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Understand the paper : Learning Longformer:The Long-Document Transformer
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Total time needed:
~2 hours
See details (learning objective, target audience, etc)...
Learning Objectives
With this list you can learn about Longformer and how to implement it.
Potential Use Cases
Long text summarization, Long text question answering.
Target Audience
ADVANCED
NLP Data scientist from all audience levels
Go through the following
annotated items
in order
:
ARTICLE
1. Introduction to Transformer Encoder Decoder Model
What is transformer and how it works?
10 minutes
ARTICLE
2. Attentions Mechanism In Neural Machine Translation
What is attention and type of attention mechanisms?
20 minutes
PAPER
3. Longformer : The Long-Document Transformer (Original Paper)
What is long former and attention mechanism to process long sequence?
20 minutes
ARTICLE
4. Understanding Transformer-Based Self-Supervised Architectures - LongFormer
How can we reduce the computational cost of the attention calculations, which grow quadratically with sequence length?
7 minutes
REPO
5. Longformer : The Long-Document Transformer Github Repo
How longformer is implemented?
10 minutes
ARTICLE
6. Train a Longformer for Detecting Hyper-partisan News
How to train a longformer?
7 minutes
ARTICLE
7. Train a Longformer for the Question Answering
How to implement longformer for question answering task?
7 minutes
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