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# Import dependencies

from langchain.prompts import PromptTemplate
from langchain.chains import LLMChain
from pyvis.network import Network
from pprint import pprint
import networkx as nx
import gradio as gr
import re
import datasets
from huggingface_hub import login, HfApi
from datasets import Dataset, load_dataset
from rapidfuzz import fuzz, process
import math
import pandas as pd
import gspread
import torch
import json
from typing import Callable, Optional
from dataclasses import dataclass
from datasets import load_dataset
from transformers import (
    AutoModelForSequenceClassification,
    TrainingArguments,
    Trainer,
    AutoModelForCausalLM,
    AutoTokenizer,
    BitsAndBytesConfig,
    pipeline
)
from peft import PeftModel, LoraConfig, get_peft_model, TaskType

REPO_ID_NEAR_FIELD_RAW = "milistu/AMAZON-Products-2023"
REPO_ID_NEAR_FIELD = "aslan-ng/amazon_products_2023"
REPO_ID_FAR_FIELD = "aslan-ng/amazon_products_2025"
REPO_ID_LORA_GREEN_PATENTS = "aslan-ng/lora-green-patents"

def product_quality_score(average_rating: float, rating_number: int):
    """
    Bayesian Average (Amazon-style)

    Args:
      avg_rating: product's average rating
      rating_number: number of reviews
    """
    m = 1  # Minimum number of reviews required (tunable)
    C = 3.5  # Global average rating (baseline)
    if rating_number <= 0 or average_rating is None:
        return C  # fallback to global mean
    return (rating_number / (rating_number + m)) * average_rating + (m / (rating_number + m)) * C

def load_near_field_raw_from_huggingface():
    """
    Load the raw near-field dataset from HuggingFace.
    """
    ds = datasets.load_dataset(REPO_ID_NEAR_FIELD_RAW, split="train")
    print("Initial size: ", len(ds))

    # Drop the extra categories
    main_categories_to_remove = ["meta_Books", "meta_CDs_and_Vinyl", "meta_Digital_Music", "meta_Gift_Cards", "meta_Grocery_and_Gourmet_Food",
                                 "meta_Magazine_Subscriptions", "meta_Software", "meta_Video_Games"]
    ds = ds.filter(lambda row: row["filename"] not in main_categories_to_remove) ###

    # Keep only the columns we care about
    cols_to_keep = ["title", "description", "main_category", "average_rating", "rating_number"]
    ds = ds.remove_columns([c for c in ds.column_names if c not in cols_to_keep])

    # Add product quality score column
    def add_quality_score(batch):
        return {
            "product_quality_score": [
                product_quality_score(r, n)
                for r, n in zip(batch["average_rating"], batch["rating_number"])
            ]
        }
    ds = ds.map(add_quality_score, batched=True)

    # Only keep rows with valid values
    def is_valid(v):
        """
        Must have valid values in the row. Will be used for filtering.
        """
        if v is None:
            return False
        if isinstance(v, str):
            if v.strip() == "":
              return False
        return True

    def keep_row(row):
        """
        Keep only the columns with valid data
        """
        if is_valid(row.get("title")) and \
          is_valid(row.get("description")) and \
          is_valid(row.get("main_category")) and \
          is_valid(row.get("average_rating")) and \
          is_valid(row.get("rating_number")):
            return True
        return False

    ds = ds.filter(keep_row)

    return ds.to_pandas()

def load_near_field_from_huggingface():
    """
    Load the near-field dataset from HuggingFace.
    """
    ds = load_dataset(REPO_ID_NEAR_FIELD, split="train")
    return ds.to_pandas()

def save_near_field_to_huggingface():
    """
    Save the near-field dataset from HuggingFace.
    """
    df = load_near_field_raw_from_huggingface()
    ds = Dataset.from_pandas(df)
    ds.push_to_hub(REPO_ID_NEAR_FIELD)
    print(f"✅ Pushed {len(ds)} rows to {REPO_ID_NEAR_FIELD}")

