success:
true
identity:
@context:
alsoKnownAs:
verificationMethod:
type:
"Multikey"
controller:
"did:plc:ifuhvamy4znxnaaytd7ck2dm"
publicKeyMultibase:
"zQ3shh4Yd2WMJTpFYn1uRatQHE32j1RX4GvnzYcywGbfWXGj9"
service:
id:
"#atproto_pds"
type:
"AtprotoPersonalDataServer"
serviceEndpoint:
"https://agaric.us-west.host.bsky.network"
cid:
"bafyreiglct4c4ya7rmgfyxat6qjth7mvimpth3pzx62ye6j7pmrvtlrt6y"
value:
text:
"I enjoyed this post — it nicely summarizes a lot of the “explore using LLMs for that” exercises I do with my teams. I’ve found that for large, structured, data our best use case has been to treat the tools as copilots to assist in writing or debugging sql/python based on small data samples."
$type:
"app.bsky.feed.post"
langs:
"en"
reply:
root:
cid:
"bafyreifkkxajp2ar6p4ljv63ko3gkevp3ibvt56oduxbe5spnvbslcjgaq"
parent:
cid:
"bafyreifkkxajp2ar6p4ljv63ko3gkevp3ibvt56oduxbe5spnvbslcjgaq"
createdAt:
"2024-06-20T12:40:58.927Z"