What is Reconciliation in Accounting? How to Reconcile an Account?
What is reconciliation in accounting? How to reconcile an account? Reconciliation in accounting stands for the comparison between two different financial accounts in order to see if they have the correct account balances between them for the end of an accounting period. The accountants responsible for the reconciliation process must compare the balance amount of the general ledger accounts with various other independent systems in order to verify the accuracy of the reports. In case of discrepancies, the accountants must identify these errors and bring the balances of the two identified records into agreement. Under Section 404 of the Sarbanes-Oxley Act of 2002, it is compulsory for all publicly-traded institutions to have internal controls for financial reporting as part of the annual report. Further, they must maintain these controls for total effectiveness.
The financial institutions are therefore supposed to follow the process of reconciliation in accounting, where all the balance sheets that contain any errors for rework can be adjusted prior to the end of the accounting period. In order to ensure complete accuracy in their financial reports, most institutes are often unable to produce the general ledger in time. This, in turn, brings the possibility of risk to the organization for non-compliance. The process of reconciliation in accounting should ideally be accomplished before any requirement of verification by the Financial Institution (FI) on the integrity of their financial reports.
To summarize, the process of reconciliation in accounting is a method to identify, adjust, and balance out the remaining amounts of two different financial accounts in case there are any discrepancies. The above procedure will help to correct the balance in the account and validate the institution’s financial accounts and financial information. The account reconciliation will typically be processed or carried out after the close of a financial period. So, during this time, the accountant will manually go through each general ledger, comparing the balance amount with other sources and using their financial data. This will help the accountants to verify whether the balance amount on all the general ledger accounts is correct. In case the balance amounts are inaccurate, the accountants will investigate them further and correct the remaining errors. Finally, once all the general ledger accounts are verified, the financial information will be stored for audit use and sent for the audit report.
Meaning of Reconciling General Ledger Accounts
Meaning of reconciling general ledger accounts: A general ledger is the financial recordings of every transaction made by numerous bank accounts in a financial institution. The general ledger balance sheet reconciliation requires deducting the total number of debits from the total number of credits, to ensure that the balance amount in all of the accounts is accurate. For a financial institution, the quality of their financial data is recorded at the general ledger level, which is why it should be reconciled at regular intervals, such as monthly or quarterly. Reconciling of the general ledger accounts is essential for reporting and maintaining internal controls – without which the institute could face systematic issues. Thus, reconciling general ledger accounts is at the centre of all functions held by accountants, and the absence of it can result in incorrect records or inaccurate financial data, which in turn will impact the audit reports and the financial resources of the financial institution.
How to Reconcile General Ledger Accounts?
How to reconcile general ledger accounts? The process of reconciliation aims to correlate between two sets of records and maintain an inventory that can help to identify the account’s transactions, detect any errors in their balance amounts, and correct the amounts in case of any discrepancies. The general ledger account is a summation of all transactions in subsidiary ledger accounts, which includes the accounts payable and receivable, inventory, and cash amounts.
How to reconcile general ledger accounts? The method used for general ledgers is a double-entry accounting method, where the income is categorized under debit, credit, and the cash amount. The items that enter the general ledger can be divided into different categories: first, the journal entry that reflects the item number for all account transactions; second, the description of the transaction; third, the value of the account’s net balance as credit or debit, and, lastly, the remaining balance in the general ledger.
The daily journals – which are records, apart from the general ledger – are used to keep track of all transactions taking place on a daily basis, such as any cash amounts for an invoice. These transactions are then posted in the general ledger, where the totals of their invoice amount are calculated and added to the financial reports/balance sheet. The balance sheet is important because it shows the financial institution’s total revenue and expenses, along with the income statement, which is closed at the end of the accounting year. The balance sheet also helps to keep a record of the institution’s financial health.
How to reconcile general ledger accounts? The procedure for general ledger begins by logging in or keeping a journal of every business transaction with the transaction details. These transactions are then categorized into different accounts: cash, accounts payable, or sales. Then, these daily journals are reconciled regularly (at the end of every month or quarterly) and transferred into the general ledger once they are complete. There are different ways to investigate and review the reconciliation process when they are categorized in different accounts: investigating the beginning balance to the ending reconciliation; investigating accounts in the current period; reviewing the adjusting journal entries; reviewing when journal entries are reversed; and reviewing ending details with the ending balance.
Importance of GL Accounts Reconciliation
The process of GL accounts reconciliation is followed by financial institutions before the annual audit, to ensure that the accounts are accurately recorded. The GL accounts reconciliation makes sure that those financial accounts are correct and efficient, making the closing processes easier and financial regulations simpler to comply with. There are added benefits of GL accounts reconciliation, including precision, accuracy, and consistency in the institution’s financial data/statements, all of which better aid business-related decisions. The accountant team’s work is to use reconciliation to prevent any errors in the balance sheets or various accounts in the ledger within the timeline. The financial institution receives a blueprint of their financial spending, which allows better clarity on the allocation of finances and overall improved financial health. The general ledgers should be reconciled regularly every month, which will help to review and maintain the institution’s internal controls as per the Sarbanes-Oxley Act, and further prevent any fraudulent activities from taking place in the financial institution.
The possibilities of tech are effectively made use in the reconciliation process today. By using different software solutions, organisations can largely automate their reconciliation, helping them save on time and cost. There are dedicated reconciliation software available in the market today and they can significantly reduce human errors while automating many repetitive processes. By and large, they provide centralised control, better monitoring, operational cost savings, increased effectiveness and efficiency, better accessibility, improved data security and reduced audit risks.
There are also reconciliation software solutions powered by modern technologies such as artificial intelligence and machine learning. In comparison to rules-based solutions, they go a step ahead and enable completely automated reconciliation, while providing superior accuracy in matching and effective exceptions management.
Speak to a member of our team today to learn more about our market leading reconciliation solution.
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Top AML Scenarios in ASEAN

The Role of AML Software in Compliance

The Role of AML Software in Compliance


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Smarter, Faster, Fairer: How Agentic AI is Powering the Next Generation of AML Investigation Software in the Philippines
In the Philippines, compliance teams are trading routine for intelligence — and Agentic AI is leading the charge.
The financial crime landscape in the Philippines has grown more complex than ever. From money mule networks and investment scams to online fraud syndicates, criminals are exploiting digital channels at unprecedented speed. Traditional compliance systems — reliant on static rules and manual reviews — are struggling to keep up.
This is where AML investigation software steps in. Powered by Agentic AI, these solutions are transforming how banks and fintechs detect, analyse, and respond to suspicious activity. In a region where regulatory scrutiny is tightening and financial innovation is accelerating, the Philippines stands at the front line of this transformation.

