Bad data doesn’t just slow you down; it can seriously hurt your business.
Poor data chips away at everything. Your marketing, sales forecasts, and decision-making. Primarily, when you’re relying on it to drive key moves. And when you do? It will cost you time, money, and customer trust.
Even if your data starts great, it won’t stay that way long. On average, 70.3% of it goes out of date every year, fast. Gartner’s study shows that some out-of-date and potentially inaccurate data costs businesses up to $15 million.
Fortunately, the right strategies and tools can help you improve data quality, reducing missed business opportunities and potential liabilities from data hygiene issues.
Poor data quality can have a significant knock-on effect on sales, marketing, and reporting teams.
In 2025, good data will not be just IT’s problem; it will be what makes the whole business tick.
That’s why having a solid data hygiene strategy matters. It keeps your info accurate, relevant, and ready to go.
Otherwise? You’ll end up calling people who don’t want to hear from you (those on DNC lists) and chasing cold leads while the hot ones slip away. Your segmentation, pipeline forecasting, and ability to scale personalised outreach can all be derailed without anyone realising it. When this happens, sales performance can drop quickly.
And now, additional stressors are making data quality more important than ever. Let’s discuss each.
With AI adoption accelerating across business functions, the quality of your data directly impacts AI performance. Machine learning trained on bad data gives you bad insights. That just makes your existing problems worse.
The regulatory landscape has grown more complex, with the Digital Services Act joining GDPR and CCPA in demanding higher standards for data management. Poor data hygiene can create compliance risks that few businesses can afford, especially since they can cost you both customer trust and fines of up to 20 million euros.
Today, 71% of customers expect personalised experiences that demonstrate understanding of their needs and challenges. You can’t personalise anything without clean, accurate, up-to-date data. Full stop.
While maintaining data accuracy is an ongoing effort, let’s review seven highly effective strategies to improve sales data quality.
A data governance framework defines how your organisation collects, manages, and uses data. It determines who owns the data, your collection and storage standards, and accountability for things like legal compliance.
Instead of making decisions on the fly, you follow established guidelines for every data operation.
This approach ensures you comply with laws like GDPR and maintain consistent data quality. It includes automated systems that enforce your rules and regular checks to ensure everything stays on track.
For B2B companies, this means having proper procedures for handling prospect information and customer data. It builds trust by showing you take data protection seriously and helps avoid costly compliance violations.
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These tools can help you establish and monitor a data governance framework:
Consistent, regular data audits can help your team identify duplicates, flag anomalies, and discover outdated records that need modifying.
Set up a regular schedule—monthly for your CRM and quarterly for your data warehouse. First, focus on revenue-critical data: contact details, lead scoring fields, and account information.
If there are ongoing issues, look for patterns in what’s going wrong and why. For example, you may realise a problem with duplicate and siloed data happening across different platforms.
For best results, we strongly recommend creating audit schedules for different systems, including your CRM, ERP, and DWH platforms.
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These tools can help you conduct data audits and profiling:
Data validation prevents bad information from entering your systems in the first place. It's far easier to stop problems before they actually happen than fixing them after the fact.
Keep in mind that users may enter bad data for any number of reasons. They may share a false email address because they want access to a lead magnet but don’t want to be contacted, or it could even be an accident.
Set up real-time checks on your forms that verify email formats, confirm domains exist, and ensure phone numbers match country patterns. Add business-specific rules too; if you only serve enterprise customers, validate that the company size meets your minimum.
The key is balancing accuracy with user experience. Overly strict validation frustrates users and reduces conversions, so getting the necessary information is essential while delivering a seamless customer experience.
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In addition to custom validation scripts, these tools can help you verify data upon entry:
Data enrichment automatically fills missing information in your database using external sources. Even with perfect collection processes, gaps are inevitable—enrichment tools solve this without manual research. It can be part of platforms offering data as a service (DaaS).
These tools pull in firmographic data—like company size, industry, and revenue—based on a domain or name. They also enhance contact records with phone numbers, professional emails, and social profiles.
