• C++ Programming for Financial Engineering
    Highly recommended by thousands of MFE students. Covers essential C++ topics with applications to financial engineering. Learn more Join!
    Python for Finance with Intro to Data Science
    Gain practical understanding of Python to read, understand, and write professional Python code for your first day on the job. Learn more Join!
    An Intuition-Based Options Primer for FE
    Ideal for entry level positions interviews and graduate studies, specializing in options trading arbitrage and options valuation models. Learn more Join!

How to Become a Successful Financial Engineer?

Joined
5/2/06
Messages
11,764
Points
273
How to Become a Successful Financial Engineer?​
David X. Li​
Actuaries might have been the most quantitative people in the financial industry for a long time. However this unique position has been severely challenged since about a decade or two ago when the investment banks began to hire so-called "rocket scientists" - people with Ph.D. degree in physics and other quantitative fields. Nowadays you can find quantitative analysts or "quants" working in various functions in investment banks and large commercial banks, such as trading, risk management and portfolio management. You may even meet some quants working in some traditional quant-free zones, such as auditing department of a large bank. As the insurance and banking businesses converge it is hard to imagine that traditional approaches to risk measurement - like actuaries work on the insurance side and quants work on the banking side - can still be applied in isolation.
This change poses a challenge to our profession. However there is nothing to panic about. Many problems in practice might need combined skills in actuarial science and financial engineering to solve.
This article outlines some basic skills people should have in order to become a successful financial engineer. It is more from an investment bank angle since that is where the author knows the most.

Mathematical Training


Karl Marx once said ``A subject can only become a science after it successfully uses mathematics". Finance might be the most successful area to use mathematics. The mathematics used in finance ranges from basic mathematics, such as numerical analysis, calculus, and statistics to more advanced ones, stochastic processes and stochastic differential equations, non-linear optimization etc. The areas we use the most in practice are numerical analysis and statistics. Whoever wants to have a career as financial engineer should try to have a solid training in mathematics in school. Wall Street tends to hire people with strong quantitative skills. The general philosophy is that we can teach you finance, but we don't have time to teach you mathematics. We use a lot of mathematics at the graduate level, so it is to your advantage to take some graduate mathematics courses before you walk out of school. Many practitioners go back to school to learn more mathematics after a few years working in industry. It is hard to learn all the necessary mathematics, but you can pick up other useful mathematical tools or concepts once you have built a solid foundation. I like the saying by Professor Elias Shiu at the University of Iowa "Learning Mathematics is like rowing, if you don't push forward you'd be pushed backward". Just keep rowing!

On the other hand, don't indulge yourself into abstract mathematics. Mathematics is just a tool. So you should keep the mentality of an applied mathematician. We find it usually takes longer time for a pure mathematician to feel his "role" in practice than a physicist or an applied mathematician. One famous applied mathematician once said, "Mathematics in every one of its applied areas is a good servant, but a bad master". At the end we are to solve practical problems, not a mathematical game or theorem.

Financial Training


The theory of finance has emerged as a prominent science with the Nobel Prize award to Harry Markowitz, William Sharpe, Merton Miller, Robert Merton and Myron Scholes. This theory attempts to understand how financial markets work, how to make them more efficient, and how they should be regulated. These revolutionary theories in the latter half of the twentieth century have created waves of financial innovation in Wall Street. There are essentially two revolutions. The first revolution, which was the introduction of quantitative methods to the black art of equity fund management, began with the 1952 publication of his Ph.D. dissertation ``Portfolio Selection" by Harry Markowitz. The second revolution in finance began with the 1973 publication of the solution by Fischer Black and Myron Scholes (in consultation with Robert Merton) to the option pricing problem. The Black-Scholes formula brought to the finance industry the modern methodology of martingales and stochastic calculus, methodology which enables investment banks to produce, price and hedge an endless variety of "derivative securities."