The Growing Burden on Compliance Teams
Financial institutions across the Philippines face increasing pressure to balance growth with risk management. The Anti-Money Laundering Council (AMLC) and the Bangko Sentral ng Pilipinas (BSP) have rolled out new regulations that demand stronger customer due diligence, more granular monitoring, and faster suspicious transaction reporting.
At the same time, the ecosystem has become more complex:
- Digital payment growth has created new entry points for fraud.
- Investment scams and online lending abuse continue to rise.
- Cross-border flows have made tracing illicit money trails harder.
These developments have turned compliance operations into a high-stakes race against time. Analysts often sift through thousands of alerts daily, many of which turn out to be false positives. What used to be an investigation problem is now an efficiency and accuracy problem — and the solution lies in intelligence, not just automation.
What AML Investigation Software Really Does
Modern AML investigation software isn’t just a case management tool. It’s a system designed to connect the dots across fragmented data, spot suspicious relationships, and guide investigators toward the right conclusions — faster.
Key Functions:
- Alert triage: Prioritising alerts based on risk, behaviour, and contextual intelligence.
- Entity resolution: Linking related accounts and transactions to reveal hidden networks.
- Case investigation: Collating customer data, transaction histories, and red flags into a single view.
- Workflow automation: Streamlining escalation, documentation, and reporting for regulatory compliance.
But the real leap forward comes with Agentic AI — a new generation of artificial intelligence that doesn’t just analyse data, but actively assists investigators in reasoning, decision-making, and collaboration.
Agentic AI: The New Brain Behind AML Investigations
Traditional AI systems rely on predefined rules and pattern matching. Agentic AI, on the other hand, is dynamic, goal-driven, and context-aware. It can reason through complex cases, adapt to new risks, and even communicate with investigators using natural language.
In AML investigations, this means:
- Adaptive Learning: The system refines its understanding with every case it processes.
- Natural Language Queries: Investigators can ask the system questions — “Show me all linked accounts with unusual foreign remittances” — and get instant, contextual insights.
- Proactive Suggestions: Instead of waiting for input, the AI can surface leads or inconsistencies based on evolving risk patterns.
For Philippine banks facing talent shortages and rising compliance workloads, this is a game changer. Agentic AI augments human intelligence — it doesn’t replace it — by taking on the repetitive tasks and surfacing what truly matters.
How Philippine Banks Are Embracing Intelligent Investigations
The Philippines’ financial sector is undergoing rapid digital transformation. With over 30% of adults now transacting through e-wallets, and a growing cross-border payments ecosystem, compliance complexity is only deepening.
Forward-looking banks and fintechs have begun integrating AML investigation software with Agentic AI capabilities to strengthen investigative accuracy and reduce turnaround times.
Adoption Drivers:
- Regulatory alignment: AMLC’s focus on data-driven risk management is pushing institutions toward AI-enabled investigation workflows.
- Operational efficiency: Reducing false positives and manual intervention helps cut compliance costs.
- Fraud convergence: As fraud and AML risks increasingly overlap, unified intelligence is now essential.
Tookitaki has been at the forefront of this change — helping financial institutions in the Philippines and across ASEAN shift from rule-based monitoring to adaptive, intelligence-led investigation.
Key Features to Look for in AML Investigation Software
Choosing the right AML investigation software goes beyond automation. Financial institutions should look for capabilities that blend accuracy, explainability, and collaboration.
1. Agentic AI Copilot
A key differentiator is whether the software includes an AI copilot — an embedded assistant that interacts with investigators in real time. Tookitaki’s FinMate, for example, is a local LLM-powered Agentic AI copilot designed specifically for AML and fraud teams. It helps analysts interpret cases, summarise findings, and suggest next steps — all while maintaining full auditability.
2. Collaborative Intelligence
The most advanced platforms integrate collective intelligence from communities like the AFC Ecosystem, giving investigators access to thousands of real-world scenarios and typologies. This empowers teams to recognise emerging risks — from mule networks to crypto layering — before they spread.
3. Federated Learning for Data Privacy
In jurisdictions like the Philippines, where data privacy regulations are strict, federated learning enables model training without centralising sensitive data. Each institution contributes insights without sharing raw data — strengthening collective defence while maintaining compliance.
4. Explainability and Trust
Every AI-generated recommendation should be explainable. Systems like Tookitaki’s FinCense prioritise transparent AI, ensuring investigators can trace every output to its underlying data, model, and reasoning logic — critical for audit and regulator confidence.
5. Seamless Integration
Integration with transaction monitoring, name screening, and case management systems allows investigators to move from detection to disposition without losing context — an essential requirement for fast-moving compliance teams.

The Tookitaki Approach: Building the Trust Layer for Financial Crime Prevention
Tookitaki’s end-to-end compliance platform, FinCense, is designed to be the Trust Layer for financial institutions — combining collaborative intelligence, federated learning, and Agentic AI to make financial crime prevention smarter and more reliable.
Within FinCense, the FinMate AI Copilot acts as an investigation partner.
- It summarises alert histories and previous investigations.
- Provides contextual recommendations on next steps.
- Offers case narratives ready for internal and regulatory reporting.
- Learns from investigator feedback to continuously improve accuracy.
This human–AI collaboration is transforming investigation workflows. Philippine banks that once spent hours on case analysis now complete reviews in minutes, with greater precision and consistency.
Beyond efficiency, FinCense and FinMate align directly with the AMLC’s push toward explainable, risk-based approaches — helping compliance officers maintain trust with regulators, customers, and internal stakeholders.
Case Example: A Philippine Bank’s Digital Leap
A mid-sized bank in the Philippines, struggling with high alert volumes and limited investigation bandwidth, implemented Tookitaki’s AML investigation software as part of its broader FinCense deployment.
Within three months:
- False positives dropped by over 80%.
- Investigation time per case reduced by half.
- Analyst productivity improved by 60%.
What made the difference was FinMate’s Agentic AI capability. The system didn’t just flag suspicious behaviour — it contextualised each alert, grouped related cases, and generated draft narratives for investigator review. The outcome was faster resolution, better accuracy, and renewed confidence in the compliance function.
The Future of AML Investigations in the Philippines
The next phase of compliance transformation in the Philippines will be shaped by Agentic AI and collaborative ecosystems. Here’s what lies ahead:
1. Human-AI Co-investigation
Investigators will work alongside AI copilots that understand intent, interpret complex relationships, and recommend actions in natural language.
2. Continuous Learning from the Ecosystem
Through federated networks like the AFC Ecosystem, models will learn from typologies shared across borders, enabling local institutions to anticipate new threats.
3. Regulatory Collaboration
As regulators like the AMLC adopt more advanced supervisory tools, banks will need AI systems that can demonstrate traceability, explainability, and governance — all of which Agentic AI can deliver.
The result will be a compliance environment that’s not just reactive but predictive, where financial institutions detect risk before it manifests and collaborate to protect the integrity of the system.
Conclusion: Intelligence, Trust, and the Next Chapter of Compliance
The evolution of AML investigation software marks a turning point for financial institutions in the Philippines. What began as a push for automation is now a movement toward intelligence — led by Agentic AI, grounded in collaboration, and governed by trust.
As Tookitaki’s FinCense and FinMate demonstrate, the path forward isn’t about replacing human judgment but amplifying it with smarter, context-aware systems. The future of AML investigations will belong to those who can combine human insight with machine precision, building a compliance function that’s not only faster but fairer — and trusted by all.