#save_near_field_to_huggingface() # Run it once
dataset_near_field = load_near_field_from_huggingface()

def load_far_field_from_sheet():
    """
    Load the far-field dataset from Google Sheets.
    """
    auth.authenticate_user()
    from google.auth import default
    COLS = ["title", "description", "average_rating", "rating_number"]
    categories = ["Home & Kitchen", "Beauty & Personal Care", "Sports & Outdoors", "Clothing, Shoes & Jewelry", "Industrial & Scientific",
                  "Appliances", "Arts, Crafts & Sewing", "Electronics"]
    sh = gspread.authorize(default()[0]).open_by_key(SHEET_ID_FAR_FIELD)
    frames = []
    for ws in sh.worksheets():  # iterate ALL sheets/tabs
        rows = ws.get_all_records()
        if not rows:
            continue
        df = pd.DataFrame(rows)
        # Keep only the exact columns you want
        df = df[COLS].copy()
        # Add the tab name as main_category
        df["main_category"] = ws.title
        frames.append(df)
    df = pd.concat(frames, ignore_index=True) if frames else pd.DataFrame(columns=COLS + ["main_category"])

    # Add product quality score column
    def _safe_pqs(row):
        ar, n = row["average_rating"], row["rating_number"]
        if pd.notna(ar) and pd.notna(n):
            return product_quality_score(ar, n)
        return float("nan")

    df["product_quality_score"] = df.apply(_safe_pqs, axis=1)

    return df

def load_far_field_from_huggingface():
    """
    Load the far-field dataset from HuggingFace.
    """
    ds = load_dataset(REPO_ID_FAR_FIELD, split="train")
    return ds.to_pandas()

def save_far_field_to_huggingface():
    """
    Save the far-field dataset from HuggingFace.
    """
    df = load_far_field_from_sheet()
    ds = Dataset.from_pandas(df)
    ds.push_to_hub(REPO_ID_FAR_FIELD)
    print(f"✅ Pushed {len(ds)} rows to {REPO_ID_FAR_FIELD}")

#save_far_field_to_huggingface() # Run it once
dataset_far_field = load_far_field_from_huggingface()

def product_score(product_quality_score: float, fuzzy_score: float):
    """
    Combine product score and fuzzy score into a single score.
    """
    return math.sqrt(product_quality_score * fuzzy_score)

def query_near_field(input: str, top_k: int=1):
    """
    Return top_k fuzzy matches for query against dataset titles as a pandas DataFrame.
    Always returns exactly top_k rows (if available).
    """
    if top_k <= 0:
        raise ValueError

    n = len(dataset_near_field)
    if top_k > n:
        print(f"Warning: top_k ({top_k}) is greater than the number of examples in the near-field dataset ({n}). Returning all examples.")
        return dataset_near_field.reset_index(drop=True)

    matches = process.extract(
        input,
        dataset_near_field["title"].fillna("").astype(str).tolist(),
        scorer=fuzz.token_set_ratio,
        limit=n
    )

    rows = []
    for _text, fuzzy_score, idx in matches:
        row = dataset_near_field.iloc[idx].to_dict()  # pandas way
        row["data_source"] = "near_field"
        row["fuzzy_score"] = fuzzy_score
        product_quality_score = row.get("product_quality_score")
        row["score"] = product_score(product_quality_score, fuzzy_score)
        rows.append(row)

    return (
        pd.DataFrame(rows)
        .sort_values("score", ascending=False)
        .head(top_k)
        .reset_index(drop=True)
    )

def query_far_field(input: str, top_k: int):
    """
    Return top_k random elements from the far_field dataset as a pandas DataFrame.
    The input string is ignored.
    """
    if top_k < 0:
        raise ValueError

    n = len(dataset_far_field)
    if top_k > n:
        print(f"Warning: top_k ({top_k}) is greater than the number of examples in the far-field dataset ({n}). Returning all examples.")
        return dataset_far_field.reset_index(drop=True)

    # Sample random rows without replacement
    sampled = dataset_far_field.sample(n=top_k, random_state=None).reset_index(drop=True)

    # Add the rest
    sampled["fuzzy_score"] = [
        fuzz.token_set_ratio(str(t) if pd.notna(t) else "", input)
        for t in sampled.get("title", "")
    ]
    product_quality_scores = sampled.get("product_quality_score")
    fuzzy_scores = sampled["fuzzy_score"]
    sampled["score"] = [product_score(a, b) for a, b in zip(product_quality_scores, fuzzy_scores)]
    sampled["data_source"] = "far_field"

    return sampled

def split_near_and_far_fields(total_examples: int, near_far_ratio: float = 0.5):
    """
    Split the examples between near and far field.
    The ratio represents the examples that will be in the near field to total (near + far).
    """
    ratio = near_far_ratio
    # Validate ratio
    if ratio < 0 or ratio > 1:
      raise ValueError("Ratio must be between 0 and 1")
    if total_examples < 2:
      raise ValueError("Total examples must be at least 2")

