Are you confused with so many tools out there in MLOps? Are you confused where to start your journey in MLOps?
What you will learn
Understand the approach to ML to Production
Understand the fundamentals of MLOps in Production
Understand MLOps as a process – From Business Discussions – ML in Production
Evaluation of different types of tools – Make sense of plethora of tools
Understand different job roles and their future roadmaps
Are you looking to start your journey in ML in production? Are you confused with so many tools? Are you confused about where to start your journey?
Did you know >50% of people discontinue their journey in ML in production because they feel overwhelmed.
Our comprehensive course on MLOps in production is designed to help you do just that to teach you the proper approach to ML in production.
According to the BCGs report, the pioneers of AI @ scale—the companies that have scaled AI across the business and achieved meaningful value from their investments—typically dedicate 10% of their AI investment to algorithms, 20% to technologies, and 70% to embedding AI into business processes and agile ways of working.
Why give so much importance to the tools? Rather emphasis should be given to the process.
This course is suitable for anyone looking to advance their machine learning skills, including Data engineers, ML engineers, Data Scientists, MLOps platform engineers, and MLOps Engineers. By the end of the course, you’ll have a deep understanding of the major root causes of failure in ML in production, the fundamentals of MLOps, MLOps as a process and the future roadmap in ML in production.
I have been working along with industry experts and industry mentors for the past year to understand the root causes in ML in production.