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Machine Learning
▶︎
Release Notes
What's New
Known Issues and Limitations
▶︎
ML Runtimes Release Notes
▶︎
ML Runtimes What's New
ML Runtimes Version 2021.12
ML Runtimes Version 2021.09.02
ML Runtimes Version 2021.09
ML Runtimes Version 2021.06
ML Runtimes Version 2021.04
ML Runtimes Version 2021.02
ML Runtimes Version 2020.11
ML Runtimes Known Issues and Limitations
▶︎
ML Runtimes Pre-installed Packages
▶︎
Pre-Installed Packages in ML Runtimes
▶︎
ML Runtimes 2022.04
Python 3.9 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.7 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Python 3.9.6 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
R 4.0 Libraries
R 4.1 Libraries
R 3.6 Libraries
▶︎
ML Runtimes 2021.12
Python 3.9 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.7 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Python 3.9.6 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
R 4.0 Libraries
R 4.1 Libraries
R 3.6 Libraries
ML Runtimes 2020.11
▶︎
Concepts
▶︎
Product Overview
Cloudera Machine Learning Overview
▶︎
Engines Overview
Basic Concepts and Terminology
ML Runtimes versus Legacy Engine
Engine Dependencies
▶︎
Engines for Experiments & Models
Snapshot Code
Build Image
Run Experiment / Deploy Model
Environmental Variables
▶︎
Model Training and Deployment Overview
Machine Learning Project Lifecycle
▶︎
Experiments
Experiments - Concepts and Terminology
▶︎
Models
Models - Concepts and Terminology
▶︎
Collaboration Overview
Collaboration Models
Sharing Job and Session Console Outputs
▶︎
Autoscaling Overview
Autoscaling Workloads with Kubernetes
▶︎
Requirements
Introduction to Private Cloud
Cloudera Machine Learning requirements (OCP)
Cloudera Machine Learning requirements (ECS)
Get started with CML on Private Cloud
Test your connectivity to the CDP-DC cluster
Differences Between Public and Private Cloud
Limitations on Private Cloud
▶︎
Network File System (NFS)
NFS Options for Private Cloud
Internal Network File System on OCP (Non-Production)
Internal Network File System on ECS (Non-Production)
Using an External NFS Server
Deploy an ML Workspace with Support for TLS
Replace a Certificate
Deploy an ML Workspace with Support for TLS on ECS
GPU node setup
▼
How To
▶︎
ML Workspaces
Provision an ML Workspace
Monitoring ML Workspaces
Removing ML Workspaces
▶︎
Personal and Team Accounts
User Roles
Business Users and CML
Managing your Personal Account
Creating a Team
Managing a Team Account
▶︎
Projects
Collaboration Models
Sharing Job and Session Console Outputs
▶︎
Managing Projects
Creating a Project with Legacy Engine Variants
Configuring Project-level Runtimes
Adding Project Collaborators
Modifying Project Settings
Managing Project Files
Custom Template Projects
Deleting a Project
▶︎
Native Workbench Console and Editor
Launch a Session
Run Code
Access the Terminal
Stop a Session
Workbench editor file types
▶︎
Third-Party Editors
Modes of Configuration
▶︎
Configure a Browser IDE as an Editor
Testing a Browser IDE in a Session
Configure a Browser IDE at the Project Level
Legacy Engine Level Configuration
Configure a Local IDE using an SSH Gateway
▶︎
Configure PyCharm as a Local IDE
Add Cloudera Machine Learning as an Interpreter for PyCharm
Configure PyCharm to use Cloudera Machine Learning as the Remote Console
(Optional) Configure the Sync Between Cloudera Machine Learning and PyCharm
▶︎
Configure VS Code as a Local IDE
Download cdswctl and Add an SSH Key
Initialize an SSH Connection to Cloudera Machine Learning for VS Code
Setting up VS Code
(Optional) Using VS Code with Python
(Optional) Using VS Code with R
(Optional) Using VS Code with Jupyter
