Title: Why attending this Program
1Why attending this Program
- Sharpening the quantitative skills in
- Pricing, hedging and risk measurement of
derivative securities - Implementing risk measurement and valuation
models in software - Developing the abilities in
- Identifying and monitoring risk in valuation
models - Assessment of the appropriateness of quantitative
models and their limitations
2Roles and responsibilitiesas a quantitative
analyst
- Develop mathematical models for pricing, hedging
and risk management of derivative securities. - Support of trading activities by explaining model
behavior, identifying risk sources in portfolios,
carrying out scenario analysis. - Design efficient numerical algorithms and
implement high performance computing solutions
delivery to systems and applications.
3How to prepare yourself for a Quants job in the
financial market?
- Strong knowledge of option pricing theory
(quantitative models for pricing and hedging) - Strong software design and development skills
using C - Mastery of advanced mathematics and numerical
analysis arising in financial modeling
(probability theory, stochastic processes,
numerical analysis)
General skills Analytic, quantitative and
problem solving skills strong communication
skills
4Courses in MSc Program
MATH571 Mathematical Models of Financial
Derivatives Fall, 08 MAFS526 Fixed Income
Derivatives Fall, 08 MAFS513 Mathematical
Models of Investment Summer, 08 Summer,
09 MATH572 Interest Rate Models Spring,
09 MAFS523 Advanced Credit Risk Models Summer,
09
MAFS524 Software Development with C for
Quantitative Finance Spring, 09 MAFS525 Computa
tional Methods for Pricing Structured Financial
Products Spring, 08 MAFS527 Computational
Tools and Technologies for Building Financial
Applications Fall, 08
5Statistics courses
MAFS513 Quantitative Analysis of Financial Time
Series Spring, 09 MAFS511 Advanced Data
Analysis with Statistical Programming Fall,
08 MAFS512 Applied Multivariate Analysis
Spring, 09 MAFS522 Quantitative and
Statistical Risk Analysis Summer, 09
6Foundation courses
MAFS501 Stochastic Calculus Fall,
08 MAFS502 Advanced Probability and Statistics
Fall, 08
7MATH 571 Mathematical Models of Financial
Derivatives 3-0-03
- Fundamental Theorem of Asset Pricing. Risk
neutral valuation approach. Black-Scholes-Merton
framework, dynamic hedging, replicating
portfolio. Martingale theory of option pricing,
risk neutral measure. Stochastic volatility
models.
8MATH 572 Interest Rate Models 3-0-03
- Yield curves. Sort rates and forward rates. Short
rate models Vasicek and CIR models. Term
structure models Hull-white fitting procedure.
Heath-Jarrow-Morton pricing framework. LIBOR and
swap market models. Affine models.
9MAFS 521 Mathematical Models of
Investment 3-0-03
- Utility theory, stochastic dominance. Portfolio
analysis mean-variance approach, Two-Fund
Theorem. Capital asset pricing models. Arbitrage
pricing theory. Consumption-investment models.
10MAFS 523 Advanced Credit Risk Models 3-0-03
- Credit spreads and bond price- based models.
Credit spread models. Intensity based models.
Credit rating models. Firm value models.
Industrial codes KMV, CreditMetrics and
CreditRisk. Default correlation. Pricing of
correlation products.
11MAFS 525 Computational Methods for Pricing
Structured Products 3-0-03
- Lattice tree methods, finite difference methods,
Monte Carlo simulation. Structured products
analyzed include Convertible bonds,
equity-linked notes, quanto currency swaps,
collateralized debt obligations, mortgage backed
securities, volatility swaps.
12MAFS 501Stochastic Calculus 3-0-03
- Random walk models. Filtration. Martingales.
Brownian motions. Diffusion processes. Forward
and backward Kolmogorov equations. Itos
calculus. Stochastic differential equations.
Stochastic optimal control problems in finance.
13MAFS 502 Advanced Probability and Statistics
3-0-03
- Probability spaces, measurable functions and
distributions, conditional probability,
conditional expectations, asymptotic theorems,
stopping times, martingales, Markov chains,
Brownian motion, sampling distributions,
sufficiency, statistical decision theory,
statistical inference, unbiased estimation,
method of maximum likelihood.
14Upon completion of the program, students are
expected to achieve the following intellectual
abilities
- A broad knowledge and understanding of the
financial products commonly traded in the markets
and various practical aspects of risk management.
- Use of mathematical and statistical tools to
construct quantitative models in derivative
pricing, quantitative trading strategies, risk
management, and scenario simulation, including
appropriate solution methods and interpretation
of results.
15To graduate from the MSc program, each student is
required to complete 30 credits of which
- 6 credits from the list of foundation courses
- 9 credits from the list of courses in statistics
- 9 credits from the list of courses in financial
mathematics - 6 credits as free electives
Needs to maintain a graduation grade point
average of B grade or above.