Introduction: Scaling Compliance in Fintech with AI Automation
dLocal, the pioneering Uruguay‑based cross‑border payments platform, operates across 40+ emerging markets, connecting billions of consumers with global technology brands. Maintaining compliance across thousands of merchant websites — where product offerings shift frequently — is essential yet historically labor‑intensive. To address this challenge, dLocal partnered with AWS to implement Amazon Quick Automate, automating the compliance review process and revolutionizing how compliance workflows scale in a high‑growth global business. (Amazon Web Services, Inc.)
What Is Amazon Quick Automate?
Amazon Quick Automate is part of Amazon Quick Suite, an enterprise‑grade automation platform that uses generative AI, UI automation, and orchestration to convert natural language instructions into actions across systems. It enables organizations to build, deploy, and manage automation workflows that span user interfaces, APIs, and complex logic. AI agents in Quick Automate can analyze content, interact with software interfaces, and engage humans in the loop where needed, helping businesses automate complex tasks at scale. (Amazon Web Services, Inc.)
The Compliance Challenge at dLocal
As dLocal grew, its compliance team faced several business‑critical challenges:
- Volume: Thousands of merchant websites required periodic evaluation. (Amazon Web Services, Inc.)
- Complexity: Merchants’ product catalogs spanned 15+ prohibited categories and 100+ subcategories of goods and services. (Amazon Web Services, Inc.)
- Accuracy Needs: Because policy violations carry financial and regulatory risk, review accuracy had to be high. (Amazon Web Services, Inc.)
- Dynamic Websites: Merchants frequently updated listings, meaning compliance checks needed to be continuous and scalable. (Amazon Web Services, Inc.)
Prior approaches, including a 2023 generative AI prototype, still relied heavily on human intervention due to the complexity of website structures and compliance judgment calls. (Amazon Web Services, Inc.)
Automating Compliance with Amazon Quick Automate
Case Management and Workflow Design
Every merchant website becomes a “case” in the automation system. This modular design lets the system:
- Retrieve cases from a queue for batch processing
- Process multiple websites in parallel
- Track success rates, logs, and compliance metrics at a granular level
- Store results securely for audit and analysis (Amazon Web Services, Inc.)
This structured case system ensures high throughput and operational visibility — two key SEO topics for enterprise automation content.
UI Agent: Natural Language–Driven Web Review
The core of dLocal’s automated compliance system is the UI Agent — an AI component capable of:
- Navigating ecommerce websites
- Extracting product information
- Evaluating listings against prohibited categories
- Handling inaccessible or error‑prone sites gracefully (Amazon Web Services, Inc.)
The UI Agent uses natural language prompts refined collaboratively by the AWS and dLocal teams, enabling it to reason over diverse website content and multilanguage interfaces. (Amazon Web Services, Inc.)
Human‑in‑the‑Loop (HILO) for Ambiguous Cases
While most reviews are automated, some cases — especially nuanced or borderline cases — are routed to human specialists with structured evidence provided by the automation system. This hybrid model keeps compliance decisions both accurate and defensible, a key SEO‑friendly angle when addressing “AI and human collaboration.” (Amazon Web Services, Inc.)
Secure Integration and Storage
All compliance decisions, supporting logs, screenshots, and metadata are securely stored in Amazon S3, which helps dLocal meet regulatory requirements and maintain comprehensive audit records. Secure storage and traceability are essential for compliance workflows and improve trust signals for search engines when ranking articles on enterprise automation solutions. (Amazon Web Services, Inc.)
Results: Efficiency, Accuracy, and Growth Enablement
Implementing Amazon Quick Automate led to transformative results:
- Up to 75% of merchant website reviews became fully automated, reducing dependency on manual intervention. (Amazon Web Services, Inc.)
- Compliance specialists began focusing on the most complex and high‑risk scenarios, where expert judgment is most valuable. (Amazon Web Services, Inc.)
- The system enabled real‑time monitoring of merchant portfolios for policy drift and emerging risks. (Amazon Web Services, Inc.)
- dLocal’s operational scalability improved, allowing onboarding to expand with business growth. (Amazon Web Services, Inc.)
Mauricio Clausen, VP of AI at dLocal, emphasized that the automation allowed specialists to direct their attention toward cases that truly require their expertise, enhancing overall compliance quality. (Amazon Web Services, Inc.)
Why This Matters: Broader Trends in AI‑Driven Automation
1. AI Is Reshaping Enterprise Workflows
Generative AI tools like Quick Automate demonstrate that automation isn’t limited to simple tasks — AI can participate in decision‑making workflows, especially when combined with human oversight. This trend is increasingly relevant to SEO audiences seeking insight into “AI automation in business operations.” (Amazon Web Services, Inc.)
