Zycus Inc | Save with Ease
Sitemap Careers Contact Us
  Customers
 
Home Company Solution Suite Customers Knowledge Hub News & Events
Customers Overview
Customers Case Studies
F500 Pharmaceuticals &
Biotechnology Company
F500 Diversified Technology
Company
F100 Diversified Technology
Company
Leading Power Generation
Supplier
F100 Aluminum Smelting
F100 Chemical Company
GE
Unilever
GSA
Forest Products Company
Fortune Ranking Company
Global Media-Entertainment
Giant
ABB Offshore Systems
P&O
FCC
Enpro
Testimonials
 

With increased adoption of GSA Advantage!, the Federal Government will potentially save millions of dollars from purchase transactions in products and services. The Zycus SDM software integrated with the GSA Advantage! system, will automatically help categorize more than five million product and services data within the system to UNSPSC standards, and help people find what they need more easily.

Al Iagnemmo
Director of e-business for the
  FSS, GSA
Solution Area
Spend Analysis
Spend Data Management
Supplier Relationship Mgmt
Strategic Sourcing
eSourcing
UNSPSC Classification
Spend Management
 
 

 
> Home > Customers > F100 Aluminum Smelting
Customers Case Studies
A Fortune 100 world leader in aluminum smelting capacity and second largest producer of aluminum
  Fortune 500   Fortune 100 Company
Revenues: $ 26 Billion
Geographic spread: 43 countries
Languages: English, German, French, Spanish and Portuguese
 
 

Business need:
Commodity classification applied to all spend transactions that is accurate, repeatable and globally consistent will enable

  • Effective Spend Reporting & identification of spending patterns
  • Increased contract compliance
  • Efficient functioning of commodity councils
  • An Automated and Repeatable processes for spend analysis

Business benefits from Actionable Spend Analysis:

  • Automated & repeatable spend data management infrastructure integrated with Global Oracle Data warehouse
  • Accurate & reliable spend reports
  • Commodity Managers can focus on sourcing aspects rather than data cleansing