SlideShare a Scribd company logo
EFFICIENT HANDLING OF SUBJECT ACCESS
REQUESTS
TODAY’S WEBCAST
Presenters
Tom Gilsenan Johannes Scholtes
Director CSO
Informa ZyLAB
Agenda
 Terminology
 Process Similarities: Public Disclosure &
eDiscovery
 Why Automation is Needed: Challenges of
Public Disclosure
 Automation Best Practices
 Customer Profiles
 Conclusions, more information and
recommendations
WHAT
ARE WE
TALKING
ABOUT
Data Protection Acts 1988 and 2003: allow members of the public to obtain public records
from government (funded) bodies.
“AN ACT TO GIVE EFFECT TO THE CONVENTION FOR THE PROTECTION OF
INDIVIDUALS WITH REGARD TO AUTOMATIC PROCESSING OF PERSONAL DATA
AND FOR THAT PURPOSE TO REGULATE IN ACCORDANCE WITH ITS PROVISIONS
THE COLLECTION, PROCESSING, KEEPING, USE AND DISCLOSURE OF CERTAIN
INFORMATION RELATING TO INDIVIDUALS THAT IS PROCESSED AUTOMATICALLY. ”
Source: https://www.dataprotection.ie/documents/legal/CompendiumAct.pdf
DIFFERENT REGULATIONS
PUBLIC DISCLOSURE AND SUBJECT ACCESS REQUESTS
 Speed and completeness of disclosure
 Satisfying both the Government responsibilities and the rights of
the Requester
 Identifying records that meet exception, confidentiality, and
personal information criteria
 Maintaining transparency—defending exceptions in the court of
public opinion
 Defending the disclosure in the court
PROCEDURAL ISSUES
NUMBER OF REQUESTS IS GROWING
“It is now clear that
since 2014 there has
been an unprecedented
surge in the number of
AIE requests made to
Irish public authorities”
Source:
http://www.ocei.gov.ie/e
n/publications/annual-
reports/annualreport201
6/chapter5.html
 Increasing Volume: Number, size & breadth of requests e.g.,
documents mentioning of XYZ across all data sources
 Complex Data: Paper, architectural blueprints, un/structured,
audio, video, social media
 Distributed Data: By department, geography, on-premises &
cloud
 High Costs: Personnel manually search, process, review &
disclose; printing; IT infrastructure
 Short Timelines: Responses often required within 20 days
 New regulations for privacy and data protection add additional
complexity
CHALLENGES OF PUBLIC DISCLOSURE
 What is the definition of a draft? When do
these need to be disclosed?
 Dealing Personal Identifiable Information
(PII) and Protected Health Information (PHI).
 Handling litigation documents.
 Different deadlines for responding.
 Different cost structures (pay per page or
pay per request).
 Different redaction rules and different ways
to identify redactions in the documents.
 Different disclosure formats and methods.
VARIATIONS IN EXCEPTIONS, EXEMPTIONS, DEADLINES
THEREFOR WE NEED
AUTOMATION
DIY SELF-SERVICE UPLOAD
DIRECTLY COLLECT DATA FROM ITS ORIGINAL LOCATION
Upload extra information of the investigation yourself (PST, disks, USB)
SLIDE / 11
Full-Text index with the ZyLAB
IM Platform:
 File systems
 Legacy email collections (msg)
Collect only full-text query-based
information.
SLIDE / 12
SEARCH BASED COLLECTIONS
WHAT KIND OF AUTOMATION ARE WE TALKING ABOUT?
Deep Processing Analysis Review Acceleration
Support for 700+ file formats Email Threading Faceted Navigation &
Dashboards
Support for Compound &
Compressed formats
Deduplication &
Near Duplicate Analysis
Advanced Tagging Workflow
Embedded Object Extraction Advanced Entity Extraction Assisted Review with AI &
Machine Translation
OCR Non-searchable content Automatic Classification
(Pre-Tagging)
Manual & Automatic Redaction
Index Audio Content AI-Based Topic Modeling Flexible Production Formats
AUTOMATE DEDUPLICATION
• By Custodian
• By Matter
• De-duplication can be done
by hash value which can be
keyed off of different
metadata fields
NEAR DUPLICATE DETECTION
T1
T2T1 ~ T1
SLIDE / 16
COLLECTION REPORT
AUTOMATE CATEGORIZATION
Use Auto-Classification & Analytics Scenarios to slice, dice & tag your data
AUTOMATE DATA VISUALIZATION
Predefine Facets for Exemption Codes, Departments, Custodians etc.
 Privileged
information:
automatically identify
communications with
our lawyers.
 PII, PHI, and GDPR:
redaction and
pseudonymization
DEAL WITH LEGAL ASPECTS
SLIDE / 19
Structured and unstructured information (and all combinations)
AUTOMATE SEARCH
AUTOMATE TAGGING DECISIONS
Benefit from Reviewing in Full Context of Family Groups, Email Threads, then Bulk Tag
AUDIO SEARCH
SLIDE / 22
