Efstratios Gavves

Contact me at egavvesuva.nl. I am Efstratios Gavves . Since Sep 2016 am an Assistant Professor at UVA. And the Scientific Manager of QUVA Lab. Together with Professor A.W.M. Smeulders. Professor M. Welling. And Associate Professor C.G.M. Snoek. A joint effort between Qualcomm. My research lies on the intersection of Computer Vision and Deep Learning. My particular computer vision focus is on learning univeral spatiotemporal representations. Whereas my machine learning focus is on learning to learn.

OVERVIEW

This website egavves.com currently has a traffic ranking of zero (the smaller the more users). We have probed eight pages inside the website egavves.com and found four websites interfacing with egavves.com. We were able to note one contacts and locations for egavves.com to help you communicate with them. We were able to note one public communication sites possessed by egavves.com. This website egavves.com has been on the internet for five hundred and thirty-seven weeks, fifteen days, twelve hours, and fifty-eight minutes.
Pages Analyzed
8
Links to this site
4
Contacts
1
Locations
1
Social Links
1
Online Since
Mar 2014

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This website egavves.com has seen diverging quantities of traffic through the year.
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EGAVVES.COM HISTORY

This website egavves.com was began on on March 19, 2014. It was updated on the date of March 19, 2014. This website will expire on the date of March 19, 2015. As of today, it is five hundred and thirty-seven weeks, fifteen days, twelve hours, and fifty-eight minutes young.
REGISTERED
March
2014
UPDATED
March
2014
EXPIRED
March
2015

COMPANY PERIOD

10
YEARS
3
MONTHS
14
DAYS

LINKS TO WEB PAGE

Cees Snoek research on video and image retrieval

Full vacancy and application requirements here.

Brave new ideas in motion representations

Brave new ideas for motion representations in videos. Big thank to everyone who attended the very successful workshop. Description of the workshop and its relevance. Larger datasets are part of the solution. The recently proposed Sports1M helped recently in the realistic training of large motion networks. Still, the breakthrough has not yet arrived. Calling papers for brave new ideas.

WHAT DOES EGAVVES.COM LOOK LIKE?

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CONTACTS

Domain Privacy Service FBO Registrant.

Domain Privacy Service FBO Registrant.

10 Corporate Drive Suite 300

Burlington, MA, 01803

US

EGAVVES.COM HOST

I identified that a lone page on egavves.com took five hundred and ninety milliseconds to download. I could not observe a SSL certificate, so therefore our parsers consider this site not secure.
Load time
0.59 seconds
SSL
NOT SECURE
Internet Address
66.96.147.110

NAME SERVERS

ns1.ipage.com
ns2.ipage.com

WEBSITE IMAGE

SERVER OPERATING SYSTEM AND ENCODING

I diagnosed that this domain is operating the Apache/2 operating system.

PAGE TITLE

Efstratios Gavves

DESCRIPTION

Contact me at egavvesuva.nl. I am Efstratios Gavves . Since Sep 2016 am an Assistant Professor at UVA. And the Scientific Manager of QUVA Lab. Together with Professor A.W.M. Smeulders. Professor M. Welling. And Associate Professor C.G.M. Snoek. A joint effort between Qualcomm. My research lies on the intersection of Computer Vision and Deep Learning. My particular computer vision focus is on learning univeral spatiotemporal representations. Whereas my machine learning focus is on learning to learn.

CONTENT

This website egavves.com had the following on the homepage, "I am Efstratios Gavves." Our analyzers viewed that the webpage said " Since Sep 2016 am an Assistant Professor at UVA." The Website also said " And the Scientific Manager of QUVA Lab. A joint effort between Qualcomm. My research lies on the intersection of Computer Vision and Deep Learning. My particular computer vision focus is on learning univeral spatiotemporal representations. Whereas my machine learning focus is on learning to learn."

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