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#!/usr/bin/env python
import os
import json
import logging
import sys
from fastapi import FastAPI, HTTPException, Request, Form
from fastapi.responses import HTMLResponse, JSONResponse, FileResponse
from fastapi.staticfiles import StaticFiles
from fastapi.templating import Jinja2Templates
from pydantic import BaseModel
from datetime import datetime
from datasets import Dataset, load_dataset, concatenate_datasets
from typing import Dict, Optional, Any, List
import uuid
import re # Import regex module
import html # Import html module for escaping
from urllib.parse import urlparse
from starlette.middleware.base import BaseHTTPMiddleware
from huggingface_hub import HfApi
from huggingface_hub.utils import RepositoryNotFoundError # For specific error handling
# Configure logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)
# Registry-driven field classification imports
try:
from src.aibom_generator.field_registry_manager import (
get_field_registry_manager,
generate_field_classification,
get_configurable_scoring_weights
)
REGISTRY_MANAGER = get_field_registry_manager()
FIELD_CLASSIFICATION = generate_field_classification()
SCORING_WEIGHTS = get_configurable_scoring_weights()
REGISTRY_AVAILABLE = True
logger.info(f"✅ Registry-driven API: {len(FIELD_CLASSIFICATION)} fields loaded")
except ImportError as e:
REGISTRY_AVAILABLE = False
FIELD_CLASSIFICATION = {}
SCORING_WEIGHTS = {}
logger.warning(f"⚠️ Registry not available for API: {e}")
# Define directories and constants
templates_dir = "templates"
OUTPUT_DIR = "/tmp/aibom_output"
MAX_AGE_DAYS = 7 # Remove files older than 7 days
MAX_FILES = 1000 # Keep maximum 1000 files
CLEANUP_INTERVAL = 100 # Run cleanup every 100 requests
# --- Add Counter Configuration (started as of May 3, 2025) ---
HF_REPO = "aetheris-ai/aisbom-usage-log" # User needs to create this private repo
HF_TOKEN = os.getenv("HF_TOKEN") # User must set this environment variable
# --- End Counter Configuration ---
# Create app
app = FastAPI(title="AI SBOM Generator API")
# Try different import paths
try:
from src.aibom_generator.rate_limiting import RateLimitMiddleware, ConcurrencyLimitMiddleware, RequestSizeLimitMiddleware
logger.info("Successfully imported rate_limiting from src.aibom_generator")
except ImportError:
try:
from .rate_limiting import RateLimitMiddleware, ConcurrencyLimitMiddleware, RequestSizeLimitMiddleware
logger.info("Successfully imported rate_limiting with relative import")
except ImportError:
try:
from rate_limiting import RateLimitMiddleware, ConcurrencyLimitMiddleware, RequestSizeLimitMiddleware
logger.info("Successfully imported rate_limiting from current directory")
except ImportError:
logger.error("Could not import rate_limiting, DoS protection disabled")
# Define dummy middleware classes that just pass through requests
class RateLimitMiddleware(BaseHTTPMiddleware):
def __init__(self, app, **kwargs):
super().__init__(app)
async def dispatch(self, request, call_next):
try:
return await call_next(request)
except Exception as e:
logger.error(f"Error in RateLimitMiddleware: {str(e)}")
return JSONResponse(
status_code=500,
content={"detail": f"Internal server error: {str(e)}"}
)
class ConcurrencyLimitMiddleware(BaseHTTPMiddleware):
def __init__(self, app, **kwargs):
super().__init__(app)
async def dispatch(self, request, call_next):
try:
return await call_next(request)
except Exception as e:
logger.error(f"Error in ConcurrencyLimitMiddleware: {str(e)}")
return JSONResponse(
status_code=500,
content={"detail": f"Internal server error: {str(e)}"}
)
class RequestSizeLimitMiddleware(BaseHTTPMiddleware):
def __init__(self, app, **kwargs):
super().__init__(app)
async def dispatch(self, request, call_next):
try:
return await call_next(request)
except Exception as e:
logger.error(f"Error in RequestSizeLimitMiddleware: {str(e)}")
return JSONResponse(
status_code=500,
content={"detail": f"Internal server error: {str(e)}"}
)
try:
from src.aibom_generator.captcha import verify_recaptcha
logger.info("Successfully imported captcha from src.aibom_generator")
except ImportError:
try:
from .captcha import verify_recaptcha
logger.info("Successfully imported captcha with relative import")
except ImportError:
try:
from captcha import verify_recaptcha
logger.info("Successfully imported captcha from current directory")
except ImportError:
logger.warning("Could not import captcha module, CAPTCHA verification disabled")
# Define a dummy verify_recaptcha function that always succeeds
def verify_recaptcha(response_token=None):
logger.warning("Using dummy CAPTCHA verification (always succeeds)")
return True
# Rate limiting middleware
app.add_middleware(
RateLimitMiddleware,
rate_limit_per_minute=10, # Adjust as needed
rate_limit_window=60,
protected_routes=["/generate", "/api/generate", "/api/generate-with-report"]
)
app.add_middleware(
ConcurrencyLimitMiddleware,
max_concurrent_requests=5, # Adjust based on server capacity
timeout=5.0,
protected_routes=["/generate", "/api/generate", "/api/generate-with-report"]
)
# Size limiting middleware
app.add_middleware(
RequestSizeLimitMiddleware,
max_content_length=1024*1024 # 1MB
)
# Define models
class StatusResponse(BaseModel):
status: str
version: str
generator_version: str
# Initialize templates
templates = Jinja2Templates(directory=templates_dir)
# Ensure output directory exists
os.makedirs(OUTPUT_DIR, exist_ok=True)
# Mount output directory as static files
app.mount("/output", StaticFiles(directory=OUTPUT_DIR), name="output")
# Request counter for periodic cleanup
request_counter = 0
# Import cleanup_utils using absolute import
try:
from src.aibom_generator.cleanup_utils import perform_cleanup
logger.info("Successfully imported cleanup_utils")
except ImportError:
try:
from cleanup_utils import perform_cleanup
logger.info("Successfully imported cleanup_utils from current directory")
except ImportError:
logger.error("Could not import cleanup_utils, defining functions inline")
# Define cleanup functions inline if import fails
def cleanup_old_files(directory, max_age_days=7):
"""Remove files older than max_age_days from the specified directory."""
