l / streamlit_app /core /dataset_builder.py
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#!/usr/bin/env python3
"""
Dataset Builder
Creates and manages finetuning datasets from legislation analysis results.
Handles data formatting, validation, and export in multiple formats.
"""
import os
import json
import time
from typing import List, Dict, Any, Optional, Tuple
from pathlib import Path
import pandas as pd
from datetime import datetime
import uuid
class DatasetBuilder:
"""Builder for creating finetuning datasets from legislation analysis"""
def __init__(self, output_dir: str = "datasets"):
"""
Initialize the dataset builder
Args:
output_dir: Directory to save datasets
"""
self.output_dir = Path(output_dir)
self.output_dir.mkdir(exist_ok=True)
# Dataset metadata
self.metadata = {
'version': '1.0',
'created_at': datetime.now().isoformat(),
'total_entries': 0,
'analysis_types': set(),
'legislation_sources': set(),
'quality_metrics': {}
}
def create_finetuning_dataset(self, analysis_results: List[Dict[str, Any]],
dataset_name: str = None,
include_metadata: bool = True) -> Dict[str, Any]:
"""
Create a finetuning dataset from analysis results
Args:
analysis_results: List of analysis results from LLM analyzer
dataset_name: Name for the dataset (optional)
include_metadata: Whether to include metadata in the dataset
Returns:
Dataset information and statistics
"""
if not dataset_name:
timestamp = int(time.time())
dataset_name = f"nz_legislation_dataset_{timestamp}"
dataset_entries = []
successful_entries = 0
for result in analysis_results:
if 'error' in result:
continue
# Create finetuning entry
entry = self._create_finetuning_entry(result)
if entry:
dataset_entries.append(entry)
successful_entries += 1
# Update metadata
if 'analysis_type' in result:
self.metadata['analysis_types'].add(result['analysis_type'])
# Update metadata
self.metadata['total_entries'] = len(dataset_entries)
self.metadata['created_at'] = datetime.now().isoformat()
# Calculate quality metrics
self._calculate_quality_metrics(dataset_entries)
# Create dataset structure
dataset = {
'metadata': dict(self.metadata),
'entries': dataset_entries
}
if include_metadata:
dataset['metadata'].update({
'dataset_name': dataset_name,
'successful_entries': successful_entries,
'total_input_results': len(analysis_results),
'success_rate': successful_entries / len(analysis_results) if analysis_results else 0
})
return dataset
def _create_finetuning_entry(self, result: Dict[str, Any]) -> Optional[Dict[str, Any]]:
"""
Create a single finetuning dataset entry
Args:
result: Analysis result from LLM analyzer
Returns:
Finetuning entry or None if invalid
"""
try:
# Extract key components
chunk = result.get('chunk', '')
structured_analysis = result.get('structured_analysis', {})
response = result.get('response', '')
# Create the prompt (input)
prompt = self._create_prompt(chunk, result.get('analysis_type', 'standard'))
# Create the response (output) - structured format
response_text = self._create_response(structured_analysis, response)
if not prompt or not response_text:
return None
# Create entry
entry = {
'id': str(uuid.uuid4()),
'prompt': prompt,
'response': response_text,
'metadata': {
'chunk_size': len(chunk),
'word_count': len(chunk.split()),
'analysis_type': result.get('analysis_type', 'standard'),
'model_config': result.get('model_config', {}),
'confidence_score': structured_analysis.get('confidence_score', 0),
'analysis_quality': structured_analysis.get('analysis_quality', 'unknown'),
'created_at': datetime.now().isoformat()
},
'raw_data': {
'original_chunk': chunk,
'structured_analysis': structured_analysis,
'raw_response': response
}
}
return entry
except Exception as e:
print(f"Error creating finetuning entry: {e}")
return None
def _create_prompt(self, chunk: str, analysis_type: str) -> str:
"""
Create a standardized prompt for the finetuning dataset
Args:
chunk: Text chunk to analyze
analysis_type: Type of analysis
Returns:
Formatted prompt
"""
analysis_configs = {
'standard': {
'depth': 'Standard',
'focus': 'loopholes, ambiguities, and unintended consequences'
},
'detailed': {
'depth': 'Detailed',
'focus': 'loopholes, ambiguities, unintended consequences, and implementation issues'
},
'comprehensive': {
'depth': 'Comprehensive',
'focus': 'all aspects including policy conflicts and enforcement challenges'
}
}
config = analysis_configs.get(analysis_type, analysis_configs['standard'])
prompt = f"""You are a legal expert analyzing New Zealand legislation for loopholes and ambiguities.
LEGISLATION TEXT:
{chunk}
TASK: Analyze this legislative text for potential loopholes, ambiguities, or unintended consequences.
