Spaces:
Sleeping
Sleeping
import streamlit as st | |
import pandas as pd | |
import os | |
import json | |
import base64 | |
import random | |
from streamlit_pdf_viewer import pdf_viewer | |
from langchain.prompts import PromptTemplate | |
from datetime import datetime | |
from pathlib import Path | |
from openai import OpenAI | |
from dotenv import load_dotenv | |
import warnings | |
warnings.filterwarnings('ignore') | |
os.getenv("OAUTH_CLIENT_ID") | |
# Load environment variables and initialize the OpenAI client to use Hugging Face Inference API. | |
load_dotenv() | |
client = OpenAI( | |
base_url="https://api-inference.huggingface.co/v1", | |
api_key=os.environ.get('RAM') # Hugging Face API token | |
) | |
# Create necessary directories | |
for dir_name in ['data', 'feedback']: | |
if not os.path.exists(dir_name): | |
os.makedirs(dir_name) | |
# Custom CSS | |
st.markdown(""" | |
<style> | |
.stButton > button { | |
width: 100%; | |
margin-bottom: 10px; | |
background-color: #4CAF50; | |
color: white; | |
border: none; | |
padding: 10px; | |
border-radius: 5px; | |
} | |
.task-button { | |
background-color: #2196F3 !important; | |
} | |
.stSelectbox { | |
margin-bottom: 20px; | |
} | |
.output-container { | |
padding: 20px; | |
border-radius: 5px; | |
border: 1px solid #ddd; | |
margin: 10px 0; | |
} | |
.status-container { | |
padding: 10px; | |
border-radius: 5px; | |
margin: 10px 0; | |
} | |
.sidebar-info { | |
padding: 10px; | |
background-color: #f0f2f6; | |
border-radius: 5px; | |
margin: 10px 0; | |
} | |
.feedback-button { | |
background-color: #ff9800 !important; | |
} | |
.feedback-container { | |
padding: 15px; | |
background-color: #f5f5f5; | |
border-radius: 5px; | |
margin: 15px 0; | |
} | |
</style> | |
""", unsafe_allow_html=True) | |
# Helper functions | |
def read_csv_with_encoding(file): | |
encodings = ['utf-8', 'latin1', 'iso-8859-1', 'cp1252'] | |
for encoding in encodings: | |
try: | |
return pd.read_csv(file, encoding=encoding) | |
except UnicodeDecodeError: | |
continue | |
raise UnicodeDecodeError("Failed to read file with any supported encoding") | |
#def save_feedback(feedback_data): | |
#feedback_file = 'feedback/user_feedback.csv' | |
#feedback_df = pd.DataFrame([feedback_data]) | |
#if os.path.exists(feedback_file): | |
#feedback_df.to_csv(feedback_file, mode='a', header=False, index=False) | |
#else: | |
#feedback_df.to_csv(feedback_file, index=False) | |
def reset_conversation(): | |
st.session_state.conversation = [] | |
st.session_state.messages = [] | |
if 'task_choice' in st.session_state: | |
del st.session_state.task_choice | |
return None | |
#new 24 March | |
#user_input = st.text_input("Enter your prompt:") | |
###########33 | |
# Initialize session state variables | |
if "messages" not in st.session_state: | |
st.session_state.messages = [] | |
if "examples_to_classify" not in st.session_state: | |
st.session_state.examples_to_classify = [] | |
if "system_role" not in st.session_state: | |
st.session_state.system_role = "" | |
# Main app title | |
st.title("π€π¦ Text Data Labeling and Generation App") | |
# def embed_pdf_sidebar(pdf_path): | |
# with open(pdf_path, "rb") as f: | |
# base64_pdf = base64.b64encode(f.read()).decode('utf-8') | |
# pdf_display = f""" | |
# <iframe src="data:application/pdf;base64,{base64_pdf}" | |
# width="100%" height="400" type="application/pdf"></iframe> | |
# """ | |
# st.markdown(pdf_display, unsafe_allow_html=True) | |
# | |
# Sidebar settings | |
with st.sidebar: | |
st.title("βοΈ Settings") | |
#this last code works | |
with st.sidebar: | |
st.markdown("### πData Generation and Labeling Instructions") | |
#st.markdown("<h4 style='color: #4A90E2;'>π Instructions</h4>", unsafe_allow_html=True) | |
with open("User instructions.pdf", "rb") as f: | |
st.download_button( | |
label="π Download Instructions PDF", | |
data=f, | |
#file_name="instructions.pdf", | |
file_name="User instructions.pdf", | |
mime="application/pdf" | |
) | |
selected_model = st.selectbox( | |
"Select Model", | |
["meta-llama/Llama-3.3-70B-Instruct", "meta-llama/Llama-3.2-3B-Instruct","meta-llama/Llama-4-Scout-17B-16E-Instruct", "meta-llama/Meta-Llama-3-8B-Instruct", | |
"meta-llama/Llama-3.1-70B-Instruct"], | |
key='model_select' | |
) | |
temperature = st.slider( | |
"Temperature", | |
0.0, 1.0, 0.7, | |
help="Controls randomness in generation" | |
) | |
st.button("π New Conversation", on_click=reset_conversation) | |
with st.container(): | |
st.markdown(f""" | |
<div class="sidebar-info"> | |
<h4>Current Model: {selected_model}</h4> | |
<p><em>Note: Generated content may be inaccurate or false. Check important info.</em></p> | |
</div> | |
""", unsafe_allow_html=True) | |
feedback_url = "https://docs.google.com/forms/d/e/1FAIpQLSdZ_5mwW-pjqXHgxR0xriyVeRhqdQKgb5c-foXlYAV55Rilsg/viewform?usp=header" | |
st.sidebar.markdown( | |
f'<a href="{feedback_url}" target="_blank"><button style="width: 100%;">Feedback Form</button></a>', | |
unsafe_allow_html=True | |
) | |
# Display conversation | |
for message in st.session_state.messages: | |
with st.chat_message(message["role"]): | |
st.markdown(message["content"]) | |
# Main content | |
if 'task_choice' not in st.session_state: | |
col1, col2 = st.columns(2) | |
with col1: | |
if st.button("π Data Generation", key="gen_button", help="Generate new data"): | |
st.session_state.task_choice = "Data Generation" | |
with col2: | |
if st.button("π·οΈ Data Labeling", key="label_button", help="Label existing data"): | |
st.session_state.task_choice = "Data Labeling" | |
if "task_choice" in st.session_state: | |
if st.session_state.task_choice == "Data Generation": | |
st.header("π Data Generation") | |
# 1. Domain selection | |
domain_selection = st.selectbox("Domain", [ | |
"Restaurant reviews", "E-Commerce reviews", "News", "AG News", "Tourism", "Custom" | |
]) | |
# 2. Handle custom domain input | |
custom_domain_valid = True # Assume valid until proven otherwise | |
if domain_selection == "Custom": | |
domain = st.text_input("Specify custom domain") | |
if not domain.strip(): | |
st.error("Please specify a domain name.") | |
custom_domain_valid = False | |
else: | |
domain = domain_selection | |
# Classification type selection | |
classification_type = st.selectbox( | |
"Classification Type", | |
["Sentiment Analysis", "Binary Classification", "Multi-Class Classification"] | |
) | |
# Labels setup based on classification type | |
#labels = [] | |
labels = [] | |
labels_valid = False | |
errors = [] | |
def validate_binary_labels(labels): | |
errors = [] | |
