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  • Coursera
    • Adobe
      • Adobe Content Creator
        • Course 1: Design Fundamentals
        • Course 2: Social Media Content and Strategy
        • Course 3: Multimedia Content Creation
        • Course 4: Generative AI Content Creation
      • Adobe Graphic Designer
        • Course 1: Design Fundamentals
        • Course 2: Generative AI Content Creation
        • Course 3: Image Editing
        • Course 4: Graphic Design
        • Course 5: Document Design
    • Amazon
      • Amazon Junior Software Developer
        • Course 1: Introduction to Software Development
        • Course 2: Programming with Java
        • Course 3: Data Structures and Algorithms
        • Course 4: Database Management with Java and SQL
        • Course 5: Full Stack Web Development
        • Course 6: Generative AI in Software Development
        • Course 7: Application Development
    • AWS
      • AWS Cloud Technology Consultant
        • Course 1: Introduction to Information Technology and AWS Cloud
        • Course 2: AWS Cloud Technical Essentials
        • Course 3: Providing Technical Support for AWS Workloads
        • Course 4: Developing Applications in Python on AWS
        • Course 5: Skills for Working as an AWS Cloud Consultant
        • Course 6: DevOps on AWS and Project Management
        • Course 7: Automation in the AWS Cloud
        • Course 8: Data Analytics and Databases on AWS
      • AWS Cloud Support Associate
        • Course 1: Introduction to Information Technology and AWS Cloud
        • Course 2: AWS Cloud Technical Essentials
        • Course 3: Skills and Best Practices for Cloud Support Associates
        • Course 4: Cloud Support Essentials: A Technical Approach
        • Course 5: Automation in the AWS Cloud
        • Course 6: Python for Serverless Applications and Automation on AWS
        • Course 7: Capstone: Preparing to work as a Cloud Support Associate
      • AWS Cloud Solutions Architect
        • Course 2: Architecting Solutions on AWS
        • Course 3: Building Data Lakes on AWS
        • Course 4: Exam Prep: AWS Certified Solutions Architect – Associate
        • Course 1: AWS Cloud Technical Essentials
    • Board Infinity
      • .NET FullStack Developer Specialization
        • Course 1 – .Net Full Stack Foundation
        • Course 2 – Frontend Development using React
        • Course 3 – Backend Development for .Net Full Stack
      • Java Full Stack Developer Specialization
        • Course 1 – Fundamentals of Java Programming
        • Course 2 – Frontend for Java Full Stack Development
        • Course 3 – Data Structures & Backend with Java
    • DeepLearning.AI
      • Deep Learning Specialization
        • Course 1 – Neural Networks and Deep Learning
        • Course 2 – Improving Deep Neural Networks: Hyperparameter Tuning, Regularization and Optimization
        • Course 3 – Structuring Machine Learning Projects
        • Course 4 – Convolutional Neural Networks
        • Course 5 – Sequence Models
    • Google
      • Google Data Analytics
        • Course 1: Foundations: Data, Data, Everywhere
        • Course 2: Ask Questions to Make Data-Driven Decisions
        • Course 3: Prepare Data for Exploration
        • Course 4: Process Data from Dirty to Clean​
        • Course 5: Analyze Data to Answer Questions
        • Course 6: Share Data Through the Art of Visualization
        • Course 7: Data Analysis with R Programming
        • Course 8: Google Data Analytics Capstone: Complete a Case Study
      • Google Cybersecurity
        • Course 1 – Foundations of Cybersecurity
        • Course 2 – Play It Safe: Manage Security Risks
        • Course 3 – Connect and Protect: Networks and Network Security
        • Course 4 – Tools of the Trade: Linux and SQL
        • Course 5 – Assets, Threats, and Vulnerabilities
        • Course 6 – Sound the Alarm: Detection and Response
        • Course 7 – Automate Cybersecurity Tasks with Python
        • Course 8 – Put It to Work: Prepare for Cybersecurity Jobs