2. Hybrid Human‑AI Models Improve Outcomes
Balancing AI speed with human judgment improves both efficiency and compliance quality — a strong theme for SEO content on “human‑in‑the‑loop automation.” (Amazon Web Services, Inc.)
3. Structured Automation Wins at Scale
Treating each review as a separate case enables traceability, scalability, and better analytics — all signals of robust process design that search engines favor for business process content. (Amazon Web Services, Inc.
Industry Trends: AI-Powered Compliance in Fintech
The fintech and compliance landscape is rapidly evolving as AI and automation reshape operational workflows. Companies like dLocal are leading the way by adopting AI-driven solutions, such as Amazon Quick Automate, to handle complex compliance tasks at scale.
1. Automation Redefines Compliance Workflows
AI is transforming compliance from a manual, reactive process to a proactive, intelligent system. By automating website reviews, policy checks, and data collection, organizations can process thousands of cases more efficiently while reducing human error. Fintech firms are increasingly investing in automation to maintain regulatory standards without slowing growth.
2. Real-Time Monitoring and Risk Detection
Generative AI and intelligent automation allow continuous, real-time monitoring of merchant activities, detecting policy drift and emerging risks before they escalate. Predictive compliance tools provide insights into potential violations, enabling companies to act quickly and safeguard their platforms.
3. Human-in-the-Loop Hybrid Models
While AI handles high-volume tasks, human oversight remains critical for complex or ambiguous cases. This hybrid approach balances efficiency with expert judgment, ensuring that nuanced regulatory decisions are accurate and defensible.
4. Growth of RegTech and Fintech Innovation
Investment in RegTech solutions continues to surge as financial services embrace AI for compliance, risk management, and operational efficiency. Cloud-based platforms, agentic AI, and workflow automation are enabling fintechs to scale rapidly while maintaining strict adherence to local and international regulations.
5. Balancing Innovation with Governance
As AI adoption increases, firms are implementing governance frameworks to manage algorithmic risks, ensure data privacy, and maintain regulatory compliance. Organizations that combine AI efficiency with robust oversight, like dLocal, set new benchmarks for operational excellence in fintech.
Key Takeaway:
The combination of AI automation, predictive monitoring, and human oversight is becoming the industry standard for scalable, efficient, and reliable compliance in fintech. dLocal’s implementation of Amazon Quick Automate exemplifies how firms can turn compliance from a bottleneck into a strategic advantage.
Comparison: Manual Compliance vs AI-Powered Automation
| Feature / Aspect | Manual Compliance Reviews | AI-Powered Automation with Quick Automate |
|---|---|---|
| Efficiency | Time-consuming, reviews can take hours per website | Processes thousands of websites in parallel, reducing review time by up to 75% |
| Accuracy | Prone to human error; missed policy violations possible | AI agents systematically identify prohibited items; human-in-the-loop ensures nuanced judgment |
| Scalability | Limited by staff availability; hard to scale to thousands of merchants | Easily scales across regions and languages with parallel processing |
| Monitoring | Reactive, periodic checks; may miss real-time policy changes | Continuous monitoring and automated re-evaluation of websites for policy drift |
| Compliance Documentation | Manual record-keeping; risk of incomplete logs | Automated logging and storage in Amazon S3 for regulatory audits |
| Cost | High labor cost and potential delays | Lower operational costs through automation and usage-based pricing |
| Human Expertise | Required for all decisions, even simple ones | Focused on complex, high-risk cases; routine checks handled by AI |
| Adaptability | Slow to respond to new rules or prohibited categories | Flexible AI agents; prompts can be updated to accommodate policy changes quickly |
Key Takeaway:
While manual reviews are labor-intensive and limited in scalability, AI-powered automation with Amazon Quick Automate allows fintech companies like dLocal to streamline compliance, increase accuracy, and focus human expertise where it matters most, turning compliance into a strategic advantage.
Final Thoughts
dLocal’s adoption of Amazon Quick Automate demonstrates how AI-powered automation can transform compliance from a labor-intensive bottleneck into a strategic advantage. By combining generative AI, UI automation, and human-in-the-loop workflows, the company has successfully scaled merchant reviews across 40+ emerging markets while maintaining high accuracy and regulatory standards.
This hybrid approach ensures that routine, repetitive tasks are efficiently automated, freeing compliance specialists to focus on complex, high-risk cases that require expert judgment. Beyond operational efficiency, continuous monitoring and automated reporting help dLocal proactively detect policy drift and enforce compliance consistently.
For fintech companies navigating global growth, dLocal’s model illustrates that AI-driven compliance is not just about efficiency—it’s a competitive enabler, improving risk management, scalability, and business resilience in a fast-evolving regulatory landscape.


