Junior Quantitative Researcher

Anson Mccade
London
2 weeks ago
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Junior Quantitative Researcher
£120,000 GBP
+ £70,000
Onsite WORKING
Location: Central London, Greater London - United Kingdom Type: Permanent

Our client has an extensive and impressive track record of successfully running Quant trading strategies for over a decade, they spun out as a hedge fund and now operate globally.

They are a highly interdisciplinary firm, operating around the intersection of trading, quant modelling and technology.

Their trades are facilitated by state-of-the-art infrastructure which handles their larger trading volumes easily.

Role:

  • Using the firms automated trading framework to research and apply strategies
  • Using progressive statistical approaches to analyse data and ascertain opportunities for trading
  • To build upon and develop strong understanding of market structures of the various exchanges and asset classes.
  • Pre market - checking that all required data and processes are ready.
  • During market - sporadically monitoring behaviour and performance of strategies.

Ideal Candidate:

  • Quantitative background - including Master/ PhD's in Mathematics, Statistics, Econometrics, Financial Engineering, Operations Research, Computer Science and Physics from a top University.
  • Programming proficiency with at least one major progr...

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