      • Google Project Management
        • Course 1: Foundations of Project Management
        • Course 2: Project Initiation: Starting a Successful Project
        • Course 3: Project Planning: Putting It All Together
        • Course 4: Project Execution: Running the Project
        • Course 5: Agile Project Management
        • Course 6: Capstone: Applying Project Management in the Real World
      • Google Digital Marketing & E-commerce
        • Course 2: Attract and Engage Customers with Digital Marketing
        • Course 6: Make the Sale: Build, Launch, and Manage E-commerce Stores
        • Course 7: Satisfaction Guaranteed: Develop Customer Loyalty Online
        • Course 3: From Likes to Leads: Interact with Customers Online
        • Course 4: Think Outside the Inbox: Email Marketing
        • Course 5: Assess for Success: Marketing Analytics and Measurement
        • Course 1: Foundations of Digital Marketing and E-commerce
      • Google Advanced Data Analytics
        • Course 3 – Go Beyond the Numbers: Translate Data into Insights
          • Week 2 – Explore raw data
          • Week 3 – Clean your data
          • Week 1 – Find and share stories using data
          • Week 4 – Data visualizations and presentations
          • Week 5 – Assess your Course 3 end-of-course project
        • Course 6 – The Nuts and Bolts of Machine Learning
          • Week 1 – The different types of machine learning
          • Week 2 – Workflow for building complex models
          • Week 3 – Unsupervised learning techniques
          • Week 4 – Tree-based modeling
          • Week 5 – Assess your Course 6 end-of-course project
        • Course 2 – Get Started with Python
          • Week 2 – Functions and conditional statements
          • Week 3 – Loops and strings
          • Week 4 – Data structures in Python
          • Week 5 – Course 2 end-of-course project
          • Week 1 – Hello, Python!
        • Course 1 – Foundations of Data Science
          • Week 3 – Your career as a data professional
          • Week 4 – Data applications and workflow
          • Week 5 – Assess your Course 1 end-of-course project
          • Week 1 – Introduction to data science concepts
          • Week 2 – The impact of data today
        • Course 5 – Regression Analysis: Simplify Complex Data Relationships
          • Week 1 – Introduction to complex data relationships
          • Week 2 – Simple linear regression
          • Week 3 – Multiple linear regression
          • Week 4 – Advanced hypothesis testing
          • Week 5 – Logistic regression
          • Week 6 – Course 5 end-of-course project
        • Course 4 – The Power of Statistics
          • Week 1 – Introduction to statistics
          • Week 2 – Probability
          • Week 3 – Sampling
          • Week 5 – Introduction to hypothesis testing
          • Week 6 – Course 4 end-of-course project
          • Week 4 – Confidence intervals
      • Google IT Support
        • Course 2: The Bits and Bytes of Computer Networking
          • Module 1: Introduction to Networking
          • Module 2: The Network Layer
          • Module 3: The Transport and Application Layers
          • Module 4: Networking Services
          • Module 5: Connecting to the Internet
          • Module 6: Troubleshooting and the Future of Networking
        • Course 1: Technical Support Fundamentals
          • Module 6: Troubleshooting
          • Module 1: Introduction to IT
          • Module 2: Hardware
          • Module 3: Operating System
          • Module 4: Networking
          • Module 5: Software
      • Google Business Intelligence
        • Course 2 – The Path to Insights: Data Models and Pipelines
          • Week 4 – Course 2 end-of-course project
          • Week 2 – Dynamic database design
          • Week 3 – Optimize ETL processes
          • Week 1 – Data models and pipelines
        • Course 3 -Decisions, Decisions: Dashboards and Reports
          • Week 3 – Automate and monitor
          • Week 4 – Present business intelligence insights
          • Week 5 – Course 3 end-of-course project
