Remove 10 16 organizations-build-back-ends-big-data
article thumbnail

Extract non-PHI data from Amazon HealthLake, reduce complexity, and increase cost efficiency with Amazon Athena and Amazon SageMaker Canvas

AWS Machine Learning Blog

In today’s highly competitive market, performing data analytics using machine learning (ML) models has become a necessity for organizations. It enables them to unlock the value of their data, identify trends, patterns, and predictions, and differentiate themselves from their competitors.

ML 101
article thumbnail

A review of purpose-built accelerators for financial services

AWS Machine Learning Blog

Data contains information, and information can be used to predict future behaviors, from the buying habits of customers to securities returns. Businesses are seeking a competitive advantage by being able to use the data they hold, apply it to their unique understanding of their business domain, and then generate actionable insights from it.

AWS 118
professionals

Sign Up for our Newsletter

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

article thumbnail

Getting started with LLMs: a benchmark for the 'What's Up, Docs?' challenge

DrivenData Labs

This is a post with code that builds a benchmark for our What's Up, Docs? The goal of this competition is to build a computer program that will summarize long English documents for us. LLMs are big and can't be run on most regular-person computers, so the biggest and best are mostly available as APIs that cost money to use.

Python 130
article thumbnail

What Can We Learn about Engineering and Innovation from Half a Century of the Game of Life Cellular Automaton?

Hacker News

Its the effort to build engineering structures within the Game of Life cellular automaton. In the end, we can think of the set of things that we can in principle engineer as being laid out in a kind of metaengineering space, much as we can think of mathematical theorems we can prove as being laid out in metamathematical space.

Algorithm 157
article thumbnail

Fine-tune Meta Llama 3.2 text generation models for generative AI inference using Amazon SageMaker JumpStart

AWS Machine Learning Blog

To address these gaps and maximize their utility in specialized scenarios, fine-tuning with domain-specific data is essential to boost accuracy and relevance. On the other end of the spectrum, the larger Llama-3.2-11B SageMaker JumpStart allows for full customization of pre-trained models to suit specific use cases using your own data.

AI 117