Published 2/2023MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 5.12 GB | Duration: 8h 43m
Data Eeering for Empowered Business Decisions: ETL, Exploration & Visualization What you'll learn Turn messy, real-world data into actionable insights. Gain familiarity with tools such as Deepnote, Dagster, and Metabase. Use Deepnote as a data eeering development environment. Generate realistic development data for analysis and visualization. Learn data exploration and preprocessing techniques using Python and SQL. Clean and normalize data from various sources, such as relational databases, JSON, .xls files and more. Set up Dagster to orchestrate your data pipeline. Integrate the processing logic into a scalable ETL pipeline with Dagster. Deploy your pipeline to Dagster Cloud (serverless) Optimize processing through techniques such as parallelization or streamed processing. Create powerful data visualizations using Metabase. Requirements Basic Python Knowledge Description Do you struggle with making data-driven decisions for your business due to scattered, inconsistent, and inaccessible data? This course is the solution! Learn to build a streamlined and efficient ETL pipeline that will allow you to turn data into actionable insights.This course teaches you how to build a system that collects data from multiple sources, normalizes it, and stores it in a consistent and accessible format. You will learn how to extract data, explore and preprocess it, and ultimately visualize it to support better decision-making and optimize business processes.Forget about big data and cluster management headaches, this course is designed to get you up and running quickly with a real- ETL pipeline. With infrastructure costs under $50 a month, you can start seeing immediate results and return on investment for your clients or company.In the first part of the course, I will walk you through the architecture and introduce you to the tools we will be using:Deepnote, as a setup-free development environmentDagster, as the pipeline orchestratorMetabase, as a low-code data visualization platformWhile the course will introduce you to the relevant features of Deepnote and Metabase, it is mostly focused on Dagster.In the next part, we will get started by generating dummy sales data of a hypothetical company using Deepnote. The code will be provided for this. Once we have the data, the course will dive into data exploration and preprocessing techniques using Python and SQL in Deepnote, including cleaning and normalizing data from various sources such as relational and JSON data, Excel sheets, and more. We will implement the processing logic in Deepnote, then commit it to a Git repository that will be shared with Dagster.In the following section, we will wrap the business logic with Dagster operations and jobs, then deploy them to Dagster Cloud (self-hosted option also available), which will allow you to manage everything from a single, unified view. In this section, you will also learn a few tricks to speed up and optimize processing, such as parallelization or streamed processing.In the final section of this course, you'll bring your preprocessed data to life with Metabase. With a few simple clicks, even non-technical individuals will be able to create stunning, powerful visualizations that unlock the full potential of your data.By the end of this course, you'll have a comprehensive understanding of the tools used and how they work together, empowering you to provide tangible benefits to your clients or company from day one, measured in thousands or tens of thousands of dollars.The choice is yours - will you seize this opportunity to deliver massive benefits to your company or clients, and claim your fair share of the rewards? Overview Section 1: Introduction Lecture 1 Welcome to the World of Data Eeering Lecture 2 The Power of Clean, Organized Data Lecture 3 The Skills and Tools Needed to be a Successful Data Eeer Lecture 4 An ETL pipeline for Small and Medium-Sized Businesses Section 2: Exploring the Tools of the ETL pipeline: Deepnote, Dagster, and Metabase Lecture 5 DeepNote Lecture 6 Dagster Lecture 7 Metabase Lecture 8 Other tools Section 3: Designing the ETL Pipeline: From Data Sources to Dashboards Lecture 9 Building the Solution Architecture Section 4: Setting Up Your Development Environment and Generating Dummy Data Lecture 10 Creating a PostgreSQL Database on Google Cloud Lecture 11 Generating Synthetic Data of a Hypothetical Client Lecture 12 Explanation of the data generation process (optional) Lecture 13 Verifying the Generated Data Section 5: Getting Started with Deepnote: An Introduction to Python and SQL for Data Explor Lecture 14 Extracting and Viewing Data in Deepnote Lecture 15 Digging Deeper: Identifying Data Issues Lecture 16 Digging Deeper: Coming Up with a Strategy Lecture 17 Creating a Database Table for Storing Normalized Data Section 6: Data Preprocessing in Deepnote: Cleaning and Normalizing Data Lecture 18 Preprocessing Relational data: POS Transactions Lecture 19 Preprocessing Relation data: Crypto Transactions Lecture 20 Preprocessing JSON Data Lecture 21 Preprocessing Excel Sheets: Loading Files from Google Drive Lecture 22 Preprocessing Excel Sheets: Market Transactions Lecture 23 Refactoring Business Logic: Challenge Lecture 24 Refactoring Business Logic: Solution Lecture 25 Unit Testing Section 7: Setting up the ETL pipeline with Dagster Lecture 26 Overview of Dagster Concepts Lecture 27 Set up Local Dagster Development Lecture 28 Extracting Data Lecture 29 Transfog and Loading Data Lecture 30 Partitioned Processing Lecture 31 Job Configuration Lecture 32 Streamed Data Processing Lecture 33 Processing Files Lecture 34 Creating Dagster Schedules Lecture 35 Creating Dagster Sensors Lecture 36 Deploying to Dagster Cloud Section 8: Visualizing Data in Metabase Lecture 37 Creating Visualizations from the Processed Data Section 9: Bonus Content Lecture 38 Bonus Lecture Developers seeking to build scalable and efficient ETL pipelines.,Entrepreneurs looking to leverage data for business growth.,Data analysts and scientists who want to streamline their data processing workflow.,Business professionals looking to improve their data-driven decision-making abilities.,Students and recent graduates interested in a career in data eeering.,Data managers tasked with organizing and making data accessible for analysis.,Project managers looking to implement data-driven solutions for clients or company.,Individuals interested in learning cutting-edge tools and techniques in data eeering. HomePage: gfxtra__Transform_.part1.rar.html gfxtra__Transform_.part2.rar.html gfxtra__Transform_.part3.rar.html gfxtra__Transform_.part4.rar.html
TO MAC USERS: If RAR password doesn't work, use this archive program:
RAR Expander 0.8.5 Beta 4 and extract password protected files without error.
TO WIN USERS: If RAR password doesn't work, use this archive program:
Latest Winrar and extract password protected files without error.