if not os.path.exists(directory):
logger.warning(f"Directory does not exist: {directory}")
return 0
removed_count = 0
now = datetime.now()
try:
for filename in os.listdir(directory):
file_path = os.path.join(directory, filename)
if os.path.isfile(file_path):
file_age = now - datetime.fromtimestamp(os.path.getmtime(file_path))
if file_age.days > max_age_days:
try:
os.remove(file_path)
removed_count += 1
logger.info(f"Removed old file: {file_path}")
except Exception as e:
logger.error(f"Error removing file {file_path}: {e}")
logger.info(f"Cleanup completed: removed {removed_count} files older than {max_age_days} days from {directory}")
return removed_count
except Exception as e:
logger.error(f"Error during cleanup of directory {directory}: {e}")
return 0
def limit_file_count(directory, max_files=1000):
"""Ensure no more than max_files are kept in the directory (removes oldest first)."""
if not os.path.exists(directory):
logger.warning(f"Directory does not exist: {directory}")
return 0
removed_count = 0
try:
files = []
for filename in os.listdir(directory):
file_path = os.path.join(directory, filename)
if os.path.isfile(file_path):
files.append((file_path, os.path.getmtime(file_path)))
# Sort by modification time (oldest first)
files.sort(key=lambda x: x[1])
# Remove oldest files if limit is exceeded
files_to_remove = files[:-max_files] if len(files) > max_files else []
for file_path, _ in files_to_remove:
try:
os.remove(file_path)
removed_count += 1
logger.info(f"Removed excess file: {file_path}")
except Exception as e:
logger.error(f"Error removing file {file_path}: {e}")
logger.info(f"File count limit enforced: removed {removed_count} oldest files from {directory}, keeping max {max_files}")
return removed_count
except Exception as e:
logger.error(f"Error during file count limiting in directory {directory}: {e}")
return 0
def perform_cleanup(directory, max_age_days=7, max_files=1000):
"""Perform both time-based and count-based cleanup."""
time_removed = cleanup_old_files(directory, max_age_days)
count_removed = limit_file_count(directory, max_files)
return time_removed + count_removed
# Run initial cleanup
try:
removed = perform_cleanup(OUTPUT_DIR, MAX_AGE_DAYS, MAX_FILES)
logger.info(f"Initial cleanup removed {removed} files")
except Exception as e:
logger.error(f"Error during initial cleanup: {e}")
# Define middleware
@app.middleware("http" )
async def cleanup_middleware(request, call_next):
"""Middleware to periodically run cleanup."""
global request_counter
# Increment request counter
request_counter += 1
# Run cleanup periodically
if request_counter % CLEANUP_INTERVAL == 0:
logger.info(f"Running scheduled cleanup after {request_counter} requests")
try:
removed = perform_cleanup(OUTPUT_DIR, MAX_AGE_DAYS, MAX_FILES)
logger.info(f"Scheduled cleanup removed {removed} files")
except Exception as e:
logger.error(f"Error during scheduled cleanup: {e}")
# Process the request
response = await call_next(request)
return response
# --- Model ID Validation and Normalization Helpers ---
# Regex for valid Hugging Face ID parts (alphanumeric, -, _, .)
# Allows owner/model format
HF_ID_REGEX = re.compile(r"^[a-zA-Z0-9\.\-\_]+/[a-zA-Z0-9\.\-\_]+$")
def is_valid_hf_input(input_str: str) -> bool:
"""Checks if the input is a valid Hugging Face model ID or URL."""
