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#import libraries
import pathlib
import textwrap
import pandas as pd
import numpy as np
import gradio as gr
import tempfile
from fuzzywuzzy import fuzz
from openpyxl import load_workbook
from openpyxl.styles import PatternFill
from openpyxl.styles.alignment import Alignment
import google.generativeai as genai
from IPython.display import display


#connect to google gemini API key
GOOGLE_API_KEY='AIzaSyCtACPu9EOnEa1_iAWsv_u__PQRpaCT564'
genai.configure(api_key=GOOGLE_API_KEY)


#Load the gemini model
model = genai.GenerativeModel('gemini-1.0-pro')


# Function to apply to df1 to create the cont_person_name column
def process_fuzzy_ratios(rows_dict):
    fuzz_data = {}
    for key, row in enumerate(rows_dict):
        if key == 0:
            # For the first row, delete specified columns
            del row["address_fuzzy_ratio"]
            del row["bank_fuzzy_ratio"]
            del row["name_fuzzy_ratio"]
            del row["accgrp_fuzzy_ratio"]
            del row["tax_fuzzy_ratio"]
            del row["postal_fuzzy_ratio"]
        else:
            # For subsequent rows, store data in fuzz_data dictionary
            fuzz_data["row_" + str(key + 1)] = {
                "address_fuzzy_ratio": row.pop("address_fuzzy_ratio"),
                "bank_fuzzy_ratio": row.pop("bank_fuzzy_ratio"),
                "name_fuzzy_ratio": row.pop("name_fuzzy_ratio"),
                "accgrp_fuzzy_ratio": row.pop("accgrp_fuzzy_ratio"),
                "tax_fuzzy_ratio": row.pop("tax_fuzzy_ratio"),
                "postal_fuzzy_ratio": row.pop("postal_fuzzy_ratio")
            }
    return fuzz_data, rows_dict

# Code to perform gemini analysis
def gemini_analysis(dataframe):
    prev_row_duplicate = False
    prev_row_number = None
    for index, row in dataframe.iterrows():

        # Find duplicate pairs
        if row['Remarks'] == 'Duplicate':
            if prev_row_duplicate:
                duplicate_pairs=[]
                row1 = dataframe.loc[index-1].to_dict()
                row2 = row.to_dict()
                duplicate_pairs.append(row1)
                duplicate_pairs.append(row2)
                fuzzy_ratios, duplicate_pairs = process_fuzzy_ratios(duplicate_pairs)
                for dictionary in duplicate_pairs:
                    for _ in range(12):
                        if dictionary:
                            dictionary.popitem()
                main_data_str = "[{}]".format(', '.join([str(d) for d in duplicate_pairs]))
                fuzzy_data_str = "{}".format(fuzzy_ratios)
                qs="I have the data",main_data_str,"The corresponding fuzzy ratios are here: ",fuzzy_data_str,"Give a concise explanation why these two rows are duplicate based on analyzing the main data and explaining which column values are same and which column values are different?"

                # Ask gemini to analyse the data
                try:
                    response = model.generate_content(qs)
                    dataframe.at[index-1, 'Explanation'] = response.text
                except requests.HTTPError as e:
                    print(f"Error fetching Gemini response': {e}")
                except ValueError as ve:
                    print(f"ValueError occurred: {ve}")
                except Exception as ex:
                    print(f"An error occurred: {ex}")

                # Add a new row in excel file to write the explanation
                dataframe.at[index-1, 'Explanation'] = response.text
            prev_row_duplicate = True
            prev_row_number = index
        else:
            prev_row_duplicate = False
            prev_row_number = None


# Code for de-duplication
def process_csv(file, remove_null_columns):
    sheet_name1 = 'General Data '
    sheet_name2 = 'Contact Person'

    # Read the 1st sheet of excel file
    df = pd.read_excel(file, sheet_name=sheet_name1,engine='openpyxl')
    # Replace null values with a blank space
    df=df.fillna(" ")
    # Read the 2nd sheet of excel file
    df1 = pd.read_excel(file, sheet_name=sheet_name2,engine='openpyxl')
    # Replace null values with a blank space
    df1 = df1.fillna(" ")

    # Creating new columns by concatenating original columns
    df['Address'] = df['STREET'].astype(str) +'-'+ df['CITY1'].astype(str) +'-'+ df['COUNTRY'].astype(str) + '-' + df['REGION'].astype(str)
    df['Name'] = df['NAMEFIRST'].astype(str)+'-'+ df['NAMELAST'].astype(str) +'-'+ df['NAME3'].astype(str) + '-' + df['NAME4'].astype(str)
    df['Bank'] = df['BANKL'].astype(str)+'-'+df['BANKN'].astype(str)
    df['Tax'] = df['TAXTYPE'].astype(str)+'-'+df['TAXNUM'].astype(str)

