MLOps/DataOps Master Class
Training on MLOps and DataOps concepts with hands-on practicals
What you will learn and the outcome
- Insightful and conceptual live training on the concepts and tools in MLOps and DataOps for Machine Learning workflows
- Hands on session for end to end machine learning with different MLOps and DataOps tools and frameworks
- Access to the course material
- Access to online platform for AI/ML operations
- Certificate of achievement
Delivery mode
- You can choose to join either on-site training in Adelaide, or join online from anywhere virtually
- 2 hours x 2 sessions
Best suited for
- Professionals (Engineering, Healthcare, Education, Industrial, Government, etc) who is looking forward to develop workflows for Machine Learning
- Business executives (C-level, directors, management) who would like to have advanced understanding of MLOps and DataOps tools/frameworks
- University students
- School leavers
- High school students
- Any enthusiasts
Pre-requisite
- Ability to understand scientific concepts
- Computer literacy
- Basic understanding of Artificial Intelligence and Machine Learning
Your trainer
Dr. Kalana Withanage has Ph.D in Computer Vision / Machine Learning BSc. (Hons) in Electrical and Information Engineering 16+ years industrial experience in architecting and developing solutions with machine learning, computer vision, robotics, and embedded systems. He is an inspiring trainer and international community educational event speaker.
Course content
Session 1
Machine learning overview
Need for MLOps and DataOps
Key tasks in MLOps and DataOps
Data cleaning, data labelling, data versioning
Model training, model fine-tuning
Model deployment, monitoring, versioning
DataOps and MLOps CI/CD/CT automation
Intro to tools: LakeFS, MLFlow, DVC, Kubeflow, Flyte
Hands-on session on: end to end model development and deployment
Session 2
Deployment tools: Kubernetes, Docker
On premises, Cloud, and Hybrid ML workflow deployment
GPU resource setup
Model performance monitoring
Automated retraining
Auto-scaling infrastructure for training and deployment
Hands-on session on model performance analysis, monitoring, and retraining