(Optional) Using VS Code with Git integration
Limiting files in Explorer view
▶︎
Git for Collaboration
Linking an Existing Project to a Git Remote
▶︎
Embedded Web Applications
Example: A Shiny Application
▶︎
Runtimes
▶︎
Managing ML Runtimes
ML Runtimes versus Legacy Engine
Using Runtime Catalog
▶︎
Using ML Runtimes Addons
Adding Hadoop CLI to ML Runtime Sessions
Adding Spark to ML Runtime Sessions
Turning off ML Runtimes Addons
▶︎
ML Runtimes NVIDIA GPU Edition
Testing ML Runtime GPU Setup
ML Runtimes NVIDIA RAPIDS Edition
▶︎
Using Editors for ML Runtimes
▶︎
Using JupyterLab with ML Runtimes
Installing a Jupyter extension
Installing a Jupyter kernel
Installing Additional ML Runtimes Packages
Restrictions for upgrading R and Python packages
▶︎
ML Runtimes Environment Variables
ML Runtimes Environment Variables List
Accessing Environmental Variables from Projects
▶︎
Customized Runtimes
▶︎
Creating Customized ML Runtimes
Create a Dockerfile for the Custom Image
Metadata for Custom ML Runtimes
Editor Customization
Build the New Docker Image
Distribute the Image
Add Docker registry credentials
Adding New ML Runtimes
Limitations
Add Docker registry credentials
▶︎
Pre-Installed Packages in ML Runtimes
▶︎
ML Runtimes 2022.04
Python 3.9 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.7 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Python 3.9.6 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
R 4.0 Libraries
R 4.1 Libraries
R 3.6 Libraries
▶︎
ML Runtimes 2021.12
Python 3.9 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.7 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Python 3.9.6 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
R 4.0 Libraries
R 4.1 Libraries
R 3.6 Libraries
▶︎
ML Runtimes 2021.09
Python 3.9 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.7 Libraries for Workbench
Python 3.6 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Python 3.9.6 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
Python 3.6 Libraries for JupyterLab
R 4.0 Libraries
R 3.6 Libraries
▶︎
ML Runtimes 2021.06
Python 3.8.6 Libraries for Workbench
Python 3.7.9 Libraries for Workbench
Python 3.6.12 Libraries for Workbench
Python 3.8.6 Libraries for JupyterLab
Python 3.7.9 Libraries for JupyterLab
Python 3.6.12 Libraries for JupyterLab
R 4.0 Libraries
R 3.6 Libraries
▶︎
ML Runtimes 2021.04
RAPIDS Runtime PIP Python 3.7.8 Libraries for Workbench
RAPIDS Runtime PIP Python 3.8.6 Libraries for Workbench
RAPIDS Runtime PIP Python 3.7.8 Libraries for JupyterLab
RAPIDS Runtime PIP Python 3.8.6 Libraries for JupyterLab
▶︎
ML Runtimes 2021.02
Python 3.8 Libraries for Workbench
Python 3.7 Libraries for Workbench
Python 3.6 Libraries for Workbench
Python 3.8 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
Python 3.6 Libraries for JupyterLab
R 4.0 Libraries
R 3.6 Libraries
ML Runtimes 2020.11
▶︎
Legacy Engines
Basic Concepts and Terminology
ML Runtimes versus Legacy Engine
Engine Dependencies
▶︎
Engines for Experiments & Models
Snapshot Code
Build Image
Run Experiment / Deploy Model
Environmental Variables
▶︎
Managing Engines
Creating Resource Profiles
Configuring the Engine Environment
Set up a custom repository location
▶︎
Installing Additional Packages
Using Conda to Manage Dependencies
▶︎
Engine Environment Variables
Engine Environment Variables
Accessing Environmental Variables from Projects
▶︎
Customized Engine Images
▶︎
Creating a Customized Engine Image
Create a Dockerfile for the Custom Image
Build the New Docker Image
Distribute the Image
Including Images in allowlist for Cloudera Machine Learning projects
Add Docker registry credentials
Limitations
End-to-End Example: MeCab
▶︎
Pre-Installed Packages in Engines
