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import glob, os, sys; |
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sys.path.append('../utils') |
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import seaborn as sns |
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import matplotlib.pyplot as plt |
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import numpy as np |
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import pandas as pd |
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import streamlit as st |
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from st_aggrid import AgGrid |
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from st_aggrid.shared import ColumnsAutoSizeMode |
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from utils.sdg_classifier import sdg_classification |
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from utils.sdg_classifier import runSDGPreprocessingPipeline, load_sdgClassifier |
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from utils.keyword_extraction import textrank |
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import logging |
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logger = logging.getLogger(__name__) |
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from utils.checkconfig import getconfig |
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config = getconfig('paramconfig.cfg') |
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model_name = config.get('sdg','MODEL') |
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split_by = config.get('sdg','SPLIT_BY') |
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split_length = int(config.get('sdg','SPLIT_LENGTH')) |
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split_overlap = int(config.get('sdg','SPLIT_OVERLAP')) |
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remove_punc = bool(int(config.get('sdg','REMOVE_PUNC'))) |
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split_respect_sentence_boundary = bool(int(config.get('sdg','RESPECT_SENTENCE_BOUNDARY'))) |
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threshold = float(config.get('sdg','THRESHOLD')) |
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top_n = int(config.get('sdg','TOP_KEY')) |
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def app(): |
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with st.container(): |
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st.markdown("<h1 style='text-align: center; color: black;'> SDG Classification and Keyphrase Extraction </h1>", unsafe_allow_html=True) |
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st.write(' ') |
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st.write(' ') |
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with st.expander("ℹ️ - About this app", expanded=False): |
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st.write( |
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""" |
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The *SDG Analysis* app is an easy-to-use interface built \ |
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in Streamlit for analyzing policy documents with respect to SDG \ |
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Classification for the paragraphs/texts in the document and \ |
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extracting the keyphrase per SDG label - developed by GIZ Data \ |
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and the Sustainable Development Solution Network. \n |
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""") |
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st.write("""**Document Processing:** The Uploaded/Selected document is \ |
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automatically cleaned and split into paragraphs with a maximum \ |
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length of 120 words using a Haystack preprocessing pipeline. The \ |
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length of 120 is an empirical value which should reflect the length \ |
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of a “context” and should limit the paragraph length deviation. \ |
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However, since we want to respect the sentence boundary the limit \ |
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can breach and hence this limit of 120 is tentative. \n |
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""") |
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st.write("""**SDG cLassification:** The application assigns paragraphs \ |
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to 15 of the 17 United Nations Sustainable Development Goals (SDGs).\ |
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SDG 16 “Peace, Justice and Strong Institutions” and SDG 17 \ |
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“Partnerships for the Goals” are excluded from the analysis due to \ |
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their broad nature which could potentially inflate the results. \ |
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Each paragraph is assigned to one SDG only. Again, the results are \ |
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displayed in a summary table including the number of the SDG, a \ |
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relevancy score highlighted through a green color shading, and the \ |
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respective text of the analyzed paragraph. Additionally, a pie \ |
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chart with a blue color shading is displayed which illustrates the \ |
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three most prominent SDGs in the document. The SDG classification \ |
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uses open-source training [data](https://zenodo.org/record/5550238#.Y25ICHbMJPY) \ |
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from [OSDG.ai](https://osdg.ai/) which is a global \ |
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partnerships and growing community of researchers and institutions \ |
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interested in the classification of research according to the \ |
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Sustainable Development Goals. The summary table only displays \ |
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paragraphs with a calculated relevancy score above 85%. \n""") |
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st.write("""**Keyphrase Extraction:** The application extracts 15 \ |
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keyphrases from the document, for each SDG label and displays the \ |
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results in a summary table. The keyphrases are extracted using \ |
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using [Textrank](https://github.com/summanlp/textrank)\ |
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which is an easy-to-use computational less expensive \ |
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model leveraging combination of TFIDF and Graph networks. |
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""") |
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st.write("") |
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st.write("") |
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st.markdown("Some runtime metrics tested with cpu: Intel(R) Xeon(R) CPU @ 2.20GHz, memory: 13GB") |
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col1,col2,col3,col4 = st.columns([2,2,3,3]) |
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with col1: |
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st.caption("Loading Time Classifier") |
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st.write("12 sec") |
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with col2: |
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st.caption("OCR File processing") |
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st.write("50 sec") |
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with col3: |
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st.caption("SDG Classification of 200 paragraphs(~ 35 pages)") |
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st.write("120 sec") |
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with col4: |
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st.caption("Keyword extraction for 200 paragraphs(~ 35 pages)") |
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st.write("3 sec") |
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with st.container(): |
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if st.button("RUN SDG Analysis"): |
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if 'filepath' in st.session_state: |
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file_name = st.session_state['filename'] |
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file_path = st.session_state['filepath'] |
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classifier = load_sdgClassifier(classifier_name=model_name) |
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st.session_state['sdg_classifier'] = classifier |
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all_documents = runSDGPreprocessingPipeline(file_name= file_name, |
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file_path= file_path, split_by= split_by, |
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split_length= split_length, |
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split_respect_sentence_boundary= split_respect_sentence_boundary, |
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split_overlap= split_overlap, remove_punc= remove_punc) |
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if len(all_documents['documents']) > 100: |
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warning_msg = ": This might take sometime, please sit back and relax." |
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else: |
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warning_msg = "" |
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with st.spinner("Running SDG Classification{}".format(warning_msg)): |
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df, x = sdg_classification(haystack_doc=all_documents['documents'], |
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threshold= threshold) |
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df = df.drop(['Relevancy'], axis = 1) |
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sdg_labels = x.SDG.unique() |
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textrank_keyword_list = [] |
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for label in sdg_labels: |
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sdgdata = " ".join(df[df.SDG == label].text.to_list()) |
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textranklist_ = textrank(textdata=sdgdata, words= top_n) |
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if len(textranklist_) > 0: |
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textrank_keyword_list.append({'SDG':label, 'TextRank Keywords':",".join(textranklist_)}) |
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textrank_keywords_df = pd.DataFrame(textrank_keyword_list) |
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plt.rcParams['font.size'] = 25 |
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colors = plt.get_cmap('Blues')(np.linspace(0.2, 0.7, len(x))) |
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fig, ax = plt.subplots() |
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ax.pie(x['count'], colors=colors, radius=2, center=(4, 4), |
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wedgeprops={"linewidth": 1, "edgecolor": "white"}, |
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textprops={'fontsize': 14}, |
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frame=False,labels =list(x.SDG_Num), |
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labeldistance=1.2) |
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st.markdown("#### Anything related to SDGs? ####") |
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c4, c5, c6 = st.columns([1,2,2]) |
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with c5: |
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st.pyplot(fig) |
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with c6: |
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labeldf = x['SDG_name'].values.tolist() |
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labeldf = "<br>".join(labeldf) |
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st.markdown(labeldf, unsafe_allow_html=True) |
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st.write("") |
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st.markdown("###### What keywords are present under SDG classified text? ######") |
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AgGrid(textrank_keywords_df, reload_data = False, |
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update_mode="value_changed", |
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columns_auto_size_mode = ColumnsAutoSizeMode.FIT_CONTENTS) |
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st.write("") |
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st.markdown("###### Top few SDG Classified paragraph/text results ######") |
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AgGrid(df, reload_data = False, update_mode="value_changed", |
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columns_auto_size_mode = ColumnsAutoSizeMode.FIT_CONTENTS) |
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else: |
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st.info("🤔 No document found, please try to upload it at the sidebar!") |
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logging.warning("Terminated as no document provided") |
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