normalized = [label.strip().lower() for label in labels] | |
if not labels[0].strip(): | |
errors.append("First class name is required.") | |
if not labels[1].strip(): | |
errors.append("Second class name is required.") | |
if normalized[0] == normalized[1] and all(normalized): | |
errors.append("Class names must be different.") | |
return errors | |
if classification_type == "Sentiment Analysis": | |
st.write("### Sentiment Analysis Labels (Fixed)") | |
col1, col2, col3 = st.columns(3) | |
with col1: | |
st.text_input("First class", "Positive", disabled=True) | |
with col2: | |
st.text_input("Second class", "Negative", disabled=True) | |
with col3: | |
st.text_input("Third class", "Neutral", disabled=True) | |
labels = ["Positive", "Negative", "Neutral"] | |
elif classification_type == "Binary Classification": | |
st.write("### Binary Classification Labels") | |
col1, col2 = st.columns(2) | |
with col1: | |
label_1 = st.text_input("First class", "Positive") | |
with col2: | |
label_2 = st.text_input("Second class", "Negative") | |
labels = [label_1, label_2] | |
errors = validate_binary_labels(labels) | |
if errors: | |
st.error("\n".join(errors)) | |
else: | |
st.success("Binary class names are valid and unique!") | |
elif classification_type == "Multi-Class Classification": | |
st.write("### Multi-Class Classification Labels") | |
default_labels_by_domain = { | |
"News": ["Political", "Sports", "Entertainment", "Technology", "Business"], | |
"AG News": ["World", "Sports", "Business", "Sci/Tech"], | |
"Tourism": ["Accommodation", "Transportation", "Tourist Attractions", | |
"Food & Dining", "Local Experience", "Adventure Activities", | |
"Wellness & Spa", "Eco-Friendly Practices", "Family-Friendly", | |
"Luxury Tourism"], | |
"Restaurant reviews": ["Italian", "French", "American"], | |
"E-Commerce reviews": ["Mobile Phones & Accessories", "Laptops & Computers","Kitchen & Dining", | |
"Beauty & Personal Care", "Home & Furniture", "Clothing & Fashion", | |
"Shoes & Handbags", "Health & Wellness", "Electronics & Gadgets", | |
"Books & Stationery","Toys & Games", "Sports & Fitness", | |
"Grocery & Gourmet Food","Watches & Accessories", "Baby Products"] | |
} | |
num_classes = st.slider("Number of classes", 3, 15, 3) | |
# Get defaults for selected domain, or empty list | |
defaults = default_labels_by_domain.get(domain, []) | |
labels = [] | |
errors = [] | |
cols = st.columns(3) | |
for i in range(num_classes): | |
with cols[i % 3]: | |
default_value = defaults[i] if i < len(defaults) else "" | |
label_input = st.text_input(f"Class {i+1}", default_value) | |
normalized_label = label_input.strip().title() | |
if not normalized_label: | |
errors.append(f"Class {i+1} name is required.") | |
else: | |
labels.append(normalized_label) | |
# Check for duplicates (case-insensitive) | |
if len(labels) != len(set(labels)): | |
errors.append("Labels names must be unique (case-insensitive, normalized to Title Case).") | |
# Show validation results | |
if errors: | |
for error in errors: | |
st.error(error) | |
else: | |
st.success("All Labels names are valid and unique!") | |
labels_valid = not errors # Will be True only if there are no label errors | |
############## | |
#new 22/4/2025 | |
# add additional attributes | |
add_attributes = st.checkbox("Add additional attributes (optional)") | |
additional_attributes = [] | |
if add_attributes: | |
num_attributes = st.slider("Number of attributes to add", 1, 5, 1) | |
for i in range(num_attributes): | |
st.markdown(f"#### Attribute {i+1}") | |
attr_name = st.text_input(f"Name of attribute {i+1}", key=f"attr_name_{i}") | |
attr_topics = st.text_input(f"Topics (comma-separated) for {attr_name}", key=f"attr_topics_{i}") | |
if attr_name and attr_topics: | |
topics_list = [topic.strip() for topic in attr_topics.split(",") if topic.strip()] | |
additional_attributes.append({"attribute": attr_name, "topics": topics_list}) | |
################ | |
# Generation parameters | |
col1, col2 = st.columns(2) | |
with col1: | |
min_words = st.number_input("Min words", 1, 100, 20) | |
with col2: | |
max_words = st.number_input("Max words", min_words, 100, 50) | |
# Few-shot examples | |
use_few_shot = st.toggle("Use few-shot examples") | |
few_shot_examples = [] | |
if use_few_shot: | |
num_examples = st.slider("Number of few-shot examples", 1, 10, 1) | |
for i in range(num_examples): | |
with st.expander(f"Example {i+1}"): | |
content = st.text_area(f"Content", key=f"few_shot_content_{i}") | |
label = st.selectbox(f"Label", labels, key=f"few_shot_label_{i}") | |
if content and label: | |
few_shot_examples.append({"content": content, "label": label}) | |
num_to_generate = st.number_input("Number of examples", 1, 200, 10) | |
#sytem role after | |
# System role customization | |
#default_system_role = f"You are a professional {classification_type} expert, your role is to generate text examples for {domain} domain. Always generate unique diverse examples and do not repeat the generated data. The generated text should be between {min_words} to {max_words} words long." | |
# System role customization | |
default_system_role = ( | |
f"You are a seasoned expert in {classification_type}, specializing in the {domain} domain. " | |
f" Your primary responsibility is to generate high-quality, diverse, and unique text examples " | |
f"tailored to this domain. Please ensure that each example adheres to the specified length " | |
f"requirements, ranging from {min_words} to {max_words} words, and avoid any repetition in the generated content." | |
) | |
system_role = st.text_area("Modify System Role (optional)", | |
value=default_system_role, | |
key="system_role_input") | |
st.session_state['system_role'] = system_role if system_role else default_system_role | |
# Labels initialization | |
#labels = [] | |
user_prompt = st.text_area("User Prompt (optional)") | |
# Updated prompt template including system role | |
prompt_template = PromptTemplate( | |
input_variables=["system_role", "classification_type", "domain", "num_examples", | |
"min_words", "max_words", "labels", "user_prompt", "few_shot_examples", "additional_attributes"], | |
template=( | |
"{system_role}\n" | |
"- Use the following parameters:\n" | |
"- Generate {num_examples} examples\n" | |
"- Each example should be between {min_words} to {max_words} words long\n" | |
"- Use these labels: {labels}.\n" | |
"- Use the following additional attributes:\n" | |
"- {additional_attributes}\n" | |
"- Generate the examples in this format: 'Example text. Label: label'\n" | |
