Medica_DecisionSupportAI / response_formatter.py
Rajan Sharma
Update response_formatter.py
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# response_formatter.py
from typing import Dict, List, Any
class ResponseFormatter:
@staticmethod
def format_healthcare_response(scenario_text: str, analysis_results: Dict[str, Any]) -> str:
"""Format healthcare analysis response with detailed structure"""
response = "# Healthcare Scenario Analysis\n\n"
# Executive Summary
response += "## Executive Summary\n\n"
response += ResponseFormatter._generate_executive_summary(analysis_results)
response += "\n\n"
# Data Preparation
response += "## 1. Data Preparation\n\n"
response += ResponseFormatter._generate_data_section(analysis_results)
response += "\n\n"
# Analysis Sections
if "facility_distribution" in analysis_results:
response += "## 2. Facility Distribution Analysis\n\n"
response += ResponseFormatter._format_facility_distribution(analysis_results["facility_distribution"])
response += "\n\n"
if "capacity_analysis" in analysis_results:
response += "## 3. Capacity Analysis\n\n"
response += ResponseFormatter._format_capacity_analysis(analysis_results["capacity_analysis"])
response += "\n\n"
if "resource_allocation" in analysis_results:
response += "## 4. Resource Allocation Analysis\n\n"
response += ResponseFormatter._format_resource_allocation(analysis_results["resource_allocation"])
response += "\n\n"
if "trends" in analysis_results:
response += "## 5. Trend Analysis\n\n"
response += ResponseFormatter._format_trends(analysis_results["trends"])
response += "\n\n"
# Recommendations
if "recommendations" in analysis_results:
response += "## 6. Operational Recommendations\n\n"
response += ResponseFormatter._format_recommendations(analysis_results["recommendations"])
response += "\n\n"
# Future Integration
if "future_integration" in analysis_results:
response += "## 7. Future Integration Opportunities\n\n"
response += ResponseFormatter._format_integration_opportunities(analysis_results["future_integration"])
response += "\n\n"
# Provenance
response += "## 8. Provenance\n\n"
response += "This analysis is based on:\n"
response += "- Scenario description provided by the user\n"
response += "- Uploaded data files\n"
response += "- Calculations performed on the provided data\n"
return response
@staticmethod
def _generate_executive_summary(results: Dict[str, Any]) -> str:
"""Generate executive summary based on analysis results"""
summary = []
if "capacity_analysis" in results:
capacity = results["capacity_analysis"]
if "total_capacity" in capacity:
summary.append(f"Total system capacity: {capacity['total_capacity']:,} beds")
if "average_utilization" in capacity:
summary.append(f"Average utilization: {capacity['average_utilization']:.1%}")
if "facility_distribution" in results:
dist = results["facility_distribution"]
if "geographic_inequality" in dist:
inequality = dist["geographic_inequality"]
level = "High" if inequality > 0.4 else "Moderate" if inequality > 0.2 else "Low"
summary.append(f"Geographic distribution inequality: {level} (Gini: {inequality:.2f})")
if "recommendations" in results:
high_priority = [r for r in results["recommendations"] if r.get("priority") == "High"]
if high_priority:
summary.append(f"{len(high_priority)} high-priority recommendations identified")
return " | ".join(summary) if summary else "No key metrics identified"
@staticmethod
def _generate_data_section(results: Dict[str, Any]) -> str:
"""Generate data preparation section"""
data_sources = []
if "facility_distribution" in results:
data_sources.append("Facility registry data")
if "capacity_analysis" in results:
data_sources.append("Bed capacity and utilization data")
if "resource_allocation" in results:
data_sources.append("Resource allocation data")
if "trends" in results:
data_sources.append("Historical trend data")
if not data_sources:
return "No relevant data sources identified"
response = "The following data sources were used in this analysis:\n\n"
for source in data_sources:
response += f"- {source}\n"
response += "\nData quality checks and transformations were applied to ensure accuracy and consistency."
