Ce que vous devez savoir avant
Vous commencez

Débute 4 June 2026 09:22

Se termine 4 June 2026

00 Jours
00 Heures
00 Minutes
00 Secondes
course image

Deploy Bridgerton NLP SMS Text Generator

Rejoignez notre projet guidé passionnant, "Déployer un Générateur de SMS Texte NLP Bridgerton", et embarquez pour un voyage afin de créer et déployer un générateur de texte NLP avancé. Ce projet unique vous permet de plonger dans le monde de l'apprentissage automatique avec un focus sur le déploiement d'un modèle de traitement du langage naturel sp.
via Coursera

2868 Cours


Non spécifié

Amélioration optionnelle disponible

Tous niveaux

Progressez à votre rythme

Free

Amélioration optionnelle disponible

Aperçu

Join our thrilling guided project, "Deploy Bridgerton NLP SMS Text Generator," and embark on a journey to create and deploy an advanced NLP text generator. This unique project allows you to dive into the world of machine learning with a focus on deploying a natural language processing model specifically designed to send SMS messages filled with generated quotes inspired by Netflix's hit series, "Bridgerton." Ideal for intermediate Python users, this project offers an exceptional opportunity to master the deployment of NLP text generator models via a Streamlit app on Heroku, while also exploring the practical use of Python modules for sending SMS texts.

Prerequisites for this project include a basic understanding of building and training NLP text generator models, proficiency in Git, and a familiarity with various Python modules including email and smtp.

Participants will also need access to a Heroku account and should have some experience with the Python Streamlit module. By the conclusion of this project, participants will have developed a publicly accessible Streamlit web app that expertly utilizes natural language processing to generate and send Bridgerton-themed quotes directly to a chosen phone number.

This project is a part of Coursera's selection, featuring courses in Python, Natural Language Processing (NLP), Heroku, and Streamlit.


Enseigné par

Emmanuel Acheampong


Matières