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NHL Trends SDB Home    NHL Trends    NHL Query
Include trends from SDB's sample ml against SDB's sample ml on SDB's sample ou against SDB's sample ou on SDB's sample su active on filter on
Trends from SDB's sample ml against,SDB's sample ml on,SDB's sample ml against,SDB's sample ml on
$ ROI Margin wins losses % link
673 15.8 -0.3 13 20 39.4 The Ducks are 13-20 AGAINST since Dec 01, 2017 on the road
500 66.5 -2.4 0 5 0.0 The Ducks are 0-5 AGAINST since Mar 08, 2018 as a dog
500 66.5 -2.4 0 5 0.0 The Ducks are 0-5 AGAINST since Mar 08, 2018 as a road dog
4134 7.3 0.6 240 141 63.0 The Ducks are 240-141 ON since Nov 05, 2009 at home
3258 6.5 0.6 207 114 64.5 The Ducks are 207-114 ON since Nov 05, 2009 as a home favorite
1400 21.8 0.3 37 27 57.8 The Ducks are 37-27 ON since Apr 23, 2009 as a home dog
666 24.6 1.2 13 4 76.5 The Ducks are 13-4 ON since Mar 02, 2018 as a favorite

Trend Parameters: active, english, invested, losses, margin, profit, pushes, sdql, start, team, wins


How To Use the Trends Page:
Use the Pythonic Query Language to explore a database of trends. The full PyQL format is: parameters @ conditions. More typical use just specifies the condition and takes a default output.

To see all trends with an average margin of at least 2 use the PyQL condition: margin > 2.

To see all perfect trends use the PyQL: wins * losses = 0
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Content for this site is generated using the Sports Data Query Language (SDQL).