Base Engine 15-cml-2021.09-1
Base Engine 14-cml-2021.05-1
Base Engine 13-cml-2020.08-1
Base Engine 12-cml-2020.06-2
Base Engine 11-cml1.4
Base Engine 10-cml1.3
Base Engine 9-cml1.2
▶︎
Spark
Spark on CML
Apache Spark supported versions
Spark Configuration Files
Managing Memory Available for Spark Drivers
Managing Dependencies for Spark 2 Jobs
Spark Log4j Configuration
Setting Up an HTTP Proxy for Spark 2
Spark Web UIs
▶︎
Using Spark 2 from Python
Example: Montecarlo Estimation
Example: Locating and Adding JARs to Spark 2 Configuration
Using Spark 2 from R
▶︎
Using Spark 2 from Scala
Managing Dependencies for Spark 2 and Scala
▶︎
GPUs
Using GPUs for Cloudera Machine Learning projects
▶︎
Using GPUs with Legacy Engines
Custom CUDA-capable Engine Image
Site Admins: Add the Custom CUDA Engine to your Cloudera Machine Learning Deployment
Project Admins: Enable the CUDA Engine for your Project
Testing GPU Setup
▶︎
Experiments
Running an Experiment (QuickStart)
Limitations
Tracking Metrics
Saving Files
Debugging Issues with Experiments
▼
Models
Machine Learning Project Lifecycle
▶︎
Experiments
Experiments - Concepts and Terminology
▶︎
Models
Models - Concepts and Terminology
▶︎
Challenges with Machine Learning in production
Challenges with model deployment and serving
Challenges with model monitoring
▶︎
Challenges with model governance
Model visibility
Model explainability, interpretability, and reproducibility
Model governance using Apache Atlas
Creating and Deploying a Model
Usage Guidelines
Known Issues and Limitations
Request/Response Formats (JSON)
Testing Calls to a Model
▼
Securing Models
Access Keys for Models
▶︎
API Key for Models
Enabling authentication
Generating an API key
Managing API Keys
Active Model Workflows
Technical Metrics for Models
Debugging Issues with Models
Deleting a Model
▶︎
Example - Model Training and Deployment (Iris)
Train the Model
Deploy the Model
▶︎
Model Governance
Enabling model governance
ML Governance Requirements
Registering training data lineage using a linking file
Viewing lineage for a model deployment in Atlas
▶︎
Model Metrics
Enabling model metrics
Tracking model metrics without deploying a model
Tracking metrics for deployed models
▶︎
Applications
Analytical Applications
Securing Applications
Limitations
Monitoring applications
▶︎
Jobs and Pipelines
Creating a Job
Creating a Pipeline
Viewing Job History
Jobs API
▶︎
Distributed Computing
▶︎
Distributed Computing with Workers
Workers API
Worker Network Communication
▶︎
Applied ML Prototypes (AMP)
Applied ML Prototypes (AMPs)
Creating New AMPs
Custom AMP Catalog
Add a catalog
Catalog File Specification
AMP Project Specification
Host names required by AMPs
▶︎
Site Administration
Managing Users
Configuring Quotas
Creating Resource Profiles
Onboarding Business Users
Adding a Collaborator
▶︎
Monitoring User Activity
Tracked User Events
Monitoring User Events
Monitoring Active Models
Monitoring and Alerts
Application Polling Endpoint
Choosing Default Engine
Controlling User Access to Features
Configuring Email with SMTP
Web session timeouts
Project Garbage Collection
How to make base cluster configuration changes
Disable Addons
▶︎
Security
▶︎
Configuring External Authentication with LDAP and SAML
▶︎
Configuring LDAP/Active Directory Authentication
LDAP General Settings
LDAP Group Settings
Test LDAP Configuration
▶︎
Configuring SAML Authentication
Configuration Options
▶︎
Configuring HTTP Headers for Cloudera Machine Learning
Enable HTTP Security Headers
Enable HTTP Strict Transport Security (HSTS)
Enable Cross-Origin Resource Sharing (CORS)
▶︎
SSH Keys
Personal Key
Team Key
Adding an SSH Key to GitHub
Creating an SSH Tunnel
Autoscaling Workloads with Kubernetes
