Data Augmentation in NLP
Duration: 51m | .MP4 1280x720, 30 fps(r) | AAC, 44100 Hz, 2ch | 319 MB
Genre: eLearning | Language: English
Augment your Dataset and Outperform
What you'll learn
Data Augmentation using Word Embeddings
Data Augmentation using Word Embeddings - Implementation
Data Augmentation using BERT
Data Augmentation using BERT - Implementation
Data Augmentation using Back Translation
Data Augmentation using Back Translation - Implementation
Data Augmentation using T5
Data Augmentation using T5 - Implementation
Improving Quality of Augmented Data using Similarity Filter
Ensemble Approach for Data Augmentation
Comparison of Data Augmentation Techniques
Requirements
Basic knowledge of machine learning and NLP is good to have
Description
You might have optimal machine learning algorithm to solve your problem. But once you apply it in real world soon you will realize that you need to train it on more data. Due to lack of large dataset you will try to further optimize the algorithm, tune hyper-parameters or look for some low tech approach. Most state of the art machine learning models are trained on large datasets. Real world performance of machine learning solutions drastically improves with more data.
Through this course you will learn multiple techniques for augmenting text data. These techniques can be used to generate data for any NLP task. This augmented dataset can help you to bridge the gap and quickly improve accuracy of your machine learning solutions.
Who this course is for:
Anyone interested in machine learning and NLP
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