File: //lib/python3/dist-packages/awscli/examples/comprehendmedical/detect-entities-v2.rst
**Example 1: To detect entities directly from text**
The following ``detect-entities-v2`` example shows the detected entities and labels them according to type, directly from input text. ::
aws comprehendmedical detect-entities-v2 \
--text "Sleeping trouble on present dosage of Clonidine. Severe rash on face and leg, slightly itchy."
Output::
{
"Id": 0,
"BeginOffset": 38,
"EndOffset": 47,
"Score": 0.9942955374717712,
"Text": "Clonidine",
"Category": "MEDICATION",
"Type": "GENERIC_NAME",
"Traits": []
},
For more information, see `Detect Entities Version 2 <https://docs.aws.amazon.com/comprehend/latest/dg/extracted-med-info-V2.html>`__ in the *Amazon Comprehend Medical Developer Guide*.
**Example 2: To detect entities from a file path**
The following ``detect-entities-v2`` example shows the detected entities and labels them according to type from a file path. ::
aws comprehendmedical detect-entities-v2 \
--text file://medical_entities.txt
Contents of ``medical_entities.txt``::
{
"Sleeping trouble on present dosage of Clonidine. Severe rash on face and leg, slightly itchy."
}
Output::
{
"Id": 0,
"BeginOffset": 38,
"EndOffset": 47,
"Score": 0.9942955374717712,
"Text": "Clonidine",
"Category": "MEDICATION",
"Type": "GENERIC_NAME",
"Traits": []
},
For more information, see `Detect Entities Version 2 <https://docs.aws.amazon.com/comprehend/latest/dg/extracted-med-info-V2.html>`__ in the *Amazon Comprehend Medical Developer Guide*.