Username: Save?
Password:
Home Forum Links Search Login Register*
    News: Welcome to the TechnoWorldInc! Community!
Recent Updates
[September 09, 2024, 12:27:25 PM]

[September 09, 2024, 12:27:25 PM]

[September 09, 2024, 12:27:25 PM]

[September 09, 2024, 12:27:25 PM]

[August 10, 2024, 12:34:30 PM]

[August 10, 2024, 12:34:30 PM]

[August 10, 2024, 12:34:30 PM]

[August 10, 2024, 12:34:30 PM]

[July 05, 2024, 02:11:09 PM]

[July 05, 2024, 02:11:09 PM]

[July 05, 2024, 02:11:09 PM]

[June 21, 2024, 01:43:48 PM]

[June 21, 2024, 01:43:48 PM]
Subscriptions
Get Latest Tech Updates For Free!
Resources
   Travelikers
   Funistan
   PrettyGalz
   Techlap
   FreeThemes
   Videsta
   Glamistan
   BachatMela
   GlamGalz
   Techzug
   Vidsage
   Funzug
   WorldHostInc
   Funfani
   FilmyMama
   Uploaded.Tech
   MegaPixelShop
   Netens
   Funotic
   FreeJobsInc
   FilesPark
Participate in the fastest growing Technical Encyclopedia! This website is 100% Free. Please register or login using the login box above if you have already registered. You will need to be logged in to reply, make new topics and to access all the areas. Registration is free! Click Here To Register.
+ Techno World Inc - The Best Technical Encyclopedia Online! » Forum » THE TECHNO CLUB [ TECHNOWORLDINC.COM ] » Techno Articles » Marketing
 Data Map Charting for Mobile Businesses
Pages: [1]   Go Down
  Print  
Author Topic: Data Map Charting for Mobile Businesses  (Read 725 times)
Stephen Taylor
TWI Hero
**********



Karma: 3
Offline Offline

Posts: 15522

unrealworld007
View Profile
Data Map Charting for Mobile Businesses
« Posted: August 14, 2007, 10:30:09 AM »


Data Map Charting for Mobile Businesses


As we study the demographic regional variations for small service businesses we see many things. Let us take a mobile auto detailing business and break down the data and look at what drives sales and growth. We must search for areas with similar demographics in any new territory whether we are putting in one unit of one single unit owner operator or many units to blanket a region. Proper data mapping helps and if done right it eliminates risks and saves lots of time, not to mention hard earned marketing dollars. We are talking about very specific demographic when we break down our needs for particular mobile business and then into a micro sector of the larger automotive aftermarket services industry such as mobile auto detailing. Let us look at a few of the data sets which are readily available and worthy of mention to our business study:

Average Number Of People Per Household

Average Income

Number Of Cars Per Household

Average Price Per Car

Ethnic Make Up

Number Of People In Each Five Year Age Bracket

Spendable Income

Average Home Price

Average Education Level

Number Of Recreational Vehicles

Population

Number Of Non-Perennial Residents

Tourism Related Sales Tax Revenue

Day Time Population

We also should consider an over all strategy in advance of the future events; namely the expansion of the business. First we must ask ourselves the intentions regarding expansion such as:

How many trucks do you eventually want to run

How fast do you wish to expand

Which areas of service do you feel most comfortable concentrating on

Who you plan on using as your manager

When do you realistically plan to have the next mobile car wash unit running

By sectioning out the area into a grid and then overlaying the data, we can quickly determine the hot spots where most of the business will come from and where the most efficient use of time and schedule should be allotted to maximize profits. If you will commit yourself to methodically looking at your market you will find yourself in a better place and a much easier job serving your best possible customer base. Think about it.

"Lance Winslow" - If you have innovative thoughts and unique perspectives, come think with Lance; www.WorldThinkTank.net/wttbbs

Logged

Pages: [1]   Go Up
  Print  
 
Jump to:  

Copyright © 2006-2023 TechnoWorldInc.com. All Rights Reserved. Privacy Policy | Disclaimer
Page created in 0.077 seconds with 24 queries.