 Boolean keyword queries are often defined so they pick up a white range
of potentially relevant documents to avoid the risk of missing relevant data,
this results in picking up a lot of noise as well. Reviewing all these non-
relevant documents leads to higher review cost than essential.
 Highly experienced analysts with many years of experience who manage
all query options are able to reach recall levels of 70-80%, but most
normal investigators do not have all the knowledge to do so. As a result,
they often find only part of the answers.
 In both cases, the reviewer, analyst or investigator does not know exactly
how much they actually found and what is still missing.
By using machine learning we can tackle all the above problems.
BUT DOES EVERYBODY KNOW HOW TO SEARCH …
SLIDE / 23
SLIDE / 25
DEMO: ZYLAB MACHINE LEARNING ON ENRON DATA SET
0
200
400
600
800
1000
1200
1400
1600
ZyLAB Assisted Review Manual Review
Hours
MACHINE LEARNING: SMARTER, BETTER & FASTER
 15-20 faster than manual review
 10-20% more accurate, fully defensible
SLIDE / 26
SLIDE / 27
FLEXIBLE BUT POWERFUL PRODUCTIONS
AUTOMATE SHARING DISCLOSURES WITH THE PUBLIC
SLIDE / 28
https://nepis.epa.gov
 Industry-leading technology made affordable
 Advanced features available to all clients
 Manageable whether you have a large legal and/or litigation-
support department or none
 Scalable to support companies and firms of any size
FOR CASES OF ANY SIZE
 Your environment is ready within a week of signing a contract
 We will work with your to migrate existing matters or set up new
matters.
 Upload data to the matter or ship to ZyLAB Intake.
 Review User Training provided.
 Support and Additional Services available as needed.
HOW TO GET STARTED WITH SAAS
 Using ZyLAB software for the handling of FOIA and
Public Records Requests leads to huge time and
resource savings, less probability for errors and less
risk to damage your citizens, employees or
organization by accidental disclosures. Organizations
using ZyLAB for FOIA have quoted this functionality
to be a Productivity Revolution. - IT Director, City
Government, U.S.
 “At the end of an administration, turning over all email
to NARA could take up to a year. With ZyLAB, the
NSC can now just turn over the server to NARA.
ZyLAB’s XML format is our standard archival format
for e-mails.” - Jason Baron, (Former) Director of
Litigation at the National Archives
SLIDE / 32
 Integrate with open source and 3rd party case management tools.
 Collect and search directly across from email boxes, O365, file shares,
other electronic content repositories and even paper collections to identify
potentially relevant documents.
 Automatic classification of collected documents per department, document
type, custodian, withholding reasons, exemptions and many other relevant
document categories.
 Auto-redact Personal Identifiable Information (PII) and Protected Health
Information (PHI).
 Easy to use review and production functionality, including powerful review
accelerators and reporting functionality developed in the demanding world
of eDiscovery.
 Share user friendly and powerful search of old disclosures with public to
limit number of new requests.
BENEFITS OF USING ZYLAB FOR SUBJECT ACCESS
REQUESTS
ZYLAB BENEFIT TO IT
 ZyLAB’s direct collection and robust processing automates many of the
manual tasks IT normally has to perform on very short notice and often in
weekends by legal. This saves IT tremendous efforts, resources and
overtime.
 ZyLAB’s scalable and flexible architecture allows IT to scale up and scale
down eDiscovery resources as needed without the need to reinstall the
software or redeploy the data over multiple resources.
 ZyLAB’s ability to run both on-premises, private cloud, Azure or in hybrid
environments, allows organizations to select the most optimal architecture
for a specific eDiscovery projects.
 ZyLAB’s ability to run in Azure allows direct collection to O365 resources
from a close by (fast collection times) computer facility in the same
jurisdiction as the O365 runs in. In Azure, ZyLAB perfectly fits Azure ability
to spin-on and spin-off machines as needed.
34
SIGN UP FOR OUR COMMUNITY
MORE READING – WWW.ZYLAB.COM/RESOURCES/EBOOKS/
SLIDE / 37
Q&A
MORE INFORMATION: WWW.ZYLAB.COM
38
More ZyLAB Webinars and events:
https://zylab.com/company/event-calendar/