          • Week 2 – Visualize results
          • Week 1 – Business intelligence visualizations
        • Course 1 – Foundations of Business Intelligence
          • Week 4 – Course 1 end-of-course project
          • Week 1 – Data-driven results through business intelligence
          • Week 2 – Business intelligence tools and techniques
          • Week 3 – Context is crucial for purposeful insights
      • Google UX Design
        • Course 1: Foundations of User Experience (UX) Design
          • Module 1: Introducing user experience design
    • IBM
      • IBM Data Analytics with Excel and R
        • Course 2: Excel Basics for Data Analysis
          • Module 1: Introduction to Data Analysis Using Spreadsheets
          • Module 4: Analyzing Data Using Spreadsheets
          • Module 2: Getting Started with Using Excel Speadsheets
          • Module 3: Cleaning & Wrangling Data Using Spreadsheets
        • Course 3: Data Visualization and Dashboards with Excel and Cognos
          • Module 1: Visualizing Data Using Spreadsheets
          • Module 2: Creating Visualizations and Dashboards with Spreadsheets
          • Module 3: Creating Visualizations and Dashboards with Cognos Analytics
        • Course 6: SQL for Data Science with R
          • Module 2: Introduction to Relational Databases and Tables
          • Module 6: Course Project
          • Module 3: Intermediate SQL
          • Module 4: Getting Started with Databases using R
          • Module 5: Working with Database Objects using R
          • Module 1: Getting Started with SQL
        • Course 8: Data Visualization with R
          • Module 3: Dashboards
          • Module 1: Introduction to Data Visualization
          • Module 2: Basic Plots, Maps, and Customization
          • Module 4: Final Assignment
        • Course 9: Data Science with R – Capstone Project
          • Module 5: Building a R Shiny Dashboard App
          • Module 4: Predictive Analysis
          • Module 1: Capstone Overview and Data Collection
          • Module 2: Data Wrangling
          • Module 3: Performing Exploratory Data Analysis with SQL, Tidyverse & ggplot2
        • Course 5: Introduction to R Programming for Data Science
          • Module 1: R Basics
          • Module 2: Common Data Structures
          • Module 3: R Programming Fundamentals
          • Module 4: Working with Data
          • Module 5: Final Project
        • Course 1: Introduction to data analytics
          • Module 2: The Data Ecosystem
          • Module 3: Gathering and Wrangling Data
          • Module 4: Mining & Visualizing Data and Communicating Results
          • Module 5: Career Opportunities and Data Analysis in Action
          • Module 1: What is Data Analytics
        • Course 7: Data Analysis with R
          • Module 4: Model Development in R
          • Module 5: Model Evaluation
          • Module 6: Project
          • Module 1: Introduction to Data Analysis with R
          • Module 2: Data Wrangling
          • Module 3: Exploratory Data Analysis
      • IBM Data Science
        • Course 6 – Databases and SQL for Data Science with Python
          • Week 1 – Getting Started with SQL
          • Week 2 – Introduction to Relational Databases and Tables
          • Week 3 – Intermediate SQL
          • Week 4 – Accessing Databases using Python
          • Week 5 – Course Assignment
          • Week 6 – Bonus Module: Advanced SQL for Data Engineering (Honors)
        • Course 3 – Data Science Methodology
          • Week 1 – From Problem to Approach and From Requirements to Collection
          • Week 2 – From Understanding to Preparation and From Modeling to Evaluation
          • Week 3 – From Deployment to Feedback
        • Course 7 – Data Analysis with Python
          • Week 6 – Final Assignment
          • Week 4 – Model Development
          • Week 5 – Model Evaluation
          • Week 1 – Importing Datasets
          • Week 2 – Data Wrangling
          • Week 3 – Exploratory Data Analysis
        • Course 1 – What is Data Science?