"- Do not include word counts or any additional information\n" | |
"- Always use your creativity and intelligence to generate unique and diverse text data\n" | |
"- In sentiment analysis, ensure that the sentiment classification is clearly identified as Positive, Negative, or Neutral. Do not leave the sentiment ambiguous.\n" | |
"- In binary sentiment analysis, classify text strictly as either Positive or Negative. Do not include or imply Neutral as an option.\n" | |
"- Write unique examples every time.\n" | |
"- DO NOT REPEAT your gnerated text. \n" | |
"- For each Output, describe it once and move to the next.\n" | |
"- List each Output only once, and avoid repeating details.\n" | |
"- Additional instructions: {user_prompt}\n\n" | |
"- Use the following examples as a reference in the generation process\n\n {few_shot_examples}. \n" | |
"- Think step by step, generate numbered examples, and check each newly generated example to ensure it has not been generated before. If it has, modify it" | |
) | |
) | |
# template=( | |
# "{system_role}\n" | |
# "- Use the following parameters:\n" | |
# "- Generate {num_examples} examples\n" | |
# "- Each example should be between {min_words} to {max_words} words long\n" | |
# "- Use these labels: {labels}.\n" | |
# "- Use the following additional attributes:\n" | |
# "{additional_attributes}\n" | |
# #"- Format each example like this: 'Example text. Label: [label]. Attribute1: [topic1]. Attribute2: [topic2]'\n" | |
# "- Generate the examples in this format: 'Example text. Label: label'\n" | |
# "- Additional instructions: {user_prompt}\n" | |
# "- Use these few-shot examples if provided:\n{few_shot_examples}\n" | |
# "- Think step by step and ensure examples are unique and not repeated." | |
# ) | |
# ) | |
##########new 22/4/2025 | |
formatted_attributes = "\n".join([ | |
f"- {attr['attribute']}: {', '.join(attr['topics'])}" for attr in additional_attributes | |
]) | |
####################### | |
# Generate system prompt | |
system_prompt = prompt_template.format( | |
system_role=st.session_state['system_role'], | |
classification_type=classification_type, | |
domain=domain, | |
num_examples=num_to_generate, | |
min_words=min_words, | |
max_words=max_words, | |
labels=", ".join(labels), | |
user_prompt=user_prompt, | |
few_shot_examples="\n".join([f"{ex['content']}\nLabel: {ex['label']}" for ex in few_shot_examples]) if few_shot_examples else "", | |
additional_attributes=formatted_attributes | |
) | |
# Store system prompt in session state | |
st.session_state['system_prompt'] = system_prompt | |
# Display system prompt | |
st.write("System Prompt:") | |
st.text_area("Current System Prompt", value=st.session_state['system_prompt'], | |
height=400, disabled=True) | |
if st.button("π― Generate Examples"): | |
# | |
errors = [] | |
if domain_selection == "Custom" and not domain.strip(): | |
st.warning("Custom domain name is required.") | |
elif len(labels) != len(set(labels)): | |
st.warning("Class names must be unique.") | |
elif any(not lbl.strip() for lbl in labels): | |
st.warning("All class labels must be filled in.") | |
#else: | |
#st.success("Generating examples for domain: {domain}") | |
#if not custom_domain_valid: | |
#st.warning("Custom domain name is required.") | |
#elif not labels_valid: | |
#st.warning("Please fix the label errors before generating examples.") | |
#else: | |
# Proceed to generate examples | |
#st.success(f"Generating examples for domain: {domain}") | |
with st.spinner("Generating examples..."): | |
try: | |
stream = client.chat.completions.create( | |
model=selected_model, | |
messages=[{"role": "system", "content": st.session_state['system_prompt']}], | |
temperature=temperature, | |
stream=True, | |
max_tokens=80000, | |
top_p=0.9, | |
# repetition_penalty=1.2, | |
#frequency_penalty=0.5, # Discourages frequent words | |
#presence_penalty=0.6, | |
) | |
#st.session_state['system_prompt'] = system_prompt | |
#new 24 march | |
st.session_state.messages.append({"role": "user", "content": system_prompt}) | |
# # #################### | |
response = st.write_stream(stream) | |
st.session_state.messages.append({"role": "assistant", "content": response}) | |
# Initialize session state variables if they don't exist | |
if 'system_prompt' not in st.session_state: | |
st.session_state.system_prompt = system_prompt | |
if 'response' not in st.session_state: | |
st.session_state.response = response | |
if 'generated_examples' not in st.session_state: | |
st.session_state.generated_examples = [] | |
if 'generated_examples_csv' not in st.session_state: | |
st.session_state.generated_examples_csv = None | |
if 'generated_examples_json' not in st.session_state: | |
st.session_state.generated_examples_json = None | |
# Parse response and generate examples list | |
examples_list = [] | |
for line in response.split('\n'): | |
if line.strip(): | |
parts = line.rsplit('Label:', 1) | |
if len(parts) == 2: | |
text = parts[0].strip() | |
label = parts[1].strip() | |
if text and label: | |
examples_list.append({ | |
'text': text, | |
'label': label, | |
'system_prompt': st.session_state.system_prompt, | |
'system_role': st.session_state.system_role, | |
'task_type': 'Data Generation', | |
'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
}) | |
# example_dict = { | |
# 'text': text, | |
# 'label': label, | |
# 'system_prompt': st.session_state.system_prompt, | |
# 'system_role': st.session_state.system_role, | |
# 'task_type': 'Data Generation', | |
# 'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
# } | |
# for attr in additional_attributes: | |
# example_dict[attr['attribute']] = random.choice(attr['topics']) | |
# examples_list.append(example_dict) | |
if examples_list: | |
# Update session state with new data | |
st.session_state.generated_examples = examples_list | |
# Generate CSV and JSON data | |
df = pd.DataFrame(examples_list) | |
st.session_state.generated_examples_csv = df.to_csv(index=False).encode('utf-8') | |
st.session_state.generated_examples_json = json.dumps(examples_list, indent=2).encode('utf-8') | |
# Vertical layout with centered "or" between buttons | |
st.download_button( | |
"π₯ Download Generated Examples (CSV)", | |
st.session_state.generated_examples_csv, | |
"generated_examples.csv", | |
"text/csv", | |
key='download-csv-persistent' | |
) | |
# Add space and center the "or" | |
st.markdown(""" | |
<div style='text-align: left; margin:15px 0; font-weight: 600; color: #666;'>. . . . . . or</div> | |
""", unsafe_allow_html=True) | |
st.download_button( | |
