Master_VisibilityDefinition Import

This commit is contained in:
Dipanshu Kumar
2026-05-19 13:20:14 +05:30
parent 04f4384e6a
commit 270f947afe
2 changed files with 515 additions and 0 deletions
+462
View File
@@ -0,0 +1,462 @@
import pyodbc
import pandas as pd
import clickhouse_connect
import numpy as np
from datetime import datetime
import traceback
import warnings
# =========================================================
# IGNORE WARNINGS
# =========================================================
warnings.filterwarnings(
'ignore',
'pandas only supports SQLAlchemy connectable'
)
print("ETL Started :", datetime.now())
# =========================================================
# SQL SERVER CONNECTION
# =========================================================
SQL_CONN_STR = (
'DRIVER={ODBC Driver 17 for SQL Server};'
'SERVER=10.200.25.65;'
'DATABASE=CPMIndiaBusinessInsight;'
'UID=bsgteam_test;'
'PWD=B$gt3@m#00512;'
'TrustServerCertificate=yes;'
)
# =========================================================
# CLICKHOUSE CONFIG
# =========================================================
CH_CONFIG = {
'host': '172.188.12.194',
'port': 8123,
'username': 'default',
'password': 'dipanshu_k',
'database': 'DaburIndia_BI'
}
# =========================================================
# TABLE NAME
# =========================================================
TABLE_NAME = 'Master_VisibilityDefinition'
PROJECT_ID = 41654
# =========================================================
# CLEAN DATAFRAME
# =========================================================
def clean_dataframe(df):
try:
# ---------------------------------------------
# Replace NaN with None
# ---------------------------------------------
df = df.replace({np.nan: None})
# ---------------------------------------------
# Process Column Wise
# ---------------------------------------------
for col in df.columns:
try:
print(f"\nCleaning Column : {col}")
# =====================================
# DATETIME COLUMNS
# =====================================
if pd.api.types.is_datetime64_any_dtype(df[col]):
print(f"Datetime Column Detected : {col}")
df[col] = pd.to_datetime(
df[col],
errors='coerce'
)
# Remove invalid dates
df[col] = df[col].where(
(df[col].dt.year >= 1970) &
(df[col].dt.year <= 2100)
)
# IMPORTANT FIX
# Convert to Python datetime
df[col] = df[col].apply(
lambda x:
x.to_pydatetime()
if pd.notnull(x)
else None
)
# =====================================
# INTEGER COLUMNS
# =====================================
elif pd.api.types.is_integer_dtype(df[col]):
print(f"Integer Column Detected : {col}")
df[col] = pd.to_numeric(
df[col],
errors='coerce'
)
df[col] = df[col].apply(
lambda x:
int(x)
if pd.notnull(x)
else None
)
# =====================================
# FLOAT COLUMNS
# =====================================
elif pd.api.types.is_float_dtype(df[col]):
print(f"Float Column Detected : {col}")
non_null = df[col].dropna()
# ---------------------------------
# Convert whole float to int
# Example:
# 3240.0 -> 3240
# ---------------------------------
if len(non_null) > 0 and (
(non_null % 1 == 0).all()
):
df[col] = df[col].apply(
lambda x:
int(x)
if pd.notnull(x)
else None
)
else:
df[col] = df[col].apply(
lambda x:
float(x)
if pd.notnull(x)
else None
)
# =====================================
# OBJECT / STRING COLUMNS
# =====================================
else:
print(f"String/Object Column Detected : {col}")
cleaned = []
for val in df[col]:
# NULL
if pd.isnull(val):
cleaned.append(None)
# INTEGER
elif isinstance(
val,
(
int,
np.integer
)
):
cleaned.append(int(val))
# FLOAT
elif isinstance(
val,
(
float,
np.floating
)
):
if np.isnan(val):
cleaned.append(None)
else:
# Avoid 3240.0 issue
if val.is_integer():
cleaned.append(int(val))
else:
cleaned.append(float(val))
# STRING
elif isinstance(val, str):
cleaned.append(val.strip())
# BOOLEAN
elif isinstance(val, bool):
cleaned.append(int(val))
# DATETIME
elif isinstance(
val,
(
datetime,
pd.Timestamp
)
):
cleaned.append(
val.to_pydatetime()
if isinstance(val, pd.Timestamp)
else val
)
# OTHER
else:
cleaned.append(str(val))
df[col] = cleaned
except Exception as col_error:
print("\n================================")
print(f"COLUMN FAILED : {col}")
print(str(col_error))
