04 Bias in Ai

Taking a little detour from my actual topic, I wanted to explore an issue of our time, bias in Ai. A topic that comes up a lot, when reading about Ai. I wanted to know, what can be done about it and how it could be avoided. Could this have an additional impact on our society?

Artificial Intelligence (AI) is transforming industries, and (UX) Design is no exception. Ai already has the ability to deliver high quality design work and is going to continue to evolve. It’s reshaping how we approach design, offering tools that enhance efficiency, streamline workflows, and even generate creative outputs, it’s already capable to deliver high quality design work. While AI excels at analyzing data, creating prototypes, and even predicting user behavior, the heart of UX design lies in empathy, problem-solving, and collaboration, skills uniquely human in nature. (cf. Medium A)

Ai can analyze vast amounts of user data to uncover patterns and insights that inform design decisions, helping designers better understand their audience. It can also generate initial design drafts or prototypes, saving time and allowing designers to focus on refining creative and strategic elements. Predictive algorithms powered by AI can anticipate user behavior, enabling the creation of more intuitive and personalized experiences. By automating repetitive tasks and offering data-driven insights, AI empowers designers to elevate their craft while maintaining a human-centered approach. (cf. Medium A)

But what if the data the Ai gets is already biased towards a certain user group, making it’s outputs biased as well a therefore influencing UX work. Addressing bias in AI is not just a technical challenge; it’s an ethical imperative that impacts the lives of millions.

Examples of Bias in Ai

  1. Healthcare Disparities: 
    An algorithm used in U.S. hospitals was found to favor white patients over black patients when predicting the need for additional medical care. This bias arose because the algorithm relied on past healthcare expenditures, which were lower for black patients with similar conditions, leading to unequal treatment recommendations.
  2. Gender Stereotyping in Search Results
    A study revealed that only 11% of individuals appearing in Google image searches for “CEO” were women, despite women constituting 27% of CEOs in the U.S. This discrepancy highlights how Ai can perpetuate gender stereotypes.
  3. Amazon’s Hiring Algorithm
    Amazon’s experimental recruiting tool was found to be biased against female applicants. The Ai, trained on resumes submitted over a decade, favored male candidates, reflecting the industry’s male dominance and leading to discriminatory hiring practices. (cf. Levity)

How does bias in Ai form?

Bias in Ai often forms due to the way data is collected, processed, and interpreted during the development cycle. Training datasets, which are meant to teach AI models how to make decisions, may not adequately represent all demographics, leading to underrepresentation of minority groups. Historical inequities embedded in this data can reinforce stereotypes or amplify disparities. Additionally, the way problems are defined at the outset can introduce bias; for instance, using cost-saving measures as a proxy for patient care needs can disproportionately affect underserved communities. Furthermore, design choices in algorithms, such as prioritizing overall accuracy over subgroup performance, can lead to inequitable outcomes. These biases, when unchecked, become deeply ingrained in AI systems, affecting their real-world applications.

Source: Judy Wawira Gichoya, pos. 3

Sometimes, the problem the Ai is supposed to solve is framed using flawed metrics. For instance, one widely used healthcare algorithm prioritized reducing costs over patient needs, disproportionately disadvantaging Black patients who required higher acuity care. (cf. Nature) When training datasets lack of diversity or reflect on historical inequities, Ai models learn to replicate these biases. Also, a well-designed system can fail in real-world settings if deployed in wrong environments it wasn’t optimized for. (cf. IBM) Decisions made during model training, like ignoring subgroup performance—can result in inequitable outcomes. (cf. Levity)

How to address bias in Ai

To avoid bias in Ai thoughtful planning and governance is important. Many organizations rush Ai efforts, leading to costly issues later. Ai governance establishes policies, practices, and frameworks for responsible development, balancing benefits for businesses, customers, employees, and society. Key components of governance include methods to ensure fairness, equity, and inclusion. Counterfactual fairness for example addresses bias in decision-making even with sensitive attributes like gender or race. Transparency practices help ensure unbiased data and build trustworthy systems. Furthermore a “human-in-the-loop” system can be incorporated to allow human oversight to approve or refine Ai-generated recommendations. (cf. IBM)

Reforming science and technology education to emphasize ethics and interdisciplinary collaboration is also crucial, alongside establishing global and local regulatory frameworks to standardize fairness and transparency. However, some challenges demand broader ethical and societal deliberation, highlighting the need for multidisciplinary input beyond technological solutions. (cf. Levity)

1.1 Designing Interfaces and AI for Calm and Well-being

A Digital Path to Mental Health Support

In today’s fast-paced world, stress and anxiety are part of daily life for many people. Finding mental health support has never been more important, but traditional therapy is often expensive and hard to access. That’s where technology comes in. Apps like Calm, Headspace, Wysa, BetterHelp, and Talkspace are helping millions of people take care of their mental health by offering tools like guided meditation, mood tracking, AI-powered chatbots, and even direct access to therapists.

