Fraud Detection Analytics for Finance Professionals using PowerBI Training Course

Fraud Detection Analytics for Finance Professionals using PowerBI Training Course

This intensive five-day course is specifically designed for finance professionals seeking to leverage the power of Microsoft Power BI for proactive fraud detection and prevention. Participants will gain specialized knowledge in translating financial data into actionable fraud intelligence, moving beyond traditional auditing methods to implement advanced analytical techniques. The curriculum focuses on identifying specific red flags and anomalies across various financial domains—including accounts payable, expenses, and transactional data—using a robust, visual, and scalable reporting platform.

The training provides a comprehensive, hands-on journey, starting with the crucial steps of effective data sourcing and modeling of complex financial ledgers within Power BI. It progresses to mastering advanced DAX (Data Analysis Expressions) for calculating sophisticated risk indicators and key performance metrics. The course culminates in the design of high-impact, interactive fraud detection dashboards, enabling finance teams, internal auditors, and risk managers to monitor suspicious activities, comply with regulatory requirements, and significantly mitigate financial losses due using modern business intelligence tools.

Who should attend the training

  • Financial Analysts
  • Internal Auditors
  • Risk Managers
  • Compliance Officers
  • Forensic Accountants
  • Accounting Managers
  • Data Analysts in Finance

Objectives of the training

  • Understand the common schemes and data patterns associated with financial fraud
  • Master data sourcing and transformation techniques in Power BI's Power Query Editor for high-quality fraud analysis
  • Develop and implement complex DAX measures to quantify fraud risk and identify anomalies
  • Utilize visual analytics to quickly detect known fraud indicators (e.g., Benford's Law distribution)
  • Build interactive, secure dashboards for continuous monitoring of transactional, vendor, and employee expense data
  • Apply advanced analytical visuals, including basic AI and clustering, to spot emerging fraud trends
  • Establish governance frameworks for secure and compliant fraud reporting

Personal benefits

  • Gain specialized expertise in a highly sought-after area combining finance and data analytics
  • Master Power BI, a critical tool for modern financial and auditing roles
  • Develop the capacity to independently build and manage a fraud detection system
  • Enhance professional credibility by actively contributing to risk mitigation and loss prevention
  • Receive a certification that validates advanced analytical and visualization skills for financial risk

Organizational benefits

  • Proactively reduce financial losses by implementing continuous fraud monitoring
  • Improve the efficiency and scope of internal audit and compliance activities
  • Gain deeper visibility into potential risk areas and control weaknesses
  • Facilitate faster, evidence-based decision-making during fraud investigations
  • Ensure a higher standard of data governance and security in financial reporting

Training methodology

Interactive Lectures and Real-World Case Studies

Hands-on, Step-by-Step Power BI Walkthroughs

Guided Data Modeling and DAX Formula Building

Group Exercises on Anomaly Detection

Design Workshops for Dashboard Creation

Immediate Feedback and Q&A Sessions

Dedicated Capstone Project Time

 

Course Duration: 5 days

Training fee: USD 1500

Trainer Experience

Our trainers are certified financial analysts and business intelligence consultants with extensive backgrounds in forensic accounting and risk management technology. They possess over 10 years of experience in developing and deploying large-scale fraud detection systems using Power BI and other analytics tools across multiple industries. Their expertise ensures the instruction is grounded in real-world financial realities, bridging the gap between theoretical fraud concepts and practical data implementation.

Quality Statement

We are dedicated to providing the highest quality, most relevant training available in the field of fraud detection analytics. Our course materials are meticulously developed and continuously updated to reflect the latest fraud schemes, regulatory changes, and Power BI features. We guarantee a technically challenging and supportive environment focused on practical skill acquisition, enabling immediate application of learned techniques in your professional role.

Tailor-made courses

We understand that fraud risks vary significantly by industry (e.g., banking vs. retail vs. healthcare). We can fully customize this course to address your organization's specific data structures, regulatory environment, and known high-risk fraud types (e.g., credit card fraud, insurance claims fraud). Contact us to design a bespoke training program tailored to your team's unique fraud detection needs.

