How to choose the right visual analytics platform for your business
Learn how to choose a visual analytics platform that unifies your data, embeds AI insights in the flow of work, and keeps governance strong as you scale.
Learn how to choose a visual analytics platform that unifies your data, embeds AI insights in the flow of work, and keeps governance strong as you scale.
Businesses have never found it difficult to generate data. The problems start when organisations try to transform all of that information into coherent insights for rapid decision-making. As per our State of Data and Analytics Report , 94% of leaders feel that their organisation should be getting more value out of the data it possesses.
Source: Salesforce, State of Data and Analytics Report
The issue isn’t a lack of dashboards and reporting. It’s that insights are trapped, inconsistent, or arrive too late to be useful. Leaders make calls with only half of the picture. Teams spend more time piecing together threads of information than using insights to make smarter day-to-day decisions.
A visual analytics platform helps to solve this problem by offering an interactive way for businesses to visualise, explore, and draw meaning from their data. Implemented correctly, a strong platform will empower teams with self-service business intelligence and surface context-rich AI insights directly in the flow of work, speeding up decision-making by turning insights into clear, actionable next steps.
Seventy-nine per cent of analytics and IT leaders are increasing their investment in visualisation and analytics tools, but it isn’t just a case of throwing money into BI tools and seeing what sticks. Finding a strong platform means looking beyond the basics to find a solution with features that will help your insights stay consistent and useful as you scale.
In this guide, we’ll break down how visual analytics works, the features you should prioritise, and how to evaluate and choose a platform that’s the right fit for your business environment.
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A visual analytics platform is a system that helps businesses reason with data through interactive visual dashboards. Think of it as an all-in-one analytics hub where you can turn big data into explorable insights that support smarter day-to-day decisions.
The interactive element is what makes visual analytics solutions unique. Rather than creatingstatic charts like you’d draft up in Excel and paste into a slide deck, strong platforms provide an end-to-end way to explore, understand, and communicate data. You can visualise trends, follow the thread to learn why those trends are occurring, ask questions to deepen your understanding, and then share this context with teams, all in the same flow of work.
In essence, this moves your team from basic retrospective reports to a living, real-time view of your performance, all supported by:
This accelerates decision-making, aligns teams on a single source of truth, and gives them the tools to explore data and make decisions independently. Put together, this supports everything from forecasting and customer journey planning to risk monitoring and sales planning.
Modern analytics platforms like Tableau and CRM Analytics take these capabilities further by embedding AI agents that can surface insights and take action directly in the flow of work.
Source: Tableau
Rather than having to enter a dashboard, find the visualised report, interpret what the graph is showing, then switch tools again to do something about it, an agent will simply summarise what’s changed directly in your current workflow.
And if you need more information, simply ask a clarifying question and the agent will pull in the relevant context and help you explore the drivers behind the metric. This makes it easier to get timely insights that drive real-time business decision-making.
Any business intelligence platform can help you build a few dashboards and track KPIs. But as agentic AI advances, what sets the best platforms apart is their ability to surface recommendations proactively, carry insights into the places where businesses make decisions, and provide a clear, intuitive pathway from spotting trends to acting on them.
As per our State of IT: AI and App Development Report, 83% of developers say AI agents will be central to business operations. But, tellingly, 69% say they lack the resources to deploy them, and 82% say their infrastructure will need a full overhaul before they do so.
Source: Salesforce, State of IT: AI and App Development
An advanced analytics solution helps to bridge this gap by giving businesses a foundation that they can use to drive value from data, move towards predictive analytics, and embed agentic capabilities directly in workflows, without building everything from scratch.
