Large Language Models have transformed modern AI workflows, and this course provides the essential strategies needed to operate them effectively in production. You will explore the core principles of LLMOps, understanding why reliable deployment, monitoring, and continuous improvement are critical in today’s AI-driven landscape.

Essential Guide to LLMOps

Recommended experience
What you'll learn
Understand the evolution and impact of large language models in AI
Differentiate LLMOps from traditional MLOps and apply relevant strategies
Leverage tools for efficient LLM lifecycle management and model governance
Skills you'll gain
- AI Workflows
- Model Deployment
- Scalability
- Generative AI
- Data Transformation
- Artificial Intelligence
- Data Collection
- MLOps (Machine Learning Operations)
- LLM Application
- Artificial Intelligence and Machine Learning (AI/ML)
- Prompt Engineering
- Feature Engineering
- Responsible AI
- Model Evaluation
- Large Language Modeling
- Continuous Monitoring
- Natural Language Processing
- Data Processing
Details to know

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8 assignments
December 2025
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There are 8 modules in this course
In this section, we explore the evolution of NLP and LLMs, focusing on LLMOps workflows, challenges in training and scaling, and evaluation methods for practical AI deployment.
What's included
2 videos6 readings1 assignment
In this section, we examine LLMOps components including data collection, model training, inference, and monitoring to enhance LLM efficiency and real-world deployment.
What's included
1 video5 readings1 assignment
In this section, we explore methods for collecting, transforming, and automating textual data for large language models (LLMs), emphasizing data quality and efficient training pipelines.
What's included
1 video4 readings1 assignment
In this section, we explore covers LLMOps for developing large language models, including feature management and automation.
What's included
1 video5 readings1 assignment
In this section, we examine offline LLM performance evaluation, LLMOps governance, and legal compliance strategies to ensure secure and effective model deployment in real-world applications.
What's included
1 video5 readings1 assignment
In this section, we cover strategies for efficient inference, model serving, and reliability in LLMOps.
What's included
1 video6 readings1 assignment
In this section, we explore LLMOps monitoring and continuous improvement, focusing on performance metrics, feedback integration, and system refinement for reliable LLM deployment.
What's included
1 video7 readings1 assignment
In this section, we examine trends in LLM development, emerging LLMOps technologies, and responsible AI practices.
What's included
1 video5 readings1 assignment
Instructor

Offered by
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Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
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