LLMOps and AIOps Bootcamp with 8 End-to-End Projects is a hands-on, production-focused program designed to help engineers deploy, monitor, scale, and operate Large Language Models (LLMs) and AI systems in real-world environments.
This course goes far beyond experimentation. It focuses on real production workflows, combining DevOps, MLOps, LLMOps, and AIOps practices to build enterprise-ready AI systems using modern tooling such as Jenkins, Docker, Kubernetes, AWS/GCP, Prometheus, and Vector Databases.
By the end of the bootcamp, learners gain practical experience building fully automated CI/CD pipelines, scalable LLM deployments, observability stacks, and AI-driven monitoring systems—all through 8 complete end-to-end projects.
Course Snapshot
-
Course Type: Bootcamp (Hands-on, Project-Based)
-
Skill Level: Intermediate → Advanced
-
Language: English (Spanish auto-captions available)
-
Last Updated: December 2025
-
Access: Included in Udemy subscription plans
-
Learning Style: Real-world projects + production architecture
-
Platforms: Web, Mobile, TV
-
Certification: Included
What This Course Is About
This bootcamp bridges the gap between AI model development and real-world production deployment.
You’ll learn how to:
-
Deploy LLM-based systems at scale
-
Automate AI pipelines with CI/CD
-
Monitor AI applications using observability tools
-
Manage AI infrastructure on cloud platforms
-
Operate vector databases for RAG and GenAI systems
-
Apply AIOps concepts for proactive monitoring and automation
Rather than isolated demos, the course emphasizes full lifecycle AI operations, from source code to production monitoring.
What You’ll Learn
LLMOps Foundations
-
What LLMOps is and how it differs from traditional MLOps
-
Lifecycle management of LLM-based applications
-
Best practices for production GenAI systems
CI/CD for AI Systems
-
Build CI/CD pipelines using Jenkins
-
Automate testing, container builds, and deployments
-
Version control and rollout strategies for AI services
Containerization & Orchestration
-
Dockerizing AI and LLM applications
-
Deploying scalable services using Kubernetes (K8s)
-
Managing microservices for AI workloads
Cloud Deployment (AWS & GCP)
-
Deploy AI systems on AWS and Google Cloud Platform
-
Infrastructure patterns for scalable GenAI workloads
-
Cost-aware and secure cloud architecture
Vector Databases & RAG Systems
-
Use vector databases for semantic search and retrieval
-
Power production-ready RAG pipelines
-
Integrate vector stores into LLM workflows
Monitoring & Observability (AIOps)
-
Monitor AI systems with Prometheus
-
Track latency, cost, drift, and failures
-
Apply AIOps concepts for automated alerts and insights
End-to-End Projects (Key Highlight)
This bootcamp includes 8 full production-grade projects, covering:
-
CI/CD pipelines for AI applications
-
Cloud-based LLM deployments
-
Kubernetes-managed AI services
-
Vector database–powered RAG systems
-
Monitoring dashboards and alerting pipelines
-
AI infrastructure automation using DevOps best practices
Each project simulates real enterprise scenarios, ensuring learners can apply the same patterns in professional environments.
Tools & Technologies Covered
-
Jenkins (CI/CD)
-
Docker
-
Kubernetes (K8s)
-
AWS & Google Cloud Platform
-
Prometheus (Monitoring & Observability)
-
Vector Databases
-
LLM deployment frameworks
Who This Course Is For
This bootcamp is ideal for:
-
AI Engineers
-
MLOps & LLMOps Engineers
-
DevOps Engineers transitioning into AI
-
Data Scientists deploying models to production
-
Software Engineers working on GenAI systems
It’s especially valuable for professionals aiming to move from notebooks to production-grade AI systems.
Practical Value
After completing this course, you’ll be able to:
-
Deploy LLM applications at production scale
-
Build automated CI/CD pipelines for AI workloads
-
Operate and monitor AI systems reliably
-
Implement observability for GenAI and RAG systems
-
Apply AIOps techniques to reduce downtime and failures
Industry & Career Relevance
LLMOps and AIOps skills are rapidly becoming must-have competencies as organizations move GenAI from prototypes into mission-critical systems.
This bootcamp prepares learners for roles such as:
-
LLMOps Engineer
-
AI Platform Engineer
-
MLOps Engineer
-
AI Infrastructure Engineer
Final Verdict
LLMOps and AIOps Bootcamp with 8 End-to-End Projects is a strong, production-oriented course for professionals serious about deploying and operating AI systems at scale.
If your goal is to move beyond experimentation and build robust, monitored, cloud-native LLM applications, this bootcamp delivers the right mix of tools, architecture, and hands-on experience.
Affiliate Disclaimer: Some links in this post may be affiliate links. This means we may earn a small commission at no extra cost to you. These commissions help support the site — thank you for your support!