Restricting User-Controlled Kubernetes Pods
Hadoop Authentication for ML Workspaces
CML and outbound network access
▶︎
Troubleshooting
Recommended Troubleshooting Workflow
Downloading diagnostic bundles for a workspace
▶︎
Troubleshooting Issues with Workloads
Kerberos Errors
▶︎
Reference
▶︎
API
CML API v2
API v2 Usage
REST API v2 Reference
▶︎
CLI
Command Line Tools in CML
▶︎
cdswctl - CLI Client
Download and Configure cdswctl
Initialize an SSH Endpoint
Log into cdswctl
Prepare to manage models using the model CLI
Create a model using the CLI
Build and deployment commands for models
Deploy a new model with updated resources
View replica logs for a model
cdswctl command reference
▶︎
Data Access
Data Access
Upload and work with local files
▶︎
Connect to CDW
▶︎
Accessing data with Spark
Use JDBC Connection with PySpark
Connect to a CDP Data Hub cluster
Connect to external Amazon S3 buckets
Connect to External SQL Databases
Accessing Ozone from Spark
▶︎
Visualizations
▶︎
Built-in CML Visualizations
Simple Plots
Saved Images
HTML Visualizations
IFrame Visualizations
Grid Displays
Documenting Your Analysis
Cloudera Data Visualization for ML
▶︎
Jupyter Magics
▶︎
Jupyter Magic Commands
Python
Scala
(Optional) Configure the Sync Between Cloudera Machine Learning and PyCharm
(Optional) Using VS Code with Git integration
(Optional) Using VS Code with Jupyter
(Optional) Using VS Code with Python
(Optional) Using VS Code with R
Access Keys for Models
Access the Terminal
Accessing data with Spark
Accessing Environmental Variables from Projects
Accessing Environmental Variables from Projects
Accessing Ozone from Spark
Active Model Workflows
Add a catalog
Add Cloudera Machine Learning as an Interpreter for PyCharm
Add Docker registry credentials
Add Docker registry credentials
Add Docker registry credentials
Adding a Collaborator
Adding an SSH Key to GitHub
Adding Hadoop CLI to ML Runtime Sessions
Adding New ML Runtimes
Adding Project Collaborators
Adding Spark to ML Runtime Sessions
AMP Project Specification
Analytical Applications
Apache Spark supported versions
API
API Key for Models
API v2 Usage
Application Polling Endpoint
Applications
Applied ML Prototypes (AMP)
Applied ML Prototypes (AMPs)
Autoscaling Overview
Autoscaling Workloads with Kubernetes
Autoscaling Workloads with Kubernetes
Base Engine 10-cml1.3
Base Engine 11-cml1.4
Base Engine 12-cml-2020.06-2
Base Engine 13-cml-2020.08-1
Base Engine 14-cml-2021.05-1
Base Engine 15-cml-2021.09-1
Base Engine 9-cml1.2
Basic Concepts and Terminology
Basic Concepts and Terminology
Build and deployment commands for models
Build Image
Build Image
Build the New Docker Image
Build the New Docker Image
Built-in CML Visualizations
Business Users and CML
Catalog File Specification
cdswctl - CLI Client
cdswctl command reference
Challenges with Machine Learning in production
Challenges with model deployment and serving
Challenges with model governance
Challenges with model monitoring
Choosing Default Engine
CLI
Cloudera Data Visualization for ML
Cloudera Machine Learning Overview
Cloudera Machine Learning requirements (ECS)
Cloudera Machine Learning requirements (OCP)
CML and outbound network access
CML API v2
Collaboration Models
Collaboration Models
Collaboration Overview
Command Line Tools in CML
Configuration Options
Configure a Browser IDE as an Editor
Configure a Browser IDE at the Project Level
Configure a Local IDE using an SSH Gateway
Configure PyCharm as a Local IDE
Configure PyCharm to use Cloudera Machine Learning as the Remote Console
Configure VS Code as a Local IDE
Configuring Email with SMTP
Configuring External Authentication with LDAP and SAML
Configuring HTTP Headers for Cloudera Machine Learning
