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Bright Laser Technologies (BLT) has launched an AI self-learning platform that integrates deep learning for real-time defect detection and autonomous process adjustment in metal AM.
Technology
1 min read

Bright Laser Technologies (BLT) has launched an AI self-learning platform that integrates deep learning for real-time defect detection and autonomous process adjustment in metal AM.

Bright Laser Technologies

Hardware

Originally reported by ๅ—ๆž็†Š

Bright Laser Technologies (BLT) has launched an AI self-learning platform that integrates deep learning for real-time defect detection and autonomous process adjustment in metal AM. The system uses vision sensors to identify powder-bed anomalies with over 95 percent accuracy, enabling immediate corrective actions without human intervention. This advancement marks a critical transition from hardware-centric systems to data-driven, closed-loop manufacturing. Such intelligent automation is essential for scaling consistent, high-volume production in mission-critical aerospace and medical sectors. ๐Ÿค–๐Ÿš€ #AdditiveManufacturing #AI #3DPrinting #BLT #DigitalManufacturing #SmartManufacturing

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    Bright Laser Technologies (BLT) has launched an AI self-learning platform that integrates deep learning for real-time defect detection and autonomous process adjustment in metal AM.