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import dspy
import pandas as pd
import numpy as np
import re
import httpx
import json
from openai import OpenAI
from st_aggrid import AgGrid, GridOptionsBuilder, GridUpdateMode, DataReturnMode
from typing import Optional, Dict, Any, List
import os
# --- Page Configuration ---
st. set_page_config(
layout="wide",
page_title="GEPA Regex Optimizer",
page_icon="π§¬",
initial_sidebar_state="expanded"
)
# --- Session State Initialization ---
DEFAULT_STATE = {
'dataset': None,
'selected_indices': [], # Track selected row indices for training
'optimized_program': None,
'optimization_history': [],
'config': {
'model_name': 'gpt-4o',
'api_key': '',
'base_url': 'https://api.openai.com/v1',
'timeout': 30,
'max_retries': 3,
'temperature': 0.7,
'max_tokens': 1024,
},
'gepa_config': {
'num_iterations': 5,
'num_candidates': 3,
'early_stopping_threshold': 0.95,
},
'prompts': {
'system_instruction': "You are a Regex Expert. Given the input text, provide a high-precision Python regex pattern to extract the target text.",
'gepa_meta_prompt': "Focus on precision. If the feedback says the match was too broad, use more specific character classes or anchors. If it missed the target, suggest more flexible patterns.",
'output_description': "A Python-compatible regular expression",
},
'train_test_split': 0.8,
'regex_flags': [],
}
for key, value in DEFAULT_STATE.items():
if key not in st.session_state:
st.session_state[key] = value
# --- Configuration Manager ---
class ConfigManager:
"""Manages application configuration with persistence."""
CONFIG_FILE = "gepa_config.json"
@staticmethod
def save_config():
"""Save current configuration to file."""
config_data = {
'config': st.session_state. config,
'gepa_config': st.session_state. gepa_config,
'prompts': st.session_state.prompts,
'train_test_split': st.session_state. train_test_split,
'regex_flags': st. session_state.regex_flags,
}
try:
with open(ConfigManager.CONFIG_FILE, 'w') as f:
json.dump(config_data, f, indent=2)
return True
except Exception as e:
st.error(f"Failed to save config: {e}")
return False
@staticmethod
def load_config():
"""Load configuration from file."""
try:
if os.path.exists(ConfigManager.CONFIG_FILE):
with open(ConfigManager.CONFIG_FILE, 'r') as f:
config_data = json.load(f)
for key, value in config_data. items():
if key in st.session_state:
if isinstance(value, dict):
st. session_state[key].update(value)
else:
st. session_state[key] = value
return True
except Exception as e:
st.warning(f"Failed to load config: {e}")
return False
@staticmethod
def reset_to_defaults():
"""Reset all configuration to defaults."""
for key, value in DEFAULT_STATE.items():
if key not in ['dataset', 'optimized_program', 'optimization_history']:
st.session_state[key] = value. copy() if isinstance(value, (dict, list)) else value
# --- LLM Setup ---
def setup_dspy() -> bool:
"""Configure DSPy with current settings."""
config = st.session_state. config
try:
http_client = httpx.Client(
timeout=config['timeout'],
limits=httpx.Limits(max_retries=config['max_retries'])
)
custom_openai_client = OpenAI(
api_key=config['api_key'] or os.getenv("OPENAI_API_KEY", "empty"),
base_url=config['base_url'] or None,
http_client=http_client
)
lm = dspy.LM(
model=config['model_name'],
client=custom_openai_client,
temperature=config['temperature'],
max_tokens=config['max_tokens']
)
dspy.configure(lm=lm)
return True
except Exception as e:
st. error(f"LLM Configuration Error: {e}")
return False
# --- Metric Function ---
def create_regex_metric(flags: list):
"""Factory function to create metric with configurable regex flags."""
compiled_flags = 0
for flag in flags:
compiled_flags |= getattr(re, flag, 0)
def regex_metric_with_feedback(example, prediction, trace=None):
"""GEPA Metric with rich feedback for regex optimization."""
target = example. ground_truth. strip()
raw_text = example. raw_text
pred_pattern = getattr(prediction, 'regex_pattern', '').strip()
# Handle missing output
if not pred_pattern:
feedback = (
f"No regex pattern provided. Target text: '{target}'. "
"Please output a valid Python regex string."
