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Clubhouse UX teardown: A closer look at homepage curation, follow hooks and other features

Clubhouse, the social audio app that first took Silicon Valley by storm and is now gaining much wider appeal, is an interesting user experience case study.

Hockey-stick growth — 8 million global downloads as of last month, despite still being in a pre-launch, invite-only mode, according to App Annie — is something most startups would kill for. However, it also means that UX problems can only be addressed while in “full flight” — and that changes to the user experience will be felt at scale rather under the cover of a small, loyal and (usually) forgiving user base.

In our latest UX teardown, Built for Mars founder and UX expert Peter Ramsey and TechCrunch reporter Steve O’Hear discuss some of Clubhouse’s UX challenges as it continues to onboard new users at pace while striving to create enough stickiness to keep them active.

Homepage curation

Peter Ramsey: Content feeds are notoriously difficult to get right. Which posts should you see? How should you order them? How do you filter out the noise?

On Clubhouse, once you’ve scrolled past all the available rooms in your feed, you’re prompted to follow more people to see more rooms. In other words, Clubhouse is inadvertently describing how it decides what content you see, i.e., your homepage is a curated list of rooms based on people you follow.

Except there’s a problem: I don’t follow half the people who already appear in my feed.

Image Credits: Clubhouse

Steve O’Hear: I get it. This could be confusing, but why does it actually matter? Won’t people just continue to use the homepage regardless?

Peter: In the short term, yes. People will use the homepage in the same way they’d use Instagram’s search page (which is to just browse occasionally). But in the long term, this content needs to be consistently relevant or people will lose interest.

Steve: But Twitter has a search page that shows random content that I don’t control.

Peter: Yeah, but they also have a home feed that you do control. It’s fine to also have the more random “slot machine style” content feed — but you need the base layer.

The truth about aha moments

Peter: In the early days of Twitter, the team noticed something in their data: When people follow at least 30 others, they’re far more likely to stick around. This is often described as an “aha moment” — the moment that the utility of a product really clicks for the user.

This story has become startup folklore, and I’ve worked with many companies who take this message too literally, forgetting the nuance of what they really found: It’s not enough to just follow 30 random people — you need to follow 30 people who you genuinely care about.

Clubhouse has clearly adopted a similar methodology, by pre-selecting 50 people for you to follow while signing up.

Have you noticed that some people have accumulated millions of followers really quickly? It’s because the same people are almost always recommended — I tried creating accounts with polar opposite interests, and the same people were pre-selected almost every time.

At no point does it explain that following those 50 people will directly impact the content that is available to you, or that if your homepage gets uninteresting, you’ll need to unfollow these people individually.

But they should, and it could look more like this:

Steve: Why do you think Clubhouse does this? Laziness?

Peter: I think in the early days of Clubhouse they just wanted to maximize connections, and by always recommending the same people (Clubhouse’s founders and investors), they could somewhat control the content that is shown to new users.

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Zoom UX teardown: 5 fails and how to fix them

Valued at over $60 billion and used by millions each day for work and staying in touch with friends and family, the COVID-19 pandemic has helped make Zoom one of the most popular and relevant enterprise applications.

On one level, its surge to the top can be summed up in three words: “It just works.” However, that doesn’t mean Zoom’s user experience is perfect — in fact, far from it.

With the help of Built for Mars founder and UX expert Peter Ramsey, we dive deeper into the user experience of Zoom on Mac, highlighting five UX fails and how to fix them. More broadly, we discuss how to design for “empty states,” why asking “copy to clipboard” requests are problematic and other issues.

Always point to the next action

This is an incredibly simple rule, yet you’d be surprised how often software and websites leave users scratching their heads trying to figure what they’re expected to do next. Clear signposting and contextual user prompts are key.

The fail: In Zoom, as soon as you create a meeting, you’re sat in an empty meeting room on your own. This sucks, because obviously you want to invite people in. Otherwise, why are you using Zoom? Another problem here is that the next action is hidden in a busy menu with other actions you probably never or rarely use.

The fix: Once you’ve created a meeting (not joined, but created), Zoom should prompt and signpost you how to add people. Sure, have a skip option. But it needs some way of saying “Okay, do this next.”

Steve O’Hear: Not pointing to the next action seems to be quite a common fail, why do you think this is? If I had to guess, product developers become too close to a product and develop a mindset that assumes too much prior knowledge and where the obvious blurs with the nonobvious?

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Five ways to bring a UX lens to your AI project

Debbie Pope
Contributor

Debbie Pope (she/her) is senior manager of product at The Trevor Project, the world’s largest suicide prevention and crisis intervention organization for LGBTQ youth. A 2019 Google AI Impact Grantee, the project is building an AI system to identify and prioritize high-risk contacts while simultaneously supporting more youth.

As AI and machine-learning tools become more pervasive and accessible, product and engineering teams across all types of organizations are developing innovative, AI-powered products and features. AI is particularly well-suited for pattern recognition, prediction and forecasting, and the personalization of user experience, all of which are common in organizations that deal with data.

A precursor to applying AI is data — lots and lots of it! Large data sets are generally required to train an AI model, and any organization that has large data sets will no doubt face challenges that AI can help solve. Alternatively, data collection may be “phase one” of AI product development if data sets don’t yet exist.

Whatever data sets you’re planning to use, it’s highly likely that people were involved in either the capture of that data or will be engaging with your AI feature in some way. Principles for UX design and data visualization should be an early consideration at data capture, and/or in the presentation of data to users.

1. Consider the user experience early

Understanding how users will engage with your AI product at the start of model development can help to put useful guardrails on your AI project and ensure the team is focused on a shared end goal.

