if you’re ready to take that next step, head over to www.cloud-jobs.co.uk to explore the latest roles in these exciting domains.

Cloud Programming Languages for Job Seekers: Which Should You Learn First to Launch Your Cloud Career?

In today’s digital economy, cloud computing is everywhere, from enterprise data centres to consumer applications. As more organisations move to the cloud for scalability, flexibility, and cost efficiency, the demand for cloud-savvy professionals—developers, DevOps engineers, site reliability engineers (SREs), architects—continues to grow. If you’re searching for opportunities on www.cloud-jobs.co.uk, a key question arises: Which programming language should you learn first to excel in cloud-based environments? The range of options is vast. Python, Java, Go, C#, JavaScript—each has its own advantages and use cases in cloud computing. The best choice depends on factors like deployment targets, microservices architecture, platform preference (AWS, Azure, Google Cloud, etc.), and your career goals (DevOps, backend services, data processing). In this comprehensive guide, you’ll find: Detailed overviews of the top programming languages for cloud computing. Pros/cons and ideal use cases for each language. A simple beginner project to help you deploy a basic cloud application. Essential tooling and career resources so you can confidently land a role in today’s competitive cloud market.