The Role of AI in Transaction Monitoring for Australian Banks
As financial crime grows more complex, Australian banks are turning to AI and now Agentic AI to revolutionise how transactions are monitored and risks detected.
Introduction
Australia’s financial landscape is evolving fast. The growth of real-time payments, digital banking, and cross-border transactions has made detecting financial crime more challenging than ever. Traditional rule-based transaction monitoring systems, designed for slower and simpler payment environments, are no longer enough.
In response, Australian banks are increasingly adopting artificial intelligence (AI) to enhance the accuracy, speed, and adaptability of their AML programs. But the latest evolution, Agentic AI, is taking compliance to an entirely new level.
This blog explores how AI, and particularly Agentic AI, is transforming transaction monitoring across Australia’s banking sector, enabling faster detection, smarter investigations, and stronger regulatory alignment with AUSTRAC.

Why Transaction Monitoring Needs a New Approach
1. The Rise of Real-Time Payments
With the New Payments Platform (NPP) and PayTo, transactions clear in seconds. Fraudsters and launderers exploit this speed to move funds through multiple mule accounts before banks can react.
2. Sophisticated Criminal Tactics
Financial crime is no longer limited to simple structuring. Criminals use synthetic identities, cross-border layering, and digital assets to evade detection.
3. High False Positives
Rule-based systems trigger thousands of unnecessary alerts, overwhelming compliance teams and increasing costs.
4. AUSTRAC’s Evolving Standards
AUSTRAC expects continuous monitoring, explainability, and proactive detection. Banks must show they can identify suspicious activity before it spreads across the financial system.
5. Customer Experience Pressures
Delays or false flags impact legitimate customers. AI enables banks to balance security and service quality.
The Limitations of Traditional Monitoring
For years, transaction monitoring relied on static rules and thresholds — for example, flagging transactions over AUD 10,000 or rapid transfers to high-risk countries. While these methods catch known risks, they fail against sophisticated or adaptive schemes.
Limitations include:
- Static logic: Can’t detect new or subtle behaviours.
- Manual reviews: Investigators waste time on low-risk alerts.
- No learning loop: Systems don’t improve automatically over time.
- Fragmented data: Disconnected systems hinder visibility across channels.
In today’s fast-moving financial environment, static systems have become reactive rather than preventive.
How AI Transforms Transaction Monitoring
AI reshapes monitoring from a reactive process into a proactive intelligence system that continuously learns from data.
1. Machine Learning for Pattern Recognition
AI models analyse historical and real-time data to detect patterns that indicate suspicious activity — such as unusual fund flows, velocity changes, or repeated interactions with high-risk entities.
2. Behavioural Analytics
AI builds detailed customer profiles and detects deviations from normal behaviour, flagging potential risks that traditional systems miss.
3. Adaptive Thresholding
Instead of fixed thresholds, AI dynamically adjusts alert sensitivity based on risk context, reducing false positives.
4. Entity Resolution
AI connects fragmented data to identify relationships between customers, accounts, and devices — crucial for uncovering complex laundering networks.
5. Natural Language Processing (NLP)
AI interprets transaction narratives, case notes, and free-text fields, identifying hidden clues like invoice mismatches or unusual descriptions.
6. Continuous Learning
Every investigation outcome feeds back into the model, improving detection accuracy over time.
Agentic AI: The Next Frontier in Compliance
Agentic AI goes beyond traditional AI by combining autonomy, reasoning, and collaboration. Instead of just executing pre-trained models, Agentic AI acts as an intelligent assistant that can:
- Analyse transactions and contextual data.
- Generate risk summaries in natural language.
- Recommend actions based on regulatory frameworks.
- Learn from investigator feedback to improve continuously.
In compliance, this means faster decisions, fewer manual errors, and higher operational efficiency.

How Agentic AI Works in Transaction Monitoring
1. Data Ingestion and Contextual Understanding
Agentic AI continuously consumes structured (transactions, KYC) and unstructured (case notes, communications) data to form a full risk picture.
2. Dynamic Risk Scoring
It assigns real-time risk scores to each transaction, considering behavioural patterns, customer history, and contextual anomalies.
3. Intelligent Narration
When a transaction is flagged, Agentic AI can summarise the alert — describing what happened, why it matters, and what actions are recommended — in clear, regulator-friendly language.
4. Self-Learning Capabilities
Each closed case improves its reasoning. Over time, the system develops institutional knowledge, adapting to new typologies without reprogramming.
5. Investigator Collaboration
Acting as a compliance copilot, Agentic AI assists investigators in triaging alerts, finding linked accounts, and preparing Suspicious Matter Reports (SMRs).
Benefits of AI and Agentic AI for Australian Banks
- Significant False Positive Reduction: AI models prioritise relevant alerts, cutting investigation workload by up to 90 percent.
- Improved Accuracy: Continuous learning enhances detection of new typologies.
- Faster Investigations: Agentic AI copilots summarise and contextualise alerts in seconds.
- Regulatory Confidence: Explainable AI ensures transparency and auditability for AUSTRAC.
- Enhanced Customer Trust: Real-time, intelligent monitoring prevents fraud without disrupting legitimate transactions.
- Operational Efficiency: Reduced manual workload lowers compliance costs.
AUSTRAC’s View on AI in Compliance
AUSTRAC has encouraged innovation in RegTech and SupTech solutions that enhance financial integrity. Under the AML/CTF Act, AI-powered systems are acceptable if they:
- Maintain auditability and explainability.
- Apply risk-based controls.
- Support timely and accurate reporting.
- Are regularly validated and reviewed for bias and accuracy.
AUSTRAC’s collaboration with technology providers reflects a growing recognition that AI is essential to managing modern financial crime risks.
Case Example: Regional Australia Bank
Regional Australia Bank, a community-owned institution, has embraced AI-driven compliance to enhance its transaction monitoring capabilities. By leveraging intelligent analytics, the bank has reduced investigation time, improved accuracy, and strengthened its reporting processes — all while maintaining customer trust and transparency.
Its experience demonstrates that AI adoption is not limited to large institutions; even mid-sized banks can lead in compliance innovation.
Spotlight: Tookitaki’s FinCense and Agentic AI
FinCense, Tookitaki’s flagship compliance platform, integrates Agentic AI to redefine transaction monitoring for Australian banks.
- Real-Time Monitoring: Analyses millions of transactions across NPP, PayTo, and international payments instantly.
- Agentic AI Copilot (FinMate): Assists investigators by narrating alerts, identifying linked parties, and generating regulatory summaries.
- Federated Intelligence: Utilises anonymised typologies contributed by the AFC Ecosystem to detect new risks collaboratively.
- Explainable AI: Ensures every model decision is transparent, auditable, and regulator-ready.
- End-to-End Case Management: Combines fraud, AML, and sanctions monitoring into a unified workflow.
- AUSTRAC Alignment: Automates SMRs, TTRs, and IFTIs with full compliance assurance.
With Agentic AI at its core, FinCense transforms transaction monitoring from a static process into an intelligent, adaptive system that anticipates risk before it happens.
Implementing AI-Driven Monitoring: Best Practices
- Start with Clean Data: High-quality data ensures reliable model performance.
- Adopt Explainable Models: Regulators prioritise transparency in AI decision-making.
- Integrate AML and Fraud Operations: Unified systems enhance efficiency.
- Invest in Investigator Training: Equip teams to work alongside AI tools effectively.
- Validate Models Regularly: Continuous testing maintains fairness and accuracy.
- Collaborate through Federated Intelligence: Shared insights strengthen detection across institutions.
Future of Transaction Monitoring in Australia
- Predictive Compliance: Systems will forecast risks and block suspicious transactions before they occur.
- Hyper-Personalised Risk Scoring: AI will assess risk at the individual customer level in real time.
- Industry-Wide Collaboration: Federated learning will connect banks for collective intelligence.
- Agentic AI Investigators: Autonomous copilots will handle tier-one alerts end to end.
- RegTech-Regulator Integration: AUSTRAC will increasingly rely on direct system data feeds for oversight.
Conclusion
The future of transaction monitoring in Australia lies in intelligence, not volume.
AI enables banks to uncover complex, hidden risks that traditional systems miss, while Agentic AI brings a new level of automation, reasoning, and transparency to compliance operations.
Regional Australia Bank shows that innovation is achievable at any scale. With Tookitaki’s FinCense and its built-in Agentic AI, Australian banks can move beyond reactive monitoring to real-time, proactive financial crime prevention — strengthening both compliance and customer trust.
Pro tip: The smartest transaction monitoring systems don’t just detect suspicious activity; they understand it, explain it, and learn from it.

