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The job title Quant is ubiquitously used. While a dynamic, exciting and dynamic discipline, its breadth and meaning can obfuscate and cannibalize different roles. In recent times too, its integration, engagement and overlap with the growing data science and data engineering disciplines has added new dimensions and dynamics to its meaning.
Quant has a fascinating history, a word that connotates many meanings which blended and demerged over time. In part, it is because of how quantitative finance has evolved — and how the industry markets roles. The main strand focused on the options and derivatives communities, typically sell-side, think anyone who has read the classic Options, Futures & Derivatives by Prof John Hull, its first edition published in 1993. They typically came from Physics & Engineering backgrounds in line with the stochastic calculus and matrix algebra which drives much of pricing theory. In parallel, a community targeting investment management - driven by William Sharpe’s brand of Markowitz optimization applied to portfolio theory, again stemmed in matrix algebra and stochastic calculus, founded a portfolio/buyside quant discipline. Then there were folks, often from a Computer Science background, who tended to be “trading quants,” building blindingly fast trading algorithms for then emerging Prop Desks targeting increasingly liquid assets (FX, equities) in universal tier 1 banks like Goldmans and JP Morgan, and emerging highly systematic hedge funds and market-makers, like Citadel Investments or Renaissance Technologies.
A really good book that describes the excitement and tribulations of the first group in particular is well told in When Genius Failed by Roger Lowenstein, about the rise and fall of the hedge fund Long Term Capital Management associated with Nobel prize-winner Myron Scholes. Another is F.I.A.S.C.O by Frank Partnoy, centered on his time at Morgan Stanley. Morgan Stanley's work with the trading quant types and the terse languages which targeted speed and math, like APL, k and q is well captured in this interview with k and q language originator Arthur Whitney. The term “quant” is now (over?)used in finance to describe many data-driven or technical roles that involves math and tech. True quant jobs require mastery of the former - advanced math, statistical modeling, and programming — the kind that underpins pricing, risk, and trading models at the core of financial engineering.
Why is “quant” used so loosely?
Roles that require true quant skills
They should demand advanced mathematics, statistics, and programming ability, often at the level of graduate degrees (PhD, MSc) in quantitative disciplines.
Quantitative Researcher
Quantitative Developer (Quant Dev)
Statistical Arbitrage / HFT Quant
Risk Quant / Model Validation Quant
Portfolio Quant / Quantitative Analyst
Roles labeled “quant” that may not need deep quant skills
In general, these folks will use applications developed by true quants, typically working on bespoke tasks or servicing specific portfolio teams.
The discipline has a fascinating history, and continues to more than hold its own, in its purest and extended forms, as a credible, technical discipline in a sea of ever increasing AI and data science hype!
This content is provided by an external author without editing by Finextra. It expresses the views and opinions of the author.
Galong Yao CGO at Bamboodt
08 July
Alex Kreger Founder and CEO at UXDA Financial UX Design
07 July
Anjna McGettrick Global Head of Strategy Implementations at Onnec
Nkahiseng Ralepeli VP of Product: Digital Assets at Absa Bank, CIB.
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