ISEEK Description

ISEEK runs entirely in memory and is the embodiment of a patent process. It is an automated tool that can run concurrently on any number of computers. It operates invisibly according to an encrypted set of instructions. The results of ISEEK's processing can be encrypted and sent to a specified location in the set instructions. This location can be a local disk, network share, or cloud storage. You can also review and process the contents from encrypted results containers. Once ISEEK has been used in identifying the required data and reducing the volume for further review, it allows multiple encrypted result containers to have their contents extracted into a variety of formats (with optional XML meta-data) for ingesting with a review tool. These formats include generic load files as well as a Relativity-specific loading file.

Pricing

Free Trial:
Yes

Integrations

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Company Details

Company:
XtremeForensics
Year Founded:
2013
Headquarters:
United States
Website:
www.xtremeforensics.com/iseekdiscovery-1

Media

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Product Details

Platforms
SaaS
Windows
Type of Training
Documentation
Live Online
Webinars
In Person
Customer Support
Phone Support
24/7 Live Support
Online

ISEEK Features and Options

eDiscovery Software

Case Analytics
Compliance Management
Discussion Threads
Document Indexing
Document Tracking
Full Text Extraction
Keyword Search
Metadata Extraction
Topic Clustering