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Google Bigquery Ml Machine Learning In Sql (Without Python) - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Google Bigquery Ml Machine Learning In Sql (Without Python) (/Thread-Google-Bigquery-Ml-Machine-Learning-In-Sql-Without-Python) |
Google Bigquery Ml Machine Learning In Sql (Without Python) - AD-TEAM - 04-05-2025 ![]() Google Bigquery Ml Machine Learning In Sql (Without Python) Published 8/2022 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 1.19 GB | Duration: 3h 18m On Linear Regression example What you'll learn Create Machine Learning model and make prediction using only SQL code Evaluate and interpret model prediction quality Do Feature Engineering on different data types Clean up and limit data source with understanding of consequence of it Requirements Basic knowledge of SQL Description The goal of this course is to learn how to create and use Machine Learning models right from the level of SQL query in Google BigQuery interface. You will also learn how to prepare data, how to interpret model results and how to make nice predictions using just one SELECT statement. You will work on a real data set - car sale offers in the USA, and the goal will be to predict the price of a car.The course consists of 7 sections and one bonus section. At the very beginning we will create an environment to work in. Next it would be good to see a little theory. Then we will straight jump into the first model creation. In further lessons we will try to improve our model performance by some hacks and tricks. This is essential for the course and we put the biggest pressure on that part. In the meantime you will get all needed resources and you will be able to practice all steps by yourself on your own free BigQuery account.In this course you will be working on your own end project. During the course, we will guide you on how to make every step of your own end project. After each practical lesson, you will have a homework assignment that will contribute to your big project. The project's goal is to predict used car prices. Additionally, to motivate you to work and check if you have done your homework correctly, you will get a question in the quiz. By carrying out practical tasks, you will easily find answers.We've added a few lesson resources. Google glossary ebook that explains all basic definitions of a wide spectrum of Machine Learning. Please read them to systematize your knowledge. Other resources are cheat sheets which present a summary for each topic. It's a really nice source of condensed knowledge. Please use them to quickly look if you forgot some stuff. For practice lessons we add our SQL in resources. You can easily copy-paste and manipulate the code by yourself.Let's get started with our journey of Machine Learning in SQL! Overview Section 1: Before start the Course Lecture 1 Lesson 0.1 Course Introduction Lecture 2 Lesson 0.2 First Thing To Do Lecture 3 Lesson 0.3 Setting up BigQuery Sandbox Section 2: Introduction - basic concepts and theory Lecture 4 Lesson 1.1 What is Machine Learning? Lecture 5 Lesson 1.2 What is Linear Regression? Lecture 6 Lesson 1.3 What is Google Cloud Platform and BigQuery? Lecture 7 Lesson 1.4 What is BigQuery ML? Lecture 8 Lesson 1.5 BigQuery Data types Lecture 9 Lesson 1.6 BigQuery SQL Fundamentals Section 3: Creating first model and prediction Lecture 10 Lesson 2.0 Section introduction Lecture 11 Lesson 2.1 Business goal and model limitation Lecture 12 Lesson 2.2 Data source description Lecture 13 Lesson 2.3 BigQuery User Interface Lecture 14 Lesson 2.4 Import data to BigQuery Lecture 15 Lesson 2.5 Create model Lecture 16 Lesson 2.6 Predict data Lecture 17 Lesson 2.7 Model evaluation Section 4: Data cleaning Lecture 18 Lesson 3.0 Section Introduction Lecture 19 Lesson 3.1 Removing useless columns Lecture 20 Lesson 3.2 Data visualization with Google Data Studio Lecture 21 Lesson 3.3 Histogram Lecture 22 Lesson 3.4 Checking duplicates Lecture 23 Lesson 3.5 Removing null values Section 5: Feature engineering Lecture 24 Lesson 4.0 Section introduction Lecture 25 Lesson 4.1 Create new feature - car age Lecture 26 Lesson 4.2 Create new feature - VIN number Lecture 27 Lesson 4.3 Create new feature - Condition field Lecture 28 Lesson 4.4 Create new feature - Model field Lecture 29 Lesson 4.5 Create new feature - Geography Section 6: Feature engineering - built-in function Lecture 30 Lesson 5.0 Section introduction Lecture 31 Lesson 5.1 ML.MIN_MAX_SCALER function Lecture 32 Lesson 5.2 ML.FEATURE_CROSS function Lecture 33 Lesson 5.3 ML.POLYNOMIAL_EXPAND function Lecture 34 Lesson 5.4 ML.QUANTILE_BUCKETIZE function Lecture 35 Lesson 5.5 ML.BUCKETIZE function Lecture 36 Lesson 5.6 ML.NGRAMS function Lecture 37 Lesson 5.7 Removing unimportant columns Section 7: Hyperparameters tuning Lecture 38 Lesson 6.0 Section introduction Lecture 39 Lesson 6.1 L1 & L2 regularization Lecture 40 Lesson 6.2 Automatic vs manual tuning Section 8: Final prediction and model testing Lecture 41 Lesson 7.0 Section introduction Lecture 42 Lesson 7.1 Negative price Lecture 43 Lesson 7.2 Using logarithm function Lecture 44 Lesson 7.3 Test model quality Lecture 45 Lesson 7.4 Final lesson Section 9: Extra Section: Boosted Tree Algorithm Lecture 46 Extra Lesson 0: Introduction Lecture 47 Extra Lesson 1: Boosted Tree short theory Lecture 48 Extra Lesson 2: Model train and predict Beginner Data Analysts or students who want to start with Machine Learning using just SQL ![]() AusFile RapidGator TurboBit |