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rom flask import Flask, jsonify, render_template, request, make_response |
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import transformers |
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import torch |
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from torch import nn |
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import re |
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import numpy as np |
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import pandas as pd |
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from collections import OrderedDict |
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app = Flask(__name__) |
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dictOfModels = {"BERT" : transformers.pipeline('sentiment-analysis', model="nlptown/bert-base-multilingual-uncased-sentiment")} |
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listOfKeys = [] |
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for key in dictOfModels : |
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listOfKeys.append(key) |
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def get_prediction(message,model): |
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results = model(message) |
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return results |
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@app.route('/', methods=['GET']) |
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def get(): |
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return render_template("home.html", len = len(listOfKeys), listOfKeys = listOfKeys) |
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@app.route('/', methods=['POST']) |
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def predict(): |
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message = "This is good movies" |
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results = get_prediction(message, dictOfModels['RoBERTa') |
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print(f'User selected model : {request.form.get("model_choice")}') |
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my_prediction = f'The feeling of this text is {results[0]["label"]} with probability of {results[0]["score"]*100}%.' |
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return render_template('result.html', text = f'{message}', prediction = my_prediction) |
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