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Fabulous

(22)
Graceful
Biography
Gender:
Female
Age:
22
Ethnicity:
Latin
Nationality:
Graceful
Hair color:
Light brown
Hair Length:
Long
Eye color:
Gray
Height:
165 cm
Weight:
50 kg
Sexual Orientation:
Heterosexual
Services Offered For:
Men
Women
Couples
2+
Dress size:
XS
Shoe size:
38
Cup size:
DD
Breast:
Silicone
Pubic hair:
Shaved completely
Tattoo:
Yes
Piercings:
No
Smoking:
No
Drinking:
No
Languages:
English
German
Japanese
Available for:
Incall: Club/Studio
Outcall: Hotel visits only
Services

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About me

How to use NLP to Analyze WhatsApp Messages

On 17 August , I married the woman of my dreams and wanted to surprise her with a gift the day before the wedding. Of course, as a Data Scientist, I had to communicate that through data! Our WhatsApp messages seemed like a great source of information. In this post, I will guide you through the analyses that I did and how you would use the package that I created. Follow this link for instructions on downloading your WhatsApp texts as. The package allows you to preprocess the. Simply import the helper function to both import the data and process it. Now that the data is preprocessed, some initial graphs can be created based on the frequency of messages. Interestingly, this shows a seemingly significant dip in messages around December of

Natural Language Processing NLP allows you to understand and extract meaningful information called entities out of the messages people send. You can then use these entities to identify intent, automate some of your replies, route the conversation to a human via livechat, and collect audience data. If you are currently leveraging an NLP API, you have to make an extra call when you receive the user message, which adds latency and complexity example: async, troubleshooting, etc. With built-in NLP, entities are automatically detected in every text message that someone sends. Once Messenger's built-in NLP is enabled for your Facebook Page, it automatically detects meaning and intent in every text message before it is sent to your bot. The message will be relayed to your bot as usual, along with any entities detected in the body.

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