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27 JULY 2023 DAILY CURRENT AFFAIRS SSC RAILWAYS CDS UPSC

Bengal BJP MLA Bishnu Pada Roy dies at 61 MLA of  Bharatiya Janata Party from Dhupguri, Bishnu Pada Roy, who was suffering from a lung infection died at the age of 61. He was elected as Member of Parliament in 13th, 15th and 16th Lok Sabha representing Andaman and Nicobar Islands constituency in the years 1999, 2009 and 2014, respectively. He was a hardworking legislator who made many efforts to fulfil people's aspirations. He also worked hard to strengthen @BJP4Bengal. WHO identifies first case of MERS-CoV in UAE this year The World Health Organization has identified a case of Middle East Respiratory Syndrome Coronavirus (MERS-CoV) in a 28-year-old male from United Arab Emirates MERS-CoV is a viral respiratory infection caused by a coronavirus known as MERS The infection is transmitted to humans through direct or indirect contact with dromedary camels, which are the natural host and zoonotic source of the MERS-CoV infection. The symptoms include: Fever, Cough, Shortness of breath 
Introduction In today's technology-driven world, the demand for data analytics professionals has been skyrocketing. The field of data analytics has become a critical component of the IT industry, helping organizations make data-driven decisions, uncover valuable insights, and gain a competitive edge. For individuals looking to make a career switch, data analytics presents an exciting opportunity to enter the dynamic and rapidly growing IT sector. The Rise of Data Analytics in the IT Industry Data analytics has emerged as a key discipline within the IT industry due to the vast amount of data generated by organizations and the need to extract actionable insights from it. Companies across various sectors are leveraging data analytics to improve their operations, enhance customer experiences, optimize processes, and drive innovation. As a result, there is a tremendous demand for skilled professionals who can harness the power of data and translate it into meaningful business solutions.

Descriptive vs. Predictive vs. Prescriptive Analytics

Descriptive, predictive, and prescriptive analytics are three types of data analytics that are used to gain insights from data. Here's a brief overview of each type: Descriptive Analytics: Descriptive analytics deals with understanding what happened in the past. It involves analyzing historical data to gain insights into trends, patterns, and relationships. Descriptive analytics can help answer questions like "What happened?" and "How did it happen?" Let's say you run an e-commerce store and you want to understand your customers' behavior. Descriptive analytics would involve analyzing your historical sales data to gain insights into things like customer demographics, purchasing patterns, and buying habits. For example, you might use descriptive analytics to identify which products are the most popular, which customers are the most valuable, and which marketing campaigns are the most effective. Predictive Analytics: Predictive analytics deals with under

CHAT GPT

Introduction CHAT GPT (Generative Pre-trained Transformer 3) is an artificial intelligence language model developed by OpenAI. It is a large-scale deep learning model trained on vast amounts of data, which allows it to generate human-like responses to text-based queries. CHAT GPT has advanced capabilities in natural language processing (NLP) and can understand and generate text in a wide range of contexts, making it a valuable tool for a variety of applications. Who invented Chat GPT? CHAT GPT (Generative Pre-trained Transformer 3) was developed by OpenAI, an artificial intelligence research organization founded in 2015 by a group of technology leaders including Elon Musk, Sam Altman, and Greg Brockman. The development of CHAT GPT was led by a team of researchers at OpenAI, including Alec Radford, Jeff Wu, Rewon Child, David Luan, Dario Amodei, and Ilya Sutskever, among others. The first version of CHAT GPT was released in 2018, and subsequent versions with increased capabilities have

What is Data Analytics? Definition, Types, Methods, Examples & Tool

Data analytics is the process of examining and interpreting large sets of data to uncover insights, trends, and patterns. It involves collecting, cleaning, transforming, and modeling data to identify useful information for decision-making. Types of Data Analytics: Descriptive Analytics: Examines past data to understand what happened and why it happened. Diagnostic Analytics: Analyzes past data to identify the causes of an event or problem. Predictive Analytics: Uses statistical models and machine learning algorithms to forecast future outcomes. Prescriptive Analytics: Recommends actions to achieve a desired outcome based on predictive analytics. Methods of Data Analytics: Statistical Analysis: Uses statistical methods to analyze data and make inferences. Machine Learning: Uses algorithms to identify patterns and make predictions based on data. Data Mining: Uses statistical and machine learning techniques to identify patterns in data. Examples of Data Analytics: Marketing: Analyz

Unraveling the Science of Data: A Comprehensive Guide for Beginners to Understand Data Science and Machine Learning

The science of data is an ever-evolving field that holds much promise for the future. With the rise of automation and the increasing complexity of data, it’s becoming increasingly important to understand how to use data and make sense of it. This guide will help beginners learn the basics of data science and machine learning. By the end, you’ll have a better understanding of how data works, how it can be used to solve problems, and how you can use it to your advantage. Introduction to Data Science Data science is the process of collecting, organizing, and analyzing data to draw meaningful insights and conclusions. It is used to gain a better understanding of the data and to make decisions based on the information. Data science is the foundation for many of today’s technologies, from machine learning to artificial intelligence. Data science has been used to analyze large datasets and uncover patterns and trends. It can be used to identify customer behavior, detect fraud, and improve pro