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Executive Programme in Algorithmic Trading – EPAT® – QuantInsti

Original price was: $7,499.00.Current price is: $100.00.

 

Original Sales Page: https://www.quantinsti.com/epat

 

Executive Programme in Algorithmic Trading – EPAT®

4.7 rating out of 130+ Google reviews

 

EPAT is one of the best algo trading courses. Are you looking to get a new job, start your own trading desk, or get better opportunities in your current organization? This quantitative trading course is designed for professionals looking to grow in the field of algorithmic and quantitative trading.

Get access to the most comprehensive quant trading curriculum in the industry. Learn from a world-class faculty pool. Experience personalised learning with best-in-class support. Complete specialisation in desired asset classes and trading strategy paradigms with live project mentorship.

 

Curriculum:

 

1 EPAT Primer

 Basics of Algorithmic Trading: Know and understand the terminology
 Excel: Basics of MS Excel, available functions and many examples to give you a good introduction to the basics
 Basics of Python: Installation, basic functions, interactive exercises, and Python Notebook
 Options: Terminology, options pricing basic, Greeks and simple option trading strategies
 Basic Statistics including Probability Distributions
 MATLAB: Tutorial to get an hands-on on MATLAB
 Introduction to Machine Learning: Basics of Machine Learning for trading and implement different machine learning algorithms to trade in financial markets
 Two preparatory sessions will be conducted to answer queries and resolve doubts on Statistics Primer and Python Primer

 

2 Statistics for Financial Markets

 

 Data Visualization: Statistics and probability concepts (Bayesian and Frequentist methodologies), moments of data and Central Limit Theorem
 Applications of statistics: Random Walk Model for predicting future stock prices using simulations and inferring outcomes, Capital Asset Pricing Model
 Modern Portfolio Theory – statistical approximations of risk/reward

 

 

 Data types, variables, Python in-built data structures, inbuilt functions, logical operators, and control structures
 Introduction to some key libraries NumPy, pandas, and matplotlib
 Python concepts for writing functions and implementing strategies
 Writing and backtesting trading strategies
 Two Python tutorials will be conducted to answer queries and resolve doubts on Python

 

4 Market Microstructure for Trading

 

 Detailed understanding of ‘Orders’, ‘Pegging’, ‘Discretion Order’, ‘Blended Strategy’
 Market Microstructure concepts, order book, market microstructure for high frequency trading strategy
 Implementing Markov model and using tick-by-tick data in your trading strategy

 

5 Equity, FX, & Futures Strategies

 Understanding of Equities Derivative market
 VWAP strategy: Implementation, effect of VWAP, maintaining log journal
 Different types of Momentum (Time series & Cross-sectional)
 Trend following strategies and Statistical Arbitrage Trading strategy modeling with Python
 Arbitrage, market making and asset allocation strategies using ETFs

 

6 Data Analysis & Modeling in Python

 Implement various OOP concepts in python program – Aggregation, Inheritance, Composition, Encapsulation, and Polymorphism
 Back-testing methodologies & techniques and using Random Walk Hypothesis
 Quantitative analysis using Python: Compute statistical parameters, perform regression analysis, understanding VaR
 Work on sample strategies, trade the Boring Consumer Stocks in Python
 Two tutorials will be conducted after the initial two lectures to answer queries and resolve doubts about Data Analysis and Modeling in Python

 

7 Machine Learning for Trading

 Modeling data with AI, index and predicting next day’s closing price
 Supervised learning algorithms, Decision Trees & additive modeling
 Natural Language Processing (NLP) and Sentiment Analysis
 Confusion Matrix framework for monitoring algorithm’s performance
 Logistic Regression to predict the conditional probability of the market direction
 Ridge Regression and Lasso Regression for prediction optimization
 Understand principle component analysis and back-test PCA based long/short portfolios
 Reinforcement Learning in Trading
 How to build trading Systems while not overfitting

 

 System Architecture of an automated trading system
 Infrastructure (hardware, physical, network, etc.) requirements
 Understanding the business environment (including regulatory environment, financials, business insights, etc.) for setting up an  Algorithmic Trading desk

 

9 Advanced Statistics for Quant Strategies

 Time series analysis and statistical functions including autocorrelation function, partial autocorrelation function, maximum likelihood estimation, Akaike Information Criterion
 Stationarity of time series, Autoregressive Process, Forecasting using ARIMA
 Difference between ARCH and GARCH and Understanding volatility

 

10 Trading & Back-testing Platforms

 Introduction to Interactive Brokers platform and Blueshift
 Code and back-test different strategies on various platforms
 Using IBridgePy API to automate your trading strategies on Interactive Brokers platform
 Interactive Brokers Python API

 

11 Portfolio Optimization & Risk Management

 Different methodologies of evaluating portfolio & strategy performance
 Risk Management: Sources of risk, risk limits, risk evaluation & mitigation, risk control systems
 Trade sizing for individual trading strategy using conventional methodologies, Kelly criterion, Leverage space theorem

 

12 Options Trading & Strategies

 Options Pricing Models: Conceptual understanding and application to different strategies & asset classes
 Option Greeks: Characteristics & Greeks based trading strategies
 Implied volatility, smile, skew and forward volatility
 Sensitivity analysis of options portfolio with risk management tools

 

 

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