Book Image

The Deep Learning Architect's Handbook

By : Ee Kin Chin
5 (1)
Book Image

The Deep Learning Architect's Handbook

5 (1)
By: Ee Kin Chin

Overview of this book

Deep learning enables previously unattainable feats in automation, but extracting real-world business value from it is a daunting task. This book will teach you how to build complex deep learning models and gain intuition for structuring your data to accomplish your deep learning objectives. This deep learning book explores every aspect of the deep learning life cycle, from planning and data preparation to model deployment and governance, using real-world scenarios that will take you through creating, deploying, and managing advanced solutions. You’ll also learn how to work with image, audio, text, and video data using deep learning architectures, as well as optimize and evaluate your deep learning models objectively to address issues such as bias, fairness, adversarial attacks, and model transparency. As you progress, you’ll harness the power of AI platforms to streamline the deep learning life cycle and leverage Python libraries and frameworks such as PyTorch, ONNX, Catalyst, MLFlow, Captum, Nvidia Triton, Prometheus, and Grafana to execute efficient deep learning architectures, optimize model performance, and streamline the deployment processes. You’ll also discover the transformative potential of large language models (LLMs) for a wide array of applications. By the end of this book, you'll have mastered deep learning techniques to unlock its full potential for your endeavors.
Table of Contents (25 chapters)
1
Part 1 – Foundational Methods
11
Part 2 – Multimodal Model Insights
17
Part 3 – DLOps

Summary

In this chapter, we explored the concept of drift, which affects the performance of deployed deep learning models over time. We covered the three types of drift – concept drift, data drift, and model drift – and discussed strategies to handle them effectively. This included strategies to approach drift, including automatic programmatic detection and manual domain expert predictions, strategies to quantify drift, and strategies to mitigate drift effectively. We learned that statistical-based drift should always be opted for over ambiguous data distribution drift. We also learned that monitoring drift by batch in regular intervals is crucial in ensuring the continued success of deep learning models. Finally, using the evidently library, we demonstrated how to implement programmatic data distribution drift detection in a practical tutorial and understood behaviors that can shape how you think of data distribution drift methods. This knowledge can be applied across...