Let’s get started
By clicking ‘Next’, I agree to the Terms of Service
and Privacy Policy
Jobs / Job page
Machine Learning Engineer  image - Rise Careers
Job details

Machine Learning Engineer

About Faculty


At Faculty, we transform organisational performance through safe, impactful and human-centric AI.

With a decade of experience, we provide over 300 global customers with software, bespoke AI consultancy, and Fellows from our award winning Fellowship programme.

Our expert team brings together leaders from across government, academia and global tech giants to solve the biggest challenges in applied AI.

Should you join us, you’ll have the chance to work with, and learn from, some of the brilliant minds who are bringing Frontier AI to the frontlines of the world.


We operate a hybrid way of working, meaning that you'll split your time across client location, Faculty's Old Street office and working from home depending on the needs of the project. For this role, you can expect to be client-side for up-to three days per week at times and working either from home or our Old street office for the rest of your time.


About the Role

You will design, build, and deploy production-grade software, infrastructure, and MLOps systems that leverage machine learning. The work you do will help our customers solve a broad range of high-impact problems in our Government & Public Services team - examples of which can be found here.

Because of the potential to work with our clients in the National Security space, you will need to be eligible for Security Clearance, details of which are outlined when you click through to apply.


What You'll Be Doing

You are engineering-focused, with a keen interest and working knowledge of operationalised machine learning. You have a desire to take cutting-edge ML applications into the real world. You will develop new methodologies and champion best practices for managing AI systems deployed at scale, with regard to technical, ethical and practical requirements. You will support both technical, and non-technical stakeholders, to deploy ML to solve real-world problems. 

Our Machine Learning Engineerings are responsible for the engineering aspects of our customer delivery projects. As a Machine Learning Engineer, you’ll be essential to helping us achieve that goal by:

  • Building software and infrastructure that leverages Machine Learning;

  • Creating reusable, scalable tools to enable better delivery of ML systems

  • Working with our customers to help understand their needs

  • Working with data scientists and engineers to develop best practices and new technologies; and

  • Implementing and developing Faculty’s view on what it means to operationalise ML software.

As a rapidly growing organisation, roles are dynamic and subject to change. Your role will evolve alongside business needs, but you can expect your key responsibilities to include:

  • Working in cross-functional teams of engineers, data scientists, designers and managers to deliver technically sophisticated, high-impact systems.

  • Working with senior engineers to scope projects and design systems

  • Providing technical expertise to our customers

  • Technical Delivery

Who We're Looking For

You can view our company principles here. We look for individuals who share these principles and our excitement to help our customers reap the rewards of AI responsibly. 

We like people who combine expertise and ambition with optimism -- who are interested in changing the world for the better -- and have the drive and intelligence to make it happen. If you’re the right candidate for us, you probably:

  • Think scientifically, even if you’re not a scientist - you test assumptions, seek evidence and are always looking for opportunities to improve the way we do things.

  • Love finding new ways to solve old problems - when it comes to your work and professional development, you don’t believe in ‘good enough’. You always seek new ways to solve old challenges.

  • Are pragmatic and outcome-focused - you know how to balance the big picture with the little details and know a great idea is useless if it can’t be executed in the real world.

To succeed in this role, you’ll need the following - these are illustrative requirements and we don’t expect all applicants to have experience in everything (70% is a rough guide):

  • Understanding of, and experience with the full machine learning lifecycle

  • Working with Data Scientists to deploy trained machine learning models into production environments 

  • Working with a range of models developed using common frameworks such as Scikit-learn, TensorFlow, or PyTorch

  • Experience with software engineering best practices and developing applications in Python.

  • Technical experience of cloud architecture, security, deployment, and open-source tools ideally with one of the 3 major cloud providers (AWS, GPS or Azure)

  • Demonstrable experience with containers and specifically Docker and Kubernetes

  • An understanding of the core concepts of probability and statistics and familiarity with common supervised and unsupervised learning techniques

  • Demonstrable experience of managing/mentoring more junior members of the team 

  • Outstanding verbal and written communication.

  • Excitement about working in a dynamic role with the autonomy and freedom you need to take ownership of problems and see them through to execution

What we can offer you:

The Faculty team is diverse and distinctive, and we all come from different personal, professional and organisational backgrounds. We all have one thing in common: we are driven by a deep intellectual curiosity that powers us forward each day.