Inside the Tech Battle Against Money Laundering: What’s Powering Singapore’s Defence
Money laundering is evolving. So is the technology built to stop it.
In Singapore, a financial hub with deep global links, criminals are using more advanced techniques to disguise illicit funds. From cross-border shell firms to digital platform abuse and real-time payment layering, the tactics are getting smarter. That’s why financial institutions are turning to next-generation money laundering technology — solutions that use AI, behavioural analytics, and collaborative intelligence to detect and disrupt suspicious activity before it causes damage.
This blog explores the key technologies powering AML efforts in Singapore, the gaps that still exist, and how institutions are building faster, smarter defences against financial crime.

What Is Money Laundering Technology?
Money laundering technology refers to systems and tools designed to detect, investigate, and report suspicious financial activities that may involve the movement of illicit funds. These technologies go beyond basic rules engines or static filters. They are intelligent, adaptive, and often integrated with broader compliance ecosystems.
A typical tech stack may include:
- Real-time transaction monitoring platforms
- Customer due diligence and risk scoring engines
- AI-powered anomaly detection
- Sanctions and PEP screening tools
- Suspicious transaction reporting (STR) modules
- Investigation workflows and audit trails
- Federated learning and typology sharing systems
Why Singapore Needs Advanced Money Laundering Technology
Singapore’s position as a regional financial centre attracts legitimate business and bad actors alike. In response, the Monetary Authority of Singapore (MAS) has built one of the most stringent AML regimes in the region. But regulations alone are not enough.
Current challenges include:
- High-speed transactions via PayNow and FAST with little room for intervention
- Cross-border trade misinvoicing and shell firm layering
- Recruitment of money mules through scam job ads and phishing sites
- Laundering of fraud proceeds through remittance and fintech apps
- Growing sophistication in synthetic identities and deepfake impersonations
To address these, institutions need tech that is not only MAS-compliant but agile, explainable, and intelligence-driven.
The Technology Stack That Drives Modern AML Programs
Here are the core components of money laundering technology as used by leading institutions in Singapore.
1. Real-Time Transaction Monitoring Systems
These systems monitor financial activity across banking channels and flag suspicious behaviour as it happens. They detect:
- Unusual transaction volumes
- Sudden changes in customer behaviour
- Transactions involving high-risk jurisdictions
- Structuring or smurfing patterns
Advanced platforms use streaming data and in-memory analytics to process large volumes instantly.
2. Behavioural Analytics Engines
Instead of relying solely on thresholds, behavioural analytics builds a baseline for each customer’s typical activity. Alerts are raised when transactions deviate from established norms.
This is crucial for:
- Spotting insider fraud
- Detecting ATO (account takeover) attempts
- Identifying use of dormant or inactive accounts for money movement
3. AI and Machine Learning Models
AI transforms detection by finding patterns too complex for humans or rules to catch. It adapts over time to recognise new laundering behaviours.
Use cases include:
- Clustering similar fraud cases to spot mule networks
- Predicting escalation likelihood of flagged alerts
- Prioritising alerts based on risk and urgency
- Generating contextual narratives for STRs
4. Typology-Based Scenario Detection
A strong AML system includes real-world typologies. These are predefined scenarios that mirror how money laundering actually happens in the wild.
Examples relevant to Singapore:
- Layering through multiple fintech wallets
- Use of nominee directors and shell companies in trade deals
- Fraudulent remittance transactions disguised as payroll or aid
- Utility payment platforms used for pass-through layering
These models help institutions move from rule-based detection to scenario-based insight.
5. Investigation Platforms with Smart Disposition Tools
Once an alert is triggered, investigators need tools to:
- View full customer profiles and transaction history
- Access relevant typology data
- Log decisions and attach supporting documents
- Generate STRs quickly and consistently
Smart disposition engines recommend next steps and help analysts close cases faster.
6. Sanctions and Watchlist Screening
Technology must screen customers and transactions against global and local watchlists:
- UN, OFAC, EU, and MAS sanctions
- PEP lists and high-risk individuals
- Adverse media databases
Advanced platforms support fuzzy matching, multilingual aliases, and real-time updates to reduce risk and manual effort.
7. GoAML-Compatible STR Filing Modules
In Singapore, all suspicious transaction reports must be filed through the GoAML system. The right technology will:
- Populate STRs with investigation data
- Include attached evidence
- Support internal approval workflows
- Ensure audit-ready submission logs
This reduces submission time and improves reporting quality.
8. Federated Learning and Community Intelligence
Leading platforms now allow financial institutions to share risk scenarios and typologies without exposing customer data. This collaborative approach improves detection and keeps systems updated against evolving regional risks.
Tookitaki’s AFC Ecosystem is one such example — connecting banks across Asia to share anonymised typologies, red flags, and fraud patterns.
What’s Still Missing in Most Money Laundering Tech Setups
Despite having systems in place, many organisations still struggle with:
❌ Alert Fatigue
Too many false positives clog up resources and delay action on real risks.
❌ Fragmented Systems
AML tools that don’t integrate well create data silos and limit insight.
❌ Inflexible Rules
Static thresholds can’t keep up with fast-changing laundering techniques.
❌ Manual STR Workflows
Investigators still spend hours manually compiling reports.
❌ Weak Localisation
Some systems lack support for typologies and threats specific to Southeast Asia.
These gaps increase operational costs, frustrate teams, and put institutions at risk during audits or inspections.

