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"""
PriceOye Phone Recommendation AI
=================================
Scoring Engine β€” Professional ML Benchmark System

Benchmarks (hidden from user, used internally only):
  - Android: Samsung Galaxy S26 Ultra
  - iOS:     iPhone 17 Pro Max

Each phone is scored across 10 categories Γ— multiple sub-dimensions.
Final score = weighted sum of category averages per user priority profile.
"""

from dataclasses import dataclass, field
from typing import Optional
import math


# ─────────────────────────────────────────────
#  DATA STRUCTURES
# ─────────────────────────────────────────────

@dataclass
class SubDimension:
    score: float        # 0.0 – 10.0
    note: str           # Human-readable justification


@dataclass
class PhoneDimensions:
    """All benchmark sub-dimensions for a phone."""
    # Camera (9 sub-dims)
    camera_main_sensor: SubDimension
    camera_aperture: SubDimension
    camera_optical_zoom: SubDimension
    camera_ultrawide: SubDimension
    camera_video: SubDimension
    camera_night_mode: SubDimension
    camera_front: SubDimension
    camera_lens_quality: SubDimension
    camera_ois: SubDimension

    # Performance (5 sub-dims)
    perf_cpu: SubDimension
    perf_gpu: SubDimension
    perf_ram_type: SubDimension
    perf_thermal: SubDimension
    perf_ai_chip: SubDimension

    # Display (6 sub-dims)
    disp_resolution: SubDimension
    disp_brightness: SubDimension
    disp_color_accuracy: SubDimension
    disp_refresh_rate: SubDimension
    disp_technology: SubDimension
    disp_touch_sampling: SubDimension

    # Battery (4 sub-dims)
    batt_capacity: SubDimension
    batt_real_world_sot: SubDimension
    batt_efficiency: SubDimension
    batt_wireless: SubDimension

    # Charging (4 sub-dims)
    charg_wired_speed: SubDimension
    charg_wireless_speed: SubDimension
    charg_reverse: SubDimension
    charg_inbox_charger: SubDimension

    # RAM (3 sub-dims)
    ram_capacity: SubDimension
    ram_type: SubDimension
    ram_os_management: SubDimension

    # Storage (3 sub-dims)
    stor_capacity: SubDimension
    stor_speed: SubDimension
    stor_expandable: SubDimension

    # Build (4 sub-dims)
    build_frame: SubDimension
    build_ip_rating: SubDimension
    build_front_glass: SubDimension
    build_form_factor: SubDimension

    # Software (4 sub-dims)
    soft_update_policy: SubDimension
    soft_bloatware: SubDimension
    soft_ai_features: SubDimension
    soft_ecosystem: SubDimension

    # Audio (3 sub-dims)
    audio_speakers: SubDimension
    audio_headphone_jack: SubDimension
    audio_bt_codecs: SubDimension


@dataclass
class Phone:
    id: str
    name: str
    brand: str
    os: str                    # 'android' | 'ios'
    price_pkr: int
    price_label: str
    priceoye_url: str
    whatmobile_url: str
    emoji: str
    tags: list[str]
    highlights: dict[str, str]
    dims: PhoneDimensions
    available_on_priceoye: bool = True


@dataclass
class UserPreferences:
    budget: Optional[int] = None
    os_preference: Optional[str] = None   # 'android' | 'ios' | 'any'
    priority: Optional[str] = None        # see WEIGHT_PROFILES keys
    brand_preference: Optional[str] = None  # e.g. 'Samsung', 'Apple'
    brand_avoid: list[str] = field(default_factory=list)
    session_memory: dict = field(default_factory=dict)  # cross-turn memory


