sentence embedding model - all-mpnet-base-v2 Test dataset - Kaggle
I used the data uploader in kibana
GET fashion_clothing_products-ori/_search
DELETE old_semantic_text | |
## Semantic Text Field Type 8.17 and Earlier | |
############################################################ | |
############ Create Mapping - Can Not create multifield | |
PUT old_semantic_text | |
{ | |
"mappings": { | |
"properties": { | |
"text": { |
from faker import Faker | |
import random | |
import datetime | |
# Create an instance of the Faker class | |
faker = Faker() | |
# Define the number of logs | |
num_logs = 1000000 |
sentence embedding model - all-mpnet-base-v2 Test dataset - Kaggle
I used the data uploader in kibana
GET fashion_clothing_products-ori/_search
PUT _ingest/pipeline/pii_script-redact
Click Here for Example Jupyter Notebooks
Short Link to this gist - ela.st/operationalize-nlp
NER models can be used two ways in elasticsearch:
_infer
endpoint. The string will be processed by the model and the response message will include any identified entities. Same output as #1, but this is done adhoc, and the results are not stored.will update shortly |
# Preview and create transform | |
# PUT _transform/churn | |
POST _transform/_preview | |
{ | |
"source": { | |
"index": [ | |
"churn_demo-calls", | |
"churn_demo-customers" | |
] | |
}, |