"π₯ Download Generated Examples (JSON)", | |
st.session_state.generated_examples_json, | |
"generated_examples.json", | |
"application/json", | |
key='download-json-persistent' | |
) | |
# # Display the labeled examples | |
# st.markdown("##### π Labeled Examples Preview") | |
# st.dataframe(df, use_container_width=True) | |
if st.button("Continue"): | |
if follow_up == "Generate more examples": | |
st.experimental_rerun() | |
elif follow_up == "Data Labeling": | |
st.session_state.task_choice = "Data Labeling" | |
st.experimental_rerun() | |
except Exception as e: | |
st.error("An error occurred during generation.") | |
st.error(f"Details: {e}") | |
# Lableing Process | |
elif st.session_state.task_choice == "Data Labeling": | |
st.header("π·οΈ Data Labeling") | |
domain_selection = st.selectbox("Domain", ["Restaurant reviews", "E-Commerce reviews", "News", "AG News", "Tourism", "Custom"]) | |
# 2. Handle custom domain input | |
custom_domain_valid = True # Assume valid until proven otherwise | |
if domain_selection == "Custom": | |
domain = st.text_input("Specify custom domain") | |
if not domain.strip(): | |
st.error("Please specify a domain name.") | |
custom_domain_valid = False | |
else: | |
domain = domain_selection | |
# Classification type selection | |
classification_type = st.selectbox( | |
"Classification Type", | |
["Sentiment Analysis", "Binary Classification", "Multi-Class Classification", "Named Entity Recognition (NER)"] | |
) | |
#NNew edit | |
# Labels setup based on classification type | |
labels = [] | |
labels_valid = False | |
errors = [] | |
if classification_type == "Sentiment Analysis": | |
st.write("### Sentiment Analysis Labels (Fixed)") | |
col1, col2, col3 = st.columns(3) | |
with col1: | |
label_1 = st.text_input("First class", "Positive", disabled=True) | |
with col2: | |
label_2 = st.text_input("Second class", "Negative", disabled=True) | |
with col3: | |
label_3 = st.text_input("Third class", "Neutral", disabled=True) | |
labels = ["Positive", "Negative", "Neutral"] | |
elif classification_type == "Binary Classification": | |
st.write("### Binary Classification Labels") | |
col1, col2 = st.columns(2) | |
with col1: | |
label_1 = st.text_input("First class", "Positive") | |
with col2: | |
label_2 = st.text_input("Second class", "Negative") | |
errors = [] | |
labels = [label_1.strip(), label_2.strip()] | |
# Strip and lower-case labels for validation | |
label_1 = labels[0].strip() | |
label_2 = labels[1].strip() | |
# Check for empty class names | |
if not label_1: | |
errors.append("First class name is required.") | |
if not label_2: | |
errors.append("Second class name is required.") | |
# Check for duplicates (case insensitive) | |
if label_1.lower() == label_2.lower() and label_1 and label_2: | |
errors.append("Class names must be different.") | |
# Show errors or success | |
if errors: | |
for error in errors: | |
st.error(error) | |
else: | |
st.success("Binary class names are valid and unique!") | |
elif classification_type == "Multi-Class Classification": | |
st.write("### Multi-Class Classification Labels") | |
default_labels_by_domain = { | |
"News": ["Political", "Sports", "Entertainment", "Technology", "Business"], | |
"AG News": ["World", "Sports", "Business", "Sci/Tech"], | |
"Tourism": ["Accommodation", "Transportation", "Tourist Attractions", | |
"Food & Dining", "Local Experience", "Adventure Activities", | |
"Wellness & Spa", "Eco-Friendly Practices", "Family-Friendly", | |
"Luxury Tourism"], | |
"Restaurant reviews": ["Italian", "French", "American"], | |
"E-Commerce reviews": ["Mobile Phones & Accessories", "Laptops & Computers","Kitchen & Dining", | |
"Beauty & Personal Care", "Home & Furniture", "Clothing & Fashion", | |
"Shoes & Handbags", "Health & Wellness", "Electronics & Gadgets", | |
"Books & Stationery","Toys & Games", "Sports & Fitness", | |
"Grocery & Gourmet Food","Watches & Accessories", "Baby Products"] | |
} | |
# Ask user how many classes they want to define | |
num_classes = st.slider("Select the number of classes (labels)", min_value=3, max_value=10, value=3) | |
# Use default labels based on selected domain, if available | |
defaults = default_labels_by_domain.get(domain, []) | |
labels = [] | |
errors = [] | |
cols = st.columns(3) # For nicely arranged label inputs | |
for i in range(num_classes): | |
with cols[i % 3]: # Distribute inputs across columns | |
default_value = defaults[i] if i < len(defaults) else "" | |
label_input = st.text_input(f"Label {i + 1}", default_value) | |
normalized_label = label_input.strip().title() | |
if not normalized_label: | |
errors.append(f"Label {i + 1} is required.") | |
else: | |
labels.append(normalized_label) | |
# Check for duplicates (case-insensitive) | |
normalized_set = {label.lower() for label in labels} | |
if len(labels) != len(normalized_set): | |
errors.append("Label names must be unique (case-insensitive).") | |
# Show validation results | |
if errors: | |
for error in errors: | |
st.error(error) | |
else: | |
st.success("All label names are valid and unique!") | |
labels_valid = not errors # True if no validation errors | |
elif classification_type == "Named Entity Recognition (NER)": | |
# # NER entity options | |
# ner_entities = [ | |
# "PERSON - Names of people, fictional characters, historical figures", | |
# "ORG - Companies, institutions, agencies, teams", | |
# "LOC - Physical locations (mountains, oceans, etc.)", | |
# "GPE - Countries, cities, states, political regions", | |
# "DATE - Calendar dates, years, centuries", | |
# "TIME - Times, durations", | |
# "MONEY - Monetary values with currency" | |
# ] | |
# selected_entities = st.multiselect( | |
# "Select entities to recognize", | |
# ner_entities, | |
# default=["PERSON - Names of people, fictional characters, historical figures", | |
# "ORG - Companies, institutions, agencies, teams", | |
# "LOC - Physical locations (mountains, oceans, etc.)", | |
# "GPE - Countries, cities, states, political regions", | |
# "DATE - Calendar dates, years, centuries", | |
# "TIME - Times, durations", | |
# "MONEY - Monetary values with currency"], | |
# key="ner_entity_selection" | |
# ) | |
#new 22/4/2025 | |
#if classification_type == "Named Entity Recognition (NER)": | |
use_few_shot = True | |
#new 22/4/2025 | |
few_shot_examples = [ | |
{"content": "Mount Everest is the tallest mountain in the world.", "label": "LOC: Mount Everest"}, | |
{"content": "The President of the United States visited Paris last summer.", "label": "GPE: United States, GPE: Paris"}, | |
