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NCAAFB Trends SDB Home    NCAAFB Trends    NCAAFB Query
Include trends from SDB's sample ats SDB's sample ou SDB's sample su guest's web all active on filter on
Trends from SDB's sample su,SDB's sample su
p val wins losses % link
0.000488 11 0 100.0 JMAD is 11-0 SU since Sep 07, 2019.
0.000977 10 0 100.0 JMAD is 10-0 SU since Sep 14, 2019 off a win.
0.001953 9 0 100.0 JMAD is 9-0 SU since Oct 27, 2018 at home.
0.003906 8 0 100.0 JMAD is 8-0 SU since Oct 27, 2018 off a road game.
0.007813 7 0 100.0 JMAD is 7-0 SU since Oct 27, 2018 at home off a win.

Trend Parameters: active, english, losses, margin, pushes, pval, 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).