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Hitter Greg -- -- fox tactic -- like me you can't ever remember when you had a great outfit might have been three months ago and you think and I really love that outfit now I can't remember what I used to put on and I looked really good that day.
Now there's an app for that.
It's called a cloth and I'm here with the co founders this morning to actually help me understand how can be a better Dresser this morning Seth and re nice to see both of you thank you -- So how does cloth work and make me a better Dresser or what it does is it lets you take a photo of your favorite outfits he can retrieve them later with you categorize them -- -- of course like every day vacation work.
The end of really cool thing we do is partnered with Weather Underground so we use location based -- it take the best profits from your wardrobe for current weather conditions.
So -- can imagine in a closet when you've got hundreds of outfits you can't remember -- shirt goes with which skirt which pants -- -- which top.
This really helps you remember even given the season drink it.
Actually and that's how it all start I was packing to go on a trip and such notice that and taking photos of all of my -- so that I can remember them.
And we decided to treat this -- based -- of that idea.
All -- -- office or sitting -- article in our iPhone photo roll you know inaccessible you've never seen me in the disappears we -- There has to be a better way to manage -- -- better with the -- part.
And that's kind of -- again.
So you had hundreds of photos of ran -- outfits you don't remember what season it was what time of I don't know time -- certain time of day you may be it was a hot outfit maybe -- should demands on the war in the winter and you had these all just randomly stored on your camera roll yeah exactly.
-- and we thought it -- there should be something where we can.
-- So take me through the process I stand in my closet I can use what part of the camera can use both the front facing or -- can stand and take a photo of myself in the mirror absolutely.
In an outfit that I really enjoyed.
How to like -- what sort of information in my giving this outfit we'll -- you take the photo to answer anything you want about you have to enter category so it's every day -- vacation and that's that.
Key categories -- From there you can tag you with anything can search by -- to -- you wanna categories all her office by one designers tiger by the designer and you tighten designer brings all of those outfits for a guy.
Now I this is the hard part -- go into a gap where I don't know one of these stores.
And I see a mannequin with an alphabet I liken it may be all end up buying that -- and I'll -- the shirt and the -- can't pants combo.
Then again at home.
And I can't remember what what combination that I bought when I was there at the store so this can help me remember that.
In view its preferred keeping track of ensembles so your clothes that don't get lost in the closet or lost -- Take me through the weather situation on -- on the app because you guys have partnered now with the Weather Underground.
And they actually provide data so that you can figure out the type -- out that you should be wearing that day based on the weather.
Exactly not only can you categorized that -- by design.
And so you can take a -- out and went.
So automatically detects what the weather was like when you Wear that outfit.
Any time those conditions repeat themselves those outfits pop up or you can say OK I wanna see what I'm aware for future cold -- -- future warm day.
You can also just manually select which category -- NC.
Well so this can really help me become a better Dresser I mean snazzy Dresser and stylish because I have -- Yes absolutely and whether I I don't make it be any more stylus but.
But my my photographer Justin did you think you could use cloth.
Check out go to claw at.
App dot com for more information is a great demo video there they'll walk you through exactly how to use it my thanks to Seth and ready for joining us today thanks so much -- -- we'll see you next time.
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