Agency

The marketer’s guide to conquering data quality issues


Picture this: You’ve just launched a major marketing campaign. The strategy is solid, the creativity is on point. But as the results roll in, something’s off. Conversion rates are low, customer feedback is mixed, and your sales team is grumbling about lead quality.

The culprit? Poor data quality — a silent killer that can torpedo even the most brilliant campaigns. Most marketers don’t realize how much it’s costing them until it’s too late.

I’ve been there. I’ve seen dirty data drain budgets, crush productivity and damage customer relationships. But I’ve also learned how to spot these issues early and fix them.

In this article, we’ll dive into the hidden costs of poor data quality. I’ll share real-world examples of how bad data hurts your bottom line and walk you through a step-by-step process to audit and clean up your marketing data. By the end, you’ll have the tools to transform your data from a liability into your secret weapon.

Ready to stop throwing good money after bad data? Let’s dig in.

Understanding the impact of poor data quality

Poor data quality isn’t just an annoyance — it’s a profit-draining, time-wasting, reputation-damaging problem. Here’s what you need to know about its impact.

Wasted marketing spend

Bad data bleeds your budget dry. It’s that simple. When your customer data is inaccurate or outdated, you’re essentially throwing money out the window. Here’s how:

  • Misdirected ads: You’re paying to show ads to people outside your target market or who have already converted. I worked with a company that wasted 30% of their ad budget on users who had already purchased their product — all because the customer database wasn’t synced properly.
  • Ineffective targeting: Your segmentation is only as good as your data. Inaccurate information leads to poorly defined audience segments, meaning your carefully crafted messages fall on deaf ears.
  • Budget misallocation: Without reliable data, you’re flying blind with campaign planning. You might overspend in areas that don’t deliver results or underfund high-potential channels.

The fix? Start by implementing regular data cleansing processes. Use data validation tools to catch errors early, and set up automated systems to keep customer information current. It’s an upfront investment that pays for itself many times over.

Dig deeper: B2B marketers say improving data quality is top priority

Lost productivity

Time is money, and bad data is a notorious time thief. 

Consider a marketing team that discovers significant discrepancies in their customer data. Every hour spent tracing the roots of these inaccuracies, reconciling conflicting reports from different departments, and correcting entries is time lost from strategic activities or creative endeavors. 

For example, a team plans a major product launch, but due to faulty data, they must stop and fix customer segmentation errors. This delays the launch and requires additional rounds of testing and adjustment, consuming valuable time and energy that could be directed toward more productive tasks.

To avoid this nightmare, invest in data quality upfront:

  • Implement standardized data entry procedures across all teams.
  • Use data validation tools to catch errors in real-time.
  • Schedule regular data audits to identify and correct inconsistencies.
  • Train your team on data best practices — make quality everyone’s responsibility.

Damaged customer relationships

Faulty data can have dire consequences on customer relationships. 

Imagine a company sending out a promotional email intended for new customers, but mistakenly targets long-time clients with an offer for first-timers. This confuses recipients and makes loyal customers feel undervalued and misunderstood. These blunders erode trust and discourage engagement, turning what should have been a simple campaign into a customer service challenge.

The lesson? Treat your customer data with the respect it deserves:

  • Implement a single source of truth for customer data across all departments.
  • Use double opt-in processes for email subscriptions to ensure accuracy.
  • Give customers easy ways to update their information.
  • Always, always double-check your data before launching personalized campaigns.

Remember, every data point represents a real person. Treat it with care and your customers will reward you with loyalty and trust.

Identifying signs of poor data quality

Detecting the early signs of compromised data quality can save your marketing campaigns from unexpected pitfalls. Here are some critical indicators that suggest your data might not be up to par and what they could mean for your marketing efforts.

  • Inconsistencies across platforms: Pull up your CRM, email marketing platform and analytics dashboard. Do the numbers match? If not, you’ve got a problem. Look for discrepancies in basic info like customer counts, engagement rates or revenue figures. These inconsistencies often point to data silos or integration issues that need addressing ASAP.
  • High bounce rates and low conversion metrics: Your email bounce rate suddenly spikes or your ad conversion rate plummets. Before you panic about your creative, check the data. These metrics often signal outdated contact info or poor audience targeting because of bad data. Dig into the specifics — are certain segments performing worse than others? That’s your starting point for a data cleanup.
  • Feedback from the frontline: Your customer service team is a goldmine of data quality insights. Are they constantly fielding calls about incorrect order information? Getting complaints about irrelevant product recommendations? These are clear signs the data needs work. Set up a formal process for CS to report data discrepancies they encounter. Their real-world feedback is invaluable for pinpointing where your data is falling short.