if not input_str or len(input_str) > 200: # Basic length check
return False
if input_str.startswith(("http://", "https://") ):
try:
parsed = urlparse(input_str)
# Check domain and path structure
if parsed.netloc == "huggingface.co":
path_parts = parsed.path.strip("/").split("/")
# Must have at least owner/model, can have more like /tree/main
if len(path_parts) >= 2 and path_parts[0] and path_parts[1]:
# Check characters in the relevant parts
if re.match(r"^[a-zA-Z0-9\.\-\_]+$", path_parts[0]) and \
re.match(r"^[a-zA-Z0-9\.\-\_]+$", path_parts[1]):
return True
return False # Not a valid HF URL format
except Exception:
return False # URL parsing failed
else:
# Assume owner/model format, check with regex
return bool(HF_ID_REGEX.match(input_str))
def _normalise_model_id(raw_id: str) -> str:
"""
Accept either validated 'owner/model' or a validated full URL like
'https://huggingface.co/owner/model'. Return 'owner/model'.
Assumes input has already been validated by is_valid_hf_input.
"""
if raw_id.startswith(("http://", "https://") ):
path = urlparse(raw_id).path.lstrip("/")
parts = path.split("/")
# We know from validation that parts[0] and parts[1] exist
return f"{parts[0]}/{parts[1]}"
return raw_id # Already in owner/model format
# --- End Model ID Helpers ---
# --- Add Counter Helper Functions ---
def log_sbom_generation(model_id: str):
"""Logs a successful SBOM generation event to the Hugging Face dataset."""
if not HF_TOKEN:
logger.warning("HF_TOKEN not set. Skipping SBOM generation logging.")
return
try:
# Normalize model_id before logging
normalized_model_id_for_log = _normalise_model_id(model_id) # added to normalize id
log_data = {
"timestamp": [datetime.utcnow().isoformat()],
"event": ["generated"],
"model_id": [normalized_model_id_for_log] # use normalized_model_id_for_log
}
ds_new_log = Dataset.from_dict(log_data)
# Try to load existing dataset to append
try:
# Use trust_remote_code=True if required by the dataset/model on HF
# Corrected: Removed unnecessary backslashes around 'train'
existing_ds = load_dataset(HF_REPO, token=HF_TOKEN, split='train', trust_remote_code=True)
# Check if dataset is empty or has different columns (handle initial creation)
if len(existing_ds) > 0 and set(existing_ds.column_names) == set(log_data.keys()):
ds_to_push = concatenate_datasets([existing_ds, ds_new_log])
elif len(existing_ds) == 0:
logger.info(f"Dataset {HF_REPO} is empty. Pushing initial data.")
ds_to_push = ds_new_log
else:
logger.warning(f"Dataset {HF_REPO} has unexpected columns {existing_ds.column_names} vs {list(log_data.keys())}. Appending new log anyway, structure might differ.")
# Attempt concatenation even if columns differ slightly, HF might handle it
# Or consider more robust schema migration/handling if needed
ds_to_push = concatenate_datasets([existing_ds, ds_new_log])
except Exception as load_err:
# Handle case where dataset doesn't exist yet or other loading errors
# Corrected: Removed unnecessary backslash in doesn't
logger.info(f"Could not load existing dataset {HF_REPO} (may not exist yet): {load_err}. Pushing new dataset.")
ds_to_push = ds_new_log # ds is already prepared with the new log entry
# Push the updated or new dataset
# Corrected: Removed unnecessary backslash in it's
ds_to_push.push_to_hub(HF_REPO, token=HF_TOKEN, private=True) # Ensure it's private
logger.info(f"Successfully logged SBOM generation for {normalized_model_id_for_log} to {HF_REPO}") # use normalized model id
except Exception as e:
logger.error(f"Failed to log SBOM generation to {HF_REPO}: {e}")
def get_sbom_count() -> str:
"""Retrieves the total count of generated SBOMs from the Hugging Face dataset."""
if not HF_TOKEN:
logger.warning("HF_TOKEN not set. Cannot retrieve SBOM count.")
