Algorithmic Trading via AI/Machine Learning with R aims to demonstrate how algorithmic trading can empower retail traders to compete more effectively in markets long dominated by institutional giants. By translating advanced techniques into practical, systematic strategies, the book shows how automation, disciplined risk management, and data-driven decision making can help individuals filter out market noise, avoid manipulation, and exploit opportunities that once belonged exclusively to large firms.
The book’s purpose is to give you a framework where R is not just a statistical environment, but a trading laboratory and execution engine. Every chapter includes reproducible examples you can extend into your own practice and research pipeline. By the end, you will not merely understand algorithmic trading―you will have built, tested, and connected live strategies to market data. At its core, it demonstrates how R―a language renowned for statistical computing―can be transformed into a complete research and execution platform for trading.
This book is aimed at anyone who wants to learn, or use R, for AI/Machine Learning and algorithmic trading. It is also for individuals doing or interested in doing securities research and financial systems development and for retail traders who may wish to use R to gain an algorithmic trading edge.
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Jason Guevara is a financial analyst and accountant. He maintains a YouTube channel (https://www.youtube.com/@quantroom) dedicated to developing practical R scripts to assist active traders and R quants. Jason also does contract work for OIS Market Research Group as an R financial systems architect, coder, and developer. Jason provides a unique blend of financial expertise and coding experience to the quant finance field. Jason holds a Bachelor of Science degree in Finance and a minor in Economics from California State University (CSU)–Northridge (2014). Jason’s passion for markets began during the Great Recession. The rise of algorithmic trading at that time ignited his passion which to date continues to fuel his productivity. Jason uses his R programming skills to craft algorithmic trading scripts for personal exploration, research, and applications. He has been programming in R since 2012. Jason’s dedicated YouTube channel is the premier guide for traders looking to master R in finance. By sharing his expertise online, he equips traders with the confidence to navigate the complex field of algorithmic trading.
Ričards Bulavs is a graduate with a Bakalaurs finansēs [B.Sc. in Finance] from The University of Latvia (2025). Ričards joined the OIS Market Research Group in July 2025 as a Research Associate ‘Analyzing Financial Market Data, Implementing Financial Models, and trading equity, index, and futures instruments using quantitative methods and machine trading.’ Prior to joining the OIS Market Research Group, Ričards was a student at the Emerio & Lourdes Linares Research and Education Center, where he learned to use the Interactive Brokers (IBKR) TraderWorkstation (TWS) for trading equity, index, and futures instruments. Ričards successfully mastered TWS and the TWS API. He also mastered minimal-model (MinMod) trading tactics and option strike price selection using the Greeks and stochastic differential equation (SDE) derived empirical probability distributions. Born in Jūrmala, a Latvian resort city on the Gulf of Rīga, Ričards provides a unique blend of financial knowledge and quant coding experience in C++, Python, and R. Ričards specializes in crafting algorithmic trading strategies for exploration, research, and applications.
Dr. Oskars Linares is the Founder (2015), Research Director, and Quant Strategist at the OIS Market Research Group, an investment collective specializing in premium generation across equity, index, and futures options. A member of the Econometric Society and International Institute of Forecasters, Dr. Linares developed the proprietary Minimal-Model (MinMod) to guide OIS trading operations. His technical toolkit includes an SDE ARIMA variant forecaster, which leverages empirical probability distributions and Bayesian updating to optimize strike price selection. Oskars began his mathematical modeling career at the University of Michigan, Ann Arbor under the dual mastery of Professors Jeffrey B. Halter and John A. Jacquez. Training under Jacquez―a pioneer in compartmental analysis Dr. Linares focused on nonlinear differential equations modeling and began a 30-year tenure with R (migrating from S-PLUS in 1995). His quest for mathematical rigor led him to the National Institutes of Health (NIH) in Bethesda, where he worked with Dr. Loren A. Zech at the Laboratory of Mathematical Biology. There, he utilized SAAM (Simulation, Analysis, And Modeling) and S-PLUS to navigate biomathematical complexity. This journey culminated at UPENN with Dr. Raymond C. Boston, applying Bayesian multilevel models to repeated measurement data to manage stochastic instability. With over 100 peer-reviewed scientific abstracts presented at Society meetings and papers to his name, Dr. Linares has ensured his models have remained statistically robust. Oskars has also published several book chapters, and is co-author of the first editions of Investigating Biological Systems Using Modeling (Academic Press, 1999), Plain English for Doctors and Other Medical Scientists (Oxford University Press, 2017), Diagnosing and Treating Medicus Incomprehensibilis (Oxford University Press, 2018), Prescriptions for Quant Traders Using R: Videos and Scripts (CRC Press, 2026). He received the Great Seal of the United States Award (1993) for his advancements in mathematical-medicine research on aging. Oskars now lives in Rīga, Latvija.
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