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You're reading from  Machine Learning Infrastructure and Best Practices for Software Engineers

Product typeBook
Published inJan 2024
Reading LevelIntermediate
PublisherPackt
ISBN-139781837634064
Edition1st Edition
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Author (1)
Miroslaw Staron
Miroslaw Staron
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Miroslaw Staron

Miroslaw Staron is a professor of Applied IT at the University of Gothenburg in Sweden with a focus on empirical software engineering, measurement, and machine learning. He is currently editor-in-chief of Information and Software Technology and co-editor of the regular Practitioner's Digest column of IEEE Software. He has authored books on automotive software architectures, software measurement, and action research. He also leads several projects in AI for software engineering and leads an AI and digitalization theme at Software Center. He has written over 200 journal and conference articles.
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Raw data-based pipelines

Creating a full pipeline can be a daunting task and requires creating customized tools for all models and all kinds of data. It allows us to optimize how we use the models, but it requires a lot of effort. The main rationale behind pipelines is that they link two areas of ML – the model and its computational capabilities with the task and the data from the domain. Luckily for us, the main model hubs such as HuggingFace have an API that provides ML pipelines automatically. Pipelines in HuggingFace are related to the model and provided by the framework based on the model’s architecture, input, and output.

Pipelines for NLP-related tasks

Text classification is a pipeline designed to classify text input into predefined categories or classes. It’s particularly useful for tasks such as sentiment analysis (SA), topic categorization, spam detection, intent recognition, and so on. The pipeline typically employs pre-trained models fine-tuned...

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Machine Learning Infrastructure and Best Practices for Software Engineers
Published in: Jan 2024Publisher: PacktISBN-13: 9781837634064

Author (1)

author image
Miroslaw Staron

Miroslaw Staron is a professor of Applied IT at the University of Gothenburg in Sweden with a focus on empirical software engineering, measurement, and machine learning. He is currently editor-in-chief of Information and Software Technology and co-editor of the regular Practitioner's Digest column of IEEE Software. He has authored books on automotive software architectures, software measurement, and action research. He also leads several projects in AI for software engineering and leads an AI and digitalization theme at Software Center. He has written over 200 journal and conference articles.
Read more about Miroslaw Staron