Improving your Organizations Data Governance Scorecard

简介: This whitepaper looks at how businesses can improve their scores on the tests of three fundamental data governance areas.

_

INTRODUCTION

In today’s digital economy, all organizations must pass the basic tests of data governance if they want to keep operating. Data governance – an area which includes cybersecurity, regulatory compliance and data residency – forms the foundation of organizational data management. Its basics are, in most cases, not difficult to implement. But the stronger a business’ policy and technology framework for data governance, the less risks it faces and the more efficiently it can process, store, and grow its data footprint. That provides organizational leaders with strong incentive to go beyond the minimum requirements and seek to achieve as high a grade of data governance as possible.

This whitepaper looks at how businesses can improve their scores on the tests of three fundamental data governance areas, providing several sets of self-assessment questions to help leaders evaluate and improve on their current governance levels.These three areas include:

The integrity of organizational data, which leaders can tighten by installing rigorous processes for authorization and documentation of data access;

Maintenance of data quality to both industry and international standards, an area which demands a mix of automated and manual checks; and

Security – and compliance-conscious organizational behaviors, which organizations can foster with their own governance scorecards for teams and individual employees as well as incentives and disincentives depending on their scores.

Organizations must constantly adapt to maintain good data governance. They can make this task easier by choosing data providers who not only understand its importance, but also constantly invest in the latest technologies and refresh their own policies to keep security and compliance levels high. More importantly, however, business leaders of all stripes should consider the implications for data governance in all their major decisions. Doing so ensures the good health of the organization and allows it to turn data from a potential liability into a high-value asset.

目录
相关文章
|
9月前
|
机器学习/深度学习 存储 数据采集
DCFEE: A Document-level Chinese Financial Event Extraction System based on Automatically Labeled论文解读
我们提出了一个事件抽取框架,目的是从文档级财经新闻中抽取事件和事件提及。到目前为止,基于监督学习范式的方法在公共数据集中获得了最高的性能(如ACE 2005、KBP 2015)。这些方法严重依赖于人工标注的训练数据。
69 0
|
机器学习/深度学习 异构计算 索引
PyG学习笔记2-CREATING MESSAGE PASSING NETWORKS
PyG学习笔记2-CREATING MESSAGE PASSING NETWORKS
256 0
PyG学习笔记2-CREATING MESSAGE PASSING NETWORKS
|
数据可视化 数据挖掘 开发者
Data-Basic Statistical Descriptions of Data| 学习笔记
快速学习 Data-Basic Statistical Descriptions of Data。
105 0
Data-Basic Statistical Descriptions of Data| 学习笔记
Basic Concepts of Genetic Data Analysis
Basic Concepts of Genetic Data Analysis
881 0
|
算法
Reading《Practical lessons from predicting clicks on Ads at Facebook》(1)
版权声明:本文为博主原创文章,未经博主允许不得转载。 https://blog.csdn.net/sinat_32502811/article/details/80794980 因为在做京东的算法大赛,小白选手,看了一些别人的入门级程序,胡乱改了一通,也没有什么大的进展,而且感觉比赛的问题和点击率预估还是有点像的,所以搜了个论文来读,看看牛人们的思路。
2241 0
The Rising Smart Logistics Industry: How to Use Big Data to Improve Efficiency and Save Costs
This whitepaper will examine Alibaba Cloud’s Cainiao smart logistics cloud and Big Data powered platform and the underlying strategies used to optimiz.
1503 0
The Rising Smart Logistics Industry: How to Use Big Data to Improve Efficiency and Save Costs
|
安全
How Important is Data Security for the Financial Industry?
90% of financial companies worldwide think they have data security risks. What security problems do financial industry users typically encounter?
1973 0
|
关系型数据库 物联网 对象存储
Sharing, Storing, and Computing Massive Amounts of Data
Data is crucial to the operation of any business.
1602 0
|
算法 安全 网络协议