Module 1: Foundations of Fraud Risk and Power BI Setup

  • Understanding the Fraud Triangle and common financial schemes
  • Overview of the Power BI architecture (Desktop, Service, Gateway)
  • Connecting to financial data sources (SQL, Excel, ERP exports)
  • Initial data profiling and identification of high-risk fields
  • Power Query Editor introduction: The M language for basic financial cleansing
  • Practical session: Importing and profiling general ledger data from multiple sources, and merging tables based on transaction IDs using Power Query.

Module 2: Data Modeling and ETL for Fraud Scenarios

  • Designing Star Schemas for transactional data (Facts and Dimensions)
  • Creating a robust calendar dimension for time-based analysis
  • Handling non-standard financial hierarchies (Chart of Accounts, Cost Centers)
  • Applying advanced transformations: Data pivoting, conditional columns, and fuzzy matching
  • Establishing key relationships and filtering context within the Data Model view
  • Practical session: Building a normalized data model for Accounts Payable data, linking vendor details, invoices, and payment records.

Module 3: Core DAX for Financial Risk and Anomaly Metrics

  • Introduction to DAX syntax, calculated columns, and explicit measures
  • Understanding Filter Context and Row Context (the CALCULATE function)
  • Time Intelligence DAX for comparative analysis (Year-over-Year, Rolling Averages)
  • Creating variance measures and deviation scores for financial amounts
  • Implementing DAX logic to flag transactions based on multiple risk criteria
  • Practical session: Writing DAX measures to calculate the Z-score for transaction amounts and flagging any value falling outside two standard deviations.

Module 4: Visualization of Fraud Patterns and Red Flags

  • Principles of visual analytics for anomaly detection (pre-attentive processing)
  • Using scatter charts and line graphs to identify outliers in payment frequency or size
  • Implementing Geographical maps to spot spatial anomalies in claims or vendor locations
  • Utilizing histogram and box-and-whisker plots for distribution analysis of key metrics
  • Conditional formatting and visual alerts to highlight high-risk transactions
  • Practical session: Creating a scatter chart showing payments vs. time elapsed since invoice, applying conditional formatting to transactions near the weekend or on public holidays.

Module 5: Analytical Techniques for Transactional Fraud Detection

  • Application of Benford’s Law analysis to detect digital manipulation of amounts
  • Identifying duplicate payments and related party transactions using DAX
  • Analyzing split transactions to circumvent authority limits or internal controls
  • Developing measures to track round-sum transactions and sequential invoice numbering gaps
  • Utilizing parameters and slicers for granular isolation of suspicious activity
  • Practical session: Implementing a DAX calculation to check the first digit frequency of an expense column and visualize its deviation from the Benford’s Law expected distribution.

Module 6: Vendor, Procurement, and Accounts Payable Fraud Analysis

  • Developing metrics to detect ghost vendors and vendor master data manipulation
  • Analyzing vendor payment cycles and bank account changes for anomalies
  • Implementing controls for purchase order and invoice matching discrepancies
  • Using clustering techniques to group similar, potentially colluding vendors
  • Creating a robust supplier risk scoring system using multiple indicators
  • Practical session: Designing a vendor analysis dashboard that tracks new vendor setup, bank detail changes, and payment concentration by vendor.

Module 7: Employee and Expense Report Fraud Analytics

  • Techniques for identifying personal expenditure hidden in corporate expense accounts
  • Analyzing submission patterns: High frequency, low value, or clustered submissions
  • Detecting duplicate or split expense items across different reports
  • Creating a dashboard to compare employee spending against peer groups and policy limits
  • Integrating HR data to flag expenses near termination dates or by specific departments
  • Practical session: Building a matrix visual that cross-references employee names, expense categories, and approval dates to quickly highlight employees with unusual spending habits.

