fadhelcherif
Finalize deployment: local model only and fixed sheets source
8a13094
import os
import json
import csv
import time
import re
from difflib import SequenceMatcher
from io import BytesIO
from io import StringIO
from pathlib import Path
from typing import Any, Dict, List, Optional, Tuple
from urllib.parse import parse_qs, urlparse
import requests
import torch
import timm
from flask import Flask, render_template, request
from PIL import Image
from torchvision import transforms
from torchvision import models as tv_models
from torchvision.transforms import InterpolationMode
from werkzeug.utils import secure_filename
BASE_DIR = Path(__file__).resolve().parent
MODEL_PATH = BASE_DIR / "car_model.pth"
UPLOAD_DIR = BASE_DIR / "static" / "uploads"
ALLOWED_EXTENSIONS = {"png", "jpg", "jpeg", "webp"}
IMG_SIZE = 300
DEFAULT_CURRENCY = "DT"
SCRAPED_DATA_PATH = Path(os.getenv("SCRAPED_DATA_PATH", str(BASE_DIR / "cars_data.json")))
SCRAPED_DATA_URL = os.getenv("SCRAPED_DATA_URL", "").strip()
GOOGLE_SHEETS_CSV_URL = (
"https://docs.google.com/spreadsheets/d/1xSv2tbqVddoh2ID78onbnjRjRQq46ThOsDEeHUc2a6I/edit?usp=sharing"
)
SHEETS_REFRESH_SECONDS = int(os.getenv("SHEETS_REFRESH_SECONDS", "300"))
N8N_WEBHOOK_URL = os.getenv("N8N_WEBHOOK_URL", "").strip()
N8N_TIMEOUT_SECONDS = int(os.getenv("N8N_TIMEOUT_SECONDS", "15"))
_SHEETS_CACHE_ITEMS: List[Dict[str, Any]] = []
_SHEETS_CACHE_AT: float = 0.0
def ensure_model_available() -> Path:
if MODEL_PATH.exists():
return MODEL_PATH
raise FileNotFoundError(
f"Model file was not found: {MODEL_PATH}. Place car_model.pth in the project folder before starting the app."
)
def build_eval_transform() -> transforms.Compose:
return transforms.Compose(
[
transforms.Resize(int(IMG_SIZE * 1.12), interpolation=InterpolationMode.BICUBIC),
transforms.CenterCrop(IMG_SIZE),
transforms.ToTensor(),
transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]),
]
)
def infer_num_classes(state_dict: Dict[str, torch.Tensor], default: int = 196) -> int:
for head_key in ("classifier.weight", "fc.weight"):
if head_key in state_dict and hasattr(state_dict[head_key], "shape"):
return int(state_dict[head_key].shape[0])
return default
def looks_like_efficientnet(keys: List[str]) -> bool:
return any(k.startswith("conv_stem") or k.startswith("blocks.") for k in keys)
def looks_like_resnet(keys: List[str]) -> bool:
return any(k.startswith("layer1.") or k.startswith("fc.") or k.startswith("conv1.") for k in keys)
def pick_resnet_variant(keys: List[str]) -> str:
if any(".conv3." in k for k in keys):
return "resnet50"
max_layer3_block = -1
for k in keys:
if k.startswith("layer3."):
parts = k.split(".")
if len(parts) >= 2 and parts[1].isdigit():
max_layer3_block = max(max_layer3_block, int(parts[1]))
return "resnet34" if max_layer3_block >= 3 else "resnet18"
def load_label_mapping(num_classes: int) -> Dict[int, str]:
# Try to fetch Stanford Cars label names. If unavailable, use generic labels.
try:
from datasets import load_dataset_builder
builder = load_dataset_builder("tanganke/stanford_cars")
names = builder.info.features["label"].names
if len(names) == num_classes:
return {i: n for i, n in enumerate(names)}
except Exception:
pass
return {i: f"class_{i}" for i in range(num_classes)}
def load_model_and_labels() -> Tuple[torch.nn.Module, torch.device, transforms.Compose, Dict[int, str]]:
model_path = ensure_model_available()
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
try:
ckpt = torch.load(model_path, map_location="cpu", weights_only=False)
except TypeError:
ckpt = torch.load(model_path, map_location="cpu")