return "N/A"
try:
# Load the dataset - assumes 'train' split exists after first push
# Use trust_remote_code=True if required by the dataset/model on HF
# Corrected: Removed unnecessary backslashes around 'train'
ds = load_dataset(HF_REPO, token=HF_TOKEN, split='train', trust_remote_code=True)
count = len(ds)
logger.info(f"Retrieved SBOM count: {count} from {HF_REPO}")
# Format count for display (e.g., add commas for large numbers)
return f"{count:,}"
except Exception as e:
logger.error(f"Failed to retrieve SBOM count from {HF_REPO}: {e}")
# Return "N/A" or similar indicator on error
return "N/A"
# --- End Counter Helper Functions ---
@app.on_event("startup")
async def startup_event():
os.makedirs(OUTPUT_DIR, exist_ok=True)
logger.info(f"Output directory ready at {OUTPUT_DIR}")
logger.info(f"Registered routes: {[route.path for route in app.routes]}")
@app.get("/", response_class=HTMLResponse)
async def root(request: Request):
sbom_count = get_sbom_count() # Get count
try:
return templates.TemplateResponse("index.html", {"request": request, "sbom_count": sbom_count}) # Pass to template
except Exception as e:
logger.error(f"Error rendering template: {str(e)}")
# Attempt to render error page even if main page fails
try:
return templates.TemplateResponse("error.html", {"request": request, "error": f"Template rendering error: {str(e)}", "sbom_count": sbom_count})
except Exception as template_err:
# Fallback if error template also fails
logger.error(f"Error rendering error template: {template_err}")
raise HTTPException(status_code=500, detail=f"Template rendering error: {str(e)}")
@app.get("/status", response_model=StatusResponse)
async def get_status():
return StatusResponse(status="operational", version="1.0.0", generator_version="1.0.0")
# Import utils module for completeness score calculation
def import_utils():
"""Import utils module with fallback paths."""
try:
# Try different import paths
sys.path.append(os.path.dirname(os.path.dirname(os.path.abspath(__file__))))
# Try direct import first
try:
from utils import calculate_completeness_score
logger.info("Imported utils.calculate_completeness_score directly")
return calculate_completeness_score
except ImportError:
pass
# Try from src
try:
from src.aibom_generator.utils import calculate_completeness_score
logger.info("Imported src.aibom_generator.utils.calculate_completeness_score")
return calculate_completeness_score
except ImportError:
pass
# Try from aibom_generator
try:
from aibom_generator.utils import calculate_completeness_score
logger.info("Imported aibom_generator.utils.calculate_completeness_score")
return calculate_completeness_score
except ImportError:
pass
# If all imports fail, use the default implementation
logger.warning("Could not import calculate_completeness_score, using default implementation")
return None
except Exception as e:
logger.error(f"Error importing utils: {str(e)}")
return None
# Try to import the calculate_completeness_score function
calculate_completeness_score = import_utils()
# Verify registry integration status
if REGISTRY_AVAILABLE:
logger.info("✅ API fully integrated with registry system")
else:
logger.warning("⚠️ API using fallback mode - registry not available")
def get_tier_points(tier):
"""Get points for a field tier."""
tier_points = {
"critical": 4.0,
"important": 2.0,
"supplementary": 1.0
}
return tier_points.get(tier, 1.0)
def create_registry_driven_fallback():
"""Create fallback score using registry configuration."""
if not REGISTRY_AVAILABLE:
return create_hardcoded_fallback()
categories = {}
field_checklist = {}
max_scores = {}
# Get categories and scores from registry
for field_name, classification in FIELD_CLASSIFICATION.items():
category = classification["category"]
tier = classification["tier"]
# Initialize category if not exists
if category not in categories:
categories[category] = {"total": 0, "present": 0}
max_scores[category] = 0
categories[category]["total"] += 1
max_scores[category] += get_tier_points(tier)
# Add to field checklist with registry-based tier
tier_stars = {"critical": "★★★", "important": "★★", "supplementary": "★"}
field_checklist[field_name] = f"n/a {tier_stars.get(tier, '★')}"
return {
"total_score": 0,
"section_scores": {cat: 0 for cat in categories.keys()},
"max_scores": max_scores,
"field_checklist": field_checklist,
"category_details": categories
}
def create_hardcoded_fallback():
"""Fallback to original hardcoded structure when registry unavailable."""
return {
"total_score": 0,
"section_scores": {
"required_fields": 0,
"metadata": 0,
"component_basic": 0,
"component_model_card": 0,
"external_references": 0
},
"max_scores": {
"required_fields": 20,
"metadata": 20,
"component_basic": 20,
"component_model_card": 30,
"external_references": 10
},
"field_checklist": {
"bomFormat": "n/a ★★★",
"specVersion": "n/a ★★★",
"serialNumber": "n/a ★★★",
"version": "n/a ★★★",
"name": "n/a ★★★",
"downloadLocation": "n/a ★★★"
}
}
# Helper function to create a comprehensive completeness_score with field_checklist
def create_comprehensive_completeness_score(aibom=None):
"""
Create a comprehensive completeness_score object with all required attributes.
Uses registry-driven field classification when available.
