By Vittesh Sahni,
Senior Director of AI Engineering
Originally featured in The AI Journal
Only one in five AI projects delivers digital value.
The problem isn’t the tech but how it’s implemented. When hype meets weak infrastructure and resistance to change, failure follows. To succeed, you should move away from experiments toward a solid AI architecture, thoughtfully weaving AI into product logic, workflows, and customer journeys.
From experiments to execution
AI maturity is all about fewer pilots and more structure.
Multimodal engines now handle text, images, and voice with contextual fluency. What was once experimental, like chatbot support, is now operational. By 2028, one-third of enterprise apps will include AI agents acting instead of just talking.
The four pillars of value-driven AI
1. Know your goals
Start with a business problem, not a model. Define pain points where AI can drive measurable results. For example, call centers using AI can analyze conversations and improve customer satisfaction.
2. Keep your data ready
No good AI is possible without quality data, so you need clean datasets first. Financial firms that monitor data quality before AI adoption gain both compliance and credibility.
3. Add the human touch
Behind every system are skilled engineers and architects. AI works best when guided by human insight, communication, and trusted partnerships.
4. Build a culture of change
Ignorance doesn’t kill as much AI progress as resistance does. Train, communicate, and empower your team, so they view AI as a growth tool, not a threat.
Choosing the right AI technology
Smart companies balance business goals, infrastructure, and scalability.
-
Finance: OCR + LLMs automate PDF data migration with high accuracy
-
Renewable energy: AWS-native models predict electricity usage seamlessly
-
Retail: GenAI slashes design cycles from a month to a week
-
Construction: Open-source LLMs enable secure, private chatbots
Every choice serves one goal, which is digital value creation.
The framework in action
Our start small → validate → iterate → scale → govern framework turns operational chaos into clarity.
One of our construction clients cut manual blueprint work for 500,000+ users by integrating AI using our framework.
Architectural symbols critical to the client’s tasks were detected with 92% accuracy, automating blueprint analysis and reducing project estimation time.
No-hype AI is the new standard
Forget the buzzwords. Whether you use OpenAI, Llama 3, or proprietary models, the north star remains the same: Build AI that delivers measurable business outcomes.
Read the full article featured in The AI Journal