Coursera

Blueprint to Bytecode: Architecting Scalable AI Systems 专项课程

Coursera

Blueprint to Bytecode: Architecting Scalable AI Systems 专项课程

Build Production AI at Enterprise Scale.

Master cloud architecture, Kubernetes, and MLOps to design and deploy scalable AI systems

Hurix Digital
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位教师:Hurix Digital

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4 周 完成
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 and deploy scalable AI architectures using Kubernetes, GPU clusters, and cloud-native services

  • Build production ML pipelines with automated scaling, monitoring, and cost optimization strategies

  • Transform business requirements into technical architectures with proper system design documentation

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授课语言:英语(English)
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专业化 - 10门课程系列

Transform Data: Cleanse, Encode, Validate

Transform Data: Cleanse, Encode, Validate

第 1 门课程, 小时

您将学到什么

  • Evaluate and encode categorical features using optimal strategies while measuring and documenting data quality with Great Expectations.

  • Clean messy real-world fields and build transformation lineage in Python and pandas to produce reliable, model-ready datasets.

您将获得的技能

类别:Data Transformation
类别:Data Cleansing
类别:Data Validation
类别:Data Quality
类别:Pandas (Python Package)
类别:Data Preprocessing
类别:Feature Engineering
类别:Quality Assurance
类别:Predictive Modeling
类别:Data Wrangling
类别:Data Manipulation
类别:Exploratory Data Analysis
类别:Technical Documentation
类别:Descriptive Analytics
Architect AI Systems: From Concept to Code

Architect AI Systems: From Concept to Code

第 2 门课程, 小时

您将学到什么

  • Model AI system requirements and data flows using SysML diagrams and MBSE to create artifacts that teams can build and audit against.

  • Generate sequence diagrams programmatically in Python to document retraining cycles and support system reliability and provenance.

您将获得的技能

类别:Model Based Systems Engineering
类别:MLOps (Machine Learning Operations)
类别:Systems Analysis
类别:System Design and Implementation
类别:Diagram Design
类别:Requirements Management
类别:Systems Architecture
Architect AI Solutions: From Needs to Models

Architect AI Solutions: From Needs to Models

第 3 门课程, 小时

您将学到什么

  • Analyze stakeholder requirements and map them to appropriate AI approaches including managed APIs, cloud services, or custom ML models.

  • Design end-to-end AI solution architectures integrating vector databases, transformer models, and orchestration layers to meet business goals.

您将获得的技能

类别:Functional Requirement
类别:Business Requirements
类别:Systems Integration
类别:Solution Design
类别:Requirements Analysis
类别:Scalability
GPU Clusters & Containers

GPU Clusters & Containers

第 4 门课程, 小时

您将学到什么

  • Distributed GPU training coordinates networking, software, and resources to achieve strong performance with optimal cost efficiency.

  • Containerization and orchestration enable reliable MLOps with consistent deployment, automated scaling, and resilient services.

  • Production AI systems require infrastructure that smoothly connects development with scalable and maintainable deployments.

  • Cloud resource management balances compute power, cost control, and operational complexity for sustainable AI operations.

您将获得的技能

类别:Containerization
类别:Scalability
类别:Distributed Computing
类别:Kubernetes
类别:MLOps (Machine Learning Operations)
类别:AI Orchestration
类别:Cloud Computing
类别:AI Workflows
类别:Docker (Software)
类别:Cloud Infrastructure
类别:Application Deployment
类别:Model Deployment
Scale Kubernetes: Optimize Your Systems

Scale Kubernetes: Optimize Your Systems

第 5 门课程, 小时

您将学到什么

  • Effective K8s resource management needs continuous monitoring and proactive scaling threshold adjustments based on usage patterns.

  • Optimal utilization balances performance and cost, targeting 70-80% usage to handle spikes without waste.

  • Automated scaling must consider app startup times and traffic patterns to prevent over-provisioning and performance issues.

  • Resource requests/limits ensure predictable performance while preventing resource starvation across workloads.

您将获得的技能

类别:Kubernetes
类别:Scalability
类别:YAML
类别:Capacity Management
类别:MLOps (Machine Learning Operations)
类别:Performance Tuning
类别:Prometheus (Software)
类别:Dashboard
类别:System Monitoring
类别:Continuous Monitoring
类别:Analysis
类别:Grafana
Deploy and Optimize Cloud AI Architectures

Deploy and Optimize Cloud AI Architectures

第 6 门课程, 小时

您将学到什么

  • Configure distributed ML training pipelines on Amazon SageMaker using Spot Instances and autoscaling to optimize cost and performance.

  • Analyze GPU utilization logs and CloudWatch metrics to right-size ML workloads and justify data-driven architecture decisions.

您将获得的技能

类别:Cloud Computing Architecture
类别:Cost Benefit Analysis
类别:Cloud Management
类别:Cost Management
Integrate and Optimize AI Services Seamlessly

Integrate and Optimize AI Services Seamlessly

第 7 门课程, 小时

您将学到什么

  • Integrate AI prediction services using gRPC and protobuf to improve consistency, performance, and cross-language compatibility in production.

  • Interpret Prometheus metrics and canary release signals to make safe rollback or stabilization decisions for live AI services.

您将获得的技能

类别:Machine Learning
类别:Site Reliability Engineering
类别:System Monitoring
类别:Continuous Deployment
类别:API Testing
类别:Restful API
类别:Cloud Deployment
Design Scalable AI Systems and Components

Design Scalable AI Systems and Components

第 8 门课程, 小时

您将学到什么

  • Design end-to-end AI system architectures that meet throughput, latency, and fault-tolerance goals using industry-standard ML patterns.

  • Produce complete architecture documents with component diagrams and interface specifications that engineering teams can implement directly.

您将获得的技能

类别:Design Specifications
类别:Architectural Drawing
类别:Systems Design
类别:Artificial Intelligence and Machine Learning (AI/ML)
Transform and Communicate AI Insights Visually

Transform and Communicate AI Insights Visually

第 9 门课程, 小时

您将学到什么

  • Prepare and join CRM and usage data using SQL and pandas to build reliable analytical foundations for insight generation.

  • Visualize funnel performance and craft concise insight messages that clearly communicate user behavior patterns to stakeholders.

您将获得的技能

类别:Statistical Reporting
类别:Data Transformation
类别:Data Storytelling
类别:Pandas (Python Package)
类别:Interactive Data Visualization
Analyze, Engineer, and Boost AI ROI

Analyze, Engineer, and Boost AI ROI

第 10 门课程, 小时

您将学到什么

  • Interpret EDA patterns and apply statistical tests like chi-square to identify feature engineering opportunities across demographic segments.

  • Evaluate model outcomes through A/B testing and summarize performance shifts as clear, stakeholder-ready business impact insights.

您将获得的技能

类别:Feature Engineering
类别:Business Metrics
类别:Performance Measurement
类别:Data Analysis
类别:Return On Investment

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位教师

Hurix Digital
Coursera
406 门课程34,719 名学生
ansrsource instructors
Coursera
200 门课程8,106 名学生

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