Dig deeper: 6 marketing automation use cases where AI can help with data quality

How to conduct a data quality audit

A thorough data quality audit is your roadmap to cleaner, more effective marketing data. Here’s how to tackle it:

Step 1: Define what good data quality means for your business

Start by setting clear standards. What fields are critical for your marketing efforts? What level of accuracy do you need? For example, you might decide that customer email addresses must be 99% accurate, while job titles can have more wiggle room. Document these standards — they’ll guide your entire audit process.

Step 2: Assess current data systems and integration

Map out every place where customer data lives in your organization. CRM, marketing automation, e-commerce platform, customer service software — leave no stone unturned. Then, examine how data flows between these systems. Are manual processes creating bottlenecks? Automated integrations that might be failing? Understanding your data ecosystem is crucial for identifying weak points.

Step 3: Identify data quality metrics for regular monitoring

Choose key metrics that align with your data quality standards. Some essentials to consider:

  • Completeness: What percentage of critical fields are filled out?
  • Accuracy: How often is data verified against a trusted source?
  • Consistency: Do data points match across different systems?
  • Timeliness: How quickly is new information updated across platforms?

Set up dashboards to track these metrics. This gives an at-a-glance view of your data health and helps spot trends early.

Implementing data quality fixes

You’ve identified the problems. Now it’s time for action. Here’s how to clean up your existing data and set up systems to keep it squeaky clean going forward.

Clean existing data: Cleaning your data involves a range of techniques from simple corrections, like fixing typos and filling in missing values, to more complex data scrubbing, which may involve sophisticated algorithms to identify outliers and anomalies. Here’s the game plan:

  • Standardization: Start by setting rules for data format. Phone numbers, addresses, job titles — decide on a consistent format and apply it across the board. Use find-and-replace functions for quick wins.
  • Deduplication: Merge duplicate records carefully. Look beyond exact matches — fuzzy matching algorithms can catch similar entries that might be the same customer.
  • Validation: Cross-reference data against trusted sources. Email verification services can flag invalid addresses. For B2B, services like ZoomInfo can help verify company information.
  • Enrichment: Fill in the gaps. Use data appending services to add missing information like company size or industry for more robust segmentation.
  • Manual review: Some issues need a human touch. Flag complex problems for your team to review.
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Preventing future data quality issues: Cleaning is great, but prevention is even better. Here’s how to keep your data pristine:

  • Implement data entry standards: Create clear guidelines for entering data across all platforms. Use dropdown menus and form validation where possible to enforce these standards.
  • Regular audits: Schedule monthly or quarterly data quality checks. Use the metrics you identified earlier to track progress over time.
  • Staff training: Your team is your first line of defense. Conduct regular training sessions on data best practices. Make data quality a part of everyone’s job description.
  • Employ AI for continuous monitoring: Tools like Talend Data Inventory use machine learning to constantly monitor your data and flag potential issues when they happen.
  • Create a data governance team: Designate individuals responsible for overseeing data quality across departments. This team should meet regularly to address issues and update processes.
  • Implement a Single Customer View: Invest in technology that creates a unified customer profile, pulling data from all touchpoints. This reduces inconsistencies and provides a more accurate picture of your customer.

The bottom line on data quality

Marketing’s effectiveness hinges on data quality. Bad data isn’t just a nuisance — it’s a profit-killer that wastes budgets and damages customer relationships.

But now you’re equipped to tackle this head-on. Start with a thorough data audit. Clean ruthlessly and prevent diligently. Invest in the right tools and make data quality a core competency across your team.

This is your new ongoing mission. It requires consistent effort, but the rewards are massive: razor-sharp targeting, sky-high ROI, and rock-solid customer trust.

Your data is waiting for a transformation. Dive in, clean it up, and watch your campaigns deliver results you never thought possible.

Contributing authors are invited to create content for MarTech and are chosen for their expertise and contribution to the martech community. Our contributors work under the oversight of the editorial staff and contributions are checked for quality and relevance to our readers. The opinions they express are their own.



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