Data annotation is the reason your Artificial Intelligence (AI) and Machine Learning (ML) models understand and make judgments the way they do, and without it, these models are more than likely to stay unaware of the actions that need to be taken.
Lets See what exactly is Data Annotation?
Simply said, data annotation is the process of labelling data that will be utilised for training purposes utilising metadata. Consider labelling your spice jars with name tags so you know what to grab when the occasion arises. However, the situation is a little more complicated than that. To become useable models, supervised ML and AI models are taught to spot patterns when provided with diverse data and unannotated data. It's more like swapping out your labelled jars for fresh ones (without labels) to see if you can identify the spices without them.
Who is a Data Annotator?
A DATA ANNOTATOR IS A SPECIALIST WHO CATEGORIZES CONTENT INTO DIFFERENT TYPES AND DATA SETS SO THAT ML AND AI MODELS CAN LEARN HOW TO WORK.
This is a professional position in which the person is in charge of annotating and anonymizing data while adhering to the highest requirements in the compliance discipline. Data Annotators also assist with data aggregation and cleaning for machine learning applications.
Advantages of Data Annotation
1) Data annotation improves the precision and intelligence of your models.
2) With data annotation, you can improve the end user experience.
3) Increased relevancy helps in making the models more reliable
4) Data annotation has the further benefit of allowing requests to be processed without interruption in terms of intent and feelingsShow More