Configuring LDAP/Active Directory Authentication
Configuring Project-level Runtimes
Configuring Quotas
Configuring SAML Authentication
Configuring the Engine Environment
Connect to a CDP Data Hub cluster
Connect to CDW
Connect to external Amazon S3 buckets
Connect to External SQL Databases
Controlling User Access to Features
Create a Dockerfile for the Custom Image
Create a Dockerfile for the Custom Image
Create a model using the CLI
Creating a Customized Engine Image
Creating a Job
Creating a Pipeline
Creating a Project with Legacy Engine Variants
Creating a Team
Creating an SSH Tunnel
Creating and Deploying a Model
Creating Customized ML Runtimes
Creating New AMPs
Creating Resource Profiles
Creating Resource Profiles
Custom AMP Catalog
Custom CUDA-capable Engine Image
Custom Template Projects
Customized Engine Images
Customized Runtimes
Data Access
Data Access
Debugging Issues with Experiments
Debugging Issues with Models
Deleting a Model
Deleting a Project
Deploy a new model with updated resources
Deploy an ML Workspace with Support for TLS
Deploy an ML Workspace with Support for TLS on ECS
Deploy the Model
Differences Between Public and Private Cloud
Disable Addons
Distribute the Image
Distribute the Image
Distributed Computing
Distributed Computing with Workers
Documenting Your Analysis
Download and Configure cdswctl
Download cdswctl and Add an SSH Key
Downloading diagnostic bundles for a workspace
Editor Customization
Embedded Web Applications
Enable Cross-Origin Resource Sharing (CORS)
Enable HTTP Security Headers
Enable HTTP Strict Transport Security (HSTS)
Enabling authentication
Enabling model governance
Enabling model metrics
End-to-End Example: MeCab
Engine Dependencies
Engine Dependencies
Engine Environment Variables
Engine Environment Variables
Engines for Experiments & Models
Engines for Experiments & Models
Engines Overview
Environmental Variables
Environmental Variables
Example - Model Training and Deployment (Iris)
Example: A Shiny Application
Example: Locating and Adding JARs to Spark 2 Configuration
Example: Montecarlo Estimation
Experiments
Experiments
Experiments
Experiments - Concepts and Terminology
Experiments - Concepts and Terminology
Generating an API key
Get started with CML on Private Cloud
Git for Collaboration
GPU node setup
GPUs
Grid Displays
Hadoop Authentication for ML Workspaces
Host names required by AMPs
How to make base cluster configuration changes
HTML Visualizations
IFrame Visualizations
Including Images in allowlist for Cloudera Machine Learning projects
Initialize an SSH Connection to Cloudera Machine Learning for VS Code
Initialize an SSH Endpoint
Installing a Jupyter extension
Installing a Jupyter kernel
Installing Additional ML Runtimes Packages
Installing Additional Packages
Internal Network File System on ECS (Non-Production)
Internal Network File System on OCP (Non-Production)
Introduction to Private Cloud
Jobs and Pipelines
Jobs API
Jupyter Magic Commands
Jupyter Magics
Kerberos Errors
Known Issues and Limitations
Known Issues and Limitations
Launch a Session
LDAP General Settings
LDAP Group Settings
Legacy Engine Level Configuration
Legacy Engines
Limitations
Limitations
Limitations
Limitations
Limitations on Private Cloud
Limiting files in Explorer view
Linking an Existing Project to a Git Remote
Log into cdswctl
Machine Learning
Machine Learning Project Lifecycle
Machine Learning Project Lifecycle
Managing a Team Account
Managing API Keys
Managing Dependencies for Spark 2 and Scala
Managing Dependencies for Spark 2 Jobs
Managing Engines
Managing Memory Available for Spark Drivers
Managing ML Runtimes
Managing Project Files
Managing Projects
Managing Users