print("================================")
return df
except Exception as clean_error:
print("\n================================")
print("DATA CLEAN FAILED")
print(str(clean_error))
print("================================")
return df
# =========================================================
# MAIN PROCESS
# =========================================================
try:
# =====================================================
# CONNECT SQL SERVER
# =====================================================
sql_conn = pyodbc.connect(SQL_CONN_STR)
print("Connected to SQL Server")
# =====================================================
# CONNECT CLICKHOUSE
# =====================================================
ch_client = clickhouse_connect.get_client(**CH_CONFIG)
print("Connected to ClickHouse")
# =====================================================
# QUERY
# =====================================================
query = f"""
SELECT *
FROM dbo.[{TABLE_NAME}]
WHERE Project_Id = {PROJECT_ID}
"""
print("\nExecuting Query:")
print(query)
# =====================================================
# CHUNK SIZE
# =====================================================
chunk_size = 100000
total_rows = 0
# =====================================================
# READ DATA
# =====================================================
for chunk in pd.read_sql(
query,
sql_conn,
chunksize=chunk_size
):
try:
print("\n================================")
print(f"Processing {len(chunk)} Rows")
print("================================")
# =================================================
# CLEAN DATA
# =================================================
chunk = clean_dataframe(chunk)
# =================================================
# DEBUG COLUMN TYPES
# =================================================
print("\nCOLUMN TYPES")
for col in chunk.columns:
sample = chunk[col].dropna()
if len(sample) > 0:
print(
col,
type(sample.iloc[0]),
sample.iloc[0]
)
# =================================================
# SAMPLE DATA
# =================================================
print("\nSAMPLE DATA")
print(chunk.head(2))
# =================================================
# INSERT INTO CLICKHOUSE
# =================================================
print("\nInserting into ClickHouse...")
ch_client.insert_df(
table=TABLE_NAME,
df=chunk,
database=CH_CONFIG['database']
)
total_rows += len(chunk)
print(
f"\nInserted Total Rows : {total_rows}"
)
except Exception as chunk_error:
print("\n================================")
print("CHUNK INSERT FAILED")
print("================================")
print(str(chunk_error))
traceback.print_exc()
# =============================================
# SAVE ERROR LOG
# =============================================
with open(
"clickhouse_chunk_error.log",
"a",
encoding="utf-8"
) as log:
log.write(
"\n\n================================"
)
log.write(
f"\nTIME : {datetime.now()}"
)
log.write(
f"\nTABLE : {TABLE_NAME}"
)
log.write(
f"\nERROR : {str(chunk_error)}"
)
log.write(
f"\nTRACEBACK :\n"
f"{traceback.format_exc()}"
)
log.write(
"\n================================"
)
continue
print("\n================================")
print("ETL COMPLETED SUCCESSFULLY")
print(f"TOTAL ROWS INSERTED : {total_rows}")
print("================================")
# =========================================================
# MAIN ERROR
# =========================================================
except Exception as main_error:
print("\n================================")
print("MAIN ERROR")
print("================================")
print(str(main_error))
traceback.print_exc()
with open(
"clickhouse_main_error.log",
"a",
encoding="utf-8"
) as log:
log.write(
"\n\n================================"
)
log.write(
f"\nTIME : {datetime.now()}"
)
log.write(
f"\nERROR : {str(main_error)}"
)
log.write(
f"\nTRACEBACK :\n"
f"{traceback.format_exc()}"
)
log.write(
"\n================================"
)
# =========================================================
# CLOSE CONNECTIONS
# =========================================================
finally:
try:
sql_conn.close()
print("\nSQL Server Connection Closed")
except:
pass
try:
ch_client.close()
print("ClickHouse Connection Closed")
except:
pass
print("\nETL Finished :", datetime.now())