          • Week 3 – Data Science in Business
          • Week 1 – Defining Data Science and What Data Scientists Do
          • Week 2 – Data Science Topics
        • Course 5 – Python Project for Data Science
          • Week 1 – Crowdsourcing Short squeeze Dashboard
        • Course 2 – Tools for Data Science
          • Week 2 – Languages of Data Science
          • Week 5 – RStudio & GitHub
          • Week 6 – Create and Share your Jupyter Notebook
          • Week 7 – [Optional] IBM Watson Studio
          • Week 1 – Overview of Data Science Tools
          • Week 3 – Packages, APIs, Datasets and Models
          • Week 4 – Jupyter Notebooks and JupyterLab
        • Course 10 – Applied Data Science Capstone
          • Week 1 – Introduction
          • Week 2 – Exploratory Data Analysis (EDA)
          • Week 3 – Interactive Visual Analytics and Dashboard
          • Week 4 – Predictive Analysis (Classification)
        • Course 9 – Machine Learning with Python
          • Week 2 – Regression
          • Week 3 – Classification
          • Week 4 – Linear Classification
          • Week 5 – Clustering
          • Week 6 – Final Exam and Project
          • Week 1 – Introduction to Machine Learning
        • Course 8 – Data Visualization with Python
          • Week 1 – Introduction to Data Visualization Tools
          • Week 2 – Basic and Specialized Visualization Tools
          • Week 3 – Advanced Visualizations and Geospatial Data
          • Week 4 – Creating Dashboards with Plotly and Dash
          • Week 5 – Final Project and Exam
        • Course 4: Python for Data Science, AI & Development
          • Module 4: Working with Data in Python
          • Module 1: Python Basics
          • Module 2: Python Data Structures
          • Module 3: Python Programming Fundamentals
          • Module 5: APIs and Data Collection
      • IBM Data Analyst
        • Course 3 – Data Visualization and Dashboards with Excel and Cognos
          • Week 2 – Creating Visualizations and Dashboards with Spreadsheets
          • Week 1 – Visualizing Data Using Spreadsheets
          • Week 3 – Creating Visualizations and Dashboards with Cognos Analytics
        • Course 1 – Introduction to Data Analytics
          • Week 3 – Gathering and Wrangling Data
          • Week 4 – Mining & Visualizing Data and Communicating Results
          • Week 5 – Career Opportunities and Data Analysis in Action
          • Week 1 – What is Data Analytics
          • Week 2 – The Data Ecosystem
        • Course 9 – IBM Data Analyst Capstone Project
          • Week 3 – Exploratory Data Analysis
          • Week 2 – Data Wrangling
          • Week 1 – Data Collection
          • Week 4 – Data Visualization
        • Course 8 – Data Visualization with Python
          • Week 1 – Introduction to Data Visualization Tools
          • Week 3 – Advanced Visualizations and Geospatial Data
          • Week 4 – Creating Dashboards with Plotly and Dash
          • Week 5 – Final Project and Exam
          • Week 2 – Basic and Specialized Visualization Tools
        • Course 7 – Data Analysis with Python
          • Week 6 – Final Assignment
          • Week 5 – Model Evaluation
          • Week 4 – Model Development
          • Week 2 – Data Wrangling
          • Week 1 – Importing Datasets
          • Week 3 – Exploratory Data Analysis
        • Course 6 – Databases and SQL for Data Science with Python
          • Week 5 – Course Assignment
          • Week 6 – Bonus Module: Advanced SQL for Data Engineering (Honors)
          • Week 1 – Getting Started with SQL
          • Week 2 – Introduction to Relational Databases and Tables
          • Week 3 – Intermediate SQL
          • Week 4 – Accessing Databases using Python
        • Course 4: Python for Data Science, AI & Development
          • Module 3: Python Programming Fundamentals
          • Module 2: Python Data Structures
          • Module 1: Python Basics
          • Module 4: Working with Data in Python
          • Module 5: APIs and Data Collection
        • Course 2 – Excel Basics for Data Analysis
          • Week 1 – Introduction to Data Analysis Using Spreadsheets
          • Week 4 – Analyzing Data Using Spreadsheets
          • Week 2 – Getting Started with Using Excel Speadsheets