How Tookitaki’s FinCense Leads the Way in Money Laundering Technology
FinCense by Tookitaki is a next-generation AML platform designed specifically for the Asia-Pacific region. It combines AI, community intelligence, and explainable automation into one modular platform.
Here’s what makes it stand out in Singapore:
1. Agentic AI Framework
FinCense uses specialised AI agents for each part of the AML lifecycle — detection, investigation, reporting, and more. Each module is lightweight, scalable, and independently optimised.
2. Scenario-Based Detection with AFC Ecosystem Integration
FinCense detects using expert-curated typologies contributed by the AFC community. These include:
- Shell firm layering
- QR code-enabled laundering
- Investment scam fund flows
- Deepfake-enabled CEO fraud
This keeps detection models locally relevant and constantly refreshed.
3. FinMate: AI Copilot for Investigations
FinMate helps analysts by:
- Surfacing key transactions
- Linking related alerts
- Suggesting likely typologies
- Auto-generating STR summaries
This dramatically reduces investigation time and improves STR quality.
4. Simulation and Threshold Tuning
Before deploying a new detection rule or scenario, FinCense lets compliance teams simulate impact, test alert volumes, and adjust sensitivity for better control.
5. MAS-Ready Compliance and Audit Logs
Every alert, investigation step, and STR submission is fully logged and traceable — helping banks stay prepared for MAS audits and risk assessments.
Case Results: What Singapore Institutions Are Achieving with FinCense
Financial institutions using FinCense report:
- 60 to 70 percent reduction in false positives
- 3x faster average investigation closure time
- Stronger alignment with MAS expectations
- Higher STR accuracy and submission rates
- Improved team morale and reduced compliance fatigue
By combining smart detection with smarter investigation, FinCense improves every part of the AML workflow.
Checklist: Is Your AML Technology Where It Needs to Be?
Ask your team:
- Can your system detect typologies unique to Southeast Asia?
- How many alerts are false positives?
- Can you trace every step of an investigation for audit?
- How long does it take to file an STR?
- Are your detection thresholds adaptive or fixed?
- Is your technology continuously learning and improving?
If your answers raise concerns, it may be time to evaluate a more advanced solution.
Conclusion: Technology Is Now the Strongest Line of Defence
The fight against money laundering has reached a tipping point. Old systems and slow processes can no longer keep up with the scale and speed of financial crime.
In Singapore, where regulatory standards are high and criminal tactics are sophisticated, the need for intelligent, integrated, and locally relevant technology is greater than ever.
Tookitaki’s FinCense shows what money laundering technology should look like in 2025 — agile, explainable, scenario-driven, and backed by community intelligence.
The future of AML is not just about compliance. It’s about building trust, protecting reputation, and staying one step ahead of those who exploit the financial system.

Smarter, Faster, Fairer: How Agentic AI is Powering the Next Generation of AML Investigation Software in the Philippines
In the Philippines, compliance teams are trading routine for intelligence — and Agentic AI is leading the charge.
The financial crime landscape in the Philippines has grown more complex than ever. From money mule networks and investment scams to online fraud syndicates, criminals are exploiting digital channels at unprecedented speed. Traditional compliance systems — reliant on static rules and manual reviews — are struggling to keep up.
This is where AML investigation software steps in. Powered by Agentic AI, these solutions are transforming how banks and fintechs detect, analyse, and respond to suspicious activity. In a region where regulatory scrutiny is tightening and financial innovation is accelerating, the Philippines stands at the front line of this transformation.

The Growing Burden on Compliance Teams
Financial institutions across the Philippines face increasing pressure to balance growth with risk management. The Anti-Money Laundering Council (AMLC) and the Bangko Sentral ng Pilipinas (BSP) have rolled out new regulations that demand stronger customer due diligence, more granular monitoring, and faster suspicious transaction reporting.
At the same time, the ecosystem has become more complex:
- Digital payment growth has created new entry points for fraud.
- Investment scams and online lending abuse continue to rise.
- Cross-border flows have made tracing illicit money trails harder.
These developments have turned compliance operations into a high-stakes race against time. Analysts often sift through thousands of alerts daily, many of which turn out to be false positives. What used to be an investigation problem is now an efficiency and accuracy problem — and the solution lies in intelligence, not just automation.
What AML Investigation Software Really Does
Modern AML investigation software isn’t just a case management tool. It’s a system designed to connect the dots across fragmented data, spot suspicious relationships, and guide investigators toward the right conclusions — faster.
Key Functions:
- Alert triage: Prioritising alerts based on risk, behaviour, and contextual intelligence.
- Entity resolution: Linking related accounts and transactions to reveal hidden networks.
- Case investigation: Collating customer data, transaction histories, and red flags into a single view.
- Workflow automation: Streamlining escalation, documentation, and reporting for regulatory compliance.
But the real leap forward comes with Agentic AI — a new generation of artificial intelligence that doesn’t just analyse data, but actively assists investigators in reasoning, decision-making, and collaboration.
Agentic AI: The New Brain Behind AML Investigations
Traditional AI systems rely on predefined rules and pattern matching. Agentic AI, on the other hand, is dynamic, goal-driven, and context-aware. It can reason through complex cases, adapt to new risks, and even communicate with investigators using natural language.
In AML investigations, this means:
- Adaptive Learning: The system refines its understanding with every case it processes.
- Natural Language Queries: Investigators can ask the system questions — “Show me all linked accounts with unusual foreign remittances” — and get instant, contextual insights.
- Proactive Suggestions: Instead of waiting for input, the AI can surface leads or inconsistencies based on evolving risk patterns.
For Philippine banks facing talent shortages and rising compliance workloads, this is a game changer. Agentic AI augments human intelligence — it doesn’t replace it — by taking on the repetitive tasks and surfacing what truly matters.
How Philippine Banks Are Embracing Intelligent Investigations
The Philippines’ financial sector is undergoing rapid digital transformation. With over 30% of adults now transacting through e-wallets, and a growing cross-border payments ecosystem, compliance complexity is only deepening.
Forward-looking banks and fintechs have begun integrating AML investigation software with Agentic AI capabilities to strengthen investigative accuracy and reduce turnaround times.
Adoption Drivers:
- Regulatory alignment: AMLC’s focus on data-driven risk management is pushing institutions toward AI-enabled investigation workflows.
- Operational efficiency: Reducing false positives and manual intervention helps cut compliance costs.
- Fraud convergence: As fraud and AML risks increasingly overlap, unified intelligence is now essential.
Tookitaki has been at the forefront of this change — helping financial institutions in the Philippines and across ASEAN shift from rule-based monitoring to adaptive, intelligence-led investigation.
Key Features to Look for in AML Investigation Software
Choosing the right AML investigation software goes beyond automation. Financial institutions should look for capabilities that blend accuracy, explainability, and collaboration.
1. Agentic AI Copilot
A key differentiator is whether the software includes an AI copilot — an embedded assistant that interacts with investigators in real time. Tookitaki’s FinMate, for example, is a local LLM-powered Agentic AI copilot designed specifically for AML and fraud teams. It helps analysts interpret cases, summarise findings, and suggest next steps — all while maintaining full auditability.
2. Collaborative Intelligence
The most advanced platforms integrate collective intelligence from communities like the AFC Ecosystem, giving investigators access to thousands of real-world scenarios and typologies. This empowers teams to recognise emerging risks — from mule networks to crypto layering — before they spread.
3. Federated Learning for Data Privacy
In jurisdictions like the Philippines, where data privacy regulations are strict, federated learning enables model training without centralising sensitive data. Each institution contributes insights without sharing raw data — strengthening collective defence while maintaining compliance.
4. Explainability and Trust
Every AI-generated recommendation should be explainable. Systems like Tookitaki’s FinCense prioritise transparent AI, ensuring investigators can trace every output to its underlying data, model, and reasoning logic — critical for audit and regulator confidence.
5. Seamless Integration
Integration with transaction monitoring, name screening, and case management systems allows investigators to move from detection to disposition without losing context — an essential requirement for fast-moving compliance teams.