state_dict = ckpt.get("state_dict", ckpt) if isinstance(ckpt, dict) else ckpt
# Remove DataParallel prefix if present.
state_dict = {
(k.replace("module.", "", 1) if k.startswith("module.") else k): v
for k, v in state_dict.items()
}
keys = list(state_dict.keys())
num_classes = infer_num_classes(state_dict)
if looks_like_efficientnet(keys):
model = timm.create_model("efficientnetv2_rw_m", pretrained=False, num_classes=num_classes)
elif looks_like_resnet(keys):
variant = pick_resnet_variant(keys)
model = getattr(tv_models, variant)(weights=None, num_classes=num_classes)
else:
raise RuntimeError("Could not infer model architecture from checkpoint keys.")
model.load_state_dict(state_dict, strict=True)
model.to(device)
model.eval()
idx_to_class = load_label_mapping(num_classes)
eval_transform = build_eval_transform()
return model, device, eval_transform, idx_to_class
def allowed_file(filename: str) -> bool:
return "." in filename and filename.rsplit(".", 1)[1].lower() in ALLOWED_EXTENSIONS
def predict_topk(
model: torch.nn.Module,
image: Image.Image,
image_transform: transforms.Compose,
idx_to_class: Dict[int, str],
device: torch.device,
k: int = 3,
) -> List[Tuple[str, float]]:
if image.mode != "RGB":
image = image.convert("RGB")
with torch.inference_mode():
x = image_transform(image).unsqueeze(0).to(device)
logits = model(x)
probs = torch.softmax(logits, dim=1)
top_prob, top_cls = torch.topk(probs, k=k)
results: List[Tuple[str, float]] = []
for rank in range(k):
cls_id = int(top_cls[0][rank].item())
confidence = float(top_prob[0][rank].item())
label = idx_to_class.get(cls_id, f"class_{cls_id}")
results.append((label, confidence))
return results
def _normalize_label(value: str) -> str:
return " ".join(value.lower().strip().split())
def _normalize_for_match(value: str) -> str:
cleaned = _normalize_label(value)
cleaned = re.sub(r"\b(19|20)\d{2}\b", " ", cleaned)
cleaned = re.sub(r"[^a-z0-9 ]+", " ", cleaned)
return " ".join(cleaned.split())
def _token_set(value: str) -> set:
stop_words = {
"sedan",
"hatchback",
"coupe",
"convertible",
"cabriolet",
"wagon",
"suv",
"van",
}
return {token for token in _normalize_for_match(value).split() if token and token not in stop_words}
def _extract_items_from_json(payload: Any) -> List[Dict[str, Any]]:
if isinstance(payload, list):
return [item for item in payload if isinstance(item, dict)]
if isinstance(payload, dict):
for key in ("cars", "prices", "results", "data", "items"):
value = payload.get(key)
if isinstance(value, list):
return [item for item in value if isinstance(item, dict)]
return []
def _extract_label(item: Dict[str, Any]) -> str:
for key in ("label", "name", "model", "title", "car_name"):
value = item.get(key)
if value:
return str(value)
return ""
def _extract_price(item: Dict[str, Any]) -> Any:
for key in ("price", "avg_price", "current_price", "amount"):
if key in item:
return item.get(key)
return None
def _coerce_price_number(value: Any) -> float | None:
if isinstance(value, (int, float)):
return float(value)
if value is None:
return None
text = str(value).strip().replace("\u00a0", " ")
if not text:
return None
cleaned = re.sub(r"[^0-9,.-]", "", text)
if not cleaned:
return None
if "," in cleaned and "." in cleaned:
if cleaned.rfind(",") > cleaned.rfind("."):
cleaned = cleaned.replace(".", "").replace(",", ".")
