AWS Certified Machine Learning - Specialty MLS-C01 Training
AWS Certified Machine Learning - Specialty MLS-C01 Training
Order this unique E-Learning Training AWS Certified Machine Learning – Specialty online, 1 year 24/7 access to rich interactive videos, progress through reporting and testing.
Read more- Brand:
- Amazon Web Services
- Discounts:
-
- Buy 2 for €155,82 each and save 2%
- Buy 3 for €154,23 each and save 3%
- Buy 4 for €152,64 each and save 4%
- Buy 5 for €151,05 each and save 5%
- Buy 10 for €143,10 each and save 10%
- Buy 25 for €135,15 each and save 15%
- Buy 50 for €127,20 each and save 20%
- Availability:
- In stock
- Delivery time:
- Ordered before 5 p.m.! Start today.
- Award Winning E-learning
- Lowest price guarantee
- Personalized service by our expert team
- Pay safely online or by invoice
- Order and start within 24 hours
AWS Certified Machine Learning Specialty E-Learning
Order this unique E-Learning course AWS Certified Machine Learning – Specialty online, 1 year 24/7 access to rich interactive videos, speech, progress monitoring through reporting and testing .Amazon Web Services (AWS) provides cloud computing options for individuals and businesses. Knowing which services meet the needs is essential to maximize the benefits of the cloud.
Course content
AWS Certified Machine Learning: Data Engineering, Machine Learning, & AWS
Course: 36 Minutes
- Course Overview
- What Is Data Engineering?
- Hierarchy of Data Needs
- What Is Machine Learning?
- Machine Learning Pipelines, Approaches, & Workflows
- Machine Learning, AI, Data Mining, and Statistics
- Data Repositories and Data Warehouses
- Data Pipelines and Data Ingestion
- Data Processing and Transformations
- What Is Amazon Web Services (AWS)?
- Machine Learning with AWS
- Course Summary
AWS Certified Machine Learning: Amazon S3 Simple Storage Service
Course: 23 Minutes
- Course Overview
- What Is Amazon S3?
- Amazon S3 Organization
- Amazon S3 Features: Storage Lens
- Amazon S3 Features: Intelligent Tiering
- Amazon S3 Features: Access Points
- Amazon S3 Features: Batch Operations
- Amazon S3 Features: Block Public Access
- Working with the Amazon S3 Management Console
- Amazon S3 Use Cases: Archives, Data Lakes, Analytics
- Amazon S3 Case Studies
- Course Summary
AWS Certified Machine Learning: Data Movement
Course: 34 Minutes
- Course Overview
- What is AWS Glue?
- AWS Glue Extract, Transform, and Load Pipelines
- Working with Amazon Glue
- Applications and Benefits of Data Streaming
- Stream Processing vs. Batch Processing
- Amazon Kinesis: Benefits and Use Cases
- AWS Kinesis: Capabilities
- AWS Kinesis: Video Streams
- AWS Kinesis: Data Streams
- AWS Kinesis: Data Firehouse
- AWS Kinesis: Data Analytics
- Working with AWS Kinesis
- Course Summary
AWS Certified Machine Learning: Data Pipelines & Workflows
Course: 41 Minutes
- Course Overview
- What Is AWS Data Pipeline?
- Configuring AWS Data Pipeline
- AWS Data Pipeline vs. AWS Glue
- What Is AWS Batch?
- AWS Batch Use Cases
- What Is AWS Step Functions?
- AWS Step Functions Use Cases
- Working with AWS Batch and Step Functions
- Real-time and Video Data Pipelines
- Batch Processing and Analytics Pipelines
- Course Summary
AWS Certified Machine Learning: Jupyter Notebook & Python
Course: 39 Minutes
- Course Overview
- What Is Jupyter Notebook?
- Python for Data Science
- Python Packages - NumPy
- Python Packages - Pandas
- Working with NumPy Packages
- Working with Pandas Packages
- Python Packages - Matplotlib
- Python Packages - Seaborn and Bokeh
- Using Matplotlib, Seaborn, & Bokeh for Data Analysis
- Machine Learning in Python with scikit-learn
- Implementing Machine Learning Models Using Python
- Course Summary
AWS Certified Machine Learning: Data Analysis Fundamentals
Course: 34 Minutes
- Course Overview
- Categorical and Numerical Data Types
- Bernoulli, Uniform, and Binomial Data Distributions
- Normal, Poisson, and Exponential Data Distributions
- The Primary Role of Data Visualization
- Data Visualization - Traditional Graphic Types
- Data Visualization - Modern Graphic Types
- Implementing Data Visualization with Python
- Time Series Analysis in Data Science
- Advanced Time Series Analysis Concepts
- Implementing Time Series Analysis in Python
- Course Summarys
AWS Certified Machine Learning: Athena, QuickSight, & EMR
Course: 37 Minutes
- Course Overview
- What Is Amazon Athena?
