Edge Stackers is a privately owned investment, trading and technology company. 

We utilise a range of quantitative techniques and proprietary algorithmic systems fused with game theory, to identify and exploit domestic and international market inefficiencies.

Our arms-locked-culture, alongside our robust, repeatable and scalable systems, makes Edge Stackers a place outliers fight for a position at. A place where the meritocratic environment motivates, and capitalising on collective intelligence surpasses titles, ego and hierarchy.

Quantitative Analyst - 99.9% Need Not Apply

Our team of outliers are high-speed problem solvers, humble, loyal and have a relentless hunger to improve. Relishing the challenge of attacking projects few can successfully complete, our team are rewarded with superior compensation, autonomy, long-term growth opportunities and the freedom to shape their role to how they perform best.

We are searching for an ambitious and competitive quantitative analyst, with a passion for high-level, predictive modelling.

Your challenge will be to uncover innovative modelling solutions that enable our team to capitalise on opportunities ahead of our competitors. We are extremely fast paced; the faster we iterate, the faster we can innovate.

The expectations on you will be high. You will have the advantage of an international eco-system of expert mentoring and support, deep domain intelligence, advanced technology, and resources that will enable you to excel in your craft.

You will be a valued member of our team, providing meaningful contribution to the company strategy. You will work autonomously and collaboratively with our tight knit data and trading specialists.

If you have a passion for trading, data science, or data engineering, there is no better time to join our expansion and share in the spoils of superior performance, alongside the psychological safety of a 20-year old proven and profitable track record.

Recruitment@edgestackers.com

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