else:
cleaned = cleaned.replace(",", "")
elif "," in cleaned and "." not in cleaned:
cleaned = cleaned.replace(",", "")
try:
return float(cleaned)
except ValueError:
return None
def _format_average_price(value: float) -> Any:
rounded_int = round(value)
if abs(value - rounded_int) < 1e-9:
return int(rounded_int)
return round(value, 2)
def _normalize_data_source_url(url: str) -> str:
parsed = urlparse(url)
if "drive.google.com" not in parsed.netloc.lower():
return url
path_parts = [part for part in parsed.path.split("/") if part]
if len(path_parts) >= 3 and path_parts[0] == "file" and path_parts[1] == "d":
file_id = path_parts[2]
return f"https://drive.google.com/uc?export=download&id={file_id}"
query_values = parse_qs(parsed.query)
file_id_values = query_values.get("id", [])
if file_id_values:
file_id = file_id_values[0]
return f"https://drive.google.com/uc?export=download&id={file_id}"
return url
def _normalize_google_sheets_csv_url(url: str) -> str:
parsed = urlparse(url)
if "docs.google.com" not in parsed.netloc.lower() or "/spreadsheets/" not in parsed.path:
return url
path_parts = [part for part in parsed.path.split("/") if part]
sheet_id = ""
if len(path_parts) >= 3 and path_parts[0] == "spreadsheets" and path_parts[1] == "d":
sheet_id = path_parts[2]
if not sheet_id:
return url
query_values = parse_qs(parsed.query)
gid_values = query_values.get("gid", [])
gid = gid_values[0] if gid_values else "0"
if parsed.fragment and "gid=" in parsed.fragment:
fragment_qs = parse_qs(parsed.fragment)
gid = fragment_qs.get("gid", [gid])[0]
return f"https://docs.google.com/spreadsheets/d/{sheet_id}/export?format=csv&gid={gid}"
def _load_items_from_google_sheets() -> Tuple[List[Dict[str, Any]], str]:
global _SHEETS_CACHE_ITEMS, _SHEETS_CACHE_AT
if not GOOGLE_SHEETS_CSV_URL:
return [], "GOOGLE_SHEETS_CSV_URL is empty."
now = time.time()
if _SHEETS_CACHE_ITEMS and (now - _SHEETS_CACHE_AT) < SHEETS_REFRESH_SECONDS:
return _SHEETS_CACHE_ITEMS, ""
resolved_url = _normalize_google_sheets_csv_url(GOOGLE_SHEETS_CSV_URL)
try:
response = requests.get(
resolved_url,
timeout=15,
headers={"User-Agent": "Mozilla/5.0"},
)
response.raise_for_status()
except Exception as exc:
return [], f"Could not read Google Sheets CSV: {exc}"
try:
reader = csv.DictReader(StringIO(response.text))
items = [dict(row) for row in reader if isinstance(row, dict)]
except Exception as exc:
return [], f"Could not parse Google Sheets CSV: {exc}"
if not items:
return [], "Google Sheets CSV loaded, but no rows were found."
_SHEETS_CACHE_ITEMS = items
_SHEETS_CACHE_AT = now
return items, ""
def _load_scraped_payload() -> Tuple[Any, str]:
if SCRAPED_DATA_URL:
resolved_url = _normalize_data_source_url(SCRAPED_DATA_URL)
try:
response = requests.get(
resolved_url,
timeout=15,
headers={"User-Agent": "Mozilla/5.0"},
)
response.raise_for_status()
return response.json(), ""
except Exception as exc:
return None, f"Could not read JSON from SCRAPED_DATA_URL: {exc}"
if not SCRAPED_DATA_PATH.exists():
return None, f"Scraped data file not found at {SCRAPED_DATA_PATH}."
