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Exchange | NYSE |
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CurrencyCode | USD |
Sector | Technology |
Industry | Software - Application |
ISIN | US1263271058 |
Beta | 2.06 |
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Market Cap | 219M |
Target Price | 6.4167 |
PE Ratio | None |
Dividend Yield | None |
CS Disco, Inc. provides cloud-native and artificial intelligence-powered legal products for legal hold, legal request, ediscovery, legal document review, and case management in the United States and internationally. The company offers DISCO Hold which automates the manual work to comply with preservation requirements, preserve data, notify custodians, track holds with audit trail, and collect data; DISCO Request that automates response compliance for legal requests, such as service of process requests, subpoenas, and law enforcement requests;and DISCO Ediscovery which automates ediscovery process and saving legal departments from manual tasks associated with collecting, processing, enriching, searching, reviewing, analyzing, producing, and using enterprise data that is at issue in legal matters. It also provides DISCO Review, an AI-powered document review that delivers legal document reviews; and DISCO Case Builder that allows legal professionals to collaborate across teams by offering a single place to search, organize, and review witness testimony and other important legal data. The company's products are used for various legal matters comprising litigation, investigation, compliance, and diligence. It serves enterprises, law firms, legal services providers, and governments. CS Disco, Inc. was founded in 2012 and is headquartered in Austin, Texas.
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