The Tookitaki Approach: Building the Trust Layer for Financial Crime Prevention
Tookitaki’s end-to-end compliance platform, FinCense, is designed to be the Trust Layer for financial institutions — combining collaborative intelligence, federated learning, and Agentic AI to make financial crime prevention smarter and more reliable.
Within FinCense, the FinMate AI Copilot acts as an investigation partner.
- It summarises alert histories and previous investigations.
- Provides contextual recommendations on next steps.
- Offers case narratives ready for internal and regulatory reporting.
- Learns from investigator feedback to continuously improve accuracy.
This human–AI collaboration is transforming investigation workflows. Philippine banks that once spent hours on case analysis now complete reviews in minutes, with greater precision and consistency.
Beyond efficiency, FinCense and FinMate align directly with the AMLC’s push toward explainable, risk-based approaches — helping compliance officers maintain trust with regulators, customers, and internal stakeholders.
Case Example: A Philippine Bank’s Digital Leap
A mid-sized bank in the Philippines, struggling with high alert volumes and limited investigation bandwidth, implemented Tookitaki’s AML investigation software as part of its broader FinCense deployment.
Within three months:
- False positives dropped by over 80%.
- Investigation time per case reduced by half.
- Analyst productivity improved by 60%.
What made the difference was FinMate’s Agentic AI capability. The system didn’t just flag suspicious behaviour — it contextualised each alert, grouped related cases, and generated draft narratives for investigator review. The outcome was faster resolution, better accuracy, and renewed confidence in the compliance function.
The Future of AML Investigations in the Philippines
The next phase of compliance transformation in the Philippines will be shaped by Agentic AI and collaborative ecosystems. Here’s what lies ahead:
1. Human-AI Co-investigation
Investigators will work alongside AI copilots that understand intent, interpret complex relationships, and recommend actions in natural language.
2. Continuous Learning from the Ecosystem
Through federated networks like the AFC Ecosystem, models will learn from typologies shared across borders, enabling local institutions to anticipate new threats.
3. Regulatory Collaboration
As regulators like the AMLC adopt more advanced supervisory tools, banks will need AI systems that can demonstrate traceability, explainability, and governance — all of which Agentic AI can deliver.
The result will be a compliance environment that’s not just reactive but predictive, where financial institutions detect risk before it manifests and collaborate to protect the integrity of the system.
Conclusion: Intelligence, Trust, and the Next Chapter of Compliance
The evolution of AML investigation software marks a turning point for financial institutions in the Philippines. What began as a push for automation is now a movement toward intelligence — led by Agentic AI, grounded in collaboration, and governed by trust.
As Tookitaki’s FinCense and FinMate demonstrate, the path forward isn’t about replacing human judgment but amplifying it with smarter, context-aware systems. The future of AML investigations will belong to those who can combine human insight with machine precision, building a compliance function that’s not only faster but fairer — and trusted by all.

The Role of AI in Transaction Monitoring for Australian Banks
As financial crime grows more complex, Australian banks are turning to AI and now Agentic AI to revolutionise how transactions are monitored and risks detected.
Introduction
Australia’s financial landscape is evolving fast. The growth of real-time payments, digital banking, and cross-border transactions has made detecting financial crime more challenging than ever. Traditional rule-based transaction monitoring systems, designed for slower and simpler payment environments, are no longer enough.
In response, Australian banks are increasingly adopting artificial intelligence (AI) to enhance the accuracy, speed, and adaptability of their AML programs. But the latest evolution, Agentic AI, is taking compliance to an entirely new level.
This blog explores how AI, and particularly Agentic AI, is transforming transaction monitoring across Australia’s banking sector, enabling faster detection, smarter investigations, and stronger regulatory alignment with AUSTRAC.

Why Transaction Monitoring Needs a New Approach
1. The Rise of Real-Time Payments
With the New Payments Platform (NPP) and PayTo, transactions clear in seconds. Fraudsters and launderers exploit this speed to move funds through multiple mule accounts before banks can react.
2. Sophisticated Criminal Tactics
Financial crime is no longer limited to simple structuring. Criminals use synthetic identities, cross-border layering, and digital assets to evade detection.
3. High False Positives
Rule-based systems trigger thousands of unnecessary alerts, overwhelming compliance teams and increasing costs.
4. AUSTRAC’s Evolving Standards
AUSTRAC expects continuous monitoring, explainability, and proactive detection. Banks must show they can identify suspicious activity before it spreads across the financial system.
5. Customer Experience Pressures
Delays or false flags impact legitimate customers. AI enables banks to balance security and service quality.
The Limitations of Traditional Monitoring
For years, transaction monitoring relied on static rules and thresholds — for example, flagging transactions over AUD 10,000 or rapid transfers to high-risk countries. While these methods catch known risks, they fail against sophisticated or adaptive schemes.
Limitations include:
- Static logic: Can’t detect new or subtle behaviours.
- Manual reviews: Investigators waste time on low-risk alerts.
- No learning loop: Systems don’t improve automatically over time.
- Fragmented data: Disconnected systems hinder visibility across channels.
In today’s fast-moving financial environment, static systems have become reactive rather than preventive.
How AI Transforms Transaction Monitoring
AI reshapes monitoring from a reactive process into a proactive intelligence system that continuously learns from data.
1. Machine Learning for Pattern Recognition
AI models analyse historical and real-time data to detect patterns that indicate suspicious activity — such as unusual fund flows, velocity changes, or repeated interactions with high-risk entities.
2. Behavioural Analytics
AI builds detailed customer profiles and detects deviations from normal behaviour, flagging potential risks that traditional systems miss.
3. Adaptive Thresholding
Instead of fixed thresholds, AI dynamically adjusts alert sensitivity based on risk context, reducing false positives.
4. Entity Resolution
AI connects fragmented data to identify relationships between customers, accounts, and devices — crucial for uncovering complex laundering networks.
5. Natural Language Processing (NLP)
AI interprets transaction narratives, case notes, and free-text fields, identifying hidden clues like invoice mismatches or unusual descriptions.
6. Continuous Learning
Every investigation outcome feeds back into the model, improving detection accuracy over time.
Agentic AI: The Next Frontier in Compliance
Agentic AI goes beyond traditional AI by combining autonomy, reasoning, and collaboration. Instead of just executing pre-trained models, Agentic AI acts as an intelligent assistant that can:
- Analyse transactions and contextual data.
- Generate risk summaries in natural language.
- Recommend actions based on regulatory frameworks.
- Learn from investigator feedback to improve continuously.
In compliance, this means faster decisions, fewer manual errors, and higher operational efficiency.

