
#68 The Future of Responsible AI
08/09/21 • 45 min
In this episode of DataFramed, Adel speaks with Maria Luciana Axente, Responsible AI and AI for Good Lead at PwC UK on the state and future of responsible AI.Throughout the episode, Maria talks about her background, the differences & intersections between "AI ethics" and "Responsible AI", the state of responsible AI adoption within organizations, the link between responsible AI and organizational culture, what data scientists can do today to ensure they're part of their organization's responsible AI journey, and more. Relevant links from the interview:
- Connect with Maria on LinkedIn
- Kate Crawford's Atlas of AI
- 9 Ethical AI Principles for Organizations to Follow
- PwC's Responsible AI Toolkit
- Read our Data Literacy for Responsible AI White Paper
In this episode of DataFramed, Adel speaks with Maria Luciana Axente, Responsible AI and AI for Good Lead at PwC UK on the state and future of responsible AI.Throughout the episode, Maria talks about her background, the differences & intersections between "AI ethics" and "Responsible AI", the state of responsible AI adoption within organizations, the link between responsible AI and organizational culture, what data scientists can do today to ensure they're part of their organization's responsible AI journey, and more. Relevant links from the interview:
- Connect with Maria on LinkedIn
- Kate Crawford's Atlas of AI
- 9 Ethical AI Principles for Organizations to Follow
- PwC's Responsible AI Toolkit
- Read our Data Literacy for Responsible AI White Paper
Previous Episode

#67 Operationalizing Machine Learning with MLOps
In this episode of DataFramed, Adel speaks with Alessya Visnjic, CEO and co-founder of WhyLabs, an AI Observability company on a mission to build the interface between AI and human operators. Throughout the episode, Alessya talks about the unique challenges data teams face when operationalizing machine learning that spurred the need for MLOps, how MLOps intersects and diverges with different terms such as DataOps, ModelOps, and AIOps, how and when organizations should get started on their MLOps journey, the most important components of a successful MLOps practice, and more.
Relevant links from the interview:
- Connect with Alessya on LinkedIn
- Andrew Ng on the important of being data-centric
- Joe Reis on the data culture and all things data
- whylogs: the standard for data logging — please send you feedback, contribute, help us build integrations into your favorite data tools and extend the concept of logging to new data types. Join the effort of building a new open standard for data logging!
- Try the WhyLabs platform
Next Episode

#69 Effective Data Storytelling: How to Turn Insights into Action
In this episode of DataFramed, we speak with Brent Dykes, Senior Director of Insights & Data Storytelling at Blast Analytics and author of Effective Data Storytelling: How to Turn Insights into Action on how data storytelling is shaping the analytics space.
Throughout the episode, Brent talks about his background, what made him write a book on effective data storytelling, how data storytelling is often misinterpreted and misused, the psychology of storytelling and how humans are shaped to resonate with it, the role of empathy when creating data stories, the blueprint of a successful data story, what data scientists can do to become better data storytellers, the future of augmented analytics and data storytelling, and more.
Relevant links from the interview:
If you like this episode you’ll love
Episode Comments
Generate a badge
Get a badge for your website that links back to this episode
<a href="https://goodpods.com/podcasts/dataframed-190599/68-the-future-of-responsible-ai-17656095"> <img src="https://storage.googleapis.com/goodpods-images-bucket/badges/generic-badge-1.svg" alt="listen to #68 the future of responsible ai on goodpods" style="width: 225px" /> </a>
Copy