return response
@staticmethod
def _format_facility_distribution(dist_results: Dict[str, Any]) -> str:
"""Format facility distribution analysis results"""
response = ""
if "total_facilities" in dist_results:
response += f"**Total Facilities**: {dist_results['total_facilities']:,}\n\n"
if "geographic_distribution" in dist_results:
response += "### Geographic Distribution\n\n"
response += "| Region | Facility Count |\n"
response += "|--------|---------------|\n"
for region, count in dist_results["geographic_distribution"].items():
response += f"| {region} | {count} |\n"
response += "\n"
if "geographic_inequality" in dist_results:
inequality = dist_results["geographic_inequality"]
level = "High" if inequality > 0.4 else "Moderate" if inequality > 0.2 else "Low"
response += f"**Geographic Inequality**: {level} (Gini coefficient: {inequality:.2f})\n\n"
if "facility_type_distribution" in dist_results:
response += "### Facility Type Distribution\n\n"
response += "| Facility Type | Count |\n"
response += "|---------------|-------|\n"
for ftype, count in dist_results["facility_type_distribution"].items():
response += f"| {ftype} | {count} |\n"
response += "\n"
if "facility_diversity" in dist_results:
diversity = dist_results["facility_diversity"]
response += f"**Facility Diversity Index**: {diversity:.2f} (higher values indicate more diversity)\n\n"
if "top_cities" in dist_results and "city_breakdown" in dist_results:
response += "### Top Cities by Facility Count\n\n"
response += "| City | Hospitals | Nursing/Residential | Ambulatory | Total |\n"
response += "|------|-----------|-------------------|------------|-------|\n"
for city in dist_results["top_cities"]:
if city in dist_results["city_breakdown"]:
breakdown = dist_results["city_breakdown"][city]
hospitals = breakdown.get("Hospitals", 0)
nursing = breakdown.get("Nursing and residential care facilities", 0)
ambulatory = breakdown.get("Ambulatory health care services", 0)
total = hospitals + nursing + ambulatory
response += f"| {city} | {hospitals} | {nursing} | {ambulatory} | {total} |\n"
response += "\n"
return response if response else "No facility distribution data available"
@staticmethod
def _format_capacity_analysis(capacity_results: Dict[str, Any]) -> str:
"""Format capacity analysis results"""
response = ""
if "total_capacity" in capacity_results:
response += f"**Total System Capacity**: {capacity_results['total_capacity']:,} beds\n\n"
if "capacity_by_type" in capacity_results:
response += "### Capacity by Facility Type\n\n"
response += "| Facility Type | Capacity |\n"
response += "|---------------|----------|\n"
for ftype, capacity in capacity_results["capacity_by_type"].items():
response += f"| {ftype} | {capacity:,} |\n"
response += "\n"
if "average_utilization" in capacity_results:
response += f"**Average System Utilization**: {capacity_results['average_utilization']:.1%}\n\n"
if "utilization_by_type" in capacity_results:
response += "### Utilization by Facility Type\n\n"
response += "| Facility Type | Utilization |\n"
response += "|---------------|-------------|\n"
for ftype, util in capacity_results["utilization_by_type"].items():
response += f"| {ftype} | {util:.1%} |\n"
response += "\n"
if "capacity_trends" in capacity_results:
response += "### Capacity Trends\n\n"
response += "| Year | Capacity |\n"
response += "|------|----------|\n"
for year, capacity in capacity_results["capacity_trends"].items():
response += f"| {year} | {capacity:,} |\n"
response += "\n"
if "capacity_growth_rate" in capacity_results:
growth = capacity_results["capacity_growth_rate"]
response += f"**Overall Growth Rate**: {growth:.1f}%\n\n"
if "zone_summary" in capacity_results:
response += "### Bed Capacity by Zone\n\n"
response += "| Zone | Current Beds | Previous Beds | Absolute Change | Percentage Change |\n"
response += "|------|--------------|---------------|-----------------|-------------------|\n"
for zone_data in capacity_results["zone_summary"]:
# Extract zone name - try different possible keys
zone_name = "Unknown"
for key in ["zone", "Zone", "ZONE", "region", "Region", "REGION"]:
if key in zone_data:
zone_name = zone_data[key]
break
# Extract bed counts
current_beds = zone_data.get("beds_current", zone_data.get("current", "N/A"))
prev_beds = zone_data.get("beds_prev", zone_data.get("previous", "N/A"))
abs_change = zone_data.get("bed_change", "N/A")
pct_change = zone_data.get("percent_change", "N/A")
response += f"| {zone_name} | {current_beds} | {prev_beds} | {abs_change} | {pct_change:.1f}% |\n"
response += "\n"
if "max_absolute_decrease" in capacity_results and isinstance(capacity_results["max_absolute_decrease"], dict):
response += "### Zone with Largest Absolute Decrease\n\n"
max_abs = capacity_results["max_absolute_decrease"]
# Extract zone name
zone_name = "Unknown"
