{"id":1822,"date":"2024-12-09T13:25:07","date_gmt":"2024-12-09T14:25:07","guid":{"rendered":"https:\/\/web-stil.info\/?p=1822"},"modified":"2025-05-02T22:21:22","modified_gmt":"2025-05-02T22:21:22","slug":"customer-data-management-tips-best-practices-according-to-experts","status":"publish","type":"post","link":"https:\/\/web-stil.info\/index.php\/2024\/12\/09\/customer-data-management-tips-best-practices-according-to-experts\/","title":{"rendered":"Customer Data Management Tips + Best Practices (According to Experts)"},"content":{"rendered":"
Your customers\u2019 data, from lead capture to post-purchase, has huge potential for your company … IF it\u2019s managed correctly. I once worked at a company that treated customer data like a grocery store receipt, chucking it in the back seat of the car with a vague \u201cI\u2019ll find it there later if I need it\u201d approach. This annoyed employees to no end and left money on the table for how well we could\u2019ve served our audience.<\/p>\n
Those who are new to customer data management have<\/strong> no time to waste<\/strong>: Consumers are becoming more aware and critical of how their data is being gathered by companies. Governing bodies are creating more protective laws, and this shift is ultimately making the customer data that you have even<\/em> more valuable.<\/p>\n Table of Contents<\/strong><\/p>\n <\/a> <\/p>\n Customer data management is the process of gathering, storing, and interpreting customer information. The data can be first, second, or third-party data<\/a>. Common types of customer data include:<\/p>\n Companies must handle data collection and governance with care to keep their customers\u2019 information secure and private.<\/p>\n <\/a> <\/p>\n The benefits of customer data can\u2019t be understated \u2014 customer data is essential for scaling any business\u2019s revenue. Without customer data, decisions around product improvements, new offers, paid advertising, etc. are based on guesswork instead of facts. Customer data is used to steer investments and measure output for sales and marketing teams.<\/p>\n It\u2019s also a valuable ingredient in building and maintaining customer relationships. All modern customer service software (like HubSpot Service Hub<\/a>) and customer relationship management tools (like HubSpot CRM<\/a>) rely on customer data for:<\/p>\n Now that you understand its importance, I\u2019ll share some top customer data management best practices <\/strong>according to data experts, business owners, and marketing professionals.<\/p>\n <\/a> <\/p>\n Collecting<\/em> data is the easy part of the process. Managing customer data and turning it from a pile of numbers into actionable information is the tricky part but absolutely essential. These are the top five tips for managing customer data I collected from experts.<\/p>\n Your company can\u2019t get coherent, actionable customer data without having a single source of truth<\/a>. This starts with your definition of a customer. \u201cI believe the most important practice in customer data management is establishing a unified, consistent definition of \u2018customer\u2019<\/strong> across the entire organization,\u201d Binod Singh<\/a>, founder of Cross Identity<\/a>, shared with me.<\/p>\n Sales might define a customer as anyone who\u2019s purchased in the last five years, while marketing might only consider customers active if they\u2019ve engaged in the past year. Without a common definition, it\u2019s easy for data to become fragmented or for teams to make decisions based on incomplete or inconsistent data.<\/p>\n Binod Singh explained how he handles this challenge at his company: \u201cWe try to focus on creating a company-wide standard for customer status and criteria, so every team can confidently work from the same 360-degree view. This alignment allows us to provide personalized and relevant interactions across channels, which I believe is crucial to improving customer experiences.\u201d<\/p>\n The information you get out<\/em> of your customer data management systems is only as good as the information you put in<\/em>. I think the best way to manage your customer data is to always prioritize accuracy and real-time updates \u2014 the result is a comprehensive picture that empowers decision-making.<\/p>\n \u201cIf you aren\u2019t focusing on accuracy and real-time updates<\/strong>, you run the risk of eroding trust with your customers by making mistakes in your engagement,\u201d shared Laura Hill<\/a>, marketing manager at KNB Communications<\/a>.<\/p>\n \u201cWhen your data is accurate and up-to-date, you\u2019ll be able to have more meaningful and genuine interactions, which leads to better outcomes.\u201d Laura recommends that you consistently clean, standardize, and review your data.<\/p>\n Prioritizing segmentation in your customer data strategy creates opportunities <\/strong>for personalized customer experiences, such as sending customers personalized emails or targeting them with relevant promotions.