ANALYSIS DEPTH: {config['depth']}
FOCUS AREAS: {config['focus']}
Provide a structured analysis covering:
1. Text Meaning - Explain what the text means and its intended purpose
2. Key Assumptions - Identify any assumptions that could be exploited
3. Exploitable Interpretations - Discuss how the text could be interpreted in unintended ways
4. Critical Loopholes - Identify specific loopholes or ambiguities
5. Circumvention Strategies - Suggest practical methods for exploiting these loopholes
Format your response clearly with section headers."""
return prompt
def _create_response(self, structured_analysis: Dict[str, Any], raw_response: str) -> str:
"""
Create a standardized response format for the finetuning dataset
Args:
structured_analysis: Structured analysis data
raw_response: Raw LLM response
Returns:
Formatted response
"""
sections = []
# Text Meaning
if structured_analysis.get('text_meaning'):
sections.append(f"**Text Meaning:** {structured_analysis['text_meaning']}")
# Key Assumptions
if structured_analysis.get('key_assumptions'):
assumptions = structured_analysis['key_assumptions']
if assumptions:
sections.append("**Key Assumptions:**")
for i, assumption in enumerate(assumptions, 1):
sections.append(f"{i}. {assumption}")
# Exploitable Interpretations
if structured_analysis.get('exploitable_interpretations'):
interpretations = structured_analysis['exploitable_interpretations']
if interpretations:
sections.append("**Exploitable Interpretations:**")
for i, interpretation in enumerate(interpretations, 1):
sections.append(f"{i}. {interpretation}")
# Critical Loopholes
if structured_analysis.get('critical_loopholes'):
loopholes = structured_analysis['critical_loopholes']
if loopholes:
sections.append("**Critical Loopholes:**")
for i, loophole in enumerate(loopholes, 1):
sections.append(f"{i}. {loophole}")
# Circumvention Strategies
if structured_analysis.get('circumvention_strategies'):
strategies = structured_analysis['circumvention_strategies']
if strategies:
sections.append("**Circumvention Strategies:**")
for i, strategy in enumerate(strategies, 1):
sections.append(f"{i}. {strategy}")
# Recommendations
if structured_analysis.get('recommendations'):
recommendations = structured_analysis['recommendations']
if recommendations:
sections.append("**Recommendations:**")
for i, rec in enumerate(recommendations, 1):
sections.append(f"{i}. {rec}")
return "\n\n".join(sections) if sections else raw_response
def _calculate_quality_metrics(self, entries: List[Dict[str, Any]]):
"""Calculate quality metrics for the dataset"""
if not entries:
return
confidence_scores = []
analysis_qualities = {'high': 0, 'medium': 0, 'low': 0, 'unknown': 0}
for entry in entries:
metadata = entry.get('metadata', {})
confidence = metadata.get('confidence_score', 0)
quality = metadata.get('analysis_quality', 'unknown')
confidence_scores.append(confidence)
analysis_qualities[quality] = analysis_qualities.get(quality, 0) + 1
self.metadata['quality_metrics'] = {
'average_confidence': sum(confidence_scores) / len(confidence_scores) if confidence_scores else 0,
'max_confidence': max(confidence_scores) if confidence_scores else 0,
'min_confidence': min(confidence_scores) if confidence_scores else 0,
'quality_distribution': analysis_qualities,
'total_entries': len(entries)
}
def save_dataset(self, dataset: Dict[str, Any], format_type: str = 'json',
filename: str = None) -> str:
"""
Save dataset in specified format
Args:
dataset: Dataset to save
format_type: Format ('json', 'jsonl', 'csv', 'excel')
filename: Output filename (optional)
Returns:
Path to saved file
"""
if not filename:
timestamp = int(time.time())
filename = f"nz_legislation_dataset_{timestamp}"
# Ensure filename has correct extension
if not filename.endswith(f'.{format_type}'):
filename += f'.{format_type}'
filepath = self.output_dir / filename
try:
if format_type == 'json':
with open(filepath, 'w', encoding='utf-8') as f:
json.dump(dataset, f, indent=2, ensure_ascii=False)
elif format_type == 'jsonl':
with open(filepath, 'w', encoding='utf-8') as f:
for entry in dataset.get('entries', []):
json.dump(entry, f, ensure_ascii=False)
f.write('\n')
elif format_type == 'csv':
self._save_as_csv(dataset, filepath)
elif format_type == 'excel':
self._save_as_excel(dataset, filepath)
else:
raise ValueError(f"Unsupported format: {format_type}")
return str(filepath)
except Exception as e:
