Jun

19

2020

NLP with BERT - Fine Tune & Deploy Production Ready ML Model

supnatural 19 Jun 2020 14:49 LEARNING » e-learning - Tutorial

NLP with BERT - Fine Tune & Deploy Production Ready ML Model
NLP with BERT - Fine Tune & Deploy Production Ready ML Model
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 39 lectures (3h 55m) | Size: 1.4 GB

Build & Deploy ML NLP Models with Real-world use Cases. Multi Label & Multi Class Text Classification using BERT. What you'll learn:
What is BERT?
How to work with BERT in Google Colab
Complete End to End NLP application
How to use BERT with Keras, ktrain, and TensorFlow 2
Deploy Production Ready ML Model
Fine Tune and Deploy ML Model with Flask
Deploy ML Model in Production at AWS
Deploy ML Model at Ubuntu and Windows Server
DistilBERT vs BERT
Optimize your NLP Code

Requirements
Introductory knowledge of NLP
Comfortable in Python, Keras, and TensorFlow 2
Basic Elementary Mathematics

Description
Are you ready to kickstart your first BERT NLP course?

Prior knowledge of python and Data Science is assumed. If you are a beginner in Data Science, please do not take this course. This course is made for medium or advanced level of Data Scientist.

What is BERT?

BERT is a method of pre-training language representations, meaning that we train a general-purpose "language understanding" model on a large text corpus (like Wikipedia), and then use that model for downstream NLP tasks that we care about (like question answering). BERT outperforms previous methods because it is the first unsupervised, deeply bidirectional system for pre-training NLP.

Unsupervised means that BERT was trained using only a plain text corpus, which is important because an enormous amount of plain text data is publicly available on the web in many languages.

Why is BERT so revolutionary?

Not only is it a framework that has been pre-trained with the biggest data set ever used, but it is also remarkably easy to adapt to different NLP applications, by adding additional output layers. This allows users to create sophisticated and precise models to carry out a wide variety of NLP tasks.

Here is what you will learn in this course

Notebook Setup and What is BERT.

Data Preprocessing.

BERT Model Building and Training.

BERT Model Evaluation and Saving.

DistilBERT Model Fine Tuning and Deployment

Deploy Your ML Model at AWS with Flask Server

Download
https://rapidgator.net/file/eb7d11c7f68c172a3f200ac68d0381f3/NLP_with_BERT_-_Fine_Tune_and_Deploy_ML_Model_in_Production.part1.rar
https://rapidgator.net/file/abb3269066c9af56910719fcc4d79f05/NLP_with_BERT_-_Fine_Tune_and_Deploy_ML_Model_in_Production.part2.rar

or
https://uploadgig.com/file/download/6096B6Ea4f0D366d/NLP with BERT - Fine Tune and Deploy ML Model in Production.part1.rar
https://uploadgig.com/file/download/c8d54249d5e2e7A9/NLP with BERT - Fine Tune and Deploy ML Model in Production.part2.rar

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