The best enrichment tools go beyond filling the gaps, however. They continuously update your data as circumstances change, which is particularly valuable for tracking job and company updates. This can reduce manual research time while continually improving data completeness and accuracy.
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These tools can facilitate data enrichment with exceptional data accuracy:
Consistent data formats save time and enable accurate cross-platform reporting.
Data standardisation ensures that “VP of Marketing,” “Vice President, Marketing,” and "Marketing VP” are all treated as the same job title by your systems.
Without this, inconsistent formats create chaos in reporting, lead prioritisation, and automation.
Create mapping rules for common variations in job titles, company names, and other key fields. Ensure data formats are consistent across all your platforms so that reporting is seamless.
For global businesses, account for international differences in naming conventions, address formats, and phone number structures.
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There are plenty of reasons you can end up with duplicate customer records, including:
This clutters your CRM fast. Luckily, the right tools can stop the sprawl and make sure you’re using the correct records. These tools allow you to automate merge logic based on priority fields.
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Tools that can help you identify and remove duplicate contact data include:
Your data hygiene procedures and policies will only be effective if your team understands them.
You should provide onboarding training for all new staff and quarterly refreshers to ensure everyone is still familiar with the training. Make new training available as soon as policies are set to change.
It is important to explain the impact bad data has on the business. In many cases, your team may feel more motivated to pay close attention to your internal policies when they understand how failing to use accurate data could result in thousands of euros worth of fines or declining sales performance.
This can encourage a data-first culture across GTM teams, ensuring that data quality will be an ongoing priority for everyone.
Onboarding and training tools like Trainual can help you both facilitate and monitor employee learning.
Data quality refers to the accuracy, completeness, consistency, and relevance of data. It is essential for marketing, sales, and product teams that want to take advantage of reliable insights, but it’s also critical to performance optimisation and legal compliance purposes.
If your team operates on outdated data, you can easily find yourself targeting the wrong ICP, resulting in ineffective campaigns, less pipeline, and fewer closed deals. It could also result in lost customer trust and potential compliance issues.
What are the common causes of poor data quality?
The most common causes of poor data quality include:
Data quality tools can automate the most time-consuming aspects of maintaining clean data.
They can:
This kind of automation can improve accuracy at scale and save time.
Yes, GDPR compliance absolutely is linked to data quality.
GDPR requires accurate and up-to-date data to ensure you’re contacting the right people with consent.
If some users have opted out or you’re relying on incorrect contact information, it can pose a problem. It may even increase your legal risk and lower user trust.
When selecting data quality tools, focus on solutions that align with your specific business needs and technical capabilities rather than trying to implement everything at once.
Prioritise key criteria
Look for tools that offer features like the following:
Understand different tool categories.
The exact features you need will depend on your existing business and data hygiene processes.
Data enrichment tools like Cognism and ZoomInfo fill gaps in your existing data.
Cleaning and standardisation tools like Talend and OpenRefine help normalise inconsistent information.
Validation tools like Validity prevent bad data from entering your systems.
Governance platforms like Collibra provide oversight and policy management across your entire data ecosystem.
Think about what obstacles your team currently has, and start there.
Start strategically.
Rather than implementing multiple tools simultaneously, start with one or two solutions that address your most pressing data quality challenges.
These might be enrichment tools if you have significant gaps in your prospect data, or deduplication tools if you’re struggling with multiple systems creating duplicate records.
A strategic start will ensure you’re first addressing your most significant challenges.
The seven strategies outlined above will give you a comprehensive approach to data hygiene, which can help improve the information that your marketing and sales teams rely on so heavily.
It’s important to remember that refreshing your data isn’t a one-time project; it needs to be an ongoing effort instead of a one-time clean-up effort.
Relying on tools like Cognism that can help you maintain data quality automatically can be essential to keeping your records up-to-date, actionable, and valuable.
Use automated tools to update your data. Book your demo with Cognism today.