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1 min read

7 Ways to Use AI Chat to Boost Collaboration in Mural, FigJam, and Miro

Collaboration tools like Mural, FigJam, and Miro are staples of how modern teams can brainstorm, map ideas, align on plans, and build together. But a canvas alone can't tell you if you're on the right track or guide you to what comes next when progress stalls. That's where Optimal AI Chat and user insights come in.

By starting or bringing real user insights into the boards your team already works in, you can reduce ambiguity, ground discussions in real research, and accelerate decision-making. 

Here are 7 ways to use AI Chat alongside your collaboration boards.

1. Align on key objectives

Before your next planning session, use Optimal AI Chat to surface relevant insights from your interview recordings. Add a summary directly into your Mural, Miro, or FigJam board so everyone comes in with the same context and understanding of the objectives. Instead of starting with assumptions, your team can start with real user insights and clear trade-offs to discuss.

Try this prompt: "Summarize the key considerations for [decision topic] and flag any trade-offs we should discuss as a team."

AI Chat example

2. Create a user journey map

AI Chat can analyze interview transcripts and video recordings and highlight common jobs to be done, behaviors, and friction points. You can then map those steps visually on your board and identify where the experience breaks down.

Try these prompts: “Summarize the typical jobs to be done for the people we interviewed.”
“For this job you identified [paste job details], detail the journey steps.” 

3. Turn pain points into design and product decisions

AI Chat can analyze recurring themes from your interview recordings and convert them into concrete opportunities your team can explore next. Adding these to your board gives the team a clear starting point rather than a vague list of problems.

Try this prompt:  "Based on these pain points [paste notes or themes], suggest three product improvements we could explore."

4. Sharpen your marketing messaging

Interview insights aren’t just valuable for product, research, and design teams. Marketing teams can also use AI Chat to quickly evaluate messaging, positioning, and customer perception.

When running preference or concept testing interviews, AI Chat can quickly analyze the feedback and suggest positioning directions you can workshop on your board.

Try this prompt: “Suggest positioning options based on the interview feedback.”

5. Facilitate workshops

Running workshops and brainstorming sessions with cross-functional teams can be challenging. Conversations drift, discussions stall, and teams sometimes struggle to focus on the most important issues. 

AI Chat can help you structure the conversation before the workshop even begins by generating discussion guides based on user insights from your interviews. Add the chat outputs directly to your board to guide the session.

Try this prompt: “Generate a structured discussion guide based on the pain points of the interviewees.”

6. Make brainstorming more focused

Open brainstorming can be valuable. It can also be chaotic without clear direction. By leveraging AI Chat, you can guide your brainstorming sessions with intelligent suggestions, topic generation, and idea organization.

Try this prompt: “Generate 10 brainstorm ideas based on these user insights and group them into themes we could explore.”

7. Map complex processes

Visualizing complex processes and systems is easier with tools like Miro, FigJam, and Mural. AI Chat can help you map out each step. AI Chat can help break down a process step-by-step, highlighting decisions, dependencies, and potential friction points based on your interviews. Your team can then map these steps visually and identify opportunities for improvement.

Try this prompt: “Create a step-by-step process map for how users complete [task], including key decisions and potential friction points.”

Using Optimal AI Chat for seamless collaboration

The best collaboration happens when teams have the right information at the right time. 

Optimal AI Chat gives your team a jumpstart for your interview analysis: clearer inputs, faster synthesis, and smarter outputs that translate directly into what you're building on your boards.

Whether you're running a workshop, mapping a user journey, or planning a product launch, AI Chat helps you spend less time getting oriented and more time making decisions.

Ready to see what your team can do with it?
Learn more about best practices for AI Chat or book a demo

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1 min read

Speed, Quality, and Flexibility: Optimizing Your User Research Recruitment

Recruiting the right participants is one of the biggest challenges teams face when conducting user research. Poor quality or disengaged testers can lead to unreliable data. While bottlenecks in recruitment – long lead times and limited access – can delay studies, reduce research frequency, and slow product development. 

Having flexible options helps you keep moving at pace. Whether you bring your own participants, use Optimal’s recruitment services, or leverage external panel providers, Optimal gives you the flexibility to recruit the right user testers consistently and efficiently so you can launch studies faster, run them more frequently, and quickly scale research across multiple projects.

Here’s a breakdown of your recruitment options with Optimal:

1.  Invite Your Own Participants For Free

Optimal lets you invite your own participants with a study link, QR code, or intercept snippet at no extra cost, giving you full control over who takes part in your studies.

