M
E
N
U
Choosing between in-house and outsourced data annotation is a critical decision that directly impacts the efficiency, scalability, and success of your AI initiatives. The core mechanism that powers machine learning is annotation, which is not a background process. Even the best algorithms will not produce useful results if the data is not properly labeled. As
Labeling data for use in machine learning is called “data annotation,” and it is essential to have high-quality data sets for Machine learning. There is no doubt that the data labeling services and Data Annotation industry is growing rapidly around the world, as it is needed by numerous sectors, including the automotive, manufacturing, e-commerce, retail,
As part of machine learning, raw data is identified and labeled with meaningful labels based on their context. So the training model can gain insight from it. Media files (such as videos, audio clips, and images) are all good examples of labeled data. Categories of data labeling Automatic labeling Using this method of labeling, we