INTERNSHIP - Junior Quantitative Analyst

BMLL Technologies
London
4 months ago
Applications closed

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About BMLL

We are the leading independent provider of harmonised Level 3 historical data and analytics to the world’s most sophisticated capital market participants. BMLL offers banks, brokers, asset managers, hedge funds and global exchange groups immediate and flexible access to the most granular Level 3, T+1 order book data and advanced analytics, enabling them to accelerate research, optimise trading strategies and generate alpha at unparalleled speed and scale.

We have a fantastic team and our culture is inclusive and highly collaborative - a place where our employees are encouraged to be themselves.

We give all our employees share options, empowering them to get involved in decision making and help shape the future of our company as we continue to grow and scale.

We offer a combination of remote and office (London based) working, weekly team lunches and plenty of office snacks!

For more information, please visit our website,www.bmlltech.comor visit our Twitter, @bmlltech or LinkedIn, @BMLL.

About the Role

We are looking for a highly motivated Junior Quantitative Analyst intern to join our product team. The Junior Quantitative Analyst intern will utilise our product to develop marketing and analysis, as well as working with our customers to gather feedback and help them use the product suit.You will have the opportunity to work on exciting products, collaborate with industry experts, and contribute to the success of our clients and the company as a whole. 

What makes this job special: 

  • This is a mixture of data science, sales, and marketing. All your work will have a direct impact on the business. 
  • You will have access to a petabyte scale data lake and an award-winning data science environment to analyse and work with the data. 

As a Junior Quantitative Analyst Intern, you will: 

  • Utilise the BMLL product suite to support marketing and sales to help sell the BMLL product suite. 
  • Work closely with the go-to-market team to promote the product, support our customers and gather feedback to help shape product requirements. 
  • Help with technical prototyping for external partners and clients. 
  • Support the product team in the development and management of the product roadmap, idea generation and product development cycle. 

Requirements 

Essential: 

  • Experience of python for the purposes of data science, and familiarity with data science tools (Jupyter, pandas, Plotly) 
  • Willingness to work in a fast-paced environment, with an ability to do quick analysis at tight deadlines
  • Excelled teamwork and ability to work in multidisciplinary team 
  • Basic knowledge of financial markets and trading concepts 
  • Ability to work effectively, both independently and as part of a team
  • Strong presentation and communication skills 

Desirable: 

  • Experience with SQL scripting and querying
  • Experience working with Polars
  • Experience working with PySpark
  • Knowledge and interest in statistics and machine learning and their applications to finance 

Internship Key Points:

  • Compensation: This is a paid internship at minimum wage.
  • Eligibility: Candidates must be eligible to work in the UK. This includes UK citizens or individuals on a student/graduate visa that permits full-time work outside of term time.
  • Duration: The internship will be a maximum of 3 months over the summer holidays. 
  • Expertise: This internship is designed for MSC students who want to gain experience in industry to support their Masters project.
  • Application Deadline: Applications close on 15th January 2025.
  • Next Steps: Successful applicants will be contacted between 16th - 27th January 2025 to schedule a first-round interview.
  • Interview Process: 
  1. First round interview (30mins) 
  2. Take home test 
  3. Team interview (1hr) 
  4. Final interview with CPO (30mins) 

We look forward to receiving your application!

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