Databricks Certified Machine Learning Associate Exam Guide
Published 7/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 4.80 GB | Duration: 9h 54m
Published 7/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 4.80 GB | Duration: 9h 54m
Pass Databricks Certified Machine Learning Associate Certification with 10+ Hours of HD Quality Video & Lots of Hands-on
What you'll learn
Apply Databricks AutoML to different ML Problem like Regression, Classification
Use MLFlow to Track Complete ML Lifecycle inside Data bricks environment
Register model & Deploy to Production with MLFlow & Databricks
Store Model Features inside Feature Store
Requirements
Basic Machine Learning knowledge
Credit or Debit card for Azure Account
Description
Welcome to our comprehensive course on Databricks Certified Machine Learning Engineer Associate certification. This course is designed to help you master the skills required to become a certified Databricks ML engineer associate.Databricks is a cloud-based data analytics platform that offers a unified approach to data processing, machine learning, and analytics. With the growing demand for data engineers, Databricks has become one of the most sought-after skills in the industry.The minimally qualified candidate should be able to:Use Databricks Machine Learning and its capabilities within machine learning workflows, including:Databricks Machine Learning (clusters, Repos, Jobs)Databricks Runtime for Machine Learning (basics, libraries)AutoML (classification, regression, forecasting)Feature Store (basics)MLflow (Tracking, Models, Model Registry)Implement correct decisions in machine learning workflows, including:Exploratory data analysis (summary statistics, outlier removal)Feature engineering (missing value imputation, one-hot-encoding)Tuning (hyperparameter basics, hyperparameter parallelization)Evaluation and selection (cross-validation, evaluation metrics)Implement machine learning solutions at scale using Spark ML and other tools, including:Distributed ML ConceptsSpark ML Modeling APIs (data splitting, training, evaluation, estimators vs. transformers, pipelines)HyperoptPandas API on SparkPandas UDFs and Pandas Function APIsUnderstand advanced scaling characteristics of classical machine learning models, including:Distributed Linear RegressionDistributed Decision TreesEnsembling Methods (bagging, boosting)
Overview
Section 1: Introduction
Lecture 1 Introduction
Lecture 2 Course FAQ's
Section 2: Getting started with Databricks Machine Learning
Lecture 3 Introduction to Databricks Machine Learning
Lecture 4 Lab: Databricks Workspace with Community Edition
Lecture 5 Lab: Databricks Workspace with Azure Cloud
Lecture 6 Databricks User Interface Overview
Lecture 7 Azure Databricks Architecture Overview
Lecture 8 Resources Created by Azure Databricks Workspace
Section 3: Databricks Runtime for Machine Learning
Lecture 9 Introduction to Databricks Runtime for Machine Learning
Lecture 10 Lab: Creating Databricks ML Cluster
Lecture 11 Explore Cluster Features from UI
Section 4: AutoML (Classification, Regression, Forecasting)
Lecture 12 Introduction to AutoML
Lecture 13 AutoML Regression Databricks UI Part - 1
Lecture 14 AutoML Regression Databricks UI Part - 2
Lecture 15 AutoML Regression Databricks UI Part - 3
Lecture 16 AutoML Regression Databricks Python API Part - 1
Lecture 17 AutoML Regression Databricks Python API Part - 2
Lecture 18 AutoML Classification Part - 1
Lecture 19 AutoML Classification Part - 2
Lecture 20 AutoML Forecasting Databricks UI Part - 1
Lecture 21 AutoML Forecasting Databricks UI Part - 2
Lecture 22 AutoML Forecasting Databricks Python API Part - 1
Lecture 23 AutoML Forecasting Databricks Python API Part - 2
Section 5: MLflow
Lecture 24 Introduction to Mlflow
Lecture 25 Lab : Mlflow Logging API Part - 1
Lecture 26 Lab : Mlflow Logging API Part - 2
Lecture 27 Lab : Mlflow Logging API Part - 3
Lecture 28 Lab: ML End-to-End Example Part - 1
Lecture 29 Lab: ML End-to-End Example Part - 2
Lecture 30 Lab: ML End-to-End Example Part - 3
Lecture 31 Lab: ML End-to-End Example Part - 4
Lecture 32 Lab: ML End-to-End Example Part - 5
Section 6: Exploratory Data Analysis & Feature Engineering
Lecture 33 Introduction to Exploratory Data Analysis
Lecture 34 Exploratory Data Analysis: Explore the Data Part 1
Lecture 35 Exploratory Data Analysis: Explore the Data Part 2
Lecture 36 Exploratory Data Analysis: Explore the Data Part 3
Lecture 37 Exploratory Data Analysis: Data Visualization
Lecture 38 Exploratory Data Analysis: Pandas Profiling
Lecture 39 Feature engineering: Missing Value Imputation
Lecture 40 Feature engineering: Outlier Removal
Lecture 41 Feature engineering: Feature Creation
Lecture 42 Feature engineering: Feature Scaling
Lecture 43 Feature engineering: One-Hot-Encoding
Lecture 44 Feature engineering: Feature Selection
Lecture 45 Feature engineering: Feature Transformation
Lecture 46 Feature engineering: Dimensionality Reduction
Section 7: Hyperparameter Tuning with Hyperopt
Lecture 47 Hyperparameter Basics
Lecture 48 Introduction to Hyperparameter tuning with Hyperopt
Lecture 49 Hyperparameter Parallelization: Loading the Dataset
Lecture 50 Hyperparameter Parallelization: Single-Machine Hyperopt Workflow
Lecture 51 Hyperparameter Parallelization: Distributed tuning using Apache Spark and MLflow
Lecture 52 Model Selection with Hyperopt & MLflow Part 1
Lecture 53 Model Selection with Hyperopt & MLflow Part 2
Lecture 54 Model Selection with Hyperopt & MLflow Part 3
Lecture 55 Tuning Distributed Training Algorithms (Hyperopt & Apache Spark MLlib) Part 1
Lecture 56 Tuning Distributed Training Algorithms (Hyperopt & Apache Spark MLlib) Part 2
Lecture 57 Tuning Distributed Training Algorithms (Hyperopt & Apache Spark MLlib) Part 3
Lecture 58 Tuning Distributed Training Algorithms (Hyperopt & Apache Spark MLlib) Part 4
Lecture 59 Tuning Distributed Training Algorithms (Hyperopt & Apache Spark MLlib) Part 5
Lecture 60 Automated MLflow Tracking & Cross-Validation Part 1
Lecture 61 Automated MLflow Tracking & Cross-Validation Part 2
Lecture 62 Automated MLflow Tracking & Cross-Validation Part 3
Lecture 63 Automated MLflow Tracking & Cross-Validation Part 4
Section 8: Spark ML Modeling APIs
Lecture 64 Binary Classification - Loading Dataset
Lecture 65 Binary Classification - Data Preprocessing & Feature Engineering Part 1
Lecture 66 Binary Classification - Data Preprocessing & Feature Engineering Part 2
Lecture 67 Binary Classification - Logistic Regression Part 1
Lecture 68 Binary Classification - Logistic Regression Part 2
Lecture 69 Binary Classification - Decision Trees
Lecture 70 Binary Classification - Random Forest
Lecture 71 Binary Classification - Making Predictions
Section 9: Thank You
Lecture 72 Congratulations & way forward
Anyone wants to Pass Databricks Certified Machine Learning Associate Exam