Labels
What is Labels?
Labels are descriptive tags or annotations assigned to data, enabling Edge AI models to understand, categorize, and make decisions from raw inputs. Also known as data tags, they are essential for supervised machine learning and accurate edge computing predictions.
Why Is It Used?
Labels guide AI algorithms to recognize patterns, classify objects, and improve decision-making directly on devices at the network edge, reducing latency and dependence on cloud processing.
How Is It Used?
Assign labels to images, sensor readings, or video frames.
Train Edge AI models to identify objects, detect anomalies, or trigger automated actions.
Continuously refine models with updated labeled data for better real-time performance.
Types of Labels
Manual Labels: Human-generated annotations for high accuracy.
Automated Labels: AI-assisted tagging for large datasets.
Hybrid Labels: Combination of manual and automated labeling for efficiency and precision.
Benefits of Labels
Enhances accuracy of Edge AI predictions.
Reduces cloud processing and network bandwidth.
Enables real-time, on-device decision-making.
Supports diverse use cases from IoT analytics to industrial automation.