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 mlop journey


8 Projects To Kickstart Your MLOps Journey In 2021

#artificialintelligence

MLOps follows a set of practices to deploy and maintain machine learning models in production efficiently and reliably. While the data science team has a deep understanding of the data, the operations team holds the business acumen. MLOps combines the expertise of each team, leveraging both data and operations skill sets to enhance ML efficiency. According to the Algorithmia report, nearly 22 percent of companies have had ML models in production for one to two years. With practice, MLOps professionals can enhance their skills, and develop a solid pipeline for developing machine learning models.


Best 9 Books To Start Your MLOps Journey

#artificialintelligence

MLOps is a systematic operationalization of machine learning workflows. It is the practice of applying DevOps and ITOps practice to data science, AI, machine learning workflows to make the process efficient, flexible, reproducible, and manageable. This article is a handpicked list of some of the best books you should read as a data scientist, machine learning engineer, DevOps engineer, and project manager to learn about the practice and practically apply it to machine learning workflows. Accelerated DevOps with AI, ML & RPA is a walkthrough story of how artificial intelligence and machine learning is applied to IT operations and how IT operations is applied to artificial intelligence and machine learning development workflow. It explores the impact of AI and machine learning in today's digital space and takes predictive speculation of the further effects the technology will have on IT operations.


Recharge Your AI Initiatives With MLOps: Start Experimenting Now

#artificialintelligence

In this era of industrialization for Artificial Intelligence (AI), enterprises are scrambling to embed AI across a plethora of use cases in hopes of achieving higher productivity and enhanced experiences. However, as AI permeates through different functions of an enterprise, managing the entire charter gets tough. Working with multiple Machine Learning (ML) models in both pilot and production can lead to chaos, stretched timelines to market, and stale models. As a result, we see enterprises hamstrung to successfully scale AI enterprise-wide. To overcome the challenges enterprises face in their ML journeys and ensure successful industrialization of AI, enterprises need to shift from the current method of model management to a faster and more agile format.