Main Topic Lens: Thanks for coming so so I've got a little frog in my throat today so uh so hopefully it lasts the whole Just after a break right so this is an imperfect kind of model of everything in
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Just after a break right so this is an imperfect kind of model of everything in I'm so let's do so a week from let me do a week from Wednesday after the
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- Thanks for coming so so I've got a little frog in my throat today so uh so hopefully it lasts the whole
- I'm so let's do so a week from let me do a week from Wednesday after the
- Just after a break right so this is an imperfect kind of model of everything in
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