Tech Fund Recruiting Quant Summer Interns

Eka Finance
London
1 year ago
Applications closed

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T Posted byRecruiterTech fund are looking to add software development / machine learning quant interns. You will be based in London.

Role:-

As an intern, you’ll work in one of two areas:

Software development: You’ll contribute to building their web-based platform and global conferencing API. You will be exposed to the latest development processes and you will get hands-on experience with a modern development stack including Angular, , AWS, and DynamoDB.

Data scienceandmachine learning: Your focus will be very interesting AI projects.

Requirements:-

You are a final-year student or a recent graduate of an undergraduate course or a masters or PhD student or graduate. Subjects such as Machine Learning, Scientificputing / AI/puter Science / Mathematics . You should have skills indata analysisusingPython. Experience withmachine learningwould be a definite bonus, but you can learn this on the job, so an interest and enthusiasm are more important. If you’d like to work as a software developer ,then knowledge of Python or C++ is a must. You need to have coded in a non- academic context. Ability to solve problems on the spot. Passion to work in a start-up environment .

Apply:-

Job ID TK

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