How Agentic AI Works in Transaction Monitoring
1. Data Ingestion and Contextual Understanding
Agentic AI continuously consumes structured (transactions, KYC) and unstructured (case notes, communications) data to form a full risk picture.
2. Dynamic Risk Scoring
It assigns real-time risk scores to each transaction, considering behavioural patterns, customer history, and contextual anomalies.
3. Intelligent Narration
When a transaction is flagged, Agentic AI can summarise the alert — describing what happened, why it matters, and what actions are recommended — in clear, regulator-friendly language.
4. Self-Learning Capabilities
Each closed case improves its reasoning. Over time, the system develops institutional knowledge, adapting to new typologies without reprogramming.
5. Investigator Collaboration
Acting as a compliance copilot, Agentic AI assists investigators in triaging alerts, finding linked accounts, and preparing Suspicious Matter Reports (SMRs).
Benefits of AI and Agentic AI for Australian Banks
- Significant False Positive Reduction: AI models prioritise relevant alerts, cutting investigation workload by up to 90 percent.
- Improved Accuracy: Continuous learning enhances detection of new typologies.
- Faster Investigations: Agentic AI copilots summarise and contextualise alerts in seconds.
- Regulatory Confidence: Explainable AI ensures transparency and auditability for AUSTRAC.
- Enhanced Customer Trust: Real-time, intelligent monitoring prevents fraud without disrupting legitimate transactions.
- Operational Efficiency: Reduced manual workload lowers compliance costs.
AUSTRAC’s View on AI in Compliance
AUSTRAC has encouraged innovation in RegTech and SupTech solutions that enhance financial integrity. Under the AML/CTF Act, AI-powered systems are acceptable if they:
- Maintain auditability and explainability.
- Apply risk-based controls.
- Support timely and accurate reporting.
- Are regularly validated and reviewed for bias and accuracy.
AUSTRAC’s collaboration with technology providers reflects a growing recognition that AI is essential to managing modern financial crime risks.
Case Example: Regional Australia Bank
Regional Australia Bank, a community-owned institution, has embraced AI-driven compliance to enhance its transaction monitoring capabilities. By leveraging intelligent analytics, the bank has reduced investigation time, improved accuracy, and strengthened its reporting processes — all while maintaining customer trust and transparency.
Its experience demonstrates that AI adoption is not limited to large institutions; even mid-sized banks can lead in compliance innovation.
Spotlight: Tookitaki’s FinCense and Agentic AI
FinCense, Tookitaki’s flagship compliance platform, integrates Agentic AI to redefine transaction monitoring for Australian banks.
- Real-Time Monitoring: Analyses millions of transactions across NPP, PayTo, and international payments instantly.
- Agentic AI Copilot (FinMate): Assists investigators by narrating alerts, identifying linked parties, and generating regulatory summaries.
- Federated Intelligence: Utilises anonymised typologies contributed by the AFC Ecosystem to detect new risks collaboratively.
- Explainable AI: Ensures every model decision is transparent, auditable, and regulator-ready.
- End-to-End Case Management: Combines fraud, AML, and sanctions monitoring into a unified workflow.
- AUSTRAC Alignment: Automates SMRs, TTRs, and IFTIs with full compliance assurance.
With Agentic AI at its core, FinCense transforms transaction monitoring from a static process into an intelligent, adaptive system that anticipates risk before it happens.
Implementing AI-Driven Monitoring: Best Practices
- Start with Clean Data: High-quality data ensures reliable model performance.
- Adopt Explainable Models: Regulators prioritise transparency in AI decision-making.
- Integrate AML and Fraud Operations: Unified systems enhance efficiency.
- Invest in Investigator Training: Equip teams to work alongside AI tools effectively.
- Validate Models Regularly: Continuous testing maintains fairness and accuracy.
- Collaborate through Federated Intelligence: Shared insights strengthen detection across institutions.
Future of Transaction Monitoring in Australia
- Predictive Compliance: Systems will forecast risks and block suspicious transactions before they occur.
- Hyper-Personalised Risk Scoring: AI will assess risk at the individual customer level in real time.
- Industry-Wide Collaboration: Federated learning will connect banks for collective intelligence.
- Agentic AI Investigators: Autonomous copilots will handle tier-one alerts end to end.
- RegTech-Regulator Integration: AUSTRAC will increasingly rely on direct system data feeds for oversight.
Conclusion
The future of transaction monitoring in Australia lies in intelligence, not volume.
AI enables banks to uncover complex, hidden risks that traditional systems miss, while Agentic AI brings a new level of automation, reasoning, and transparency to compliance operations.
Regional Australia Bank shows that innovation is achievable at any scale. With Tookitaki’s FinCense and its built-in Agentic AI, Australian banks can move beyond reactive monitoring to real-time, proactive financial crime prevention — strengthening both compliance and customer trust.
Pro tip: The smartest transaction monitoring systems don’t just detect suspicious activity; they understand it, explain it, and learn from it.

Inside the Tech Battle Against Money Laundering: What’s Powering Singapore’s Defence
Money laundering is evolving. So is the technology built to stop it.
In Singapore, a financial hub with deep global links, criminals are using more advanced techniques to disguise illicit funds. From cross-border shell firms to digital platform abuse and real-time payment layering, the tactics are getting smarter. That’s why financial institutions are turning to next-generation money laundering technology — solutions that use AI, behavioural analytics, and collaborative intelligence to detect and disrupt suspicious activity before it causes damage.
This blog explores the key technologies powering AML efforts in Singapore, the gaps that still exist, and how institutions are building faster, smarter defences against financial crime.

