NLU system entities
Summarize
Summary of NLU system entities
NLU system entities in ServiceNow Virtual Agent enable the extraction of system-relevant information from user conversations to enhance topic handling. These globally defined entities act as "nodeless" input variables that can be slot-filled using predictions from the NLU service provider or by external inputs beyond the topic's scope. They are enabled by default in NLU models and accessible via the Entities tab in the NLU Workbench.
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Key Entities and Their Practical Use
- GLOBAL.DATE: Captures date information with subtypes for DAY (specific date), WEEK (specific week of a year), MONTH (specific month), YEAR, and SEASON (e.g., Winter, Spring). It normalizes to standardized formats like "YYYY-MM-DD" for days or "YYYYFA" for fall season.
- GLOBAL.TIME: Extracts time data with subtypes for exact TIME (hour and minute) and PARTSOFDAY (morning, afternoon, evening, night) using standardized codes such as "T02:50" or "TMO".
- GLOBAL.DATETIME: Combines date and time into one normalized string accurate to the minute, e.g., "2022-10-31T17:00".
- GLOBAL.DURATION: Represents durations in seconds, minutes, hours, days, weeks, months, or years using a code format (e.g., "h48" for 48 hours).
- GLOBAL.LOCATION: Recognizes place names as string values, useful for location-based queries or actions.
- GLOBAL.PERSON: Identifies person names to capture user or mentioned individuals.
- GLOBAL.MONEY: Extracts currency amounts including the ISO 3166 currency code, supporting financial or purchasing contexts.
- GLOBAL.NUMBER: Detects numeric values useful for quantities or counts.
- GLOBAL.SOFTWARE and GLOBAL.HARDWARE: Recognize software and hardware product names, facilitating support or ordering conversations.
Why This Matters
These system entities enable Virtual Agent to precisely understand and normalize key data points from user input, improving the accuracy and context-awareness of conversations. This leads to more effective topic execution, better slot-filling, and enhanced user experience in automated dialogues.
What to Expect
ServiceNow customers can expect these entities to be pre-enabled and ready for use within their NLU models, providing consistent and standardized data extraction for a wide range of common conversational elements such as dates, times, durations, locations, people, money, numbers, software, and hardware. Example prediction outputs demonstrate how these entities appear in NLU results, showing normalized values and confidence scores that can be directly used in Virtual Agent scripting and workflows.
Use globally defined NLU entities to identify system information that Virtual Agent can extract from the conversation. You can define entities as "nodeless" input variables for a topic. These variables can be slot-filled from NLU service provider predictions or provided outside of the scope of the topic.
System entities are enabled in NLU models by default. You can view them on the model Entities tab in NLU Workbench.
GLOBAL.DATE system entity
The DAY SubType returns a date string that is accurate to a specific date.
| Usage | Example |
|---|---|
| Format | YYYY-MM-DD |
| Regular expression | \\d\\d\\d\\d-\\d\\d-\\d\\d |
| Input example | Mr. Smith left Friday, February 4, 2019. |
| Normalized value | 2019-02-04 |
| Code example | |
The WEEK SubType returns a date string of a specific week of a year.
| Usage | Example |
|---|---|
| Format | YYYY'W'WW |
| Regular expression | \\d\\d\\d\\d\\dW\\d\\d |
| Input example | Mr. Smith left the third week of 1999. |
| Normalized value | 1999W3 |
| Code example | |
The MONTH SubType returns a date string of a specific month of a year.
| Usage | Example |
|---|---|
| Format | YYYY'M'MM |
| Regular expression | \\d\\d\\d\\dM\\d\\d |
| Input example | Mr. Smith left in February of 1999. |
| Normalized value | 1999M02 |
| Code example | |
The YEAR SubType returns a date string of a specific year.
| Usage | Example |
|---|---|
| Format | YYYY |
| Regular expression | \\d\\d\\d\\d |
| Input example | Mr. Smith left in 1999. |
| Normalized value | 1999 |
| Code example | |
The SEASON SubType returns a date string of a specific season of the year.
| Usage | Example |
|---|---|
| Format | One of the following:
|
| Regular expression | One of the following:
|
| Input example | Mr. Smith left in the fall of 1999. |
| Normalized value | 1999FA |
| Code example | |
GLOBAL.TIME system entity
The TIME SubType returns a time string that is accurate to an hour and a minute.
| Usage | Example |
|---|---|
| Format | 'T'HH:mm |
| Regular expression | T\\d\\d:\\d\\d |
| Input example | Mr. Smith left at ten minutes to three. |
| Normalized value | T02:50 |
| Code example | |
The PARTSOFDAY SubType returns a time string that specifies parts of the day.
