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2019 Fantasy Baseball Almanac and Draft Guide
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2019 Fantasy Baseball Almanac and Draft Guide

★★★★3.9·38 ratings

**Updated March 23rd 2019 (post Machado to Padres and Harper to Phillies)!** Why buy another book that was written in early January? Not only do we keep our book current for new readers, we are the only Fantasy Baseball Draft Guide that comes with continuous off season updates and in season fantasy advice. Sean Ryan hosts The Functional Sportsaholic and Get Paid: Fantasy, Gambling and DFS podcasts on Podcast One and The Underdog Sports Podcasting Network. As was the case with last year's #1 selling Fantasy Football Almanac, Sean combines math with traditional scouting methods to provide the most comprehensive fantasy draft tool the industry has to offer. Eric Zimmerman, aka "Baseballai Lama" is a regular contributor to Sean's shows and the requisite baseball expert. Eric applies the scouting to supplement Sean's analytical fantasy sports approach. Why should you buy this book? What makes us better than the rest? 1. As stated, this book offers full season scouting and fantasy football consulting. 2. We follow a standardized scoring method, but have the ability to customize our rankings for your unique scoring and league formats. 3. Many people wait until late in the off season to buy a fantasy baseball book in the hopes of having the most up-to-date information. Our book is always up to date and the earlier your book is purchased, the more access to our enhanced services you'll have. 4. We break down rankings by position, overall player, and combined by American National League and separated into American/National League ranks to satisfy demand for league-specific formats. 5. If you're not sure how good we are, you can simply seek and find our sports content. It's thorough, well thought out and has a successful track record.6. Most importantly, we are people-focused. We are more than an almanac, we are a service. This is simply the first step to fantasy baseball glory.

ASIN
1791616372
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