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Lära Quiz: Data Preparation and Tokenization | Preparing Data and Tokenization
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Fine-Tuning Transformers

bookQuiz: Data Preparation and Tokenization

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1. Which of the following best describes the purpose of tokenization in transformer models?

2. What is the role of an attention mask in transformer-based models?

3. Why is it important to split your dataset into training, validation, and test sets when preparing data for fine-tuning?

4. When using a tokenizer from a pre-trained transformer model, what is a common output besides input IDs?

5. Which statement about padding is correct when batching sequences for transformers?

question mark

Which of the following best describes the purpose of tokenization in transformer models?

Select the correct answer

question mark

What is the role of an attention mask in transformer-based models?

Select the correct answer

question mark

Why is it important to split your dataset into training, validation, and test sets when preparing data for fine-tuning?

Select the correct answer

question mark

When using a tokenizer from a pre-trained transformer model, what is a common output besides input IDs?

Select the correct answer

question mark

Which statement about padding is correct when batching sequences for transformers?

Select the correct answer

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Avsnitt 2. Kapitel 5
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