try:
with SCRAPED_DATA_PATH.open("r", encoding="utf-8") as fh:
return json.load(fh), ""
except Exception as exc:
return None, f"Could not read scraped JSON from file: {exc}"
def _best_match_price(label: str, price_map: Dict[str, Dict[str, object]]) -> Dict[str, object]:
normalized_label = _normalize_label(label)
if normalized_label in price_map:
return price_map[normalized_label]
# Fallback matching for scraped labels that are not exact model names.
for key, value in price_map.items():
if normalized_label in key or key in normalized_label:
return value
label_match = _normalize_for_match(label)
label_tokens = _token_set(label)
best_score = 0.0
best_value: Dict[str, object] = {}
for key, value in price_map.items():
key_match = _normalize_for_match(key)
key_tokens = _token_set(key)
if not key_match:
continue
sequence_score = SequenceMatcher(None, label_match, key_match).ratio()
token_score = 0.0
if label_tokens and key_tokens:
intersection = len(label_tokens.intersection(key_tokens))
union = len(label_tokens.union(key_tokens))
token_score = intersection / union if union else 0.0
score = max(sequence_score, token_score)
if score > best_score:
best_score = score
best_value = value
# Keep threshold conservative to avoid wrong prices on unrelated models.
if best_score >= 0.45:
return best_value
return {}
def _build_price_lookup(items: List[Dict[str, Any]]) -> Tuple[Dict[str, Dict[str, object]], List[Dict[str, object]]]:
price_map: Dict[str, Dict[str, object]] = {}
ordered_prices: List[Dict[str, object]] = []
grouped: Dict[str, Dict[str, Any]] = {}
for item in items:
label = _extract_label(item).strip()
price = _extract_price(item)
currency = item.get("currency", DEFAULT_CURRENCY)
ordered_prices.append({"price": price, "currency": currency})
if label:
key = _normalize_label(label)
entry = grouped.setdefault(
key,
{
"sum": 0.0,
"count": 0,
"last_price": price,
"currency": currency,
},
)
numeric_price = _coerce_price_number(price)
if numeric_price is not None:
entry["sum"] += numeric_price
entry["count"] += 1
entry["last_price"] = price
if currency:
entry["currency"] = currency
for key, entry in grouped.items():
if entry["count"] > 0:
avg_price = _format_average_price(entry["sum"] / entry["count"])
else:
avg_price = entry["last_price"]
price_map[key] = {
"price": avg_price,
"currency": entry["currency"],
}
return price_map, ordered_prices
def fetch_prices_from_n8n(predicted_labels: List[str]) -> Tuple[Dict[str, Dict[str, object]], List[Dict[str, object]], str]:
if not predicted_labels:
return {}, [], ""
if not N8N_WEBHOOK_URL:
return {}, [], "N8N_WEBHOOK_URL is empty."
payload: Any = None
errors: List[str] = []
candidate_urls = [N8N_WEBHOOK_URL]
if "/webhook/" in N8N_WEBHOOK_URL:
candidate_urls.append(N8N_WEBHOOK_URL.replace("/webhook/", "/webhook-test/", 1))
elif "/webhook-test/" in N8N_WEBHOOK_URL:
candidate_urls.append(N8N_WEBHOOK_URL.replace("/webhook-test/", "/webhook/", 1))
for url in candidate_urls:
try:
response = requests.post(
url,
json={"predictions": predicted_labels},
timeout=N8N_TIMEOUT_SECONDS,
headers={"User-Agent": "Mozilla/5.0"},
)
response.raise_for_status()
payload = response.json()
break
except Exception as exc:
errors.append(f"{url}: {exc}")
if payload is None:
return {}, [], "Could not fetch price data from n8n. " + " | ".join(errors[:2])
items = _extract_items_from_json(payload)
if not items:
return {}, [], "n8n returned JSON, but no car items were found."
price_map, ordered_prices = _build_price_lookup(items)
return price_map, ordered_prices, ""
def fetch_prices_from_json(predicted_labels: List[str]) -> Tuple[Dict[str, Dict[str, object]], List[Dict[str, object]], str]:
if not predicted_labels:
return {}, [], ""
payload, load_error = _load_scraped_payload()
if load_error:
return {}, [], load_error
items = _extract_items_from_json(payload)
if not items:
return {}, [], "JSON file loaded, but no car items were found."