Image Source: onemindpsyberguide.org

Smartphones have made mental health care more accessible than ever. Mobile health apps offer a private and convenient way to improve mental well-being, breaking down barriers like cost, access, and stigma. There are now hundreds of thousands of health apps, with a significant number focused on mental health, and they’re popular with both users and clinicians. However, there are still concerns about security, privacy, and how effective these apps really are.

One of the most exciting developments in this space is the use of chatbots, AI-powered tools that allow users to have conversations about their mental health. These chatbots are available 24/7, creating a safe space for users to share sensitive information without fear of judgment. They can also provide immediate support when human connections aren’t available. But they’re not perfect. Sometimes their responses are too simplistic or even wrong, which can frustrate users. And while some people find chatbots comforting, others may rely on them too much, which could lead to feelings of isolation.

These tools have incredible potential, but there’s still room to improve. How can we design these apps to be even more effective? How do we make them feel personal and calming? Can design and artificial intelligence work together to create better tools for mental health support? These are the questions I’ll explore in this blog series, focusing on how thoughtful design, like intuitive layouts, smooth transitions, and calming animations, can make a difference. I’ll also look at how AI can act as a “digital companion” that provides personalized and empathetic support.

Central Research Questions

This project focuses on two key questions:

  1. How can UX/UI design elements make mental health apps more calming and accessible?
  2. What role can AI play in providing personalized and empathetic mental health support?

To answer these questions, I’ll look at how clear navigation and interactive features can help users feel more relaxed and supported. I’ll also explore how chatbots and AI systems can create a sense of trust and connection by feeling more human and empathetic. Finally, I’ll consider ethical issues, like protecting user privacy while using data to personalize the experience.

Why This Matters for Designers

Good design isn’t just about making something look nice, it’s about solving problems and improving people’s lives. Mental health apps are a great example of how design can make a real difference. Micro-interactions, like a gentle animation when you complete a task, can help users feel supported and motivated. These small touches might seem minor, but they create a sense of care and connection.

Colors also play an important role. Calming shades of blue and green can help users feel more relaxed, while warm tones, used sparingly, can create feelings of safety and comfort. Simplicity is key: clear, uncluttered layouts can help users navigate the app without feeling overwhelmed.

Information architecture – how content and features are organized, is another critical piece. A well-designed app might prioritize frequently used tools like mood tracking or journaling, while keeping other features easily accessible but out of the way. This reduces mental load and ensures users can focus on their well-being.

What makes this project especially exciting is the opportunity to design for emotional connection. It’s not just about functionality, it’s about creating an experience that feels personal and meaningful. With mental health challenges on the rise, designers have a chance to create tools that genuinely help people feel better.

Challenges I Expect to Face

Designing mental health apps comes with unique challenges. Personalization is essential, but it requires sensitive user data, which raises concerns about privacy and security. People need to feel confident their information is safe, so building trust is a top priority.

Another challenge is finding the right balance between simplicity and functionality. Apps need enough features to be useful, but too many can overwhelm users. Testing and user feedback will be crucial to getting this right.

The design also needs to avoid overstimulation. Too many animations, notifications, or bright colors can cause stress instead of reducing it. Ensuring the design feels calm and supportive is key.

Chatbots, while promising, present their own challenges. Poorly designed responses can frustrate users or even cause harm in a crisis. Making chatbots feel empathetic and reliable, while avoiding over-dependence, will require thoughtful design and testing.

Image Source: sessionshealth.com

Why This Matters to Me

Have you ever used ChatGPT to ask for advice or encouragement, like it’s a therapist? I have. It made me realize how much potential AI has to provide meaningful support. Mental health is something we all deal with at some point, and the idea of creating tools that make support more accessible feels deeply personal to me.

This project isn’t just about building an app, it’s about creating something that feels like a companion. A tool that understands what users need, offers comfort, and helps them feel calmer and more in control. Combining thoughtful design with AI to make a real impact on people’s lives is what excites me most about this project.

What’s Coming Next

In the upcoming blog posts, I’ll explore topics like color psychology and how specific colors can create calming digital environments. I’ll also dive into micro-interactions and how small design details, like animations and transitions, can make apps feel more intuitive and relaxing.

Another focus will be analyzing successful mental health apps, such as Calm, BetterHelp, and Wysa, to understand what makes them work. I’ll also look closely at the potential and challenges of chatbots, exploring how they can provide round-the-clock support while addressing their current limitations, like handling crises and overly simplistic responses.

The ultimate goal is to develop a foundation of ideas for creating mental health apps that blend thoughtful design with AI. These could include guidelines or even a prototype that shows how these ideas come to life in a practical, user-friendly way.