More Related Content

What's hot

Big data security the perfect storm
Big data security   the perfect stormBig data security   the perfect storm
Big data security the perfect stormUlf Mattsson
 
Complete Guide to Technology for Lawyers and Law Firms - Legodesk
Complete Guide to Technology for Lawyers and Law Firms - LegodeskComplete Guide to Technology for Lawyers and Law Firms - Legodesk
Complete Guide to Technology for Lawyers and Law Firms - Legodesk
Legodesk - Legal Practice Management Software
 
Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...
Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...
Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...
Khaled El Emam
 
Data breach protection from a DB2 perspective
Data breach protection from a  DB2 perspectiveData breach protection from a  DB2 perspective
Data breach protection from a DB2 perspectiveCraig Mullins
 
ZyLAB ACEDS Webinar- GDPR
ZyLAB ACEDS Webinar- GDPR ZyLAB ACEDS Webinar- GDPR
ZyLAB ACEDS Webinar- GDPR
Annelore van der Lint
 
Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014
Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014
Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014
kevintsmith
 
Blockchain - Hype or Reality
Blockchain - Hype or RealityBlockchain - Hype or Reality
Blockchain - Hype or Reality
snewell4
 
Technology, Inside the Black Box
Technology, Inside the Black BoxTechnology, Inside the Black Box
Technology, Inside the Black Box
Fujitsu UK
 
Privacy and Big Data Overload!
Privacy and Big Data Overload!Privacy and Big Data Overload!
Privacy and Big Data Overload!
SparkPost
 
Bringing eDiscovery In-House for Dummies
Bringing eDiscovery In-House for DummiesBringing eDiscovery In-House for Dummies
Bringing eDiscovery In-House for Dummies
EMC
 
Privacy Preserved Data Augmentation using Enterprise Data Fabric
Privacy Preserved Data Augmentation using Enterprise Data FabricPrivacy Preserved Data Augmentation using Enterprise Data Fabric
Privacy Preserved Data Augmentation using Enterprise Data Fabric
Atif Shaikh
 
Frukostseminarium om molntjänster
Frukostseminarium om molntjänsterFrukostseminarium om molntjänster
Frukostseminarium om molntjänster
Transcendent Group
 
Big Data & Privacy
Big Data & PrivacyBig Data & Privacy
Big Data & Privacy
Abzetdin Adamov
 
Big data contains valuable information - Protect It!
Big data contains valuable information - Protect It!Big data contains valuable information - Protect It!
Big data contains valuable information - Protect It!
Praveenkumar Hosangadi
 
Sampo Kellomäki (Synergetics) @ PIDS seminar
Sampo Kellomäki (Synergetics) @ PIDS seminarSampo Kellomäki (Synergetics) @ PIDS seminar
Sampo Kellomäki (Synergetics) @ PIDS seminar
AlmereDataCapital
 
Enterprise Blockchain
Enterprise BlockchainEnterprise Blockchain
Enterprise Blockchain
snewell4
 
Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3
Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3
Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3J. David Morris
 
Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...
Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...
Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...
Ted Myerson
 

What's hot (19)

Big data security the perfect storm
Big data security   the perfect stormBig data security   the perfect storm
Big data security the perfect storm
 
Complete Guide to Technology for Lawyers and Law Firms - Legodesk
Complete Guide to Technology for Lawyers and Law Firms - LegodeskComplete Guide to Technology for Lawyers and Law Firms - Legodesk
Complete Guide to Technology for Lawyers and Law Firms - Legodesk
 
Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...
Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...
Big Data Meets Privacy:De-identification Maturity Model for Benchmarking and ...
 
Data breach protection from a DB2 perspective
Data breach protection from a  DB2 perspectiveData breach protection from a  DB2 perspective
Data breach protection from a DB2 perspective
 
ZyLAB ACEDS Webinar- GDPR
ZyLAB ACEDS Webinar- GDPR ZyLAB ACEDS Webinar- GDPR
ZyLAB ACEDS Webinar- GDPR
 
Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014
Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014
Big Data Security and Privacy - Presentation to AFCEA Cyber Symposium 2014
 
Blockchain - Hype or Reality
Blockchain - Hype or RealityBlockchain - Hype or Reality
Blockchain - Hype or Reality
 
Technology, Inside the Black Box
Technology, Inside the Black BoxTechnology, Inside the Black Box
Technology, Inside the Black Box
 
Privacy and Big Data Overload!
Privacy and Big Data Overload!Privacy and Big Data Overload!
Privacy and Big Data Overload!
 
Bringing eDiscovery In-House for Dummies
Bringing eDiscovery In-House for DummiesBringing eDiscovery In-House for Dummies
Bringing eDiscovery In-House for Dummies
 
Privacy Preserved Data Augmentation using Enterprise Data Fabric
Privacy Preserved Data Augmentation using Enterprise Data FabricPrivacy Preserved Data Augmentation using Enterprise Data Fabric
Privacy Preserved Data Augmentation using Enterprise Data Fabric
 
Frukostseminarium om molntjänster
Frukostseminarium om molntjänsterFrukostseminarium om molntjänster
Frukostseminarium om molntjänster
 
Big Data & Privacy
Big Data & PrivacyBig Data & Privacy
Big Data & Privacy
 
Big data contains valuable information - Protect It!
Big data contains valuable information - Protect It!Big data contains valuable information - Protect It!
Big data contains valuable information - Protect It!
 
