David Sewell
Chief Technology Officer , London, UK
Artificial Intelligence
With AI, success doesn’t come from rushing in. It’s about thinking big while executing in measured, deliberate steps. This balance is crucial to ensuring sustainable results.
According to IBM, the key barriers companies face when deploying AI, include limited expertise, data complexity, and ethical concerns. These challenges are real, but they don’t have to stall progress.
At Synechron, our AI journey spans nearly a decade, and it has taught us what it takes to get it right.
Here’s an eight-point plan we’ve created to help simplify your company’s adoption of AI.
AI should be an asset that genuinely supports your business objectives. Shape your AI strategy to ensure it advances your long-term vision, uncovering new opportunities for growth. AI can add value by optimizing existing products, maximizing ROI, or by creating novel solutions that set you apart in the market. However, many organizations adopt AI simply because it’s seen as the ‘right thing to do.’ While this perception is valid due to the many benefits AI can offer, it becomes a problem when AI is not integrated to support specific business goals. Without a clear strategy, AI can create clutter rather than clarity.
Continuing from our earlier point, too many organizations adopt AI simply because it feels like the right move. But what separates businesses that thrive with AI from those that merely dabble is a clear, committed governance approach. Good governance creates a structure that stands up to scrutiny, driving credibility at every level – from employees to the wider market.
Establishing a governance framework really is non-negotiable. It’s how you oversee AI deployments, manage risk, and ensure compliance with ethical and sustainable standards. This foundation will differentiate your business in a landscape where trust in AI is critical to long-term success.
Security is the top concern for users today, and if you can’t manage it effectively, your organization isn’t ready to harness AI’s full potential – plain and simple. AI opens new possibilities, but it also raises the stakes, making security both a priority and a necessity.
The same technology that drives your AI advancements also fuels increasingly sophisticated attacks. Cyber attackers now deploy AI-driven strategies to exploit vulnerabilities with precision and scale that traditional security measures can’t always counter. To stay ahead, your security approach must be proactive and agile, evolving as fast as the threats do.
For AI to drive real change, innovation must become a core part of your organization’s DNA. This means fostering a culture where experimentation is valued, calculated risks are encouraged, and new ideas are consistently tested and refined.
AI thrives on creativity and cross-functional insights, so innovation requires contributions from every corner of the business. Bringing together diverse teams – product, data, engineering, marketing, sales, and beyond – fuels fresh perspectives and uncovers unconventional applications that single-track thinking can miss.
One powerful way to ignite this creativity is through initiatives like hackathons. We’ve seen the impact firsthand, with over 800 ideas submitted during our recent hackathon. Empower your teams with tools and freedom to test and iterate, without waiting for perfection. This will better position your business to lead, rather than follow, in an increasingly AI-driven world.
Adopting AI is as much a people-focused journey as it is a technical one. Without an open-minded and skilled workforce, even the most advanced AI strategies will fall short.
Teams need more than surface-level training. This shift can be challenging. You may encounter resistance and gaps in understanding. But today’s business environment demands that employees are both fluent in AI and ready to embrace it.
We’ve faced this challenge with our 14,500+ workforce. To bridge the gap, we created a comprehensive learning program. We built training videos with real-world demonstrations and tailored sessions for each department, showing exactly how AI could apply to their specific roles. Today, we’re proud to say that all our teams are AI-enabled, with both technical and non-technical roles equipped to leverage AI effectively. And that can happen to you too.
A solid engineering framework is essential to support effective AI deployment. Start with best practices for prompt crafting, as well-structured prompts improve AI outputs and reduce the likelihood of inaccurate results. To manage risks, prioritize mitigation strategies for AI biases, hallucinations, and non-deterministic outcomes.
Integrate AI frameworks, methods, and APIs in a way that aligns with existing infrastructure, creating a seamless environment for AI to function across applications. Implement machine learning operations (MLOps) to maintain this foundation through continuous training, fine-tuning, rigorous testing, and model management. This disciplined approach keeps your AI models adaptable, precise, and ready for evolving business needs.
Without a sturdy, adaptable base, even the most ambitious plans can’t reach their potential. A scalable platform supports growth and handles a variety of data types while integrating effortlessly with existing systems.
To keep this foundation strong, cloud strategies provide the flexibility needed to scale AI initiatives. Equally important is a robust data architecture – one that can handle the complex demands of data processing, storage, and analysis with efficiency and speed. Additionally, setting up continuous integration and delivery (CI/CD) pipelines allows AI deployments to adapt quickly and consistently.
After deployment, the real work in AI operations begins. Maintaining health, availability, and performance requires proactive oversight and swift response to incidents. AI systems are inherently complex, with potential for unexpected behavior, so it's essential to establish a strategy for incident and problem management from the outset.
Regular performance monitoring optimizes AI workloads, allowing systems to operate smoothly and deliver intended results. Emphasizing a cycle of continuous improvement sharpers your AI capabilities over time, which builds resilience and competitive advantage.
It requires focused governance, robust engineering, skilled teams, and efficient operations. Each component reinforces the other, establishing a solid framework where AI drives meaningful results and strengthens the organization at every level.
With these foundations in place, your organization gains the resilience and adaptability needed to leverage AI effectively. This 8-point plan will help build a foundation for long-term growth, positioning you to lead confidently as technology advances and the landscape evolves.