The Machine Learning exam is rather difficult, as discussed previously. The starting point would be the acloud.guru Machine Learning course or Linux Academy courses. Additionally is the training offered by AWS. A chunk of Machine Learning is data and data preparation, so please see my links from Big Data.
Here is a collection of links I put together which helped me with studying for the exam.
General Topics
Handling imbalances in Data
Learning Rate
Neural Networks
Common Machine Learning Algorithms
Another Resource on Machine Learning Algorithms
Machine Learning Concepts
Formulating the Problem
Regression
Regression Model Insights
The Machine Learning Process
Machine Learning Key Concepts
Cross Validation
Splitting Training Data
Training Parameters
Training Faster with Sagemaker Linear Learner
Multiclass Model Insights
Managing Machine Learning Projects Whitepaper
SageMaker Blog
Underfitting and Overfitting
Machine Learning Models
Binary Model Insights
One Hot Encoding
Data
Glue
Glue Crawler
Athena
SparkML
KPL
Kinesis Data Firehose
Kinesis PutRecord
AWS Machine Learning - SageMaker
Data Formats
SageMaker Batch
SageMaker Docker Registry
Built-in Algorithms
Elastic Inference
Elastic Inference
Inference Pipeline Containers
Validating a Model
Training Metrics
CloudTrail
AutoScaling
SageMaker with Step Functions
Hosting Model
SageMaker and IAM
Polly
SageMaker Machine Learning Implementations
Semantic Segmentation
Seq-to-Seq
K-Means Linear Learner
Linear Learner Tuning
BlazingText BlazingText InputOutput
LDA
Factorization Machines
Random Cut Forest
K Nearest Neighbor
Image Classification
Object2Vec
Object Detection
PCA
DeepAR
XGBoost
XGBoost Tuning
XGBoost Parameters
Neural Topic Model
SageMaker TensorFlow Framework
SageMaker Hyperparameter Tuning
Creating Hyperparameters Tuning Job
Automated Tuning
Hyperparameter Tuning Job
Hypertunning
Image Classification Hyperparameters