Skip to content
Tiatra, LLCTiatra, LLC
Tiatra, LLC
Information Technology Solutions for Washington, DC Government Agencies
  • Home
  • About Us
  • Services
    • IT Engineering and Support
    • Software Development
    • Information Assurance and Testing
    • Project and Program Management
  • Clients & Partners
  • Careers
  • News
  • Contact
 
  • Home
  • About Us
  • Services
    • IT Engineering and Support
    • Software Development
    • Information Assurance and Testing
    • Project and Program Management
  • Clients & Partners
  • Careers
  • News
  • Contact

Don’t Fear Artificial Intelligence; Embrace it Through Data Governance

As someone who is passionate about the transformative power of technology, it is fascinating to see intelligent computing – in all its various guises – bridge the schism between fantasy and reality. Organisations the world over are in the process of establishing where and how these advancements can add value and edge them closer to their goals. The excitement is palpable.

However, it is important that this excitement does not blind us to the dangers, propelling us ahead without having taken the right preparatory steps or without understanding the challenges that will be encountered along the way.

Preparing for an artificial intelligence (AI)-fueled future, one where we can enjoy the clear benefits the technology brings while also the mitigating risks, requires more than one article. This first article emphasizes data as the ‘foundation-stone’ of AI-based initiatives.

Establishing a Data Foundation

The shift away from ‘Software 1.0’ where applications have been based on hard-coded rules has begun and the ‘Software 2.0’ era is upon us. Software development, once solely the domain of human programmers, is now increasingly the by-product of data being carefully selected, ingested, and analysed by machine learning (ML) systems in a recurrent cycle. In this new era the role of humans in the development process also changes as they morph from being software programmers to becoming ‘data producers’ and ‘data curators’ – tasked with ensuring the quality of the input.

This would be straightforward task were it not for the fact that, during the digital-era, there has been an explosion of data – collected and stored everywhere – much of it poorly governed, ill-understood, and irrelevant. Data lakes have been amassed during a time when organisations have been pre-occupied with ‘infrastructure-first transformation’ initiatives. And, while it may be useful to digitize business processes, unburden yourself from siloed multi-generational IT, and drive cloud-first mandates, it will only get you so far on the transformation continuum.

Data Centricity

Forward-thinking transformation leaders have realised that more focus needs to be placed on ‘data-centric value creation’ and have made this the pre-eminent organising principle in their organisations. “Data-first,” as a basis for technology and other critical investment decisions, can:

  • Spur new operating models that help them differentiate and grow
  • Create ‘hyper-personalised’ digital moments and experiences that drive loyalty
  • Improve foresight and expand predictive capabilities

These leaders are doing so not just to help them fully embrace the digital ‘now,’ but to prepare for and capitalise on the AI-fuelled digital ‘next.’

Exposing the Blindspot

There is little doubt that the next wave of technology, driven by greater automation and computational intelligence, will rely on data more than any preceding era. To take full advantage of these advancements data must be:

  1. Well understood and well organised
  2. Continually analysed for relevance and cleansed
  3. Sensibly located where it can add most value and be accessed in a frictionless, cost-effective way
  4. Carefully selected to drive the optimal business outcomes
  5. Tightly governed and regulated such that it is compliant and ethically sound

To overlook or downplay the importance of any of these considerations is to potentially build your AI future on pillars of sand.

There is evidence to suggest that there is a blind spot when it comes to data in the AI context. Many organisations focus too heavily on fine tuning their computational models in their pursuit of ‘quick-wins.’ However, contrary to popular belief, AI success is not about tweaking and recalibrating models, it’s about tweaking data, continually.

Once built, the computational models should remain relatively static. Most industry experts believe it is data availability, quality, and understanding that are the biggest determinants of success in AI. Without them an organisations’ AI exploits carry significant risk, particularly due to the triple-threats of data bias, mis-labelling, and poor selection.

Despite soundings on this from leading thinkers such as Andrew Ng, the AI community remains largely oblivious to the important data management capabilities, practices, and – importantly – the tools that ensure the success of AI development and deployment.

Addressing the Challenge

Data-centric AI is evolving, and should include relevant data management disciplines, techniques, and skills, such as data quality, data integration, and data governance, which are foundational capabilities for scaling AI. Further, data management activities don’t end once the AI model has been developed. To support this, and to allow for malleability in the ways that data is managed, HPE has launched a new initiative called Dataspaces, a powerful cloud-agnostic digital services platform aimed at putting more control into the hands of data producers and curators as they build intelligent systems.

Addressing, head on, the data gravity and compliance considerations that exist for critical datasets, Dataspaces gives data producers and consumers frictionless access to the data they need, when they need it, supporting better integration, discovery, and access, enhanced collaboration, and improved governance to boot.

This means that organisations can finally leverage an ecosystem of AI-centric data management tools that combine both traditional and new capabilities to prepare the enterprise for success in the era of decision intelligence. A great example of this is Novartis.