Sampo Kellomäki (Synergetics) @ PIDS seminar
Sampo Kellomäki (Synergetics) @ PIDS seminarSampo Kellomäki (Synergetics) @ PIDS seminar
Sampo Kellomäki (Synergetics) @ PIDS seminar
 
Enterprise Blockchain
Enterprise BlockchainEnterprise Blockchain
Enterprise Blockchain
 
Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3
Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3
Contoural Kazeon Webinar Insourcing E Discovery Nov 08 V1 1 3
 
Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...
Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...
Anonos NIST Comment Letter – De–Identification Of Personally Identifiable Inf...
 
02 05 d_51_cc_efiles
02 05 d_51_cc_efiles02 05 d_51_cc_efiles
02 05 d_51_cc_efiles
 

Similar to Efficiently Handling Subject Access Requests

TECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTS
TECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTSTECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTS
TECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTS
Annelore van der Lint
 
How new ai based analytics ignite a productivity revolution in e discovery-final
How new ai based analytics ignite a productivity revolution in e discovery-finalHow new ai based analytics ignite a productivity revolution in e discovery-final
How new ai based analytics ignite a productivity revolution in e discovery-final
jcscholtes
 
ACEDS - ZyLAB webinar - AI Based eDiscovery Analytics
ACEDS - ZyLAB webinar - AI Based eDiscovery AnalyticsACEDS - ZyLAB webinar - AI Based eDiscovery Analytics
ACEDS - ZyLAB webinar - AI Based eDiscovery Analytics
Annelore van der Lint
 
PREPARING FOR THE GDPR
PREPARING FOR THE GDPRPREPARING FOR THE GDPR
PREPARING FOR THE GDPR
Annelore van der Lint
 
Global Data Management: Governance, Security and Usefulness in a Hybrid World
Global Data Management: Governance, Security and Usefulness in a Hybrid WorldGlobal Data Management: Governance, Security and Usefulness in a Hybrid World
Global Data Management: Governance, Security and Usefulness in a Hybrid World
Neil Raden
 
Project 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docx
Project 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docxProject 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docx
Project 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docx
stilliegeorgiana
 
Wp security-data-safe
Wp security-data-safeWp security-data-safe
Wp security-data-safe
ALI ANWAR, OCP®
 
[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information
[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information
[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information
AIIM International
 
BBDO Proximity: Big-data May 2013
BBDO Proximity: Big-data May 2013BBDO Proximity: Big-data May 2013
BBDO Proximity: Big-data May 2013Brian Crotty
 
Big Data
Big DataBig Data
Big Data
BBDO
 
141900791 big-data
141900791 big-data141900791 big-data
141900791 big-dataglittaz
 
Unit 1
Unit 1Unit 1
eBook: 5 Steps to Secure Cloud Data Governance
eBook: 5 Steps to Secure Cloud Data GovernanceeBook: 5 Steps to Secure Cloud Data Governance
eBook: 5 Steps to Secure Cloud Data Governance
Kim Cook
 
Introduction to Information Governance and eDiscovery in the Cloud
Introduction to Information Governance and eDiscovery in the CloudIntroduction to Information Governance and eDiscovery in the Cloud
Introduction to Information Governance and eDiscovery in the Cloud
eDiscoveryConsultant
 
Big data security
Big data securityBig data security
Big data security
Anne ndolo
 
Big data security
Big data securityBig data security
Big data security
Anne ndolo
 
Exploring new mobile and cloud platforms without a governance .docx
Exploring new mobile and cloud platforms without a governance .docxExploring new mobile and cloud platforms without a governance .docx
Exploring new mobile and cloud platforms without a governance .docx
ssuser454af01
 
Governing the Chaos
Governing the ChaosGoverning the Chaos
Governing the Chaos
John Hansen
 
Big Data - CRM's Promise Land
Big Data - CRM's Promise LandBig Data - CRM's Promise Land
Big Data - CRM's Promise Land
Danny Camprubi Douglas
 
Fluency® - www.fluencysecurity.com
Fluency® - www.fluencysecurity.com Fluency® - www.fluencysecurity.com
Fluency® - www.fluencysecurity.com
Collin Miles
 

Similar to Efficiently Handling Subject Access Requests (20)

TECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTS
TECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTSTECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTS
TECHNOLOGY FOR HANDLING FOIA & PUBLIC DISCLOSURE REQUESTS
 
How new ai based analytics ignite a productivity revolution in e discovery-final
How new ai based analytics ignite a productivity revolution in e discovery-finalHow new ai based analytics ignite a productivity revolution in e discovery-final
How new ai based analytics ignite a productivity revolution in e discovery-final
 