Faculty is the professional challenge of a lifetime. You’ll be surrounded by an impressive group of brilliant minds working to achieve our collective goals.

Our consultants, product developers, business development specialists, operations professionals and more all bring something unique to Faculty, and you’ll learn something new from everyone you meet.

Faculty Glassdoor Company Review
4.4 Glassdoor star iconGlassdoor star iconGlassdoor star iconGlassdoor star icon Glassdoor star icon
Faculty DE&I Review
3.9 Glassdoor star iconGlassdoor star iconGlassdoor star icon Glassdoor star icon Glassdoor star icon
CEO of Faculty
Faculty CEO photo
Marc Warner
Approve of CEO

Average salary estimate

$70000 / YEARLY (est.)
min
max
$60000K
$80000K

If an employer mentions a salary or salary range on their job, we display it as an "Employer Estimate". If a job has no salary data, Rise displays an estimate if available.

What You Should Know About Machine Learning Engineer , Faculty

As a Machine Learning Engineer at Faculty in London, you’ll immerse yourself in a collaborative environment where innovation ignites change. At Faculty, we’re committed to transforming organizational performance through impactful AI, working with over 300 global customers across diverse sectors. In this dynamic role, you’ll be designing, building, and deploying production-grade software, infrastructure, and MLOps systems that utilize machine learning to address real-world needs. Your engineering prowess will be crucial in tackling high-impact problems, particularly within our Government & Public Services team. Here, you’ll engage with cutting-edge machine learning applications and collaborate with clients to ensure their requirements are met. The hybrid work setup allows you to balance client-side meetings and work from our Old Street office or the comfort of your home, depending on project demands. In this fast-paced environment, you’ll convert theory into practice by developing scalable tools and methodologies that empower our clients to operationalize machine learning effectively. If you are passionate about ethical AI and have the expertise to bridge technology and business, you’ll thrive in this role. Your work will directly influence the success of various projects, making you a vital asset to our team and our mission to promote responsible AI. We’re looking for someone with a scientifically driven mindset who seeks continuous improvement and embraces the challenge of delivering exceptional solutions. If this resonates with you, then join us at Faculty, where the future of AI is being crafted every day.

Frequently Asked Questions (FAQs) for Machine Learning Engineer Role at Faculty
What responsibilities does a Machine Learning Engineer at Faculty in London have?

A Machine Learning Engineer at Faculty in London is responsible for designing and deploying software and infrastructure that leverages machine learning to solve real-world problems. This role involves collaboration with various stakeholders, including data scientists and engineers, to develop reusable tools and best practices for operationalizing ML systems effectively.

Join Rise to see the full answer
What qualifications are required for the Machine Learning Engineer position at Faculty?

To succeed as a Machine Learning Engineer at Faculty, candidates should have a strong understanding of the full machine learning lifecycle, experience with deploying models in production environments, and proficiency in programming with Python. Familiarity with cloud architecture and frameworks such as Scikit-learn, TensorFlow, or PyTorch is highly desirable, along with experience in managing and mentoring junior team members.

Join Rise to see the full answer
How does Faculty support the career development of a Machine Learning Engineer?

At Faculty, we prioritize continuous learning and professional growth for our Machine Learning Engineers. You will work alongside brilliant minds in the AI field, partake in innovative projects, and have opportunities to mentor others. Our culture encourages experimentation and fosters an environment where you can develop new methodologies and approaches in machine learning.

Join Rise to see the full answer
What is the typical work environment for a Machine Learning Engineer at Faculty?

The work environment for a Machine Learning Engineer at Faculty is hybrid, allowing flexibility to work from home, client locations, or our Old Street office. The role often involves client-side collaboration, making adaptability important as you balance in-office and remote work based on project needs.

Join Rise to see the full answer
What makes Faculty an exciting place to work as a Machine Learning Engineer?

Faculty offers an extraordinary opportunity for Machine Learning Engineers to immerse themselves in groundbreaking AI projects that aim to solve significant global challenges. The diverse and knowledgeable team fosters a unique atmosphere of intellectual curiosity, where collaboration and innovation come together to drive impactful outcomes in the field of AI.