Module 8: Advanced Analytics and AI Visuals for Predictive Fraud

  • Introduction to Power BI’s built-in AI visual capabilities (Key Influencers, Decomposition Tree)
  • Utilizing the 'Find Anomalies' feature for automated outlier detection
  • Implementing basic clustering (K-Means via R or Python integration) for grouping high-risk accounts
  • Advanced forecasting visuals to predict potential budget overruns or expense spiking
  • Understanding when to leverage Azure ML services and integrate predictions into Power BI
  • Practical session: Using the Key Influencers visual to determine which factors (e.g., location, transaction type) are most likely to influence the occurrence of a high-risk transaction flag.

Module 9: Reporting Governance and Secure Dashboard Deployment

  • Best practices for organizing and documenting fraud detection reports
  • Implementing Row-Level Security (RLS) to restrict auditor or regional data access
  • Publishing reports to the Power BI Service and setting up data refresh schedules
  • Managing access, sharing, and defining user roles in the Power BI Service
  • Creating alert systems and subscriptions for immediate notification of critical fraud flags
  • Practical session: Setting up Row-Level Security on the transactional data model to ensure that an external auditor can only view data tagged with their specific audit ID.

Module 10: Integrated Fraud Detection Dashboard Capstone

  • Review of all previous modules and integration of models and visuals
  • Designing a single, high-level Executive Fraud Monitoring Dashboard
  • Creating effective drill-through reports linking executive view to detailed transactional data
  • Techniques for presenting complex analytical findings to non-technical stakeholders
  • Review of successful fraud analytics implementation case studies
  • Practical session: Participants will complete and present their final, fully functional Fraud Detection Dashboard, integrating at least three different analytical techniques learned during the course.

Trainer Experience

Our trainers are seasoned professionals with extensive experience in fraud detection, finance, and data analytics. They have successfully implemented fraud detection solutions in various industries and bring valuable insights to the course. Their expertise ensures that participants receive practical knowledge and real-world applications of the concepts covered.

Quality Statement

We are committed to delivering high-quality training that meets the needs of our participants. Our courses are designed to be engaging, informative, and relevant to the current industry landscape. We continuously update our course content to reflect the latest trends and advancements in the field.

Tailor-Made Courses

We offer tailor-made courses to suit the specific needs of organizations. Our custom courses can be designed to address unique challenges, industry-specific requirements, and organizational goals. Contact us to discuss your custom training needs.

Payment Information

Payment should be made one week before the training starts.

Accommodation and Airport Pick-Up

We offer accommodation and airport pick-up services for participants attending the training. Please contact us for more details and arrangements.

Instructor-led Training Schedule

Course Dates Venue Fees Enroll
Feb 02 - Feb 06 2026 Zoom $1,300
Apr 06 - Apr 10 2026 Nairobi $1,500
Apr 13 - Apr 17 2026 Naivasha $1,500
May 04 - Apr 10 2026 Kisumu $1,300
Apr 13 - Apr 17 2026 Nakuru $1,500
Aug 10 - Aug 14 2026 Kigali $2,500
May 11 - May 15 2026 Kampala $2,500
May 18 - May 22 2026 Johannesburg $4,500
Jun 01 - Jun 05 2026 Pretoria $4,500
May 04 - May 08 2026 Cape Town $4,500
Jun 08 - Jun 12 2026 Addis Ababa $4,500
Apr 20 - Apr 24 2026 Cairo $4,500
Apr 20 - Apr 24 2026 Cairo $4,500
Mar 02 - Mar 06 2026 Dubai $5,000
Mar 09 - Mar 13 2026 Riyadh $5,000
Apr 13 - Apr 17 2026 Doha $5,000
Apr 13 - Apr 17 2026 London $6,500
Feb 23 - Feb 27 2026 Paris $6,500
Mar 09 - Mar 13 2026 Geneva $6,500
Mar 09 - Mar 13 2026 Berlin $6,500
Apr 06 - Apr 10 2026 Zurich $6,500
Apr 13 - Apr 17 2026 Brussels $6,500
Apr 20 - Apr 24 2026 New York $6,950
Jun 15 - Jun 19 2026 Los Angeles $6,950
May 18 - May 22 2026 Washington DC $6,950
Apr 13 - Apr 17 2026 Toronto $7,000
Jan 26 - Jan 30 2026 Vancouver $7,000
Armstrong Global Institute

Armstrong Global Institute
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