ACEDS - ZyLAB webinar - AI Based eDiscovery Analytics
ACEDS - ZyLAB webinar - AI Based eDiscovery AnalyticsACEDS - ZyLAB webinar - AI Based eDiscovery Analytics
ACEDS - ZyLAB webinar - AI Based eDiscovery Analytics
 
PREPARING FOR THE GDPR
PREPARING FOR THE GDPRPREPARING FOR THE GDPR
PREPARING FOR THE GDPR
 
Global Data Management: Governance, Security and Usefulness in a Hybrid World
Global Data Management: Governance, Security and Usefulness in a Hybrid WorldGlobal Data Management: Governance, Security and Usefulness in a Hybrid World
Global Data Management: Governance, Security and Usefulness in a Hybrid World
 
Project 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docx
Project 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docxProject 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docx
Project 3 – Hollywood and IT· Find 10 incidents of Hollywood p.docx
 
Wp security-data-safe
Wp security-data-safeWp security-data-safe
Wp security-data-safe
 
[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information
[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information
[Webinar Slides] Data Privacy – Learn What It Takes to Protect Your Information
 
BBDO Proximity: Big-data May 2013
BBDO Proximity: Big-data May 2013BBDO Proximity: Big-data May 2013
BBDO Proximity: Big-data May 2013
 
Big Data
Big DataBig Data
Big Data
 
141900791 big-data
141900791 big-data141900791 big-data
141900791 big-data
 
Unit 1
Unit 1Unit 1
Unit 1
 
eBook: 5 Steps to Secure Cloud Data Governance
eBook: 5 Steps to Secure Cloud Data GovernanceeBook: 5 Steps to Secure Cloud Data Governance
eBook: 5 Steps to Secure Cloud Data Governance
 
Introduction to Information Governance and eDiscovery in the Cloud
Introduction to Information Governance and eDiscovery in the CloudIntroduction to Information Governance and eDiscovery in the Cloud
Introduction to Information Governance and eDiscovery in the Cloud
 
Big data security
Big data securityBig data security
Big data security
 
Big data security
Big data securityBig data security
Big data security
 
Exploring new mobile and cloud platforms without a governance .docx
Exploring new mobile and cloud platforms without a governance .docxExploring new mobile and cloud platforms without a governance .docx
Exploring new mobile and cloud platforms without a governance .docx
 
Governing the Chaos
Governing the ChaosGoverning the Chaos
Governing the Chaos
 
Big Data - CRM's Promise Land
Big Data - CRM's Promise LandBig Data - CRM's Promise Land
Big Data - CRM's Promise Land
 
Fluency® - www.fluencysecurity.com
Fluency® - www.fluencysecurity.com Fluency® - www.fluencysecurity.com
Fluency® - www.fluencysecurity.com
 

More from jcscholtes

Legal tech Alliance Workshop 20191029
Legal tech Alliance Workshop 20191029Legal tech Alliance Workshop 20191029
Legal tech Alliance Workshop 20191029
jcscholtes
 
LegalTech Alliance eDiscovery keynote Scholtes
LegalTech Alliance eDiscovery keynote ScholtesLegalTech Alliance eDiscovery keynote Scholtes
LegalTech Alliance eDiscovery keynote Scholtes
jcscholtes
 
Text mining scholtes - big data congress utrecht 2019
Text mining   scholtes - big data congress utrecht 2019Text mining   scholtes - big data congress utrecht 2019
Text mining scholtes - big data congress utrecht 2019
jcscholtes
 
Target-Based Sentiment Anaysis as a Sequence-Tagging Task
Target-Based Sentiment Anaysis as a Sequence-Tagging TaskTarget-Based Sentiment Anaysis as a Sequence-Tagging Task
Target-Based Sentiment Anaysis as a Sequence-Tagging Task
jcscholtes
 
Ai and applications in the legal domain studium generale maastricht 20191101
Ai and applications in the legal domain studium generale maastricht 20191101Ai and applications in the legal domain studium generale maastricht 20191101
Ai and applications in the legal domain studium generale maastricht 20191101
jcscholtes
 
Augmented intelligence and the impact on your world in 2030
Augmented intelligence and the impact on your world in 2030Augmented intelligence and the impact on your world in 2030
Augmented intelligence and the impact on your world in 2030
jcscholtes
 
Text mining voor Business Intelligence toepassingen
Text mining voor Business Intelligence toepassingenText mining voor Business Intelligence toepassingen
Text mining voor Business Intelligence toepassingen
jcscholtes
 
How can text-mining leverage developments in Deep Learning? Presentation at ...
How can text-mining leverage developments in Deep Learning?  Presentation at ...How can text-mining leverage developments in Deep Learning?  Presentation at ...
How can text-mining leverage developments in Deep Learning? Presentation at ...
jcscholtes
 