# ─────────────────────────────────────────────
#  CATEGORY AVERAGES
# ─────────────────────────────────────────────

CATEGORY_GROUPS = {
    "camera": [
        "camera_main_sensor", "camera_aperture", "camera_optical_zoom",
        "camera_ultrawide", "camera_video", "camera_night_mode",
        "camera_front", "camera_lens_quality", "camera_ois",
    ],
    "performance": [
        "perf_cpu", "perf_gpu", "perf_ram_type",
        "perf_thermal", "perf_ai_chip",
    ],
    "display": [
        "disp_resolution", "disp_brightness", "disp_color_accuracy",
        "disp_refresh_rate", "disp_technology", "disp_touch_sampling",
    ],
    "battery": [
        "batt_capacity", "batt_real_world_sot",
        "batt_efficiency", "batt_wireless",
    ],
    "charging": [
        "charg_wired_speed", "charg_wireless_speed",
        "charg_reverse", "charg_inbox_charger",
    ],
    "ram": ["ram_capacity", "ram_type", "ram_os_management"],
    "storage": ["stor_capacity", "stor_speed", "stor_expandable"],
    "build": [
        "build_frame", "build_ip_rating",
        "build_front_glass", "build_form_factor",
    ],
    "software": [
        "soft_update_policy", "soft_bloatware",
        "soft_ai_features", "soft_ecosystem",
    ],
    "audio": [
        "audio_speakers", "audio_headphone_jack", "audio_bt_codecs",
    ],
}


def get_category_scores(phone: Phone) -> dict[str, float]:
    """Return average score per category."""
    scores = {}
    for cat, fields in CATEGORY_GROUPS.items():
        vals = [getattr(phone.dims, f).score for f in fields]
        scores[cat] = round(sum(vals) / len(vals), 2)
    return scores


def get_sub_scores(phone: Phone, category: str) -> list[dict]:
    """Return detailed sub-dimension breakdown for a category."""
    fields = CATEGORY_GROUPS.get(category, [])
    result = []
    for f in fields:
        dim: SubDimension = getattr(phone.dims, f)
        label = f.replace(f.split("_")[0] + "_", "").replace("_", " ").title()
        result.append({
            "label": label,
            "score": dim.score,
            "note": dim.note,
        })
    return result


# ─────────────────────────────────────────────
#  WEIGHT PROFILES
#  Must sum to 1.0 per profile
# ─────────────────────────────────────────────

WEIGHT_PROFILES: dict[str, dict[str, float]] = {
    "photography": {
        "camera": 0.45, "display": 0.15, "storage": 0.10,
        "performance": 0.10, "battery": 0.06, "build": 0.05,
        "software": 0.04, "charging": 0.02, "ram": 0.02, "audio": 0.01,
    },
    "gaming": {
        "performance": 0.30, "display": 0.20, "ram": 0.15,
        "battery": 0.12, "charging": 0.08, "audio": 0.05,
        "build": 0.05, "camera": 0.03, "software": 0.01, "storage": 0.01,
    },
    "battery": {
        "battery": 0.30, "charging": 0.25, "performance": 0.15,
        "display": 0.10, "ram": 0.07, "camera": 0.06,
        "build": 0.04, "software": 0.02, "storage": 0.01, "audio": 0.00,
    },
    "value": {
        "camera": 0.18, "performance": 0.18, "battery": 0.15,
        "display": 0.12, "charging": 0.10, "storage": 0.10,
        "build": 0.07, "software": 0.05, "ram": 0.03, "audio": 0.02,
    },
    "business": {
        "software": 0.25, "performance": 0.20, "display": 0.15,
        "build": 0.12, "camera": 0.10, "battery": 0.08,
        "ram": 0.05, "charging": 0.03, "storage": 0.01, "audio": 0.01,
    },
    "balanced": {
        "camera": 0.18, "performance": 0.17, "battery": 0.14,
        "display": 0.13, "charging": 0.10, "build": 0.09,
        "software": 0.08, "ram": 0.05, "storage": 0.04, "audio": 0.02,
    },
    "ios": {
        "software": 0.25, "camera": 0.22, "performance": 0.18,
        "build": 0.12, "display": 0.10, "battery": 0.07,
        "ram": 0.03, "charging": 0.02, "storage": 0.01, "audio": 0.00,
    },
}


# ─────────────────────────────────────────────
#  CORE SCORING FUNCTION
# ─────────────────────────────────────────────

IPHONE_MIN_PRICE = 280000  # Minimum realistic iPhone price in Pakistan (PKR)


def score_phone(
    phone: Phone,
    prefs: UserPreferences,
    phone_db: list["Phone"],
) -> float:
    """
    Returns a float score 0–10 for this phone against user preferences.
    Returns -1 if the phone is ineligible.
    """
    if not phone.available_on_priceoye:
        return -1.0

    # OS filter
    if prefs.os_preference == "ios" and phone.os != "ios":
        return -1.0
    if prefs.os_preference == "android" and phone.os != "android":
        return -1.0

