Commit ·
f9b152c
1
Parent(s): 12a1515
Upload 4 files
Browse files- .gitattributes +1 -0
- emo-image-links (1).csv +3 -0
- mean_sims.npy +3 -0
- std_dev_sims.npy +3 -0
- zero.py +174 -0
.gitattributes
CHANGED
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@@ -53,3 +53,4 @@ saved_model/**/* filter=lfs diff=lfs merge=lfs -text
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*.jpg filter=lfs diff=lfs merge=lfs -text
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*.jpeg filter=lfs diff=lfs merge=lfs -text
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*.webp filter=lfs diff=lfs merge=lfs -text
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*.jpg filter=lfs diff=lfs merge=lfs -text
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*.jpeg filter=lfs diff=lfs merge=lfs -text
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*.webp filter=lfs diff=lfs merge=lfs -text
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emo-image-links[[:space:]](1).csv filter=lfs diff=lfs merge=lfs -text
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emo-image-links (1).csv
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@@ -0,0 +1,3 @@
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version https://git-lfs.github.com/spec/v1
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oid sha256:b801337488fe1aa001878cf27c08c6567fe928a58a33360343706166779ccba8
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size 23988668
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mean_sims.npy
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@@ -0,0 +1,3 @@
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version https://git-lfs.github.com/spec/v1
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oid sha256:b77dde5d3c4d20aae5d2dc5b04377366bcf2ae9f492ee50754757c0c6f38cf98
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size 1456
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std_dev_sims.npy
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@@ -0,0 +1,3 @@
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version https://git-lfs.github.com/spec/v1
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oid sha256:2f7bda8e3efef7f6b2ca077e95739385d26b46550b59893f7a0a5213812cd825
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size 1456
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zero.py
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@@ -0,0 +1,174 @@
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emotions = [
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'tart', 'acidic', 'bitter', 'tangy', 'vinegary', 'sharp',
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'thankful', 'appreciative', 'obliged', 'indebted', 'gratified', 'recognizant',
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'dignified', 'haughty', 'arrogant', 'self-satisfied', 'vain', 'honored',
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'repulsed', 'appalled', 'revolted', 'nauseated', 'repelled', 'sickened', 'ebullient', 'merry', 'jovial', 'cheerful', 'lighthearted', 'joyful', 'beaming', 'grinning', 'elated', 'gleeful', 'happy', 'hopeful', 'gratitude', 'thankful', 'buoyant', 'upbeat', 'vibrant', 'radiant', 'exuberant', 'zestful', 'chirpy', 'peppy', 'jaunty', 'sprightly', 'brisk', 'lively', 'animated', 'energized', 'revitalized', 'invigorated', 'activated', 'energetic', 'dynamic', 'electrified', 'bouncy', 'effervescent', 'chipper', 'jubilant',
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'mindful', 'unruffled', 'coolheaded', 'level headed', 'poised', 'self-possessed', 'unflappable', 'collected', 'unperturbed', 'untroubled', 'unrattled', 'unshaken', 'unflustered', 'composed', 'relaxed', 'tranquil', 'serene', 'calm', 'centered', 'peaceful', 'imperturbable', 'reposeful', 'grounded', 'equanimous', 'harmonious',
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'engaging', 'focused', 'watchful', 'attentive', 'heedful', 'scrutinizing', 'investigating', 'alert', 'studious', 'analyzing', 'examining', 'cognizant', 'inquiring', 'questioning', 'probing', 'introspecting', 'introspective', 'observant',
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'wondering', 'awe', 'intrigued', 'spellbinding', 'fascinated', 'mesmerized', 'captivated', 'bewitching', 'beguiling', 'agog', 'marveling', 'gazing', 'mystified', 'curious', 'riveted', 'enrapturing', 'entrancing', 'hypnotic', 'mesmerizing', 'alluring', 'enthralled',
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'pensive', 'ruminative', 'brooding', 'contemplating', 'meditative', 'reflective', 'pondering', 'cogitating', 'speculative',
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'trembling', 'shuddery', 'afraid', 'spooked', 'apprehensive', 'fearful', 'terrorized', 'petrified', 'scared', 'horror-struck', 'quavering', 'shuddering', 'frightened', 'trepid', 'distraught', 'alarmed', 'fear-stricken', 'quaking', 'anxious', 'nervous', 'uneasy', 'worried', 'tense', 'jittery', 'jumpy', 'startled', 'edgy', 'antsy', 'rattled', 'distracted', 'disquieted', 'skittish', 'restless', 'restive', 'panic-stricken', 'panicked',
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'dumbstruck', 'bewildered', 'dumbfounded', 'stunned', 'stupefied', 'thunderstruck', 'staggered', 'amazed', 'astonished', 'astounded', 'surprised', 'shocked', 'flabbergasted', 'befuddled', 'perplexed', 'puzzled', 'confounded', 'baffled', 'discombobulated', 'flummoxed',
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'sad', 'dismal', 'forlorn', 'depressed', 'woebegone', 'plaintive', 'sorrowful', 'gloomy', 'lugubrious', 'melancholic', 'blue', 'desolate', 'miserable', 'downhearted', 'morose', 'somber', 'despairing', 'woeful', 'heartbroken', 'crestfallen', 'dispirited',