    # Converting all concatenated columns to lowercase
    df['Name']=df['Name'].str.lower()
    df['Address']=df['Address'].str.lower()
    df['Bank']=df['Bank'].str.lower()
    df['Tax']=df['Tax'].str.lower()

    # Create new columns with the following names for fuzzy ratio
    df['name_fuzzy_ratio']=''
    df['accgrp_fuzzy_ratio']=''
    df['address_fuzzy_ratio']=''
    df['bank_fuzzy_ratio']=''
    df['tax_fuzzy_ratio']=''
    df['postal_fuzzy_ratio']=''

    # Create new columns with the following names for crearing groups
    df['name_based_group']=''
    df['accgrp_based_group']=''
    df['address_based_group']=''
    df['bank_based_group']=''
    df['tax_based_group']=''
    df['postal_based_group']=''

    # Calculate last row index value
    last_row_index = len(df)-1
    last_row_index1 = len(df1)-1

    # Calculate the fuzzy ratios for tax column
    df.sort_values(['Tax'], inplace=True)
    df = df.reset_index(drop=True)
    df.at[0,'tax_fuzzy_ratio']=100
    df.at[last_row_index,'tax_fuzzy_ratio']=100
    for i in range(1,last_row_index):
        current_tax = df['Tax'].iloc[i]
        previous_tax = df['Tax'].iloc[i-1]
        fuzzy_ratio = fuzz.ratio(previous_tax,current_tax)
        df.at[i,'tax_fuzzy_ratio'] = fuzzy_ratio
    df['tax_fuzzy_ratio'] = pd.to_numeric(df['tax_fuzzy_ratio'], errors='coerce')

    # Calculate the duplicate groups based on tax column
    group_counter = 1
    df.at[0,'tax_based_group'] = group_counter
    for i in range (1, len(df)):
        if df.at[i,'tax_fuzzy_ratio'] > 90:
            df.at[i,'tax_based_group'] = df.at[i-1,'tax_based_group']
        else:
            group_counter += 1
            df.at[i,'tax_based_group'] = group_counter
    group = df.at[0,'tax_based_group']

    # Calculate the fuzzy ratios for bank column
    df.sort_values(['tax_based_group','Bank'], inplace=True)
    df = df.reset_index(drop=True)
    df.at[0,'bank_fuzzy_ratio']=100
    df.at[last_row_index,'bank_fuzzy_ratio']=100
    for i in range(1,last_row_index):
        current_address = df['Bank'].iloc[i]
        previous_address = df['Bank'].iloc[i-1]
        fuzzy_ratio = fuzz.ratio(previous_address, current_address)
        df.at[i,'bank_fuzzy_ratio'] = fuzzy_ratio
    df['bank_fuzzy_ratio'] = pd.to_numeric(df['bank_fuzzy_ratio'], errors='coerce')

    # Calculate the duplicate groups for bank column
    bank_group_counter = 1
    df.at[0,'bank_based_group'] = str(bank_group_counter)
    for i in range(1,len(df)):
        if df.at[i,'bank_fuzzy_ratio'] >= 100:
            df.at[i,'bank_based_group'] = df.at[i-1, 'bank_based_group']
        else:
          if df.at[i,'tax_based_group'] != group:
              bank_group_counter = 1
              group = df.at[i,'tax_based_group']
          else:
                  bank_group_counter +=1
        df.at[i,'bank_based_group'] = str(bank_group_counter)
    df['Group_tax_bank'] = df.apply(lambda row: '{}_{}'.format(row['tax_based_group'], row['bank_based_group']), axis = 1)
    group = df.at[0,'Group_tax_bank']

    # Calculate the fuzzy ratios for address column
    df.sort_values(['Group_tax_bank','Address'], inplace=True)
    df = df.reset_index(drop=True)
    df.at[0,'address_fuzzy_ratio']=100
    df.at[last_row_index,'address_fuzzy_ratio']=100
    for i in range(1,last_row_index):
        current_address = df['Address'].iloc[i]
        previous_address = df['Address'].iloc[i-1]
        fuzzy_ratio = fuzz.ratio(previous_address, current_address)
        df.at[i,'address_fuzzy_ratio'] = fuzzy_ratio
    df['address_fuzzy_ratio'] = pd.to_numeric(df['address_fuzzy_ratio'], errors='coerce')

