We’re always happy with any other questions you might have. Send us an email at [email protected]
Apply Tisane Entity Extraction to Open Measures Parler
Top companies trust Datastreamer to integrate, enrich, join, and apply their web data needs.
About Tisane Entity Extraction
Detect mentions of people, organizations, locations, filenames, phone numbers, crypto addresses, and more.
Entities are elements of relevance or interest in the text. Tisane extracts both standard entities and those relevant to trust & safety/law enforcement applications.
Standard entities are names of people, their social roles, organizations, places, and so on. We also extract cryptocurrency addresses, bank accounts, credit card numbers, phone numbers, software package names, and more.
Every entity entry is an object made of:
type - the type of the entity
name - a standard name, if exists; otherwise, the string that was logged
subtypes - more detailed additional types
subtype - the first subtype (for backward compatibility purposes)
mentions - an array of all detected mentions, with:
offset
length
sentence_index
text
wikidata - a Wikidata ID, if exists
About Open Measures Parler
Collect and extract posts, comments and user profiles on Parler.
Quickly apply Tisane Entity Extraction to Open Measures Parler with a Datstreamer Pipeline.
Step 1
Start your Pipeline with Open Measures Parler
Enterprise-grade data pipelines begin with flexible data ingestion. Web data—sourced from partners, internal platforms, or the open internet—provides the raw inputs needed for integration and transformation.
Step 2
Add Tisane Entity Extraction with an Operation
To accelerate using your web data, you can apply any number of operations to the data. Enrich, augment, join, structure, filter, storage, search, or more! Datastreamer has hundreds of plug-and-play operations that you can apply.
Step 3
That's it! You have just connected Tisane Entity Extraction and Open Measures Parler
With Datastreamer it’s never been easier to use web data. You can dynamically expand your Pipelines with more capabilities, and you’ve now been able to solve your operational bottlenecks in working with web data.