Explainability refers to making AI outputs understandable to humans, a necessity for trust, compliance, and accountability. This episode explains why explainability is distinct from accuracy: a model may perform well statistically yet still fail if users cannot understand its reasoning. The discussion highlights regulatory drivers such as rights to explanation in data protection laws, ethical imperatives around transparency, and practical needs for debugging and bias detection. Without explainability, AI systems risk rejection by regulators, organizations, and the public.The episode explores examples across domains. Healthcare requires interpretable models to support clinician trust in diagnostic tools, while finance demands clear explanations of credit decisions to meet regulatory requirements. Generative models present new challenges where plausible but false outputs require users to understand limitations. Learners are also introduced to the concept of tailoring explanations to audiences, from technical staff to end-users. By the end, the importance of explainability as a safeguard for fairness, accountability, and adoption is clear. Produced by BareMetalCyber.com, where you’ll find more cyber audio courses, books, and information to strengthen your certification path.
No persons identified in this episode.
This episode hasn't been transcribed yet
Help us prioritize this episode for transcription by upvoting it.
Popular episodes get transcribed faster
Other recent transcribed episodes
Transcribed and ready to explore now
3ª PARTE | 17 DIC 2025 | EL PARTIDAZO DE COPE
01 Jan 1970
El Partidazo de COPE
Buchladen: Tipps für Weihnachten
20 Dec 2025
eat.READ.sleep. Bücher für dich
BOJ alza 25pb decennale sopra 2%, Oracle vola con accordo Tik Tok, 90 mld eurobond per Ucraina | Morning Finance
19 Dec 2025
Black Box - La scatola nera della finanza
365. The BEST advice for managing ADHD in your 20s ft. Chris Wang
19 Dec 2025
The Psychology of your 20s
LVST 19 de diciembre de 2025
19 Dec 2025
La Venganza Será Terrible (oficial)
Cuando la Ciencia Ficción Explicó el Mundo que Hoy Vivimos
19 Dec 2025
El Podcast de Marc Vidal