2. Use Any Panel Provider You Prefer

Optimal works seamlessly with any panel provider, such as User Interviews, Respondent, PureSpectrum, Prolific, Dynata, Askable, and Cint.

How it works:

  1. Create and publish an unmoderated study in Optimal, such as a live site test, prototype test, survey, first-click test, card sort or tree test.
  2. Specify your audience criteria in the panel platform.
  3. Add screener questions in your panel provider and/or Optimal.
  4. Add your Optimal study link into the panel provider platform.
  5. Panel provider recruits participants and manages incentives.
  6. See a participant list in Optimal and review participant metrics like completion rate, time taken, and location breakdown.
  7. Optional: Create segments in Optimal for more targeted insights.
  8. Review insights, results, and analytics in Optimal to make informed research decisions.

Certain panel providers, like User Interviews, offer additional benefits through direct integration with Optimal. You can automate participant tracking and see participant status in real time in your panel provider platform as user testers complete your studies.

3. Use Optimal’s Managed Recruitment Services

For teams that want expert support, Optimal’s Managed Recruitment services tap into multiple panels to access  over 20 million participants across 150 countries. Whether you're looking for a broad audience or something highly specific, we can help you find the right people to take part in your study.

Optimal handles the panel selection, incentive management, and criteria refinement. We’ll even review and optimize your screener questions. Get started by submitting your criteria

4. Use Optimal’s On Demand Panel

Looking for another quick recruitment solution? You can order user testers instantly inside the Optimal platform. It’s ideal for B2C research and studies with basic demographic requirements, and Optimal takes care of incentives for you.

Recruitment Flexibility and Quality

You’re never locked into a single approach with Optimal. Instead, you can adapt your recruitment strategy to each study, balancing speed, quality, budget, and scale, while using the same research and user insights platform.

From shareable study links to easy panel workflows and expert support when you need it, you can spend less time managing recruitment and more time gathering actionable user insights.

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1 min read

How AI is Reshaping the UX Research Process

The UX research landscape is shifting. While design thinking has always championed human-centered approaches, empathy, iteration, and deep user understanding, artificial intelligence is introducing new capabilities that are fundamentally changing how we work.

But here's the thing: AI isn't replacing the design thinking process. It's amplifying it.

Recent research into the synergies between design thinking and AI reveals something fascinating. When these two approaches combine, they create something more powerful than either could achieve alone. AI handles the heavy lifting of data processing and pattern recognition, while human researchers bring irreplaceable skills like empathy, contextual understanding, and ethical judgment.

Here’s how we think this partnership is reshaping each stage of the design thinking process.

Deeper insights at scale

The empathize stage has always been about understanding users. Understanding their needs, pain points, and motivations. Traditionally, this meant conducting interviews, observations, and surveys, then manually analyzing the results. In this situation, AI changes the scale at which we can operate. 

Machine learning algorithms can now process vast amounts of user data, demographics, behavioral patterns, interaction histories, to identify trends that might take researchers weeks to uncover manually. This doesn't replace the need for human empathy. Instead, it provides a foundation of data-driven insights that researchers can build upon with qualitative methods. Think of it this way: AI can tell you what users are doing and identify patterns across thousands of interactions. But only human researchers can understand why those patterns exist, what they mean in context, and how they connect to deeper human needs.

The result? More comprehensive user personas, informed by both quantitative rigor and qualitative depth.

Clarity through data

Once you understand your users, you need to define the problem you're solving. This stage requires synthesizing diverse insights into a clear, actionable problem statement. In this scenario AI-powered analytics can accelerate this process by helping you:

  • Identify which user pain points appear most frequently
  • Spot correlations between different user behaviors
  • Prioritize problems based on impact and frequency

But defining the right problem still requires human judgment. AI might flag that users abandon a particular workflow, but it takes a researcher to understand whether that's due to poor usability, lack of trust, or a fundamental mismatch between the product and user needs. The partnership between AI insights and human interpretation ensures you're not just solving problems efficiently, you're solving the right problems.

AI as a collaborator

Ideation is where things get interesting. This stage is all about generating diverse solutions without prematurely narrowing options. In this situation, AI can support ideation in unexpected ways. Generative algorithms can analyze existing design patterns and generate alternative solutions based on specific parameters. They can provide design references, identify emerging trends, and even suggest approaches you might not have considered. But AI still can't bring lived experience to the table. It can't draw on intuition developed through years of research. It can't make creative leaps that connect seemingly unrelated concepts.

