Coursera

Systematic ML Optimization 专项课程

Coursera

Systematic ML Optimization 专项课程

Optimize ML Models for Production. Learn to debug, optimize, and maintain production-ready machine learning systems.

Hurix Digital
ansrsource instructors

位教师:Hurix Digital

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在 10 小时 一周
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推荐体验

4 周 完成
在 10 小时 一周
灵活的计划
自行安排学习进度

您将学到什么

  • Design reproducible ML experiments and debug neural network training dynamics to diagnose overfitting and gradient issues.

  • Analyze model errors systematically to identify failure patterns and select cost-effective algorithms for production deployment.

  • Build automated ML pipelines with drift detection and optimize fusion algorithms for scalable, production-ready systems.

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授课语言:英语(English)
最近已更新!

January 2026

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  • 培养对关键概念的深入理解
  • 通过 Coursera 获得职业证书

专业化 - 6门课程系列

您将学到什么

您将学到什么

  • Production ML systems require continuous monitoring and automated responses to maintain business value over time.

  • Drift detection is essential for identifying when models need retraining before performance degradation impacts business outcomes.

  • End-to-end automation reduces manual errors and enables scalable ML operations across multiple models and environments.

  • Automated tuning techniques help models improve consistently without manual trial-and-error.

您将获得的技能

类别:Data Pipelines
类别:Verification And Validation

您将学到什么

  • Training and validation metric divergence patterns are reliable indicators of overfitting that require early intervention to avoid model degradation.

  • Gradient magnitude tracking during backpropagation reveals critical stability issues that can be systematically diagnosed and corrected.

  • Proactive diagnostic workflows using visualization tools like TensorBoard enable timely interventions that save significant computational resources

  • Successful model development depends on establishing continuous monitoring practices that catch training failures before they become costly problems.

您将获得的技能

类别:Analysis
类别:Applied Machine Learning
类别:Performance Analysis

您将学到什么

  • Systematic error analysis uncovers specific failure modes and root causes that guide focused model improvements.

  • Confusion matrices and error categories reveal class-level model strengths and weaknesses.

  • Visualizing predictions with ground truth adds qualitative insight to complement numeric metrics.

  • Linking errors to data traits enables targeted data collection and model tuning for stronger robustness.

您将获得的技能

类别:Computer Vision
类别:Model Evaluation
类别:Analysis
类别:Debugging
类别:Image Analysis
类别:Failure Mode And Effects Analysis
类别:Data Visualization
类别:Root Cause Analysis
类别:Statistical Reporting
类别:Exploratory Data Analysis
类别:Quality Assurance

您将学到什么

  • Multimodal AI interpretation requires understanding cross-modal relationships and how different data types influence model decision-making processes.

  • Effective model evaluation includes accuracy metrics, bias detection, uncertainty quantification, and reliability assessment across modalities.

  • The bridge between AI capabilities and business value is translating technical complexity into contextual narratives for strategic decisions.

  • Professional success in AI implementation depends on communication skills that transform model outputs into actionable business intelligence

您将获得的技能

类别:Strategic Thinking
类别:Analytical Skills
类别:Multimodal Prompts
类别:Data Synthesis
类别:Customer Insights
类别:Large Language Modeling
类别:Data Presentation
类别:AI Enablement
Analyze and Optimize Fusion Algorithms

Analyze and Optimize Fusion Algorithms

第 6 门课程 2小时

您将学到什么

  • Systematic complexity analysis with Big O notation for time and space is fundamental to predicting performance in scalable AI system design.

  • Trade-off evaluation between speed and memory usage requires formal assessment methodologies rather than intuitive guessing.

  • Resource optimization decisions must be grounded in empirical profiling data combined with theoretical complexity analysis.

  • Algorithm selection for deployment environments requires matching complexity profiles to specific hardware constraints and performance requirements.

您将获得的技能

类别:Algorithms
类别:Scalability
类别:Resource Utilization
类别:Systems Analysis

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位教师

Hurix Digital
Coursera
283 门课程 20,470 名学生
ansrsource instructors
Coursera
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