Remove Deep Learning Remove Risk Management Remove Statistics Remove Strategy
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11 most in-demand gen AI jobs companies are hiring for

CIO Business Intelligence

Here are the top 11 roles companies are currently hiring for, or have plans to hire for, to directly address their emerging gen AI strategies. It’s a role that requires experience with natural language processing , coding languages, statistical models, and large language and generative AI models.

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Generative AI use cases for the enterprise

IBM Big Data Hub

Generative AI represents a significant advancement in deep learning and AI development, with some suggesting it’s a move towards developing “ strong AI.” Generative AI uses advanced machine learning algorithms and techniques to analyze patterns and build statistical models. Garbage in, garbage out.

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How Big Data Analytics & AI Combined can Boost Performance Immensely

Smart Data Collective

From the statistics shown, this means that both AI and big data have the potential to affect how we work in the workplace. By doing this, businesses can form their finance & marketing strategies with the new information they have gathered. As a result, it can improve how effective it is and help you set up better strategies.

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Why you should care about debugging machine learning models

O'Reilly on Data

In addition to newer innovations, the practice borrows from model risk management, traditional model diagnostics, and software testing. While our analysis of each method may appear technical, we believe that understanding the tools available, and how to use them, is critical for all risk management teams. What can you do?

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Automating Model Risk Compliance: Model Validation

DataRobot Blog

In this post, we will dive deeper into how members from both the first and second line of defense within a financial institution can adapt their model validation strategies in the context of modern ML methods. Furthermore, due to their relative simplicity in model structure, these models were very straightforward to interpret.

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Modeling 101: How It Works and Why It’s Important

Domino Data Lab

This change makes models the new currency of competitive advantage, strategy, and growth. Some popular tool libraries and frameworks are: Scikit-Learn: used for machine learning and statistical modeling techniques including classification, regression, clustering and dimensionality reduction and predictive data analysis.