Remove AI Modeling Remove Data Quality Remove Responsible AI
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How IBM and AWS are partnering to deliver the promise of responsible AI

IBM Journey to AI blog

A robust framework for AI governance The combination of IBM watsonx.governance™ and Amazon SageMaker offers a potent suite of governance, risk management and compliance capabilities that streamline the AI model lifecycle. In highly regulated industries like finance and healthcare, AI models must meet stringent standards.

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Considerations for addressing the core dimensions of responsible AI for Amazon Bedrock applications

AWS Machine Learning Blog

The rapid advancement of generative AI promises transformative innovation, yet it also presents significant challenges. Concerns about legal implications, accuracy of AI-generated outputs, data privacy, and broader societal impacts have underscored the importance of responsible AI development.

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AI Bias & Cultural Stereotypes: Effects, Limitations, & Mitigation

Unite.AI

In this article, we’ll look at what AI bias is, how it impacts our society, and briefly discuss how practitioners can mitigate it to address challenges like cultural stereotypes. What is AI Bias? AI bias occurs when AI models produce discriminatory results against certain demographics.

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How data stores and governance impact your AI initiatives

IBM Journey to AI blog

The tasks behind efficient, responsible AI lifecycle management The continuous application of AI and the ability to benefit from its ongoing use require the persistent management of a dynamic and intricate AI lifecycle—and doing so efficiently and responsibly.

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Step-by-step guide: Generative AI for your business

IBM Journey to AI blog

Data Scientists will typically help with training, validating, and maintaining foundation models that are optimized for data tasks. Data Engineer: A data engineer sets the foundation of building any generating AI app by preparing, cleaning and validating data required to train and deploy AI models.

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Daniel Cane, Co-CEO and Co-Founder of ModMed – Interview Series

Unite.AI

AI has the opportunity to significantly improve the experience for patients and providers and create systemic change that will truly improve healthcare, but making this a reality will rely on large amounts of high-quality data used to train the models. Why is data so critical for AI development in the healthcare industry?

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Ryan Kolln, CEO at Appen – Interview Series

Unite.AI

There are major growth opportunities in both the model builders and companies looking to adopt generative AI into their products and operations. We feel we are just at the beginning of the largest AI wave. Data quality plays a crucial role in AI model development.