          • Week 3 – Cleaning & Wrangling Data Using Spreadsheets
        • Course 5 – Python Project for Data Science
          • Week 1 – Crowdsourcing Short squeeze Dashboard
      • IBM Generative AI Engineering
        • Course 3: Generative AI: Prompt Engineering Basics
          • Module 2: Prompt Engineering: Techniques and Approaches
          • Module 3: Course Quiz, Project, and Wrap-up
          • Module 1: Prompt Engineering for Generative AI
        • Course 4: Python for Data Science, AI & Development
          • Module 5: APIs and Data Collection
          • Module 1: Python Basics
          • Module 2: Python Data Structures
          • Module 3: Python Programming Fundamentals
          • Module 4: Working with Data in Python
        • Course 2: Generative AI: Introduction and Applications
          • Module 1: Introduction and Capabilities of Generative AI
          • Module 2: Applications and Tools of Generative AI 
          • Module 3: Course Quiz, Project, and Wrap-up
        • Course 1: Introduction to Artificial Intelligence (AI)
          • Module 1: Introduction and Applications of AI
          • Module 3: Business and Career Transformation Through AI
          • Module 2: AI Concepts, Terminology, and Application Domains
          • Module 4: Issues, Concerns, and Ethical Considerations
      • Key Technologies for Business
        • Course 1: Introduction to Cloud Computing
          • Week 1 – Overview of Cloud Computing
          • Week 2 – Cloud Computing Models
          • Week 3 – Components of Cloud Computing
          • Week 4 – Emergent Trends and Practices
          • Week 5 – Cloud Security, Monitoring, Case Studies, Jobs
          • Week 6 – Final Project and Assignment
        • Course 2: Introduction to Artificial Intelligence (AI)
          • Week 3 – AI: Issues, Concerns and Ethical Considerations
          • Week 4 – The Future with AI, and AI in Action
          • Week 1 – What is AI? Applications and Examples of AI
          • Week 2 – AI Concepts, Terminology, and Application Areas
        • Course 3: What is Data Science?
          • Week 3 – Data Science in Business
          • Week 1 – Defining Data Science and What Data Scientists Do
          • Week 2 – Data Science Topics
    • Meta
      • Meta AR Developer
        • Course 3 – AR for web using JavaScript
          • Week 1 – Basics of Web AR development
          • Week 2 – Javascript in PlayCanvas
          • Week 3 – Content development and integration
          • Week 4 – Creating an AR learning experience with PlayCanvas
        • Course 2 – AR in marketing using Meta Spark
          • Week 3 – Meta Spark pro
          • Week 4 – Game creation in Meta Spark
          • Week 1 – Meta Spark Quick Start
          • Week 2 – Meta Spark fundamentals
        • Course 5 – Using AR Foundation in Unity
          • Week 1 – Say hello to AR in Unity
          • Week 2 – AR Foundation marker-based game creation
          • Week 3 – Create your first AR game using AR Foundation
          • Week 4 – Finish and deploy your first AR game using AR Foundation
        • Course 6 – AR games using Vuforia SDK
          • Week 2 – Use plane detection to build a portal to an AR world
          • Week 3 – Create an AR game using Vuforia
          • Week 4 – Finish and deploy your AR game built with Vuforia
          • Week 1 – Introduction to Vuforia and plane detection in Unity
        • Course 1 – Foundations of AR
          • Week 2 – AR technologies and capabilities
          • Week 1 – Introduction to AR
          • Week 3 – Computer vision
          • Week 4 – AR software development lifecycle
        • Course 4 – Unity and C# basics
          • Week 4 – C# and basic gameplay
          • Week 1 – Introduction to Unity
          • Week 2 – Asset creation and player controls
          • Week 3 – C# basics in Unity
      • Meta Front-End Developer
        • Course 3 – Version Control
          • Week 3 – Working with Git
          • Week 4 – Graded Assessment
          • Week 1 – Software collaboration
          • Week 2 – Command Line
        • Course 4 – HTML and CSS in depth
          • Week 1 – HTML in depth
          • Week 2 – Interactive CSS
        • Course 6 – Advanced React
          • Week 4 – Final project
