The Value of Experimentation and Incremental Innovation: Navigating the Path to AI-Driven Innovation in Game Development
"The best way to predict the future is to invent it." -Alan Kay

As game makers, we're no strangers to innovation. But with the rapid evolution of AI technology, it's easy to get caught up in the excitement of endless tech assessments and lose sight of what truly matters: solving real-world problems to drive value creation.
Balancing Incremental and Radical Innovation
When it comes to AI, we often think about radical innovation - the kind of game-changing breakthroughs that can transform our industry. But incremental innovation is just as important and often brings more immediate “better/cheaper/faster” opportunities. Paired with effective experimentation, incremental innovation starts from existing knowledge and technologies to create practical, near-term solutions. It's about making small, incremental improvements that can add up to big impacts over time.
The Power of Incremental Innovation
Incremental innovation is not just about making small changes; it's about creating a culture of continuous improvement. By focusing on incremental innovation, we can:
- Increase our chances of project success by tackling smaller, more manageable problems
- Pragmatically create solutions that are more likely to be adopted into production
- Support and enhance the work of skilled professionals, rather than trying to replace them
A Few Tips to Bringing to Life Incremental Innovation in AI
- Take a Problem-First Approach: Identify genuine problems worth solving, and then use AI to address them. This means focusing on the problem, not the technology.
- Defining Success Upfront: Establish clear thresholds of acceptable expected outcomes within a defined timeframe (kill metrics). This approach transparently allows everyone to measure the effectiveness of the AI solutions and make data-driven decisions.
- Try Fast, Fail Fast, and Try Again: Have a team ready to build a Proof of Concept (POC) very quickly, and be ready to iterate as many times as needed. But do it quickly.
- Operationalize Your Solution: Once the AI solutions are validated, focus on operationalizing it asap. This requires ongoing domain expert participation, clear data requirements, and a strong partnership with operational and tech teams.
- Experimentation Powered by AI. Leverage AI tools and techniques to accelerate the experimentation process and identify new opportunities for innovation.
One of the ways to make that happen at Keywords was by setting up a team of AI experts, connected to our AI Center of Excellence, servicing the rest of the business with 6-week POC sprints, accessible to any teams. Along with project KARA and other initiatives, that’s allowed us to organize immediate innovation initiatives with a direct impact to our businesses.
Overcoming the Challenges of Moving from Experimentation to Implementation
However, even with the best intentions, AI implementation comes with major challenges. Here are three key hurdles to overcome when experimenting with AI to maximize chances of success:
- The pace of change: AI technology is moving at an incredible pace, and the experimentation of today might be irrelevant tomorrow. To navigate this landscape, focus on building flexible solutions that can adapt to changing circumstances.
- Barriers to adoption: Address legal limitations, resistance to change, lack of expertise, and uncertainty about how to get started. A structured innovation management program can help overcome these challenges.
- The human factor: AI should be approached as a way to support and enhance the work of skilled professionals. By doing so, we not only increase our chances of project success but also create solutions that are more likely to be adopted into production.
Embracing a Culture of Continuous Innovation
Innovation is a journey, not a destination. Thoughtfully and deliberately moving AI applied R&D from experimentation to implementation is a challenging but crucial step in supercharging AI innovation efforts. By adopting an incremental innovation approach and pairing it with a structured experimentation program such as project KARA, it's possible to reduce risk, increase agility, and improve collaboration across teams. And by taking a problem-first approach, defining upfront kill metrics, and focusing on incremental innovation, it's possible to unlock the true potential of AI without losing sight of the bigger changes upcoming, and while keeping the human at the center.
But then ultimately, the key to successful AI implementation lies in embracing a culture of continuous innovation, which can itself be powered by AI.
By fostering a mindset that encourages experimentation, learning, and iteration, we can create an environment that supports the creation of new experiences, for ourselves, for our clients, and for our players. And to Imagine More.