How to Create AI Chatbots for Work on Amazon Q

In today 8217 s fast paced business world companies are constantly looking for ways to streamline their operations and improve...

In today 8217 s fast paced business world companies are constantly looking for ways to streamline their operations and improve...

Microsoft has long been a leader in the technology industry known for its innovative products and cutting edge technology One...

Microsoft 8217 s Phi 3 Small Models also known as Phi 3S are a series of compact and powerful computing...

Video editing can be a time consuming and complex process requiring a good eye for detail and technical skills However...

Llama 3 is a popular automation app that allows users to create custom actions based on triggers such as location...

Google Cloud has recently announced a partnership with Sui a leading technology company to enhance its artificial intelligence AI security...

In the second part of our series on the impact of major computing trends on the field of science we...

In our previous article we discussed the impact of major computing trends on science focusing on the rise of artificial...

In the second part of our blog series on the impact of computing trends on science we will delve deeper...

In our previous article we discussed the impact of major computing trends on scientific advancements In this second part we...

In the ever evolving world of technology major computing trends have a significant impact on various fields including science In...

Former Pixar animator John Smith recently spoke out about the challenges he faced while working with Sora a popular character...

In recent years there has been a growing concern among world leaders about the use of autonomous weapons and artificial...

In recent years the development of autonomous weapons systems also known as 8220 killer robots 8221 has raised significant concerns...

In recent years the development of autonomous weapons and artificial intelligence AI technology has raised concerns among world leaders about...

GitHub the popular platform for software development and collaboration has recently introduced a groundbreaking new tool called Copilot Workspace This...

Researchers have made a groundbreaking discovery in the field of blood transfusions finding a novel method to convert A and...

In recent years major computing trends have had a significant impact on the field of science From the rise of...

In recent years major computing trends have had a significant impact on scientific advancements across various fields From artificial intelligence...

Developing and training large models in machine learning can be a time consuming and costly process However with the right...

Amazon SageMaker JumpStart a comprehensive machine learning platform offered by Amazon Web Services has recently announced the addition of Cohere...

Artificial Intelligence AI has made significant advancements in recent years with machines now able to perform complex tasks that were...

Tether a leading technology company has recently announced a major investment of $200 million to advance the development of technology...

Jensen Huang the CEO of NVIDIA recently spoke about the impact of artificial intelligence AI on job roles during a...

Generative artificial intelligence AI is a rapidly advancing technology that has the potential to revolutionize the way businesses operate in...

How to Use Amazon SageMaker Model Registry to Deploy Machine Learning Models Built in Amazon SageMaker Canvas to Production

Amazon SageMaker is a cloud-based machine learning platform that enables developers to build, train, and deploy machine learning models at scale. One of the key features of Amazon SageMaker is the Model Registry, which allows developers to manage and deploy machine learning models built in Amazon SageMaker Canvas to production.

In this article, we will explore how to use Amazon SageMaker Model Registry to deploy machine learning models built in Amazon SageMaker Canvas to production.

Step 1: Build and Train Your Machine Learning Model in Amazon SageMaker Canvas

The first step in deploying a machine learning model using Amazon SageMaker Model Registry is to build and train your model in Amazon SageMaker Canvas. Amazon SageMaker Canvas is a visual interface that allows developers to build and train machine learning models without writing any code.

To build and train your machine learning model in Amazon SageMaker Canvas, follow these steps:

1. Open the Amazon SageMaker console and select “Notebook instances” from the left-hand menu.

2. Click “Create notebook instance” and follow the prompts to create a new notebook instance.

3. Once your notebook instance is created, open JupyterLab and navigate to the “SageMaker Examples” tab.

4. Select the “Introduction to Amazon SageMaker Studio” example and follow the instructions to build and train your machine learning model.

Step 2: Create a Model Package in Amazon SageMaker

Once you have built and trained your machine learning model in Amazon SageMaker Canvas, the next step is to create a model package in Amazon SageMaker. A model package is a container that includes your trained machine learning model, as well as any dependencies or configuration files required to run the model.

To create a model package in Amazon SageMaker, follow these steps:

1. Open the Amazon SageMaker console and select “Model packages” from the left-hand menu.

2. Click “Create model package” and follow the prompts to create a new model package.

3. In the “Model details” section, select the algorithm and framework used to build your machine learning model.

4. In the “Model artifacts” section, upload the trained machine learning model from Amazon SageMaker Canvas.

5. In the “Environment” section, specify any dependencies or configuration files required to run the model.

6. Click “Create model package” to create your model package.

Step 3: Register Your Model Package in Amazon SageMaker Model Registry

Once you have created your model package in Amazon SageMaker, the next step is to register your model package in Amazon SageMaker Model Registry. Amazon SageMaker Model Registry is a central repository for managing and versioning machine learning models.

To register your model package in Amazon SageMaker Model Registry, follow these steps:

1. Open the Amazon SageMaker console and select “Model registry” from the left-hand menu.

2. Click “Create model” and follow the prompts to create a new model.

3. In the “Model details” section, specify the name and description of your model.

4. In the “Model artifacts” section, select the model package you created in Step 2.

5. Click “Create model” to register your model package in Amazon SageMaker Model Registry.

Step 4: Deploy Your Model to Production

Once you have registered your model package in Amazon SageMaker Model Registry, the final step is to deploy your model to production. Amazon SageMaker provides several options for deploying machine learning models, including Amazon SageMaker endpoints and AWS Lambda functions.

To deploy your model to production using Amazon SageMaker endpoints, follow these steps:

1. Open the Amazon SageMaker console and select “Endpoints” from the left-hand menu.

2. Click “Create endpoint” and follow the prompts to create a new endpoint.

3. In the “Endpoint configuration” section, select the model you registered in Step 3.

4. In the “Production variants” section, specify the number of instances and instance type for your endpoint.

5. Click “Create endpoint” to deploy your model to production.

Conclusion

Amazon SageMaker Model Registry is a powerful tool for managing and deploying machine learning models built in Amazon SageMaker Canvas to production. By following the steps outlined in this article, you can easily build, train, and deploy machine learning models at scale using Amazon SageMaker.