    # Budget filter β€” auto-exclude iPhones if budget too low
    if prefs.budget:
        if phone.os == "ios" and prefs.budget < IPHONE_MIN_PRICE:
            return -1.0
        if phone.price_pkr > prefs.budget * 1.12:  # 12% tolerance
            return -1.0

    # Brand preference boost
    brand_boost = 0.0
    if prefs.brand_preference and phone.brand.lower() == prefs.brand_preference.lower():
        brand_boost = 0.3
    if phone.brand in prefs.brand_avoid:
        return -1.0

    # Get weights
    weights = WEIGHT_PROFILES.get(prefs.priority or "balanced", WEIGHT_PROFILES["balanced"])

    # Compute weighted score
    cat_scores = get_category_scores(phone)
    total = sum(cat_scores[cat] * w for cat, w in weights.items())

    # Savings bonus (mild β€” specs should dominate)
    if prefs.budget and prefs.budget > 0:
        savings_ratio = max(0.0, 1.0 - phone.price_pkr / prefs.budget)
        total += savings_ratio * 0.15

    return round(min(10.0, total + brand_boost), 2)


def recommend(
    prefs: UserPreferences,
    phone_db: list["Phone"],
    count: int = 1,
) -> list[tuple["Phone", float]]:
    """
    Returns top-N phones scored for the given preferences.
    Each item is (phone, final_score).
    """
    scored = []
    for phone in phone_db:
        s = score_phone(phone, prefs, phone_db)
        if s > 0:
            scored.append((phone, s))

    scored.sort(key=lambda x: x[1], reverse=True)
    return scored[:count]


def find_closest_alternative(
    target_phone_name: str,
    prefs: UserPreferences,
    phone_db: list["Phone"],
) -> Optional["Phone"]:
    """
    If a benchmarked phone is not on PriceOye, find the closest
    available alternative based on category score similarity.
    """
    # Try to find target in DB
    target = next(
        (p for p in phone_db if target_phone_name.lower() in p.name.lower()), None
    )
    if target and target.available_on_priceoye:
        return target

    if not target:
        # Fall back to top recommendation
        results = recommend(prefs, phone_db, count=1)
        return results[0][0] if results else None

    # Find most similar by category scores
    target_cats = get_category_scores(target)
    best_match = None
    best_dist = float("inf")

    for phone in phone_db:
        if not phone.available_on_priceoye:
            continue
        if phone.id == target.id:
            continue
        if prefs.os_preference and phone.os != prefs.os_preference:
            continue

        phone_cats = get_category_scores(phone)
        dist = math.sqrt(
            sum((target_cats[c] - phone_cats[c]) ** 2 for c in target_cats)
        )
        if dist < best_dist:
            best_dist = dist
            best_match = phone

    return best_match


# ─────────────────────────────────────────────
#  PRIORITY REASON GENERATOR
# ─────────────────────────────────────────────

def get_priority_reason(phone: Phone, priority: str) -> str:
    cats = get_category_scores(phone)
    reasons = {
        "photography": (
            f"Camera score {cats['camera']:.1f}/10 β€” "
            f"{phone.dims.camera_lens_quality.note}"
        ),
        "gaming": (
            f"Gaming performance {cats['performance']:.1f}/10 β€” "
            f"{phone.dims.perf_cpu.note}"
        ),
        "battery": (
            f"Battery {cats['battery']:.1f}/10 Β· "
            f"Charging {cats['charging']:.1f}/10 β€” "
            f"{phone.dims.batt_real_world_sot.note}"
        ),
        "value": (
            f"{phone.price_label} mein best value β€” "
            f"Camera {cats['camera']:.1f} Β· Performance {cats['performance']:.1f}"
        ),
        "business": (
            f"Software {cats['software']:.1f}/10 Β· "
            f"Build {cats['build']:.1f}/10 β€” "
            f"{phone.dims.soft_update_policy.note}"
        ),
        "balanced": (
            f"Koi bhi weak point nahi β€” "
            f"Camera {cats['camera']:.1f} Β· "
            f"Performance {cats['performance']:.1f} Β· "
            f"Battery {cats['battery']:.1f}"
        ),
        "ios": (
            f"iOS ecosystem {cats['software']:.1f}/10 β€” "
            f"{phone.dims.soft_update_policy.note}"
        ),
    }
    return reasons.get(priority, f"Tamam categories mein strong performance: {sum(cats.values())/len(cats):.1f}/10 average")