Artwork

Contenido proporcionado por Razorleaf Corp.. Todo el contenido del podcast, incluidos episodios, gráficos y descripciones de podcast, lo carga y proporciona directamente Razorleaf Corp. o su socio de plataforma de podcast. Si cree que alguien está utilizando su trabajo protegido por derechos de autor sin su permiso, puede seguir el proceso descrito aquí https://es.player.fm/legal.
Player FM : aplicación de podcast
¡Desconecta con la aplicación Player FM !

#45: Data Quality and AI

33:07
 
Compartir
 

Manage episode 433959711 series 3521267
Contenido proporcionado por Razorleaf Corp.. Todo el contenido del podcast, incluidos episodios, gráficos y descripciones de podcast, lo carga y proporciona directamente Razorleaf Corp. o su socio de plataforma de podcast. Si cree que alguien está utilizando su trabajo protegido por derechos de autor sin su permiso, puede seguir el proceso descrito aquí https://es.player.fm/legal.

In this insightful episode of Razorleaf's "Stay Sharp" podcast, hosts Jen Ferello and Jonathan Scott delve into the foundational topic of data quality in the realm of Artificial Intelligence (AI). They explore why high-quality data is crucial for AI algorithms and discuss key factors that determine data reliability and relevance. This episode is a must-listen for anyone in the digital engineering and manufacturing space looking to understand the importance of data quality in AI.

Key Discussion Points:

The Role of Data Quality in AI:

  • Importance of having accurate and precise data.
  • The old adage: "Garbage in, garbage out."

Foundational Aspects:

  • Training and validating AI models.
  • Ensuring the first step is correct to avoid compounding errors.

Data Relevance and Reliability:

  • Selecting relevant data for training AI models.
  • Avoiding the inclusion of outdated or irrelevant data.

Challenges in Data Quality:

  • Understanding data behavior across different departments.
  • Avoiding biases and ensuring comprehensive data integration.

Maintaining Data Integrity:

  • Regularly updating and securing data.
  • Ensuring regulatory compliance and avoiding bad data input.

Building Trust in AI:

  • Creating transparency in AI processes.
  • Building user trust through consistent and reliable data outputs.

Future Applications:

  • Practical applications in the Product Lifecycle Management (PLM) community.
  • Importance of getting ready for AI advancements by focusing on data quality.

Thank you for joining us on this episode of "Stay Sharp with Razorleaf." We hope this conversation has provided you with valuable insights into the importance of data quality in AI and how to ensure your data is reliable and relevant for AI applications. Until next time, stay sharp!

Music is considered “royalty-free” and discovered on Story Blocks.
Technical Podcast Support by Jon Keur at Wayfare Recording Co.
© 2024 Razorleaf Corp. All Rights Reserved.

  continue reading

48 episodios

Artwork
iconCompartir
 
Manage episode 433959711 series 3521267
Contenido proporcionado por Razorleaf Corp.. Todo el contenido del podcast, incluidos episodios, gráficos y descripciones de podcast, lo carga y proporciona directamente Razorleaf Corp. o su socio de plataforma de podcast. Si cree que alguien está utilizando su trabajo protegido por derechos de autor sin su permiso, puede seguir el proceso descrito aquí https://es.player.fm/legal.

In this insightful episode of Razorleaf's "Stay Sharp" podcast, hosts Jen Ferello and Jonathan Scott delve into the foundational topic of data quality in the realm of Artificial Intelligence (AI). They explore why high-quality data is crucial for AI algorithms and discuss key factors that determine data reliability and relevance. This episode is a must-listen for anyone in the digital engineering and manufacturing space looking to understand the importance of data quality in AI.

Key Discussion Points:

The Role of Data Quality in AI:

  • Importance of having accurate and precise data.
  • The old adage: "Garbage in, garbage out."

Foundational Aspects:

  • Training and validating AI models.
  • Ensuring the first step is correct to avoid compounding errors.

Data Relevance and Reliability:

  • Selecting relevant data for training AI models.
  • Avoiding the inclusion of outdated or irrelevant data.

Challenges in Data Quality:

  • Understanding data behavior across different departments.
  • Avoiding biases and ensuring comprehensive data integration.

Maintaining Data Integrity:

  • Regularly updating and securing data.
  • Ensuring regulatory compliance and avoiding bad data input.

Building Trust in AI:

  • Creating transparency in AI processes.
  • Building user trust through consistent and reliable data outputs.

Future Applications:

  • Practical applications in the Product Lifecycle Management (PLM) community.
  • Importance of getting ready for AI advancements by focusing on data quality.

Thank you for joining us on this episode of "Stay Sharp with Razorleaf." We hope this conversation has provided you with valuable insights into the importance of data quality in AI and how to ensure your data is reliable and relevant for AI applications. Until next time, stay sharp!

Music is considered “royalty-free” and discovered on Story Blocks.
Technical Podcast Support by Jon Keur at Wayfare Recording Co.
© 2024 Razorleaf Corp. All Rights Reserved.

  continue reading

48 episodios

Todos los episodios

×
 
Loading …

Bienvenido a Player FM!

Player FM está escaneando la web en busca de podcasts de alta calidad para que los disfrutes en este momento. Es la mejor aplicación de podcast y funciona en Android, iPhone y la web. Regístrate para sincronizar suscripciones a través de dispositivos.

 

Guia de referencia rapida