What Is Money Laundering Technology?
Money laundering technology refers to systems and tools designed to detect, investigate, and report suspicious financial activities that may involve the movement of illicit funds. These technologies go beyond basic rules engines or static filters. They are intelligent, adaptive, and often integrated with broader compliance ecosystems.
A typical tech stack may include:
- Real-time transaction monitoring platforms
- Customer due diligence and risk scoring engines
- AI-powered anomaly detection
- Sanctions and PEP screening tools
- Suspicious transaction reporting (STR) modules
- Investigation workflows and audit trails
- Federated learning and typology sharing systems
Why Singapore Needs Advanced Money Laundering Technology
Singapore’s position as a regional financial centre attracts legitimate business and bad actors alike. In response, the Monetary Authority of Singapore (MAS) has built one of the most stringent AML regimes in the region. But regulations alone are not enough.
Current challenges include:
- High-speed transactions via PayNow and FAST with little room for intervention
- Cross-border trade misinvoicing and shell firm layering
- Recruitment of money mules through scam job ads and phishing sites
- Laundering of fraud proceeds through remittance and fintech apps
- Growing sophistication in synthetic identities and deepfake impersonations
To address these, institutions need tech that is not only MAS-compliant but agile, explainable, and intelligence-driven.
The Technology Stack That Drives Modern AML Programs
Here are the core components of money laundering technology as used by leading institutions in Singapore.
1. Real-Time Transaction Monitoring Systems
These systems monitor financial activity across banking channels and flag suspicious behaviour as it happens. They detect:
- Unusual transaction volumes
- Sudden changes in customer behaviour
- Transactions involving high-risk jurisdictions
- Structuring or smurfing patterns
Advanced platforms use streaming data and in-memory analytics to process large volumes instantly.
2. Behavioural Analytics Engines
Instead of relying solely on thresholds, behavioural analytics builds a baseline for each customer’s typical activity. Alerts are raised when transactions deviate from established norms.
This is crucial for:
- Spotting insider fraud
- Detecting ATO (account takeover) attempts
- Identifying use of dormant or inactive accounts for money movement
3. AI and Machine Learning Models
AI transforms detection by finding patterns too complex for humans or rules to catch. It adapts over time to recognise new laundering behaviours.
Use cases include:
- Clustering similar fraud cases to spot mule networks
- Predicting escalation likelihood of flagged alerts
- Prioritising alerts based on risk and urgency
- Generating contextual narratives for STRs
4. Typology-Based Scenario Detection
A strong AML system includes real-world typologies. These are predefined scenarios that mirror how money laundering actually happens in the wild.
Examples relevant to Singapore:
- Layering through multiple fintech wallets
- Use of nominee directors and shell companies in trade deals
- Fraudulent remittance transactions disguised as payroll or aid
- Utility payment platforms used for pass-through layering
These models help institutions move from rule-based detection to scenario-based insight.
5. Investigation Platforms with Smart Disposition Tools
Once an alert is triggered, investigators need tools to:
- View full customer profiles and transaction history
- Access relevant typology data
- Log decisions and attach supporting documents
- Generate STRs quickly and consistently
Smart disposition engines recommend next steps and help analysts close cases faster.
6. Sanctions and Watchlist Screening
Technology must screen customers and transactions against global and local watchlists:
- UN, OFAC, EU, and MAS sanctions
- PEP lists and high-risk individuals
- Adverse media databases
Advanced platforms support fuzzy matching, multilingual aliases, and real-time updates to reduce risk and manual effort.
7. GoAML-Compatible STR Filing Modules
In Singapore, all suspicious transaction reports must be filed through the GoAML system. The right technology will:
- Populate STRs with investigation data
- Include attached evidence
- Support internal approval workflows
- Ensure audit-ready submission logs
This reduces submission time and improves reporting quality.
8. Federated Learning and Community Intelligence
Leading platforms now allow financial institutions to share risk scenarios and typologies without exposing customer data. This collaborative approach improves detection and keeps systems updated against evolving regional risks.
Tookitaki’s AFC Ecosystem is one such example — connecting banks across Asia to share anonymised typologies, red flags, and fraud patterns.
What’s Still Missing in Most Money Laundering Tech Setups
Despite having systems in place, many organisations still struggle with:
❌ Alert Fatigue
Too many false positives clog up resources and delay action on real risks.
❌ Fragmented Systems
AML tools that don’t integrate well create data silos and limit insight.
❌ Inflexible Rules
Static thresholds can’t keep up with fast-changing laundering techniques.
❌ Manual STR Workflows
Investigators still spend hours manually compiling reports.
❌ Weak Localisation
Some systems lack support for typologies and threats specific to Southeast Asia.
These gaps increase operational costs, frustrate teams, and put institutions at risk during audits or inspections.

How Tookitaki’s FinCense Leads the Way in Money Laundering Technology
FinCense by Tookitaki is a next-generation AML platform designed specifically for the Asia-Pacific region. It combines AI, community intelligence, and explainable automation into one modular platform.
Here’s what makes it stand out in Singapore:
1. Agentic AI Framework
FinCense uses specialised AI agents for each part of the AML lifecycle — detection, investigation, reporting, and more. Each module is lightweight, scalable, and independently optimised.
2. Scenario-Based Detection with AFC Ecosystem Integration
FinCense detects using expert-curated typologies contributed by the AFC community. These include:
- Shell firm layering
- QR code-enabled laundering
- Investment scam fund flows
- Deepfake-enabled CEO fraud
This keeps detection models locally relevant and constantly refreshed.
3. FinMate: AI Copilot for Investigations
FinMate helps analysts by:
- Surfacing key transactions
- Linking related alerts
- Suggesting likely typologies
- Auto-generating STR summaries
This dramatically reduces investigation time and improves STR quality.
4. Simulation and Threshold Tuning
Before deploying a new detection rule or scenario, FinCense lets compliance teams simulate impact, test alert volumes, and adjust sensitivity for better control.
5. MAS-Ready Compliance and Audit Logs
Every alert, investigation step, and STR submission is fully logged and traceable — helping banks stay prepared for MAS audits and risk assessments.
Case Results: What Singapore Institutions Are Achieving with FinCense
Financial institutions using FinCense report:
- 60 to 70 percent reduction in false positives
- 3x faster average investigation closure time
- Stronger alignment with MAS expectations
- Higher STR accuracy and submission rates
- Improved team morale and reduced compliance fatigue
By combining smart detection with smarter investigation, FinCense improves every part of the AML workflow.
Checklist: Is Your AML Technology Where It Needs to Be?
Ask your team:
- Can your system detect typologies unique to Southeast Asia?
- How many alerts are false positives?
- Can you trace every step of an investigation for audit?
- How long does it take to file an STR?
- Are your detection thresholds adaptive or fixed?
- Is your technology continuously learning and improving?
If your answers raise concerns, it may be time to evaluate a more advanced solution.
Conclusion: Technology Is Now the Strongest Line of Defence
The fight against money laundering has reached a tipping point. Old systems and slow processes can no longer keep up with the scale and speed of financial crime.
In Singapore, where regulatory standards are high and criminal tactics are sophisticated, the need for intelligent, integrated, and locally relevant technology is greater than ever.
Tookitaki’s FinCense shows what money laundering technology should look like in 2025 — agile, explainable, scenario-driven, and backed by community intelligence.
The future of AML is not just about compliance. It’s about building trust, protecting reputation, and staying one step ahead of those who exploit the financial system.