{"content": "Amazon is expanding its offices in Berlin.", "label": "ORG: Amazon, GPE: Berlin"}, | |
{"content": "J.K. Rowling wrote the Harry Potter books.", "label": "PERSON: J.K. Rowling"}, | |
{"content": "Apple was founded in California in 1976.", "label": "ORG: Apple, GPE: California, DATE: 1976"}, | |
{"content": "The Nile is the longest river in Africa.", "label": "LOC: Nile, GPE: Africa"}, | |
{"content": "He arrived at 3 PM for the meeting.", "label": "TIME: 3 PM"}, | |
{"content": "She bought the dress for $200.", "label": "MONEY: $200"}, | |
{"content": "The event is scheduled for July 4th.", "label": "DATE: July 4th"}, | |
{"content": "The World Health Organization is headquartered in Geneva.", "label": "ORG: World Health Organization, GPE: Geneva"} | |
] | |
########### | |
st.write("### Named Entity Recognition (NER) Entities") | |
# Predefined standard entities | |
ner_entities = [ | |
"PERSON - Names of people, fictional characters, historical figures", | |
"ORG - Companies, institutions, agencies, teams", | |
"LOC - Physical locations (mountains, oceans, etc.)", | |
"GPE - Countries, cities, states, political regions", | |
"DATE - Calendar dates, years, centuries", | |
"TIME - Times, durations", | |
"MONEY - Monetary values with currency" | |
] | |
# User can add custom NER types | |
custom_ner_entities = [] | |
if st.checkbox("Add custom NER entities?"): | |
num_custom_ner = st.slider("Number of custom NER entities", 1, 10, 1) | |
for i in range(num_custom_ner): | |
st.markdown(f"#### Custom Entity {i+1}") | |
custom_type = st.text_input(f"Entity type {i+1}", key=f"custom_ner_type_{i}") | |
custom_description = st.text_input(f"Description for {custom_type}", key=f"custom_ner_desc_{i}") | |
if custom_type and custom_description: | |
custom_ner_entities.append(f"{custom_type.upper()} - {custom_description}") | |
# Combine built-in and custom NERs | |
all_ner_options = ner_entities + custom_ner_entities | |
selected_entities = st.multiselect( | |
"Select entities to recognize", | |
all_ner_options, | |
default=ner_entities | |
) | |
# Extract entity type names (before the dash) | |
labels = [entity.split(" - ")[0].strip() for entity in selected_entities] | |
if not labels: | |
st.warning("Please select at least one entity type.") | |
labels = ["PERSON"] | |
########## | |
# # Extract just the entity type (before the dash) | |
# labels = [entity.split(" - ")[0] for entity in selected_entities] | |
# if not labels: | |
# st.warning("Please select at least one entity type") | |
# labels = ["PERSON"] # Default if nothing selected | |
#NNew edit | |
# elif classification_type == "Multi-Class Classification": | |
# st.write("### Multi-Class Classification Labels") | |
# default_labels_by_domain = { | |
# "News": ["Political", "Sports", "Entertainment", "Technology", "Business"], | |
# "AG News": ["World", "Sports", "Business", "Sci/Tech"], | |
# "Tourism": ["Accommodation", "Transportation", "Tourist Attractions", | |
# "Food & Dining", "Local Experience", "Adventure Activities", | |
# "Wellness & Spa", "Eco-Friendly Practices", "Family-Friendly", | |
# "Luxury Tourism"], | |
# "Restaurant reviews": ["Italian", "French", "American"] | |
# } | |
# num_classes = st.slider("Number of classes", 3, 10, 3) | |
# # Get defaults for selected domain, or empty list | |
# defaults = default_labels_by_domain.get(domain, []) | |
# labels = [] | |
# errors = [] | |
# cols = st.columns(3) | |
# for i in range(num_classes): | |
# with cols[i % 3]: | |
# default_value = defaults[i] if i < len(defaults) else "" | |
# label_input = st.text_input(f"Class {i+1}", default_value) | |
# normalized_label = label_input.strip().title() | |
# if not normalized_label: | |
# errors.append(f"Class {i+1} name is required.") | |
# else: | |
# labels.append(normalized_label) | |
# # Check for duplicates (case-insensitive) | |
# if len(labels) != len(set(labels)): | |
# errors.append("Labels names must be unique (case-insensitive, normalized to Title Case).") | |
# # Show validation results | |
# if errors: | |
# for error in errors: | |
# st.error(error) | |
# else: | |
# st.success("All Labels names are valid and unique!") | |
# labels_valid = not errors # Will be True only if there are no label errors | |
# else: | |
# num_classes = st.slider("Number of classes", 3, 23, 3, key="label_num_classes") | |
# labels = [] | |
# cols = st.columns(3) | |
# for i in range(num_classes): | |
# with cols[i % 3]: | |
# label = st.text_input(f"Class {i+1}", f"Class_{i+1}", key=f"label_class_{i}") | |
# labels.append(label) | |
use_few_shot = st.toggle("Use few-shot examples for labeling") | |
few_shot_examples = [] | |
if use_few_shot: | |
num_few_shot = st.slider("Number of few-shot examples", 1, 10, 1) | |
for i in range(num_few_shot): | |
with st.expander(f"Few-shot Example {i+1}"): | |
content = st.text_area(f"Content", key=f"label_few_shot_content_{i}") | |
label = st.selectbox(f"Label", labels, key=f"label_few_shot_label_{i}") | |
if content and label: | |
few_shot_examples.append(f"{content}\nLabel: {label}") | |
num_examples = st.number_input("Number of examples to classify", 1, 100, 1) | |
examples_to_classify = [] | |
if num_examples <= 20: | |
for i in range(num_examples): | |
example = st.text_area(f"Example {i+1}", key=f"example_{i}") | |
if example: | |
examples_to_classify.append(example) | |
else: | |
examples_text = st.text_area( | |
"Enter examples (one per line)", | |
height=300, | |
help="Enter each example on a new line" | |
) | |
if examples_text: | |
examples_to_classify = [ex.strip() for ex in examples_text.split('\n') if ex.strip()] | |
if len(examples_to_classify) > num_examples: | |
examples_to_classify = examples_to_classify[:num_examples] | |
#New Wedyan | |
#default_system_role = f"You are a professional {classification_type} expert, your role is to classify the provided text examples for {domain} domain." | |
# System role customization | |
default_system_role = (f"You are a highly skilled {classification_type} expert." | |
f" Your task is to accurately classify the provided text examples within the {domain} domain." | |
f" Ensure that all classifications are precise, context-aware, and aligned with domain-specific standards and best practices." | |
) | |
system_role = st.text_area("Modify System Role (optional)", | |
value=default_system_role, | |
key="system_role_input") | |
st.session_state['system_role'] = system_role if system_role else default_system_role | |
# Labels initialization | |
#labels = [] | |
#### | |
user_prompt = st.text_area("User prompt (optional)", key="label_instructions") | |