<\/p>\n Josh Neuman<\/a>, founder of Chummy Tees<\/a>, shared an example of how this looks in his business: \u201cWhenever someone buys one of our funny or custom tees, we tag their preferences \u2014 whether it\u2019s based on design style, purchase frequency, or even the time of year they tend to shop. For example, we\u2019ll send new animal-themed designs to people who\u2019ve bought cat or dog shirts in the past.<\/p>\n \u201cSegmentation ensures we don\u2019t waste time or money on campaigns that won\u2019t land. Plus, it keeps customers engaged by showing them stuff they actually care about.\u201d<\/p>\n I know it\u2019s natural to focus on the loudest numbers when you start to analyze customer data, but Jake Ward<\/a>, founder of Kleo<\/a>, recommends an unconventional approach: actively engaging with the silent<\/em> data.<\/p>\n \u201cWhat I mean by this is focusing not just on the obvious metrics like open rates or clicks but on the data that isn\u2019t making noise,\u201d Jake told me. Listening to the noisy and<\/em> silent data in your business can look like:<\/p>\n \u201cIt\u2019s about reading between the lines of your data and acting on the gaps<\/strong>, not just the spikes,\u201d explained Jake. \u201cThat\u2019s where the real value lies \u2014 finding the trends in what\u2019s not<\/em> happening.\u201d<\/p>\n A proactive approach to customer data management is implementing a data classification system. Adhiran Thirmal<\/a>, solutions engineer at Security Compass<\/a>, encourages you to think about it this way:<\/p>\n \u201cConsider it like packing up your data in tidy boxes according to how sensitive it is and under what regulations. When you separate data into types \u2014 personal, financial, or otherwise not sensitive \u2014 you can then implement the appropriate protections and permissions.\u201d<\/p>\n Not only is this a great practice to ensure that personal data isn\u2019t hacked, but it makes it easier to meet GDPR and HIPAA regulations as well. I think it also promotes an organizational culture of accountability <\/strong>so everyone knows that data needs to be handled carefully.<\/p>\n <\/a> <\/p>\n Customer data management platforms take a complex, multi-dimensional task and simplify it into a single source of truth for your organization; it\u2019s the glue that holds your overall strategy together. A tool guides you through important decisions like how data will be:<\/p>\n There are countless customer data management tools on the market \u2014 we share details of our top picks in our data management platforms guide<\/a>, and I\u2019ll also share overview recommendations below.<\/p>\n <\/a> <\/p>\n What should you look for in a good data management platform? Here are the qualities I\u2019ve found the good platforms will have.<\/p>\n An effective tool will pull all available customer information from diverse data points to create one single source of truth for your company. This includes first-, second-, and third-party data. Data options also include structured, unstructured, and semi-structured data, as well as \u201cbig\u201d and \u201csmall\u201d data, with companies shifting towards small data.<\/p>\n Statistic<\/strong>: Gartner predicts<\/a> that by 2025, up to 70% of organizations will shift focus from big data to small data.<\/p>\n While a high-level understanding of these data types and how they work is beneficial, a good tool will help educate your team and aid in decision-making.<\/p>\n Consider<\/strong>: Google BigQuery<\/a>, a data management platform that gathers data from diverse points and helps businesses unlock their data potential.<\/p>\n Source<\/a><\/em><\/p>\n Legal compliance isn\u2019t a one-time fix \u2014 it\u2019s a moving target. Standards are actively changing as new laws are introduced, and they also vary depending on the location of your customers.<\/p>\n You may have heard of GDPR<\/a> or CCPA<\/a> regulations \u2014 those common abbreviations stand for General Data Protection Regulation (in the European Union) and the California Consumer Privacy Act (California only). Data tools need to be aware of and in strict compliance with these laws based on customer location.<\/p>\n The market is being flooded with AI-generated data tools that may or may not be compliant with current laws. Plus, even big data companies get it wrong sometimes. I received a $500 payout from a class-action lawsuit against Facebook when it unlawfully collected and stored data from Illinois residents.<\/p>\n Remaining lawful in your data management strategy is non-negotiable. A good data management system understands the past, present, and future of lawful data collection.<\/p>\n Consider<\/strong>: Adobe Audience Manager<\/a> for its data governance and leadership in the industry.<\/p>\n Source<\/a><\/em><\/p>\n I mentioned that Adobe Audience Manager has built-in data governance<\/a>, but what does that mean? While governing bodies regulate how data can be collected and used externally, each company\u2019s data governance strategy decides how that will be done internally.<\/p>\n If you\u2019re a small business, startup, or bootstrapped business, I\u2019ve learned firsthand that digging into the nuances of data governance is a task that\u2019s very costly to your time. Using a tool that has built-in governance will provide a framework for data quality, usage, and stewardship.