Remove Data Preparation Remove Download Remove Python
article thumbnail

Four approaches to manage Python packages in Amazon SageMaker Studio notebooks

Flipboard

This post presents and compares options and recommended practices on how to manage Python packages and virtual environments in Amazon SageMaker Studio notebooks. Studio provides all the tools you need to take your models from data preparation to experimentation to production while boosting your productivity. Define a Dockerfile.

Python 123
article thumbnail

Use Snowflake as a data source to train ML models with Amazon SageMaker

AWS Machine Learning Blog

In such situations, it may be desirable to have the data accessible to SageMaker in the ephemeral storage media attached to the ephemeral training instances without the intermediate storage of data in Amazon S3. We add this data to Snowflake as a new table. Launch a SageMaker Training job for training the ML model.

ML 124
professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Automatically redact PII for machine learning using Amazon SageMaker Data Wrangler

AWS Machine Learning Blog

You can use SageMaker Data Wrangler to simplify and streamline dataset preprocessing and feature engineering by either using built-in, no-code transformations or customizing with your own Python scripts. For more details, refer to Integrating SageMaker Data Wrangler with SageMaker Pipelines. Add a destination node.

article thumbnail

Image Retrieval with IBM watsonx.data

IBM Data Science in Practice

Data Preparation Here we use a subset of the ImageNet dataset (100 classes). You can follow command below to download the data. Create a Milvus collection Define a schema for your collection in Milvus, specifying data types for image IDs and feature vectors (usually floats). Building the Image Search Pipeline 1.

article thumbnail

Boosting developer productivity: How Deloitte uses Amazon SageMaker Canvas for no-code/low-code machine learning

AWS Machine Learning Blog

Additionally, these tools provide a comprehensive solution for faster workflows, enabling the following: Faster data preparation – SageMaker Canvas has over 300 built-in transformations and the ability to use natural language that can accelerate data preparation and making data ready for model building.

article thumbnail

Train and deploy ML models in a multicloud environment using Amazon SageMaker

AWS Machine Learning Blog

SageMaker Studio allows data scientists, ML engineers, and data engineers to prepare data, build, train, and deploy ML models on one web interface. Finally, we deploy the ONNX model along with a custom inference code written in Python to Azure Functions using the Azure CLI. image and Python 3.0

ML 119
article thumbnail

Build an email spam detector using Amazon SageMaker

AWS Machine Learning Blog

We walk you through the following steps to set up our spam detector model: Download the sample dataset from the GitHub repo. Load the data in an Amazon SageMaker Studio notebook. Prepare the data for the model. Download the dataset Download the email_dataset.csv from GitHub and upload the file to the S3 bucket.