Managing your Personal Account
Metadata for Custom ML Runtimes
ML Governance Requirements
ML Runtimes 2020.11
ML Runtimes 2020.11
ML Runtimes 2021.02
ML Runtimes 2021.04
ML Runtimes 2021.06
ML Runtimes 2021.09
ML Runtimes 2021.12
ML Runtimes 2021.12
ML Runtimes 2022.04
ML Runtimes 2022.04
ML Runtimes Environment Variables
ML Runtimes Environment Variables List
ML Runtimes Known Issues and Limitations
ML Runtimes NVIDIA GPU Edition
ML Runtimes NVIDIA RAPIDS Edition
ML Runtimes Pre-installed Packages
ML Runtimes Release Notes
ML Runtimes Version 2020.11
ML Runtimes Version 2021.02
ML Runtimes Version 2021.04
ML Runtimes Version 2021.06
ML Runtimes Version 2021.09
ML Runtimes Version 2021.09.02
ML Runtimes Version 2021.12
ML Runtimes versus Legacy Engine
ML Runtimes versus Legacy Engine
ML Runtimes versus Legacy Engine
ML Runtimes What's New
ML Workspaces
Model explainability, interpretability, and reproducibility
Model Governance
Model governance using Apache Atlas
Model Metrics
Model Training and Deployment Overview
Model visibility
Models
Models
Models
Models - Concepts and Terminology
Models - Concepts and Terminology
Modes of Configuration
Modifying Project Settings
Monitoring Active Models
Monitoring and Alerts
Monitoring applications
Monitoring ML Workspaces
Monitoring User Activity
Monitoring User Events
Native Workbench Console and Editor
Network File System (NFS)
NFS Options for Private Cloud
Onboarding Business Users
Personal and Team Accounts
Personal Key
Pre-Installed Packages in Engines
Pre-Installed Packages in ML Runtimes
Pre-Installed Packages in ML Runtimes
Prepare to manage models using the model CLI
Product Overview
Project Admins: Enable the CUDA Engine for your Project
Project Garbage Collection
Projects
Provision an ML Workspace
Python
Python 3.6 Libraries for JupyterLab
Python 3.6 Libraries for JupyterLab
Python 3.6 Libraries for Workbench
Python 3.6 Libraries for Workbench
Python 3.6.12 Libraries for JupyterLab
Python 3.6.12 Libraries for Workbench
Python 3.7 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
Python 3.7 Libraries for JupyterLab
Python 3.7 Libraries for Workbench
Python 3.7 Libraries for Workbench
Python 3.7 Libraries for Workbench
Python 3.7 Libraries for Workbench
Python 3.7 Libraries for Workbench
Python 3.7 Libraries for Workbench
Python 3.7.9 Libraries for JupyterLab
Python 3.7.9 Libraries for Workbench
Python 3.8 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.8 Libraries for JupyterLab
Python 3.8 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.8 Libraries for Workbench
Python 3.8.6 Libraries for JupyterLab
Python 3.8.6 Libraries for Workbench
Python 3.9 Libraries for Workbench
Python 3.9 Libraries for Workbench
Python 3.9 Libraries for Workbench
Python 3.9 Libraries for Workbench
Python 3.9 Libraries for Workbench
Python 3.9.6 Libraries for JupyterLab
Python 3.9.6 Libraries for JupyterLab
Python 3.9.6 Libraries for JupyterLab
Python 3.9.6 Libraries for JupyterLab
Python 3.9.6 Libraries for JupyterLab
R 3.6 Libraries
R 3.6 Libraries
R 3.6 Libraries
R 3.6 Libraries
R 3.6 Libraries
R 3.6 Libraries
R 3.6 Libraries
R 4.0 Libraries
R 4.0 Libraries
R 4.0 Libraries
R 4.0 Libraries
R 4.0 Libraries
R 4.0 Libraries
R 4.0 Libraries
R 4.1 Libraries
R 4.1 Libraries
R 4.1 Libraries
R 4.1 Libraries
RAPIDS Runtime PIP Python 3.7.8 Libraries for JupyterLab
RAPIDS Runtime PIP Python 3.7.8 Libraries for Workbench
RAPIDS Runtime PIP Python 3.8.6 Libraries for JupyterLab
RAPIDS Runtime PIP Python 3.8.6 Libraries for Workbench
Recommended Troubleshooting Workflow
Registering training data lineage using a linking file
Release Notes
Removing ML Workspaces
Replace a Certificate
Request/Response Formats (JSON)
