Adverity, a leading data platform, recently unveiled six data visualization best practices to turn overwhelming data into decision-making insights and impactful marketing strategies.
Due to the rising importance of analytics and the like, brands and agencies have a vast amount of data at their disposal. The challenge isn’t just collecting this data — it’s making sense of it.
Adverity’s data visualization strategies allow businesses to cut through the noise, uncover key patterns, and drive performance with precision.
By implementing these measures, businesses can improve everything from daily campaign adjustments to long-term business planning.
Given that Adverity helps agencies connect, transform, and standardize marketing data to create a single source of truth, it has a first-hand blueprint for using data visualization to power smarter strategies and deliver real results.
“Agencies that embrace data visualization don’t just react to trends — they shape them,” the agency said.
“The right visuals turn raw data into compelling narratives, fuelling smarter decisions and higher-impact strategies.”
The platform allows marketers to automatically integrate data from over 600 sources every 15 minutes. This lets businesses work with data in real time, enabling teams to proactively adjust their strategies.
Turning Raw Data into Impactful Marketing Strategies
While this might sound overwhelming, implementing effective data visualization techniques can improve marketing analysis and decision-making.
To this end, Adverity outlined these six steps to help ensure your data works for you, not the other way around:
1. Understand your target audience
When creating data visualizations, it's essential to understand your target audience and their needs. Consider the following factors:
- Level of expertise: How familiar is your audience with the data and its context?
- Knowledge of the data: What background information do they already have about the dataset?
- Decision-making needs: What types of decisions will they need to make based on your visualization?
- Time availability: How much time can they realistically spend interpreting and analyzing the visualizations?
Answering these questions will inform the depth, complexity, and types of data visualization you need to create.
2. Choosing effective charts
While modern data visualization platforms offer a wide range of charts and graphics, choosing the right chart type will either make or break your dashboard, as choosing the wrong type can lead to confusion.
Choosing the right chart type depends on varying factors, such as your data, the needs and expertise of your audience, and the type of questions you want to answer.
For example, if you want to show trends over time, a line chart would be more effective than a bar chart, which is better suited for comparing categories. By choosing the right visuals for your data, you ensure clarity and meaningful insights for your audience.

3. Avoid misleading visuals
Small mistakes like changing the scale on an axis or omitting a data point can inadvertently create visuals that are confusing or misleading, eroding trust.

Adverity recommends using clear, consistent scales and labeling, and not skewing or selectively omitting data.
“Every misleading chart tells a story — just not the right one. When scales are inconsistent or labels are unclear, what looks like an insight is often just an illusion — and businesses that rely on these visuals risk making costly mistakes.”
4. Choose easily-recognisable colors
Colors can make visuals easier to understand and highlight key insights. However, Adverity cautions against using different shades of the same color palette as your audience might struggle to differentiate between values and series.
While many companies prefer dashboards that reflect their brand colors, it’s important to prioritize accessibility and clarity.
It is best practice as a data visualization technique to select colors that can be easily differentiated for people who might have vision impairments like color blindness.
5. Keep it simple
According to Adverity, the main goal of data visualization techniques is to communicate insights clearly and efficiently to avoid overwhelming the marketing team.

Essentially, use simple visualizations that are easy to understand, analyze, and act on.
“The best data visuals don’t overwhelm — they illuminate. Clean, straightforward visuals make reports more engaging and ultimately actionable, ensuring that key insights don’t just get seen, but get acted on.”
6. Add context
To make sure your dashboards are well-received and understood, add context through elements like titles, labels, and annotations.
These elements can be used to guide your audience through the data and better analyze it, allowing them to highlight key takeaways and provide additional insights or commentary.

Following Adverity’s data visualization techniques brings you one step closer to achieving data maturity, allowing you to spend less time manually consolidating data and more time focusing on creating visualizations that improve decision-making and drive results.