Information Technology
Hands on Training icon
Hands On Training
Hands on Training icon

Machine Translation in Python

Course Cover

5

(3)

compare button icon
Course Report - Machine Translation in Python

Course Report

Find detailed report of this course which helps you make an informed decision on its relevance to your learning needs. Find out the course's popularity among Careervira users and the job roles that would find the course relevant for their upskilling here. You can also find how this course compares against similar courses and much more in the course report.

Course Features

icon

Duration

4 hours

icon

Delivery Method

Online

icon

Available on

Limited Access

icon

Accessibility

Mobile, Desktop, Laptop

icon

Language

English

icon

Subtitles

English

icon

Level

Intermediate

icon

Teaching Type

Self Paced

icon

Video Content

4 hours

Course Description

A bilingual dictionary is no longer required to be taken on holiday to Europe. You can also keep one at work for homework in other languages. You can quickly find out the meaning of street signs and thank foreigners in their native languages by simply logging on to the internet. Language translation services are based on complex machine translation models. Have you ever wondered what these models do. This course will teach you the principles and inner workings of machine translation models. Keras, a Python-based deeplearning library, allows you to create a model of translation. The model can then be trained to improve its performance. The course will teach you techniques for improving the model. This course will help you gain a greater understanding and appreciation for machine translation models.

Course Overview

projects-img

Virtual Labs

projects-img

International Faculty

projects-img

Post Course Interactions

projects-img

Hands-On Training,Instructor-Moderated Discussions

Skills You Will Gain

Prerequisites/Requirements

Introduction to Deep Learning in Python

What You Will Learn

You will also learn about Gated Recurrent Units (GRUs) and how they are used in the encoder-decoder architecture

You will see that our model does a good job when translating sentences

Then you will learn how you can use word embeddings to make the model even better

Course Instructors

Author Image

Thushan Ganegedara

Data Scientist and Author

Thushan Ganegedara is a Senior Data Scientist. He is the author of TF2 in Action - Manning and NLP with TensorFlow (v1.6). He has over 4 years experience with TensorFlow. Thushan likes to wear many h...

Course Reviews

Average Rating Based on 3 reviews

5.0

100%

Course Cover