Coursera

Optimizing AI Workflows and Deploying Edge Models

Coursera

Optimizing AI Workflows and Deploying Edge Models

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深入了解一个主题并学习基础知识。
中级 等级

推荐体验

8 小时 完成
灵活的计划
自行安排学习进度
深入了解一个主题并学习基础知识。
中级 等级

推荐体验

8 小时 完成
灵活的计划
自行安排学习进度

您将学到什么

  • Implement and optimize neural network components using PyTorch tensor operations and automatic differentiation

  • Analyze ML workflow performance using experiment metrics, visualization tools, and GPU utilization insights

  • Build efficient data pipelines and deploy optimized AI models to edge environments

要了解的详细信息

可分享的证书

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授课语言:英语(English)
最近已更新!

March 2026

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Petrobras, TATA, Danone, Capgemini, P&G 和 L'Oreal 的徽标

积累 Machine Learning 领域的专业知识

本课程是 Eyes on AI - Computer Vision Engineering 专业证书 专项课程的一部分
在注册此课程时,您还会同时注册此专业证书。
  • 向行业专家学习新概念
  • 获得对主题或工具的基础理解
  • 通过实践项目培养工作相关技能
  • 通过 Coursera 获得可共享的职业证书

该课程共有9个模块

You will move beyond the standard “out-of-the-box” components in PyTorch by building your own custom building block called Squeeze-and-Excite. You will understand why these custom components matter for real-world problems, and you will create one step by step while ensuring it behaves correctly. You will see how data flows through this custom block, how its parameters are stored and updated during learning, and how to verify that everything is connected properly. By the end, you will understand a general pattern you can reuse to build many other custom components for your neural networks.

涵盖的内容

3个视频1篇阅读材料2个作业

You will learn how to find and fix slowdowns in your AI training code, improving performance from data processing to model training. You will use built-in tools to identify issues such as slow data loading, then apply two practical techniques: one that makes mathematical computations faster while using less memory, and another that allows you to train with larger batches of data without running out of memory. Through quizzes, ready-to-copy code examples, and clear explanations, you will see how to keep your GPU working at full speed instead of sitting idle. By the end, you will be able to streamline complex training workflows into efficient processes that support business success.

涵盖的内容

2个视频1篇阅读材料3个作业

You will explore how visual dashboards help you understand model behavior and compare different training runs. You will learn how to interpret accuracy curves, loss trajectories, and compute trade-offs so you can choose the model variant that is best for the task. By the end, you will know how to evaluate experiments using clear visual evidence rather than guesswork.

涵盖的内容

2个视频1篇阅读材料1个作业

You will practice structuring reusable ML workflows using modular components. You will explore LightningModule and DataModule patterns, strengthen your documentation habits, and understand how structured templates reduce errors.

涵盖的内容

2个视频1篇阅读材料2个作业

You will explore how data loading, batching, caching, and prefetching impact training speed. You will learn how frameworks like tf.data and PyTorch DataLoader parallelize input operations to keep GPUs busy.

涵盖的内容

3个视频1篇阅读材料1个作业

You will explore how computational graphs work, why redundant operations exist, and how pruning them improves model inference latency. You will analyze a model graph, identify unnecessary reshape and identity operations, prune them, re-export the SavedModel, and measure the resulting latency improvements.

涵盖的内容

1个视频1篇阅读材料2个作业

You will explore how to evaluate ML models using slice-based performance analysis. You will discover how different environments, devices, and usage-context slices can expose hidden weaknesses in an otherwise accurate model. Through TFMA workflows and hands-on exploration, you will identify a real 5% drop in performance on low-light smartphone images and generate actionable recommendations to improve data quality and fairness. This lesson emphasizes practical robustness evaluation rather than purely theoretical metrics.

涵盖的内容

2个视频1篇阅读材料1个作业

You will optimize and deploy models to edge hardware using TensorFlow Lite. You will convert a SavedModel into a quantized TFLite model, explore weight and integer quantization options, and deploy the optimized model on a Jetson Nano. You will measure changes in file size, inference speed (FPS), and accuracy, then summarize your results in a reproducible hand-off guide. By the end, you will understand the practical trade-offs between speed, footprint, and accuracy in real edge deployments.

涵盖的内容

1个视频1篇阅读材料2个作业

Real-world computer vision systems move through several stages before they are ready for deployment. Engineers must evaluate model experiments, diagnose workflow inefficiencies, improve training pipelines, and ensure that models can operate reliably under real-world and device constraints. These activities require combining performance analysis with practical engineering decisions about system design and deployment readiness. In this integration project, you will act as a machine learning engineer preparing a computer vision model for deployment on edge devices in a resource-constrained environment. You will analyze experiment results, identify performance bottlenecks, evaluate slice-level robustness, and propose workflow and deployment optimizations. The project integrates key engineering activities involved in preparing vision systems for production, including GPU performance diagnosis, experiment visualization and comparison, data pipeline optimization, workflow standardization, and edge deployment trade-off analysis. Rather than focusing on isolated techniques, you will evaluate the full machine learning workflow—from training inefficiencies and experiment interpretation to robustness risks and deployment feasibility. Your final deliverable will be an Optimization and Edge Deployment Strategy Brief, a structured technical report that identifies workflow bottlenecks, proposes targeted optimization strategies, evaluates slice-level risks, and presents a justified edge-deployment recommendation. The project reflects real-world ML engineering responsibilities where professionals must balance accuracy, speed, maintainability, and hardware constraints before approving production deployment.

涵盖的内容

2篇阅读材料1个作业

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位教师

Professionals from the Industry
366 门课程51,989 名学生

提供方

Coursera

人们为什么选择 Coursera 来帮助自己实现职业发展

Felipe M.

自 2018开始学习的学生
''能够按照自己的速度和节奏学习课程是一次很棒的经历。只要符合自己的时间表和心情,我就可以学习。'

Jennifer J.

自 2020开始学习的学生
''我直接将从课程中学到的概念和技能应用到一个令人兴奋的新工作项目中。'

Larry W.

自 2021开始学习的学生
''如果我的大学不提供我需要的主题课程,Coursera 便是最好的去处之一。'

Chaitanya A.

''学习不仅仅是在工作中做的更好:它远不止于此。Coursera 让我无限制地学习。'

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