few_shot_text = "\n\n".join(few_shot_examples) if few_shot_examples else "" | |
examples_text = "\n".join([f"{i+1}. {ex}" for i, ex in enumerate(examples_to_classify)]) | |
# Customize prompt template based on classification type | |
if classification_type == "Named Entity Recognition (NER)": | |
# label_prompt_template = PromptTemplate( | |
# input_variables=["system_role", "labels", "few_shot_examples", "examples", "domain", "user_prompt"], | |
# template=( | |
# "{system_role}\n" | |
# #"- You are a professional Named Entity Recognition (NER) expert in {domain} domain. Your role is to identify and extract the following entity types: {labels}.\n" | |
# "- For each text example provided, identify all entities of the requested types.\n" | |
# "- Use the following entities: {labels}.\n" | |
# "- Return each example followed by the entities you found in this format: 'Example text.\n \n Entities:\n [ENTITY_TYPE: entity text\n\n, ENTITY_TYPE: entity text\n\n, ...] or [No entities found]'\n" | |
# "- If no entities of the requested types are found, indicate 'No entities found' in this text.\n" | |
# "- Be precise about entity boundaries - don't include unnecessary words.\n" | |
# "- Do not provide any additional information or explanations.\n" | |
# "- Additional instructions:\n {user_prompt}\n\n" | |
# "- Use user few-shot examples as guidance if provided:\n{few_shot_examples}\n\n" | |
# "- Examples to analyze:\n{examples}\n\n" | |
# "Output:\n" | |
# ) | |
# ) | |
#new 22/4/2025 | |
# label_prompt_template = PromptTemplate( | |
# input_variables=["system_role", "labels", "few_shot_examples", "examples", "domain", "user_prompt"], | |
# template=( | |
# "{system_role}\n" | |
# "- You are performing Named Entity Recognition (NER) in the domain of {domain}.\n" | |
# "- Use the following entity types: {labels}.\n\n" | |
# "### Reasoning Steps:\n" | |
# "1. Read the example carefully.\n" | |
# "2. For each named entity mentioned, determine its meaning and role in the sentence.\n" | |
# "3. Think about the **context**: Is it a physical location (LOC)? A geopolitical region (GPE)? A person (PERSON)?\n" | |
# "4. Based on the definition of each label, assign the most **specific and correct** label.\n\n" | |
# "For example:\n" | |
# "- 'Mount Everest' β LOC (it's a mountain)\n" | |
# "- 'France' β GPE (it's a country)\n" | |
# "- 'Microsoft' β ORG\n" | |
# "- 'John Smith' β PERSON\n\n" | |
# "- Return each example followed by the entities you found in this format:\n" | |
# "'Example text.'\nEntities: [ENTITY_TYPE: entity text, ENTITY_TYPE: entity text, ...] or [No entities found]\n" | |
# "- If no entities of the requested types are found, return 'No entities found'.\n" | |
# "- Be precise about entity boundaries - don't include extra words.\n" | |
# "- Do not explain or justify your answers.\n\n" | |
# "Additional instructions:\n{user_prompt}\n\n" | |
# "Few-shot examples:\n{few_shot_examples}\n\n" | |
# "Examples to label:\n{examples}\n" | |
# "Output:\n" | |
# ) | |
#) | |
# label_prompt_template = PromptTemplate( | |
# input_variables=["system_role", "labels", "few_shot_examples", "examples", "domain", "user_prompt"], | |
# template=( | |
# "{system_role}\n" | |
# "- You are an expert at Named Entity Recognition (NER) for domain: {domain}.\n" | |
# "- Use these entity types: {labels}.\n\n" | |
# "### Output Format:\n" | |
# # "Return each example followed by the entities you found in this format: 'Example text.\n Entities:\n [ENTITY_TYPE: entity text\n\" | |
# "Return each example followed by the entities you found in this format: 'Example text.\n 'Entity types:\n "Then group the entities under each label like this:\n" " | |
# #"Then Start with this line exactly: 'Entity types\n'\n" | |
# #"Then group the entities under each label like this:\n" | |
# "\n PERSON β Angela Merkel, John Smith\n\n" | |
# "\ ORG β Google, United Nations\n\n" | |
# "\n DATE β January 1st, 2023\n\n" | |
# "\n ... and so on.\n\n" | |
# "If entity {labels} not found, do not write it in your response\n" | |
# "- Do NOT output them inline after the text.\n" | |
# "- Do NOT repeat the sentence.\n" | |
# "- If no entities are found for a type, skip it.\n" | |
# "- Keep the format consistent.\n\n" | |
# "User Instructions:\n{user_prompt}\n\n" | |
# "Few-shot Examples:\n{few_shot_examples}\n\n" | |
# "Examples to analyze:\n{examples}" | |
# ) | |
# ) | |
label_prompt_template = PromptTemplate( | |
input_variables=["system_role", "labels", "few_shot_examples", "examples", "domain", "user_prompt"], | |
template=( | |
"{system_role}\n" | |
"- You are an expert at Named Entity Recognition (NER) for domain: {domain}.\n" | |
"- Use these entity types: {labels}.\n\n" | |
"### Output Format:\n" | |
"Return each example followed by the entities you found in this format:\n" | |
"'Example text.\nEntity types:\n" | |
"Then group the entities under each label like this:\n" | |
"\nPERSON β Angela Merkel, John Smith\n" | |
"ORG β Google, United Nations\n" | |
"DATE β January 1st, 2023\n" | |
"... and so on.\n\n" | |
"Each new entities group should be in a new line.\n" | |
"If entity type {labels} is not found, do not write it in your response.\n" | |
"- Do NOT output them inline after the text.\n" | |
"- Do NOT repeat the sentence.\n" | |
"- If no entities are found for a type, skip it.\n" | |
"- Keep the format consistent.\n\n" | |
"User Instructions:\n{user_prompt}\n\n" | |
"Few-shot Examples:\n{few_shot_examples}\n\n" | |
"Examples to analyze:\n{examples}" | |
) | |
) | |
####### | |
else: | |
label_prompt_template = PromptTemplate( | |
input_variables=["system_role", "classification_type", "labels", "few_shot_examples", "examples","domain", "user_prompt"], | |
template=( | |
#"- Let'\s think step by step:" | |
"{system_role}\n" | |
# "- You are a professional {classification_type} expert in {domain} domain. Your role is to classify the following examples using these labels: {labels}.\n" | |
"- Use the following instructions:\n" | |
"- Use the following labels: {labels}.\n" | |
"- Return the classified text followed by the label in this format: 'text. Label: [label]'\n" | |
"- Do not provide any additional information or explanations\n" | |
"- User prompt:\n {user_prompt}\n\n" | |
"- Use user provided examples as guidence in the classification process:\n\n {few_shot_examples}\n" | |
"- Examples to classify:\n{examples}\n\n" | |
"- Think step by step then classify the examples" | |
#"Output:\n" | |
)) | |
