Life cycle of machine learning project
Deepak Kumar
Propelling AI To Reinvent The Future || Mentor|| Leader || Innovator || Machine learning Specialist || Distributed architecture | IoT | Cloud Computing
Why to read this?
The data science life cycle commences with diagnosing a problem or issue and presenting a solution to those problems. Generally, data scientists set up a process to collect and analyze data on an ongoing basis. If you are interested to know its development life cycle, then this document helps you.
Technical explanation
Machine learning (ML) has been touted as one of the key enablers of the Fourth Industrial Revolution. In recent times, businesses explore new approaches to maximize their profits and reach, without compromising on customer services. Machine learning helps them mine data from relevant sources and analyze it to understand trends, behavior and more. As IT enterprises integrate ML-driven insights into their organizational framework, MLOps is leveraged to enhance the operations and deployment during the lifecycle of machine learning model development and usage.
Important Steps in supervised learning
Identification of the Problem
This step is applicable for any project (for example, software project)
Choice of a Representative Sample
You select a representative sample by determining which variables you need to answer the question or solve the problem posed in your project.
Data Gathering
Collects the necessary data for the project. Some data scientists write their programs or work with data engineers and design applications that mine the required data.
Data Cleaning
It involves transforming the data you collect into a convenient form and ensuring that it applies within the representative sample.
Development of a Data Model
Data model is the step most people associate with data science.
MLOps vision
MLOps works on integrating three domains as shown below. This writeup talks about software tools for the same.
Reference
Thanks to these helping hands
https://www.nature.com/articles/s41524-019-0221-0 https://www.jigsawacademy.com/blogs/data-science/data-science-life-cycle/ https://images.app.goo.gl/Kyww7NvD145NoUTT8 https://images.app.goo.gl/WowJwbkEmKY6ksid8 https://www.analyticsinsight.net/top-mlops-based-tools-for-enabling-effective-machine-learning-lifecycle/