Hogeschool Den Haag Legal Analytics
Hogeschool Den Haag Legal AnalyticsHogeschool Den Haag Legal Analytics
Hogeschool Den Haag Legal Analytics
jcscholtes
 
HvA Legaltech Lab Opening
HvA Legaltech Lab OpeningHvA Legaltech Lab Opening
HvA Legaltech Lab Opening
jcscholtes
 
Big Data en Data Science en de Rechtspraak
Big Data en Data Science en de RechtspraakBig Data en Data Science en de Rechtspraak
Big Data en Data Science en de Rechtspraak
jcscholtes
 
How can Artificial Intelligence help me on the Battlefield?
How can Artificial Intelligence help me on the Battlefield?How can Artificial Intelligence help me on the Battlefield?
How can Artificial Intelligence help me on the Battlefield?
jcscholtes
 
Big data analytics for legal fact finding
Big data analytics for legal fact findingBig data analytics for legal fact finding
Big data analytics for legal fact finding
jcscholtes
 
Text mining scholtes - big data congress utrecht 2018
Text mining   scholtes - big data congress utrecht 2018Text mining   scholtes - big data congress utrecht 2018
Text mining scholtes - big data congress utrecht 2018
jcscholtes
 
Waarom LegalTech de toekomst heeft
Waarom LegalTech de toekomst heeftWaarom LegalTech de toekomst heeft
Waarom LegalTech de toekomst heeft
jcscholtes
 

More from jcscholtes (15)

Legal tech Alliance Workshop 20191029
Legal tech Alliance Workshop 20191029Legal tech Alliance Workshop 20191029
Legal tech Alliance Workshop 20191029
 
LegalTech Alliance eDiscovery keynote Scholtes
LegalTech Alliance eDiscovery keynote ScholtesLegalTech Alliance eDiscovery keynote Scholtes
LegalTech Alliance eDiscovery keynote Scholtes
 
Text mining scholtes - big data congress utrecht 2019
Text mining   scholtes - big data congress utrecht 2019Text mining   scholtes - big data congress utrecht 2019
Text mining scholtes - big data congress utrecht 2019
 
Target-Based Sentiment Anaysis as a Sequence-Tagging Task
Target-Based Sentiment Anaysis as a Sequence-Tagging TaskTarget-Based Sentiment Anaysis as a Sequence-Tagging Task
Target-Based Sentiment Anaysis as a Sequence-Tagging Task
 
Ai and applications in the legal domain studium generale maastricht 20191101
Ai and applications in the legal domain studium generale maastricht 20191101Ai and applications in the legal domain studium generale maastricht 20191101
Ai and applications in the legal domain studium generale maastricht 20191101
 
Augmented intelligence and the impact on your world in 2030
Augmented intelligence and the impact on your world in 2030Augmented intelligence and the impact on your world in 2030
Augmented intelligence and the impact on your world in 2030
 
Text mining voor Business Intelligence toepassingen
Text mining voor Business Intelligence toepassingenText mining voor Business Intelligence toepassingen
Text mining voor Business Intelligence toepassingen
 
How can text-mining leverage developments in Deep Learning? Presentation at ...
How can text-mining leverage developments in Deep Learning?  Presentation at ...How can text-mining leverage developments in Deep Learning?  Presentation at ...
How can text-mining leverage developments in Deep Learning? Presentation at ...
 
Hogeschool Den Haag Legal Analytics
Hogeschool Den Haag Legal AnalyticsHogeschool Den Haag Legal Analytics
Hogeschool Den Haag Legal Analytics
 
HvA Legaltech Lab Opening
HvA Legaltech Lab OpeningHvA Legaltech Lab Opening
HvA Legaltech Lab Opening
 
Big Data en Data Science en de Rechtspraak
Big Data en Data Science en de RechtspraakBig Data en Data Science en de Rechtspraak
Big Data en Data Science en de Rechtspraak
 
How can Artificial Intelligence help me on the Battlefield?
How can Artificial Intelligence help me on the Battlefield?How can Artificial Intelligence help me on the Battlefield?
How can Artificial Intelligence help me on the Battlefield?
 
