
#105 - AI, Ethics, and Insider Trades: The New Frontier of Investing
Failed to add items
Add to basket failed.
Add to Wish List failed.
Remove from Wish List failed.
Follow podcast failed
Unfollow podcast failed
-
Narrated by:
-
By:
About this listen
In this episode, we dive into the rapidly evolving world of investment through the lens of Artificial Intelligence and ethical accountability. From robo-advisors to predictive analytics, platforms like StockBrokers.com and Vyzer are revolutionizing how investors assess risk and make decisions—offering personalized, data-driven strategies once reserved for Wall Street elites.
But with great power comes great responsibility. The CFA Institute raises red flags about the ethical implications of AI in finance, spotlighting concerns around algorithmic bias, data integrity, and the need for transparent governance frameworks.
We then shift from theory to controversy, examining a real-world case of alleged insider trading involving Representative Mike Kelly’s wife. Drawing from Reddit threads and a House Committee on Ethics report, we unpack how political privilege and opaque financial disclosures threaten public trust.
Whether you're an investor, a tech enthusiast, or simply curious about the intersection of AI and ethics, this episode offers a thought-provoking look at the forces reshaping our financial future—and the accountability we demand from those who influence it.
Disclaimer: The information, views, comments, and opinions expressed on Podcast "Talking with AI ML" are generated by artificial intelligence and machine learning algorithms. Theinformation, views, comments, and opinions do not reflect the views or positions of the owner/creator(s) or any other party such as but not limited to any past, present, or future employers, organizations, or individuals and are providedfor entertainment purposes only. All content provided is for informational and entertainment purposes. The hosts, guests, and contributors (including creator) make no representations as to the accuracy, completeness, suitability, or validity of any information on this Podcast and will not be liable for any errors, omissions, or delays in this information or any losses, injuries, or damages arising from its use. This content is used under the doctrine of Fair Use, Public Domain, No Professional Advice, and External Links: ThePodcast may contain links to external websites that are not provided or maintained by or in any way affiliated with the Podcast. Please note that the Podcast does not guarantee the accuracy, relevance, timeliness, or completeness of anyinformation on these external websites.