<\/p>\n Consider<\/strong>: Adobe Audience Manager or IBM Db2\u00ae Hybrid Data Management<\/a> for advanced data governance strategies.<\/p>\n Source<\/a><\/em><\/p>\n As your company grows, so do your data management needs. This makes scalability a huge perk for startups and rapidly-growing companies, and a step in future-proofing your investment.<\/p>\n A scalable customer data management tool is robust enough to handle mass quantities of data elegantly without slowing down or creating data silos, while also being responsive enough to handle changes. I suggest growing companies look for reliability, consistency, and scalable pricing.<\/p>\n Consider<\/strong>: Salesforce Customer 360<\/a> for its scalability and enterprise packages. I first used Salesforce when I was working at one of the largest nonprofits in the U.S. \u2014 its bandwidth can handle small businesses all the way up to major ventures.<\/p>\n Source<\/a><\/em><\/p>\n It feels like there\u2019s a new data breach in the news every other week, partially because threats are constant and partially because not all companies prioritize data security.<\/p>\n Statistic<\/a><\/strong>: Email is the most common vehicle for malware, and 94% of organizations have reported email security incidents.<\/p>\n Security matters for everyone, but it\u2019s particularly important for companies that process sensitive data such as medical or financial records. A data breach isn\u2019t always 100% preventable, but companies reduce their odds of it happening to them when they invest in data management software that prioritizes security.<\/p>\n Consider<\/strong>: Snowflake<\/a> for its encryption and data protection.<\/p>\n Source<\/a><\/em><\/p>\n All the data in the world can\u2019t improve company efficiency if your customer data platform is too difficult for you (and your team) to use. Company-wide adoption relies on how user-friendly the platform is for your team.<\/p>\n Anything that\u2019s not automatically collected needs to be input manually, such as at-home customer support visits from company reps who work in the field. Avoid the mistake of using a customer data platform that\u2019s so technical only certain teams feel comfortable accessing it. This leads to incomplete pictures and frustration.<\/p>\n Insight<\/strong>: A steep learning curve is the #1 complaint in customer reviews for data platforms.<\/p>\n I looked for a statistic on the cost of a slow team-wide software adoption, but then I realized I didn\u2019t need one; we all know how bad it is because we\u2019ve all been there before. It\u2019s like pulling teeth to get team members to use a platform that they don\u2019t like, and it\u2019s costly when team members drag their feet.<\/p>\n Consider<\/strong>: Twilio Segment<\/a>, whose online reviewers specifically mention how lightweight and easy to use the platform is.<\/p>\n Source<\/a><\/em><\/p>\n You\u2019ll need help along the way to take such a vast, complicated tool and tailor it to your specific customer data needs; a good tool will provide excellent support for you along that journey.<\/p>\n All customer data platforms, no matter how user-friendly, will require assistance from customer support. Good customer support in a CDP means quick response times, support reps who deeply understand the product, and a team who is also invested in helping you use it correctly.<\/p>\n Consider<\/strong>: ActionIQ<\/a>, which gets praise from online reviewers for its customer service. It gets top marks from existing customers \u2014 Gartner<\/a> reported that 100% of surveyed participants recommended ActionIQ to others.<\/p>\n<\/a>Let\u2019s get into what an effective customer data management strategy<\/strong> looks like and which tools you can use to make it easier.<\/p>\n
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What Is Customer Data Management?<\/h2>\n
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Why Is Customer Data Management Important?<\/h2>\n
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Experts\u2019 Best Practices for Customer Data Management<\/h2>\n
Identify a \u201ccustomer.\u201d<\/h3>\n
Ensure real-time updates.<\/h3>\n
Segment users.<\/h3>\n
Track silent data.<\/h3>\n
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Use a data classification system.<\/h3>\n
Why a Customer Data Management Tool Can Help<\/h2>\n
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How to Choose a Customer Data Management Platform<\/h2>\n
Aggregated Data<\/h3>\n
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Legal Regulations<\/h3>\n
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Data Governance<\/h3>\n
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Scalability<\/h3>\n
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Security<\/h3>\n
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Ease<\/h3>\n
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Customer Support<\/h3>\n
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