Engineer - ML Technology- Tech-Driven Global Hedge Fund
Engineer - ML Technology- Tech-Driven Global Hedge Fund

Engineer - ML Technology- Tech-Driven Global Hedge Fund

London Full-Time 43200 - 72000 £ / year (est.) No home office possible
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At a Glance

  • Tasks: Join a dynamic team to develop cutting-edge machine learning solutions in finance.
  • Company: A tech-driven global hedge fund with a collaborative and innovative culture.
  • Benefits: Enjoy flexible work options, social events, and a vibrant office environment.
  • Why this job: Make a real impact in AI and finance while working with the latest technologies.
  • Qualifications: Strong programming skills in Python, experience with data science tools, and a passion for technology.
  • Other info: Engage in diverse initiatives promoting inclusion and equality within the workplace.

The predicted salary is between 43200 - 72000 £ per year.

The Team Machine Learning Technology is a small and agile team that facilitates the use of machine learning tools across the firm, with a particular focus on generative AI. Alongside developing and provisioning the platform, you\’ll also consult with teams throughout the business assisting them in transforming their concepts into high-impact solutions. As an engineer in the ML Technology team, you\’ll help to develop a cutting-edge platform, collaborating closely with company-wide teams and individuals to deeply understand their needs and guide them in leveraging the platform. Where required, you will also use both the platform and your expertise to design and implement bespoke solutions to meet their requirements. Positioned at the crossroads of finance and the burgeoning field of AI engineering, the Machine Learning Technology team exists in a rapidly progressing space. This team provides an opportunity to make significant contributions across the business, developing solutions to problems that were very recently considered to be either impossible or extremely difficult to solve. The Technology Core systems are almost all running on Linux and most of the code is in Python, with the full scientific stack: numpy, scipy, pandas, scikit-learn to name a few of the libraries used extensively. For storage, they rely heavily on MongoDB. They use Docker, Kubernetes and Airflow to streamline deployments and leverage OpenFin and React for front-end development. Because of the small team size and the dynamic nature of the business, technology choices are not static and team members can explore new technologies freely. This means you will be able to shape the technology landscape and have a high impact early on. Working Here This fund has a small company, no-attitude feel. It is flat structured, open, transparent and collaborative, and you will have plenty of opportunity to have enormous impact on the firm. They are actively engaged with the broader technology community. They host and sponsor London\’s PyData & Machine Learning Meetups and open-source some of their technology. They regularly talk at leading industry conferences, and tweet about relevant technology and how they\’re using it. They have a fantastic open-plan office overlooking the River Thames, and continually strive to make the environment a great place in which to work. Regular social events; from photography to climbing, karting, wine tasting and monthly team lunches. Annual away days and off-sites for the whole team. Canteen with a daily allowance for breakfast and lunch, and an on-site bar for in the evening. As well as PCs and Macs, you\’ll find loads of cool tech including light cubes and 3D printers, guitars, ping-pong and table-football, and a piano. Technology and Business Skills Essential: Substantial quant development engineering experience. Excellent team management and communication skills. A knowledge of a modern data-science stack. Demonstrable programming experience, ideally in Python, Java, (C++ desirable). Experience of the challenges of dealing with large data sets, both structured and unstructured. Used a range of open source frameworks and development tools, e.g. NumPy/SciPy/Pandas, Spark, Kafka, Flink. Working knowledge of one or more relevant database technologies, e.g. Oracle, Postgres, MongoDB, ArcticDB. Proficient on Linux. Advantageous: An excellent understanding of financial markets and instruments. An understanding of quantitative portfolio allocation approaches. Prior experience of working with financial market data. Experience of web based development and visualisation technology for portraying large and complex data sets and relationships. Relevant mathematical knowledge, e.g. statistics, time-series analysis. Personal Attributes: Strong academic record and a degree with high mathematical and computing content e.g. Computer Science, Mathematics, Engineering or Physics from a leading university. Craftsman-like approach to building software; takes pride in engineering excellence and instils these values in others. Demonstrable passion for technology e.g. personal projects, open-source involvement. Intellectually robust with a keenly analytic approach to problem solving. Self-organised with the ability to effectively manage time across multiple projects and with competing business demands and priorities. Excellent interpersonal skills; able to establish and maintain a close working relationship with traders, quantitative researchers, and senior business people alike. Confident communicator; able to argue a point concisely and deal positively with conflicting views. Work-Life Balance and Benefits Proud to provide the best working environment possible for all of its employees, they are committed to equality of opportunity. They believe that a diverse workforce is a critical factor in the success of the business, and this is embedded in the culture and values. Running a number of external and internal initiatives, partnerships and programmes which help them to attract and develop talent from diverse backgrounds and encourage diversity and inclusion; they\’re also a Signatory of the Women in Finance Charter. They offer comprehensive, firm-wide employee benefits, including competitive holiday entitlements, pension/401k, life and long-term disability coverage, group sick pay, enhanced parental leave and long-service leave. Additional benefits are tailored to local markets and may include private medical coverage, discounted gym membership and wellbeing programmes. Contact If this sounds like you, or you\’d like more information, please get in touch: George Hutchinson-Binks george.hutchinson-binks@oxfordknight.co.uk (+44) 07885 545220 linkedin.com/in/george-hutchinson-binks-a62a69252 #J-18808-Ljbffr