)
return dspy. Prediction(score=0.0, feedback=feedback)
# Syntax validation
try:
compiled = re.compile(pred_pattern, compiled_flags)
except re.error as e:
feedback = (
f"Invalid regex: '{pred_pattern}'. "
f"Error: {str(e)}. Check syntax and escape characters."
)
return dspy. Prediction(score=0.0, feedback=feedback)
# Match evaluation
match = compiled.search(raw_text)
extracted = match.group(0) if match else ""
if extracted == target:
return dspy.Prediction(
score=1.0,
feedback=f"Perfect match! Correctly extracted '{target}'."
)
# Failure analysis
score = 0.0
feedback = f"Pattern '{pred_pattern}' produced incorrect result.\n"
if not match:
feedback += f"NO MATCH found. Target: '{target}'."
elif target in extracted:
score = 0.3
feedback += (
f"TOO BROAD: Extracted '{extracted}' contains target '{target}' "
"plus extra characters. Use stricter boundaries or non-greedy quantifiers."
)
elif extracted in target:
score = 0.3
feedback += (
f"TOO NARROW: Extracted '{extracted}' but target is '{target}'. "
"Make pattern more inclusive."
)
else:
feedback += f"WRONG MATCH: Got '{extracted}' instead of '{target}'."
feedback += "\nAnalyze the target structure to isolate it uniquely."
return dspy.Prediction(score=score, feedback=feedback)
return regex_metric_with_feedback
# --- DSPy Program ---
class RegexSignature(dspy. Signature):
"""Dynamic signature for regex generation."""
raw_text = dspy. InputField()
regex_pattern = dspy.OutputField()
class RegexGenerator(dspy.Module):
"""Configurable regex generation module."""
def __init__(self, doc: str, output_desc: str):
super().__init__()
self.predictor = dspy.Predict(RegexSignature)
self.predictor.signature.__doc__ = doc
self.predictor.signature.regex_pattern. desc = output_desc
def forward(self, raw_text: str):
return self. predictor(raw_text=raw_text)
# --- Sidebar Configuration ---
def render_sidebar():
"""Render the configuration sidebar."""
with st.sidebar:
st.title("βοΈ Configuration")
# Config management buttons
col1, col2, col3 = st.columns(3)
with col1:
if st.button("πΎ Save", use_container_width=True):
if ConfigManager.save_config():
st.success("Saved!")
with col2:
if st.button("π Load", use_container_width=True):
if ConfigManager.load_config():
st.success("Loaded!")
st.rerun()
with col3:
if st.button("π Reset", use_container_width=True):
ConfigManager.reset_to_defaults()
st.rerun()
st.divider()
# LLM Configuration
with st.expander("π€ LLM Settings", expanded=True):
st.session_state.config['model_name'] = st.text_input(
"Model Name",
value=st.session_state.config['model_name'],
help="e.g., gpt-4o, gpt-3.5-turbo, claude-3-opus"
)
st.session_state.config['api_key'] = st.text_input(
"API Key",
value=st.session_state.config['api_key'],
type="password",
help="Leave empty to use OPENAI_API_KEY env var"
)
st.session_state.config['base_url'] = st.text_input(
"Base URL",
value=st.session_state.config['base_url'],
help="Custom API endpoint (e.g., for Azure, local models)"
)
col1, col2 = st.columns(2)
with col1:
st.session_state.config['timeout'] = st.number_input(
"Timeout (s)",
min_value=5,
max_value=300,
value=st.session_state.config['timeout']
)
with col2:
st.session_state.config['max_retries'] = st.number_input(
"Max Retries",
min_value=0,
max_value=10,
value=st.session_state.config['max_retries']
)
col1, col2 = st.columns(2)
with col1:
st.session_state.config['temperature'] = st.slider(
"Temperature",
min_value=0.0,
max_value=2.0,
value=st. session_state.config['temperature'],
step=0.1
)
with col2:
st.session_state.config['max_tokens'] = st.number_input(
"Max Tokens",
min_value=64,
max_value=8192,
value=st.session_state.config['max_tokens']
)
# GEPA Optimizer Settings
with st. expander("𧬠GEPA Optimizer", expanded=False):
st.session_state.gepa_config['num_iterations'] = st.slider(
"Iterations",
min_value=1,
max_value=20,
value=st. session_state.gepa_config['num_iterations'],
help="Number of optimization iterations"
)
st.session_state. gepa_config['num_candidates'] = st.slider(
"Candidates per Iteration",
min_value=1,