"""
# If we have the calculate_completeness_score function and an AIBOM, use it
if calculate_completeness_score and aibom:
try:
return calculate_completeness_score(aibom, validate=True, use_best_practices=True)
except Exception as e:
logger.error(f"Error calculating completeness score: {str(e)}")
# Fall through to registry-driven fallback
# Use registry-driven fallback
if REGISTRY_AVAILABLE:
logger.info("Using registry-driven completeness score fallback")
return create_registry_driven_fallback()
else:
logger.warning("Using hardcoded completeness score fallback")
return create_hardcoded_fallback()
@app.post("/generate", response_class=HTMLResponse)
async def generate_form(
request: Request,
model_id: str = Form(...),
include_inference: bool = Form(False),
use_best_practices: bool = Form(True),
g_recaptcha_response: Optional[str] = Form(None)
):
# Debug log all form data
form_data = await request.form()
logger.info(f"All form data: {dict(form_data)}")
# Verify CAPTCHA
if not verify_recaptcha(g_recaptcha_response):
return templates.TemplateResponse(
"error.html", {
"request": request,
"error": "Security verification failed. Please try again.",
"sbom_count": get_sbom_count()
}
)
sbom_count = get_sbom_count() # Get count early for context
# --- Input Sanitization ---
sanitized_model_id = html.escape(model_id)
# --- Input Format Validation ---
if not is_valid_hf_input(sanitized_model_id):
error_message = "Invalid input format. Please provide a valid Hugging Face model ID (e.g., 'owner/model') or a full model URL (e.g., 'https://huggingface.co/owner/model') ."
logger.warning(f"Invalid model input format received: {model_id}") # Log original input
# Try to display sanitized input in error message
return templates.TemplateResponse(
"error.html", {"request": request, "error": error_message, "sbom_count": sbom_count, "model_id": sanitized_model_id}
)
# --- Normalize the SANITIZED and VALIDATED model ID ---
normalized_model_id = _normalise_model_id(sanitized_model_id)
# --- Check if the ID corresponds to an actual HF Model ---
try:
hf_api = HfApi()
logger.info(f"Attempting to fetch model info for: {normalized_model_id}")
model_info = hf_api.model_info(normalized_model_id)
logger.info(f"Successfully fetched model info for: {normalized_model_id}")
except RepositoryNotFoundError:
error_message = f"Error: The provided ID \"{normalized_model_id}\" could not be found on Hugging Face or does not correspond to a model repository."
logger.warning(f"Repository not found for ID: {normalized_model_id}")
return templates.TemplateResponse(
"error.html", {"request": request, "error": error_message, "sbom_count": sbom_count, "model_id": normalized_model_id}
)
except Exception as api_err: # Catch other potential API errors
error_message = f"Error verifying model ID with Hugging Face API: {str(api_err)}"
logger.error(f"HF API error for {normalized_model_id}: {str(api_err)}")
return templates.TemplateResponse(
"error.html", {"request": request, "error": error_message, "sbom_count": sbom_count, "model_id": normalized_model_id}
)
# --- End Model Existence Check ---
# --- Main Generation Logic ---
try:
# Try different import paths for AIBOMGenerator
generator = None
try:
from src.aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
try:
from aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
try:
from generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
logger.error("Could not import AIBOMGenerator from any known location")
raise ImportError("Could not import AIBOMGenerator from any known location")
# Generate AIBOM (pass SANITIZED ID)
aibom = generator.generate_aibom(
model_id=sanitized_model_id, # Use sanitized ID
include_inference=include_inference,
use_best_practices=use_best_practices
)
enhancement_report = generator.get_enhancement_report()
# Save AIBOM to file, use industry term ai_sbom in file name
# Save AIBOM to file using normalized ID
filename = f"{normalized_model_id.replace('/', '_')}_ai_sbom.json"
filepath = os.path.join(OUTPUT_DIR, filename)
with open(filepath, "w") as f:
json.dump(aibom, f, indent=2)
# --- Log Generation Event ---
log_sbom_generation(sanitized_model_id) # Use sanitized ID
sbom_count = get_sbom_count() # Refresh count after logging
# --- End Log ---
download_url = f"/output/{filename}"
# Create download and UI interaction scripts
download_script = f"""
<script>
function downloadJSON() {{
const a = document.createElement('a');
a.href = '{download_url}';
a.download = '{filename}';
document.body.appendChild(a);
a.click();
document.body.removeChild(a);
}}
function switchTab(tabId) {{
// Hide all tabs
document.querySelectorAll('.tab-content').forEach(tab => {{
tab.classList.remove('active');
}});
// Deactivate all tab buttons
document.querySelectorAll('.aibom-tab').forEach(button => {{
button.classList.remove('active');
}});
// Show the selected tab
document.getElementById(tabId).classList.add('active');
// Activate the clicked button
event.currentTarget.classList.add('active');
}}
function toggleCollapsible(element) {{
element.classList.toggle('active');
var content = element.nextElementSibling;
if (content.style.maxHeight) {{
content.style.maxHeight = null;
content.classList.remove('active');
}} else {{
content.style.maxHeight = content.scrollHeight + "px";
content.classList.add('active');
}}
}}
</script>
"""
# Get completeness score or create a comprehensive one if not available
# Use sanitized_model_id
completeness_score = None
if hasattr(generator, 'get_completeness_score'):
