Getting started with text classification to detect comment spam
Following on from the previous video in this series, you’ll now learn how to integrate an ML model, built using TensorFlow Lite Model Maker, into your Android and iOS app, as well as how to perform inference, including converting your internal data types to tensors, and reading the tensor output of the model.
On-Device Machine Learning → http://g.co/on-device-ml
Subscribe to TensorFlow → https://goo.gle/TensorFlow
Видео Getting started with text classification to detect comment spam канала TensorFlow
On-Device Machine Learning → http://g.co/on-device-ml
Subscribe to TensorFlow → https://goo.gle/TensorFlow
Видео Getting started with text classification to detect comment spam канала TensorFlow
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Layer-wise learning for quantum neural networks (TF Dev Summit '20)Introduction to Tensorflow.js and Machine LearningAdding audio classification to your mobile app with a pre-trained modelGetting involved in the TensorFlow community (TF World '19)Discover pre-trained models with Kaggle ModelsGoing further with Image ClassificationRetraining a spam detection model to handle new edge casesOn-device machine learning in mobile and web apps | Q&AOn-device product image search: IntroductionTensorFlow - the deep learning solution for mobile platforms (TensorFlow Meets)Chatting With the TensorFlow Community (TensorFlow Meets)Fairness Indicators for TensorFlow (TF Dev Summit '20)AI Experiments: Making AI Accessible through Play (TF Dev Summit ‘19)On-device fetal ultrasound assessment with TensorFlow LiteTensorFlow Extended (TFX) and Metadata (TensorFlow Meets)TensorFlow Hub: reusing machine learning modules (TensorFlow Meets)What's new in Generative AI - American Sign LanguageTensorFlow Open Source Community And Collaboration (TF Dev Summit '19)Hartree-Fock on Sycamore (Quantum Summer Symposium 2020)Hands-on Responsible AI with the People and AI Guidebook