    near_field_examples = int(total_examples * ratio)
    far_field_examples = total_examples - near_field_examples

    return near_field_examples, far_field_examples

def query(input: str, total_examples: int, near_far_ratio: float = 0.5):
    near_field_examples, far_field_examples = split_near_and_far_fields(total_examples, near_far_ratio)
    far_field_result = query_far_field(input, far_field_examples)
    #print(far_field_result.head())
    near_field_result = query_near_field(input, near_field_examples)
    #print(near_field_result.head())
    result = pd.concat([near_field_result, far_field_result], ignore_index=True)
    return result

def lora_load():
  model_name = "distilbert-base-uncased"      # same base you trained on

  tokenizer  = AutoTokenizer.from_pretrained(REPO_ID_LORA_GREEN_PATENTS)  # , token=token)
  base_model = AutoModelForSequenceClassification.from_pretrained(model_name, num_labels=2)  # , token=token)
  model      = PeftModel.from_pretrained(base_model, REPO_ID_LORA_GREEN_PATENTS)  # , token=token)

  clf = pipeline("text-classification", model=model, tokenizer=tokenizer)
  return clf

clf = lora_load()

def sustainability_filter(input: str, total_examples: int, near_far_ratio: float = 0.5):
  initial_products = query(input, total_examples, near_far_ratio)
  initial_products_list = initial_products['description'].tolist()
  filtered_products = clf(initial_products_list) # 1 for green patents, 0 otherwise

  # Step 1. Extract the labels from your analysis
  labels = [item["label"] for item in filtered_products]

  # Step 2. Add them to the dataframe temporarily
  initial_products["label"] = labels

  # Step 3. Keep only rows where label != 'LABEL_0'
  filtered_df = initial_products[initial_products["label"] != "LABEL_0"].copy()

  # (Optional) Drop the helper column if you don’t need it anymore
  filtered_df.drop(columns="label", inplace=True)

  return filtered_df#sustainable_products

SYSTEM_PROMPT = """
You are a product analyst. You'll receive product description as input, and extract some product functionality and some product values. Each functionality and value should be 1-5 keywords only.
Product functionality refers to what the product does: its features, technical capabilities, and performance characteristics. It answers the question: “What can this product do?”
Product value refers to the benefit the customer gains from using the product: how it improves their life, solves their problem, or helps them achieve goals. It answers the question: “Why does this matter to the customer?”
Do **not** duplicate an item in both lists. Keep **functionalities** as concrete features. Keep **values** as clear user benefits. Keep short_title of the product shorter than 5 words.

Your Output is a dictionary. Here is the format:

# Your Input:
  <product_description>
# Your Output:
{
  "short_title": <short_title>,
  "values": [
    <value1>,
    <value2>,
    ...
  ],
  "functionalities": [
    <function1>,
    <function2>,
    ...
  ]
}

Select and return only the 5 most relevant values and only the 5 most relevant functionalities for each product.
Don't return anything out of the output format.
"""

@dataclass
class LLMConfig:
    model_id: str                       # e.g. "Qwen/Qwen2.5-1.5B-Instruct" or "Qwen/Qwen2.5-3B-Instruct"
    system_prompt: str = ""             # optional system prompt
    max_new_tokens: int = 256
    temperature: float = 0.2
    top_p: float = 0.9
    repetition_penalty: float = 1.05
    use_4bit: bool = True               # good default for Colab VRAM

def create_llm(
    *,
    model_id: str,
    max_new_tokens: int = 256,
    temperature: float = 0.2,
    top_p: float = 0.9,
    repetition_penalty: float = 1.05,
    use_4bit: bool = True
) -> Callable[[str], str]:
    """
    Load an off-the-shelf chat LLM and return a callable llm(prompt) -> str.
    Pass ONLY the model parameters you want. No size mapping. No llama_cpp.
    """

    cfg = LLMConfig(
        model_id=model_id,
        system_prompt=SYSTEM_PROMPT,
        max_new_tokens=max_new_tokens,
        temperature=temperature,
        top_p=top_p,
        repetition_penalty=repetition_penalty,
        use_4bit=use_4bit,
    )

