Twistys Sasha Grey — Humpme Bogart 720p Victory

# Visual features (face embedding) face_embedding = np.random.rand(128)

Here's a hypothetical example of what the deep feature vector might look like: Twistys Sasha Grey Humpme Bogart 720p VICTORY

# Tag features tags = np.array([1, 1, 0, 0, 1]) # [adult, explicit, Twistys, Sasha Grey, Humpme Bogart] # Visual features (face embedding) face_embedding = np

import numpy as np

# Metadata features (text encoding) title_encoding = np.random.rand(256) studio_encoding = np.random.rand(128) person_encoding = np.random.rand(128) 1]) # [adult

# Concatenate features deep_feature = np.concatenate([ face_embedding, title_encoding, studio_encoding, person_encoding, tags, audio_embedding # if applicable ]) Please note that this is a hypothetical example, and the actual implementation may vary depending on the specific use case and requirements.

# Audio features (if applicable) audio_embedding = np.random.rand(128)