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Machine Learning Infrastructure and Best Practices for Software Engineers

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

Product type Book
Published in Jan 2024
Publisher Packt
ISBN-13 9781837634064
Pages 346 pages
Edition 1st Edition
Languages
Author (1):
Miroslaw Staron Miroslaw Staron
Profile icon Miroslaw Staron

Table of Contents (24) Chapters

Preface 1. Part 1:Machine Learning Landscape in Software Engineering
2. Machine Learning Compared to Traditional Software 3. Elements of a Machine Learning System 4. Data in Software Systems – Text, Images, Code, and Their Annotations 5. Data Acquisition, Data Quality, and Noise 6. Quantifying and Improving Data Properties 7. Part 2: Data Acquisition and Management
8. Processing Data in Machine Learning Systems 9. Feature Engineering for Numerical and Image Data 10. Feature Engineering for Natural Language Data 11. Part 3: Design and Development of ML Systems
12. Types of Machine Learning Systems – Feature-Based and Raw Data-Based (Deep Learning) 13. Training and Evaluating Classical Machine Learning Systems and Neural Networks 14. Training and Evaluation of Advanced ML Algorithms – GPT and Autoencoders 15. Designing Machine Learning Pipelines (MLOps) and Their Testing 16. Designing and Implementing Large-Scale, Robust ML Software 17. Part 4: Ethical Aspects of Data Management and ML System Development
18. Ethics in Data Acquisition and Management 19. Ethics in Machine Learning Systems 20. Integrating ML Systems in Ecosystems 21. Summary and Where to Go Next 22. Index 23. Other Books You May Enjoy

Monitoring ML systems at runtime

Monitoring pipelines in production is a critical aspect of MLOps to ensure the performance, reliability, and accuracy of deployed ML models. This includes several practices.

The first practice is logging and collecting metrics. This activity includes instrumenting the ML code with logging statements to capture relevant information during model training and inference. Key metrics to monitor are model accuracy, data drift, latency, and throughput. Popular logging and monitoring frameworks include Prometheus, Grafana, and Elasticsearch, Logstash, and Kibana (ELK).

The second one is alerting, which is a setup of alerts based on predefined thresholds for key metrics. This helps in proactively identifying issues or anomalies in the production pipeline. When an alert is triggered, the appropriate team members can be notified to investigate and address the problem promptly.

Data drift detection is the third activity, which includes monitoring the distribution...

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