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Artificialintelligence (AI) has long since arrived in companies. Whether in process automation, data analysis or the development of new services AI holds enormous potential. AI consulting: A definition AI consulting involves advising on, designing and implementing artificialintelligence solutions.
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Rex @Codosaurus Dave has 36 years of experience in a wide variety of languages, systems, techniques, domains, etc. His main work is software development consulting, which combines actually writing code with advising clients on how to do that better. Currently, he is the T. Rex of Codosaurus, LLC in Fairfax, Virginia, USA. Twitter: ??
At the same time, the technical background of seasoned AI experts based in Ukraine, China, Vietnam, etc., First, state a broad but measurable objective based on the problem you’re solving with ArtificialIntelligence — for instance, growing customer retention or increasing revenues.
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