          • Week 1 – Components
          • Week 2 – React Hooks and Custom Hooks
          • Week 3 – JSX and testing
        • Course 1 – Introduction to Front-End Development
          • Week 3 – UI Frameworks
          • Week 1 – Get started with web development
          • Week 2 – Introduction to HTML and CSS
          • Week 4 – End-of-Course Graded Assessment
        • Course 8 – Front-End Developer Capstone
          • Week 1 – Starting the project
          • Week 2 – Project foundations
          • Week 3 – Project functionality
          • Week 4 – Project Assessment
        • Course 2 – Programming with JavaScript
          • Week 3 – Programming Paradigms
          • Week 4 – Testing
          • Week 5 – End-of-Course Graded Assessment
          • Week 2 – The Building Blocks of a Program
          • Week 1 – Introduction to Javascript
        • Course 7 – Principles of UX/UI Design
          • Week 1 – Introduction to UX and UI design
          • Week 2 – Evaluating interactive design
          • Week 4 – Designing your UI
          • Week 5 – Course summary and final assessment
          • Week 3 – Applied Design Fundamentals
        • Course 9 – Coding Interview Preparation
          • Week 1 – Introduction to the coding interview
          • Week 2 – Introduction to Data Structures
          • Week 3 – Introduction to Algorithms
          • Week 4 – Final project
        • Course 5 – React Basics
          • Week 1 – React Components
          • Week 2 – Data and State
          • Week 3 – Navigation, Updating and Assets in React.js
      • Meta Social Media Marketing
        • Course 1 – Introduction to Social Media Marketing
          • Week 4 – Understand Your Audience
          • Week 2 – Social Media Platforms Overview
          • Week 5 – Choose Your Social Media Channels
          • Week 1 – The Social Media Landscape
          • Week 3 – Goals and Planning for Success
        • Course 4 – Advertising with Meta
          • Week 3 – Select Your Audience, Platforms and Schedule
          • Week 2 – Determine Your Campaign Objective and Budget
          • Week 4 – Create Your Ads and Evaluate Your Campaign Results
          • Week 5 – Build Your Own Campaign in Ads Manager
          • Week 1 – First Steps in Ads Manager
        • Course 2 – Social Media Management
          • Week 3 – Social Media Content Management
          • Week 4 – Evaluate Your Efforts
          • Week 1 – Establish Your Presence
          • Week 2 – Social Media Content
        • Course 3 – Fundamentals of Social Media Advertising
          • Week 2 – Creating Effective Ads on Social Media
          • Week 3 – Data, Privacy and Policies on Social Media
          • Week 4 – Getting Started with Advertising on Facebook and Instagram
          • Week 1 – Introduction to Social Media Advertising
        • Course 5 – Measure and Optimize Social Media Marketing Campaigns
          • Week 3 – Optimize Your Ad Campaigns
          • Week 4 – Communicate Your Marketing Results
          • Week 1 – Evaluate Your Marketing Results Against Goals
          • Week 2 – Measure Your Advertising Effectiveness
    • Google Cloud
      • Google Cloud Developer
        • Course 5: Developing Applications with Cloud Run Functions on Google Cloud
          • Module 2: Introduction to Cloud Run Functions
          • Module 3: Calling and Connecting Cloud Run Functions
          • Module 4: Securing Cloud Run Functions
          • Module 5: Integrating with Cloud Databases
          • Module 6: Best Practices for Functions
        • Course 6: Developing Containerized Applications on Google Cloud
          • Module 2: Introduction to Containers
          • Module 3: Introduction to Cloud Run and Google Kubernetes Engine
        • Course 7: Developing Applications with Cloud Run on Google Cloud: Fundamentals
          • Module 2: Fundamentals of Cloud Run
          • Module 3: Service Identity and Authentication
          • Module 4: Application Development, Testing, and Integration
        • Course 8: Integrating Applications with Gemini 1.0 Pro on Google Cloud
          • Module 1: Integrating Applications with Gemini 1.0 Pro on Google Cloud
        • Course 2: Google Cloud Fundamentals: Core Infrastructure
          • Module 6: Containers in the Cloud
