Integrated Data Management Platform

Use the data analytics tool based on a common approach at the company level and automatically control data quality in data processing.
  • Decrease the number of requests to ETL by 25–60%
  • Increase data access rate by a factor of 40
  • Reduce the time for infrastructure support by 65–85%

Get a presentation
about the platform with case examples

The Structure of the Data Management Platform

Methodology

Description of information objects, data management rules and procedures.

  • Data business
    model
  • Norms, Rules, Instructions

Technical Platform

Automation of rules and procedures to ensure data quality.

  • Data validation
  • Meta data
  • Information security
  • Normative and reference documentation

Transaction
data

Structured data warehouses

Unstructured data and partially structured data

The Platform Capabilities

  • Data visualization in dashboards for selected business metrics
  • Tracking unreliable data and defining their source without contacting technical support
  • Choosing a proper data source for calculating specific metrics
  • Analytics of selected metrics with tracking the dynamics of the company business growth
  • Prediction of adverse business situations and their timely prevention

Implementation advantages

  • The graphic interface boosts the performance of data engineers, data scientists, and business analysts
  • A wide range of tools for data handling and AI
  • Secure container platform based on RedHat OpenShift
  • Full life cycle for AI data

Get a preliminary calculation and estimate for the project

Implemented projects

The necessity to refine and setup existing data management processes in the Bank

Domain area: turnover balance sheet and Form 101 submitted to the Central bank of RF

The product has the following modules:

  • Business glossary, data management policy and rules
  • Automated business processes for data management
  • Relationship between business terms and physical data sources
  • Tools for testing data quality, monitoring reports
  • Transition of the Bank to risks calculation by the IRB approach
  • Adherence to data quality requirements set by the Central Bank of the Russian Federation

Domain area: risk estimation and management

The developed data management tool includes:

  • Business glossary, data management policy and rules
  • Automated business processes for data management
  • Relationship between business terms and physical data sources
  • Tools for testing data quality and monitoring reports
  • Adherence to the Bank’s methodology
  • Geographically distributed points of data generation and processing
  • Necessity of stock-taking and setting rules for data processing
  • Bonus program data management
  • Adherence to GDPR
  • Better processing of transactions for accrual and write-off of miles due to regular monitoring and error prevention
  • Lower overheads due to automatic identification and deleting of personal data
  • Data monetization due to targeted advertising and using the knowledge about passengers

Our skills

1

Proprietary methodology of data management implemented in TOP-40 companies

2

Hands-on experience of implementation in finance and transportation industries and B2C companies

3

5 years of implementing Enterprise and Open Source products

4

Implementing turnkey projects, from the need and task identification to implementation and subsequent support of the solution

5

Certified Data Architect - Big Data specialists in the field of data management (Integration, Quality & Governance)

Have a look at a demo version of the integrated data management platform