    # Calculate the duplicate groups for address column
    address_group_counter = 1
    df.at[0,'address_based_group'] = str(address_group_counter)
    for i in range(1,len(df)):
        if df.at[i,'address_fuzzy_ratio'] > 70:
            df.at[i,'address_based_group'] = df.at[i-1, 'address_based_group']
        else:
          if df.at[i,'Group_tax_bank'] != group:
              address_group_counter = 1
              group = df.at[i,'Group_tax_bank']
          else:
                  address_group_counter +=1
        df.at[i,'address_based_group'] = str(address_group_counter)
    df['Group_tax_bank_add'] = df.apply(lambda row: '{}_{}'.format(row['Group_tax_bank'], row['address_based_group']), axis = 1)
    group = df.at[0,'Group_tax_bank_add']

    # Calculate the fuzzy ratios for name column
    df.sort_values(['Group_tax_bank_add','Name'], inplace=True)
    df = df.reset_index(drop=True)
    df.at[0,'name_fuzzy_ratio']=100
    df.at[last_row_index,'name_fuzzy_ratio']=100
    for i in range(1,last_row_index):
        current_address = df['Name'].iloc[i]
        previous_address = df['Name'].iloc[i-1]
        fuzzy_ratio = fuzz.ratio(previous_address, current_address)
        df.at[i,'name_fuzzy_ratio'] = fuzzy_ratio
    df['name_fuzzy_ratio'] = pd.to_numeric(df['name_fuzzy_ratio'], errors='coerce')

    # Calculate the duplicate groups for name column
    name_group_counter = 1
    df.at[0,'name_based_group'] = str(name_group_counter)
    for i in range(1,len(df)):
        if df.at[i,'name_fuzzy_ratio'] > 80:
            df.at[i,'name_based_group'] = df.at[i-1, 'name_based_group']
        else:
          if df.at[i,'Group_tax_bank_add'] != group:
              name_group_counter = 1
              group = df.at[i,'Group_tax_bank_add']
          else:
                  name_group_counter +=1
        df.at[i,'name_based_group'] = str(name_group_counter)
    df['Group_tax_bank_add_name'] = df.apply(lambda row: '{}_{}'.format(row['Group_tax_bank_add'], row['name_based_group']), axis = 1)
    group = df.at[0,'Group_tax_bank_add_name']

    # Calculate the fuzzy ratios for postcode column
    df.sort_values(['Group_tax_bank_add_name','POSTCODE1'], inplace=True)
    df = df.reset_index(drop=True)
    df.at[0,'postal_fuzzy_ratio']=100
    df.at[last_row_index,'postal_fuzzy_ratio']=100
    for i in range(1,last_row_index):
        current_address = df['POSTCODE1'].iloc[i]
        previous_address = df['POSTCODE1'].iloc[i-1]
        fuzzy_ratio = fuzz.ratio(previous_address, current_address)
        df.at[i,'postal_fuzzy_ratio'] = fuzzy_ratio
    df['postal_fuzzy_ratio'] = pd.to_numeric(df['postal_fuzzy_ratio'], errors='coerce')

    # Calculate the duplicate groups for postcode column
    postcode_group_counter = 1
    df.at[0,'postal_based_group'] = str(postcode_group_counter)
    for i in range(1,len(df)):
        if df.at[i,'postal_fuzzy_ratio'] > 90:
            df.at[i,'postal_based_group'] = df.at[i-1, 'postal_based_group']
        else:
          if df.at[i,'Group_tax_bank_add_name'] != group:
              postcode_group_counter = 1
              group = df.at[i,'Group_tax_bank_add_name']
          else:
                  postcode_group_counter +=1
        df.at[i,'postal_based_group'] = str(postcode_group_counter)
    df['Group_tax_bank_add_name_post'] = df.apply(lambda row: '{}_{}'.format(row['Group_tax_bank_add_name'], row['postal_based_group']), axis = 1)
    group = df.at[0,'Group_tax_bank_add_name_post']

    # Calculate the fuzzy ratios for accgrp column
    df.sort_values(['Group_tax_bank_add_name_post','KTOKK'], inplace=True)
    df = df.reset_index(drop=True)
    df.at[0,'accgrp_fuzzy_ratio']=100
    df.at[last_row_index,'accgrp_fuzzy_ratio']=100
    for i in range(1,last_row_index):
        current_address = df['KTOKK'].iloc[i]
        previous_address = df['KTOKK'].iloc[i-1]
        fuzzy_ratio = fuzz.ratio(previous_address, current_address)
        df.at[i,'accgrp_fuzzy_ratio'] = fuzzy_ratio
    df['accgrp_fuzzy_ratio'] = pd.to_numeric(df['accgrp_fuzzy_ratio'], errors='coerce')