          • Module 2: Introducing Google Cloud
          • Module 3: Resources and Access in the Cloud
          • Module 4: Virtual Machines and Networks in the Cloud
          • Module 5: Storage in the Cloud
          • Module 7: Applications in the Cloud
          • Module 8: Prompt Engineering
        • Course 3: Developing Applications with Google Cloud: Foundations
          • Module 2: Best Practices for Cloud Application Development
          • Module 3: Getting Started with Google Cloud Development
          • Module 4: Data Storage Options
          • Module 5: Handling Authentication and Authorization
          • Module 6: Adding Intelligence to Your Application
          • Module 7: Deploying Applications
          • Module 8: Compute Options for Your Application
          • Module 9: Monitoring and Performance Tuning
        • Course 4: Service Orchestration and Choreography on Google Cloud
          • Module 4: Choreography and Orchestration
          • Module 2: Introduction to Microservices
          • Module 3: Event-Driven Applications
    • Microsoft
      • Microsoft Power BI Data Analyst
        • Course 4 – Data Modeling in Power BI
          • Module 3 – Optimize a model for performance in Power BI
          • Module 2 – Using Data Analysis Expressions (DAX) in Power BI
          • Module 4 – Final project and assessment: Modeling data in Power BI
          • Module 1 – Concepts for data modeling
        • Course 1 – Preparing Data for Analysis with Microsoft Excel
          • Module 4 – Final project and assessment: Preparing data for analysis with Microsoft Excel
          • Module 1 – Excel fundamentals
          • Module 2 – Formulas and functions
          • Module 3 – Preparing data for analysis using functions
        • Course 2 – Harnessing the Power of Data with Power BI
          • Module 3 – Final project and assessment: Harnessing the power of data in Power BI
          • Module 1 – Data analysis in business
          • Module 2 – The right tools for the job
        • Course 5 – Data Analysis and Visualization with Power BI
          • Module 4 – Identifying Patterns and Trends
          • Module 2 – Navigation and Accessibility
          • Module 5 – Guided Project: Data Analysis and Visualization with Microsoft Power BI
          • Module 3 – Bringing Data to the User
          • Module 1 – Creating Reports
          • Module 6 – Final project and assessment: Data Analysis and Visualization with Power BI
        • Course 8 – Microsoft PL-300 Exam Preparation and Practice
          • Module 3 – Visualize and analyze data
          • Module 4 – Deploy and maintain assets
          • Module 5 – Practice Exam
          • Module 1 – Preparing Data
          • Module 2 – Modeling Data
        • Course 3 – Extract, Transform and Load Data in Power BI
          • Module 3 – Advanced ETL in PowerBI
          • Module 1 – Data Sources in Power BI
          • Module 4 – Graded Assessment and Course wrap up
          • Module 2 – Transforming Data in Power BI
        • Course 6 – Creative Designing in Power BI
          • Module 3 – Dashboard Design and Storytelling
          • Module 4 – Final project and assessment: Creative Design in Power BI
          • Module 1 – Visualization and Design
          • Module 2 – Designing Powerful Report Pages
        • Course 7 – Deploy and Maintain Power BI Assets and Capstone project
          • Module 2 – Deploying assets
          • Module 3 – Security and monitoring
          • Module 4 – Guided project: Deploy and maintain Power BI Assets and Capstone project
          • Module 5 – Capstone project
          • Module 1 – Power BI in enterprise
      • Microsoft UX Design
        • Course 3: User Interface Design and Prototyping
          • Module 1: Wireframes and mockups
          • Module 2: Design systems and style guides
          • Module 3: Interactive prototypes
          • Module 4: Design critiques and user testing
        • Course 4: UX Design in Practice: Accessibility and Collaboration
          • Module 4: Collaborative design and communication
          • Module 5: Portfolio presentation and job resources
          • Module 1: Visual design, high-fidelity mockups, and platform considerations