max_value=10,
value=st.session_state.gepa_config['num_candidates'],
help="Number of candidate patterns to evaluate"
)
st. session_state.gepa_config['early_stopping_threshold'] = st.slider(
"Early Stopping Threshold",
min_value=0.5,
max_value=1.0,
value=st.session_state.gepa_config['early_stopping_threshold'],
step=0.05,
help="Stop if this score is reached"
)
# Prompt Configuration
with st.expander("π Prompts", expanded=False):
st.session_state.prompts['system_instruction'] = st.text_area(
"System Instruction",
value=st.session_state.prompts['system_instruction'],
height=100,
help="Initial instruction for regex generation"
)
st.session_state. prompts['gepa_meta_prompt'] = st.text_area(
"GEPA Evolution Prompt",
value=st.session_state.prompts['gepa_meta_prompt'],
height=100,
help="Instructions for GEPA's prompt evolution"
)
st.session_state. prompts['output_description'] = st. text_input(
"Output Field Description",
value=st.session_state.prompts['output_description'],
help="Description for the regex output field"
)
# Regex Configuration
with st. expander("π§ Regex Options", expanded=False):
flag_options = ['IGNORECASE', 'MULTILINE', 'DOTALL', 'VERBOSE', 'ASCII']
st.session_state. regex_flags = st.multiselect(
"Regex Flags",
options=flag_options,
default=st.session_state. regex_flags,
help="Python regex flags to apply"
)
# Data Split Configuration
with st.expander("π Data Settings", expanded=False):
st.session_state.train_test_split = st.slider(
"Train/Validation Split",
min_value=0.5,
max_value=0.95,
value=st.session_state.train_test_split,
step=0.05,
help="Proportion of data for training"
)
# --- Stratified Sampling Utility ---
def stratified_train_val_split(
df: pd.DataFrame,
train_ratio: float = 0.8,
stratify_column: str = 'ground_truth',
random_state: int = 42
) -> tuple:
"""
Perform stratified train/validation split.
Groups samples by ground_truth pattern and splits proportionally.
"""
np.random.seed(random_state)
# Create stratification groups based on ground_truth patterns
# Use first 50 chars of ground_truth as group key to handle similar patterns
df = df.copy()
df['_strat_key'] = df[stratify_column].apply(
lambda x: str(x)[:50] if pd.notna(x) and x != '' else '_empty_'
)
train_indices = []
val_indices = []
# Split each stratum
for _, group in df.groupby('_strat_key'):
indices = group.index.tolist()
np.random.shuffle(indices)
split_idx = max(1, int(len(indices) * train_ratio))
# Ensure at least one sample in validation if group has multiple samples
if len(indices) > 1 and split_idx == len(indices):
split_idx = len(indices) - 1
train_indices.extend(indices[:split_idx])
val_indices.extend(indices[split_idx:])
train_df = df.loc[train_indices].drop(columns=['_strat_key'])
val_df = df.loc[val_indices].drop(columns=['_strat_key']) if val_indices else pd.DataFrame()
return train_df, val_df
# --- Data Persistence ---
def save_annotated_data(df: pd.DataFrame, selected_indices: List[int], filepath: str) -> bool:
"""Save annotated data with selection state."""
try:
# Add selection column
save_df = df.copy()
save_df['_selected'] = save_df.index.isin(selected_indices)
if filepath.endswith('.json'):
save_df.to_json(filepath, orient='records', indent=2)
else:
save_df.to_csv(filepath, index=False)
return True
except Exception as e:
st.error(f"Failed to save data: {e}")
return False
def load_annotated_data(filepath: str) -> tuple:
"""Load annotated data with selection state."""
try:
df = pd.read_csv(filepath)
# Extract selection state if present
selected_indices = []
if '_selected' in df.columns:
selected_indices = df[df['_selected'] == True].index.tolist()
df = df.drop(columns=['_selected'])
# Ensure required columns
if 'text' not in df.columns:
raise ValueError("Dataset must have a 'text' column.")
if 'ground_truth' not in df.columns:
df['ground_truth'] = ''
return df, selected_indices
except Exception as e:
st.error(f"Failed to load data: {e}")
return None, []
# --- Main Application Tabs ---
def render_data_ingestion_tab():
"""Render the data ingestion tab."""
