Key challenges with data management

14 October 2022 | Noor Khan

Key challenges with data management

Effectively managing your data can become challenging as the sheer volume of data is increased considerably from hour to hour, day to day. Data for most organisations is always evolving in volume, variety, velocity and source. This presents a number of challenges for data management but also presents opportunities that businesses can capitalize on. Businesses that spot these opportunities and invest in their data management will gain a competitive edge over their competitors.

In this article, we will look at the key challenges with data management that organisations are facing today and how you can overcome them to get ahead.

Volume of data

Around 2.5 quintillion bytes of data are created every day as highlighted by Exploding Topics. Businesses continuously generate more and more data daily, which has driven the move towards the adoption of cloud solutions to deal with the sheer volume of data. Traditional, on-site servers are no longer able to cope with the increasing data sets. Some organisations have opted for hybrid data solutions where they make the most out of traditional onsite servers and cloud solutions. This approach works well, particularly for those organisations that want increased security for private data that is stored on private servers and the remainder on a cloud-based platform such as AWS, and Microsoft Azure

Read about hybrid or a multi-cloud solution and choosing what is right for you.

Variety of data

The variety and sources of data being collected are also increasing and evolving. Managing data coming from an increasing number of sources can become quite a challenge. Disparate sources of data can provide valuable data, however, if that data is not collected and collated in the right way the benefits will be negated. Therefore, to effectively deal with growing sources of data, organisations should look to invest in robust, scalable data pipelines which will help them effectively collect the data, cleanse it, validate it and enrich it before loading it into a data repository whether that is a data warehouse or a data lake.

Real-time analytics

In this age of instant access, it is no different with data. There is an increasing demand for real-time analytics. Organizations want to be able to collect their data, gain insights and make data-driven decisions instantly. This can offer businesses a competitive advantage and for some industries, this is critical, healthcare for example. As the Head of Data Engineering, Laxman Amrale predicted: “I predict technology will evolve to.. improve latency performance to real-time in the upcoming years.” This is already becoming prevalent in the adoption and development of real-time data pipelines.

Data quality

With mammoth volumes and a variety of data, it can be difficult to ensure data quality. Having lots of data is great, however having data that is not useful can pose many challenges for organisations, especially when it comes to performance, security, storage and accessibility. Ensuring data quality is a must for an organisation dealing with big data. One step an organisation can take to ensure data quality is with data pipelines that will adequately cleanse, validate and enrich data.

Lack of resource

Business intelligence can drive sales, help make well-informed, data-driven decisions and help organisations remain competitive. However, to uncover these golden insights from the data, a lot of time and resource is required. Organisations may not have the skills in-house or even the time to dedicate to data projects to garner these insights. Therefore, they may opt for the outsourcing route, which can provide several benefits such as:

  • Access to highly skilled engineers
  • Years of experience and track record of success
  • Access to leading technologies without licensing costs
  • Peace of mind working with experts in the field
  • Expert recommendations unique to you

Data security

Data security is one of the biggest concerns for most organisations especially those dealing with sensitive and consumer data. Organizations can be vulnerable to cyber attacks if they are not effectively managing their data. Therefore, ensuring there are data governance practices in place will help mitigate the risk of potential attacks and loss of data. In addition, if your data is organised, tracked and accessible you are more likely to be aware of attacks and how much exposure you might have.

Additionally, if you are working with third parties ensuring that they have robust data practices in place is key. For example, if a company has data security certifications such as ISO 27001, this will give you peace of mind that they deal with data securely.

Data automation

Automation is becoming increasingly prevalent across all industries, organisations and departments, from automating business processes to automating data pipelines. Automation provides some valuable benefits from reduced costs to improved productivity. Enabling automation within your data solutions whether that is pipelines or data warehouses, can save you considerable costs in terms of time and resources.

Ardent database management services

Our highly skilled data engineers can help you manage your data effectively and avoid the typical big data challenges listed. Working with a wide variety of organisations we have worked with our clients to deliver data management services that meet their unique business goals and objectives. If you are looking to work with an experienced, reliable and credible data engineering company, then get in touch to find out more.


Ardent Insights

Are you ready to take the lead in driving digital transformation?

Are you ready to take the lead in driving digital transformation?

Digital transformation is the process of modernizing and digitating business processes with technology that can offer a plethora of benefits including reducing long-term costs, improving productivity and streamlining processes. Despite the benefits, research by McKinsey & Company has found that around 70% of digital transformation projects fail, largely down to employee resistance. If you are [...]

Read More... from Key challenges with data management

Stateful vs Stateless

Stateful VS Stateless – What’s right for your application?

Protocols and guidelines are at the heart of data engineering and application development, and the data which is sent using network protocols is broadly divided into stateful vs stateless structures – these rules govern how the data has been formatted, how it sent, and how it is received by other devices (such as endpoints, routers, [...]

Read More... from Key challenges with data management

Getting data observability done right - Is Monte Carlo the tool for you (1)

Getting data observability done right – Is Monte Carlo the tool for you?

Data observability is all about the ability to understand, diagnose, and manage the health of your data across multiple tools and throughout the entire lifecycle of the data. Ensuring that you have the right operational monitoring and support to provide 24/7 peace of mind is critical to building and growing your company. [...]

Read More... from Key challenges with data management