BookFrontier
Data Quality Engineering in Financial Services by Brian Buzzelli

Book

Data Quality Engineering in Financial Services

Applying Manufacturing Techniques to Data

Brian Buzzelli

O'Reilly Media · Print & ebook · November 29, 2022

Reading lane: Desktop Databases

Data quality will either make you or break you in the financial services industry.

At a Glance

Who It's For

Good for readers who enjoy Desktop DatabasesGood for readers interested in businessGood for readers who enjoy Desktop Databases and Data Mining.

Book Details

Authors
Brian Buzzelli
Publisher
O'Reilly Media
Published
November 29, 2022
Format
Print & ebook
Theme
Desktop Databases · Data Mining
Reading lane
Desktop Databases

Affinity

Publisher Categories

  • Quality Control

  • Financial Services

  • Data Science

  • Data Mining

Show all 5 publisher categories
  • Desktop Databases

About This Book

Data quality will either make you or break you in the financial services industry. Missing prices, wrong market values, trading violations, client performance restatements, and incorrect regulatory filings can all lead to harsh penalties, lost clients, and financial disaster. This practical guide provides data analysts, data scientists, and data practitioners in financial services firms with the framework to apply manufacturing principles to financial data management, unders...

Read full description

Data quality will either make you or break you in the financial services industry. Missing prices, wrong market values, trading violations, client performance restatements, and incorrect regulatory filings can all lead to harsh penalties, lost clients, and financial disaster. This practical guide provides data analysts, data scientists, and data practitioners in financial services firms with the framework to apply manufacturing principles to financial data management, understand data dimensions, and engineer precise data quality tolerances at the datum level and integrate them into your data processing pipelines. You'll get invaluable advice on how to: - Evaluate data dimensions and how they apply to different data types and use cases - Determine data quality tolerances for your data quality specification - Choose the points along the data processing pipeline where data quality should be assessed and measured - Apply tailored data governance frameworks within a business or technical function or across an organization - Precisely align data with applications and data processing pipelines - And more

Similar Books