TrueschoTruescho
All Courses
Deploy Resilient AI Microservices with LangChain
Coursera
Course
Unknown

Deploy Resilient AI Microservices with LangChain

Coursera

Learn to transform LangChain apps into production-grade microservices using containerization, advanced monitoring, and chaos testing for resilience.

Unknown3 weeksEnglish

About this Course

Deploy Resilient AI Microservices with LangChain is a hands-on course that transforms LangChain applications from local prototypes into production-grade systems. You'll decompose monolithic apps into modular services—retrievers, LLM endpoints, and post-processors—connected through gRPC interfaces for scalability and fault isolation. You'll containerize and deploy using Docker and Kubernetes, writing production-ready Dockerfiles with health checks, managing environment variables, and automating rollouts to AWS ECR. Then implement comprehensive observability with OpenTelemetry tracing, Prometheus metrics, and Jaeger/Grafana dashboards to measure latency, throughput, and errors. Finally, you'll master chaos engineering using Chaos Mesh or Gremlin to simulate pod failures, network delays, and resource exhaustion, calculating MTTD and MTTR to measure system resilience. This course is for developers and MLOps pros ready to scale LangChain apps using Python, APIs, and Docker for production-grade AI systems. Learners should have basic Python or JavaScript skills, be familiar with REST APIs and Docker fundamentals, and understand general AI or LLM workflows. By the end of this course, you'll have a fully deployed, observable, fault-tolerant microservice architecture with reusable templates, deployment YAMLs, and a resilience checklist for any AI system. Designed for developers, data engineers, and MLOps professionals ready to make AI systems not just smart, but strong

What You'll Learn

  • Analyze AI workloads to define microservice boundaries
  • Apply containerization and orchestration with Docker, ECR, Kubernetes
  • Evaluate and improve resilience using observability and chaos testing

Prerequisites

  • Basic familiarity with relevant concepts and tools
  • Readiness for hands-on and case-based training

Instructors

S

Starweaver

Global Leaders in Professional & Technology Education

K

Karlis Zars

Computer Science Ph.D., Trainer and Consultant

Topics

Software Development
Computer Science
Cloud Computing
Information Technology
LangChain
LLM Application
MLOps (Machine Learning Operations)
Prometheus (Software)
Grafana
Application Deployment

Course Info

PlatformCoursera
LevelUnknown
PacingUnknown
PriceFree

Skills

تطوير البرمجيات
علوم الحاسوب
الحوسبة السحابية
تكنولوجيا المعلومات
LangChain
تطبيقات نماذج اللغة الكبيرة
عمليات تعلم الآلة (MLOps)
Prometheus
Grafana
Application Deployment

Start Learning Now