At a Glance
- Tasks: Build and maintain cutting-edge ML systems to combat harmful information in real-time.
- Company: Join an innovative tech startup focused on mission-critical AI solutions.
- Benefits: Remote-first work, flexible hours, and opportunities for professional growth.
- Other info: Collaborate with a dynamic team in a high-ownership environment.
- Why this job: Make a real-world impact by shaping the future of AI-driven information integrity.
- Qualifications: Proven experience in deploying ML systems and strong Python skills required.
The predicted salary is between 60000 - 80000 £ per year.
We are representing an early-stage technology company building AI-driven systems to help detect and counter harmful information threats in real time. The company operates in a mission-critical problem space, combining machine learning, data infrastructure, and applied intelligence workflows to help users make faster, more reliable decisions.
This is a high-ownership environment suited to engineers who care about building robust production systems, not just experimenting with models.
The Role
This is an opportunity to join as a Senior Machine Learning Engineer and take ownership of production-grade ML systems from development through deployment, monitoring, and continuous improvement. You will work closely with a cross-functional team across engineering, machine learning, and intelligence-focused domains. The role is hands-on and systems-oriented, with a strong focus on reliability, scalability, and real-world performance. This is not a research-only position. The ideal candidate has a proven track record of shipping, operating, and improving ML systems in live production environments.
What You'll Do
- Build, deploy, and maintain production machine learning systems for detecting harmful or misleading information at scale.
- Own the full ML lifecycle, from data pipelines and model development through deployment, monitoring, and iteration.
- Design reliable and scalable ML infrastructure that supports both real-time and batch processing needs.
- Work with SQL and NoSQL databases to support data ingestion, storage, retrieval, and analysis.
- Implement clean, modular, maintainable Python code that can be extended by other engineers.
- Use containerisation, CI/CD, and cloud infrastructure to support production-grade deployment workflows.
- Evaluate technical trade-offs across latency, accuracy, cost, scalability, and performance.
- Collaborate with engineering, product, and domain specialists to shape both the product and the underlying ML architecture.
- Translate ambiguous, mission-critical problems into practical, working technical systems.
What We're Looking For
- Strong experience building and deploying machine learning systems in production environments.
- A clear track record of owning ML systems end to end, from data and models through deployment and monitoring.
- Strong Python engineering skills, with the ability to write clean, modular, maintainable code.
- Hands-on experience with CI/CD pipelines and containerisation tools such as Docker.
- Solid experience working with both relational and non-relational databases.
- Experience with large-scale data processing frameworks, including streaming and batch workflows.
- Broad exposure to different machine learning approaches and the judgment to apply the right method to the problem.
- Strong systems thinking, especially around reliability, scalability, latency, cost, and operational performance.
- A pragmatic, outcome-focused mindset suited to building real-world systems.
- Comfort working in a high-ownership, early-stage environment.
- Experience with NLP or machine learning systems related to content integrity, misinformation, trust and safety, or information analysis.
- Exposure to intelligence, security, geopolitical risk, or similarly complex data environments.
- Experience in an early-stage or high-growth startup.
- Familiarity with deep learning frameworks.
- Product-minded approach to ML engineering, with an interest in shaping both technical infrastructure and user-facing outcomes.
Why This Role Is Exciting
- Own meaningful ML infrastructure in a mission-critical and technically challenging domain.
- Work on production systems where speed, reliability, and accuracy have real-world importance.
- Join early enough to shape the architecture, engineering culture, and product direction.
- Collaborate with a highly cross-functional team spanning engineering, ML, and specialist domain expertise.
- Take on broad ownership across the full ML lifecycle rather than being limited to narrow model work.
- Solve complex problems involving real-time detection, large-scale data processing, and applied machine learning.
- Work in an outcomes-driven environment with flexibility and autonomy.
Work Model
This is a full-time, remote-first role based around London, with flexibility and occasional in-person collaboration or business travel expected.
Senior ML Engineer: Real-Time Production AI (Remote-First) employer: W3 Global Sourcing
Join an innovative early-stage technology company that is at the forefront of combating harmful information through AI-driven systems. With a remote-first work model based around London, you will thrive in a high-ownership environment that values collaboration and offers significant opportunities for personal and professional growth. Enjoy the flexibility to shape the engineering culture while working on mission-critical projects that have a real-world impact.
StudySmarter Expert Advice🤫
We think this is how you could land Senior ML Engineer: Real-Time Production AI (Remote-First)
✨Tip Number 1
Network like a pro! Reach out to folks in your industry on LinkedIn or at meetups. A personal connection can often get your foot in the door faster than a CV.
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your ML projects, especially those that demonstrate your ability to build and deploy production systems. This will give you an edge during interviews.
✨Tip Number 3
Prepare for technical interviews by brushing up on your Python and ML concepts. Practice coding challenges and system design questions to show you can think on your feet.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team.
We think you need these skills to ace Senior ML Engineer: Real-Time Production AI (Remote-First)
Some tips for your application 🫡
Tailor Your CV:Make sure your CV reflects the skills and experiences that match the job description. Highlight your experience with ML systems, Python coding, and any relevant projects you've worked on. We want to see how you can contribute to our mission!
Craft a Compelling Cover Letter:Use your cover letter to tell us why you're excited about this role and how your background aligns with our needs. Share specific examples of your work in production environments and how you've tackled challenges in ML engineering.
Showcase Your Projects:If you've got a portfolio or GitHub with projects related to machine learning, make sure to include it! We love seeing practical applications of your skills, especially those that demonstrate your ability to build and deploy robust systems.
Apply Through Our Website:We encourage you to apply directly through our website for the best chance of getting noticed. It helps us keep track of applications and ensures you’re considered for the role. Don’t miss out on this opportunity!
How to prepare for a job interview at W3 Global Sourcing
✨Know Your ML Systems Inside Out
Make sure you can discuss your experience with building and deploying machine learning systems in production environments. Be ready to share specific examples of how you've owned the full ML lifecycle, from data pipelines to deployment and monitoring.
✨Showcase Your Python Skills
Prepare to demonstrate your Python engineering skills by discussing clean, modular, and maintainable code you've written. If possible, bring along snippets or projects that highlight your coding style and problem-solving abilities.
✨Understand the Tech Stack
Familiarise yourself with the tools and technologies mentioned in the job description, such as CI/CD pipelines, Docker, and both SQL and NoSQL databases. Being able to talk about how you've used these in past projects will show you're a great fit for their tech environment.
✨Be Ready to Solve Real-World Problems
Think about how you would approach mission-critical problems related to misinformation and content integrity. Prepare to discuss your thought process and how you would translate complex issues into practical, working technical systems.