Data Analyst- | Business Intelligence | Python | Pandas |SQL
Data Analyst- | Business Intelligence | Python | Pandas |SQL, available at $54.99, has an average rating of 4.1, with 104 lectures, based on 12 reviews, and has 2051 subscribers.
You will learn about Data Querying Data manipulation Data Visualisation Data Cleansing Data Transformation This course is ideal for individuals who are Beginner Data Analyst or Beginner Data Scientist It is particularly useful for Beginner Data Analyst or Beginner Data Scientist.
Enroll now: Data Analyst- | Business Intelligence | Python | Pandas |SQL
Summary
Title: Data Analyst- | Business Intelligence | Python | Pandas |SQL
Price: $54.99
Average Rating: 4.1
Number of Lectures: 104
Number of Published Lectures: 104
Number of Curriculum Items: 104
Number of Published Curriculum Objects: 104
Original Price: $94.99
Quality Status: approved
Status: Live
What You Will Learn
- Data Querying
- Data manipulation
- Data Visualisation
- Data Cleansing
- Data Transformation
Who Should Attend
- Beginner Data Analyst
- Beginner Data Scientist
Target Audiences
- Beginner Data Analyst
- Beginner Data Scientist
The data analyst serves as a gatekeeper for an organization’s data so stakeholders can understand data and use it to make strategic business decisions.
Business intelligence (BI) helps organizations analyze historical and current data, so they can quickly uncover actionable insights for making strategic decisions. Business intelligence tools make this possible by processing large data sets across multiple sources and presenting findings in visual formats that are easy to understand and share.
There are four keys steps that business intelligence follows to transform raw data into easy-to-digest insights for everyone in the organization to use. The first three—data collection, analysis, and visualization—set the stage for the final decision-making step. Before using BI, businesses had to do much of their analysis manually, but BI tools automate many of the processes and save companies time and effort.
Step 1: Collect and transform data from multiple sources
Business intelligence tools typically use the extract, transform, and load (ETL) method to aggregate structured and unstructured data from multiple sources. This data is then transformed and remodeled before being stored in a central location, so applications can easily analyze and query it as one comprehensive data set.
Step 2: Uncover trends and inconsistencies
Data mining, or data discovery, typically uses automation to quickly analyze data to find patterns and outliers which provide insight into the current state of business. BI tools often feature several types of data modeling and analytics—including exploratory, descriptive, statistical, and predictive—that further explore data, predict trends, and make recommendations.
Step 3: Use data visualization to present findings
Business intelligence reporting uses data visualizations to make findings easier to understand and share. Reporting methods include interactive data dashboards, charts, graphs, and maps that help users see what’s going on in the business right now.
Business intelligence is applied differently from business to business and across a range of sectors—finance, retail and consumer goods, energy, technology, government, education, healthcare, manufacturing, and professional services. Here’s how business intelligence is being used by different industries to achieve success.
Power BI is a collection of software services, apps, and connectors that work together to turn your unrelated sources of data into coherent, visually immersive, and interactive insights. Your data may be an Excel spreadsheet, or a collection of cloud-based and on-premises hybrid data warehouses. Power BI lets you easily connect to your data sources, visualize and discover what’s important, and share that with anyone or everyone you want.
Python is an interpreted, object-oriented, high-level programming language with dynamic semantics. Its high-level built in data structures, combined with dynamic typing and dynamic binding, make it very attractive for Rapid Application Development, as well as for use as a scripting or glue language to connect existing components together. Python’s simple, easy to learn syntax emphasizes readability and therefore reduces the cost of program maintenance. Python supports modules and packages, which encourages program modularity and code reuse. The Python interpreter and the extensive standard library are available in source or binary form without charge for all major platforms, and can be freely distributed.
Pandas is an open-source python library that is used for data manipulation and analysis. It provides many functions and methods to speed up the data analysis process. It is one of the most important and useful tools in the arsenal of a Data Scientist and a Data Analyst.
