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Reproducible Data Science with Pachyderm

You're reading from   Reproducible Data Science with Pachyderm Learn how to build version-controlled, end-to-end data pipelines using Pachyderm 2.0

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Product type Paperback
Published in Mar 2022
Publisher Packt
ISBN-13 9781801074483
Length 364 pages
Edition 1st Edition
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Author (1):
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Svetlana Karslioglu Svetlana Karslioglu
Author Profile Icon Svetlana Karslioglu
Svetlana Karslioglu
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Table of Contents (16) Chapters Close

Preface 1. Section 1: Introduction to Pachyderm and Reproducible Data Science
2. Chapter 1: The Problem of Data Reproducibility FREE CHAPTER 3. Chapter 2: Pachyderm Basics 4. Chapter 3: Pachyderm Pipeline Specification 5. Section 2:Getting Started with Pachyderm
6. Chapter 4: Installing Pachyderm Locally 7. Chapter 5: Installing Pachyderm on a Cloud Platform 8. Chapter 6: Creating Your First Pipeline 9. Chapter 7: Pachyderm Operations 10. Chapter 8: Creating an End-to-End Machine Learning Workflow 11. Chapter 9: Distributed Hyperparameter Tuning with Pachyderm 12. Section 3:Pachyderm Clients and Tools
13. Chapter 10: Pachyderm Language Clients 14. Chapter 11: Using Pachyderm Notebooks 15. Other Books You May Enjoy

Retraining an NER model

Inaccuracy in NER pipeline results is a common problem. The only way to fix it is to retrain an existing model or train your own model completely from scratch. Training a model from scratch is a difficult and lengthy operation. In our case, we don't need to necessarily train a completely new model but instead, we can retrain the existing model to understand the missing context. To accomplish this task, we will put training data into the data-clean repository, create a training pipeline that will train on that data, save our model to an output repository, and then run the retrained model against our original text again.

In Pachyderm terms, this means that we will create two pipelines:

  • The first pipeline, called retrain, will train our model and output the new model to the train output repository.
  • The second pipeline, called my-model, will use the new model to analyze our text and upload the results to the my-model repository.

Now, let...

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