So, when you’re evaluating visual analytics platforms, look beyond the demo to assess whether the solution will be able to deliver insights at scale and support the in-flow decision-making that will help you stay agile as you scale. Here are some key features to look for:
| Features to look for | Why it’s important |
|---|---|
| Interactive exploration | Users should be able to slice up data, drill down into details, and explore trends without having to generate new reports each time. |
| Integrations and data connectors | Look for integrations and data connectors that pull together insights from your CRM and other systems into a single view. |
| Built-in data-prepping | Strong platforms will help you clean, join, and standardise data so it's ready for analysis. |
| A standardised KPI layer | Clear, standardised KPIs make metrics consistent, trusted, and reusable by teams and AI. |
| Proactive insights | Look for a platform that will proactively surface insights and patterns (without you having to find them yourself). |
| AI analytics | Look for AI capabilities that help you spot anomalies, forecast outcomes, and query data in natural language. |
| Governance and security controls | Make sure the platform protects sensitive data, enforces access rules, and helps you maintain compliance as you scale up. |
A static report showing that revenue has increased is great. What happens, though, when a stakeholder wants to drill down into the reasons behind the shift? If the only way your teams can answer questions is to send a request to an analyst and wait for the results, all your data analytics tool is doing is bundling information into a neat package.
A good starting point is to look for a visual analytics platform that offers interactive data visualisation tools. You should be able to start with a primary metric and then break it down, isolate different areas, and compare it to other statistics – all in the same workflow. For instance, you might:
All of this shrinks the time between asking a question, getting an answer, and using what you’ve learned to make a context-led decision.
As an example, in Tableau, you can start with a visual, then cut, regroup and reframe the data in different ways to isolate different areas. Along the way, AI can highlight key insights and recommendations to help you find what’s important faster. And if you need to dig deeper, you can talk to Tableau in natural language and get an instant response.
Self-service exploration also opens the door for non-technical teams to ask and answer questions independently. Currently, only 48% of business leaders are confident they can find, analyse, and interpret data on their own. The right visual solution can democratise access to descriptive analytics, shortening decision cycles and helping teams move faster.
In business, the answer to a vital question rarely comes from a single system.
Take a common query like “why is our churn rate increasing?”, for instance. To find the cause, you’ll need to gather information from support cases, sentiment scores, onboarding completion, and billing signals. If your analytics platform can’t reliably pull all of these inputs together, you’ll never be able to make decisions based on the complete picture.
This is why it’s vital to choose a solution that can gather all of your data into a single view. Eighty-nine per cent of data and analytics leaders see integrated data as the key to meeting customer expectations, yet many still don’t have this foundation in place, with 59% of IT leaders saying their organisation lacks a unified data strategy.
Source: Salesforce, State of Data and Analytics
A strong visual analytics solution will offer robust connectors and flexible integration options that help you bring CRM and non-CRM data together into a single source of truth. This gives teams a complete, decision-ready view instead of inconsistent, disconnected snapshots.
And once you get this part right, the benefits will go far beyond reporting. Integrated analytics unlocks more accurate forecasting and powers truly personalised customer experiences. It also lays the foundation for agentic AI by grounding agents in rich context, letting them surface more relevant insights and deliver real-time, accurate recommendations.
This process of bringing together humans, data, and agents is the pathway to becoming a truly agentic enterprise. If you’d like to learn more, see Stephen Hammond, EVP and GM at Marketing Cloud, discuss how powering agents with data helps marketing teams move from campaign automation to real-time two-way conversations. You can stream the full keynote from our recent Agentforce World Tour in Sydney on Salesforce+.
Source: Salesforce
Data 360 and Tableau will help your business bring customer and business data together, enrich it with context, and then visualise and explore that unified foundation so teams (and agents) can confidently take action from a single, trusted view.
It’s one thing to bring your data together into a connected view, but if that data is incomplete, inconsistent, duplicated, or stitched together with brittle connectors, every visualisation will tell different versions of the truth, and teams will lose trust in your platform.
Just 53% of IT teams have complete confidence in the accuracy of their data. For marketing, sales, and customer service, that figure drops even lower. If you can’t trust your data, you can’t trust your analytics.
Source: Salesforce, State of IT: AI and App Development
So, when you’re choosing a visual analytics platform, consider whether the platform can bring your data together, along with how quickly the solution will help you turn raw data into something reliable. In practical terms, your chosen tool should help you:
For instance, with data management within Tableau, you can build repeatable prep flows that clean, reshape and combine data before it ever reaches a dashboard. And now, with Tableau Next, you don’t have to figure out every prep step alone. Simply describe the transformation you want in natural language and your agent will recommend the right cleaning steps, build a flow, and iterate until the data is ready for analysis.
