cid:
"bafyreic3mjenmzxktmbrviryrhzwszm3olxdog7hsu5x6pwdp5yqhec46q"
value:
tags:
"Advanced (300)"
"Amazon SageMaker"
text:
"Fine-tune Meta Llama 3.1 models using torchtune on Amazon SageMaker"
$type:
"app.bsky.feed.post"
embed:
$type:
"app.bsky.embed.external"
external:
$type:
"app.bsky.embed.external#external"
thumb:
$type:
"blob"
ref:
$link:
"bafkreicpga46t3sek7o5gihftvzd5zmo2uzufdeenatjtztocawpkg5a6a"
mimeType:
"image/png"
size:
204028
title:
"Fine-tune Meta Llama 3.1 models using torchtune on Amazon SageMaker | Amazon Web Services"
description:
"In this post, AWS collaborates with Meta’s PyTorch team to showcase how you can use Meta’s torchtune library to fine-tune Meta Llama-like architectures while using a fully-managed environment provided..."
createdAt:
"2024-09-20T13:00:19.196748Z"
success:
true
identity:
@context:
alsoKnownAs:
verificationMethod:
type:
"Multikey"
controller:
"did:plc:eflcixm74offw6go4gf5vj2d"
publicKeyMultibase:
"zQ3shXpTiDb3YGG35s4XDLbT3Pd17rh6kLAbGcNHXP5fZw4mr"
service:
id:
"#atproto_pds"
type:
"AtprotoPersonalDataServer"
serviceEndpoint:
"https://hydnum.us-west.host.bsky.network"