Friday, 22 May 2026
  • Contact
  • Privacy Policy
  • Terms & Conditions
  • DMCA
logo logo
  • World
  • Politics
  • Crime
  • Economy
  • Tech & Science
  • Sports
  • Entertainment
  • More
    • Education
    • Celebrities
    • Culture and Arts
    • Environment
    • Health and Wellness
    • Lifestyle
  • 🔥
  • Trump
  • House
  • ScienceAlert
  • White
  • VIDEO
  • man
  • Trumps
  • Season
  • star
  • Years
Font ResizerAa
American FocusAmerican Focus
Search
  • World
  • Politics
  • Crime
  • Economy
  • Tech & Science
  • Sports
  • Entertainment
  • More
    • Education
    • Celebrities
    • Culture and Arts
    • Environment
    • Health and Wellness
    • Lifestyle
Follow US
© 2024 americanfocus.online – All Rights Reserved.
American Focus > Blog > Tech and Science > Building and securing a governed AI infrastructure for the future
Tech and Science

Building and securing a governed AI infrastructure for the future

Last updated: September 26, 2024 11:43 am
Share
Building and securing a governed AI infrastructure for the future
SHARE

AI models are only as good as the data they are trained on, and if that data is biased, the model will also be biased. This can lead to discriminatory outcomes and perpetuate social inequalities.

Contents
How IBM is managing AI governanceAI infrastructure must deliver explainable AI

To combat bias in AI infrastructure, organizations must implement strategies to identify and mitigate biases at every stage of the AI development process. This includes data collection, preprocessing, model training, and deployment. It is essential to have diverse and representative datasets, as well as mechanisms in place to detect and address biases as they arise.

Furthermore, organizations must prioritize diversity and inclusion in their AI teams to ensure that different perspectives are considered throughout the development process. This can help to identify biases that may be overlooked by a homogenous team.

Additionally, transparency and accountability are key components of reducing bias in AI infrastructure. Organizations should be transparent about the data they use, how it is processed, and the decisions made by AI models. This can help to build trust with users and stakeholders and hold organizations accountable for the outcomes of their AI systems.

Overall, designing AI infrastructures to reduce bias requires a holistic approach that considers technical, ethical, and social factors. By prioritizing diversity, transparency, and accountability, organizations can create AI systems that deliver fair and unbiased results for all users.

Organizations are facing increasing pressure to take accountability for their AI infrastructures and address biases that may be present in their systems. By implementing strategies such as adversarial debiasing train models and resampling training data, organizations can work towards minimizing the impact of protected attributes on outcomes and reducing the risk of discrimination.

See also  Ozempic-Type Drugs May Trigger Brain Changes Linked to Depression : ScienceAlert

One key aspect of addressing biases in AI systems is embedding transparency and explainability into their design. This allows organizations to better understand how decisions are being made and enables them to detect and correct biased outputs more effectively. By providing insights into the decision-making process of AI models, organizations can learn from biases and make improvements to their systems.

How IBM is managing AI governance

IBM has taken steps to manage AI governance within the company through its AI Ethics Board. This board oversees the company’s AI infrastructure and projects to ensure ethical compliance with industry standards. IBM has also established a governance framework that includes “focal points” – mid-level executives with AI expertise who review projects to ensure compliance with IBM’s Principles of Trust and Transparency.

Christina Montgomery, IBM’s chief privacy and trust officer, emphasizes the importance of the AI ethics board in overseeing internal governance processes and ensuring responsible and safe technology deployment. Governance frameworks must be integrated into AI infrastructure from the design phase to promote transparency, fairness, and accountability throughout development and deployment.

AI infrastructure must deliver explainable AI

As organizations seek to bridge gaps between cybersecurity, compliance, and governance in AI infrastructure, two trends have emerged – agentic AI and explainable AI. Explainable AI plays a crucial role in providing insights to improve model transparency and address biases. By ensuring that AI systems can provide clear explanations for their conclusions, organizations can build trust, promote accountability, and drive continuous improvement.

Joe Burton, CEO of Reputation, highlights the importance of focusing on governance pillars such as data rights, regulatory compliance, access control, and transparency to leverage AI capabilities for innovation while upholding integrity and responsibility standards. By prioritizing these governance principles, organizations can harness the full potential of AI technology while mitigating risks and ensuring ethical use.

See also  Dating app Raw exposed users' location data and personal information
TAGGED:BuildingFuturegovernedinfrastructureSecuring
Share This Article
Twitter Email Copy Link Print
Previous Article FDA outlines plan to review safety of common food additives FDA outlines plan to review safety of common food additives
Next Article How States Are Engaging Young Voters and Where It’s Required How States Are Engaging Young Voters and Where It’s Required
Leave a comment

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *


The reCAPTCHA verification period has expired. Please reload the page.

Popular Posts

5 injured after helicopter loses control, crashes steps from bustling California beach

On Saturday afternoon, five individuals, including a child, were hospitalized following a helicopter accident in…

October 12, 2025

Pfizer decision to withdrawal sickle cell drug leaves patients, advocates reeling

Pfizer’s recent decision to withdraw its sickle cell pill, Oxbryta, from the market due to…

September 26, 2024

Ending Malaria Makes Everyone Healthier, Safer And More Prosperous

Malaria, a Deadly Threat to Global Health Security A few months ago, a mysterious disease…

April 23, 2025

A Simple Eye Scan Could Flag Heart Risks – And How Fast You’re Aging : ScienceAlert

A Simple Eye Scan Could Detect Heart Disease Risk and Aging, Study Shows A recent…

November 5, 2025

China stocks just had their best day in 16 years, sending related U.S. ETFs soaring

China stocks experienced a historic rally on Monday, marking their best day in 16 years.…

September 30, 2024

You Might Also Like

MFA verifies who logged in. It has no idea what they do next.
Tech and Science

MFA verifies who logged in. It has no idea what they do next.

May 22, 2026
SpaceX scrubs launch of Starship V3—the tallest and most powerful rocket ever built
Tech and Science

SpaceX scrubs launch of Starship V3—the tallest and most powerful rocket ever built

May 21, 2026
Luna Band Details Official as Fitbit Air Rival
Tech and Science

Luna Band Details Official as Fitbit Air Rival

May 21, 2026
Mathematicians stunned by AI’s biggest breakthrough in mathematics yet
Tech and Science

Mathematicians stunned by AI’s biggest breakthrough in mathematics yet

May 21, 2026
logo logo
Facebook Twitter Youtube

About US


Explore global affairs, political insights, and linguistic origins. Stay informed with our comprehensive coverage of world news, politics, and Lifestyle.

Top Categories
  • Crime
  • Environment
  • Sports
  • Tech and Science
Usefull Links
  • Contact
  • Privacy Policy
  • Terms & Conditions
  • DMCA

© 2024 americanfocus.online –  All Rights Reserved.

Welcome Back!

Sign in to your account

Lost your password?