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import streamlit as st | |
import pandas as pd | |
import sys | |
import os | |
from datasets import load_from_disk, load_dataset | |
from st_aggrid import AgGrid, GridOptionsBuilder, GridUpdateMode | |
from sklearn.metrics.pairwise import cosine_similarity | |
import numpy as np | |
import time | |
from annotated_text import annotated_text | |
ORG_ID = "cornell-authorship" | |
def preprocess_text(s): | |
return list(filter(lambda x: x!= '', (''.join(c if c.isalnum() or c == ' ' else ' ' for c in s)).split(' '))) | |
def get_pairwise_distances(model): | |
dataset = load_dataset(f"{ORG_ID}/{model}_distance")["train"] | |
df = pd.DataFrame(dataset).set_index('index') | |
return df | |
def get_pairwise_distances_chunked(model, chunk): | |
# for df in pd.read_csv(f"{ASSETS_PATH}/{model}/pairwise_distances.csv", chunksize = 16): | |
# print(df.iloc[0]['queries']) | |
# if chunk == int(df.iloc[0]['queries']): | |
# return df | |
return get_pairwise_distances(model) | |
def get_query_strings(): | |
# df = pd.read_json(hf_hub_download(repo_id=repo_id, filename="IUR_Reddit_test_queries_english.jsonl"), lines = True) | |
dataset = load_dataset(f"{ORG_ID}/IUR_Reddit_test_queries_english")["train"] | |
df = pd.DataFrame(dataset) | |
df['index'] = df.reset_index().index | |
return df | |
# df['partition'] = df['index']%100 | |
# df.to_parquet(f"{ASSETS_PATH}/IUR_Reddit_test_queries_english.parquet", index = 'index', partition_cols = 'partition') | |
# return pd.read_parquet(f"{ASSETS_PATH}/IUR_Reddit_test_queries_english.parquet", columns=['fullText', 'index', 'authorIDs']) | |
def get_candidate_strings(): | |
# df = pd.read_json(f"{ASSETS_PATH}/IUR_Reddit_test_candidates_english.jsonl", lines = True) | |
dataset = load_dataset(f"{ORG_ID}/IUR_Reddit_test_candidates_english")["train"] | |
df = pd.DataFrame(dataset) | |
df['index'] = df.reset_index().index | |
return df | |
# df['partition'] = df['index']%100 | |
# df.to_parquet(f"{ASSETS_PATH}/IUR_Reddit_test_candidates_english.parquet", index = 'index', partition_cols = 'partition') | |
# return pd.read_parquet(f"{ASSETS_PATH}/IUR_Reddit_test_candidates_english.parquet", columns=['fullText', 'index', 'authorIDs']) | |
def get_embedding_dataset(model): | |
# data = load_from_disk(f"{ASSETS_PATH}/{model}/embedding") | |
data = load_dataset(f"{ORG_ID}/{model}_embedding") | |
return data | |
def get_bad_queries(model): | |
df = get_query_strings().iloc[list(get_pairwise_distances(model)['queries'].unique())][['fullText', 'index', 'authorIDs']] | |
return df | |
def get_gt_candidates(model, author): | |
gt_candidates = get_candidate_strings() | |
df = gt_candidates[gt_candidates['authorIDs'].apply(lambda x: x[0]) == author] | |
return df | |
def get_candidate_text(l): | |
return get_candidate_strings().at[l,'fullText'] | |
def get_annotated_text(text, word, pos): | |
# print("here", word, pos) | |
start= text.index(word, pos) | |
end = start+len(word) | |
return (text[:start], (text[start:end ], 'SELECTED'), text[end:]), end | |
class AgGridBuilder: | |
__static_key = 0 | |
def build_ag_grid(table, display_columns): | |
AgGridBuilder.__static_key += 1 | |
options_builder = GridOptionsBuilder.from_dataframe(table[display_columns]) | |
options_builder.configure_pagination(paginationAutoPageSize=False, paginationPageSize=10) | |
options_builder.configure_selection(selection_mode= 'single', pre_selected_rows = [0]) | |
options = options_builder.build() | |
return AgGrid(table, gridOptions = options, fit_columns_on_grid_load=True, key = AgGridBuilder.__static_key, reload_data = True, update_mode = GridUpdateMode.SELECTION_CHANGED | GridUpdateMode.VALUE_CHANGED) | |
if __name__ == '__main__': | |
st.set_page_config(layout="wide") | |
# models = filter(lambda file_name: os.path.isdir(f"{ASSETS_PATH}/{file_name}") and not file_name.endswith(".parquet"), os.listdir(ASSETS_PATH)) | |
models = ['luar_clone2_top_100'] | |
with st.sidebar: | |
current_model = st.selectbox( | |
"Select Model to analyze", | |
models | |
) | |
pairwise_distances = get_pairwise_distances(current_model) | |
embedding_dataset = get_embedding_dataset(current_model) | |
