Written by Kene Anoliefo
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August 8, 2024
Veteran UX Research executive Misha Cornes and HEARD founder Kene Anoliefo explain how AI companies can combine a technology-centric and customer-focused approach to create a winning product strategy.
In a previous piece, we introduced the idea of the Blank Box Barrier – the anxiety of the empty text box that keeps many users from becoming repeat users of Large Language Models (LLMs). We discussed how Use Case Taxonomies can help AI companies identify high-value applications for their technology. But uncovering user needs is just the first step. The next hurdle lies in translating those insights into specific features that drive product adoption.
This article dives deeper into this critical challenge, exploring strategies that bridge the gap between user-led design and cutting-edge AI research. We'll examine how AI companies can leverage their Use Case Taxonomies to navigate the tension between prioritizing solutions for real user problems and pursuing technical advancements to maintain a competitive edge.
Foundational LLMs thrive on the brilliance of their researchers – typically PhD-level scientists focused on pushing the boundaries of artificial intelligence and machine learning. While most tech companies increasingly embrace customer-centricity, the focus within AI research often leans towards achieving breakthroughs in a model's capabilities. This can lead to a gap between new technical advancements and product experiences that actually help people achieve specific and useful outcomes.
To bridge this gap, AI companies need to establish a strong feedback loop between cutting-edge research and user-centered design. This requires balancing two approaches: technology-first and customer-first innovation.
The goal is to find the intersection between the two: what can the technology do, and what does the customer genuinely need? This allows us to create products that are both technically advanced and highly relevant to users.
Imagine we're part of an AI company specializing in creating multi-modal models for content creation. Multi-modal models can process and integrate multiple formats of media like images, audio, and video together.
Based on enthusiasm from early adopters and market research, the company has identified two potential use cases to focus on: creating short videos for social media and producing full scenes for feature-length films. A simplified version of their Use Case Taxonomy might look like the following:
After constructing their Use Case Taxonomy, the company realizes that creating short social media clips and producing scenes for feature-length films are quite different use cases. Is it possible to build a single model and product that meets the needs of both?
In order to make this decision, the company wants to understand the intersection between technical capabilities and user needs. They start by creating a detailed workflow for both amateur content creators and professional editors, describing every step they take in the creation process and the tools and outcomes they want to achieve along the way.
Next, they review each step of the workflow and brainstorm what type of technical capabilities could be useful to each customer; given the outcome the customer is trying to achieve, how could the model help them reach their goal?
As they build this map of technical capabilities to customer needs, they discover that both segments want to combine small pieces of “reference” media with original video clips to create brand new content. For the amateur content creator, it might be a clip they discovered on TikTok they want to use as stylistic inspiration for their own video. They may want to instruct the model to edit their video by copying the style of the reference clip.
The professional editor wants to combine a script with raw video footage to create “conceptual edits” of different scenes. They want the model to use the script as a guide to compose a first-pass cut of a scene across all of the different takes filmed by the director, which can serve as a starting point before they delve into their full editing process.
The professional film editor has a much more precise and sophisticated workflow than the amateur content creator but by digging deeper into the needs of both, the AI company was able to find a very common need across both that their model can address.
Mapping technical capabilities to customer needs enabled this company to thread the needle between these two segments. Now, they can confidently create features that are both meaningful to customers as well as impressive technological advancements.
As you combine the technology-centric approach with the customer-focused approach, you’ll likely run into the following categories of opportunities:
Teams will need to effectively balance across these categories to create a diverse portfolio of “bets” on how to improve their models and products.
Conquering the Blank Box Barrier requires a dual approach that combines technological innovation with a deep understanding of user needs. By developing a Use Case Taxonomy grounded in UX Research, companies can better segment their users and tailor their products to meet specific needs. Balancing a technology-first approach with a customer-first mindset allows for the creation of AI tools that are both cutting-edge and highly relevant to users. This holistic strategy ensures that AI products not only stand out in the market but also provide consistent, repeatable value, driving adoption and long-term success.
Misha Cornes is a User Research executive with experience building and scaling research teams at companies like McKinsey and Lyft. Kene Anoliefo is the co-founder of HEARD.
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