Fr. 49.90

The W.D. Gann Master Stock Market Course - Unlocking Predictive Strategies and Forecasting

English · Paperback / Softback

Shipping usually within 2 to 3 weeks (title will be printed to order)

Description

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"The W.D. Gann Master Stock Market Course: Unlocking Predictive Strategies and Forecasting." This immersive compilation draws upon the timeless wisdom of W.D. Gann, unveiling a treasure trove of strategies, forecasts, and trading techniques that have captivated and fueled dedicated enthusiasts for generations.

This book stands as a tribute to the vibrant community of learners that once thrived on the esteemed "wheelinthesky" forum, encapsulating their collective knowledge and expertise. As you delve into these pages, you'll step into an unparalleled opportunity to continue your growth in the dynamic realm of stock market trading.

From the intricacies of geometric angles to the rhythms of time cycles, this comprehensive course leaves no stone unturned. It empowers you with a profound understanding to confidently navigate the twists and turns of the stock market landscape. Each chapter serves as a beacon, illuminating the path to mastery, with dedicated insights into forecasting, deciphering resistance levels, and unveiling the intricacies of options trading.

Discover the ultimate guide that unleashes the full potential of the stock market, propelling you towards a newfound confidence and proficiency in your trading endeavors.

Product details

Authors W. D. Gann
Publisher snowballpublishing.com
 
Languages English
Product format Paperback / Softback
Released 22.01.2024
 
EAN 9798869140630
ISBN 979-8-8691-4063-0
No. of pages 468
Dimensions 210 mm x 297 mm x 26 mm
Weight 1204 g
Subject Guides > Law, job, finance

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