Flag

We stand with Ukraine and our team members from Ukraine. Here are ways you can help

Home ›› Things UX People Like ›› From Design Thinking to AI Thinking

From Design Thinking to AI Thinking

by Alipta Ballav
2 min read
Share this post on
Tweet
Share
Post
Share
Email
Print

Save

Traditional Design thinking has laid the foundation for how problems are approached and addressed. It is still considered a valuable tool to address a problem. With the evolution of Generative AI, the focus has shifted towards integrating LLMs into workflows.

Across various sectors, from Agri-tech to Retail, there is a growing interest in developing conversational interfaces to promptly address inquiries. Whether the query is about attire for an event or determining the appropriate fertiliser for specific crops, LLMs are becoming increasingly relevant.

However, amidst this transition, the question arises, where should we begin? Herein lies the importance of an AI thinking process, which can serve as a guiding light.

4 stages of AI thinking

Here are the 4 stages of an AI thinking process explained in detail.

Identify

The first step is to identify use cases. Use cases typically originate from customers, and we need to make a careful consideration if the incorporation of AI can solve the core problem and further enhance the experience. In this step, we also need to figure out how we can leverage LLMs. LLMs can solve multiple problems ranging from language translation, text generation, and question answering to personalised recommendations, and many more. We must determine what specific tasks LLMs can solve and how they can be incorporated into the use case.

Validate

In this step, we need to figure out what is feasible to build. Can we deliver what the client expects? Do we have the required data to build an experience? Is the data good enough to consume? Is LLM capable of delivering what is expected? These questions can be best answered by conducting a POC (Proof of Concept), which is helpful as the experience can be shared with the client to obtain early feedback.

Build

In this step, we build the actual experience, and we fine tune the models to get relevant results. On the other hand, we adhere strictly to RAI (Responsible AI) guidelines. These guidelines ensure that the development process aligns with ethical principles and mitigates potential risks. By following RAI guidelines, we can create an experience that prioritizes transparency, fairness, accountability, and privacy while harnessing the power of AI technology.

Measure

Measuring AI experiences can be based on parameters such as relevance, completeness, accuracy, and recall [1]. This step is considered the most important in the AI thinking process, where the objective is to verify whether the experience can deliver the expected results. There are several popular benchmarks such as GLUE (General Language Understanding Evaluation), BLEU, and ROUGE. We can use these popular metrics or derive one relevant to your use cases.

Reference: [1 ]Debarag Banerjee, Pooja Singh, Arjun Avadhanam, Saksham Srivastava Benchmarking LLM powered Chatbots: Methods and Metrics (2023).

post authorAlipta Ballav

Alipta Ballav, A seasoned Design leader with over 2 decades of industry experience spanning across B2C and B2B working at the intersection of people, process, product.

Tweet
Share
Post
Share
Email
Print
Ideas In Brief
  • The article outlines a paradigm shift from Design Thinking to AI Thinking, emphasizing the integration of LLMs into various sectors to enhance problem-solving through conversational interfaces.

Related Articles

Since personal computing’s inception in the 80s, we’ve shifted from command-line to graphical user interfaces. The recent advent of conversational AI has reversed the ‘locus of control’: computers can now understand and respond in natural language. It’s shaping the future of UX.

Article by Jurgen Gravestein
How Conversational AI Is Shaping The Future of UX 
  • The article discusses the transformative impact of conversational AI on UX design, emphasizing the need for user-centric approaches and the emerging societal changes driven by AI technology.
Share:How Conversational AI Is Shaping The Future of UX 
3 min read
Article by Savannah Kunovsky
How AI Can Help Us Solve the Climate Crisis
  • The article delves into the transformative intersection of generative AI and the Climate Era, highlighting their potential to reshape economies, influence consumer behaviors, and address sustainability challenges.
Share:How AI Can Help Us Solve the Climate Crisis
5 min read

Repetitiveness, complicated setups, and lack of personalization deter users.

Article by Marlynn Wei
​6 Ways to Improve Psychological AI Apps and Chatbots
  • Personalized feedback, high-quality dynamic conversations, and a streamlined setup improve user engagement.
  • People dislike an overly scripted and repetitive AI chatbot that bottlenecks access to other features.
  • Tracking is a feature that engages users and develops an “observer mind,” enhancing awareness and change.
  • New research shows that users are less engaged in AI apps and chatbots that are repetitive, lack personalized advice, and have long or glitchy setup processes.
Share:​6 Ways to Improve Psychological AI Apps and Chatbots
3 min read

Did you know UX Magazine hosts the most popular podcast about conversational AI?

Listen to Invisible Machines

This website uses cookies to ensure you get the best experience on our website. Check our privacy policy and