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6 AI tools revolutionizing data analysis: Unleashing the best in business

Data Science Dojo

In recent years, there has been a growing interest in the use of artificial intelligence (AI) for data analysis. AI tools can automate many of the tasks involved in data analysis, and they can also help businesses to discover new insights from their data.

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Top 10 Machine Learning (ML) Tools for Developers in 2023

Towards AI

In the rapidly expanding field of artificial intelligence (AI), machine learning tools play an instrumental role. Already a multi-billion-dollar industry, AI is having a profound impact on every aspect of life, business, and society. These tools are becoming increasingly sophisticated, enabling the development of advanced applications.

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How LLMs are Transforming Bot Building, Botnet Detection at Scale, and Declarative ML for Engineers

ODSC - Open Data Science

5 Industries Using Synthetic Data in Practice Here’s an overview of what synthetic data is and a few examples of how various industries have benefited from it. Hands-on Data-Centric AI: Data Preparation Tuning — Why and How? Here’s how. Learn more here. Learn more here.

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Philips accelerates development of AI-enabled healthcare solutions with an MLOps platform built on Amazon SageMaker

AWS Machine Learning Blog

One of the key drivers of Philips’ innovation strategy is artificial intelligence (AI), which enables the creation of smart and personalized products and services that can improve health outcomes, enhance customer experience, and optimize operational efficiency.

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Classification in ML: Lessons Learned From Building and Deploying a Large-Scale Model

The MLOps Blog

As Data Scientists, we all have worked on an ML classification model. In this article, we will talk about feasible techniques to deal with such a large-scale ML Classification model. In this article, you will learn: 1 What are some examples of large-scale ML classification models? Let’s take a look at some of them.

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Sales Prediction| Using Time Series| End-to-End Understanding| Part -2

Towards AI

Last Updated on July 19, 2023 by Editorial Team Author(s): Yashashri Shiral Originally published on Towards AI. Data Preparation — Collect data, Understand features 2. Visualize Data — Rolling mean/ Standard Deviation— helps in understanding short-term trends in data and outliers.

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How Vericast optimized feature engineering using Amazon SageMaker Processing

AWS Machine Learning Blog

For any machine learning (ML) problem, the data scientist begins by working with data. This includes gathering, exploring, and understanding the business and technical aspects of the data, along with evaluation of any manipulations that may be needed for the model building process.

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