Quantitative Researcher / PM | Mid-Freq Equities

Augmentti
London
4 weeks ago
Applications closed

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Looking to chat to Quant Researchers (mid/senior end) and/or Portfolio Managers open to exploring an opportunity to join a growing prop firm in the 'non-obvious firm' category that's pushing international expansion and growing fast in Europe and the US, either joining an existing team or setting up a new group on a compelling deal structure.


Strong HFT heritage, now expanding / diversifying into longer-term horizons, exceptional research/execution infrastructure, comfortable handling short-term (mins-hours) intraday up to 1-2 week holding periods. Looking at any systematic exchange-traded strategies across any/all global venues (APAC/EU/US).


Drop me a line at to find out more and discuss, could be a great opportunity for someone looking for a solid platform with excellent growth prospects over the coming 18-24 months+.


There's no restriction here on location. Open to exploring onsite in London / Amsterdam, or remote set-ups anywhere in EU (and US).


Great opportunity to get in at an inflection point of growth, and be a part of shaping the direction of the business as it expands.

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