raise Exception(f"Error saving dataset: {e}")
def _save_as_csv(self, dataset: Dict[str, Any], filepath: Path):
"""Save dataset as CSV"""
entries = dataset.get('entries', [])
if not entries:
# Create empty CSV with headers
df = pd.DataFrame(columns=['id', 'prompt', 'response', 'metadata'])
df.to_csv(filepath, index=False)
return
# Flatten the data for CSV
csv_data = []
for entry in entries:
csv_row = {
'id': entry.get('id', ''),
'prompt': entry.get('prompt', ''),
'response': entry.get('response', ''),
'confidence_score': entry.get('metadata', {}).get('confidence_score', 0),
'analysis_type': entry.get('metadata', {}).get('analysis_type', ''),
'chunk_size': entry.get('metadata', {}).get('chunk_size', 0),
'word_count': entry.get('metadata', {}).get('word_count', 0),
'analysis_quality': entry.get('metadata', {}).get('analysis_quality', ''),
'created_at': entry.get('metadata', {}).get('created_at', '')
}
csv_data.append(csv_row)
df = pd.DataFrame(csv_data)
df.to_csv(filepath, index=False, encoding='utf-8')
def _save_as_excel(self, dataset: Dict[str, Any], filepath: Path):
"""Save dataset as Excel with multiple sheets"""
entries = dataset.get('entries', [])
with pd.ExcelWriter(filepath, engine='openpyxl') as writer:
# Main dataset sheet
if entries:
csv_data = []
for entry in entries:
csv_row = {
'id': entry.get('id', ''),
'prompt': entry.get('prompt', ''),
'response': entry.get('response', ''),
'confidence_score': entry.get('metadata', {}).get('confidence_score', 0),
'analysis_type': entry.get('metadata', {}).get('analysis_type', ''),
'chunk_size': entry.get('metadata', {}).get('chunk_size', 0),
'word_count': entry.get('metadata', {}).get('word_count', 0),
'analysis_quality': entry.get('metadata', {}).get('analysis_quality', ''),
'created_at': entry.get('metadata', {}).get('created_at', '')
}
csv_data.append(csv_row)
df_main = pd.DataFrame(csv_data)
df_main.to_excel(writer, sheet_name='Dataset', index=False)
# Metadata sheet
metadata_df = pd.DataFrame([dataset.get('metadata', {})])
metadata_df.to_excel(writer, sheet_name='Metadata', index=False)
# Quality metrics sheet
quality_data = dataset.get('metadata', {}).get('quality_metrics', {})
if quality_data:
quality_df = pd.DataFrame([quality_data])
quality_df.to_excel(writer, sheet_name='Quality_Metrics', index=False)
def load_dataset(self, filepath: str) -> Dict[str, Any]:
"""
Load a dataset from file
Args:
filepath: Path to dataset file
Returns:
Loaded dataset
"""
filepath = Path(filepath)
if not filepath.exists():
raise FileNotFoundError(f"Dataset file not found: {filepath}")
try:
if filepath.suffix == '.json':
with open(filepath, 'r', encoding='utf-8') as f:
return json.load(f)
elif filepath.suffix == '.jsonl':
entries = []
with open(filepath, 'r', encoding='utf-8') as f:
for line in f:
if line.strip():
entries.append(json.loads(line))
return {
'metadata': {
'loaded_from': str(filepath),
'total_entries': len(entries)
},
'entries': entries
}
elif filepath.suffix in ['.csv', '.xlsx', '.xls']:
return self._load_from_spreadsheet(filepath)
else:
raise ValueError(f"Unsupported file format: {filepath.suffix}")
except Exception as e:
raise Exception(f"Error loading dataset: {e}")
def _load_from_spreadsheet(self, filepath: Path) -> Dict[str, Any]:
"""Load dataset from spreadsheet format"""
try:
if filepath.suffix == '.csv':
df = pd.read_csv(filepath)
else:
df = pd.read_excel(filepath)
# Convert back to dataset format
entries = []
for _, row in df.iterrows():
entry = {
'id': row.get('id', str(uuid.uuid4())),
'prompt': row.get('prompt', ''),
'response': row.get('response', ''),
'metadata': {
'confidence_score': row.get('confidence_score', 0),
'analysis_type': row.get('analysis_type', 'standard'),
'chunk_size': row.get('chunk_size', 0),
'word_count': row.get('word_count', 0),
'analysis_quality': row.get('analysis_quality', 'unknown'),
'created_at': row.get('created_at', datetime.now().isoformat())
}
}
entries.append(entry)
return {
'metadata': {
'loaded_from': str(filepath),
'total_entries': len(entries),
'original_format': filepath.suffix[1:]
},
'entries': entries
}
except Exception as e:
raise Exception(f"Error loading spreadsheet: {e}")
def merge_datasets(self, datasets: List[Dict[str, Any]],
output_name: str = None) -> Dict[str, Any]:
"""
Merge multiple datasets into one
Args:
datasets: List of datasets to merge
output_name: Name for merged dataset
Returns:
Merged dataset
"""
if not datasets:
return self.create_finetuning_dataset([])
merged_entries = []
all_analysis_types = set()
all_sources = set()
for dataset in datasets:
entries = dataset.get('entries', [])
merged_entries.extend(entries)
metadata = dataset.get('metadata', {})
all_analysis_types.update(metadata.get('analysis_types', []))
all_sources.update(metadata.get('legislation_sources', []))
# Create merged dataset
merged_dataset = {
'metadata': {
'version': '1.0',
'created_at': datetime.now().isoformat(),
'dataset_name': output_name or f"merged_dataset_{int(time.time())}",
'total_entries': len(merged_entries),
'analysis_types': list(all_analysis_types),
'legislation_sources': list(all_sources),
'merged_from': len(datasets),
'success_rate': 1.0 # Assuming all entries are valid
},
'entries': merged_entries
}
# Recalculate quality metrics
self._calculate_quality_metrics(merged_entries)
merged_dataset['metadata']['quality_metrics'] = self.metadata['quality_metrics']
return merged_dataset
def validate_dataset(self, dataset: Dict[str, Any]) -> Dict[str, Any]:
"""
Validate dataset quality and completeness
Args:
dataset: Dataset to validate
Returns:
Validation results
"""
validation = {
'is_valid': True,
'issues': [],
'warnings': [],
'statistics': {}
}
entries = dataset.get('entries', [])
metadata = dataset.get('metadata', {})
# Check basic structure
if not isinstance(entries, list):
validation['issues'].append("Entries must be a list")
validation['is_valid'] = False
return validation
if not entries:
validation['warnings'].append("Dataset is empty")
return validation
# Validate entries
valid_entries = 0
total_confidence = 0
for i, entry in enumerate(entries):
if not isinstance(entry, dict):
validation['issues'].append(f"Entry {i} is not a dictionary")
continue
# Check required fields
required_fields = ['id', 'prompt', 'response']
for field in required_fields:
if field not in entry:
validation['issues'].append(f"Entry {i} missing required field: {field}")
# Check prompt and response quality
prompt = entry.get('prompt', '')
response = entry.get('response', '')
if len(prompt.strip()) < 10:
validation['warnings'].append(f"Entry {i} has very short prompt")
if len(response.strip()) < 10:
validation['warnings'].append(f"Entry {i} has very short response")
# Check confidence score
confidence = entry.get('metadata', {}).get('confidence_score', 0)
total_confidence += confidence
valid_entries += 1
# Calculate statistics
validation['statistics'] = {
'total_entries': len(entries),
'valid_entries': valid_entries,
'average_confidence': total_confidence / valid_entries if valid_entries > 0 else 0,
'validation_rate': valid_entries / len(entries) if entries else 0
}
return validation
def get_dataset_statistics(self, dataset: Dict[str, Any]) -> Dict[str, Any]:
"""
Get comprehensive statistics about the dataset
Args:
dataset: Dataset to analyze
Returns:
Dataset statistics
"""
entries = dataset.get('entries', [])
if not entries:
return {'total_entries': 0}
# Basic statistics
stats = {
'total_entries': len(entries),
'total_prompts': len([e for e in entries if e.get('prompt')]),
'total_responses': len([e for e in entries if e.get('response')]),
'average_prompt_length': 0,
'average_response_length': 0,
'confidence_distribution': {},
'analysis_type_distribution': {},
'quality_distribution': {}
}
# Calculate averages
prompt_lengths = [len(e.get('prompt', '')) for e in entries if e.get('prompt')]
response_lengths = [len(e.get('response', '')) for e in entries if e.get('response')]
if prompt_lengths:
stats['average_prompt_length'] = sum(prompt_lengths) / len(prompt_lengths)
if response_lengths:
stats['average_response_length'] = sum(response_lengths) / len(response_lengths)
# Distribution analysis
for entry in entries:
metadata = entry.get('metadata', {})
# Confidence distribution
confidence = metadata.get('confidence_score', 0)
conf_range = f"{(confidence // 20) * 20}-{(confidence // 20) * 20 + 19}"
stats['confidence_distribution'][conf_range] = stats['confidence_distribution'].get(conf_range, 0) + 1
# Analysis type distribution
analysis_type = metadata.get('analysis_type', 'unknown')
stats['analysis_type_distribution'][analysis_type] = stats['analysis_type_distribution'].get(analysis_type, 0) + 1
# Quality distribution
quality = metadata.get('analysis_quality', 'unknown')
stats['quality_distribution'][quality] = stats['quality_distribution'].get(quality, 0) + 1
return stats