Course Curriculum
Chapter 1: Power BI Setup & Overview
Lecture 1: Introduction
Lecture 2: What is Power BI
Lecture 3: Installing Office 365
Lecture 4: What is Power BI
Lecture 5: Power Desktop
Lecture 6: Installing Power BI Desktop
Lecture 7: Power BI Desktop Tour
Lecture 8: Power BI Overview : Part 1
Lecture 9: Power BI Overview : Part 2
Lecture 10: Power BI Overview : Part 3
Lecture 11: Components of Power BI
Lecture 12: Building blocks of Power BI
Lecture 13: Exploring Power BI Desktop Interface
Lecture 14: Exploring Power BI Service
Lecture 15: What are Power BI Apps
Chapter 2: Analyse & Visualize Web Based Data with Power BI
Lecture 1: Connecting to web based Data
Lecture 2: Clean and transform data – Part 1
Lecture 3: Clean and transform data – Part 2
Lecture 4: Combining Data Sources
Lecture 5: Creating visuals in Power BI – Part 1
Lecture 6: Creating visuals in Power BI – Part 2
Lecture 7: Publishing Report To Power BI Service
Chapter 3: Data Analysis on Databases with Power BI
Lecture 1: What is SQL Server
Lecture 2: Download SQL server
Lecture 3: Install SQL Server
Lecture 4: Download Sample Database
Lecture 5: Install SSMS
Lecture 6: Connect SSMS to SQL Server Database
Lecture 7: Connect Power BI to SQL Server
Lecture 8: What is PostgreSQL
Lecture 9: Install PostgreSQL
Lecture 10: Connecting to PostgreSQL Database Server
Lecture 11: Download Sample Database
Lecture 12: Connect to PostgreSQL Database Server with Power BI – Part 1
Lecture 13: Connect to PostgreSQL Database Server with Power BI – Part 2
Lecture 14: Import & transform data from access database file
Chapter 4: Transform & Analyse Data with Power BI
Lecture 1: Changing Locale
Lecture 2: Connecting to Microsoft Access Database File
Lecture 3: Power Query Editor and Queries
Lecture 4: Creating and Managing Query Groups
Lecture 5: Renaming Queries
Lecture 6: Splitting Columns
Lecture 7: Changing Data Types
Lecture 8: Removing and Reordering Columns
Lecture 9: Duplicating and Adding Columns
Lecture 10: Creating Conditional Columns
Lecture 11: Connecting to Files in a Folder
Lecture 12: Appending Queries
Lecture 13: Merging Queries
Lecture 14: Query Dependency View
Lecture 15: Transform Less Structured Data – Part 1
Lecture 16: Transform Less Structured Data – Part 2
Lecture 17: Creating Tables
Lecture 18: Query Parameters
Chapter 5: Data Analysis & Modelling with Power BI
Lecture 1: What is Data Modelling
Lecture 2: Creating & Managing Data Relationships
Lecture 3: Creating Calculated Column
Lecture 4: Optimizing Models for Reporting
Lecture 5: Optimizing Models for Reporting: Part 2
Lecture 6: Time Intelligence
Lecture 7: Applying Filters on Visuals
Chapter 6: Python | Jupyter Notebook Server Setup
Lecture 1: What is Python
Lecture 2: What is Jupyter Notebook
Lecture 3: Installing Jupyter Notebook Server
Lecture 4: Running Jupyter Notebook
Lecture 5: Jupyter Notebook Commands
Lecture 6: Jupyter Notebook Components
Lecture 7: Jupyter Notebook Dashboard
Lecture 8: Jupyter Notebook User Interface
Lecture 9: Create a new Jupyter Notebook
Chapter 7: Data Analysis & Visualization with Python |Pandas
Lecture 1: Using Kaggle Data Sets
Lecture 2: Tabular Data
Lecture 3: Exploring Pandas DataFrame
Lecture 4: Manipulating Pandas DataFrame
Lecture 5: What is data cleaning
Lecture 6: Implementing Data Cleaning
Lecture 7: What is Data Visualization
Lecture 8: Qualitative Data Visualization
Lecture 9: Quantitative Data Visualization
Chapter 8: Data Analysis with SQL and PostgreSQL
Lecture 1: What is SQL
Lecture 2: Basic Database Concepts
Lecture 3: Query all data from a table
Lecture 4: Query data from specific columns in a table
Lecture 5: Filtering Data
Lecture 6: Sorting Data
Lecture 7: Sub Queries
Lecture 8: Using Comparison Operators
Lecture 9: Using OR Operator
Lecture 10: Using AND Operator
Lecture 11: Using Combined OR | AND Operators
Lecture 12: Using Between Operator
Lecture 13: Using NOT Between Operator
Instructors
-
Bluelime Learning Solutions
Making Learning Simple
Rating Distribution
- 1 stars: 1 votes
- 2 stars: 0 votes
- 3 stars: 3 votes
- 4 stars: 2 votes
- 5 stars: 6 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
You may also like
- Digital Marketing Foundation Course
- Google Shopping Ads Digital Marketing Course
- Multi Cloud Infrastructure for beginners
- Master Lead Generation: Grow Subscribers & Sales with Popups
- Complete Copywriting System : write to sell with ease
- Product Positioning Masterclass: Unlock Market Traction
- How to Promote Your Webinar and Get More Attendees?
- Digital Marketing Courses
- Create music with Artificial Intelligence in this new market
- Create CONVERTING UGC Content So Brands Will Pay You More
- Podcast: The top 8 ways to monetize by Podcasting
- TikTok Marketing Mastery: Learn to Grow & Go Viral
- Free Digital Marketing Basics Course in Hindi
- MailChimp Free Mailing Lists: MailChimp Email Marketing
- Automate Digital Marketing & Social Media with Generative AI
- Google Ads MasterClass – All Advanced Features
- Online Course Creator: Create & Sell Online Courses Today!
- Introduction to SEO – Basic Principles of SEO
- Affiliate Marketing For Beginners: Go From Novice To Pro
- Effective Website Planning Made Simple