    has_cuda = torch.cuda.is_available()
    qconfig: Optional[BitsAndBytesConfig] = None
    if has_cuda and cfg.use_4bit:
        qconfig = BitsAndBytesConfig(load_in_4bit=True, bnb_4bit_compute_dtype=torch.bfloat16)

    tokenizer = AutoTokenizer.from_pretrained(cfg.model_id, use_fast=True)
    model = AutoModelForCausalLM.from_pretrained(
        cfg.model_id,
        device_map="auto",
        torch_dtype=torch.bfloat16 if has_cuda else torch.float32,
        quantization_config=qconfig,
    ).eval()

    def _format_messages(user_text: str) -> str:
        msgs = []
        if cfg.system_prompt:
            msgs.append({"role": "system", "content": cfg.system_prompt})
        msgs.append({"role": "user", "content": user_text})

        if hasattr(tokenizer, "apply_chat_template") and tokenizer.chat_template is not None:
            return tokenizer.apply_chat_template(msgs, tokenize=False, add_generation_prompt=True)

        # Fallback if no chat template is present
        sys = f"System: {cfg.system_prompt}\n\n" if cfg.system_prompt else ""
        return f"{sys}User: {user_text}\nAssistant:"

    @torch.inference_mode()
    def llm(prompt: str,
            max_new_tokens: int = None,
            temperature: float = None,
            top_p: float = None,
            repetition_penalty: float = None) -> str:

        text = _format_messages(prompt)
        inputs = tokenizer(text, return_tensors="pt").to(model.device)
        out = model.generate(
            **inputs,
            max_new_tokens=max_new_tokens or cfg.max_new_tokens,
            do_sample=(temperature or cfg.temperature) > 0.0,
            temperature=temperature or cfg.temperature,
            top_p=top_p or cfg.top_p,
            repetition_penalty=repetition_penalty or cfg.repetition_penalty,
            pad_token_id=tokenizer.eos_token_id,
            eos_token_id=tokenizer.eos_token_id,
        )
        gen = out[0][inputs["input_ids"].shape[-1]:]
        return tokenizer.decode(gen, skip_special_tokens=True).strip()

    print(f"Loaded: {cfg.model_id} | 4-bit: {bool(qconfig)} | Device: {model.device}")
    return llm

def response_to_triplets(response: str):
    data = json.loads(response)
    product_title = data["short_title"]

    triples_list = []

    for value in data.get("values", []):
        triples_list.append([product_title, "HAS_VALUE", value])

    for func in data.get("functionalities", []):
        triples_list.append([product_title, "HAS_FUNCTIONALITY", func])

    return triples_list

llm = create_llm(
    model_id="Qwen/Qwen2.5-3B-Instruct",
    max_new_tokens=200,
    temperature=0.2,
    top_p=0.9,
    repetition_penalty=1.05,
    use_4bit=True,   # set False if you have lots of VRAM
)

def main(input: str, total_examples: int, near_far_ratio: float = 0.5):
  all_triplets_list = []

  sustainable_results = sustainability_filter(input, total_examples=total_examples, near_far_ratio=near_far_ratio)
  #print(type(sustainable_results))
  for i, product in sustainable_results.iterrows():
      product_title = product["title"]
      product_full_description = product_title + " " + product["description"]
      #print(type(product_title))
      response = llm(product_full_description)
      #print(response)
      triplets_list = response_to_triplets(response)
      print(triplets_list)
      for triplet in triplets_list:
        all_triplets_list.append(triplet)

  return all_triplets_list

def create_graph_from_triplets(triplets):
    G = nx.DiGraph()
    for triplet in triplets:
        line = str(triplet).strip()
        if not line:
            continue
        # Try comma-delimited with max 2 splits
        parts = [p.strip(" ()") for p in line.split(",", 2)]
        if len(parts) != 3:
            # Fallback: pipe-delimited
            parts = [p.strip(" ()") for p in line.split("|")]
            if len(parts) != 3:
                continue  # malformed, skip
        subject, predicate, obj = parts
        if subject and predicate and obj:
            G.add_edge(subject, obj, label=predicate)
    return G

def nx_to_pyvis(networkx_graph):
    from pyvis.network import Network

    pyvis_graph = Network(notebook=True, cdn_resources="remote")

    # 🎨 Color scheme
    color_product_bg = "#FFAA00"   # product nodes
    color_value_bg   = "#4CAF50"   # value nodes
    color_func_bg    = "#2196F3"   # functionality nodes
    color_default_bg = "#CCCCCC"

    color_value_edge = "#81C784"
    color_func_edge  = "#64B5F6"
    color_default_edge = "#999999"

