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OpenSourceQuant

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OSQ = Quants ^ OpenSource

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raw text

OpenSourceQuant – OSQ = Quants ^ OpenSource Skip to content OpenSourceQuant OSQ = Quants ^ OpenSource Menu About Contact Disclaimer Modeling Intent in R and/or Python Learning or experimenting with Tidytext has been on my radar for at least a few years. Only recently did i have a need to pick it up. As with most learnings, they lead you down a path of more knowledge (read: rabbit holes) than you foresaw. This post is a hat-tip to the resources i used, knitting them together in a sample use case with an extension using parallel processing for the R implementation. First mention must go to Manuel Amunategui for his post on Intent Modeling . Manuel shares a link to his python code in the post. I experienced some joy running his code after making a few changes. You can find my working notebook here . I used Windows and VSCode for the python implementation. The general logic Manuel uses for modeling intent is to: Tag the transcripts to identify the most ...

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