Requirements
Restricting User-Controlled Kubernetes Pods
Restrictions for upgrading R and Python packages
Run Code
Run Experiment / Deploy Model
Run Experiment / Deploy Model
Running an Experiment (QuickStart)
Runtimes
Saved Images
Saving Files
Scala
Scala 2.11 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Scala 2.11 Libraries for Workbench
Securing Applications
Securing Models
Security
Set up a custom repository location
Setting Up an HTTP Proxy for Spark 2
Setting up VS Code
Sharing Job and Session Console Outputs
Sharing Job and Session Console Outputs
Simple Plots
Site Administration
Site Admins: Add the Custom CUDA Engine to your Cloudera Machine Learning Deployment
Snapshot Code
Snapshot Code
Spark
Spark Configuration Files
Spark Log4j Configuration
Spark on CML
Spark Web UIs
SSH Keys
Stop a Session
Team Key
Technical Metrics for Models
Test LDAP Configuration
Test your connectivity to the CDP-DC cluster
Testing a Browser IDE in a Session
Testing Calls to a Model
Testing GPU Setup
Testing ML Runtime GPU Setup
Third-Party Editors
Tracked User Events
Tracking Metrics
Tracking metrics for deployed models
Tracking model metrics without deploying a model
Train the Model
Troubleshooting
Troubleshooting Issues with Workloads
Turning off ML Runtimes Addons
Upload and work with local files
Usage Guidelines
Use JDBC Connection with PySpark
User Roles
Using an External NFS Server
Using Conda to Manage Dependencies
Using Editors for ML Runtimes
Using GPUs for Cloudera Machine Learning projects
Using GPUs with Legacy Engines
Using JupyterLab with ML Runtimes
Using ML Runtimes Addons
Using Runtime Catalog
Using Spark 2 from Python
Using Spark 2 from R
Using Spark 2 from Scala
View replica logs for a model
Viewing Job History
Viewing lineage for a model deployment in Atlas
Visualizations
Web session timeouts
What's New
Workbench editor file types
Worker Network Communication
Workers API
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Securing Models
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Experiments
Experiments - Concepts and Terminology
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Models
Models - Concepts and Terminology
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Challenges with Machine Learning in production
Challenges with model deployment and serving
Challenges with model monitoring
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Challenges with model governance
Model visibility
Model explainability, interpretability, and reproducibility
Model governance using Apache Atlas
Creating and Deploying a Model
Usage Guidelines
Known Issues and Limitations
Request/Response Formats (JSON)
Testing Calls to a Model
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Securing Models
Access Keys for Models
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API Key for Models
Enabling authentication
Generating an API key
Managing API Keys
Active Model Workflows
Technical Metrics for Models
Debugging Issues with Models
Deleting a Model
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Example - Model Training and Deployment (Iris)
Train the Model
Deploy the Model
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Models
Securing Models
Access Keys for Models
Each model in Cloudera Machine Learning has a unique access key associated with it. This access key is a unique identifier for the model.
API Key for Models
You can prevent unauthorized access to your models by specifying an API key in the “Authorization” header of your model HTTP request. This topic covers how to create, test, and use an API key in Cloudera Machine Learning.
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