import numpy as np import onnxruntime import onnx import gradio as gr import requests import json from extractnet import Extractor import math from transformers import AutoTokenizer import spacy import os from transformers import pipeline import itertools import pandas as pd OUT_HEADERS = ['E','S','G'] MODEL_TRANSFORMER_BASED = "distilbert-base-uncased" MODEL_ONNX_FNAME = "ESG_classifier_batch.onnx" MODEL_SENTIMENT_ANALYSIS = "ProsusAI/finbert" #MODEL_SUMMARY_PEGASUS = "oMateos2020/pegasus-newsroom-cnn_full-adafactor-bs6" #API_HF_SENTIMENT_URL = "https://api-inference.huggingface.co/models/cardiffnlp/twitter-roberta-base-sentiment" def _inference_ner_spancat(text, summary, penalty=0.5, normalise=True, limit_outputs=10): nlp = spacy.load("en_pipeline") doc = nlp(text) spans = doc.spans["sc"] comp_raw_text = dict( sorted( dict(zip([str(x) for x in spans],[float(x)*penalty for x in spans.attrs['scores']])).items(), key=lambda x: x[1], reverse=True) ) doc = nlp(summary) spans = doc.spans["sc"] exceeds_one = 0.0 for comp_s in spans: if str(comp_s) in comp_raw_text.keys(): comp_raw_text[str(comp_s)] = comp_raw_text[str(comp_s)] / penalty temp_max = comp_raw_text[str(comp_s)]if comp_raw_text[str(comp_s)] > 1.0 else 0.0 exceeds_one = comp_raw_text[str(comp_s)] if temp_max > exceeds_one else exceeds_one #This "exceeds_one" is a bit confusing. So the thing is that the penalty is reverted for each time the company appears in the summary and hence the value can exceed one when the company appears more than once. The normalisation means that all the other scores are divided by the maximum when any value exceeds one if normalise and (exceeds_one > 1): comp_raw_text = {k: v/exceeds_one for k, v in comp_raw_text.items()} return dict(itertools.islice(sorted(comp_raw_text.items(), key=lambda x: x[1], reverse=True), limit_outputs)) #def _inference_summary_model_pipeline(text): # pipe = pipeline("text2text-generation", model=MODEL_SUMMARY_PEGASUS) # return pipe(text,truncation='longest_first') def _inference_sentiment_model_pipeline(text): tokenizer_kwargs = {'padding':True,'truncation':True,'max_length':512}#,'return_tensors':'pt'} pipe = pipeline("sentiment-analysis", model=MODEL_SENTIMENT_ANALYSIS ) return pipe(text,**tokenizer_kwargs) #def _inference_sentiment_model_via_api_query(payload): # response = requests.post(API_HF_SENTIMENT_URL , headers={"Authorization": os.environ['hf_api_token']}, json=payload) # return response.json() def _lematise_text(text): nlp = spacy.load("en_core_web_sm", disable=['ner']) text_out = [] for doc in nlp.pipe(text): #see https://spacy.io/models#design new_text = "" for token in doc: if (not token.is_punct and not token.is_stop and not token.like_url and not token.is_space and not token.like_email #and not token.like_num and not token.pos_ == "CONJ"): new_text = new_text + " " + token.lemma_ text_out.append( new_text ) return text_out def sigmoid(x): return 1 / (1 + np.exp(-x)) def to_numpy(tensor): return tensor.detach().cpu().numpy() if tensor.requires_grad else tensor.cpu().numpy() def is_in_archive(url): try: r = requests.get('http://archive.org/wayback/available?url='+url) archive = json.loads(r.text) if archive['archived_snapshots'] : archive['archived_snapshots']['closest'] return {'archived':archive['archived_snapshots']['closest']['available'], 'url':archive['archived_snapshots']['closest']['url'],'error':0} else: return {'archived':False, 'url':"", 'error':0} except: print(f"[E] Quering URL ({url}) from archive.org") return {'archived':False, 'url':"", 'error':-1} #def _inference_ner(text): # return labels def _inference_classifier(text): tokenizer = AutoTokenizer.from_pretrained(MODEL_TRANSFORMER_BASED) inputs = tokenizer(_lematise_text(text), return_tensors="np", padding="max_length", truncation=True) #this assumes head-only! ort_session = onnxruntime.InferenceSession(MODEL_ONNX_FNAME) onnx_model = onnx.load(MODEL_ONNX_FNAME) onnx.checker.check_model(onnx_model) # compute ONNX Runtime output prediction ort_outs = ort_session.run(None, input_feed=dict(inputs)) return sigmoid(ort_outs[0]) def inference(input_batch,isurl,use_archive,limit_companies=10): url_list = [] #Only used if isurl input_batch_content = [] # if file_in.name is not "": # print("[i] Input is