### Imports for Modules ### import gradio as gr import os import torch from typing import Tuple, Dict from timeit import default_timer as timer ### Functional Imports from model import getEffNetModel classNames = ["Actinic Keratosis", "Basal Cell Carcinoma", "Dermatofibroma", "Melanoma", "Nevus", "Pigmented Benign Keratosis", "Seborrheic Keratosis", "Squamous Cell Carcinoma", "Vascular Lesion"] effNetModel, effNetTransforms = getEffNetModel(42,len(classNames)) effNetModel.load_state_dict(torch.load(f="EffNetModel.pt",map_location=torch.device("cpu"))) def predictionMaker(img): startTime = timer() img = effNetTransforms(img).unsqueeze(0) effNetModel.eval() with torch.inference_mode(): predProbs = torch.softmax(effNetModel(img),dim=1) predDict = {classNames[i]: float(predProbs[0][i]) for i in range(len(classNames))} endTime = timer() predTime = round(endTime-startTime,4) return predDict,predTime