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'romantic', 'amorous', 'passionate', 'sensual', 'erotic', 'sultry', 'salacious', 'libidinous', 'sensuous', 'carnal', 'lustful', 'infatuated', 'desirous', 'lecherous', 'lust-driven', 'prurient', 'enflamed', 'voluptuous', 'sizzling', 'torrid', 'steaminess',
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'seductive', 'titillating', 'awakened', 'ravishing', 'enticing', 'charming', 'irresistible', 'provoked', 'craving', 'stimulated', 'aroused', 'magnetic', 'compelling', 'flirty', 'bellicose',
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'aggravated', 'perturbed', 'enraged', 'furious', 'irate', 'incensed', 'infuriated', 'wrathful', 'livid', 'cross', 'galled', 'resentful', 'bitter', 'indignant', 'outraged', 'exasperated', 'maddened', 'angry', 'annoyed', 'vexed', 'truculent', 'spiky', 'prickly', 'snarly', 'huffy', 'nettled', 'irritable', 'piqued', 'snappish', 'irascible', 'testy', 'nerved',
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'persistent', 'resilient', 'determined', 'unfailing', 'unyielding', 'tenacious', 'steadfast', 'adamant', 'resolute', 'undaunted', 'unwavering', 'unswerving', 'unflinching', 'unrelenting', 'enduring', 'indefatigable', 'motivated', 'driven',
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'discomposed', 'nonplussed', 'disconcerted', 'disturbed', 'ruffled', 'troubled', 'stressed', 'fractious', 'cringing', 'quailing', 'cowering', 'daunted', 'dread-filled', 'intimidated', 'unnerved', 'unsettled', 'fretful', 'ticked-off', 'flustered',
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'belligerent', 'pugnacious', 'contentious', 'quarrelsome', 'grumpy', 'grouchy', 'sulky', 'cranky', 'crabby', 'cantankerous', 'curmudgeonly', 'waspy', 'combative', 'argumentative', 'scrappy'
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]
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import torch
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import open_clip
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import requests
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from PIL import Image
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from torchvision.transforms.functional import to_pil_image
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import matplotlib.pyplot as plt
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import seaborn as sns
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import numpy as np
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import requests
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from PIL import Image
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from IPython.display import display
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from io import BytesIO
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# Load the CLIP model and tokenizer
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model_clip, preprocess_train, preprocess_val = open_clip.create_model_and_transforms('hf-hub:apple/DFN5B-CLIP-ViT-H-14-378')
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tokenizer = open_clip.get_tokenizer('hf-hub:apple/DFN5B-CLIP-ViT-H-14-378')
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# Function to download image from URL
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def download_image(image_url):
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response = requests.get(image_url, timeout=1)
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response.raise_for_status()
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return Image.open(requests.get(image_url, stream=True).raw)
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# Diese Funktion konvertiert PyTorch-Tensoren in Numpy-Arrays und löscht die Tensoren
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def tensor_to_array(tensor):
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array = tensor.detach().cpu().numpy()
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del tensor # Lösche den Tensor, um Speicher freizugeben
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return array
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# Softmax-Funktion für Numpy-Arrays
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def softmax(x):
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e_x = np.exp(x - np.max(x))
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return e_x / e_x.sum(axis=-1, keepdims=True)
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'''
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# Tokenize the prompts
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text = tokenizer(emotions)
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with torch.no_grad():
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text_features = model_clip.encode_text(text)
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text_features /= text_features.norm(dim=-1, keepdim=True)
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text_features = tensor_to_array(text_features)
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# Save the NumPy array to a file
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np.save('text_features.npy', text_features)
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'''
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# Later or elsewhere in your code, load the NumPy array from the file
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text_features = np.load('text_features.npy')
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def zeroshot_classifier(image_url):
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# Download and preprocess the image
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image = download_image(image_url)
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image_preprocessed = preprocess_val(image).unsqueeze(0)
