want to be ready for big data?

31
Make Sure to Control Small Data First! Want to be Ready for Big Data? SynerTrade Rainer Machek Executive VP sig.org/summit

Upload: others

Post on 21-May-2022

1 views

Category:

Documents


0 download

TRANSCRIPT

Page 1: Want to be Ready for Big Data?

Make Sure to Control Small Data First!

Want to be Ready for Big

Data?

SynerTradeRainer MachekExecutive VP

sig.org/summit

Page 2: Want to be Ready for Big Data?

Want to be ready for Big Data?Make sure to control your Small Data first!

Rainer Machek, Executive VP

2

Page 3: Want to be Ready for Big Data?

Glisser Question

Customer situation: We were buying the same things under different codes. And we were paying different prices for the same product, even from the same supplier.“

Question: Does this sound familiar to you?

Audience rank possible answers via Glisser:

• Even worse

• Yes at all

• Not that bad, but its there

• Not at all

© SynerTrade – Strictly Proprietary3

Page 4: Want to be Ready for Big Data?

• Most organization’s struggle in data quality

• You do not have to be Fuzzy! There are solutions based on your rules to achieve reliable accurate data

• Big Data is upcoming! Be prepared and clean Small Data first

You will learn:

© SynerTrade – Strictly Proprietary4

Page 5: Want to be Ready for Big Data?

© SynerTrade – Strictly Proprietary

Accelerate: Digital Solutions, used by 500+ customers like:

5

Page 6: Want to be Ready for Big Data?

Reference: Fresenius Medical Care Project

SAP, SAP BW

Sage, Axapta, Infor

4 Regions (EUROPE, APAC, LATAM, NAFTA)

© SynerTrade – Strictly Proprietary6

Page 7: Want to be Ready for Big Data?

Source: internal Fresenius Medical Care Newspaper

© SynerTrade – Strictly Proprietary

All around the world, different taxonomies

7

Page 8: Want to be Ready for Big Data?

Reference: Lufthansa Group Project

17 SAP, 2 SAP BW

1 Oracle Database

129 subsidiaries out of around 400

© SynerTrade – Strictly Proprietary8

Page 9: Want to be Ready for Big Data?

2,800,000 of invoices, 17 SAP Systems

Source: internal Lufthansa Newspaper

© SynerTrade – Strictly Proprietary9

Page 10: Want to be Ready for Big Data?

Extraction, Processing and Upload of data

1Data Harmonization

2 Analysis and Reporting

3

© SynerTrade – Strictly Proprietary

Three Steps to a Sustainable Spend Transparency

10

Page 11: Want to be Ready for Big Data?

Enriched Data

MG AssignmentSupplier harmonizationD&B InformationCustom Mapping

Master Data

SupplierGL AccountCost CenterMaterial Group

Transaction Data

Purchase OrderInvoiceGoods Receipt

- DUNS Numbers- Mapping to ERP Number- MG Assignment of

transactions / spend

- Supplier Name- Supplier Country- GL Account / CC

Description- …

- Plant- Material Group- Purchasing Org- GL Account- Cost Center

- Incorrect DUNS format- DUNS number

discrepancy- MG / GL Account /

Supplier mismatch

- Duplicate VAT IDs- ZIP Code format incorrect- ZIP Code does not match

address- Non standard country

code

- Savings > Order Amount- Contract Number invalid- Incorrect Currency

Conversion- …

Data Completeness

Data Correctness /

Plausibility

© SynerTrade – Strictly Proprietary

Data Quality Matrix of Different Quality Dimensions

11

Page 12: Want to be Ready for Big Data?

Data Cube - Data Quality

Data Quality Management: The most fundamental part of Data Harmonization

• All data are in the data cube all data deficit & inconsistencies are in the data cube as well

• Visibility and transparency about deficits by means of SynerTrade Quality Reports

• The SynerTrade Quality Reports are a special and fundamental view on the data

From whom are we buying?

For whom are we buying?

What arewe buying?

Co

mm

od

ity

TRANSACTIONS

Vendors

© SynerTrade – Strictly Proprietary12

Page 13: Want to be Ready for Big Data?

Quality Reports: Analysis of Missing Data

© SynerTrade – Strictly Proprietary13

Page 14: Want to be Ready for Big Data?

Supplier Harmonization

14

Page 15: Want to be Ready for Big Data?

SynerTrade Supplier Harmonization: Background

• Typical problem: Existence of supplier duplicates in various source systems

• Identification of duplicates as part of the supplier data integration

• Semi-automatic iterative procedure whose logic is based on automatic and

manual processes

Example Inc.

© SynerTrade – Strictly Proprietary15

Page 16: Want to be Ready for Big Data?

