Algorithm Integrity Matters: for Financial Services leaders, to enhance fairness and accuracy in data processing cover art

Algorithm Integrity Matters: for Financial Services leaders, to enhance fairness and accuracy in data processing

Algorithm Integrity Matters: for Financial Services leaders, to enhance fairness and accuracy in data processing

Written by: Risk Insights: Yusuf Moolla
Listen for free

About this listen

Insights for financial services leaders who want to enhance fairness and accuracy in their use of data, algorithms, and AI.

Each episode explores challenges and solutions related to algorithmic integrity, including discussions on navigating independent audits.

The goal of this podcast is to give leaders the knowledge they need to ensure their data practices benefit customers and other stakeholders, reducing the potential for harm and upholding industry standards.

© 2025 Risk Insights Pty. Ltd.
Economics Management Management & Leadership
Episodes
  • Article 29. Algorithmic System Integrity: Explainability (Part 6) - Interpretability
    Dec 22 2025

    Spoken by a human version of this article.

    TL;DR (TL;DL?)

    • Technical stakeholders need detailed explanations.
    • Non-technical stakeholders need plain language.
    • Visuals, layering, literacy, and feedback are among the techniques we can use.

    To subscribe to the weekly articles: https://riskinsights.com.au/blog#subscribe

    About this podcast

    A podcast for Financial Services leaders, where we discuss fairness and accuracy in the use of data, algorithms, and AI.

    Hosted by Yusuf Moolla.
    Produced by Risk Insights (riskinsights.com.au).

    Show More Show Less
    4 mins
  • Article 28. Algorithmic System Integrity: Explainability (Part 5) - Privacy and Confidentiality
    Dec 21 2025

    Spoken by a human version of this article.

    TL;DR (TL;DL?)

    • Algorithmic systems create challenges in balancing explainability with privacy and confidentiality.
    • Key challenges include protecting sensitive information, preserving proprietary algorithms, and securing fraud detection systems.
    • Focusing on what audiences need, with a few specific considerations, can help address these.

    To subscribe to the weekly articles: https://riskinsights.com.au/blog#subscribe

    About this podcast

    A podcast for Financial Services leaders, where we discuss fairness and accuracy in the use of data, algorithms, and AI.

    Hosted by Yusuf Moolla.
    Produced by Risk Insights (riskinsights.com.au).

    Show More Show Less
    5 mins
  • Article 27. Algorithmic System Integrity: Explainability (Part 4)
    Dec 20 2025

    Spoken by a human version of this article.

    TL;DR (TL;DL?)

    • Explainability is necessary to build trust in AI systems.
    • There is no universally accepted definition of explainability.
    • So we focus on key considerations that don't require us to select any particular definition.

    To subscribe to the weekly articles: https://riskinsights.com.au/blog#subscribe

    About this podcast

    A podcast for Financial Services leaders, where we discuss fairness and accuracy in the use of data, algorithms, and AI.

    Hosted by Yusuf Moolla.
    Produced by Risk Insights (riskinsights.com.au).

    Show More Show Less
    4 mins
No reviews yet