try:
completeness_score = generator.get_completeness_score(sanitized_model_id)
logger.info("Successfully retrieved completeness_score from generator")
except Exception as e:
logger.error(f"Completeness score error from generator: {str(e)}")
# If completeness_score is None or doesn't have field_checklist, use comprehensive one
if completeness_score is None or not isinstance(completeness_score, dict) or 'field_checklist' not in completeness_score:
logger.info("Using comprehensive completeness_score with field_checklist")
completeness_score = create_comprehensive_completeness_score(aibom)
# Ensure enhancement_report has the right structure
if enhancement_report is None:
enhancement_report = {
"ai_enhanced": False,
"ai_model": None,
"original_score": {"total_score": 0, "completeness_score": 0},
"final_score": {"total_score": 0, "completeness_score": 0},
"improvement": 0
}
else:
# Ensure original_score has completeness_score
if "original_score" not in enhancement_report or enhancement_report["original_score"] is None:
enhancement_report["original_score"] = {"total_score": 0, "completeness_score": 0}
elif "completeness_score" not in enhancement_report["original_score"]:
enhancement_report["original_score"]["completeness_score"] = enhancement_report["original_score"].get("total_score", 0)
# Ensure final_score has completeness_score
if "final_score" not in enhancement_report or enhancement_report["final_score"] is None:
enhancement_report["final_score"] = {"total_score": 0, "completeness_score": 0}
elif "completeness_score" not in enhancement_report["final_score"]:
enhancement_report["final_score"]["completeness_score"] = enhancement_report["final_score"].get("total_score", 0)
# Add display names and tooltips for score sections
display_names = {
"required_fields": "Required Fields",
"metadata": "Metadata",
"component_basic": "Component Basic Info",
"component_model_card": "Model Card",
"external_references": "External References"
}
tooltips = {
"required_fields": "Basic required fields for a valid AIBOM",
"metadata": "Information about the AIBOM itself",
"component_basic": "Basic information about the AI model component",
"component_model_card": "Detailed model card information",
"external_references": "Links to external resources"
}
weights = {
"required_fields": 20,
"metadata": 20,
"component_basic": 20,
"component_model_card": 30,
"external_references": 10
}
# DEBUG: Check for undefined values before template rendering
print("DEBUG: Checking completeness_score for undefined values:")
if completeness_score and 'section_scores' in completeness_score:
for key, value in completeness_score['section_scores'].items():
print(f" {key}: {value} (type: {type(value)})")
else:
print(" No section_scores found in completeness_score")
# DEBUG: Template data check
print("DEBUG: Template data check:")
if completeness_score:
print(f" completeness_score keys: {list(completeness_score.keys())}")
if 'category_details' in completeness_score:
print(f" category_details exists: {list(completeness_score['category_details'].keys())}")
# Use registry-driven categories when available
if REGISTRY_AVAILABLE:
categories = set(classification["category"] for classification in FIELD_CLASSIFICATION.values())
else:
categories = ['required_fields', 'metadata', 'component_basic', 'component_model_card', 'external_references']
for category in categories:
if category in completeness_score['category_details']:
details = completeness_score['category_details'][category]
print(f" {category}: present={details.get('present_fields')}, total={details.get('total_fields')}, percentage={details.get('percentage')}")
else:
print(f" {category}: MISSING from category_details")
else:
print(" category_details: NOT FOUND in completeness_score!")
else:
print(" completeness_score: IS NONE!")
# Render the template with all necessary data, with normalized model ID
return templates.TemplateResponse(
"result.html",
{
"request": request,
"model_id": normalized_model_id,
"aibom": aibom,
"enhancement_report": enhancement_report,
"completeness_score": completeness_score,
"download_url": download_url,
"download_script": download_script,
"display_names": display_names,
"tooltips": tooltips,
"weights": weights,
"sbom_count": sbom_count,
"display_names": display_names,
"tooltips": tooltips,
"weights": weights
}
)
# --- Main Exception Handling ---
except Exception as e:
logger.error(f"Error generating AI SBOM: {str(e)}")
sbom_count = get_sbom_count() # Refresh count just in case
# Pass count, added normalized model ID
return templates.TemplateResponse(
"error.html", {"request": request, "error": str(e), "sbom_count": sbom_count, "model_id": normalized_model_id}
)
@app.get("/download/{filename}")
async def download_file(filename: str):
"""
Download a generated AIBOM file.
This endpoint serves the generated AIBOM JSON files for download.
"""
file_path = os.path.join(OUTPUT_DIR, filename)
if not os.path.exists(file_path):
raise HTTPException(status_code=404, detail="File not found")
return FileResponse(
file_path,
media_type="application/json",
filename=filename
)
# Request model for JSON API
class GenerateRequest(BaseModel):
model_id: str
include_inference: bool = True
use_best_practices: bool = True
hf_token: Optional[str] = None
@app.post("/api/generate")
async def api_generate_aibom(request: GenerateRequest):
"""
Generate an AI SBOM for a specified Hugging Face model.
This endpoint accepts JSON input and returns JSON output.
