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

Ensuring Diversity and Addressing Bias in Data and Software Development

Organizations are increasingly focused on diversity, equity, and inclusion in their hiring practices and workplace culture not only because it’s the right thing to do, but by not doing so, it can be detrimental to the business.

With software at the core of every business, and organizations deriving more value and insights from their data collected by the software, having non-diverse data sets and software can result in products and services that only cater to a specific group of people and under-serves another, or worse, harms them. The reality is that developers and data scientists encode their beliefs, conviction, and bias – most often unconsciously – in their data and when they design software.

We’ve already seen in real life the negative impacts of when data science and software development go unchecked without considering DE&I. For example, in an early attempt by Amazon to design a computer program to guide its hiring decisions, the company used submitted resumes from the previous decade as training data. Because most of these resumes came from men, the program taught itself that male candidates were preferable to women. While Amazon realized this tendency early on and never used the program to evaluate candidates, the example highlights how relying on biased data can reinforce inequality.

Ultimately, these issues come up not because of malicious intent but rather being “blind” or ignorant of all viewpoints and potential outcomes that groups of people experience differently. The best way to mitigate and avoid the problem is to have a team with a diverse representation spanning various professional backgrounds, genders, race, ethnicities, and so on. A diverse team can look at each stage of building and managing data pipelines (collecting, cleansing, etc.) and the software delivery process considering all kinds of outcomes.

While we are seeing developments and improvements in increasing diversity in data science and software roles, more needs to be done. A 2020 study in AI suggests that while data science is a rather new field and will take time to respond to diversity initiatives, some of the efforts to increase diversity in other tech fields may be succeeding. Over the past several years, numerous diverse conferences and coding events have been developed, with participation rates rapidly growing.

One of the first places to start is committing to hiring diverse candidates, and fostering an inclusive workplace culture that retains and ensures the ongoing development of diverse teams. Likewise, managers must ensure they create an inclusive and open culture that gives a voice to underrepresented talent.

From there, ensuring the integrity of your organization’s data and software delivery can start to take shape.

How to ensure the integrity of your data and its outcomes

As we know, the ramifications of biased data can impact society as a whole, so having the right data set and applying it correctly is important. Programmatically, software teams have a lifecycle that they follow – collecting the data, cleaning and classifying it, then writing code that uses that data, and testing it to deliver outcomes that meet business and customer needs. Having a diverse set of people working throughout every step of the lifecycle will help organizations avoid some of these pitfalls mentioned earlier.

Spending time on defining what’s a “good” data set that will deliver equitable outcomes is key to ensuring the integrity of your data. Specifically, when looking at a data set, teams should consider if the outcome can be detrimental or if there is anything to learn from it. They should ask questions like, what does good look like, where could there be biases, what populations can be harmed by this? If the data doesn’t represent the population, you can expect to get bad outcomes or output from that data set. Through the data collection process, make sure you’re collecting all viewpoints, not throwing away critical information, and feeding into the data with the notion of what will result in “good” outcomes.

The iterative nature of software development also gives teams the opportunity to continuously course correct as they see issues within the data, where data may be ‘contaminated’ with personal biases, and constantly adjust.

Addressing issues of unconscious bias at every stage of the product life cycle starting from strategy to product definition, requirements, user experience, engineering, and product marketing will ensure organizations are delivering software that meets more needs. Likewise, diverse teams working on data sets and software that’s equitable and more inclusive can drive innovation that creates competitive advantage, enhances the customer experience, and improves service quality – all of which can lead to greater business outcomes.

To learn more, visit us here.

Collaboration Software, IT Leadership


Read More from This Article: Ensuring Diversity and Addressing Bias in Data and Software Development
Source: News

Category: NewsAugust 12, 2022
Tags: art

Post navigation

PreviousPrevious post:CIO Leadership Live with Grant Anthony, CISO at Orion HealthNextNext post:The Role of Platform Teams in Accelerating Modernization and Multi-Cloud Journeys

Related posts

Barb Wixom and MIT CISR on managing data like a product
May 30, 2025
Avery Dennison takes culture-first approach to AI transformation
May 30, 2025
The agentic AI assist Stanford University cancer care staff needed
May 30, 2025
Los desafíos de la era de la ‘IA en todas partes’, a fondo en Data & AI Summit 2025
May 30, 2025
“AI 비서가 팀 단위로 지원하는 효과”···퍼플렉시티, AI 프로젝트 10분 완성 도구 ‘랩스’ 출시
May 30, 2025
“ROI는 어디에?” AI 도입을 재고하게 만드는 실패 사례
May 30, 2025
Recent Posts
  • Barb Wixom and MIT CISR on managing data like a product
  • Avery Dennison takes culture-first approach to AI transformation
  • The agentic AI assist Stanford University cancer care staff needed
  • Los desafíos de la era de la ‘IA en todas partes’, a fondo en Data & AI Summit 2025
  • “AI 비서가 팀 단위로 지원하는 효과”···퍼플렉시티, AI 프로젝트 10분 완성 도구 ‘랩스’ 출시
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.