    # Accept both correct and misspelled labels
    FUNC_LABELS  = {"HAS_FUNCTIONALITY", "HAS_FUNTIONALITY"}
    VALUE_LABELS = {"HAS_VALUE"}

    # 🧭 Collect roles from edges
    subjects = set()
    value_nodes = set()
    func_nodes = set()

    for u, v, data in networkx_graph.edges(data=True):
        lbl = str(data.get("label", "")).strip()
        subjects.add(u)
        if lbl in VALUE_LABELS:
            value_nodes.add(v)
        elif lbl in FUNC_LABELS:
            func_nodes.add(v)

    # 🧩 Add nodes with role-based styling FIRST
    for node in networkx_graph.nodes():
        if node in value_nodes:
            bg = color_value_bg
            shape = "ellipse"
        elif node in func_nodes:
            bg = color_func_bg
            shape = "diamond"
        elif node in subjects:
            bg = color_product_bg
            shape = "box"
        else:
            bg = color_default_bg
            shape = "dot"

        pyvis_graph.add_node(
            node,
            label=str(node),
            color={"background": bg, "border": "#333333"},
            shape=shape
        )

    # 🔗 Add edges with colors AFTER nodes
    for u, v, data in networkx_graph.edges(data=True):
        lbl = str(data.get("label", "")).strip()
        if lbl in VALUE_LABELS:
            edge_color = color_value_edge
        elif lbl in FUNC_LABELS:
            edge_color = color_func_edge
        else:
            edge_color = color_default_edge

        pyvis_graph.add_edge(u, v, label=lbl, title=lbl, color=edge_color)

    return pyvis_graph

def generateGraph(triples_list):
    triplets = [t.strip() for t in triples_list if t.strip()]
    graph = create_graph_from_triplets(triplets)
    pyvis_network = nx_to_pyvis(graph)

    pyvis_network.toggle_hide_edges_on_drag(True)
    pyvis_network.toggle_physics(False)
    pyvis_network.set_edge_smooth('discrete')

    html = pyvis_network.generate_html()
    html = html.replace("'", "\"")

    return f"""<iframe style="width: 100%; height: 600px;margin:0 auto" name="result" allow="midi; geolocation; microphone; camera;
    display-capture; encrypted-media;" sandbox="allow-modals allow-forms
    allow-scripts allow-same-origin allow-popups
    allow-top-navigation-by-user-activation allow-downloads" allowfullscreen=""
    allowpaymentrequest="" frameborder="0" srcdoc='{html}'></iframe>"""

def pipeline_fn(user_text: str, total_examples: int, near_far_ratio: float):
    try:
        if not user_text.strip():
            return "<div style='padding:12px;color:#b00;'>Please enter some text.</div>"

        # ✅ Call main with both parameters
        triples = main(
            user_text,
            total_examples=total_examples,
            near_far_ratio=near_far_ratio
        ) or []

        # Convert triplets into readable strings
        triples_list = []
        for t in triples:
            if isinstance(t, (tuple, list)) and len(t) == 3:
                triples_list.append(f"{t[0]}, {t[1]}, {t[2]}")
            else:
                triples_list.append(str(t))

        return generateGraph(triples_list)

    except Exception:
        import traceback
        return "<pre style='white-space: pre-wrap; font-size:12px; color:#b00;'>" + traceback.format_exc() + "</pre>"

demo = gr.Interface(
    fn=pipeline_fn,
    inputs=[
        gr.Textbox(label="Enter your query / text", value="", lines=6),
        gr.Number(label="Number of examples", value=6, precision=0),
        gr.Slider(
            minimum=0.0,
            maximum=1.0,
            value=0.8,
            step=0.05,
            label="Near/Far Ratio"
        ),
    ],
    outputs=gr.HTML(),
    title="Knowledge Graph",
    allow_flagging="never",
    live=False,
    css="""
        #component-0, #component-1, #component-2, #component-3, #component-4 {
            display: flex;
            justify-content: center;
            align-items: center;
            flex-direction: column;
        }
        .gradio-container {
            justify-content: center !important;
            align-items: center !important;
            text-align: center;
        }
        textarea, iframe {
            margin: 0 auto;
            display: block;
        }
    """
)

if __name__ == "__main__":
    demo.launch(quiet=True)