"""
try:
# Sanitize and validate input
sanitized_model_id = html.escape(request.model_id)
if not is_valid_hf_input(sanitized_model_id):
raise HTTPException(status_code=400, detail="Invalid model ID format")
normalized_model_id = _normalise_model_id(sanitized_model_id)
# Verify model exists
try:
hf_api = HfApi()
model_info = hf_api.model_info(normalized_model_id)
except RepositoryNotFoundError:
raise HTTPException(status_code=404, detail=f"Model {normalized_model_id} not found on Hugging Face")
except Exception as api_err:
raise HTTPException(status_code=500, detail=f"Error verifying model: {str(api_err)}")
# Generate AIBOM
try:
# Try different import paths for AIBOMGenerator
generator = None
try:
from src.aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
try:
from aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
try:
from generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
raise HTTPException(status_code=500, detail="Could not import AIBOMGenerator")
aibom = generator.generate_aibom(
model_id=sanitized_model_id,
include_inference=request.include_inference,
use_best_practices=request.use_best_practices
)
enhancement_report = generator.get_enhancement_report()
# Save AIBOM to file
filename = f"{normalized_model_id.replace('/', '_')}_ai_sbom.json"
filepath = os.path.join(OUTPUT_DIR, filename)
with open(filepath, "w") as f:
json.dump(aibom, f, indent=2)
# Log generation
log_sbom_generation(sanitized_model_id)
# Return JSON response
return {
"aibom": aibom,
"model_id": normalized_model_id,
"generated_at": datetime.utcnow().isoformat() + "Z",
"request_id": str(uuid.uuid4()),
"download_url": f"/output/{filename}"
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Error generating AI SBOM: {str(e)}")
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Error generating AI SBOM: {str(e)}")
@app.post("/api/generate-with-report")
async def api_generate_with_report(request: GenerateRequest):
"""
Generate an AI SBOM with a completeness report.
This endpoint accepts JSON input and returns JSON output with completeness score.
"""
try:
# Sanitize and validate input
sanitized_model_id = html.escape(request.model_id)
if not is_valid_hf_input(sanitized_model_id):
raise HTTPException(status_code=400, detail="Invalid model ID format")
normalized_model_id = _normalise_model_id(sanitized_model_id)
# Verify model exists
try:
hf_api = HfApi()
model_info = hf_api.model_info(normalized_model_id)
except RepositoryNotFoundError:
raise HTTPException(status_code=404, detail=f"Model {normalized_model_id} not found on Hugging Face")
except Exception as api_err:
raise HTTPException(status_code=500, detail=f"Error verifying model: {str(api_err)}")
# Generate AIBOM
try:
# Try different import paths for AIBOMGenerator
generator = None
try:
from src.aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
try:
from aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
try:
from generator import AIBOMGenerator
generator = AIBOMGenerator()
except ImportError:
raise HTTPException(status_code=500, detail="Could not import AIBOMGenerator")
aibom = generator.generate_aibom(
model_id=sanitized_model_id,
include_inference=request.include_inference,
use_best_practices=request.use_best_practices
)
# Calculate completeness score
try:
completeness_score = calculate_completeness_score(aibom, validate=True, use_best_practices=True)
except Exception as e:
logger.error(f"Failed completeness scoring for {normalized_model_id}: {str(e)}")
raise HTTPException(status_code=500, detail=f"Error calculating score: {str(e)}")
# Round only section_scores that aren't already rounded
for section, score in completeness_score["section_scores"].items():
if isinstance(score, float) and not score.is_integer():
completeness_score["section_scores"][section] = round(score, 1)
# Convert field_checklist to machine-parseable format
if "field_checklist" in completeness_score:
machine_parseable_checklist = {}
for field, value in completeness_score["field_checklist"].items():
# Extract presence (✔/✘) and importance (★★★/★★/★)
present = "present" if "✔" in value else "missing"
# Use field_tiers for importance since it's already machine-parseable
importance = completeness_score["field_tiers"].get(field, "unknown")
# Create structured entry
machine_parseable_checklist[field] = {
"status": present,
"importance": importance
}
# Replace the original field_checklist with the machine-parseable version
completeness_score["field_checklist"] = machine_parseable_checklist
# Remove field_tiers to avoid duplication (now incorporated in field_checklist)
completeness_score.pop("field_tiers", None)
# Save AIBOM to file
filename = f"{normalized_model_id.replace('/', '_')}_ai_sbom.json"
filepath = os.path.join(OUTPUT_DIR, filename)
with open(filepath, "w") as f:
json.dump(aibom, f, indent=2)
# Log generation
log_sbom_generation(sanitized_model_id)
# Return JSON response with improved completeness score
return {
"aibom": aibom,
"model_id": normalized_model_id,
"generated_at": datetime.utcnow().isoformat() + "Z",
"request_id": str(uuid.uuid4()),
"download_url": f"/output/{filename}",
"completeness_score": completeness_score
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Error generating AI SBOM: {str(e)}")
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Error generating AI SBOM: {str(e)}")
@app.get("/api/models/{model_id:path}/score" )
async def get_model_score(
model_id: str,
hf_token: Optional[str] = None,
use_best_practices: bool = True
):
"""
Get the completeness score for a model without generating a full AIBOM.