The most effective ideation happens when AI serves as a creative assistant, offering options, inspiration, and data-backed suggestions, while human researchers provide direction, judgment, and that spark of creative insight that can't be automated.

Faster iteration cycles

Prototyping has always been about quick, low-fidelity tests to validate ideas. AI can now speed up this process dramatically. AI-powered tools can automate the creation of initial prototypes based on design specifications. They can generate multiple layout options, suggest color schemes, and even produce variations for different user segments, all in a fraction of the time manual prototyping would require. This speed enables more iterations in less time.

Instead of spending days creating a single prototype, researchers can now generate multiple versions quickly, test them with users, and incorporate feedback into the next iteration. The result is a more refined, user-validated design in a compressed timeline. The human role here shifts from manually creating every prototype element to making strategic decisions about which variations to pursue and how to interpret user feedback.

Insights at scale, empathy in interpretation

Testing is where AI's capabilities shine brightest, and where human judgment becomes most critical. AI can process user testing data at scale. It can analyze session recordings, identify usability issues, track where users struggle, and flag patterns across hundreds or thousands of test sessions. Tools, like Optimal,  with AI-powered features can analyze video interviews, identifying themes and sentiment across participant responses. But interpreting what those patterns mean requires human insight.

A user might abandon a task because the interface is confusing or because they received a phone call. They might rate an experience negatively due to a specific design element or because they're having a bad day. AI can flag the behavior, but researchers must understand the context. The combination of AI-powered analysis and human interpretation creates a testing process that's both comprehensive and nuanced.

The new researcher skill set

As AI becomes integrated into the research process, the skills that define excellent researchers are evolving. Technical skills matter more than before. Understanding how AI tools work, what data they need, and how to interpret their outputs is increasingly essential. Researchers need to think critically about AI limitations, where algorithms might introduce bias, when data-driven insights need human validation, and how to ensure ethical use of user data. But the core of great research remains unchanged. Empathy, curiosity, critical thinking, and the ability to tell compelling stories with data, these fundamentally human skills aren't being automated. They're becoming more valuable.

What does this mean for research teams? 

The integration of AI into design thinking isn't a distant future scenario. It's happening now.

Research teams that embrace this shift, learning to work alongside AI rather than seeing it as a threat, will find themselves capable of work that was previously impossible. Deeper insights from larger datasets. Faster iteration cycles. More refined designs. Better user experiences.

The key is approaching AI as a tool that enhances human capabilities rather than replaces them. At Optimal, we're thinking deeply about how AI can support researchers without compromising the human-centered principles that make great research possible. Because at the end of the day, understanding users isn't just about processing data. It's about connecting with people, understanding their needs, and creating experiences that genuinely improve their lives.

Read more about Optimal’s AI features and our approach to incorporating AI into our platform here

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1 min read

Speed Up Your Design Workflow with AI Prototyping + Optimal

AI prototyping isn’t just a side experiment anymore. It’s quickly becoming a real advantage for product and design teams. According to a 2025 industry report, companies using AI prototyping tools saw a 35% increase in development efficiency and a 25% improvement in user adoption rates compared to traditional coding methods.

The takeaway? Rapid prototyping with AI doesn’t just save time. It’s driving measurable product impact.

What Is AI Prototyping?


AI prototyping turns simple text prompts into interactive, functional prototypes. You can describe your design concept in plain English e.g. "I want to create a flight booking webpage to review a checkout flow" and minutes later, you have a working, clickable prototype. 

AI prototyping can also suggest layouts, flows, and components and lets you experiment without writing a single line of code. You can easily experiment with multiple design concepts and seamlessly transition from idea to testable prototype.

You bring the design thinking. AI handles the build.

Why AI Prototyping Matters for Product Teams


Product teams today are under pressure to ship faster without compromising quality. AI prototyping addresses one of the biggest bottlenecks in product development: turning ideas into something realistic enough to test.

Instead of debating static mockups in meetings, you can put a clickable experience in front of users and make decisions based on evidence.

Popular AI Prototyping Tools


Here are some widely used AI prototyping tools to explore:

How to Use AI Prototyping Tools with Optimal


AI prototyping gets you to a clickable experience quickly. Optimal helps you validate it with real users.

