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Creating a Simple Z-test Calculator using Streamlit

Analytics Vidhya

This article was published as a part of the Data Science Blogathon. Statistics plays an important role in the domain of Data Science. It is a significant step in the process of decision making, powered by Machine Learning or Deep Learning algorithms.

Testing 301
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Bringing an AI Product to Market

O'Reilly on Data

Product Managers are responsible for the successful development, testing, release, and adoption of a product, and for leading the team that implements those milestones. In this article, we turn our attention to the process itself: how do you bring a product to market? Identifying the problem. The AI Product Development Process.

Marketing 362
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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.

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3 Key Components of the Interdisciplinary Field of Data Science

Domino Data Lab

Through a marriage of traditional statistics with fast-paced, code-first computer science doctrine and business acumen, data science teams can solve problems with more accuracy and precision than ever before, especially when combined with soft skills in creativity and communication. Math and Statistics Expertise.

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Data science vs. machine learning: What’s the difference?

IBM Big Data Hub

Areas making up the data science field include mining, statistics, data analytics, data modeling, machine learning modeling and programming. Ultimately, data science is used in defining new business problems that machine learning techniques and statistical analysis can then help solve.

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Why you should care about debugging machine learning models

O'Reilly on Data

This article is meant to be a short, relatively technical primer on what model debugging is, what you should know about it, and the basics of how to debug models in practice. In addition to newer innovations, the practice borrows from model risk management, traditional model diagnostics, and software testing.

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Data Drift Detection for Image Classifiers

Domino Data Lab

This article covers how to detect data drift for models that ingest image data as their input in order to prevent their silent degradation in production. In the context of machine learning, we consider data drift 1 to be the change in model input data that leads to a degradation of model performance. Detecting image drift. References.