    # Calculate the duplicate groups for accgrp column
    accgrp_group_counter = 1
    df.at[0,'accgrp_based_group'] = str(accgrp_group_counter)
    for i in range(1,len(df)):
        if df.at[i,'accgrp_fuzzy_ratio'] >=100:
            df.at[i,'accgrp_based_group'] = df.at[i-1, 'accgrp_based_group']
        else:
          if df.at[i,'Group_tax_bank_add_name_post'] != group:
              accgrp_group_counter = 1
              group = df.at[i,'Group_tax_bank_add_name_post']
          else:
                  accgrp_group_counter +=1
        df.at[i,'accgrp_based_group'] = str(accgrp_group_counter)
    df['Group_tax_bank_add_name_post_accgrp'] = df.apply(lambda row: '{}_{}'.format(row['Group_tax_bank_add_name_post'], row['accgrp_based_group']), axis = 1)
    group = df.at[0,'Group_tax_bank_add_name_post_accgrp']

    # Find the final duplicate groups in AND condition
    duplicate_groups = df['Group_tax_bank_add_name_post_accgrp'].duplicated(keep=False)
    df['Remarks'] = ['Duplicate' if is_duplicate else 'Unique' for is_duplicate in duplicate_groups]

    # Filter the columns which have nan values more than 70% and drop based on user requirement
    df.replace(" ", np.nan, inplace=True)
    nan_percentage = df.isna().mean(axis=0)
    columns_to_drop = nan_percentage[nan_percentage > 0.7].index
    if remove_null_columns=='Yes':
          df.drop(columns=columns_to_drop, inplace=True)
    df.replace(np.nan, " ", inplace=True)

    # Ask gemini to analyse the duplicate columns
    gemini_analysis(df)

    # Drop the columns related to fuzzy ratios and groups
    columns_to_drop = ['name_fuzzy_ratio','accgrp_fuzzy_ratio','address_fuzzy_ratio','bank_fuzzy_ratio','tax_fuzzy_ratio','postal_fuzzy_ratio','name_based_group','accgrp_based_group','address_based_group','bank_based_group','tax_based_group','postal_based_group','Group_tax_bank','Group_tax_bank_add', 'Group_tax_bank_add_name', 'Group_tax_bank_add_name_post']
    df = df.drop(columns=columns_to_drop, axis=1)

    # Create a temporary file
    with tempfile.NamedTemporaryFile(prefix="Outputs", suffix=".xlsx", delete=False) as temp_file:
        df.to_excel(temp_file.name, index=False)
    excel_writer = pd.ExcelWriter(temp_file.name, engine='openpyxl')
    df.to_excel(excel_writer, index=False, sheet_name='Sheet1')

    # Access the workbook
    workbook = excel_writer.book
    worksheet = workbook['Sheet1']

    # Apply row coloring based on the value in the 'Remarks' column and also wrap the texts
    duplicate_fill = PatternFill(start_color="FFFF00", end_color="FFFF00", fill_type="solid")
    for idx, row in df.iterrows():
        if row['Remarks'] == 'Duplicate':
            for cell in worksheet[idx + 2]:
                cell.alignment = Alignment(wrap_text=True)
                cell.fill = duplicate_fill

    # Iterate over columns and set their width
    for col in worksheet.columns:
        col_letter = col[0].column_letter
        worksheet.column_dimensions[col_letter].width = 28

    # Iterate over rows and set their height
    for row in worksheet.iter_rows():
        worksheet.row_dimensions[row[0].row].height = 20

    # Save the changes
    excel_writer.close()

    # Return the temporary file
    return temp_file.name


# Setup gradio interface
interface = gr.Interface(
    fn=process_csv,
    inputs=[
        gr.File(label="Upload XLSX File", file_count="single"),
        gr.Radio(
            ["Yes", "No"],
            label="Remove Columns?",
            info="The columns with 70% or More Null Values will be removed"
        )
    ],
    outputs=gr.File(label="Download File"),
    title="Vendor Master De-Duplication Tool",
    description="Upload a XLSX file and choose which column to check for duplicates."
)

# Launch the interface
interface.launch(debug=True,share=True)