- Tables, Databases, and Data Catalogs in Athena
- Working with Athena to Create Tables and Run Queries
- What Is Amazon QuickSight?
- Amazon QuickSight Terminology
- Creating Multi-visual Analyses in Amazon QuickSight
- Working with Amazon QuickSight for Multiple ML Tasks
- Data Processing: Amazon Elastic MapReduce (EMR)
- Amazon Elastic MapReduce (EMR) Use Cases
- Amazon Elastic MapReduce (EMR) and Apache Hadoop
- Amazon Elastic MapReduce (EMR) and Apache Spark
Course Summary
AWS Certified Machine Learning: Feature Engineering Overview
Course: 35 Minutes
- Course Overview
- What Is Feature Engineering?
- Features and the Dimensionality Dilemma
- Amazon SageMaker for Feature Engineering
- How Amazon SageMaker Feature Store Works
- Working with Amazon SageMaker Feature Store
- How Amazon SageMaker Ground Truth Works
- Working with Amazon SageMaker Ground Truth
- Missing Data Imputation in ML Models
- Imbalanced Data in ML Classification
- How Data Outliers Impact Data Analysis
- Course Summary
AWS Certified Machine Learning: Feature Engineering Techniques
Course: 28 Minutes
- Course Overview
- Feature Engineering: One-hot Encoding
- Feature Engineering: Binning
- Feature Engineering: Data Transformations
- Feature Engineering: Data Scaling and Normalization
- Feature Engineering: Data Shuffling
- Working with Feature Engineering Techniques
- Text Feature Engineering
- Text Mining: TF-IDF
- Bag-of-Words Model vs. TF-IDF
- What are N-Grams?
- Using Spark and EMR Workflows for Data Preparation
- Course Summary
AWS Certified Machine Learning: Problem Framing & Algorithm Selection
Course: 1 Hour, 13 Minutes
- Course Overview
- Machine Learning Mindset and Project Life Cycle
- Machine Learning (ML) Solvable Problems
- Difficult Problems in Machine Learning
- Identifying Machine Learning Use Cases and Metrics
- Identifying Expected Outcome
- Formulating Machine Learning Questions
- Data Sources and Data Preparation for ML
- Learning Ability and Potential Bias
- Considerations for Algorithm Selection
- Machine Learning Refresher
- Course Summary
AWS Certified Machine Learning: Machine Learning in SageMaker
Course: 1 Hour, 32 Minutes
- Course Overview
- Introducing Amazon SageMaker
- Getting Started with SageMaker Studio
- Working with Common Tasks in SageMaker Studio
- Building ML Solution with SageMaker JumpStart
- Linear Learner & XGBoost in SageMaker
- Classifying Images with SageMaker
- Object Detection with SageMaker
- Semantic Segmentation with SageMaker
- How to Perform Model Tuning with SageMaker
- Performing Model Tuning and Training with SageMaker
- Course Summary
AWS Certified Machine Learning: ML Algorithms in SageMaker
Course: 1 Hour, 43 Minutes
- Course Overview
- SageMaker Sequence-to-sequence Algorithm
- Working with BlazingText in SageMaker
- Object to Vector (Object2Vec) in SageMaker
- DeepAR Forecasting in SageMaker
- Working with Random Cut Forest (RCF) in SageMaker
- Topic Modelling in SageMaker
- PCA and Factorization Machine in SageMaker
- K-means Clustering in SageMaker
- K-NN and IP Insights in SageMaker
- Using Image Clustering in SageMaker
- Fundamentals of Reinforcement Learning
- Implementing Reinforcement Learning in SageMaker
- Monitoring & Analyzing Training Jobs using Metrics
- Course Summary
AWS Certified Machine Learning: Advanced SageMaker Functionality
Course: 1 Hour, 29 Minutes
- Course Overview
- Amazon SageMaker Supported Frameworks
- Training Keras/Tensorflow model in SageMaker
- Connecting Amazon EMR with SageMaker Notebooks
- Using SageMaker for Incremental Spot Training
- Distributed Training in SageMaker
- Tackling Distributed Training with PyTorch
- Working with SageMaker Autopilot
- Working with SageMaker Debugger
- Working with SageMaker Experiments
