In today’s fast-moving digital economy, trust and security are non-negotiable—especially in financial services. For one FinTech firm, the stakes were high: a surge in fraudulent transactions and chargebacks was eroding customer confidence and putting a serious dent in revenue. That’s where AiSynapTech came in.
As digital transactions surged, so did fraudulent activity. The FinTech client was struggling to keep pace with increasingly sophisticated fraud attempts. Their legacy fraud detection systems were reactive, slow, and reliant on static rule-based mechanisms that couldn’t keep up with evolving criminal tactics. Key pain points included:
A high volume of undetected fraud attempts slipping through the cracks
Frequent chargebacks damaging customer relationships and financial stability
Manual reviews delaying transaction approvals and frustrating legitimate customers
The client needed a smarter, faster way to fight fraud—without compromising user experience or operational efficiency.
AiSynapTech’s team of AI specialists partnered with the client to deliver a tailored, machine learning-powered solution designed to detect and prevent fraud in real time. Our approach was both strategic and deeply technical:
We began by analyzing millions of historical transactions to identify behavioral norms across user segments. This formed the foundation for detecting anomalies that signal fraud.
We developed a supervised machine learning model trained on both fraudulent and legitimate transaction data. The model incorporated features like device fingerprinting, transaction velocity, geolocation, and behavioral analytics.
Our engineers built a real-time decision engine that integrated with the client’s payment gateway. It flagged suspicious transactions instantly, triggering automated verification or blocking workflows.
To stay ahead of new fraud techniques, we implemented a feedback loop where the model retrains itself regularly using fresh data and outcomes.
Within weeks, AiSynapTech delivered and deployed a robust real-time fraud detection system customized to the client’s infrastructure and risk profile. The system included:
Gave internal teams visibility into transaction flows and flagged risks
Assigned dynamic fraud scores to each transaction based on a range of behavioral and contextual factors
Seamlessly integrated with the client’s existing tech stack, ensuring minimal disruption to their operations
Designed to handle transaction spikes without compromising accuracy or speed
This AI-powered system didn’t just react—it predicted. Fraud attempts were caught at the point of transaction, before any damage was done.
Metric
Before AiSynapTech
After AiSynapTech
Fraud Detection Rate
65%
92%
Chargeback Rate
High
Reduced by 70%
Manual Review Workload
Heavy
Significantly Lower
Customer Transaction Delays
Frequent
Greatly Reduced
AiSynapTech’s fraud detection solution delivered immediate and measurable impact:
92% of fraud attempts identified in real time
70% reduction in chargebacks within three months
Improved transaction approval rates by reducing false positives
Decreased manual reviews, saving time for fraud and compliance teams
Ongoing model optimization through continuous feedback
“AiSynapTech transformed our fraud prevention capabilities. Their system was not only fast and accurate but also tailored to our business model. The drop in chargebacks alone made a big difference to our bottom line—and our customer experience has never been better.”
— Chief Risk Officer, FinTech Client