Deepfake detection models are designed to discern real content from manipulated media across diverse industry domains, from banking, digital lending, insurance, and gig economy. These models utilize advanced techniques in face recognition, analyzing synthetic videos, They undergo rigorous testing on diverse datasets, including a test set with various scenarios and conditions, achieving high accuracy rates measured in percentage points. By continuously improving their ability to find evidence of manipulation, these models play a crucial role in upholding the integrity of original videos and images in the face of the deepfake phenomenon.