Technology Category
- Cybersecurity & Privacy - Intrusion Detection
- Cybersecurity & Privacy - Malware Protection
Applicable Industries
- Equipment & Machinery
- National Security & Defense
Use Cases
- Cybersecurity
- Tamper Detection
Services
- Cybersecurity Services
The Customer
Confiar
About The Customer
Confiar is a Colombian Financial Cooperative with a network of 54 offices across the country, including in major cities like Bogota and Medellin. The Cooperative, which was founded nearly 50 years ago, is renowned for its leading role in social housing projects. It is committed to safeguarding its clients' sensitive data and has recognized the importance of having a robust security stack to protect against fast-moving and sophisticated cyber threats. Confiar has been proactive in incorporating AI into its security stack to stay ahead of emerging risks and protect its users and data in the dynamic landscape of cyber threats.
The Challenge
Confiar, a Colombian Financial Cooperative, was facing a significant challenge in safeguarding its clients' sensitive data against fast-moving threats like ransomware. Despite having traditional security tools such as firewalls, anti-virus, and email protection, the Cooperative needed a solution that could understand user behavior and protect against novel and sophisticated threats that could evade these traditional solutions. The Cooperative was also aware of the increasing prevalence of social engineering, hidden malware, and unauthorized data transfers, and recognized the need to incorporate AI into its security stack to protect its users and data in this new era of dynamic cyber threats. During the initial trial of Darktrace's Self-Learning AI, several vulnerabilities across employee devices were identified that the organization wasn't previously aware of.
The Solution
Confiar adopted Darktrace's Self-Learning AI to defend against novel and sophisticated threats. This AI solution analyzes all raw traffic across an organization, including email, cloud, and industrial environments, and develops a sense of 'self' for every user and device. It spots subtle deviations indicative of a cyber-threat, enabling the detection of malware attacks launched with tactics that have never been seen before. The AI constantly learns the patterns of an organization's users and devices, and is capable of discerning the subtle indicators of a genuine threat. Confiar also utilized Darktrace's Cyber AI Analyst, which automatically investigates sophisticated threats and provides critical details to the security team in seconds. Additionally, Confiar benefited from Darktrace's Proactive Threat Notification (PTN) service, which provides an additional layer of protection by sending alerts when incidents indicative of a serious emerging attack are identified.
Operational Impact
Quantitative Benefit
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