Here’s a step-by-step workflow to combine both:

  1. Generate your prototype
    • Prompt your AI tool with the desired layout or flow.
    • Publish and copy the shareable URL.
  2. Create a Live Site Test in Optimal
    • Add your AI-generated prototype URL along with key tasks.
    • Recruit participants and observe real-time interactions.
  3. Watch video recordings
    • Identify friction points, confusion, and usability issues.
  4. Extra tip: Add recordings into Optimal Interviews
    • Import your live site testing recordings to Optimal Interviews.
    • Get automated insights and highlight reels powered by AI.
    • Dig deeper into your session with AI Chat.
  5. Iterate and refine
    • Adjust your prototype based on insights.
    • Repeat testing.

Getting started 


Here’s how we recommend getting started. Pick something where you can experiment with low stakes and learn without pressure. Sign in to Optimal or sign up for a free trial and start testing. 


This isn’t about replacing design expertise. It’s about shifting time and energy toward understanding user needs and iterating based on evidence. AI can handle the heavy lifting of generating prototypes. Your team can focus on strategy, clarity, and experience quality.


The result? Faster validation. Smarter decisions. Better products. 

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1 min read

Figma + Optimal: Design, Test, Iterate Faster

Figma has long been the go-to tool for UI/UX designers, known for its intuitive interface and real-time collaboration. In fact, over 95% of Fortune 500 companies rely on Figma, and 13 million monthly active users trust it to design and prototype digital experiences.

If you’re already designing in Figma, integrating with Optimal can help to validate your ideas early, reduce costly mistakes, and deliver experiences users actually want.

The Hidden Cost of Skipping Design Validation

Validating designs before development and catching usability issues early has a measurable impact on both users and the business. Research consistently shows that:

Figma + Optimal: Prototype Testing and Design Validation

Instead of waiting for post-launch analytics or expensive redesigns, you can test your Figma prototypes with real users in hours, not weeks with Optimal. Get quantitative data, watch recordings, analyze heatmaps, and actually see where users struggle, all before a single line of code is written.

Here’s a look into 4 practical ways teams use Figma and Optimal together.

4 Ways to Test Figma Designs with Optimal

1. Preference Testing: Let Users Pick the Winner

Ever had a debate with your team about which design direction to take? Let data decide.

Here's how:

  • Create a Figma frame with two designs side-by-side (think: two homepage variations, competing button styles, different navigation approaches)
  • Copy your Figma link and drop it into an Optimal first-click test
  • Ask participants: "Which design do you prefer?"
  • Watch the results roll in with heatmaps showing exactly where users clicked

2. Concept Testing: Does Your Idea Actually Make Sense?

You've got a bold new concept. It makes perfect sense to you. But will users get it?

The process:

  • Build wireframes or mockups in Figma (they don't need to be pixel-perfect)
  • Import your Figma link into an Optimal first-click or prototype test
  • Create tasks like “Click the option that best matches what you’re trying to do.” or “Click where you would sign up.”
  • Analyze whether users successfully understand and navigate your concept

3. Prototype Testing: Find the Friction Before Development

You've built a clickable prototype with multiple screens and interactions. It looks polished. But does it actually work for users?

Step-by-step:

  • Build a complete interactive prototype in Figma
  • Ensure all frames and flows are complete in Figma before importing into Optimal.
  • Copy your Figma prototype URL (works even with password-protected links)
  • Paste it into an Optimal prototype test
  • Define realistic tasks: "You want to buy running shoes under $100. Complete the purchase."
  • Watch video recordings and analyze usability metrics, clickmaps, misclicks, successes/failures, and heatmaps

What you'll discover might surprise you. Users will:

  • Click on things you never intended to be clickable
  • Miss obvious CTAs you thought were perfectly placed
  • Get lost in navigation that seemed intuitive to your team
  • Abandon tasks at friction points you didn't know existed

4. AI Prototype Testing: Validate AI-Generated Designs

The rise of AI design tools like Figma Make has changed the game. You can now generate a functional prototype from a text prompt in minutes. But just because AI can create it doesn't mean users can use it.

Quick workflow:

  • Generate a prototype using Figma Make
  • Copy the URL and drop it into an Optimal live site test
  • Add your testing tasks
  • Review recordings to spot usability issues

This is perfect for rapid experimentation. 

