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People think of Artificial Intelligence (AI) and Machine Learning (ML) as rocket science. Some might consider them as robots that perform given tasks without human intelligence. But this is not the reality. These systems have limited capabilities and simply cannot complete the task without human guidance. In such a case, data labeling is one of
Introduction Businesses highly depend on machine learning systems for making optimal decisions. But for ML algorithms to work properly they highly rely on labeled data. Raw data can be labeled by providing it with informative tags, this process is referred to as data labeling. This raw data when provided with useful information can be used
In recent times, data annotation has gained immense popularity due to various reasons. Among others, data simplification and precision take the front seat. While we know there are different types of annotation, such as data annotation, image annotation, and video annotation, have we ever imagined the challenges annotation poses to AI companies and other such
The e-Commerce industry is slowly overcoming offline retail due to the convenience it offers. People are able to find the products exactly they need easily and quickly on the web without much hassle. The search engine throws precise results every time and also recommends products that they might need, helping boost sales and profit. All
Data labeling makes the work of ML programs much easier and more accurate. That is why it is crucial in supervised machine learning. For any business that depends too much on data, Machine Learning (ML) provides a new and different approach, which gives a neatly and precisely annotated dataset to train the models. The process
Data labeling is the key step in machine learning (ML). When a group of samples is tagged with one or more labels, it is termed labeled data. Data labeling considers a set of unlabeled data and augments it with informative tags. Labels can easily be achieved by humans who can make judgments about unlabeled data.
Many industries are trying to adopt new technologies that could make their work easier, more efficient, and cost-effective. That is how Artificial Intelligence (AI) and Machine Learning (ML) come into play. These two technologies are already used in many industries such as health care, finance, entertainment, automobile, e-commerce, etc and they will soon create a
Data labeling is integral to powering machine learning models. Accurate labeling and classifying of data is key to facilitating the efficiency of processes. Changing demands of machine learning models make it necessary to scale up or scale down data annotation regularly. While some companies choose to set up in-house teams to label data, others prefer
Customized solutions are the way forward in the world of business, and e-commerce is no exception to this. Machine learning, artificial intelligence (AI), and data annotation have come together to benefit customers and sellers alike. In this scenario, computer vision models have come to the forefront to simplify the process of choosing from huge online
Image annotation is integral to machine learning and artificial intelligence, especially when using computer vision (CV) models. It is the process where images of a particular dataset are labeled to help train a machine learning model. Different image annotation techniques such as polygon annotations and bounding boxes can do this. The benefits and importance of