st.header("π₯ Data Ingestion & Annotation")
# File upload section
col1, col2 = st.columns([2, 1])
with col1:
uploaded = st.file_uploader(
"Upload Dataset",
type=["csv", "json", "xlsx"],
help="CSV/JSON/Excel with 'text' column (ground_truth optional, _selected for pre-selected rows)"
)
with col2:
st.markdown("**Expected Format:**")
st.code("text,ground_truth,_selected\n'Sample text','expected',true", language="csv")
if uploaded:
# Load based on file type
try:
df, selected_indices = load_annotated_data(uploaded)
if df is not None:
st.session_state.dataset = df.reset_index(drop=True)
st.session_state.selected_indices = selected_indices
st.success(f"β
Loaded {len(df)} samples ({len(selected_indices)} pre-selected)")
except Exception as e:
st.error(f"Failed to load file: {e}")
return
if st.session_state.dataset is not None:
df = st.session_state.dataset.copy()
st.subheader("π Annotate Ground Truth")
st.caption("Edit 'ground_truth' column and select rows (checkbox) to include in training/validation.")
# Prepare pre-selected rows for AgGrid
pre_selected_rows = st.session_state.get('selected_indices', [])
# Configure AgGrid
gb = GridOptionsBuilder.from_dataframe(df)
gb.configure_default_column(
resizable=True,
filterable=True,
sortable=True
)
gb.configure_column(
"text",
width=500,
wrapText=True,
autoHeight=True,
editable=False
)
gb.configure_column(
"ground_truth",
editable=True,
width=300,
cellStyle={'backgroundColor': '#fffde7'}
)
gb.configure_selection(
selection_mode='multiple',
use_checkbox=True,
pre_selected_rows=pre_selected_rows
)
gb.configure_pagination(paginationAutoPageSize=False, paginationPageSize=10)
grid_response = AgGrid(
df,
gridOptions=gb.build(),
update_mode=GridUpdateMode.MODEL_CHANGED | GridUpdateMode.SELECTION_CHANGED,
data_return_mode=DataReturnMode.FILTERED_AND_SORTED,
fit_columns_on_grid_load=False,
theme='streamlit',
height=400,
key='annotation_grid'
)
# Update session state with edited data
st.session_state.dataset = pd.DataFrame(grid_response['data'])
# Update selected indices from grid selection
selected_rows = grid_response.get('selected_rows', [])
if selected_rows is not None and len(selected_rows) > 0:
# Get indices of selected rows
selected_df = pd.DataFrame(selected_rows)
if not selected_df.empty:
# Match selected rows back to original indices
st.session_state.selected_indices = selected_df.index.tolist()
else:
st.session_state.selected_indices = []
st.divider()
# Save/Export section
st.subheader("πΎ Save Annotated Data")
col1, col2, col3 = st.columns([2, 1, 1])
with col1:
save_filename = st.text_input(
"Filename",
value="annotated_data.csv",
help="Enter filename (.csv or .json)"
)
with col2:
if st.button("πΎ Save to File", use_container_width=True):
if save_annotated_data(
st.session_state.dataset,
st.session_state.selected_indices,
save_filename
):
st.success(f"β
Saved to {save_filename}")
with col3:
# Download button
save_df = st.session_state.dataset.copy()
save_df['_selected'] = save_df.index.isin(st.session_state.selected_indices)
csv_data = save_df.to_csv(index=False)
st.download_button(
"π₯ Download CSV",
csv_data,
file_name="annotated_data.csv",
mime="text/csv",
use_container_width=True
)
st.divider()
# Data statistics
st.subheader("π Data Statistics")
total = len(st.session_state.dataset)
annotated = (st.session_state.dataset['ground_truth'].astype(str) != '').sum()
selected_count = len(st.session_state.selected_indices)
# Calculate train/val split preview
selected_df = st.session_state.dataset.iloc[st.session_state.selected_indices] if st.session_state.selected_indices else pd.DataFrame()
selected_annotated = selected_df[selected_df['ground_truth'].astype(str) != ''] if not selected_df.empty else pd.DataFrame()
if len(selected_annotated) >= 2:
train_df, val_df = stratified_train_val_split(
selected_annotated,
train_ratio=st.session_state.train_test_split
)
train_size = len(train_df)
val_size = len(val_df)
else:
train_size = 0
val_size = 0
col1, col2, col3, col4 = st.columns(4)
with col1:
st.metric("Total Samples", total)
with col2:
st.metric("Annotated", f"{annotated}/{total}")
with col3:
st.metric("Selected", selected_count, help="Rows selected for training/validation")
with col4:
st.metric("Train/Val", f"{train_size}/{val_size}", help="Stratified split of selected & annotated rows")
# Selection guidance
if selected_count == 0:
st.info("π‘ Select rows using checkboxes to include them in training/validation.")
elif len(selected_annotated) < 2:
st.warning("β οΈ Please select at least 2 annotated rows for training.")