Source: Tableau Next
Watch this feature in action via our Learning at Tableau Conference 2025. You can stream the full keynote on-demand at Salesforce+
Connecting and cleaning your data goes a long way toward reliable insights, but there’s still one missing piece of the puzzle. To generate trusted insights, you need to ensure every dashboard is calculating key metrics from the same underlying logic.
Different metrics can be interpreted in different ways. For instance, a report generated by an IT team might view “new customers” as anyone who’s created an account, whereas a sales report only counts customers who’ve paid. Both are useful, but they answer different questions. Without clear definitions and naming conventions, teams can end up comparing two different metrics as though they’re the same thing. This leads to confusion.
This is why it’s so important that your analytics platform has a semantics layer that lets you define and govern metrics as shared business definitions. Think of it as a glossary that makes sure every visualisation speaks the same language. Your platform should offer:
In Tableau Next, this is handled through Tableau Semantics, an AI-driven layer integrated into Data 360 that translates raw data into a connected language, keeping your KPIs consistent and your analytics explainable across departments and teams.
As well as ensuring every report is generated in a consistent way, this single source of truth also enriches agents with context to help them make more insightful recommendations.
Real-time analytics only matters if it leads to real-time decision-making, and that depends on two things: connected data and proactive insights that reach people where they’re already working. This was a key talking point at our 2026 Agentforce World Tour in Sydney – while unified data is the bread and butter of successful agentic workflows, it’s real-time activation that makes decisions (and agents) more relevant, reliable, and accountable.
In simple terms, you can’t make agile calls if leaders have to go hunting through dashboards and reports for insights. This is why proactive insights are now one of the defining features in modern visual analytics tools. Instead of relying on a data expert to remember which dashboard to open, a strong platform can:
Essentially, this turns analytics from a “pull” model (find the dashboard and explore the data) to a “push” solution (the insight comes directly to you).
For instance, Tableau Pulse will automatically surface what’s changing in your key metrics and send curated, interactive digests to the right people in the places they already work, like Slack or email. You can also embed these analytics directly in your CRM so teams can see what’s changed and act on it without leaving their day-to-day tools.
Source: Tableau Pulse
Proactive insights can surface what’s changed, but the part that often slows businesses down is when they need to dig into the “why” behind a trend or pattern. This is the point where AI-augmented analytics become particularly helpful.
With AI embedded into your visual analytics platform, you can ask clarifying questions, deep dive into different areas with personalised insights, and get real-time recommendations to inform next steps, all by conversing in natural language. This helps teams:
Put together, these benefits have been reported to help organisations achieve a 32% increase in user productivity and a 26% decrease in time to analyse key information.
If you’d like to learn more about how AI analytics can empower your business within Tableau, Trailhead’s range of free courses is a great place to start. Kick off with Tableau AI: Quick Look to see what’s possible.
The fastest way to kill the momentum of your analytics is a lack of security and governance. When the wrong person accesses the wrong dashboard, or an insight exposes sensitive data, this is both an internal headache and a major compliance risk.
Agentic analytics raises the stakes even more because mistakes are amplified. If an agent is working from the wrong context or with the wrong permissions, it can spread bad recommendations quickly or surface information to the wrong audience before anyone notices. Watch the video below to see Ann Funai, CIO of IBM, discuss the importance of governance and security in the age of AI agents.
Eighty-eight per cent of data and analytics leaders say AI advances demand new approaches to data governance, yet only 43% have formal frameworks in place. At the same time, customer belief is fragile, with only 42% trusting businesses to use AI ethically .
Source: Salesforce, State of Data and Analytics
This gap is one of the big roadblocks to AI implementation, and also why businesses are so wary of getting it wrong – one mistake can lead to a regulatory pitfall or a loss of customer trust that’s hard to win back. With that said, it’s vital to put governance front and centre when you’re choosing a platform. Look for:
Data governance in Tableau is supported with granular access controls and auditability. And for deeper security, the Agentforce Trust Layer brings together data masking, toxicity detection, secure grounding and audit logging to keep AI analytics and data insights secure and traceable.
Source: Agentforce Trust Layer
A well-designed demo can make almost any visual analytics platform look enterprise-ready. It’s once you start to integrate the platform with messy data, workflows, and processes that things can start to fall apart.