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image_features = model_clip.encode_image(image_preprocessed)
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image_features = tensor_to_array(image_features) # Konvertieren in Numpy-Array
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image_features /= np.linalg.norm(image_features, axis=-1, keepdims=True)
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# Load the mean_sims array from the file
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loaded_mean_sims = np.load('mean_sims.npy')
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#print("Loaded Mean Similarity Scores:", loaded_mean_sims)
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loaded_stdev_sims = np.load('std_dev_sims.npy')
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sims =np.matmul(image_features, text_features.T)
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normalized_sims = (sims - loaded_mean_sims) / loaded_stdev_sims
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# Hier sollten Sie auch die Textfeatures in Numpy-Arrays konvertieren, bevor Sie diese Funktion verwenden.
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text_probs = softmax(100.0 * sims)
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return text_probs, sims
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def display_image_from_url(url, base_width=300):
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try:
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# Send a HTTP request to the URL
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response = requests.get(url)
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# Raise an exception if the request was unsuccessful
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response.raise_for_status()
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# Open the image from the bytes in the response content
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img = Image.open(BytesIO(response.content))
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# Calculate the new height to maintain the aspect ratio
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w_percent = (base_width / float(img.size[0]))
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h_size = int((float(img.size[1]) * float(w_percent)))
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# Resize the image
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img = img.resize((base_width, h_size), Image.ANTIALIAS)
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# Display the image
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#display(img)
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except:
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pass
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import pandas as pd
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# Read the CSV file
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#df = pd.read_csv('emo-image-links (1).csv')
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#urls = df["url"].tolist()[:1000]
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urls=["https://i.imgur.com/lQCGbw9.png","https://i.imgur.com/saUX1yc.png", 'https://media.gettyimages.com/id/1027697458/de/foto/nostalgische-frau.jpg?s=1024x1024&w=gi&k=20&c=eJlr2c7K1_nFAfv0Sdt6sn4yhz6K_Y78rKbJMvoXlFs=', "https://i.imgur.com/BI3zkNG.jpg", "https://i.imgur.com/3WbnImZ.jpg","https://i.imgur.com/78IlUDZ.png","https://i.imgur.com/29FZiD9.jpg","https://i.imgur.com/2fun8N3.png","https://i.imgur.com/lGLpebl.jpg","https://imagizer.imageshack.com/img924/7428/HH6wua.png","https://i.imgur.com/F22ZjZw.jpg","https://i.imgur.com/HPJQCEp.jpg","https://i.imgur.com/XtSd4pO.png"]
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simlist=[]
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for url in urls:
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#display_image_from_url(url)
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print("##############")
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print(url)
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try:
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probs, sims = zeroshot_classifier(url)
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except:
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continue
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#print(sims)
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simlist.append(sims)
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for i in range (probs.shape[1]):
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if probs[0][i]>0.05:
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print(probs[0][i],emotions[i])
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# Convert simlist to a NumPy array
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simlist_array = np.array(simlist)
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# Calculate the standard deviation
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std_dev = np.std(simlist_array, axis=0)
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print("Standard Deviation of similarity scores:", std_dev)
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mean_sims = np.mean(np.array(simlist), axis=0)
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#print("Mean similarity scores:", mean_sims)
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# Save the mean_sims array to a file
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#np.save('mean_sims.npy', mean_sims)
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# Save the mean_sims array to a file
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#np.save('std_dev_sims.npy', std_dev)
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