"""
try:
# Sanitize and validate input
sanitized_model_id = html.escape(model_id)
if not is_valid_hf_input(sanitized_model_id):
raise HTTPException(status_code=400, detail="Invalid model ID format")
normalized_model_id = _normalise_model_id(sanitized_model_id)
# Verify model exists
try:
hf_api = HfApi(token=hf_token)
model_info = hf_api.model_info(normalized_model_id)
except RepositoryNotFoundError:
raise HTTPException(status_code=404, detail=f"Model {normalized_model_id} not found on Hugging Face")
except Exception as api_err:
raise HTTPException(status_code=500, detail=f"Error verifying model: {str(api_err)}")
# Generate minimal AIBOM for scoring
try:
# Try different import paths for AIBOMGenerator
generator = None
try:
from src.aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator(hf_token=hf_token)
except ImportError:
try:
from aibom_generator.generator import AIBOMGenerator
generator = AIBOMGenerator(hf_token=hf_token)
except ImportError:
try:
from generator import AIBOMGenerator
generator = AIBOMGenerator(hf_token=hf_token)
except ImportError:
raise HTTPException(status_code=500, detail="Could not import AIBOMGenerator")
# Generate minimal AIBOM
aibom = generator.generate_aibom(
model_id=sanitized_model_id,
include_inference=False, # No need for inference for just scoring
use_best_practices=use_best_practices
)
# Calculate score
score = calculate_completeness_score(aibom, validate=True, use_best_practices=use_best_practices)
# Log SBOM generation for counting purposes
log_sbom_generation(normalized_model_id)
# Round section scores for better readability
for section, value in score["section_scores"].items():
if isinstance(value, float) and not value.is_integer():
score["section_scores"][section] = round(float(value), 1) if value is not None and value != "Undefined" else 0.0
# Return score information
return {
"total_score": score["total_score"],
"section_scores": score["section_scores"],
"max_scores": score["max_scores"]
}
except Exception as e:
raise HTTPException(status_code=500, detail=f"Error calculating model score: {str(e)}")
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Error processing request: {str(e)}")
# Batch request model
class BatchRequest(BaseModel):
model_ids: List[str]
include_inference: bool = True
use_best_practices: bool = True
hf_token: Optional[str] = None
# In-memory storage for batch jobs
batch_jobs = {}
@app.post("/api/batch")
async def batch_generate(request: BatchRequest):
"""
Start a batch job to generate AIBOMs for multiple models.
"""
try:
# Validate model IDs
valid_model_ids = []
for model_id in request.model_ids:
sanitized_id = html.escape(model_id)
if is_valid_hf_input(sanitized_id):
valid_model_ids.append(sanitized_id)
else:
logger.warning(f"Skipping invalid model ID: {model_id}")
if not valid_model_ids:
raise HTTPException(status_code=400, detail="No valid model IDs provided")
# Create job ID
job_id = str(uuid.uuid4())
created_at = datetime.utcnow()
# Store job information
batch_jobs[job_id] = {
"job_id": job_id,
"status": "queued",
"model_ids": valid_model_ids,
"created_at": created_at.isoformat() + "Z",
"completed": 0,
"total": len(valid_model_ids),
"results": {}
}
# Would be best to start a background task here but for now marking it as "processing"
batch_jobs[job_id]["status"] = "processing"
return {
"job_id": job_id,
"status": "queued",
"model_ids": valid_model_ids,
"created_at": created_at.isoformat() + "Z"
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Error creating batch job: {str(e)}")
@app.get("/api/batch/{job_id}")
async def get_batch_status(job_id: str):
"""
Check the status of a batch job.
"""
if job_id not in batch_jobs:
raise HTTPException(status_code=404, detail=f"Batch job {job_id} not found")
return batch_jobs[job_id]
# If running directly (for local testing)
if __name__ == "__main__":
import uvicorn
# Ensure HF_TOKEN is set for local testing if needed
if not HF_TOKEN:
print("Warning: HF_TOKEN environment variable not set. SBOM count will show N/A and logging will be skipped.")
uvicorn.run(app, host="0.0.0.0", port=8000)
@app.get("/api/registry/status")
async def get_registry_status():
"""Get current registry configuration status for debugging."""
if REGISTRY_AVAILABLE:
categories = {}
for field_name, classification in FIELD_CLASSIFICATION.items():
category = classification["category"]
if category not in categories:
categories[category] = 0
categories[category] += 1
return {
"registry_available": True,
"total_fields": len(FIELD_CLASSIFICATION),
"categories": list(categories.keys()),
"field_count_by_category": categories,
"registry_manager_loaded": REGISTRY_MANAGER is not None
}
else:
return {
"registry_available": False,
"fallback_mode": True,
"message": "Using hardcoded field definitions",
"total_fields": 6 # Hardcoded fallback count
}