Despite this massive investment and hype, most AI projects have failed to materialise into compelling business value, with some sources estimating that over 80% of AI projects fail3. In this article, we will explore what has caused this disconnect between AI hype and AI results and how Innovior is helping clients achieve genuine AI value through our Applied AI approach.
Why do so many AI projects fail and how can future AI adopters avoid a similar fate? Here are four key pitfalls that business leaders must navigate when pursuing an AI solution.
At Innovior, our lean process DNA allows us to help organisations define the right problems to solve with AI, prepare for living with AI and deploy effective AI solutions into production. We’ve been delivering complex technology solutions to customers for the best part of a decade and that experience has never been more relevant than now when helping customers avoid the common pitfalls of AI.
Here’s how we do it:
We start by understanding the specific challenges and opportunities within an organisation. This ensures that AI is applied where it can genuinely add value. We then help build the business case to support the necessary investment to move the best ideas forward.
Not every problem requires an AI solution. We evaluate whether AI is the right tool for the job, considering factors such as complexity, data availability, training requirements and the potential for automation.
The choice of AI models is critical. We select models that are best suited to the problem at hand, balancing accuracy, interpretability and scalability. We help make the tradeoff decision between build vs buy which is a key consideration for getting AI ready in a cost-effective manner.
Data is the lifeblood of AI. We have a rigorous method for getting data ready which encompass data collection, cleaning, integration and governance, ensuring that AI models are fed with high-quality data.
We set up the infrastructure, train the models and deploy the full-scale solutions into production environments. We help train AI champions, support the onboarding of users and provide post-deployment technical performance assessments and insights.
Through our Applied AI approach, we have delivered substantial results for our clients. Here are a few recent examples:
By implementing AI-driven predictive maintenance, we helped a manufacturing client reduce downtime by 30%. Our models analysed sensor data to predict equipment failures before they occurred, allowing for timely maintenance and minimising production disruptions.
For a leading energy distribution company, we developed an AI-powered chatbot that handled 70% of customer enquiries, improving response times and customer satisfaction. This automation enabled the company's human agents to focus on more complex issues, enhancing overall service quality.
For a large private hospital operator and healthcare provider group, we developed a generative AI-powered chatbot that allowed nurses to ask questions about internal policies and procedure documents in natural language. This saved each user 30 minutes per day in wasted search time which was re-directed towards spending more time caring for patients.
The hype around AI is undeniable, and its potential to revolutionise various industries is immense. The best way businesses can leverage this trend is the first identify and qualify the business problems that AI can help solve, making sure they build a robust business case to support the investment needed. The next step is to start with a series of low-risk pilots which make collaboration easier and lower the barriers to success. The momentum built from the early pilots earns crucial trust from business leaders to keep scaling the use of AI across the enterprise.