# Stratification preview
if len(selected_annotated) >= 2:
with st.expander("π Stratification Preview"):
# Show distribution of ground_truth patterns
pattern_counts = selected_annotated['ground_truth'].apply(
lambda x: str(x)[:30] + '...' if len(str(x)) > 30 else str(x)
).value_counts()
st.markdown("**Ground Truth Pattern Distribution:**")
st.bar_chart(pattern_counts)
st.caption(f"Training: {train_size} samples, Validation: {val_size} samples")
# Sample data preview
with st.expander("π Sample Preview"):
st.dataframe(
st.session_state.dataset.head(5),
use_container_width=True
)
def render_optimization_tab():
"""Render the optimization tab."""
st.header("𧬠GEPA Optimization")
if st.session_state.dataset is None:
st.warning("β οΈ Please upload and annotate data first.")
return
df = st.session_state.dataset
selected_indices = st.session_state.get('selected_indices', [])
# Use selected rows if available, otherwise fall back to all annotated rows
if selected_indices:
selected_df = df.iloc[selected_indices]
annotated_df = selected_df[selected_df['ground_truth'].astype(str) != '']
use_selection = True
else:
annotated_df = df[df['ground_truth'].astype(str) != '']
use_selection = False
if len(annotated_df) < 2:
if use_selection:
st.warning("β οΈ Please select and annotate at least 2 samples in the Data Ingestion tab.")
else:
st.warning("β οΈ Please annotate at least 2 samples or select rows for training.")
return
# Stratified split
train_df, val_df = stratified_train_val_split(
annotated_df,
train_ratio=st.session_state.train_test_split
)
col1, col2, col3 = st.columns(3)
with col1:
st.info(f"π Training samples: {len(train_df)}")
with col2:
st.info(f"π§ͺ Validation samples: {len(val_df)}")
with col3:
if use_selection:
st.success("β
Using selected rows")
else:
st.warning("β οΈ Using all annotated rows")
# Optimization controls
col1, col2, col3 = st.columns([1, 1, 2])
with col1:
run_button = st.button(
"π Run Optimization",
type="primary",
use_container_width=True
)
with col2:
if st.button("π Reset Results", use_container_width=True):
st.session_state.optimized_program = None
st.session_state.optimization_history = []
st.rerun()
if run_button:
if not setup_dspy():
return
# Prepare training set
trainset = [
dspy.Example(
raw_text=row['text'],
ground_truth=row['ground_truth']
).with_inputs('raw_text')
for _, row in train_df.iterrows()
]
valset = [
dspy.Example(
raw_text=row['text'],
ground_truth=row['ground_truth']
).with_inputs('raw_text')
for _, row in val_df.iterrows()
]
# Progress tracking
progress_bar = st.progress(0)
status_text = st. empty()
try:
with st.spinner("𧬠GEPA is evolving regex patterns..."):
status_text.text("Initializing optimizer...")
optimizer = GEPA(
metric=create_regex_metric(st.session_state.regex_flags),
num_iterations=st. session_state.gepa_config['num_iterations'],
num_candidates=st.session_state.gepa_config['num_candidates'],
)
progress_bar.progress(20)
status_text.text("Creating initial program...")
program = RegexGenerator(
doc=st.session_state.prompts['system_instruction'],
output_desc=st. session_state.prompts['output_description']
)
progress_bar.progress(40)
status_text.text("Running optimization...")
optimized = optimizer.compile(
program,
trainset=trainset,
)
progress_bar.progress(80)
status_text.text("Evaluating on validation set...")
