PiLog Offers Industry Proven Master Data Governance Solutions
The PiLog MDRM system is a multi-domain, multi-lingual solution to create and maintain all the master data records of an organization in a single installation
One of the primary functions is that of Item Entry Control for Master Data elements such as Item or Material Master Data Management, Service Master Data Management, Customer Master Data Management, Product Master Data Management and Vendor Master Data Management Services.
Standard governance processes specific to master data creations, changes , extensions (business extension from the corporate master or golden record) , blocking/restrictions (ie block on an ERP transaction such as a payment) , deletion and archiving are available to manage the complete life cycle of the master data record.
MDRM also contains a powerful search engine that utilizes algorithms, such as fuzzy logic, stemming, synonyms and searches on nested / associated data elements to find master data items
PiLog's solution aims at delivering industry-proven best practices to improve supply-chain, maintenance & procurement processes
Enhanced search facilities based on classification, descriptions & taxonomy
Auto mapping of material master record with UNSPSC
Capturing multiple reference data (linking more than one Part/Model# & Manufacturers with the material).
Free Form Text (FFT)
Icon Image for Document type attached.
On-demand content as & when required via PiLog Data cloud micro-services.
Duplicate Check performed during creating, change of the material master record.
Industry proven ISO compliant abbreviations (Class, Characteristic, Characteristic Values & UOMs).
Pre-configured Industry proven de-duplication algorithms.
Harvest from millions of pre-cataloged material master records from PiLog Data cloud.
User is guided to an accurate selection of UoM, material group & key data structure.
Enforced governance rules to improve consistency & data quality using approved characteristic values.
Replication/Distribution of Key fields to SAP or Non-SAP instances (including classification).
Improved & Accurate Search-ability using Classification reduces the time taken for material identification.
Ready to use Industry proven taxonomy & ISO compliant content (Class, Characteristics, Values & UOMs).
100% improved duplicate detection algorithms based on proven best practices, 10% savings on Inventory cost by identifying & eliminating duplication.
PiLog Solution is certified by SAP Labs, which gives assurance & confidence to the customers, partners that the solution is well tested as per the SAP standards and can be rolled out smoothly to the production environments.
MJR Magnifique, Rai Durg, X roads, Nanakram Guda, Hyderabad, Telangana 500008
PiLog's solution delivers the industry-proven best practices to improve supply-chain, maintenance & procurement processes.
This release was published on openPR.
Permanent link to this press release:
Please set a link in the press area of your homepage to this press release on openPR. openPR disclaims liability for any content contained in this release.
You can edit or delete your press release PiLog Offers Industry Proven Master Data Governance Solutions here
News-ID: 1856218 • Views: …
More Releases for Data
HOW TO TRANSFORM BIG DATA TO SMART DATA USING DATA ENGINEERING?
We are at the cross-roads of a universe that is composed of actors, entities and use-cases; along with the associated data relationships across zillions of business scenarios. Organizations must derive the most out of data, and modern AI platforms can help businesses in this direction. These help ideally turn Big Data into plug-and-play pieces of information that are being widely known as Smart Data. Specialized components backed up by AI and
Global Data Analytics Outsourcing Market |data analytics outsourcing, big data o …
Market Research Reports Search Engine (MRRSE) has been serving as an active source to cater intelligent research report to enlighten both readers and investors. This research study titled “Global Data Analytics Outsourcing Market “ The report on data analytics outsourcing market provides analysis for the period 2016 – 2026, wherein 2018 to 2026 is the forecast period and 2017 is the base year. The report covers major trends and technologies playing
Test Data Management (TDM) Market - test data profiling, test data planning, tes …
The report categorizes the global Test Data Management (TDM) market by top players/brands, region, type, end user, market status, competition landscape, market share, growth rate, future trends, market drivers, opportunities and challenges, sales channels and distributors. This report studies the global market size of Test Data Management (TDM) in key regions like North America, Europe, Asia Pacific, Central & South America and Middle East & Africa, focuses on the consumption
Data Prep Market Report 2018: Segmentation by Platform (Self-Service Data Prep, …
Global Data Prep market research report provides company profile for Alteryx, Inc. (U.S.), Informatica (U.S.), International Business Corporation (U.S.), TIBCO Software, Inc. (U.S.), Microsoft Corporation (U.S.), SAS Institute (U.S.), Datawatch Corporation (U.S.), Tableau Software, Inc. (U.S.) and Others. This market study includes data about consumer perspective, comprehensive analysis, statistics, market share, company performances (Stocks), historical analysis 2012 to 2017, market forecast 2018 to 2025 in terms of volume, revenue, YOY
Long Term Data Retention Solutions Market - The Increasing Demand For Big Data W …
Data retention is a technique to store the database of the organization for the future. An organization may retain data for several different reasons. One of the reasons is to act in accordance with state and federal regulations, i.e. information that may be considered old or irrelevant for internal use may need to be retained to comply with the laws of a particular jurisdiction or industry. Another reason is to
Data Quality and Data Governance Solution Market - Demand For Cost-Effective Dat …
In the enterprise data management ecosystem, data quality is a broad term which refers to the quality, integrity, and consistency of data and/or process etc. Data quality also implies the degree of data accuracy and consistency. On the other hand, data governance focusses on the management of data assets by assigning authority, control, and responsibility of data and encompasses three key areas: people, process, and technology. Data quality and data governance