Nowadays, artificial intelligence (AI) and machine learning (ML) platforms are seeping through the typical office workflow. ML tools apply data annotation and labeling to gather and analyze massive datasets to make operations efficient, reduce overhead costs, and deploy accurate sifting techniques to data. Typically, labeling occurs when humans tag unlabeled data. Therefore, ML utilizes human-provided labels and detect patterns for large data sets. It makes analysis and interpretation quick, likewise, tracking, scanning, and detection.
Data labeling allows objects to be tagged, deciphered, and recognized by ML platforms. Practical business applications involve facial recognition, autonomous mobility, temperature checking, aerial drones, CCTV, or other robotic applications. This article will tackle salient characteristics of data labeling solutions and their operational impact on business.
Presently, labeling is classified into visual (videos and images), audio, and text data.
Fundamentally, an AI system is reliant on quality algorithms and extensive and powerful training data. Ultimately, the strength of the AI tools that should be integrated into your business platform must be backed by solid algorithms and various training data for accurate visual, audio, and text recognition, tracking, and analysis. Here are five essential characteristics of a superior data labeling solution.
It is crucial that the annotation tools provided by data labeling solutions are applicable, or they can be tailor-fit to your business goals. It should support various objects, labels, images, and texts with quick loading times. Tools must be bespoke and ergonomically designed to fit your work and process flows.
The integration of data to annotation platforms can be conducted through simple drag and drop. In this way, jobs are quick, straightforward, and seamless with an intuitive annotation dashboard. In addition, labeling should be pre-configured with integrated workflows that are available and accessible.
An intuitive navigation toolbar reduces the cognitive load of labelers and ML specialists, therefore making tasks quick. In addition, platforms must have shortcuts for image editing and labeling. In this way, time and motion are cut, increasing productivity.
Like cloud platforms, data labeling solutions should facilitate team collaboration and supervision to impact the scalability and security of data. Vital features are role-based access controls and comprehensive performance reviews of team members generated via the dashboard.
Ultimately, data labeling platforms must adhere to the highest standard of data security and privacy to clients for your business protection.
Nowadays, AI and ML platforms are salient business enhancement tools that positively impact productivity, costs, top line, and income. Therefore, data labeling solutions are worthwhile investments if you are looking to scale and offer above and beyond services.
Join our WhatsApp Channel to get the latest news, exclusives and videos on WhatsApp
_____________
Disclaimer: Analytics Insight does not provide financial advice or guidance. Also note that the cryptocurrencies mentioned/listed on the website could potentially be scams, i.e. designed to induce you to invest financial resources that may be lost forever and not be recoverable once investments are made. You are responsible for conducting your own research (DYOR) before making any investments. Read more here.