
Associate Director
Associate Director
Designing AI that actually fits your business, your data, and your users is where most organizations stumble.
In this blog posts, we’ll unpack the lessons we’ve learned designing AI solutions with and for non-technical users.
Each lesson corresponds to a critical phase of development:
Want to dive deeper? Watch the webinar on ‘How to design and build AI solutions’
When approaching AI projects, teams often get stuck in a cycle of incremental improvements: doing what they already do, just faster.
But this mindset limits potential. Think bigger. The most successful AI strategies start by reimagining possibilities that were out of reach without AI.

Too many teams limit AI to automating what already exists. While cost savings matter, the most transformative opportunities often lie in capabilities that were previously impossible (or too risky) to pursue.
To push your thinking, ask yourself:
For example, while AI-driven automation can handle repetitive tasks reactively, embedding foresight capabilities into everyday workflows shifts the approach toward having a proactive strategy.
When identifying a use case, leaders and teams are sometimes paralysed from the choice between too many nascent ideas. When overwhelmed with bottom-up suggestions, a simple ROI “T-shirt sizing” exercise helps.
Start by evaluating potential value across three ROI buckets:

Even the best use cases will stall and fail without organizational support.
Early-stage alignment from leadership ensures resources flow toward high-impact projects. One note of caution: A “T-shirt” sizing exercise might win your stakeholders’ approval, but top-down buy-in is critical for sustained momentum. Without it, teams risk running out of steam or misalignment mid-project.
Always tie technical goals to clear KPIs that resonate with decision-makers.
If you have a lot of potential use cases to build for, one fast way to get unblocked can be quantifying their cost, revenue impact, and the potential for new revenue growth through a familiar “T-Shirt sizing” framework:
Once your use case is defined, the next step is deciding whether to build a custom solution or buy something off the shelf. The right choice depends on what you’re solving for and how unique your context is.
Choose custom build when:
For instance, long-term forecasting models often require nuanced understanding of a specific product portfolio, something generic tools can’t deliver without significant trade-offs.
Custom builds aren’t always worth it. Watch out for these red flags:
There’s a whole spectrum between a plug-and-play and fully bespoke solution.
You might use a pre-trained model but customize the interface. Or tweak the semantic layer or data-processing timeline while keeping the core intact.
There’s no black and white answer to the question of buy vs. build, and it’s often a mix:
In AI builds, aligning your business and technical teams is foundational, since GenAI tools often produce “squishy” outputs that are difficult to benchmark in binary terms. What makes an insight “deep”? What defines a good recommendation? These are not easy questions and require alignment between the team creating the logic and the domain experts using it.
That makes it essential to define success criteria early and expose edge cases to your engineers as soon as possible. When tech teams clearly understand the business need, they can tune models and logic much faster.
One effective way to deal with distrust of AI outputs or misalignment on expectation is making the logic visible to the user. Rather than treating AI like a black box, exposing how inputs were interpreted or why a suggestion was made builds trust and improves feedback loops.
One of the most common pitfalls in AI projects is placing too much emphasis on internal data. Companies are often too fixated on the data they have, and this mindset can become a handicap.
Internal data might feel like the obvious starting point, but teams frequently get locked into the idea that we must use it, even when it’s not the best option for the build. In practice, this leads to stalled progress or unnecessarily complex solutions.
Rather than beginning with what you already have, start by defining the outcome you want to achieve. Ask: What’s the real outcome we’re building toward? Then source the data most likely to help you get there, even if it’s external or unstructured.
Often, that means looking beyond your own systems:
It’s tempting to hold off on building until all your data pipelines are clean and complete. But that delays value. Instead, validate early (even if your data is rough) and prove value with a POC before you invest in backend or frontend development.
Ultimately, you don’t need 15 datasets to make an MVP work. You need 2–4 good ones, a clear outcome, and a flexible mindset. The rest can follow after you prove the impact of your solution.
One of the most overlooked steps in AI projects is gaining understanding of the real user context. Teams often don’t spend enough time exploring how people think, work, and make decisions. That’s where many pilots fail.
Start by sitting down with domain experts and understanding how they operate. What data do they use or wish they had access to? What are the friction points in their current workflows? What does “good” output look like in their world?
Your goal in this phase should be absorbing both institutional knowledge and the surrounding business logic: what users do, what they could be doing, and who they serve.
Many AI pilots have failed because teams didn’t consider how the solution would be used in practice. Adoption hinges on trust and integration. For example:
One effective approach is exposing the logic behind your tool. Let users trace how an output was generated. This increases transparency, boosts trust, and improves feedback loops.
Most AI tools do a lot in the background to be adopted. AI doesn’t always need a new interface, or an interface at all. Well-designed solutions that fit user context to allow them to better collaborate with AI will be adopted more quickly.
Other times, new interaction modes (like multimodal AI or collaborative agents) unlock more value, especially when tools are meant to serve teams, not just individuals.
The key is designing your interaction model intentionally, with the end-user experience in mind from day one.

AI projects that succeed share a pattern: they start small, prove value quickly, and scale with purpose. But many never make it past the pilot. Most AI use cases don’t fail due to poor ideas. They fail because teams either try to scale too soon or build in a way that makes scaling impossible later, such as overreliance on manual code.
Instead of chasing data perfection upfront, focus on proving the concept as quickly as possible. Use workarounds, external data, or partial inputs if needed. The goal is to show business value early, not to build the perfect backend from day one.
The step from POC to MVP is often where things fall apart. Many MVPs are designed for demos, but become impossible to scale. If the MVP relies on manual code or disconnected data pipelines, the handoff to the team who will use the tool can become a dead end.
That’s why it’s crucial to design your MVP architecture to be modular and flexible. Even if the early version is simple, it should be scalable by design, so that teams can build on top of it without starting over.
Scaling a new solution isn’t just technical, it’s also cultural. Many AI solutions target users who have never worked with AI before. That creates friction if:
How do you overcome that? Transformation is complex and there’s no one-size-fits-all approach, but here are six tips to get you on the right track.
Designing, building and running custom AI solutions that deliver real results. We focus on what existing challenges AI can solve and what entirely new opportunities AI can create.
The best AI solutions thrive at the intersection of technical capability, business strategy, and human-centered design.
Start by identifying high-impact use cases with clear ROI, then build tools that empower teams across departments to interact with AI in ways they find intuitive. Along the way, overcommunicate (about what your solution does, how it works, and why it matters) to bridge knowledge gaps and align expectations.
By designing for broad impact rather than isolated wins (like taking into account how each outcome can help adjacent teams move faster and more effectively), you’ll build AI tools that are truly transformative.