import streamlit as st import sparknlp import os import pandas as pd from sparknlp.base import * from sparknlp.annotator import * from pyspark.ml import Pipeline from sparknlp.pretrained import PretrainedPipeline from streamlit_tags import st_tags # Page configuration st.set_page_config( layout="wide", initial_sidebar_state="auto" ) # CSS for styling st.markdown(""" """, unsafe_allow_html=True) @st.cache_resource def init_spark(): return sparknlp.start() @st.cache_resource def create_pipeline(model): image_assembler = ImageAssembler() \ .setInputCol("image") \ .setOutputCol("image_assembler") image_classifier = ViTForImageClassification \ .pretrained(model) \ .setInputCols("image_assembler") \ .setOutputCol("class") pipeline = Pipeline(stages=[ image_assembler, image_classifier, ]) return pipeline def fit_data(pipeline, data): empty_df = spark.createDataFrame([['']]).toDF('text') model = pipeline.fit(empty_df) light_pipeline = LightPipeline(model) annotations_result = light_pipeline.fullAnnotateImage(data) return annotations_result[0]['class'][0].result def save_uploadedfile(uploadedfile): filepath = os.path.join(IMAGE_FILE_PATH, uploadedfile.name) with open(filepath, "wb") as f: if hasattr(uploadedfile, 'getbuffer'): f.write(uploadedfile.getbuffer()) else: f.write(uploadedfile.read()) # Sidebar content model_list = ['image_classifier_vit_base_cats_vs_dogs', 'image_classifier_vit_base_patch16_224', 'image_classifier_vit_CarViT', 'image_classifier_vit_base_beans_demo', 'image_classifier_vit_base_food101', 'image_classifier_vit_base_patch16_224_in21k_finetuned_cifar10'] model = st.sidebar.selectbox( "Choose the pretrained model", model_list, help="For more info about the models visit: https://sparknlp.org/models" ) # Set up the page layout st.markdown(f'
ViT for Image Classification
', unsafe_allow_html=True) # st.markdown(f'

{sub_title}

', unsafe_allow_html=True) # Reference notebook link in sidebar link = """ Open In Colab """ st.sidebar.markdown('Reference notebook:') st.sidebar.markdown(link, unsafe_allow_html=True) # Load examples IMAGE_FILE_PATH = f"inputs/{model}" image_files = sorted([file for file in os.listdir(IMAGE_FILE_PATH) if file.split('.')[-1]=='png' or file.split('.')[-1]=='jpg' or file.split('.')[-1]=='JPEG' or file.split('.')[-1]=='jpeg']) st.subheader("This model identifies image classes using the vision transformer (ViT).") img_options = st.selectbox("Select an image", image_files) uploadedfile = st.file_uploader("Try it for yourself!") if uploadedfile: file_details = {"FileName":uploadedfile.name,"FileType":uploadedfile.type} save_uploadedfile(uploadedfile) selected_image = f"{IMAGE_FILE_PATH}/{uploadedfile.name}" elif img_options: selected_image = f"{IMAGE_FILE_PATH}/{img_options}" st.subheader('Classified Image') image_size = st.slider('Image Size', 400, 1000, value=400, step = 100) try: st.image(f"{IMAGE_FILE_PATH}/{selected_image}", width=image_size) except: st.image(selected_image, width=image_size) st.subheader('Classification') spark = init_spark() Pipeline = create_pipeline(model) output = fit_data(Pipeline, selected_image) st.markdown(f'This document has been classified as : **{output}**')