price_map, ordered_prices = _build_price_lookup(items)
return price_map, ordered_prices, ""
def fetch_prices_from_google_sheets(predicted_labels: List[str]) -> Tuple[Dict[str, Dict[str, object]], List[Dict[str, object]], str]:
if not predicted_labels:
return {}, [], ""
items, sheets_error = _load_items_from_google_sheets()
if sheets_error:
return {}, [], sheets_error
price_map, ordered_prices = _build_price_lookup(items)
return price_map, ordered_prices, ""
app = Flask(__name__)
app.config["UPLOAD_FOLDER"] = str(UPLOAD_DIR)
UPLOAD_DIR.mkdir(parents=True, exist_ok=True)
_MODEL: Optional[torch.nn.Module] = None
_DEVICE: Optional[torch.device] = None
_EVAL_TRANSFORM: Optional[transforms.Compose] = None
_IDX_TO_CLASS: Optional[Dict[int, str]] = None
def get_runtime_model_objects() -> Tuple[torch.nn.Module, torch.device, transforms.Compose, Dict[int, str]]:
global _MODEL, _DEVICE, _EVAL_TRANSFORM, _IDX_TO_CLASS
if _MODEL is None or _DEVICE is None or _EVAL_TRANSFORM is None or _IDX_TO_CLASS is None:
_MODEL, _DEVICE, _EVAL_TRANSFORM, _IDX_TO_CLASS = load_model_and_labels()
return _MODEL, _DEVICE, _EVAL_TRANSFORM, _IDX_TO_CLASS
@app.route("/", methods=["GET", "POST"])
def index():
error = None
results = None
image_url = None
integration_warning = None
if request.method == "POST":
try:
image_link = request.form.get("image_link", "").strip()
file = request.files.get("image")
if image_link:
response = requests.get(
image_link,
timeout=12,
headers={"User-Agent": "Mozilla/5.0"},
)
response.raise_for_status()
image = Image.open(BytesIO(response.content))
image_url = image_link
else:
if not file or file.filename == "":
error = "Please upload an image or paste an image link."
return render_template("index.html", error=error, results=results, image_url=image_url)
if not allowed_file(file.filename):
error = "Unsupported file type. Use png, jpg, jpeg, or webp."
return render_template("index.html", error=error, results=results, image_url=image_url)
safe_name = secure_filename(file.filename)
save_path = UPLOAD_DIR / safe_name
file.save(save_path)
image = Image.open(save_path)
image_url = f"/static/uploads/{safe_name}"
model, device, eval_transform, idx_to_class = get_runtime_model_objects()
raw_results = predict_topk(model, image, eval_transform, idx_to_class, device, k=3)
labels = [label for label, _ in raw_results]
price_map, ordered_prices, price_warning = fetch_prices_from_google_sheets(labels)
if price_warning:
json_price_map, json_ordered_prices, json_warning = fetch_prices_from_json(labels)
if json_price_map or json_ordered_prices:
price_map, ordered_prices = json_price_map, json_ordered_prices
price_warning = (
"Google Sheets failed, using JSON fallback. "
+ price_warning
)
elif json_warning:
price_warning = price_warning + " JSON fallback also failed: " + json_warning
if price_warning:
integration_warning = (
"Price data warning: "
+ price_warning
+ " Check the embedded Google Sheets URL or use SCRAPED_DATA_URL/SCRAPED_DATA_PATH."
)
results = []
for i, (label, _) in enumerate(raw_results, start=1):
price_info = _best_match_price(label, price_map)
results.append(
{
"pick": i,
"label": label,
"price": price_info.get("price"),
"currency": price_info.get("currency", DEFAULT_CURRENCY),
}
)
except Exception as exc:
error = f"Prediction failed: {exc}"
return render_template(
"index.html",
error=error,
results=results,
image_url=image_url,
integration_warning=integration_warning,
)
@app.get("/health")
def health() -> Tuple[Dict[str, str], int]:
return {"status": "ok"}, 200
if __name__ == "__main__":
app.run(host="0.0.0.0", port=int(os.getenv("PORT", "7860")))