Getting Started Is Simple

  1. Prep your Figma file - Have a prototype or design ready
  2. Copy the link - Grab your Figma share URL
  3. Create your test - Choose first-click, prototype test, or live site test in Optimal
  4. Paste and configure - Add your Figma URL and write your test tasks
  5. Launch - Use your own participants or tap into Optimal's panel or Managed Recruitment services
  6. Analyze - Review results and iterate

Launch Designs Users Love

Figma gives you the power to design and prototype rapidly, while Optimal gives you the insights to make sure those designs actually work for real users. Together, they create a workflow built on real insights, not guesswork.

By testing early and often, teams can reduce risk, build confidence in their designs, and move into development knowing their work has already been validated by users. Gather insights quickly, collaborate more effectively, and keep projects moving forward with evidence-backed decisions.

Ready to validate your next Figma prototype? Use Optimal as part of your workflow and start testing with real users today.

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1 min read

Live Site Testing Without Code: 5 Key Takeaways

Live site testing is now part of the Optimal platform and is designed to give you real insights from real user interactions without code, installs, or complicated setups. 

If you missed our recent Live Site Testing Training webinar or want a refresher, we’ll get you up to speed with this recap of all the key insights. 

What is Live Site Testing?


Optimal’s live site testing lets you watch users navigate any website or web app, including your own staging or production site, or even competitor experiences. It’s all about understanding how people behave in the environments they actually use, helping you identify friction points you might otherwise miss.

Key Takeaways From the Training


1. Context Is Everything


In usability research, the “real world” often looks very different from controlled prototype tests. People use their own devices, have distractions, and bring patterns and expectations shaped by real life. Foundational research shows the richest insights often come from observing users in these real contexts.

Live site testing is built to reflect that reality, helping you answer not just if someone completes a task, but how they approach it and why they struggle. 

2. Testing Is Fast and Friction‑Free


One of the biggest barriers to live site testing historically is complexity, needing code snippets, extensions, or technical setup. Optimal’s tool removes all that friction so you can see natural behaviour without influence or disruption:

  • No code or installs required
  • Paste a URL and you’re ready to go
  • You can test as often as you want - during discovery, before launch, after launch, or anytime in between - and any site you want

3. Design Tests With Real‑Life Scenarios


When crafting tasks for live site testing, think about real user goals. Asking people to complete realistic tasks (e.g., find a product, book a flight, compare two pages) and encouraging them to think out loud leads to much richer insights than purely metric‑focused tests. You can also mix tasks with survey questions for quantitative data. 

4. Participant Experience Is Built for Natural Interaction


A big part of getting real behavior is ensuring participants feel comfortable and unencumbered. Optimal’s built-in task window is readily available when needed but otherwise minimizes to stay out of the way. This flow helps people stay focused and act naturally, which directly improves the quality of insights you collect.

5. Combine Live Site Testing with Optimal’s Interviews Tool


For even deeper insights, pair live site testing with Optimal Interviews. Once you upload live site testing recordings, you get automated insights, transcripts, summaries, as well as highlight reels in Interviews. You can also explore further with AI chat, so you can quickly uncover quotes, compare experiences, and answer ad‑hoc questions.

This combination doesn’t just make analysis faster; it helps you convince stakeholders with clear, digestible, and compelling evidence from real user behaviour. Instead of long reports, you can present snackable, actionable insights that drive alignment and decisions.


Looking Ahead


We’re evolving live site testing at Optimal with solution testing, a multi-method approach that combines prototypes, live sites, and surveys in a single study. This will let teams capture even richer insights with speak-aloud tasks, automated analysis, highlight reels, and AI chat, making it faster and easier to understand user behavior and share compelling findings.


FAQs Highlights


Can you test staging or test environments and sites behind a password or firewall?

Yes, Optimal's live site testing tool works with any URL, including staging and test environments as well as sites behind a password or firewall.

You can share specific instructions with participants before they start. For example, if participants need to create an account and you don’t want that recorded, you can ask them to do this in advance via the welcome screen. That way, when the study begins, they’re already logged in.

Will live site testing affect my live website or real data?
No, user testers interacting with a live site test cannot make any changes to your website or its data.


What permissions are needed to test competitor websites?
With Optimal’s live site testing, you don't need special approval or permissions to evaluate public competitors' experiences.


Access the Training


If you want to experience the full walkthrough, demo, and Q&A from the session, we encourage you to watch the full webinar! You’ll learn how to start running your own live site tests and uncover real user behavior, plus pick up tips and best practices straight from the training.


👉 Watch the full training webinar here.

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