Recommendations for Data and AI Leaders

In summary, in order to ensure that AI programs are a success from the outset, organisations should take the following data-related steps:

  • Formalise both ‘data-centric AI’ and ‘AI-centric data’ as part of data management strategy with metadata and data fabric as key foundational components.
  • Set policy guardrails that include mandatory minimums about ‘data fitness’ for AI, to protect against bias, mislabelling, or irrelevance.
  • Define the appropriate formats, tools, and metrics for AI-centric data as early as possible, preventing the need to reconcile multiple data approaches as AI scales.
  • Seek diversity of data, algorithms, and people within the AI supply chain to ensure value is realised and ethical approaches are taken.
  • Establish roles and responsibilities to manage data in support of AI, leveraging AI engineering and data management expertise (internal and external) and approaches to support ongoing deployment and production uses of AI.

The next article will focus on how to increase the transparency and ‘explainability’ of AI systems in order to effectively remove bias within the data or the computational models – reducing the inherent risk in the process.

To learn more, visit HPE.

____________________________________

About Andrew P. Ayres MBA

Following a successful career with Gartner and Micro Focus – Andrew is now a Senior Specialist within HPE’s Enterprise Services practice in the UK – focusing on the Financial Services & Insurance industry. As a subject-matter expert in digital transformation, data-centric modernisation, cloud computing and artificial intelligence – Andrew helps bring together the best of HPE’s capabilities to ensure clients are future-fit and ready to meet the ever-changing needs of their customers. 
Andrew holds an MBA from Manchester Business School and is currently a PhD Researcher at Manchester Metropolitan University and his thesis centres on how Banks can govern against the risks posed by Artificial Intelligence in the context of their High Frequency Trading operations.
He is based in Manchester, UK


Read More from This Article: Don’t Fear Artificial Intelligence; Embrace it Through Data Governance
Source: News

Category: NewsApril 30, 2022
Tags: art

Post navigation

PreviousPrevious post:3 Keys for a Successful Transition from Assessment to Hybrid Cloud Business OfficeNextNext post:The Razor’s Edge, Episode 1: Modern Management

Related posts

IA segura y nube híbrida, el binomio perfecto para acelerar la innovación empresarial 
May 23, 2025
How IT and OT are merging: Opportunities and tips
May 23, 2025
The implementation failure still flying under the radar
May 23, 2025
보안 자랑, 잘못하면 소송감?···법률 전문가가 전하는 CISO 커뮤니케이션 원칙 4가지
May 23, 2025
“모델 연결부터 에이전트 관리까지” 확장 가능한 AI 표준을 위한 공개 프로토콜에 기대
May 23, 2025
AWS, 클라우드 리소스 재판매 제동···기업 고객에 미칠 영향은?
May 23, 2025
Recent Posts
  • IA segura y nube híbrida, el binomio perfecto para acelerar la innovación empresarial 
  • How IT and OT are merging: Opportunities and tips
  • The implementation failure still flying under the radar
  • 보안 자랑, 잘못하면 소송감?···법률 전문가가 전하는 CISO 커뮤니케이션 원칙 4가지
  • “모델 연결부터 에이전트 관리까지” 확장 가능한 AI 표준을 위한 공개 프로토콜에 기대
Recent Comments
    Archives
    • May 2025
    • April 2025
    • March 2025
    • February 2025
    • January 2025
    • December 2024
    • November 2024
    • October 2024
    • September 2024
    • August 2024
    • July 2024
    • June 2024
    • May 2024
    • April 2024
    • March 2024
    • February 2024
    • January 2024
    • December 2023
    • November 2023
    • October 2023
    • September 2023
    • August 2023
    • July 2023
    • June 2023
    • May 2023
    • April 2023
    • March 2023
    • February 2023
    • January 2023
    • December 2022
    • November 2022
    • October 2022
    • September 2022
    • August 2022
    • July 2022
    • June 2022
    • May 2022
    • April 2022
    • March 2022
    • February 2022
    • January 2022
    • December 2021
    • November 2021
    • October 2021
    • September 2021
    • August 2021
    • July 2021
    • June 2021
    • May 2021
    • April 2021
    • March 2021
    • February 2021
    • January 2021
    • December 2020
    • November 2020
    • October 2020
    • September 2020
    • August 2020
    • July 2020
    • June 2020
    • May 2020
    • April 2020
    • January 2020
    • December 2019
    • November 2019
    • October 2019
    • September 2019
    • August 2019
    • July 2019
    • June 2019
    • May 2019
    • April 2019
    • March 2019
    • February 2019
    • January 2019
    • December 2018
    • November 2018
    • October 2018
    • September 2018
    • August 2018
    • July 2018
    • June 2018
    • May 2018
    • April 2018
    • March 2018
    • February 2018
    • January 2018
    • December 2017
    • November 2017
    • October 2017
    • September 2017
    • August 2017
    • July 2017
    • June 2017
    • May 2017
    • April 2017
    • March 2017
    • February 2017
    • January 2017
    Categories
    • News
    Meta
    • Log in
    • Entries feed
    • Comments feed
    • WordPress.org
    Tiatra LLC.

    Tiatra, LLC, based in the Washington, DC metropolitan area, proudly serves federal government agencies, organizations that work with the government and other commercial businesses and organizations. Tiatra specializes in a broad range of information technology (IT) development and management services incorporating solid engineering, attention to client needs, and meeting or exceeding any security parameters required. Our small yet innovative company is structured with a full complement of the necessary technical experts, working with hands-on management, to provide a high level of service and competitive pricing for your systems and engineering requirements.

    Find us on:

    FacebookTwitterLinkedin

    Submitclear

    Tiatra, LLC
    Copyright 2016. All rights reserved.