Switch to English Site

dotsdots

Build, Train, and Deploy ML Pipelines using BERT

描述

In the second course of the Practical Data Science Specialization, you will learn to automate a natural language processing task by building an end-to-end machine learning pipeline using Hugging Face’s highly-optimized implementation of the state-of-the-art BERT algorithm with Amazon SageMaker Pipelines.

Your pipeline will first transform the dataset into BERT-readable features and store the features in the Amazon SageMaker Feature Store. It will then fine-tune a text classification model to the dataset using a Hugging Face pre-trained model, which has learned to understand the human language from millions of Wikipedia documents. Finally, your pipeline will evaluate the model’s accuracy and only deploy the model if the accuracy exceeds a given threshold.阅读更多.

此资源由附属合作伙伴提供。 如果您支付培训费用,我们可能会赚取佣金来支持该网站。

按照数据工作岗位排列职业相关性

Build, Train, and Deploy ML Pipelines using BERT 中涵盖的技术和工具与 数据科学家 招聘广告中的要求最为相似。

相似度得分(满分 100)

学习顺序

Build, Train, and Deploy ML Pipelines using BERT is a part of 一 structured learning path.

Coursera
DeepLearning.AI

3 Courses 3 Months

Practical Data Science