# Check if few_shot_examples is already a formatted string | |
# Check if few_shot_examples is already a formatted string | |
if isinstance(few_shot_examples, str): | |
formatted_few_shot = few_shot_examples | |
# If it's a list of already formatted strings | |
elif isinstance(few_shot_examples, list) and all(isinstance(ex, str) for ex in few_shot_examples): | |
formatted_few_shot = "\n".join(few_shot_examples) | |
# If it's a list of dictionaries with 'content' and 'label' keys | |
elif isinstance(few_shot_examples, list) and all(isinstance(ex, dict) and 'content' in ex and 'label' in ex for ex in few_shot_examples): | |
formatted_few_shot = "\n".join([f"{ex['content']}\nLabel: {ex['label']}" for ex in few_shot_examples]) | |
else: | |
formatted_few_shot = "" | |
# #new 22/4/2025 | |
# few_shot_examples = [ | |
# {"content": "Mount Everest is the tallest mountain in the world.", "label": "LOC: Mount Everest"}, | |
# {"content": "The President of the United States visited Paris last summer.", "label": "GPE: United States, GPE: Paris"}, | |
# {"content": "Amazon is expanding its offices in Berlin.", "label": "ORG: Amazon, GPE: Berlin"}, | |
# {"content": "J.K. Rowling wrote the Harry Potter books.", "label": "PERSON: J.K. Rowling"}, | |
# {"content": "Apple was founded in California in 1976.", "label": "ORG: Apple, GPE: California, DATE: 1976"}, | |
# {"content": "The Nile is the longest river in Africa.", "label": "LOC: Nile, GPE: Africa"}, | |
# {"content": "He arrived at 3 PM for the meeting.", "label": "TIME: 3 PM"}, | |
# {"content": "She bought the dress for $200.", "label": "MONEY: $200"}, | |
# {"content": "The event is scheduled for July 4th.", "label": "DATE: July 4th"}, | |
# {"content": "The World Health Organization is headquartered in Geneva.", "label": "ORG: World Health Organization, GPE: Geneva"} | |
# ] | |
# ########### | |
# new 22/4/2025 | |
#formatted_few_shot = "\n".join([f"{ex['content']}\nEntities: [{ex['label']}]" for ex in few_shot_examples]) | |
formatted_few_shot = "\n\n".join([f"{ex['content']}\n\nEntity types\n{ex['label']}" for ex in few_shot_examples]) | |
########### | |
system_prompt = label_prompt_template.format( | |
system_role=st.session_state['system_role'], | |
classification_type=classification_type, | |
domain=domain, | |
examples="\n".join(examples_to_classify), | |
labels=", ".join(labels), | |
user_prompt=user_prompt, | |
few_shot_examples=formatted_few_shot | |
) | |
# Step 2: Store the system_prompt in st.session_state | |
st.session_state['system_prompt'] = system_prompt | |
#::contentReference[oaicite:0]{index=0} | |
st.write("System Prompt:") | |
#st.code(system_prompt) | |
#st.code(st.session_state['system_prompt']) | |
st.text_area("System Prompt", value=st.session_state['system_prompt'], height=300, max_chars=None, key=None, help=None, disabled=True) | |
if st.button("π·οΈ Label Data"): | |
if examples_to_classify: | |
with st.spinner("Labeling data..."): | |
#Generate the system prompt based on classification type | |
if classification_type == "Named Entity Recognition (NER)": | |
system_prompt = label_prompt_template.format( | |
system_role=st.session_state['system_role'], | |
labels=", ".join(labels), | |
domain = domain, | |
few_shot_examples=few_shot_text, | |
examples=examples_text, | |
user_prompt=user_prompt | |
#new | |
#'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
) | |
# if classification_type == "Named Entity Recognition (NER)": | |
# # Step 1: Split the full response by example | |
# raw_outputs = [block.strip() for block in response.strip().split("Entity types") if block.strip()] | |
# inputs = [ex.strip() for ex in examples_to_classify] | |
# # Step 2: Match inputs with NER output blocks | |
# labeled_examples = [] | |
# for i, (text, output_block) in enumerate(zip(inputs, raw_outputs)): | |
# labeled_examples.append({ | |
# 'text': text, | |
# 'entities': f"Entity types\n{output_block.strip()}", | |
# 'system_prompt': st.session_state.system_prompt, | |
# 'system_role': st.session_state.system_role, | |
# 'task_type': 'Named Entity Recognition (NER)', | |
# 'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
# }) | |
# if classification_type == "Named Entity Recognition (NER)": | |
# # Step 1: Split the full response by example | |
# raw_outputs = [block.strip() for block in response.strip().split("Entity types") if block.strip()] | |
# inputs = [ex.strip() for ex in examples_to_classify] | |
# # Step 2: Match inputs with NER output blocks | |
# labeled_examples = [] | |
# for i, (text, output_block) in enumerate(zip(inputs, raw_outputs)): | |
# labeled_examples.append({ | |
# 'text': text, | |
# 'entities': f"Entity types\n{output_block.strip()}", | |
# 'system_prompt': st.session_state.system_prompt, | |
# 'system_role': st.session_state.system_role, | |
# 'task_type': 'Named Entity Recognition (NER)', | |
# 'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
# }) | |
# import re | |
# if classification_type == "Named Entity Recognition (NER)": | |
# # Use regex to split on "Entity types" while keeping it attached to each block | |
# blocks = re.split(r"(Entity types)", response.strip()) | |
# # Recombine 'Entity types' with each block after splitting | |
# raw_outputs = [ | |
# (blocks[i] + blocks[i+1]).strip() | |
# for i in range(1, len(blocks) - 1, 2) | |
# ] | |
# inputs = [ex.strip() for ex in examples_to_classify] | |
# labeled_examples = [] | |
# for i, (text, output_block) in enumerate(zip(inputs, raw_outputs)): | |
# labeled_examples.append({ | |
# 'text': text, | |
# 'entities': output_block, | |
# 'system_prompt': st.session_state.system_prompt, | |
# 'system_role': st.session_state.system_role, | |
# 'task_type': 'Named Entity Recognition (NER)', | |
# 'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
# }) | |
else: | |
system_prompt = label_prompt_template.format( | |
classification_type=classification_type, | |
system_role=st.session_state['system_role'], | |
domain = domain, | |
labels=", ".join(labels), | |
few_shot_examples=few_shot_text, | |
examples=examples_text, | |
user_prompt=user_prompt | |
) | |
try: | |
stream = client.chat.completions.create( | |
model=selected_model, | |
messages=[{"role": "system", "content": system_prompt}], | |
temperature=temperature, | |
stream=True, | |
max_tokens=20000, | |
top_p = 0.9, | |
) | |
#new 24 March | |
# Append user message | |
st.session_state.messages.append({"role": "user", "content": system_prompt}) | |
################# | |
response = st.write_stream(stream) | |
st.session_state.messages.append({"role": "assistant", "content": response}) | |
