Real-World Use Cases of
Data Annotation in Machine Learning
Table Of Content
I.
Introduction
II. Understanding Annotation in Machine Learning
III. AI/ML Real-World Use Cases
•
Retail
•
Education
•
Healthcare
•
Ecommerce
IV. Conclusion
Introduction
If you make a mistake while texting someone, some
of your errors are auto-corrected, you know whom to
thank! But have you ever wondered how do AI and
ML applications work?
If not, we are here to answer this question. Data
annotation in machine learning is the process that
fuels AI/ML applications.
Understanding Annotation in Machine Learning
Machines cannot make sense out of the raw data. It must be properly structured and tagged for the
smart models to comprehend it. Annotation in machine learning is, therefore, the process of adding
labels to the input datasets.
These labels are added in the form of tags, meta tags, and descriptions. This helps the machine
learning algorithms to learn and grow as well as deliver reliable outputs.
AI/ML Real-World Use Cases
It is no surprise that AI has such wonderful day-to-day applications today. However, you
must not limit yourself to these.
Listed here are some peculiar and intriguing use cases of AI/ML in different industries and
how data annotation fuels those applications:
1. Retail
2.
Education
3. Healthcare
4.
Ecommerce
Retail
To deliver an elevated user experience, retailers
around the world leverage AI throughout their
product
and
service
cycle—beginning
from
manufacturing to after-sales consumer service
interactions.
This not only influences their current sales but also
proves to be a guide for inventory management.
Education
Another amazing use case is Natural Language
Processing (NLP). This means that your course
material can be translated from one language to
other.
Hence, the course contents and subject matters
become easily accessible to a wide range of
students who can enormously benefit from
these.
Healthcare
AI paired with ML has numerous use cases in
the healthcare landscape. Or, should I say, AI
is a boon to