小程序
传感搜
传感圈

Top Programming Languages For Data Science In 2022

2022-09-09
关注

Illustration: © IoT For All

The position of data scientist did not even exist a few decades ago. The data was already organized, cleaned, and subjected to analyses by employees. However, data scientists in the modern era have outstanding skills in high demand by businesses. Given their strength and complexity, the most popular data science programming languages should be understood by anyone who wishes to participate in this expanding field and become a data science professional. Today, keeping up with the most recent developments in the tech sector is essential. It is quite challenging to choose the top programming language for data science because there are so many of them. We will discuss each one and why they are the most popular programming languages for data science.

'Given their strength and complexity, the most popular data science programming languages should be understood by anyone who wishes to participate in this expanding field and become a data science professional.' -LearnbayClick To Tweet

Top Programming Languages

#1: Java

Today, the most widely used and well-liked programming language is Java. It is also regarded as one of the most popular languages for data analytics. Because of the Java Virtual Machine technology, the language is particularly simple to implement on several systems. The Java Virtual Machine is used extensively in the open-source big data stack.

Some Java advantages include:

  • User-friendly
  • Portable and automated memory management for quick debugging
  • Ability to design visually engaging content
  • Many libraries, including the Java Machine Learning Library, are supported by Java

#2: C++

The year 1983 saw the creation of C++ by Bjarne Stroustrup. It is also known as “the fastest programming language,” which is one of the main reasons it is widely utilized for the creation of desktop applications, video games, and search engines. Google Chrome, for example, is based on C++.

Because C++ offers a faster response time, it is employed for applications where development time is extremely important. The main applications of this C++ data science include the development of sophisticated goods like cloud systems, business software, and banking software.

#3: Python

Python is the most widely-used programming language for data science due to its scalability, flexibility, and simplicity. It contains very little coding and easy syntax. It also provides a large number of libraries that are always accessible.

Python is open source and can be changed in any way that programmers deem necessary. This language, which is regarded as the best for data science, is always evolving to improve performance and make the syntax clearer. It works nicely with different programming languages and is platform-neutral. This general-purpose, high-level programming language is primarily used in data science and provides a staggering array of specialized libraries. Some of the powerful Python libraries, all of which can be learned in a data science course, are: 

  • Numpy
  • Pandas
  • Scikit Learn
  • Matplotlib

#4: SQL and NoSQL

Relational databases can be queried, handled, and processed with the use of SQL, or Structured Query Language. A NoSQL database stores unstructured data in the form of a document. NoSQL databases require a proprietary language different from SQL for querying.

#5: R

This programming language’s syntax and organizational structure handle the analytical tasks. It is one of the most alluring programming languages for businesses because of its ability to manage enormous and complicated data volumes. It includes packages that guarantee easier management of the analysis. These are a few of the packages:

  • Ggplot2
  • Dplyr 

The Best of the Best

As you can see, there are only a few programming languages to know for data science. Each is important to understand fully, but several are more in demand than others. Out of the five programming languages discussed, we conclude that Python, R, and SQL are the most desirable in 2022.

Tweet

Share

Share

Email

  • Big Data
  • Data Analytics

  • Big Data
  • Data Analytics
  • Data Scientist

参考译文
2022年数据科学的顶级编程语言
几十年前,数据科学家这个职位甚至还不存在。这些数据已经被整理、清理,并由员工进行分析。然而,现代的数据科学家拥有企业高要求的杰出技能。考虑到它们的强度和复杂性,任何希望参与这一不断扩展的领域并成为数据科学专业人员的人都应该理解最受欢迎的数据科学编程语言。如今,跟上科技领域的最新发展至关重要。选择顶级的数据科学编程语言是相当具有挑战性的,因为有太多的语言。我们将讨论每一种语言,以及为什么它们是数据科学中最受欢迎的编程语言。今天,使用最广泛、最受欢迎的编程语言是Java。它也被认为是最受欢迎的数据分析语言之一。由于使用了Java虚拟机技术,该语言特别容易在多个系统上实现。Java虚拟机广泛应用于开源大数据栈中。Java的一些优势包括:Bjarne Stroustrup在1983年创建了c++。它也被称为“最快的编程语言”,这是它被广泛用于创建桌面应用程序、视频游戏和搜索引擎的主要原因之一。例如,谷歌Chrome就是基于c++的。因为c++提供了更快的响应时间,它被用于开发时间极其重要的应用程序。这门c++数据科学的主要应用包括复杂商品的开发,如云系统、商业软件和银行软件。Python由于其可伸缩性、灵活性和简单性,是数据科学中使用最广泛的编程语言。它包含很少的编码和简单的语法。它还提供了大量始终可访问的库。Python是开源的,可以按照程序员认为必要的任何方式进行修改。这种语言被认为是数据科学中最好的语言,它一直在改进性能,使语法更清晰。它可以很好地与不同的编程语言一起工作,并且是平台无关的。这种通用的高级编程语言主要用于数据科学,并提供了大量的专用库。一些强大的Python库(所有这些库都可以在数据科学课程中学习)是:关系数据库可以使用SQL或结构化查询语言进行查询、处理和处理。NoSQL数据库以文档的形式存储非结构化数据。NoSQL数据库在进行查询时需要一种不同于SQL的专有语言。这种编程语言的语法和组织结构处理分析任务。它是最吸引企业的编程语言之一,因为它能够管理巨大而复杂的数据量。它包括保证更容易管理分析的包。这是其中的几个包:正如您所看到的,对于数据科学,只需要了解几种编程语言。充分理解每一种都很重要,但有几种比其他更受欢迎。在讨论的五种编程语言中,我们认为Python、R和SQL是2022年最理想的。
您觉得本篇内容如何
评分

相关产品

Fluke 福禄克 8808A 数字电流表

编程语言/模式:简化的ASCI,Fluke 45。安全等级EN61010-1 I类1000 V,II类600 V万用表类型=工作台最大直流电流测量值=10A DC最大交流电流测量值=10A AC校准值=RSCAL最大交流电压测量值=750V AC最大电阻测量值

评论

您需要登录才可以回复|注册

提交评论

提取码
复制提取码
点击跳转至百度网盘