Model Planning for Data Analytics Last Updated : 26 Apr, 2022 Summarize Comments Improve Suggest changes Share Like Article Like Report In this article, we are going to discuss model planning for data analytics in which we will cover all procedural steps one by one. Model planning is phase 3 of lifecycle phases of data analytics, where team determines methods, techniques, and workflow it intends to follow for subsequent model building phase. During this phase that team refers to hypothesis developed during discovery, where they first became acquainted with data and understanding business problems or domain area. Common Tools for the Model Planning Phase : R's - It is basic strength is the ease with which quality plots can be developed including mathematical formulas where needed. most famous use of SQL is as a base infrastructure to build its dashboards which are easy to use along with reporting tools. To create and interact with databases more rapidly, SQL has been adapted into a variety of tools, each with its own niche market including Microsoft Access and PostgreSQL. SQL - It is easily accessible, can be used to make complex models and quick analysis, and offers a deep ability for data manipulation. The SQL server monitoring section of application manager is in a table format which makes it easy to switch between live data screens and access of analytic features. Wide access to data through an intuitive interface, without considering that where it is stored. Easily access data with minimal knowledge of the data or the SQL required to surface it. Work effortlessly with seamless interfaces to loaders and utilizes without having detailed knowledge of each loader. Improved efficiency with basic storage options, including materialistic views, temporary tables and partitioned tables. Tableau Public - It is a freely available software that connects to any data source to corporate web-based data. It allows access to download the file in different formats. The data can be shared through social media. This is a very good data source if anyone wants to see the superiorness of tableau. SAS - It is a programming environment and language for data manipulation. SAS is easy to manage, access and is used to observe data from various sources. SAS organizes modules for web, social media, and marketing analytics used broadly in the customer prospect. It is also used to predict the customer's behaviours and communications. RapidMiner - It is a strongly integrated platform in data science that performs the predictive analysis. It contains advanced analytics like data mining, machine learning without any programming. The tool is very powerful that can generate analytics based on real-life data. Comment More infoAdvertise with us Next Article Data Modeling Techniques For Data Warehouse G goelaparna1520 Follow Improve Article Tags : DBMS DBMS-SQL data-science Similar Reads Fundamental Steps For a Data Analytics Project Plan It always seems hard to know where to start your data analytics project. At beginning of the projects, you always face some questions like What are the goals of the project? How to get familiar with the Data? What are the problems youâre trying to solve? What can be the possible solution? Which skil 5 min read Top 10 SQL Projects For Data Analysis SQL stands for Structured Query Language and is a standard database programming language that is used in data analysis and to access data in databases. It is a popular query language that is used in all types of devices. SQL is a fundamental tool for data scientists to extract, manipulate, and analy 9 min read Life Cycle Phases of Data Analytics In this article, we are going to discuss life cycle phases of data analytics in which we will cover various life cycle phases and will discuss them one by one. Data Analytics Lifecycle :The Data analytic lifecycle is designed for Big Data problems and data science projects. The cycle is iterative to 3 min read What is Data Analysis? Data analysis refers to the practice of examining datasets to draw conclusions about the information they contain. It involves organizing, cleaning, and studying the data to understand patterns or trends. Data analysis helps to answer questions like "What is happening" or "Why is this happening".Org 6 min read Data Modeling Techniques For Data Warehouse Data modeling is the process of designing a visual representation of a system or database to establish how data will be stored, accessed, and managed. In the context of a data warehouse, data modeling involves defining how different data elements interact and how they are organized for efficient ret 5 min read Dimensional Data Modeling Popular Schema - Star Schema, Snow Flake Schema Dimensional Data Modeling is one of the data modeling techniques used in data warehouse design. The concept of Dimensional Modeling was developed by Ralph Kimball which is comprised of facts and dimension tables. Since the main goal of this modeling i 5 min read Like