Fourier and Wavelet Trading Systems with Python / Najlacnejšie knihy
Fourier and Wavelet Trading Systems with Python

Code: 50629074

Fourier and Wavelet Trading Systems with Python

by Vincent Bisette, Hayden Van Der Post, Alice Schwartz

Reactive PublishingFinancial markets are structured chaos. Beneath the volatility, price distortions, and seemingly random noise, there are hidden frequencies, cyclical signatures, structural breaks, and localized patterns that on ... more

37.99

RRP: 40.91 €

You save 2.92 €


In stock at our supplier
Shipping in 9 - 15 days
Add to wishlist

You might also like

Give this book as a present today
  1. Order book and choose Gift Order.
  2. We will send you book gift voucher at once. You can give it out to anyone.
  3. Book will be send to donee, nothing more to care about.

Book gift voucher sampleRead more

More about Fourier and Wavelet Trading Systems with Python

You get 92 loyalty points

Book synopsis

Reactive Publishing

Financial markets are structured chaos. Beneath the volatility, price distortions, and seemingly random noise, there are hidden frequencies, cyclical signatures, structural breaks, and localized patterns that only the right tools can reveal. This book shows you exactly how to find them.

This is the definitive practitioner's guide to applying Fourier analysis, wavelet transforms, and spectral methods to modern algorithmic trading. Designed for quantitative analysts, systematic traders, and Python developers, it provides a complete blueprint for converting raw market data into predictive, noise-filtered, regime-aware trading signals.

No theory without execution. Every concept is paired with step-by-step Python workflows, full trading system architectures, and real-world applications that can be deployed immediately into your research pipeline.

Inside you will learn how to:

1. Extract Predictive Cycles Using Fourier Analysis
Identify dominant market frequencies, smooth out high-frequency volatility, and construct spectral signals that outperform traditional indicators.

2. Build Wavelet-Driven Regime Detection Models
Use continuous and discrete wavelet transforms to pinpoint structural shifts, volatility clusters, trend-reversal points, and multi-scale pattern changes.

3. Filter Noise Without Killing Signal
Apply optimal denoising frameworks using wavelets, spectral decomposition, and hybrid filtering to boost model stability and predictive accuracy.

4. Build End-to-End Python Trading Systems
Complete implementations using NumPy, SciPy, PyWavelets, pandas, and backtesting engines - including cycle forecasting, wavelet channel systems, and spectral momentum strategies.

5. Detect Market Structure in Multiple Time Horizons
Learn how multi-resolution analysis uncovers micro-structure dynamics, macro-cycles, and hidden pattern transitions that conventional indicators cannot see.

6. Engineer Robust, Adaptive Trading Signals
Fuse Fourier- and wavelet-based features with ML models, risk filters, and volatility regimes to build systems that thrive in trending, mean-reverting, and chaotic markets.

7. Deploy a Full-Spectrum Algorithmic Framework
Integrate spectral analysis, wavelet modeling, and machine learning into a unified research workflow used by advanced quantitative trading desks.

Who This Book Is For
Quant traders, systematic investors, financial engineers, risk modelers, and Python developers seeking a rigorous, practical, and edge-driven approach to market prediction.

What You Gain
A toolkit that extracts order from noise, reveals hidden structure, and gives your trading systems adaptive intelligence across all market regimes.

If you want to turn spectral analysis into alpha, not theory, this is the book that shows you the way.

Book details

37.99

Trending among others



Collection points Bratislava a 12782 dalších

Copyright ©2008-26 najlacnejsie-knihy.sk All rights reservedPrivacyCookies


Account: Log in
Všetky knihy sveta na jednom mieste. Navyše za skvelé ceny.

Shopping cart ( Empty )

For free shipping
shop for 59,99 € and more

You are here: