7 Unknown SAS Popularity in Data Science Secrets The languages that data scientists utilize the most are R and Python. However, SAS is the third most used technology in data science. Today, SAS is in high demand across the pharmaceutical and healthcare industries. It has a simple syntax and great statistical capabilities. Statistical Analysis Systems is the abbreviation for SAS. A strong programming language is SAS. Procedures are the names given to the language's building blocks. The procedures carry out a variety of tasks, such as various forms of analysis, data management tasks, and the production of various sorts of output for text-based and graphical presentations. SAS can be carried into numerous computing environments. All systems use SAS exactly the same way, except for an interactive window feature. Not all platforms can use this SAS functionality.
Top 7 SAS Features These are the seven salient characteristics of SAS that make it so well-liked in the field of data science:
1. Excellent data analysis skills The first SAS feature is that, as will be covered later, SAS Programming is capable of performing strong data analysis. ●
●
It's like full-featured software for data analysis. It has analytical skills that vary from basic statistics to sophisticated levels. For instance, it creates bar graphs using the data given to determine a link between intricate SAS data sets. The built-in libraries in SAS are its best feature. These contain all the necessary packages required for evaluating and reporting data. (Refer to the data science course for a detailed explanation of SAS for data analysis.)
2. 4th generation flexible programming language (4GL) The fact that SAS is a 4GL programming language is its key characteristic. ● ● ●
Learning SAS syntax is simple. Statements are like code. The systems are given instructions clearly and concisely through these assertions. With its built-in libraries, SAS has reduced code for popular applications. It gives us the chance to modularize our work. It is simple to use even for non-programmers. An interactive language is SAS. Its log pane functions as a mirror that continuously instructs the user. It makes notes and indicates errors.
●
Additionally, it has DS2, which facilitates data manipulation. The positioning of complex data in the database allows for its manipulation.
3. In SAS Studio Any web browser and any device can readily access it. No client installation is necessary. Any web browser can access all libraries and data files of the SAS software. ●
● ●
It has an instructional quality. As soon as one starts typing, the autocomplete feature suggests various actions. For additional assistance, a pop-up syntax and parameter list are displayed. Additionally, it makes it easier to add and develop unique code snippets and add them to the snippet library. The interface, which we may use to point and click, leads us through different layers of the analytic process.
4. Support for Numerous Data Formats ● ● ●
Any type of file, in any format, even those with missing data, can have data read using the SAS language. SQL is supported by SAS. It includes a sizable character encoding database and offers complete support for the most regularly used languages. For SAS to work with data in several languages, it also preserves code singularity.
5. Management The analytics environment is managed, monitored, and alerted by the SAS environment manager. ● SAS Management Console's Extended Java Graphical User Interface manages SAS tasks. ● In restart mode, we can also entirely run a failed application. It picks up right where the program left off. ● The XML engine performs a wide range of tasks, including creating XML Maps and importing and exporting XML documents. ● The Application Response Measurement interface scans various apps and verifies that transactions are available.
6. Format for Report Output ● ● ●
●
SAS offers a variety of reporting options as well as the ability to display analytical results. High-quality graphics in Base SAS 9.4 include ODS statistical graphics, ODS Graphics Designer and Editor, etc. Reports can be created and saved in common formats like RTF, PowerPoint, and PDF. They can be saved as ebooks and I-books as well. We have the luxury of visual analytics, thanks to it. The hierarchy of the customers' wants can be taken into account while customizing the result. The output can be transferred to other locations.
7. Encryption Algorithms for data ●
SAS ensures that security is upheld regardless of how access is granted. A security feature in SAS 9.4 is called SAS/SECURE. SAS data on drives can also be encrypted using a variety of methods.
Conclusion: An all-inclusive toolkit for any statistical work is SAS Programming. Additionally, it offers service support across all platforms. It is secure and adaptable to a variety of devices thanks to its encryption feature. The libraries in SAS have all we need for generic analysis. To learn more about SAS for data analysis, feel free to explore the data science course in Mumbai.