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Contact Detail:

Oxford Knight Recruiting Team

george.hutchinson-binks@oxfordknight.co.uk

StudySmarter Expert Advice 🤫

We think this is how you could land Engineer - ML Technology- Tech-Driven Global Hedge Fund

✨Tip Number 1

Familiarise yourself with the specific technologies mentioned in the job description, such as Python, MongoDB, and Docker. Having hands-on experience or personal projects that showcase your skills with these tools can set you apart from other candidates.

✨Tip Number 2

Engage with the broader technology community by attending meetups or conferences related to machine learning and finance. This not only helps you network but also shows your genuine interest in the field, which is highly valued by employers like us.

✨Tip Number 3

Demonstrate your problem-solving skills by preparing examples of how you've tackled complex data challenges in the past. Be ready to discuss these during any informal chats or interviews, as they highlight your analytical abilities and practical experience.

✨Tip Number 4

Showcase your passion for technology through personal projects or contributions to open-source initiatives. This not only reflects your commitment to continuous learning but also aligns with our values of engineering excellence and innovation.

We think you need these skills to ace Engineer - ML Technology- Tech-Driven Global Hedge Fund

Quant Development Engineering
Team Management
Communication Skills
Python Programming
Java Programming
C++ Programming (desirable)
Data Science Stack Knowledge
Experience with Large Data Sets
Open Source Frameworks (NumPy, SciPy, Pandas, Spark, Kafka, Flink)
Database Technologies (MongoDB, Oracle, Postgres, ArcticDB)
Linux Proficiency
Understanding of Financial Markets and Instruments
Quantitative Portfolio Allocation Approaches
Web Development and Visualisation Technology
Mathematical Knowledge (Statistics, Time-Series Analysis)
Analytical Problem-Solving
Time Management across Multiple Projects
Interpersonal Skills
Confident Communication

Some tips for your application 🫡

Tailor Your CV: Make sure your CV highlights relevant experience in machine learning, Python programming, and any work with large data sets. Emphasise your quant development engineering experience and any projects that showcase your skills in the technologies mentioned in the job description.

Craft a Compelling Cover Letter: In your cover letter, express your passion for technology and how it aligns with the company's mission. Mention specific examples of how you've used machine learning tools or frameworks in past roles, and how you can contribute to their team.

Showcase Your Projects: If you have personal projects or open-source contributions, include them in your application. This demonstrates your passion for technology and your ability to apply your skills practically, which is highly valued in this role.

Highlight Soft Skills: Given the collaborative nature of the role, emphasise your communication and interpersonal skills. Provide examples of how you've successfully worked in teams or managed relationships with stakeholders in previous positions.

How to prepare for a job interview at Oxford Knight

✨Showcase Your Technical Skills

Be prepared to discuss your experience with Python and the data science stack, including libraries like NumPy, SciPy, and Pandas. Highlight any projects where you've dealt with large datasets or used open-source frameworks, as this will demonstrate your technical proficiency.

✨Understand the Business Context

Familiarise yourself with the financial markets and instruments relevant to the role. Being able to discuss how machine learning can be applied in finance will show that you understand the business's needs and can contribute effectively.

✨Demonstrate Collaboration Skills

Since the team values collaboration, prepare examples of how you've worked successfully in teams. Discuss your communication style and how you’ve managed relationships with different stakeholders, such as traders and quantitative researchers.

✨Express Your Passion for Technology

Share any personal projects or open-source contributions that reflect your enthusiasm for technology. This will not only highlight your skills but also show that you are proactive and engaged with the tech community, which aligns with the company's culture.

Engineer - ML Technology- Tech-Driven Global Hedge Fund
Oxford Knight
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