Join Rise to see the full answer
Common Interview Questions for Machine Learning Engineer
Can you explain the machine learning lifecycle?

When asked about the machine learning lifecycle during the interview, highlight the key stages such as data collection, data processing, model training, evaluation, and deployment. Emphasize your familiarity with each phase and how you have contributed to them in past projects, showcasing your comprehensive understanding of deploying machine learning models effectively.

Join Rise to see the full answer
What machine learning frameworks are you most comfortable with?

Discuss the specific machine learning frameworks you have experience with, such as Scikit-learn, TensorFlow, or PyTorch. Provide examples of projects where you employed these frameworks, detailing the features you utilized and any challenges you overcame, thus demonstrating your technical skills and practical application.

Join Rise to see the full answer
How do you ensure the ethical use of AI in your projects?

To answer this, explain your approach to integrating ethical considerations in AI, such as conducting bias assessments, ensuring transparency, and adhering to best practices. Talk about specific instance where you have actively ensured ethical AI implementation in your past work or how you plan to uphold these standards at Faculty.

Join Rise to see the full answer
Describe a time you had to troubleshoot a machine learning model in production.

Detail a specific scenario where you faced challenges with a production ML model. Discuss the steps you took to diagnose the issue, any tools you used, and how you communicated with stakeholders. This showcases your problem-solving skills and ability to work under pressure while engaging with non-technical team members.

Join Rise to see the full answer
What experience do you have with cloud technologies and deployment?

Be prepared to discuss your experience with major cloud providers like AWS, Google Cloud, or Azure. Share specific projects where you have deployed ML solutions using cloud architecture and any relevant tools like Docker or Kubernetes, highlighting your practical knowledge in managing cloud infrastructure for machine learning applications.

Join Rise to see the full answer
How do you approach mentoring junior team members?

Discuss your philosophy on mentoring and share examples of how you have guided junior team members in the past. Highlight your communication style, your approach to building their confidence in technical skills, and how you created an environment conducive to learning and growth.

Join Rise to see the full answer
What strategies do you use for effective communication with non-technical stakeholders?

Communication is vital for a Machine Learning Engineer, especially with non-technical stakeholders. Discuss techniques you use to simplify complex concepts, like using analogies, visual aids, or hands-on demonstrations, ensuring that stakeholders can grasp the implications of the ML projects.

Join Rise to see the full answer
What is your strategy for keeping up-to-date with the latest in machine learning?

Share how you remain informed on developments in machine learning, whether through attending conferences, participating in online courses, following reputable blogs, or contributing to open-source projects. This demonstrates your commitment to continuous learning and passion for the field.

Join Rise to see the full answer
Can you provide an example of how you solved an old problem with a new solution?

Illustrate your innovative thinking by describing a specific challenge you faced and the creative solution you devised. Explain the thought process behind identifying the alternative approach and the impact your solution had on the project outcomes.

Join Rise to see the full answer
What excites you the most about the role of Machine Learning Engineer at Faculty?

Reflect on why you are passionate about this position specifically at Faculty. Discuss the excitement of working on impactful projects, the opportunity to collaborate with talented individuals, and Faculty’s commitment to responsible AI, showing that you align with the company’s values and vision.

Join Rise to see the full answer
Similar Jobs
Photo of the Rise User
Posted 6 days ago
Photo of the Rise User
Signode Hybrid 1046 W London Park Dr, Forest, VA 24551, USA
Posted 2 days ago
Photo of the Rise User
Signode Hybrid 1600 Central Ave, Roselle, IL 60172, USA
Posted 3 days ago
Photo of the Rise User
Posted 13 days ago
Photo of the Rise User
Posted 13 days ago
Photo of the Rise User
Olsson Hybrid 1717 S Boulder Ave, Tulsa, OK 74119, USA
Posted 4 days ago
Photo of the Rise User
Posted 3 days ago
MATCH
Calculating your matching score...
FUNDING
DEPARTMENTS
SENIORITY LEVEL REQUIREMENT
TEAM SIZE
EMPLOYMENT TYPE
Full-time, hybrid
DATE POSTED
December 19, 2024

Subscribe to Rise newsletter

Risa star 🔮 Hi, I'm Risa! Your AI
Career Copilot
Want to see a list of jobs tailored to
you, just ask me below!