| Usage | Example |
|---|---|
| Format | One of the following:
|
| Regular expression | One of the following:
|
| Input example | Mr. Smith left in the morning. |
| Normalized value | TMO |
| Code example | |
GLOBAL.DATE_TIME system entity
The DATE_TIME SubType returns a date string that is accurate to a specific date and time string that is accurate to an hour and a minute.
| Usage | Example |
|---|---|
| Format | YYYY-MM-DD'T'HH:mm |
| Regular expression | \\d\\d\\d\\d-\\d\\d-\\d\\dT\\d\\d:\\d\\d |
| Input example | Mr. Smith leaves on October 31st at 5:00 p.m. |
| Normalized value | 2022-10-31T17:00 |
| Code example | |
GLOBAL.DURATION system entity
This entity returns a duration string that specifies the duration of the activity.
| Usage | Example |
|---|---|
| Format | One of the following:
|
| Regular expression | One of the following:
|
| Input example | Mr. Smith stayed in Boston for 48 hours. |
| Normalized value | h48 |
| Code example | |
GLOBAL.LOCATION system entity
This entity returns a location string.
| Usage | Example |
|---|---|
| Format | String value. Example: Santa Clara |
| Regular expression | Not applicable. |
| Input example | Mr. Smith works in Santa Clara. |
| Normalized value | Santa Clara |
| Code example | |
GLOBAL.PERSON system entity
This entity returns a name string.
| Usage | Example |
|---|---|
| Format | String value. Example: Joe Smith |
| Regular expression | Not applicable. |
| Input example | Joe Smith works in Santa Clara. |
| Normalized value | Joe Smith |
| Code example | |
GLOBAL.MONEY system entity
This entity returns a currency string.
| Usage | Example |
|---|---|
| Format | String value. Example: USD 2000 |
| Regular expression | Not applicable. |
| Input example | Show me laptops for less than $2000. |
| Normalized value | USD 2000 Note: The normalized value uses the three-letter ISO 3166 country
code of the source currency. |
| Code example | |
GLOBAL.NUMBER system entity
This entity returns a number.
| Usage | Example |
|---|---|
| Format | String value. Example: 5.0 |
| Regular expression | Not applicable. |
| Input example | I want to see the previous 5 transactions from my account. |
| Normalized value | 5.0 |
| Code example | |
GLOBAL.SOFTWARE
Returns a software string.
| Usage | Example |
|---|---|
| Format | String value. Example: Java |
| Regular expression | Not applicable. |
| Input example | How do I install Java? |
| Normalized value | Java |
| Code example | |
GLOBAL.HARDWARE
Returns a hardware string.
| Usage | Example |
|---|---|
| Format | String value. Example: printer |
| Regular expression | Not applicable. |
| Input example | How do I order a printer? |
| Normalized value | printer |
| Code example | |
Example NLU prediction result using Software system entity
{"status":"success",
"response":{
"utterance":"How do I install Java?",
"intents":[
{
"intentName":"test intent",
"nluModelName":"ml_x_snc_global_global_268a97a9dbd23c107906265d1396191a",
"score":0.90401393,
"intents":[
],
"entities":[
{
"name":"entity:GLOBAL.SOFTWARE",
"value":"Java",
"score":0.99930537,
"normalization":{
"type":"entity:GLOBAL.SOFTWARE",
"subType":"SOFTWARE",
"value":"Java"
},
"startingPosition":-1
}
]
}
],
"properties":{
"all:ml_x_snc_global_global_268a97a9dbd23c107906265d1396191a":"0.55",
"entity:all":"0.01",
"inference.sspace.time":"4",
"inference.time":"33",
"intent:all":"0.01",
"nluPlatformLanguage":"en",
"nluPlatformVersion":"rome.0"
}
}
}
Example NLU prediction result using DATE system entity
{
"utterance": "We should meet next Sunday at Starbucks.",
"intents": [
{
"intentName": "intent:Desire.Desire",
"score": 0.83452,
"entities": []
},
{
"intentName": "intent:Meeting.MeetRequest",
"score": 0.8919042,
"entities": [
{
"entityName": "entity:Meeting.MeetRequest.Where",
"value": "Starbucks",
"score": 1
},
{
"entityName": "entity:GLOBAL.DATE",
"value": "Sunday",
"normalization": { "type": "DATE",
"subType": "DAY",
"value": "1999-10-01"
},
"score": 0.87
}
]
}
]
}