OpenClip
OpenClip is an source implementation of OpenAI's CLIP.
These multi-modal embeddings can be used to embed images or text.
%pip install --upgrade --quiet langchain-experimental
%pip install --upgrade --quiet pillow open_clip_torch torch matplotlib
We can the list of available CLIP embedding models and checkpoints:
import open_clip
open_clip.list_pretrained()
Below, I test a larger but more performant model based on the table (here):
model_name = "ViT-g-14"
checkpoint = "laion2b_s34b_b88k"
But, you can also opt for a smaller, less performant model:
model_name = "ViT-B-32"
checkpoint = "laion2b_s34b_b79k"
The model model_name
,checkpoint
are set in langchain_experimental.open_clip.py
.
For text, use the same method embed_documents
as with other embedding models.
For images, use embed_image
and simply pass a list of uris for the images.
import numpy as np
from langchain_experimental.open_clip import OpenCLIPEmbeddings
from PIL import Image
# Image URIs
uri_dog = "/Users/rlm/Desktop/test/dog.jpg"
uri_house = "/Users/rlm/Desktop/test/house.jpg"
# Embe images or text
clip_embd = OpenCLIPEmbeddings(model_name="ViT-g-14", checkpoint="laion2b_s34b_b88k")
img_feat_dog = clip_embd.embed_image([uri_dog])
img_feat_house = clip_embd.embed_image([uri_house])
text_feat_dog = clip_embd.embed_documents(["dog"])
text_feat_house = clip_embd.embed_documents(["house"])
API Reference:OpenCLIPEmbeddings
Sanity Checkโ
Let's reproduce results shown in the OpenClip Colab here.
import os
from collections import OrderedDict
import IPython.display
import matplotlib.pyplot as plt
import skimage
%matplotlib inline
%config InlineBackend.figure_format = 'retina'
descriptions = {
"page": "a page of text about segmentation",
"chelsea": "a facial photo of a tabby cat",
"astronaut": "a portrait of an astronaut with the American flag",
"rocket": "a rocket standing on a launchpad",
"motorcycle_right": "a red motorcycle standing in a garage",
"camera": "a person looking at a camera on a tripod",
"horse": "a black-and-white silhouette of a horse",
"coffee": "a cup of coffee on a saucer",
}
original_images = []
images = []
image_uris = [] # List to store image URIs
texts = []
plt.figure(figsize=(16, 5))
# Loop to display and prepare images and assemble URIs
for filename in [
filename
for filename in os.listdir(skimage.data_dir)
if filename.endswith(".png") or filename.endswith(".jpg")
]:
name = os.path.splitext(filename)[0]
if name not in descriptions:
continue
image_path = os.path.join(skimage.data_dir, filename)
image = Image.open(image_path).convert("RGB")
plt.subplot(2, 4, len(images) + 1)
plt.imshow(image)
plt.title(f"{filename}\n{descriptions[name]}")
plt.xticks([])
plt.yticks([])
original_images.append(image)
images.append(image) # Origional code does preprocessing here
texts.append(descriptions[name])
image_uris.append(image_path) # Add the image URI to the list
plt.tight_layout()
# Instantiate your model
clip_embd = OpenCLIPEmbeddings()
# Embed images and text
img_features = clip_embd.embed_image(image_uris)
text_features = clip_embd.embed_documents(["This is " + desc for desc in texts])
# Convert the list of lists to numpy arrays for matrix operations
img_features_np = np.array(img_features)
text_features_np = np.array(text_features)
# Calculate similarity
similarity = np.matmul(text_features_np, img_features_np.T)
# Plot
count = len(descriptions)
plt.figure(figsize=(20, 14))
plt.imshow(similarity, vmin=0.1, vmax=0.3)
# plt.colorbar()
plt.yticks(range(count), texts, fontsize=18)
plt.xticks([])
for i, image in enumerate(original_images):
plt.imshow(image, extent=(i - 0.5, i + 0.5, -1.6, -0.6), origin="lower")
for x in range(similarity.shape[1]):
for y in range(similarity.shape[0]):
plt.text(x, y, f"{similarity[y, x]:.2f}", ha="center", va="center", size=12)
for side in ["left", "top", "right", "bottom"]:
plt.gca().spines[side].set_visible(False)
plt.xlim([-0.5, count - 0.5])
plt.ylim([count + 0.5, -2])
plt.title("Cosine similarity between text and image features", size=20)
Text(0.5, 1.0, 'Cosine similarity between text and image features')
Relatedโ
- Embedding model conceptual guide
- Embedding model how-to guides