Sources

  1. “BetterHelp | Professional Therapy With A Licensed Therapist.” BetterHelp. Accessed: Dec. 2, 2024. [Online.] Available: https://www.betterhelp.com/
  2. “Calm – The #1 App for Meditation and Sleep.” Calm. Accessed: Dec. 2, 2024. [Online.] Available: https://www.calm.com/
  3. “Headspace: Meditation and Sleep Made Simple.” Headspace. Accessed: Dec. 2, 2024. [Online.] Available: https://www.headspace.com/
  4. M. D. R. Haque & S. Rubya. (2023). An overview of chatbot-based mobile mental health apps: Insights from app description and user reviews. JMIR mHealth and uHealth11, e44838. https://doi.org/10.2196/44838
  5. M. Neary & S. M. Schueller. (2018). State of the field of mental health apps. Cognitive and Behavioral Practice25(4), 531–537. https://doi.org/10.1016/j.cbpra.2018.01.002
  6. “Talkspace – #1 Rated Online Therapy, 1 Million+ Users.” Talkspace. Accessed: Dec. 2, 2024. [Online.] Available: https://www.talkspace.com/
  7. “Wysa – Everyday Mental Health.” Wysa. Accessed: Dec. 2, 2024. [Online.] Available: https://www.wysa.com/

#02 Key factors influencing the energy and environmental impact of digitalisation.

1. Growth of data centers and cloud computing

Data centers are the base of the internet, powering everything from streaming platforms like Netflix to cloud services like Google Drive. These facilities require immense amounts of energy to store, process, and transmit data. According to the International Energy Agency (IEA), data centers account for 1% of global electricity demand, a figure expected to grow with the rise of cloud computing.

Events like the COVID-19 pandemic accelerated cloud adoption, as companies and individuals transitioned to remote work, leading to an explosion in virtual meetings, file sharing, and cloud storage. For example, Microsoft reported a 775% increase in demand for cloud services in some regions during 2020. While major providers like Amazon Web Services (AWS) and Google are investing heavily in renewable energy, the rapid growth of cloud usage continues to challenge sustainability efforts.

https://engineering.fb.com/wp-content/uploads/2018/05/data-center-shot.jpg

2. Video streaming boom

The increase in video streaming has become one of the largest contributors to online energy consumption. Services like Netflix, YouTube, and TikTok account for over 60% of internet traffic worldwide.

The release of high-profile events—such as Netflix’s “Squid Game” debut in 2021—demonstrates the scale of the issue. During its first four weeks, the series was streamed for 1.65 billion hours, consuming massive amounts of energy in data processing and transmission. These statistics underline the need for platforms to optimize streaming technologies and encourage users to adopt sustainable viewing habits, such as lowering video resolution where possible.

https://www.marca.com/en/lifestyle/tv-shows/2021/10/01/6157178546163f62728b45ae.html

3. Expansion of internet-connected devices (IoT)

The rise of Internet of Things (IoT) devices is a big deal. From smart speakers like Amazon Alexa to fitness trackers and smart thermostats, these gadgets are everywhere. By 2025, there could be 75 billion IoT devices worldwide, a massive jump from just 8 billion in 2017.

This boom in connected devices means more electricity use and more e-waste. Each device needs rare earth metals, complex manufacturing, and constant power, all adding to the carbon footprint of our digital world. Plus, the rollout of 5G to keep these devices running smoothly has pushed energy demands even higher with the need for more infrastructure.

4. Cryptocurrency mining

Cryptocurrency mining, particularly Bitcoin, is one of the most energy-intensive activities in the digital space. Bitcoin mining alone consumes more electricity annually than entire countries like Argentina, with estimates placing its energy usage at 121.36 terawatt-hours (TWh). Fun fact – The Eiffel Tower uses about 7.8 GWh annually to light up and operate. With 121.36 TWh , you could power the Eiffel Tower for over 15,500 years.

https://www.bbc.com/news/science-environment-56215787

5. AI and ChatGPT

AI systems like ChatGPT have a significant environmental footprint, driven by their high energy consumption. Each ChatGPT request uses about 2.9 watt-hours of electricity, which is ten times the energy required for a Google search (0.3 watt-hours). With 100 million weekly users sending around 15 prompts each, ChatGPT’s yearly energy use totals approximately 226.82 million watt-hours—enough to charge over 3 million electric vehicles or meet the energy needs of several small countries. Developing these AI models is also resource-intensive, training GPT-4 consumed more than 62 million kilowatt-hours, costing $8.2 million in electricity alone. These figures highlight the need for innovation in energy-efficient AI systems and a shift toward renewable energy sources. Balancing the rapid advancement of AI with environmental sustainability is becoming increasingly important.

https://wired.me/science/energy/ai-vs-bitcoin-mining-energy/

Resources:

https://www.cloudzero.com/blog/tech-carbon-footprint

https://www.fdmgroup.com/news-insights/environmental-impact-of-digitalisation

https://wired.me/science/energy/ai-vs-bitcoin-mining-energy/

https://www.researchgate.net/publication/358794471_Carbon_Footprint_of_The_Most_Popular_Social_Media_Platforms