candidate_string_grid = None | |
gt_candidate_string_grid = None | |
with st.container(): | |
t1 = time.time() | |
st.title("Full Text") | |
col1, col2 = st.columns([14, 2]) | |
t2 = time.time() | |
query_table = get_bad_queries(current_model) | |
t3 = time.time() | |
# print(query_table) | |
with col2: | |
index = st.number_input('Enter Query number to inspect', min_value = 0, max_value = query_table.shape[0], step = 1) | |
query_text = query_table.loc[index]['fullText'] | |
preprocessed_query_text = preprocess_text(query_text) | |
text_highlight_index = st.number_input('Enter word #', min_value = 0, max_value = len(preprocessed_query_text), step = 1) | |
query_index = int(query_table.iloc[index]['index']) | |
with col1: | |
if 'pos_highlight' not in st.session_state or text_highlight_index == 0: | |
st.session_state['pos_highlight'] = text_highlight_index | |
st.session_state['pos_history'] = [0] | |
if st.session_state['pos_highlight'] > text_highlight_index: | |
st.session_state['pos_history'] = st.session_state['pos_history'][:-2] | |
if len(st.session_state['pos_history']) == 0: | |
st.session_state['pos_history'] = [0] | |
# print("pos", st.session_state['pos_history'], st.session_state['pos_highlight'], text_highlight_index) | |
anotated_text_, pos = get_annotated_text(query_text, preprocessed_query_text[text_highlight_index-1], st.session_state['pos_history'][-1]) if text_highlight_index >= 1 else ((query_text), 0) | |
if st.session_state['pos_highlight'] < text_highlight_index: | |
st.session_state['pos_history'].append(pos) | |
st.session_state['pos_highlight'] = text_highlight_index | |
annotated_text(*anotated_text_) | |
# annotated_text("Lol, this" , ('guy', 'SELECTED') , "is such a PR chameleon. \n\n In the Chan Zuckerberg Initiative announcement, he made it sound like he was giving away all his money to charity <PERSON> or <PERSON>. http://www.businessinsider.in/Mark-Zuckerberg-says-hes-giving-99-of-his-Facebook-shares-45-billion-to-charity/articleshow/50005321.cms Apparently, its just a VC fund. And there are still people out there who believe Facebook.org was an initiative to bring Internet to the poor.") | |
t4 = time.time() | |
# print(f"query time query text: {t3-t2}, total time: {t4-t1}") | |
with st.container(): | |
st.title("Top 16 Recommended Candidates") | |
col1, col2, col3 = st.columns([10, 4, 2]) | |
rec_candidates = pairwise_distances[pairwise_distances["queries"]==query_index]['candidates'] | |
# print(rec_candidates) | |
l = list(rec_candidates) | |
with col3: | |
candidate_rec_index = st.number_input('Enter recommended candidate number to inspect', min_value = 0, max_value = len(l), step = 1) | |
print("l:",l, query_index) | |
pairwise_candidate_index = int(l[candidate_rec_index]) | |
with col1: | |
st.header("Text") | |
t1 = time.time() | |
st.write(get_candidate_text(pairwise_candidate_index)) | |
t2 = time.time() | |
with col2: | |
st.header("Cosine Distance") | |
st.write(float(pairwise_distances[\ | |
( pairwise_distances['queries'] == query_index ) \ | |
& | |
( pairwise_distances['candidates'] == pairwise_candidate_index)]['distances'])) | |
print(f"candidate string retreival: {t2-t1}") | |
with st.container(): | |
t1 = time.time() | |
st.title("Candidates With Same Authors As Query") | |
col1, col2, col3 = st.columns([10, 4, 2]) | |
t2 = time.time() | |
gt_candidates = get_gt_candidates(current_model, query_table.iloc[query_index]['authorIDs'][0]) | |
t3 = time.time() | |
with col3: | |
candidate_index = st.number_input('Enter ground truthnumber to inspect', min_value = 0, max_value = gt_candidates.shape[0], step = 1) | |
gt_candidate_index = int(gt_candidates.iloc[candidate_index]['index']) | |
with col1: | |
st.header("Text") | |
st.write(gt_candidates.iloc[candidate_index]['fullText']) | |
with col2: | |
t4 = time.time() | |
st.header("Cosine Distance") | |
st.write(1-cosine_similarity(np.array([embedding_dataset['queries'][query_index]['embedding']]), np.array([embedding_dataset['candidates'][gt_candidate_index]['embedding']]))[0,0]) | |
t5 = time.time() | |
print(f"find gt candidates: {t3-t2}, find cosine: {t5-t4}, total: {t5-t1}") | |