There are mainly two aspects of the financial theory, economic and engineering. At the early stage it is essential to understand each instruments from an engineering point of view. But you will find it is important to understand the "big picture" or the economic aspect of the theory later on. There are many books on derivative securities. The key is to fully understand each instrument thoroughly. A good reference book is John Hull's book. Another important aspect is to understand the market conventions, which you can only learn from a practitioner's book or some software manuals. These conventions are very important since a one-day miscount could result in a 40-bp (basis point) difference, which is usually larger than many derivative transaction profit margins.

IT Training

Computers have played an important role in our daily life, more so in the life of a financial engineer. Of course you can rely on the IT people in your company to implement your models. But it usually takes a longer time for you to explain the problem than if you just write something simple and get the answer yourself. The package people use the most is the Excel spreadsheet. Other packages, which allow you to do rapid development, are MatLab, Mathematica or Splus. If you can program in C++, Visual Basic for Application or Java, that will be even better. You should pick up these skills at the early stage of your career, which will make your life much easier later on.
In summary, you need a combined set of skills to be a successful financial engineer. Many skills could be developed while you are still in college. Just keep in mind, financial engineering skills is just one set of skills for you to be successful in your business life. Many other skills, such as communication skills and leadership, may play a more important role in your career.

David X. Li is a partner in the RiskMetrics Group where he concentrates on risk management research, product development and structural marketing. Previously he worked for banks in the areas of risk management and credit derivative trading. He taught actuarial science and finance at university briefly before he left academia. Mr. Li has a Ph. D. degree in statistics from the University of Waterloo and master's degrees in economics, finance and actuarial science from the famous NanKai. He is an Associate of the Society of Actuaries (SOA) and an elected Council Member of the Investment Section of the SOA.
 
where is Nankai university? What is it famous? :(
Alain, I am from Nankai University. It's located in Tianjin which is Beijing's neighbor(only 75 miles far). The current prime minister of China is from Nankai University. Nankai is famous in China. I don't know if it is famous here. It doesn't seem famous because you do not know it. lol. But there are really many Nankai alumni in US.
 
I think not many world universities that are widely known in their countries are known in the US. We might want to have a section on the world's most famous universities (say 3-5 from each country).
 
this is the second time that i posted on this forum and i found this article really helps.
thanx~
 
Here's a link to an article about David Li and his application of Gaussian copulas to pricing credit derivatives.
How a Formula Ignited Market That Burned Some Big Investors - WSJ.com

David Li is a good thinker. He did some anology from the "broken heart" phenomema to default correlation. I think major part of financial engineering is more like a science rather than an arts. One of very important scientific method is to observe, make hypothesis and then prove it. This kind of methodology is also what we need to learn and practice.
 
Art

when one is so good at something and becoming a master of that particular field, he or she can call it an art. FE can an art of modeling the financial world.

I would like to think mathematics and statistics not only the scientific way but from an artistic way because modeling real world problems can be so discrete....uncertainty has to come from every aspect.



David Li is a good thinker. He did some anology from the "broken heart" phenomema to default correlation. I think major part of financial engineering is more like a science rather than an arts. One of very important scientific method is to observe, make hypothesis and then prove it. This kind of methodology is also what we need to learn and practice.
 
Here's a link to an article about David Li and his application of Gaussian copulas to pricing credit derivatives.
How a Formula Ignited Market That Burned Some Big Investors - WSJ.com
Here is something from a research paper by Nomura Fixed Income
At present, the Gaussian copula approach is the most commonly used model in the structured credit
market. The Gaussian copula model, first introduced by David Li2, uses the normal distributions to
incorporate correlation among individual credits in a portfolio. Rating agencies and dealers rely on
Monte Carlo simulation based on this model when they assess risk and value of a credit risk tranche.
Recently, some market participants have voiced their concerns about the heavy reliance on this
model. In the absence of a better alternative, however, we recommend that investors handle it with
caution and try to understand pitfalls and possible "model effects.”
We did learn Gaussian copula in Greg's Risk class last semester. The paper from Nomura above gives a good insight of what problems we face, specially in the relative value tranches trading space which is the sector I'm working in. Currently, we are building on something that side steps the limits of Gaussian copula model.

Pretty amazing to see everything coming together. Take Risk class people. It's useful :)
 
Back
Top