Intelligent Metrix

Data to Metrics to Insight to Intelligent Decisions

B2B CRM: The Right Contact Mix for Your Customer Relationship

You’ve spent years gathering contacts into your databases.  You’ve implemented a data quality practice that is now starting to give you a solid picture of your universe.  It is now time to classify your contacts.

Invariably, your database is more than just purchasing/decision maker contacts.  All departments have gathered people’s information depending on the purpose.  It offers a window into your business dealings.  It also offers a window on your ability to market and sell.  Just as you consider vehicles, content, and message to deliver to your database, you also think about who you are reaching and who can be converted.

SOA and MDM initiatives are great because they bring together a full picture of interactions with the customer as well as who is part of those interactions.  But, not all contacts are created equal.  Just as not all customers or companies are created equal.  It is the first thing that is considered when determining targeting strategies.  The size of a database is typically determined based on the silo it is intended to help.  Marketing wants decision makers, finance wants accounts payable, customer support wants end users, investor relations wants analysts and media.  By themselves, these data silos serve a purpose.  Together, they can show a picture of where your awareness, message and brand really are.

A good  test once consolidation of data bases is done, or even within your CRM system alone if it receives lists and feeds from other internal sources, is to classify contacts based on their primary interaction with your company.  Everyone in your database has had a reason to connect.  Bringing these reasons into a standardized category will help determine the value they bring to a marketing program, customer relationship, or evangelist role.  Monitoring the ratios of these groups within a cusotmer relationship and firmographic data can give insight into the ability to grow a relationship, if it is at risk, or there is no relationship and the company serves another purpose.

While as marketers we typically look at the entire size of our database to determine if we have enough contacts to convert to leads, if those leads are weighted towards a low number of companies, or they are not the right contacts, then our efforts can be wasted.  With the cost to acquire customers and contacts expensive, having a mechanism to determine when to purchase lists and how much to purchase will refine the amount of resources and budget needed.  In addition, messaging and engagement strategies can be modified to align to the type of relationship outcome you intend.

So, rather than thinking about personas when you need to target, think about them strategically and as an indicator of the strength of relationship with your customer.

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Starting Your Business: Data From the Ground Up

data managementIt is easy when starting up a business to think about selling first, marketing and database management later.  Afterall, revenue is the most important thing to focus on.  Though, once you get over the hump and begin to groove, you realize that data is important.  Now you have to sort through it and it feels worse than diving into list of 300 emails in your daily inbox.  Well, if you have a method to deal with your email inbox, create one for managing customer and contact data.

Here are some simple things you can do up front to stay organized and be better prepared when you are ready to look at and manage your customers and the business in depth.

  • Be consistent about how you collect customer data – There are usually several layers to the importance of customer information elements depending on your relationship.  What you want to do is determine the information that is most critical and collect this consistently across all methods.  Keep in mind that what is mandatory to transaction may be different from what you need to follow-up with customers after a purchase.  So, make sure that you take this into account at the point in time you collect the information.  It is harder and more costly to collect after the fact.
  • Save data elements into dedicated fields – The biggest issue I find with new businesses and small businesses when they need to convert to more robust systems is that data elements are merged together into a single Excel cell.  When collecting contact names, break apart the first and last name into separate fields.   Do the same for addresses having fields for street address, city, state, country, and postal code.
  • Determine what platform has the Master data – The second biggest issue when migrating customers to a robust system is the inability to determine which record is the most valid of duplicate entries.  If you are saving contact and company information between your mobile phone, laptop, website, and company server, which will you consider the single source of record?  Once you determine this, make sure you sync your lists to that source.  I recommend you do this weekly at the least and use your primary server.  Then, include the database in a weekly back-up process.
  • Save, Save, Save – You may have caught this recommendation in the previous bullet.  Backing up is critical.  It is mandatory.  I’ve watch small businesses loose business critical information because they didn’t back up or back up often enough.  There are easy services today that make backing up our information simple.  At the very least, invest in a USB storage device and plug into daily when you sit down and get to work.  Before you do anything, back up.  Make it a habit.

Managing your customer and company information does not have to be difficult or cumbersome.  With a little forethought, when you business gets off the ground and you are ready to invest in better platforms and reporting, you will have a great foundation to do so.

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