for key in ["zone", "Zone", "ZONE", "region", "Region", "REGION"]:
if key in max_abs:
zone_name = max_abs[key]
break
# Extract values
abs_change = max_abs.get("bed_change", "N/A")
pct_change = max_abs.get("percent_change", "N/A")
response += f"**Zone**: {zone_name}\n"
response += f"**Absolute Decrease**: {abs_change} beds\n"
response += f"**Percentage Decrease**: {pct_change:.1f}%\n\n"
if "max_percentage_decrease" in capacity_results and isinstance(capacity_results["max_percentage_decrease"], dict):
response += "### Zone with Largest Percentage Decrease\n\n"
max_pct = capacity_results["max_percentage_decrease"]
# Extract zone name
zone_name = "Unknown"
for key in ["zone", "Zone", "ZONE", "region", "Region", "REGION"]:
if key in max_pct:
zone_name = max_pct[key]
break
# Extract values
abs_change = max_pct.get("bed_change", "N/A")
pct_change = max_pct.get("percent_change", "N/A")
response += f"**Zone**: {zone_name}\n"
response += f"**Absolute Decrease**: {abs_change} beds\n"
response += f"**Percentage Decrease**: {pct_change:.1f}%\n\n"
if "facilities_with_largest_declines" in capacity_results:
response += "### Facilities with Largest Bed Declines\n\n"
response += "| Facility | Zone | Teaching Status | Beds Lost |\n"
response += "|----------|------|----------------|-----------|\n"
for facility in capacity_results["facilities_with_largest_declines"]:
name = facility.get("facility_name", "N/A")
# Extract zone name
zone_name = "Unknown"
for key in ["zone", "Zone", "ZONE", "region", "Region", "REGION"]:
if key in facility:
zone_name = facility[key]
break
teaching = facility.get("teaching_status", "N/A")
change = facility.get("bed_change", "N/A")
response += f"| {name} | {zone_name} | {teaching} | {change} |\n"
response += "\n"
return response if response else "No capacity data available"
@staticmethod
def _format_resource_allocation(resource_results: Dict[str, Any]) -> str:
"""Format resource allocation results"""
response = ""
if "total_staff" in resource_results:
response += f"**Total Staff**: {resource_results['total_staff']:,} FTEs\n\n"
if "staff_per_bed_ratio" in resource_results:
ratio = resource_results["staff_per_bed_ratio"]
response += f"**Staff per Bed Ratio**: {ratio:.2f}\n\n"
if ratio < 1.5:
response += "⚠️ This ratio is below recommended levels\n\n"
if "equipment_summary" in resource_results:
response += "### Equipment Summary\n\n"
for equipment, count in resource_results["equipment_summary"].items():
response += f"- {equipment}: {count:,}\n"
response += "\n"
return response if response else "No resource allocation data available"
@staticmethod
def _format_trends(trend_results: Dict[str, Any]) -> str:
"""Format trend analysis results"""
response = ""
if "year_over_year_trends" in trend_results:
response += "### Year-over-Year Changes\n\n"
response += "| Period | Absolute Change | Percentage Change |\n"
response += "|--------|-----------------|-------------------|\n"
for period, change in trend_results["year_over_year_trends"].items():
abs_change = change["absolute_change"]
pct_change = change["percentage_change"]
response += f"| {period} | {abs_change:+,} | {pct_change:+.1f}% |\n"
response += "\n"
return response if response else "No trend data available"
@staticmethod
def _format_recommendations(recommendations: List[Dict[str, str]]) -> str:
"""Format operational recommendations"""
if not recommendations:
return "No specific recommendations generated"
response = ""
for i, rec in enumerate(recommendations, 1):
response += f"### {i}. {rec['title']}\n\n"
response += f"**Priority**: {rec.get('priority', 'Medium')}\n\n"
response += f"{rec['description']}\n\n"
response += f"*Data source: {rec.get('data_source', 'Analysis results')}*\n\n"
return response
@staticmethod
def _format_integration_opportunities(opportunities: Dict[str, Any]) -> str:
"""Format future integration opportunities"""
response = ""
if "data_integration" in opportunities:
response += "### Data Integration Opportunities\n\n"
for opp in opportunities["data_integration"]:
response += f"**{opp['opportunity']}**\n\n"
response += f"{opp['description']}\n\n"
response += f"*Expected benefit: {opp['benefit']}*\n\n"
if "ai_applications" in opportunities:
response += "### AI Application Opportunities\n\n"
for opp in opportunities["ai_applications"]:
response += f"**{opp['opportunity']}**\n\n"
response += f"{opp['description']}\n\n"
response += f"*Expected benefit: {opp['benefit']}*\n\n"
if "enhanced_metrics" in opportunities:
response += "### Enhanced Metrics\n\n"
for metric in opportunities["enhanced_metrics"]:
response += f"**{metric['metric']}**\n\n"
response += f"{metric['description']}\n\n"
response += f"*Expected benefit: {metric['benefit']}*\n\n"
return response if response else "No integration opportunities identified"