Contact Us

About Techwheels

| Field | Formula | |--------|---------| | SRNO | =TEXTBEFORE(A1," ") | | Report Date | =TEXTBEFORE(TEXTAFTER(A1," ")," ") | | ZONE-REGION-BKBR-STATE | =TEXTBEFORE(TEXTAFTER(A1," ",2)," ",1) | | CUSTOMER | =TEXTAFTER(A1," ",3) |

It sounds like you’re asking to develop a , SQL query , reporting logic , or data transformation based on the field:

"SRNO Report Date ZONE-REGION-BKBR-STATE CUSTOMER"

Since the requirement is open-ended, here are depending on your use case (SQL, Python/Pandas, or Excel formula). 1. SQL (Parse / Extract from a combined string field) If you have a column containing a string like: "SRNO Report Date ZONE-REGION-BKBR-STATE CUSTOMER" (e.g., "001 2025-03-20 NORTH-EAST-BKBR01-CA John Doe" )

SELECT SUBSTRING_INDEX(combined_column, ' ', 1) AS SRNO, SUBSTRING_INDEX(SUBSTRING_INDEX(combined_column, ' ', 2), ' ', -1) AS Report_Date, SUBSTRING_INDEX(SUBSTRING_INDEX(combined_column, ' ', 3), ' ', -1) AS ZONE_REGION_BKBR_STATE, SUBSTRING_INDEX(combined_column, ' ', -1) AS CUSTOMER FROM your_table; For with dashes in the middle part:

SELECT SRNO, Report_Date, SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', 1) AS ZONE, SUBSTRING_INDEX(SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', 2), '-', -1) AS REGION, SUBSTRING_INDEX(SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', 3), '-', -1) AS BKBR, SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', -1) AS STATE, CUSTOMER FROM ( SELECT SUBSTRING_INDEX(combined, ' ', 1) AS SRNO, SUBSTRING_INDEX(SUBSTRING_INDEX(combined, ' ', 2), ' ', -1) AS Report_Date, SUBSTRING_INDEX(SUBSTRING_INDEX(combined, ' ', 3), ' ', -1) AS ZONE_REGION_BKBR_STATE, SUBSTRING_INDEX(combined, ' ', -1) AS CUSTOMER FROM your_table ) t; import pandas as pd Sample data df = pd.DataFrame( 'raw': [ "001 2025-03-20 NORTH-EAST-BKBR01-CA Alice", "002 2025-03-21 SOUTH-WEST-BKBR02-TX Bob" ] ) Split by space split_cols = df['raw'].str.split(' ', expand=True) split_cols.columns = ['SRNO', 'Report_Date', 'ZONE-REGION-BKBR-STATE', 'CUSTOMER'] Further split the dash-separated part dash_split = split_cols['ZONE-REGION-BKBR-STATE'].str.split('-', expand=True) dash_split.columns = ['ZONE', 'REGION', 'BKBR', 'STATE'] Combine everything final_df = pd.concat([split_cols[['SRNO', 'Report_Date', 'CUSTOMER']], dash_split], axis=1) print(final_df)

SRNO Report_Date CUSTOMER ZONE REGION BKBR STATE 0 001 2025-03-20 Alice NORTH EAST BKBR01 CA 1 002 2025-03-21 Bob SOUTH WEST BKBR02 TX To extract each component:

Our Offers

Our Showroom

Srno Report Date Zone-region-bkbr-state Customer May 2026

| Field | Formula | |--------|---------| | SRNO | =TEXTBEFORE(A1," ") | | Report Date | =TEXTBEFORE(TEXTAFTER(A1," ")," ") | | ZONE-REGION-BKBR-STATE | =TEXTBEFORE(TEXTAFTER(A1," ",2)," ",1) | | CUSTOMER | =TEXTAFTER(A1," ",3) |

It sounds like you’re asking to develop a , SQL query , reporting logic , or data transformation based on the field: SRNO Report Date ZONE-REGION-BKBR-STATE CUSTOMER

"SRNO Report Date ZONE-REGION-BKBR-STATE CUSTOMER" | Field | Formula | |--------|---------| | SRNO

Since the requirement is open-ended, here are depending on your use case (SQL, Python/Pandas, or Excel formula). 1. SQL (Parse / Extract from a combined string field) If you have a column containing a string like: "SRNO Report Date ZONE-REGION-BKBR-STATE CUSTOMER" (e.g., "001 2025-03-20 NORTH-EAST-BKBR01-CA John Doe" ) 1) | | CUSTOMER | =TEXTAFTER(A1

SELECT SUBSTRING_INDEX(combined_column, ' ', 1) AS SRNO, SUBSTRING_INDEX(SUBSTRING_INDEX(combined_column, ' ', 2), ' ', -1) AS Report_Date, SUBSTRING_INDEX(SUBSTRING_INDEX(combined_column, ' ', 3), ' ', -1) AS ZONE_REGION_BKBR_STATE, SUBSTRING_INDEX(combined_column, ' ', -1) AS CUSTOMER FROM your_table; For with dashes in the middle part:

SELECT SRNO, Report_Date, SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', 1) AS ZONE, SUBSTRING_INDEX(SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', 2), '-', -1) AS REGION, SUBSTRING_INDEX(SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', 3), '-', -1) AS BKBR, SUBSTRING_INDEX(ZONE_REGION_BKBR_STATE, '-', -1) AS STATE, CUSTOMER FROM ( SELECT SUBSTRING_INDEX(combined, ' ', 1) AS SRNO, SUBSTRING_INDEX(SUBSTRING_INDEX(combined, ' ', 2), ' ', -1) AS Report_Date, SUBSTRING_INDEX(SUBSTRING_INDEX(combined, ' ', 3), ' ', -1) AS ZONE_REGION_BKBR_STATE, SUBSTRING_INDEX(combined, ' ', -1) AS CUSTOMER FROM your_table ) t; import pandas as pd Sample data df = pd.DataFrame( 'raw': [ "001 2025-03-20 NORTH-EAST-BKBR01-CA Alice", "002 2025-03-21 SOUTH-WEST-BKBR02-TX Bob" ] ) Split by space split_cols = df['raw'].str.split(' ', expand=True) split_cols.columns = ['SRNO', 'Report_Date', 'ZONE-REGION-BKBR-STATE', 'CUSTOMER'] Further split the dash-separated part dash_split = split_cols['ZONE-REGION-BKBR-STATE'].str.split('-', expand=True) dash_split.columns = ['ZONE', 'REGION', 'BKBR', 'STATE'] Combine everything final_df = pd.concat([split_cols[['SRNO', 'Report_Date', 'CUSTOMER']], dash_split], axis=1) print(final_df)

SRNO Report_Date CUSTOMER ZONE REGION BKBR STATE 0 001 2025-03-20 Alice NORTH EAST BKBR01 CA 1 002 2025-03-21 Bob SOUTH WEST BKBR02 TX To extract each component:

News to help choose your car

Going Green with Style: Exploring the Benefits of the Tata Tiag ...    

Tata Motors has recently launched a CNG variant of its popular hatchback, the Tiago. The Tata Ti

Continue reading..

T
Published: 13 Apr 2023

Going Green with Style: Exploring the Benefits of the Tata Tigo ...    

Tata Tigor CNG: An Eco-Friendly and Cost-Effective Choice

As the worl

Continue reading..

T
Published: 13 Apr 2023

Here’s Everything That You Need To Know About The Tata Curvv!              

Tata has been the leader in the EV space ever since it launched its first EV, the Nexon EV. The

Continue reading..

T
Published: 21 Apr 2022

Video Gallery

Client Testimonial