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it ate everything was better uh at at at the case that up so questions
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don't hold back because yes i note coffee breaks and that's coffee break very important ah yeah you
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will have conferred anyone has its chance one question before you write enough last most people are right
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you want me to do right uh_huh
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okay well on question so you're not look like it ten you send
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data collection is it well the big thing well in ten years um
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what you mean about data collection no in general event today i just
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mentioned you know that's one prediction productions thought as you pointed out collecting things
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now in ten years in ten years we made the multiple loops in
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fact sound uh we are uh now figuring out that uh our production works
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uh but they are what they are working locally so i mean we get to correct
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a lot of local the tassel tools that um and the the the problem the generalisation
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and the i think it's the next challenge there is to to be able
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to train a a more less local things that you can turn arise after that
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and that's why we have to uh involve all this utility companies because uh they
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they they have the potential to do that so to go from rock all that
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you know researcher local places where you can do a very nice uh traditions too
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something that is much simpler and much much more general some that you can and you
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probably on on on a fountain of of households or f. large large uh a network
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okay thank you and with this one last question so