# Evaluate on validation set
metric_fn = create_regex_metric(st.session_state.regex_flags)
val_scores = []
for example in valset:
pred = optimized(raw_text=example. raw_text)
result = metric_fn(example, pred)
val_scores.append(result. score)
avg_score = sum(val_scores) / len(val_scores) if val_scores else 0
progress_bar. progress(100)
status_text.text("Complete!")
st.session_state. optimized_program = optimized
st.session_state.optimization_history.append({
'score': avg_score,
'prompt': optimized.predictor.signature.__doc__,
'timestamp': pd.Timestamp.now()
})
st. success(f"β
Optimization Complete! Validation Score: {avg_score:.2%}")
except Exception as e:
st.error(f"Optimization failed: {e}")
return
# Display results
if st. session_state.optimized_program:
st.subheader("π Results")
with st.expander("π Evolved Prompt", expanded=True):
st.code(
st.session_state.optimized_program.predictor. signature.__doc__,
language="text"
)
# Optimization history
if st.session_state.optimization_history:
with st.expander("π Optimization History"):
history_df = pd. DataFrame(st.session_state. optimization_history)
st.dataframe(history_df, use_container_width=True)
def render_testing_tab():
"""Render the testing tab."""
st.header("π Test & Validate")
if st.session_state.optimized_program is None:
st. warning("β οΈ Please run optimization first.")
return
# Single test
st.subheader("π§ͺ Single Test")
test_input = st.text_area(
"Enter test text",
height=100,
placeholder="Paste text here to extract regex pattern..."
)
col1, col2 = st.columns([1, 3])
with col1:
test_button = st.button("βΆοΈ Generate & Run", type="primary")
if test_button and test_input:
if not setup_dspy():
return
with st.spinner("Generating regex... "):
try:
result = st.session_state.optimized_program(raw_text=test_input)
pattern = result.regex_pattern
st.code(f"Generated Regex: {pattern}", language="regex")
# Compile and test
flags = 0
for flag in st.session_state.regex_flags:
flags |= getattr(re, flag, 0)
compiled = re.compile(pattern, flags)
matches = compiled.findall(test_input)
if matches:
st.success(f"β
Found {len(matches)} match(es):")
for i, match in enumerate(matches, 1):
st.markdown(f"**Match {i}:** `{match}`")
# Highlight matches in text
highlighted = test_input
for match in matches:
highlighted = highlighted.replace(
match,
f"**: green[{match}]**"
)
st.markdown("**Highlighted text:**")
st.markdown(highlighted)
else:
st. warning("No matches found.")
except re.error as e:
st.error(f"Invalid regex generated: {e}")
except Exception as e:
st.error(f"Error: {e}")
st.divider()
# Batch testing
st. subheader("π Batch Testing")
batch_file = st.file_uploader(
"Upload test data (CSV with 'text' column)",
type=["csv"],
key="batch_test"
)
if batch_file:
test_df = pd. read_csv(batch_file)
if 'text' not in test_df. columns:
st.error("CSV must have 'text' column.")
return
if st.button("π Run Batch Test"):
if not setup_dspy():
return
results = []
progress = st.progress(0)
for i, row in test_df.iterrows():
try:
result = st.session_state.optimized_program(raw_text=row['text'])
pattern = result.regex_pattern
flags = 0
for flag in st.session_state. regex_flags:
flags |= getattr(re, flag, 0)
match = re.search(pattern, row['text'], flags)
extracted = match.group(0) if match else ""
results.append({
'text': row['text'][: 100] + '...' if len(row['text']) > 100 else row['text'],
'pattern': pattern,
'extracted': extracted,
'success': bool(match)
})
except Exception as e:
results.append({
'text': row['text'][:100] + '...',
'pattern': 'ERROR',
'extracted': str(e),
'success': False
})
progress. progress((i + 1) / len(test_df))
results_df = pd. DataFrame(results)
# Summary metrics
success_rate = results_df['success']. mean()
col1, col2 = st.columns(2)
with col1:
st.metric("Success Rate", f"{success_rate:.1%}")
with col2:
st.metric("Total Tests", len(results_df))
# Results table
st.dataframe(results_df, use_container_width=True)
# Download results
csv = results_df. to_csv(index=False)
st.download_button(
"π₯ Download Results",
csv,
"batch_test_results. csv",
"text/csv"
)
# --- Main Application ---
def main():
render_sidebar()
st.title("𧬠GEPA Regex Optimizer")
st.caption("Automated regex generation with DSPy and evolutionary optimization")
tab1, tab2, tab3 = st.tabs([
"π₯ Data Ingestion",
"𧬠Optimization",
"π Testing"
])
with tab1:
render_data_ingestion_tab()
with tab2:
render_optimization_tab()
with tab3:
render_testing_tab()
# Footer
st.divider()
st.caption(
"Built with Streamlit, DSPy, and GEPA | "
"Configuration is auto-saved in the sidebar"
)
if __name__ == "__main__":
main()
|