Matching of 100.000 suppliers in ~15 min

Up to 5 Terabyte of Data for Spend Analysis

Performance

© SynerTrade – Strictly Proprietary16

Page 17: Want to be Ready for Big Data?

Supplier Harmonization: Overview

Spend Analysis

Match Run

Match Rules

Supplier Master Data

ProposedMatches

Automatic Matches

External Data Sources(Optional)

MatchExclusions

ConfirmedMatches

Manual Input

2

3

1

4

© SynerTrade – Strictly Proprietary17

Page 18: Want to be Ready for Big Data?

Match Types (like sieving sand......)

© SynerTrade – Strictly Proprietary18

Page 19: Want to be Ready for Big Data?

Reworking The Consolidation Status – self learning

Visualization of harmonization results:

• overview of the most important KPI and statistics

• automatic matches, match proposals, summary, etc.

© SynerTrade – Strictly Proprietary19

Page 20: Want to be Ready for Big Data?

Commodity Harmonization

20

Page 21: Want to be Ready for Big Data?

Rules & Standards Based Process

Commodity Harmonization is based on a intelligent Rules & Standard algorithm:

• The mapping algorithm is unambiguously and reproducible “fuzzy” logic is not

controllable with millions of transaction data

• The development of the mapped spend per commodity must be understandable and logic

during the complete process

• Processing of all rules in fixed sequence which is defined at the beginning of the project

• Processing Duration for 5 million transactions and a Rules & Standard with 15.000 entries: 7

minutes!

© SynerTrade – Strictly Proprietary21

Page 22: Want to be Ready for Big Data?

Commodity Harmonization – self-learning

Finally every single record will be assigned to the correct commodity according the Rules & Standard algorithm…

After the definition and creation of a common, unambiguously structure of corporate commodities every single record will be mapped and assigned to a dedicated commodity. Due to the iterative SynerTrade process the rules & standard will be refined and adjusted permanently to guarantee the highest quality as well as a very high degree of automation.

[Text]

[Text][Text]

[Text]

[Text][Text]

Iterative Update Process for Rules & Standard

Assignment to CommodityRule based mapping

© SynerTrade – Strictly Proprietary22

Page 23: Want to be Ready for Big Data?

Commodity Harmonization – Quality Reports

The Quality Reports are an essential part of the Harmonization Process…

Based on the Quality Reports, the progress of the iterative harmonization process could be monitored, still existing deficits could be made transparent and thus the rules & standard could be immediately adjusted to an optimum.

© SynerTrade – Strictly Proprietary23

Page 24: Want to be Ready for Big Data?

Loading of Data Cube and Visualization of Data

1

Data Harmonization

2

Analysis and Reporting

3

Extraction,Processing

and Upload of Data into the Data Cube

© SynerTrade – Strictly Proprietary24

Page 25: Want to be Ready for Big Data?

Multiple pre-parametered business reports available

A responsive design to display your reporting also on mobile devices

An advanced editor to create your own reports online !

A story-telling mode to create dynamic presentations

Some key features of the final Spend Analyses solution

© SynerTrade – Strictly Proprietary25

Page 26: Want to be Ready for Big Data?

Glisser Question

Question: So what if I have bad data? All this means is duplicates, right?

No, it means.....?

Audience rank possible answers via Glisser:

• No bundling

• Higher prices

• More effort

• Missing opportunities

© SynerTrade – Strictly Proprietary26

Page 27: Want to be Ready for Big Data?

Take away Case Study INSIGHT DATA QUALITY

© SynerTrade – Strictly Proprietary27

Page 28: Want to be Ready for Big Data?

Rainer MachekExecutive Vice President

205E 42nd Street 20th FloorNew York, NY 10017 USA

[email protected]

+ 1 646 880 4496

Your contact at SynerTrade

28

Page 29: Want to be Ready for Big Data?

Evaluation How-to:

Your feedback drives

SIG Event content

By signing and

submitting your

evaluation, you are

automatically entered

into a prize drawing

Why?

Option 1: App

1. Select Schedule

2. Select Schedule by Day

3. Select Day

4. Select Session

5. Scroll to Description

6. Click on the Evaluation link

Option 2: Browser

1. Go to www.sig.org/eval

2. Select Session (#19)

How?

COMPLETE &SUBMIT EVAL

Page 30: Want to be Ready for Big Data?

Tweet: #SIGspring17

Session #19

Want to be Ready for Big Data?

Make Sure to Control Small Data First!

www.sig.org/eval

Download the App: bit.ly/SIGAmelia

Rainer Machek

Executive Vice President

[email protected]

+ 1 646 880 4496

Page 31: Want to be Ready for Big Data?