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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.
Read more about Miroslaw Staron

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Summary

Machine learning and traditional software are often perceived as two alternatives. However, they are more like siblings – one cannot function without the other. Machine learning models are very good at solving constrained problems, but they require traditional software for data collection, preparation, and presentation.

The probabilistic nature of machine learning models requires additional elements to make them useful in the context of complete software products. Therefore, we need to embrace this nature and use it to our advantage. Even for safety-critical systems, we could (and should) use machine learning when we know how to design safety mechanisms to prevent hazardous consequences.

In this chapter, we explored the differences between machine learning software and traditional software while focusing on how to design software that can contain both parts. We also showed that there is much more to machine learning software than just training, testing, and evaluating the model – we showed that rigorous testing makes sense and is necessary for deploying reliable software.

Now, it is time to move on to the next chapter, where we’ll open up the black box of machine learning software and explore what we need to develop a complete machine learning software product – starting from data acquisition and ending with user interaction.

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Published in: Jan 2024Publisher: PacktISBN-13: 9781837634064
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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