A dataset is a collection of data, usually in 2-D format. Columns correspond to features, and rows correspond to the instance in the elements described. Therefore, a dataset is a collection of cases, each related using the same features. For example, an mpg dataset has instances with different cars. For each, its mpg is provided along with its weight, horsepower, cylinders, and so forth.
A dataset may also be an unspecified reference to a collection of data, including texts and numbers. However, a dataset is also a preferred term when referring to a specific collection of raw materials ordered according to some organizing principle.
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What are the five best datasets for data science?
Table of Contents
Machine learning repository: UCI
The UCI Machine Learning Repository is considered the oldest form of open data set and is based on gatherings of databases, domain segments, domain theories, and data collectors that are used by the machine learning people or community for the perfect analysis of machine learning resources.
The UC Irvine Machine Learning Repository is one of the oldest and most popular data repositories. It indexes around 500 datasets and is heavily used in CS research–the number of times the UCI repository has been cited in scholarly research would place it in the top 100 most cited CS research papers of all time. The archive of UCI was created as an FTP archive in 1987 by David Aha and fellow graduate students at UC Irvine.
Big Query public datasets: Google Cloud
Google Cloud (also called Google Cloud Platform or GCP) is a computer platform for developing, deploying, and running web applications. Its cloud architecture hosts applications such as Google Workplace (previously G Suite and, before that, Google Apps). GCP is primarily a service for building and maintaining unique apps, which may subsequently be published through the Web from its hyper-scale data center facilities.
Google Cloud Vs. Google Cloud Platform
Google Cloud is a collection of internet-based services that can assist businesses in becoming more digital. Google Cloud Platform is a component of Google Cloud, which provides public cloud infrastructure for running web-based applications.
Physical hardware infrastructure — computers, hard disks, solid-state drives, and networking — is contained in Google’s globally scattered data centers, with any components custom constructed.
This resource distribution has various advantages, including redundancy in the event of a failure and reduced latency by placing resources closer to customers. This release also presents some guidelines for combining resources.
The following are some of the other Google Cloud services:
- Google Workspace (formerly known as G suite or Google apps) is Organizational identity management; Gmail and collaboration capabilities are all included in this offering.
- Android and Chrome OS have enterprise editions, and users can connect to web-based applications using these phone and laptop operating systems.
- Machine learning and corporate mapping services application programming interfaces (APIs). These allow the software to communicate with one another.
Public datasets: GitHub
GitHub is a platform for hosting and managing software development projects. It is a popular platform among developers and is used for version control and collaboration on software projects. GitHub allows users to create their repositories (or “repos”) for their projects, where they can track and manage changes to their code over time.
GitHub is primarily a web platform that hosts code repositories and distributed version control. Today, almost every developer working on a group project or individually uses GitHub as the most important tool due to its capability of making version control easier.
GitHub is a valuable resource for developers and is widely used in the software development industry. GitHub provides developers with an essential tool that helps in best code practices; on the other hand, it does help in showcasing your recent work. If you want any changes in code, it tracks every step as it becomes easy for the developer. It also offers a range of features and tools to help developers collaborate on projects, such as bug tracking, project management, and team communication.
Web date: Amazon reviews
An Amazon review is a customer’s written opinion of a product or service they have purchased on Amazon.com. Spend less. Smile more. Amazon reviews are critical because they provide potential customers with valuable information about a product or service. They can also help to build trust and credibility for a business. Amazon reviews can be positive or negative, and businesses should aim to get as many positive reviews as possible.
In today’s times, people rely on reviews, and where Amazon brings the concept of online reviews. Word of mouth is a different perspective, but you can read reviews all over the app buyers. It is an excellent source for people to trust and brand to grow, but some reviews tend to be fake and grow the brand product.
Data text search: Google
Google is a multinational, publicly-traded organization built by a set of companies surrounded by a famous search engine market. Google’s other enterprises include Internet analytics, cloud computing, advertising technologies, web app, browser, and operating system development.
Google uses a computer program called a ‘web crawler’ that looks at the billions of websites available on the World Wide Web and examines their content to find ‘keywords.’ Then it indexes these to make the websites easier for the search engine to find. So if you type the word ‘holidays’ in the search box, for instance, Google will show you all the websites with holiday information.
So far, you have gone through the best five high-quality datasets of data science. This article represents data sets from various markets, such as product ratings, search engines, etc.
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