Do you want to become an AWS Machine Learning Engineer Using SageMaker in 30 days?Do you want to build super powerful production-level Machine Learning (ML) applications in AWS but dont know where to start?Are you an absolute beginner and want to break into AI, ML and Cloud Computing and looking for a course that includes everything you need?Are you an aspiring entrepreneur who wants to maximize business revenues and reduce costs with ML but dont know how to get there quickly and efficiently?If the answer is yes to any of these questions, then this course is for you! Machine Learning is the future one of the top tech fields to be in right now! ML and AI will change our lives in the same way electricity did 100 years ago. ML is widely adopted in Finance, banking, healthcare, transportation, and technology. The field is exploding with opportunities and career prospects. AWS is the one of the most widely used cloud computing platforms in the world and several companies depend on AWS for their cloud computing purposes. AWS SageMaker is a fully managed service offered by AWS that allows data scientist and AI practitioners to train, test, and deploy AI/ML models quickly and efficiently. This course is unique and exceptional in many ways, it includes several practice opportunities, quizzes, and final capstone projects. In this course, students will learn how to create production-level ML models using AWS. The course is divided into 8 main sections as follows: Section 1 (Days 1 3): we will learn the following: (1) Start with an AWS and Machine Learning essentials starter pack that includes key AWS services such as Simple Storage Service (S3), Elastic Compute Cloud (EC2), Identity and Access Management (IAM) and CloudWatch, (2) The benefits of cloud computing, the difference between regions and availability zones and whats included in the AWS Free Tier Package, (3) How to setup a brand-new account in AWS, setup a Multi-Factor Authentication (MFA) and navigate through the AWS Management Console, (4) How to monitor billing dashboard, set alarms, S3/EC2 instances pricing and request service limits increase, (5) The fundamentals of Machine Learning and understand the difference between Artificial Intelligence (AI), Machine Learning (ML), Data Science (DS) and Deep Learning (DL), (6) Learn the difference between supervised, unsupervised and reinforcement learning, (7) List the key components to build any machine learning models including data, model, and compute, (8) Learn the fundamentals of Amazon SageMaker, SageMaker Components, training options offered by SageMaker including built-in algorithms, AWS Marketplace, and customized ML algorithms, (9) Cover AWS SageMaker Studio and learn the difference between AWS SageMaker JumpStart, SageMaker Autopilot and SageMaker Data Wrangler, (10) Learn how to write our first code in the cloud using Jupyter Notebooks. We will then have a tutorial covering AWS Marketplace object detection algorithms such as Yolo V3, (11) Learn how to train our first machine learning model using the brand-new AWS SageMaker Canvas without writing any code! Section 2 (Days 4 5): we will learn the following: (1) Label images and text using Amazon SageMaker GroundTruth, (2) learn the difference between data labeling workforces such as public mechanical Turks, private labellers and AWS curated third-party vendors, (3) cover several companies success stories that have leveraged data to maximize revenues, reduce costs and optimize processes, (4) cover data sources, types, and the difference between good and bad data, (5) learn about Json Lines formats and Manifest Files, (6) cover a detailed tutorial to define an image classification labeling job in SageMaker, (7) auto-labeling workflow and learn the difference between SageMaker GroundTruth and GroundTruth Plus, (8) learn how to define a labeling job with bounding boxes (object detection and pixel-level Semantic Segmentation), (9) Label Text data using Amazon SageMaker GroundTruth. Section 3 (Days 6 10): we will learn: (1) how to perform exploratory data analysis (EDA), (2) master Pandas, a super powerful open-source library to perform data analysis in Python, (3) analyze corporate employee information using Pandas in Jupyter Notebooks in AWS SageMaker Studio, (4) define a Pandas Dataframe, read CSV data using Pandas, perform basic statistical analysis on the data, set/reset Pandas DataFrame index, select specific columns from the DataFrame, add/delete columns from the DataFrame, Perform Label/integer-based elements selection, perform broadcasting operations, and perform Pandas DataFrame sorting/ordering, (5) perform statistical data analysis on real world datasets, deal with missing data using pandas, change pandas DataFrame datatypes, define a function, and apply it to a Pandas DataFrame column, perform Pandas operations, and filtering, calculate and display correlation matrix, use seaborn library to show heatmap, (6) analyze cryptocurrency prices and daily returns of Bitcoin (BTC), Ethereum (ETH), Litecoin (LTC), Cardano (ADA