Spend Analytics Engine
Overview
The Spend Analytics Engine provides comprehensive procurement spend analysis capabilities. It cleanses and classifies spend data, identifies consolidation opportunities, detects maverick spending, and quantifies savings opportunities to drive procurement value.
Capabilities
- Spend Data Cleansing and Normalization: Data quality improvement
- UNSPSC/Commodity Classification: Standard category assignment
- Supplier Consolidation Analysis: Fragmentation identification
- Price Variance Identification: Unit price analysis across transactions
- Maverick Spend Detection: Off-contract purchasing identification
- Contract Compliance Analysis: Spend vs. contract terms
- Savings Opportunity Quantification: Addressable spend and savings potential
- Spend Trend Visualization: Historical pattern analysis
Input Schema
spend_analysis_request:
spend_data:
transactions: array
- supplier: string
description: string
amount: float
quantity: float
date: date
business_unit: string
cost_center: string
period:
start_date: date
end_date: date
reference_data:
supplier_master: array
category_taxonomy: object
contracts: array
analysis_scope:
analysis_types: array # classification, consolidation, compliance
focus_categories: array
thresholds: object
Output Schema
spend_analysis_output:
spend_summary:
total_spend: float
supplier_count: integer
transaction_count: integer
by_category: object
by_supplier: object
by_business_unit: object
classification_results:
classified_spend: float
unclassified_spend: float
category_distribution: object
consolidation_opportunities:
fragmented_categories: array
supplier_rationalization: array
estimated_savings: float
price_variance_analysis:
variance_by_item: array
outliers: array
benchmark_comparisons: object
maverick_spend:
off_contract_spend: float
percentage: float
top_violations: array
contract_compliance:
compliant_spend: float
non_compliant_spend: float
compliance_issues: array
savings_opportunities:
total_addressable_spend: float
estimated_savings: float
initiatives: array
- initiative: string
category: string
addressable_spend: float
savings_potential: float
confidence: string
visualizations: object
Usage
Comprehensive Spend Analysis
Input: 12 months AP transaction data
Process: Cleanse, classify, analyze patterns
Output: Complete spend analysis with savings opportunities
Supplier Consolidation Analysis
Input: Classified spend by category
Process: Identify fragmentation, model consolidation
Output: Consolidation recommendations with savings
Contract Compliance Review
Input: Spend data, contract terms
Process: Match spend to contracts, identify leakage
Output: Compliance report with violation details
Integration Points
- Spend Analytics Platforms: Coupa, SAP Ariba, Jaggaer
- ERP Systems: AP data extraction
- Classification Services: Automated categorization
- Tools/Libraries: Spend analytics, classification algorithms
Process Dependencies
- Spend Analysis and Savings Identification
- Category Management
- Strategic Sourcing Initiative
Best Practices
- Establish regular data refresh cadence
- Maintain category taxonomy consistency
- Validate classification accuracy periodically
- Focus on actionable savings opportunities
- Track savings realization against projections
- Communicate insights to stakeholders regularly