Make a list of questions that you can use to dig deeper during the demo phase. The queries below will help you work out whether a given platform truly offers the features listed above, or if it’s just a nice-looking demo that will fall apart in the real world.
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There is no single best visual analytics platform. The right solution for your business will depend on your current data readiness, your scalability needs, and how far you’re looking to push your analytics and business intelligence toward agentic AI. Here are five platforms worth examining.
| Platform | Best for | Strengths |
|---|---|---|
| Tableau Next + CRM Analytics + Data 360 | Enterprises that want to unify data, agents and analytics to bring AI embedded insights and recommendations directly into the flow of work. | Strong agentic ecosystem, robust data unification, trusted semantic layer for consistent analytics, actionable insights embedded into workflows, secure governance. |
| Microsoft Power BI (with Copilot) | Companies that are already invested in the Microsoft 365 ecosystem | Solid functionalities within the Microsoft stack, Copilot supports natural language so you can talk to data. |
| Google Looker | Companies that want to add a governed semantic layer to cloud warehouses. | LookML makes it easy to build robust semantic data models. |
| ThoughtSpot | Simple, conversation-first exploration for small businesses | Spotter supports natural-language Q&A and exploration. |
| Amazon QuickSight | Teams using AWS that need cost-controlled analytics | Strong embedded analytics options, flexible per-user pricing structure |
As Invest Blue , Australia’s trusted provider of financial advice, started to scale, they ran into a familiar problem – the business had an abundance of data, but no way to consistently turn it into timely insights. Revenue signals and customer information were scattered across systems, making it harder to build relationships with clients and keep services consistent.
To fix this, Invest Blue began working within Data 360 to extract and connect its transactional data and then map it back to the right clients and agreements within Financial Services Cloud. This unified foundation then fed into Tableau dashboards and reports, giving teams an easy way to explore revenue, client acquisition, retention, advisor performance, and risk without stitching together all of the insights by hand.
With Salesforce, we will be able to paint a holistic picture of our clients, so we can truly understand them and deliver on their needs.
Lexi GloverHead of Strategic Execution, Invest Blue
With this shift, Invest Blue moved from manual daily reports to automated hourly refreshes, reducing manual effort while giving teams a more confident view of performance and client activity. This helped the business achieve a 25% uplift in client meetings within six months and a 19% reduction in overdue tasks within the first month.
The transition to Data 360 + Tableau is also setting the stage for smarter advice delivered by agentic AI, which can surface relevant context in real-time to help advisers prepare for client meetings. This lets Invest Blue move towards a proactive service model where advisers can spend less time chasing up information and more time deepening client relationships.
Deciding between business intelligence platforms really boils down to a single question: will it help my teams make decisions faster in the flow of work, with enough context, trust, and consistency to act with confidence as my business grows?
Pick the features that are most important to your business, use these to shortlist different candidates, and leverage the demo stage as a way to stress-test the platform. From there, you’ll be in the best position to select a platform that’s the right fit for your growing business.
There’s a reason Tableau has been a leader in the Gartner Magic Quadrant for 13 years. Paired with CRM Analytics and Data 360, our platform can help you unify and prepare your data, standardise logic across teams, and surface valuable agentic insights directly in the flow of work, giving you a clearer path to turn data into actionable strategy.
Watch the demo today to see what’s possible or get connected with an expert to start mapping our visual analytics platform to your own business case.
Traditional BI is usually focused on static reports and dashboards that answer predefined questions. In contrast, visual analytics tools are designed for exploration. They let teams interact with data, follow trends to learn more, and share context-rich insights rather than relying on fixed outputs that need rebuilding whenever a new question needs answering.
The best data visualisation techniques are the simplest ones that make it easy to see changes at a glance. Think of line charts for trends over time, bar charts for comparisons, and heatmaps for spotting hotspots or outliers. What’s important is consistency. Use the same chart types for the same questions so leaders can interpret insights quickly without relearning the format each time.
Treat it like you would any new feature launch. Start with a few basic dashboards and have teams explore them as a proof of concept, and set up your semantic layer early so teams learn to trust the insights the tool provides. Training is also a must. Platforms like Trailhead provide free learning pathways to help leaders and teams learn the basics of visualisation.