# Display the labeled examples | |
# # Optional: If you want to add it as a chat-style message log | |
# preview_str = st.session_state.labeled_preview.to_markdown(index=False) | |
# st.session_state.messages.append({"role": "assistant", "content": f"Here is a preview of the labeled examples:\n\n{preview_str}"}) | |
# # Stream response and append assistant message | |
# #14/4/2024 | |
# response = st.write_stream(stream) | |
# st.session_state.messages.append({"role": "assistant", "content": response}) | |
# Initialize session state variables if they don't exist | |
if 'system_prompt' not in st.session_state: | |
st.session_state.system_prompt = system_prompt | |
if 'response' not in st.session_state: | |
st.session_state.response = response | |
if 'generated_examples' not in st.session_state: | |
st.session_state.generated_examples = [] | |
if 'generated_examples_csv' not in st.session_state: | |
st.session_state.generated_examples_csv = None | |
if 'generated_examples_json' not in st.session_state: | |
st.session_state.generated_examples_json = None | |
# Save labeled examples to CSV | |
#new 14/4/2025 | |
#labeled_examples = [] | |
# if classification_type == "Named Entity Recognition (NER)": | |
# labeled_examples = [] | |
# for line in response.split('\n'): | |
# if line.strip(): | |
# parts = line.rsplit('Entities:', 1) | |
# if len(parts) == 2: | |
# text = parts[0].strip() | |
# entities = parts[1].strip() | |
# if text and entities: | |
# labeled_examples.append({ | |
# 'text': text, | |
# 'entities': entities, | |
# 'system_prompt': st.session_state.system_prompt, | |
# 'system_role': st.session_state.system_role, | |
# 'task_type': 'Named Entity Recognition (NER)', | |
# 'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
# }) | |
#new 22/4/2025 | |
labeled_examples = [] | |
if classification_type == "Named Entity Recognition (NER)": | |
labeled_examples = [{ | |
'ner_output': response.strip(), | |
'system_prompt': st.session_state.system_prompt, | |
'system_role': st.session_state.system_role, | |
'task_type': 'Named Entity Recognition (NER)', | |
'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
}] | |
###### | |
else: | |
labeled_examples = [] | |
for line in response.split('\n'): | |
if line.strip(): | |
parts = line.rsplit('Label:', 1) | |
if len(parts) == 2: | |
text = parts[0].strip() | |
label = parts[1].strip() | |
if text and label: | |
labeled_examples.append({ | |
'text': text, | |
'label': label, | |
'system_prompt': st.session_state.system_prompt, | |
'system_role': st.session_state.system_role, | |
'task_type': 'Data Labeling', | |
'Use few-shot example?': 'Yes' if use_few_shot else 'No', | |
}) | |
# Save and provide download options | |
if labeled_examples: | |
# Update session state | |
st.session_state.labeled_examples = labeled_examples | |
# Convert to CSV and JSON | |
df = pd.DataFrame(labeled_examples) | |
#new 22/4/2025 | |
# CSV | |
st.session_state.labeled_examples_csv = df.to_csv(index=False).encode('utf-8') | |
# JSON | |
st.session_state.labeled_examples_json = json.dumps({ | |
"metadata": { | |
"domain": domain, | |
"labels": labels, | |
"used_few_shot": use_few_shot, | |
"task_type": "Named Entity Recognition (NER)", | |
"timestamp": datetime.now().isoformat() | |
}, | |
"examples": labeled_examples | |
}, indent=2).encode('utf-8') | |
############ | |
# CSV | |
# st.session_state.labeled_examples_csv = df.to_csv(index=False).encode('utf-8') | |
# # JSON | |
# st.session_state.labeled_examples_json = json.dumps({ | |
# "metadata": { | |
# "domain": domain, | |
# "labels": labels, | |
# "used_few_shot": use_few_shot, | |
# "task_type": "Named Entity Recognition (NER)", | |
# "timestamp": datetime.now().isoformat() | |
# }, | |
# "examples": labeled_examples | |
# }, indent=2).encode('utf-8') | |
######## | |
# st.session_state.labeled_examples_csv = df.to_csv(index=False).encode('utf-8') | |
# st.session_state.labeled_examples_json = json.dumps(labeled_examples, indent=2).encode('utf-8') | |
# Download buttons | |
st.download_button( | |
"π₯ Download Labeled Examples (CSV)", | |
st.session_state.labeled_examples_csv, | |
"labeled_examples.csv", | |
"text/csv", | |
key='download-labeled-csv' | |
) | |
st.markdown(""" | |
<div style='text-align: left; margin:15px 0; font-weight: 600; color: #666;'>. . . . . . or</div> | |
""", unsafe_allow_html=True) | |
st.download_button( | |
"π₯ Download Labeled Examples (JSON)", | |
st.session_state.labeled_examples_json, | |
"labeled_examples.json", | |
"application/json", | |
key='download-labeled-json' | |
) | |
# Display the labeled examples | |
st.markdown("##### π Labeled Examples Preview") | |
st.dataframe(df, use_container_width=True) | |
# Display section | |
#st.markdown("### π Labeled Examples Preview") | |
#st.dataframe(st.session_state.labeled_preview, use_container_width=True) | |
# if labeled_examples: | |
# df = pd.DataFrame(labeled_examples) | |
# csv = df.to_csv(index=False).encode('utf-8') | |
# st.download_button( | |
# "π₯ Download Labeled Examples", | |
# csv, | |
# "labeled_examples.csv", | |
# "text/csv", | |
# key='download-labeled-csv' | |
# ) | |
# # Add space and center the "or" | |
# st.markdown(""" | |
# <div style='text-align: left; margin:15px 0; font-weight: 600; color: #666;'>. . . . . . or</div> | |
# """, unsafe_allow_html=True) | |
# if labeled_examples: | |
# df = pd.DataFrame(labeled_examples) | |
# csv = df.to_csv(index=False).encode('utf-8') | |
# st.download_button( | |
# "π₯ Download Labeled Examples", | |
# csv, | |
# "labeled_examples.json", | |
# "text/json", | |
# key='download-labeled-JSON' | |
# ) | |
# Add follow-up interaction options | |
#st.markdown("---") | |
#follow_up = st.radio( | |
#"What would you like to do next?", | |
#["Label more data", "Data Generation"], | |
# key="labeling_follow_up" | |
# ) | |
if st.button("Continue"): | |
if follow_up == "Label more data": | |
st.session_state.examples_to_classify = [] | |
st.experimental_rerun() | |
elif follow_up == "Data Generation": | |
st.session_state.task_choice = "Data Labeling" | |
st.experimental_rerun() | |
except Exception as e: | |
st.error("An error occurred during labeling.") | |
st.error(f"Details: {e}") | |
else: | |
st.warning("Please enter at least one example to classify.") | |
#st.session_state.messages.append({"role": "assistant", "content": response}) | |
# Footer | |
st.markdown("---") | |
st.markdown( | |
""" | |
<div style='text-align: center'> | |
<p>Made with β€οΈ by Wedyan AlSakran 2025</p> | |
</div> | |
""", | |
unsafe_allow_html=True | |
) |