- Building ML Explainability in SageMaker
- Performing Bias Detection in SageMaker
- Course Summary
AWS Certified Machine Learning: AI/ML Services
Course: 1 Hour, 14 Minutes
- Course Overview
- Working with Amazon Comprehend
- Using Amazon Kendra
- Using Amazon Transcribe
- Working with Amazon Polly
- Exploring Amazon Rekognition
- Using Amazon Personalize
- Working with Amazon Forecast
- Working with Amazon Textract
- Other Amazon AI/ML Services
- Case Studies of AI/ML Services
- Course Summary
AWS Certified Machine Learning: Problem Formulation & Data Collection
Course: 43 Minutes
- Course Overview
- Applications of Machine Learning Solutions
- Business Problem and Success Evaluation Metrics
- Problem Formulation
- Amazon Review Problem Formulation
- Recommender Systems
- Recommender Systems Collaborative Filtering
- Storage Services on AWS: EBS, EFS, and S3
- Reading Data from Amazon S3
- Analyzing Data Readiness and Appropriateness
- Built-in Algorithms in Amazon SageMaker
- Course Summary
AWS Certified Machine Learning: Data Preparation & SageMaker Security
Course: 42 Minutes
- Course Overview
- Working with Summary Statistics
- Performing Visualization
- Data Formats for Amazon SageMaker
- Converting a Dataset to Sparse Matrix
- Creating S3 Buckets
- Labelling Data with Amazon Ground Truth
- SageMaker Security: Encryption
- Exploring Amazon SageMaker Security
- Characteristics and Advantages of Amazon CloudWatch
- Characteristics and Advantages of Amazon CloudTrail
- Course Summary
AWS Certified Machine Learning: Model Training & Evaluation
Course: 36 Minutes
- Course Overview
- Factorization Machine
- EC2 Instances
- Training with EC2 Instances
- Training with EC2 Spot Instances
- Evaluating Machine Learning Models
- Deploying Machine Learning Models
- Monitoring Machine Learning Models
- Working with Feature Engineering
- Performing Hyperparameter Tuning
- Using Production Variants
- Course Summary
AWS Certified Machine Learning: AI Services & SageMaker Applications
Course: 54 Minutes
- Course Overview
- Using Amazon Rekognition
- Working with Amazon Polly
- Exploring Amazon Transcribe and Translate
- Working with Seq2seq in SageMaker
- Working with DeepAR in SageMaker
- Using BlazingText in SageMaker5
- Working with Object2vec in SageMaker
- Working with Object Detection in SageMaker
- Classifying Images in SageMaker
- Performing Semantic Segmentation in SageMaker
- Course Summary
Language | English |
---|---|
Qualifications of the Instructor | Certified |
Course Format and Length | Teaching videos with subtitles, interactive elements and assignments and tests |
Lesson duration | 15:13 Hours |
Progress monitoring | Yes |
Access to Material | 365 days |
Technical Requirements | Computer or mobile device, Stable internet connections Web browsersuch as Chrome, Firefox, Safari or Edge. |
Support or Assistance | Helpdesk and online knowledge base 24/7 |
Certification | Certificate of participation in PDF format |
Price and costs | Course price at no extra cost |
Cancellation policy and money-back guarantee | We assess this on a case-by-case basis |
Award Winning E-learning | Yes |
Tip! | Provide a quiet learning environment, time and motivation, audio equipment such as headphones or speakers for audio, account information such as login details to access the e-learning platform. |
There are no reviews written yet about this product.
OEM Office Elearning Menu Genomineerd voor 'Beste Opleider van Nederland'
OEM Office Elearning Menu is trots genomineerd te zijn voor de titel 'Beste Opleider van Nederland' door Springest, een onderdeel van Archipel. Deze erkenning bevestigt onze kwaliteit en toewijding. Hartelijk dank aan al onze cursisten.
Reviews
There are no reviews written yet about this product.