JP Morgan Chase

jpmorganchase-400px

Challenge:
Rapid Merger and Acuqisition

Results:
  • Merged 3 companies in 90 days  (Circa 2001)
  • ALL systems, ALL DATA!
  • 125 people, multiple cultures
  • Business Value produced during Due Diligence phase.

JP Morgan Chase used the Data Vault model, methodology and architecture to perform due diligence, and ultimately to merge 3 companies in 90 days.  I met with the CIO at the time after they had completed the mergers and acquisitions.  He said that the only way they were able to make this happen was because of the flexibility that the Data Vault offered.

He also noted that the parallel teaming environment and standards that we prescribed made it easier to manage cross-cultural IT staff.  Ultimately bringing together three parallel build efforts in to a corporate enterprise data warehouse and BI solution.  This solution brought a number of key reports to the executives in the time they needed to make final decisions.

Similar Posts

  • NYU Builds Data Vault 2.0 & Unlocks Big Business Value

    New York University is as large as a major corporation, with 100,000 undergraduate students, 19,000 employees, and 18 schools in three countries.  While they haven’t been collecting data for all 191 years of their existence, they have been building analytics to support various areas for many years.  Their architecture has evolved through changing source systems,…

  • NetQuote

    Challenge: Data Science in Real Time Results: NetQuote implemented an Operational Data Vault behind their web-sales app, tripled their business profitability in 18 months  (Circa 2006) Customer Conversion time dropped from 15 minutes to 5 minutes Business Sold in 2 years NetQuote was an on-line insurance broker, matching insurance policies with prospective buyers.  Their challenge…

  • Raytheon

    Challenge: Unstructured Image Processing in Real Time Results: Ingesting 100,000 images per second across 10 parallel streams, creating business value by capturing Satellite Images of weather, hashing them for correlation analysis. (Circa 2001, still in use today) Turning unstructured data into information in real-time! Raytheon had a number of challenges.  Their job was to ingest…

  • Department of Defense

    Challenge: Scalability with No Re-Engineering Produced Data Vault, Scaled to 3 Petabytes (circa 2003) still growing today Sub-second query responses Zero re-engineering to add more data, and expand This project was done to serve the needs of the public.  They captured real-time streams that focused on image processing and image recognition.  The premise is: capture…