file:",file_in.name) # dft = pd.read_csv( # file_in.name, # compression=dict(method='zip') # ) # assert file_col_name in dft.columns, "Indicated col_name not found in file" # input_batch_r = dft[file_col_name].values.tolist() # else: print("[i] Input is list") assert len(input_batch) > 0, "input_batch array is empty" input_batch_r = input_batch print("[i] Input size:",len(input_batch_r)) if isurl: print("[i] Data is URL") if use_archive: print("[i] Use chached URL from archive.org") for row_in in input_batch_r: if isinstance(row_in , list): url = row_in[0] else: url = row_in url_list.append(url) if use_archive: archive = is_in_archive(url) if archive['archived']: url = archive['url'] #Extract the data from url extracted = Extractor().extract(requests.get(url).text) input_batch_content.append(extracted['content']) else: print("[i] Data is news contents") if isinstance(input_batch_r[0], list): print("[i] Data is list of lists format") for row_in in input_batch_r: input_batch_content.append(row_in[0]) else: print("[i] Data is single list format") input_batch_content = input_batch_r print("[i] Batch size:",len(input_batch_content)) print("[i] Running ESG classifier inference...") prob_outs = _inference_classifier(input_batch_content) print("[i] Classifier output shape:",prob_outs.shape) print("[i] Running sentiment using",MODEL_SENTIMENT_ANALYSIS ,"inference...") #sentiment = _inference_sentiment_model_via_api_query({"inputs": extracted['content']}) sentiment = _inference_sentiment_model_pipeline(input_batch_content ) #summary = _inference_summary_model_pipeline(input_batch_content )[0]['generated_text'] #ner_labels = _inference_ner_spancat(input_batch_content ,summary, penalty = 0.8, limit_outputs=limit_companies) df = pd.DataFrame(prob_outs,columns =['E','S','G']) if isurl: df['URL'] = url_list else: df['content_id'] = range(1, len(input_batch_r)+1) df['sent_lbl'] = [d['label'] for d in sentiment ] df['sent_score'] = [d['score'] for d in sentiment ] print("[i] Pandas output shape:",df.shape) return df #ner_labels, {'E':float(prob_outs[0]),"S":float(prob_outs[1]),"G":float(prob_outs[2])},{sentiment['label']:float(sentiment['score'])},"**Summary:**\n\n" + summary title = "ESG API Demo" description = """This is a demonstration of the full ESG pipeline backend where given a list of URL (english, news) the news contents are extracted, using extractnet, and fed to three models: - An off-the-shelf sentiment classification model (ProsusAI/finbert) - A custom NER for the company extraction - A custom ESG classifier for the ESG labeling of the news (the extracted text is also lemmatised prior to be fed to this classifier) API input parameters: - List: list of text. Either list of Url of the news (english) or list of extracted news contents - 'Data type': int. 0=list is of extracted news contents, 1=list is of urls. - `use_archive`: boolean. The model will extract the archived version in archive.org of the url indicated. This is useful with old news and to bypass news behind paywall - `limit_companies`: integer. Number of found relevant companies to report. """ examples = [[ [['https://www.bbc.com/news/uk-62732447'], ['https://www.bbc.com/news/business-62747401'], ['https://www.bbc.com/news/technology-62744858'], ['https://www.bbc.com/news/science-environment-62758811'], ['https://www.theguardian.com/business/2022/sep/02/nord-stream-1-gazprom-announces-indefinite-shutdown-of-pipeline'], ['https://www.bbc.com/news/world-europe-62766867'], ['https://www.bbc.com/news/business-62524031'], ['https://www.bbc.com/news/business-62728621'], ['https://www.bbc.com/news/science-environment-62680423']],'url',False,5]] demo = gr.Interface(fn=inference, inputs=[gr.Dataframe(label='input batch', col_count=1, datatype='str', type='array', wrap=True), gr.Dropdown(label='data type', choices=['text','url'], type='index', value='url'), gr.Checkbox(label='if url parse cached in archive.org'), gr.Slider(minimum=1, maximum=10, step=1, label='Limit NER output', value=5)], outputs=[gr.Dataframe(label='output raw', col_count=1, type='pandas', wrap=True, header=OUT_HEADERS)], #gr.Label(label='Company'), #gr.Label(label='ESG'), #gr.Label(label='Sentiment'), #gr.Markdown()], title=title, description=description, examples=examples) demo.launch()