If we take the ‘”Recommended for You” section of a movie streaming service, for example, outlining what the user will see in this feature before kicking off data analysis will allow the team to focus only on model outputs that will add value. So if your user research determined the movie title, image, actors and length will be valuable information for the user to see in the recommendation, the engineering team would have important context when deciding which data sets should train the model. Actor and movie length data seem key to ensuring recommendations are accurate.

The user experience can be broken down into three parts:

  • Before — What is the user trying to achieve? How does the user arrive at this experience? Where do they go? What should they expect?
  • During — What should they see to orient themselves? Is it clear what to do next? How are they guided through errors?
  • After — Did the user achieve their goal? Is there a clear “end” to the experience? What are the follow-up steps (if any)?

Knowing what a user should see before, during and after interacting with your model will ensure the engineering team is training the AI model on accurate data from the start, as well as providing an output that is most useful to users.

2. Be transparent about how you’re using data

Will your users know what is happening to the data you’re collecting from them, and why you need it? Would your users need to read pages of your T&Cs to get a hint? Think about adding the rationale into the product itself. A simple “this data will allow us to recommend better content” could remove friction points from the user experience, and add a layer of transparency to the experience.

When users reach out for support from a counselor at The Trevor Project, we make it clear that the information we ask for before connecting them with a counselor will be used to give them better support.

If your model presents outputs to users, go a step further and explain how your model came to its conclusion. Google’s “Why this ad?” option gives you insight into what drives the search results you see. It also lets you disable ad personalization completely, allowing the user to control how their personal information is used. Explaining how your model works or its level of accuracy can increase trust in your user base, and empower users to decide on their own terms whether to engage with the result. Low accuracy levels could also be used as a prompt to collect additional insights from users to improve your model.

3. Collect user insights on how your model performs

Prompting users to give feedback on their experience allows the Product team to make ongoing improvements to the user experience over time. When thinking about feedback collection, consider how the AI engineering team could benefit from ongoing user feedback, too. Sometimes humans can spot obvious errors that AI wouldn’t, and your user base is made up exclusively of humans!

One example of user feedback collection in action is when Google identifies an email as dangerous, but allows the user to use their own logic to flag the email as “Safe.” This ongoing, manual user correction allows the model to continuously learn what dangerous messaging looks like over time.

Image Credits: Google

If your user base also has the contextual knowledge to explain why the AI is incorrect, this context could be crucial to improving the model. If a user notices an anomaly in the results returned by the AI, think of how you could include a way for the user to easily report the anomaly. What question(s) could you ask a user to garner key insights for the engineering team, and to provide useful signals to improve the model? Engineering teams and UX designers can work together during model development to plan for feedback collection early on and set the model up for ongoing iterative improvement.

4. Evaluate accessibility when collecting user data

Accessibility issues result in skewed data collection, and AI that is trained on exclusionary data sets can create AI bias. For instance, facial recognition algorithms that were trained on a data set consisting mostly of white male faces will perform poorly for anyone who is not white or male. For organizations like The Trevor Project that directly support LGBTQ youth, including considerations for sexual orientation and gender identity are extremely important. Looking for inclusive data sets externally is just as important as ensuring the data you bring to the table, or intend to collect, is inclusive.

When collecting user data, consider the platform your users will leverage to interact with your AI, and how you could make it more accessible. If your platform requires payment, does not meet accessibility guidelines or has a particularly cumbersome user experience, you will receive fewer signals from those who cannot afford the subscription, have accessibility needs or are less tech-savvy.

Every product leader and AI engineer has the ability to ensure marginalized and underrepresented groups in society can access the products they’re building. Understanding who you are unconsciously excluding from your data set is the first step in building more inclusive AI products.

5. Consider how you will measure fairness at the start of model development

Fairness goes hand-in-hand with ensuring your training data is inclusive. Measuring fairness in a model requires you to understand how your model may be less fair in certain use cases. For models using people data, looking at how the model performs across different demographics can be a good start. However, if your data set does not include demographic information, this type of fairness analysis could be impossible.

When designing your model, think about how the output could be skewed by your data, or how it could underserve certain people. Ensure the data sets you use to train, and the data you’re collecting from users, are rich enough to measure fairness. Consider how you will monitor fairness as part of regular model maintenance. Set a fairness threshold, and create a plan for how you would adjust or retrain the model if it becomes less fair over time.

As a new or seasoned technology worker developing AI-powered tools, it’s never too early or too late to consider how your tools are perceived by and impact your users. AI technology has the potential to reach millions of users at scale and can be applied in high-stakes use cases. Considering the user experience holistically — including how the AI output will impact people — is not only best-practice but can be an ethical necessity.

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Salesforce acquires Sequence to build out its UX design services

screen-shot-2017-02-02-at-01-31-39 Salesforce has made another acquisition that underscores how the CRM and cloud software giant is looking to sell more services to its customers that complement the software they are already buying. It has acquired Sequence, a user experience design agency based out of San Francisco and New York that works with brands like Best Buy, Peets, Apple, Google and many more. The news was announced… Read More

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Snapchat’s big redesign, featuring universal search and more, just hit iOS

snapchat-search Snapchat’s major redesign, which introduces a universal search bar to the top of the app, among other features, has today hit iOS. The refreshed user interface was first announced earlier this month, but was only available to Android users at the time with a promise that it would reach iPhone users “soon.” The app has long been criticized for being too hard to navigate… Read More

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Spaces Debuts A Community Where UX Designers Can Share App Prototypes

Screen Shot 2014-11-17 at 2.21.57 PM A new site called Spaces is now launching as a place where mobile app designers can showcase interactive prototypes of their work, or browse one of many common user experiences from other popular apps – like the navigation in Facebook Paper, or how Dropbox’s Carousel app appears to first-time users, for example.
The service is akin to a “Dribbble for UX.” Or, in… Read More

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