Remove 2012 Remove Big data Remove Scripts
article thumbnail

Promote pipelines in a multi-environment setup using Amazon SageMaker Model Registry, HashiCorp Terraform, GitHub, and Jenkins CI/CD

AWS Machine Learning

Policy 3 – Attach AWSLambda_FullAccess , which is an AWS managed policy that grants full access to Lambda, Lambda console features, and other related AWS services.

Scripts 123
article thumbnail

Super charge your LLMs with RAG at scale using AWS Glue for Apache Spark

AWS Machine Learning

These embeddings are used to determine semantic similarity between queries and text from the data sources Solution overview In this solution, we use LangChain integrated with AWS Glue for Apache Spark and Amazon OpenSearch Serverless. About the Authors Noritaka Sekiyama is a Principal Big Data Architect on the AWS Glue team.

Insiders

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

Four approaches to manage Python packages in Amazon SageMaker Studio notebooks

AWS Machine Learning

When you open a notebook in Studio, you are prompted to set up your environment by choosing a SageMaker image, a kernel, an instance type, and, optionally, a lifecycle configuration script that runs on image startup. The main benefit is that a data scientist can choose which script to run to customize the container with new packages.

article thumbnail

Machine learning with decentralized training data using federated learning on Amazon SageMaker

AWS Machine Learning

The notebook instance client starts a SageMaker training job that runs a custom script to trigger the instantiation of the Flower client, which deserializes and reads the server configuration, triggers the training job, and sends the parameters response. script and a utils.py The client.py

Scripts 83
article thumbnail

Securing MLflow in AWS: Fine-grained access control with AWS native services

AWS Machine Learning

You can use this script add_users_and_groups.py After running the script, if you check the Amazon Cognito user pool on the Amazon Cognito console, you should see the three users created. import boto3 # Session using the SageMaker Execution Role in the Data Science Account session = boto3.Session() large', framework_version='1.0-1',

APIs 82
article thumbnail

Contact Center Trends 2021: The CX Watershed

Fonolo

A properly scripted menu leads customers to the answers they need, provides them with the opportunity to navigate to a live agent, and decreases the overall call volume that reaches the call center. Seven hundred twenty-two million smartphones were shipped in 2012, bringing the worldwide installed base to 1 billion. Emotion Detection.