William Robinson
956 posts

William Robinson
@willmrobinson
Volleyball Coach at Aspire Volleyball Club
Chandler, AZ เข้าร่วม Ağustos 2015
244 กำลังติดตาม169 ผู้ติดตาม
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🚨P S A🚨
Athletes & Parents...please DO NOT pay anyone or any recruiting service any amount of money to get your athlete recruited! #carryon #recruiting101 @houstonjuniors
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@rstclaire1 love how you are announcing this UCI/UCLA match! Max is my favorite player by far on UCI. Played S/OPP in his career for Pacific Rim. Can play every position!
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.@haileyharward hell yea!
USAV Beach@USAVBeach
Hailey Harward reflects on her experience at the 2022 FISU World University Championship and encourages athletes to participate in the U.S. Beach Collegiate National Team Trials for a chance to represent 🇺🇸 at this year's championship. Register: go.usav.org/24wuc
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@chadgordon09 @HawaiiMensVB @AbbeyMVB @PennStateMVBALL @OhioStateMVB @McKMVB @LBSUMVB So you’re saying beach is winning it all? I would buy that only thing is once UCLA figures out what they wanna do with their receive core I think they’ll be just fine as well. Just so much variation so far in their lineup hard to get a good idea if that’s their true number.
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Why getting aced is worse than you think!
Expected Sideout vs.
Reception Error and Good Pass %
NCAA Men’s Volleyball (2024)
Reception error explains 54% of variance in your team’s expected sideout. That’s the same level as GP% explains!!
Hawai’i, Penn State, and Ohio State all about the same level of xSO, even with Hawai’i getting aced more. This likely comes from their weaker SoS as of this point in the season (check back in 7 days post-Outrigger invitational)
There’s a strong relationship between getting aced, but you’ll notice all the top teams hovering around 6%, with GCU just north of 7%.
For Good Pass %, PSU and McKendree leading the charge, with Belmont Abbey up there too!
Princeton having a tough time in reception this season, putting up high error and low good pass numbers so far this season.
Hawai’i and Long Beach have separated themselves early in terms of GP%, so we’ll see if that holds as we get deeper into conference play.


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Attack Efficiency vs. Usage by Zones - NCAA Volleyball (2023)
Interesting to see the shifts in the ‘logo clouds’ between zones, albeit mostly driven by most OOS attempts typically going to the OH
WKU, Wisconsin, Pitt, Stanford with some of the strongest left side attacks
The Middle features a who’s who of the AVCA top 15 teams, with LMU and CSU sneaking in as well. Must be those pop/float routes @DustinWatten?
Despite getting swept by USC this weekend, Arizona State continues to dominate on the right side of the court, utilizing the front and backrow attack.
Florida, Nebraska, and Stanford are all in this mix as well - though that’s hardly a surprise, as their opposites are household names
Also interesting, very few of the top top teams skew too far in terms of usage. They mostly hover around the average usage for each third of the court rather than forcing a bunch of attempts to a specific side. Perhaps they’re simply more balanced with talent than that next tier of teams??

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@KevBarn14 the Kevin Barnett in the house to announce the AU matches. Where is Sundy?!?!!
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@chadgordon09 @AggieVolleyball @Vol_VBall @HuskerVB @SunDevilVB @LouisvilleVB @OregonVB @emilyehman @B1GVolleyball @StanfordWVB @Pitt_VB So you’re saying just grow some hands up no matter what and you’re doing a great job - got it
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Most Value Added by Middle Routes
(and it’s a lot of Andi Jackson…again)
Two of her routes in the top 5 for value-add. Lethal on the slide and strong on the Front 1
Mostly Front 1 on the list, makes Perkins, Jackson, and Booth that much more interesting
Carter Booth and Claudia Dillon with 2 in the top 20
Morgan Perkins and Klaudia Pawlik hitting for huge numbers at the top of the rankings
Anything else stand out?


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@chadgordon09 @AggieVolleyball @Vol_VBall @HuskerVB @SunDevilVB @LouisvilleVB @OregonVB @emilyehman @B1GVolleyball @StanfordWVB @Pitt_VB So this data is for all F1 sets correct? Due to the F1 being a floating set what happens to Kill % when the pass is in Z2 or Z4? I am assuming it goes down because now there is another blocker to help block. Hope this makes sense now!
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@willmrobinson @AggieVolleyball @Vol_VBall @HuskerVB @SunDevilVB @LouisvilleVB @OregonVB @emilyehman @B1GVolleyball @StanfordWVB @Pitt_VB I don’t understand the question hah
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@SamHaggard86 2 is a different kind of enemy. More psychological. 3 is physical & prowess.
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