          • Module 2: Accessibility and inclusive design
          • Module 3: AI for UX design
        • Course 2: Designing for User Experience
          • Module 5: Information architecture
          • Module 1: User research and empathy building
          • Module 2: User needs assessment
          • Module 3: Design ideation
          • Module 4: Storyboarding
        • Course 1: Fundamentals of UI/UX Design
          • Module 2: Roles in a UX design team
          • Module 3: Frameworks and process: Design thinking
          • Module 4: Introducing the portfolio project
          • Module 1: Introduction to user experience design
    • University Of Michigan
      • Python for Everybody Specialization
        • Course 5: Capstone: Retrieving, Processing, and Visualizing Data with Python
        • Course 1: Programming for Everybody (Getting Started with Python)
          • Week 5 – Chapter Three: Conditional Code
          • Week 6 – Chapter Four: Functions
          • Week 7 – Chapter Five: Loops and Iteration
          • Week 3 – Chapter One: Why We Program (continued)
          • Week 4 – Chapter Two: Variables and Expressions
        • Course 3: Using python to access web data
          • Week 6 – JSON and the REST Architecture (Chapter 13)
          • Week 2 – Regular Expressions (Chapter 11)
          • Week 3 – Networks and Sockets (Chapter 12)
          • Week 4 – Programs that Surf the Web (Chapter 12)
          • Week 5 – Web Services and XML (Chapter 13)
        • Course 2: Python Data Structures
          • Week 6 – Chapter Ten: Tuples
          • Week 1 – Chapter Six: Strings
          • Week 3 – Chapter Seven: Files
          • Week 4 – Chapter Eight: Lists
          • Week 5 – Chapter Nine: Dictionaries
        • Course 4: Using Databases with Python
          • Week 3 – Data Models and Relational SQL
          • Week 1 – Object Oriented Python
          • Week 2 – Basic Structured Query Language
          • Week 4 – Many-to-Many Relationships in SQL
    • Intuit
      • Intuit Academy Bookkeeping
        • Course 3 – Liabilities and Equity in Accounting
          • Week 2 – Payroll, Obligations, and Loans
          • Week 3 – Equity and Liabilities
          • Week 4 – Practice with Liabilities and Equity
          • Week 1 – Liabilities and Equity in Accounting
        • Course 4 – Financial Statement Analysis
          • Week 1 – Understanding Reconciliations
          • Week 2 – How to Read Financial Statements
          • Week 3 – Analyzing Key Reports and Transactions
          • Week 4 – Application and Practice with Reconciliations and Financial Analysis
        • Course 2 – Assets in Accounting
          • Week 1 – Accounting Concepts and Measurement
          • Week 4 – Applying Accounting Principles and Knowledge
          • Week 2 – Inventory Accounting Methods
          • Week 3 – Property and Equipment
        • Course 1 – Bookkeeping Basics
          • Week 4 – Accounting Principles and Practices
          • Week 2 – The Accounting Cycle (Part 1)
          • Week 1 – Accounting Concepts and Measurement
          • Week 3 – The Accounting Cycle (Part 2)
    • Stanford
      • Machine Learning Specialization
        • Course 1 – Supervised Machine Learning: Regression and Classification
          • Week 2: Regression with multiple input variables
          • Week 3: Classification
          • Week 1: Introduction to Machine Learning
        • Course 3 – Unsupervised Learning, Recommenders, Reinforcement Learning
          • Week 1: Unsupervised learning
          • Week 2: Recommender systems
          • Week 3: Reinforcement learning
        • Course 2 – Advanced Learning Algorithms
          • Week 2: Neural network training
          • Week 3: Advice for applying machine learning
          • Week 4: Decision trees
          • Week 1: Neural Networks
  • Linkedin
    • N
      • Node.js
      • NoSQL
    • I
      • IT Operations
      • iMovie
    • A
      • Adobe Lightroom
      • AWS Lambda
      • Adobe XD
      • AutoCAD
      • Adobe Photoshop
      • Agile Methodologies
      • Adobe Acrobat
      • Avid Media Composer
      • Adobe After Effects
      • Adobe Animate
      • Amazon Web Services (AWS)
      • Android
      • Angular
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