Big data analytics for legal fact finding
Big data analytics for legal fact findingBig data analytics for legal fact finding
Big data analytics for legal fact finding
 
Text mining scholtes - big data congress utrecht 2018
Text mining   scholtes - big data congress utrecht 2018Text mining   scholtes - big data congress utrecht 2018
Text mining scholtes - big data congress utrecht 2018
 
Waarom LegalTech de toekomst heeft
Waarom LegalTech de toekomst heeftWaarom LegalTech de toekomst heeft
Waarom LegalTech de toekomst heeft
 

Recently uploaded

如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样
如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样
如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样
850fcj96
 
PD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptx
PD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptxPD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptx
PD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptx
RIDPRO11
 
Get Government Grants and Assistance Program
Get Government Grants and Assistance ProgramGet Government Grants and Assistance Program
Get Government Grants and Assistance Program
Get Government Grants
 
ZGB - The Role of Generative AI in Government transformation.pdf
ZGB - The Role of Generative AI in Government transformation.pdfZGB - The Role of Generative AI in Government transformation.pdf
ZGB - The Role of Generative AI in Government transformation.pdf
Saeed Al Dhaheri
 
kupon sample qurban masjid indonesia terbaru.pptx
kupon sample qurban masjid indonesia terbaru.pptxkupon sample qurban masjid indonesia terbaru.pptx
kupon sample qurban masjid indonesia terbaru.pptx
viderakai
 
NHAI_Under_Implementation_01-05-2024.pdf
NHAI_Under_Implementation_01-05-2024.pdfNHAI_Under_Implementation_01-05-2024.pdf
NHAI_Under_Implementation_01-05-2024.pdf
AjayVejendla3
 
PNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdf
PNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdfPNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdf
PNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdf
ClaudioTebaldi2
 
Donate to charity during this holiday season
Donate to charity during this holiday seasonDonate to charity during this holiday season
Donate to charity during this holiday season
SERUDS INDIA
 
Uniform Guidance 3.0 - The New 2 CFR 200
Uniform Guidance 3.0 - The New 2 CFR 200Uniform Guidance 3.0 - The New 2 CFR 200
Uniform Guidance 3.0 - The New 2 CFR 200
GrantManagementInsti
 
Russian anarchist and anti-war movement in the third year of full-scale war
Russian anarchist and anti-war movement in the third year of full-scale warRussian anarchist and anti-war movement in the third year of full-scale war
Russian anarchist and anti-war movement in the third year of full-scale war
Antti Rautiainen
 
The Role of a Process Server in real estate
The Role of a Process Server in real estateThe Role of a Process Server in real estate
The Role of a Process Server in real estate
oklahomajudicialproc1
 
Opinions on EVs: Metro Atlanta Speaks 2023
Opinions on EVs: Metro Atlanta Speaks 2023Opinions on EVs: Metro Atlanta Speaks 2023
Opinions on EVs: Metro Atlanta Speaks 2023
ARCResearch
 
2024: The FAR - Federal Acquisition Regulations, Part 36
2024: The FAR - Federal Acquisition Regulations, Part 362024: The FAR - Federal Acquisition Regulations, Part 36
2024: The FAR - Federal Acquisition Regulations, Part 36
JSchaus & Associates
 
Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...
Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...
Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...
Congressional Budget Office
 
Understanding the Challenges of Street Children
Understanding the Challenges of Street ChildrenUnderstanding the Challenges of Street Children
Understanding the Challenges of Street Children
SERUDS INDIA
 
State crafting: Changes and challenges for managing the public finances
State crafting: Changes and challenges for managing the public financesState crafting: Changes and challenges for managing the public finances
State crafting: Changes and challenges for managing the public finances
ResolutionFoundation
 
2024: The FAR - Federal Acquisition Regulations, Part 38
2024: The FAR - Federal Acquisition Regulations, Part 382024: The FAR - Federal Acquisition Regulations, Part 38
2024: The FAR - Federal Acquisition Regulations, Part 38
JSchaus & Associates
 
一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单
一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单
一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单
ehbuaw
 
快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样
快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样
快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样
850fcj96
 
Transit-Oriented Development Study Working Group Meeting
Transit-Oriented Development Study Working Group MeetingTransit-Oriented Development Study Working Group Meeting
Transit-Oriented Development Study Working Group Meeting
Cuyahoga County Planning Commission
 

Recently uploaded (20)

如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样
如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样
如何办理(uoit毕业证书)加拿大安大略理工大学毕业证文凭证书录取通知原版一模一样
 
PD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptx
PD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptxPD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptx
PD-1602-as-amended-by-RA-9287-Anti-Illegal-Gambling-Law.pptx
 
Get Government Grants and Assistance Program
Get Government Grants and Assistance ProgramGet Government Grants and Assistance Program
Get Government Grants and Assistance Program
 
ZGB - The Role of Generative AI in Government transformation.pdf
ZGB - The Role of Generative AI in Government transformation.pdfZGB - The Role of Generative AI in Government transformation.pdf
ZGB - The Role of Generative AI in Government transformation.pdf
 
kupon sample qurban masjid indonesia terbaru.pptx
kupon sample qurban masjid indonesia terbaru.pptxkupon sample qurban masjid indonesia terbaru.pptx
kupon sample qurban masjid indonesia terbaru.pptx
 
NHAI_Under_Implementation_01-05-2024.pdf
NHAI_Under_Implementation_01-05-2024.pdfNHAI_Under_Implementation_01-05-2024.pdf
NHAI_Under_Implementation_01-05-2024.pdf
 
PNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdf
PNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdfPNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdf
PNRR MADRID GREENTECH FOR BROWN NETWORKS NETWORKS MUR_MUSA_TEBALDI.pdf
 
Donate to charity during this holiday season
Donate to charity during this holiday seasonDonate to charity during this holiday season
Donate to charity during this holiday season
 
Uniform Guidance 3.0 - The New 2 CFR 200
Uniform Guidance 3.0 - The New 2 CFR 200Uniform Guidance 3.0 - The New 2 CFR 200
Uniform Guidance 3.0 - The New 2 CFR 200
 
Russian anarchist and anti-war movement in the third year of full-scale war
Russian anarchist and anti-war movement in the third year of full-scale warRussian anarchist and anti-war movement in the third year of full-scale war
Russian anarchist and anti-war movement in the third year of full-scale war
 
The Role of a Process Server in real estate
The Role of a Process Server in real estateThe Role of a Process Server in real estate
The Role of a Process Server in real estate
 
Opinions on EVs: Metro Atlanta Speaks 2023
Opinions on EVs: Metro Atlanta Speaks 2023Opinions on EVs: Metro Atlanta Speaks 2023
Opinions on EVs: Metro Atlanta Speaks 2023
 
2024: The FAR - Federal Acquisition Regulations, Part 36
2024: The FAR - Federal Acquisition Regulations, Part 362024: The FAR - Federal Acquisition Regulations, Part 36
2024: The FAR - Federal Acquisition Regulations, Part 36
 
Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...
Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...
Effects of Extreme Temperatures From Climate Change on the Medicare Populatio...
 
Understanding the Challenges of Street Children
Understanding the Challenges of Street ChildrenUnderstanding the Challenges of Street Children
Understanding the Challenges of Street Children
 
State crafting: Changes and challenges for managing the public finances
State crafting: Changes and challenges for managing the public financesState crafting: Changes and challenges for managing the public finances
State crafting: Changes and challenges for managing the public finances
 
2024: The FAR - Federal Acquisition Regulations, Part 38
2024: The FAR - Federal Acquisition Regulations, Part 382024: The FAR - Federal Acquisition Regulations, Part 38
2024: The FAR - Federal Acquisition Regulations, Part 38
 
一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单
一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单
一比一原版(Adelaide毕业证)阿德莱德大学毕业证成绩单
 
快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样
快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样
快速制作(ocad毕业证书)加拿大安大略艺术设计学院毕业证本科学历雅思成绩单原版一模一样
 
Transit-Oriented Development Study Working Group Meeting
Transit-Oriented Development Study Working Group MeetingTransit-Oriented Development Study Working Group Meeting
Transit-Oriented Development Study Working Group Meeting
 

Efficiently Handling Subject Access Requests

  • 1. EFFICIENT HANDLING OF SUBJECT ACCESS REQUESTS
  • 2. TODAY’S WEBCAST Presenters Tom Gilsenan Johannes Scholtes Director CSO Informa ZyLAB Agenda  Terminology  Process Similarities: Public Disclosure & eDiscovery  Why Automation is Needed: Challenges of Public Disclosure  Automation Best Practices  Customer Profiles  Conclusions, more information and recommendations
  • 4. Data Protection Acts 1988 and 2003: allow members of the public to obtain public records from government (funded) bodies. “AN ACT TO GIVE EFFECT TO THE CONVENTION FOR THE PROTECTION OF INDIVIDUALS WITH REGARD TO AUTOMATIC PROCESSING OF PERSONAL DATA AND FOR THAT PURPOSE TO REGULATE IN ACCORDANCE WITH ITS PROVISIONS THE COLLECTION, PROCESSING, KEEPING, USE AND DISCLOSURE OF CERTAIN INFORMATION RELATING TO INDIVIDUALS THAT IS PROCESSED AUTOMATICALLY. ” Source: https://www.dataprotection.ie/documents/legal/CompendiumAct.pdf DIFFERENT REGULATIONS
  • 5. PUBLIC DISCLOSURE AND SUBJECT ACCESS REQUESTS
  • 6.  Speed and completeness of disclosure  Satisfying both the Government responsibilities and the rights of the Requester  Identifying records that meet exception, confidentiality, and personal information criteria  Maintaining transparency—defending exceptions in the court of public opinion  Defending the disclosure in the court PROCEDURAL ISSUES
  • 7. NUMBER OF REQUESTS IS GROWING “It is now clear that since 2014 there has been an unprecedented surge in the number of AIE requests made to Irish public authorities” Source: http://www.ocei.gov.ie/e n/publications/annual- reports/annualreport201 6/chapter5.html
  • 8.  Increasing Volume: Number, size & breadth of requests e.g., documents mentioning of XYZ across all data sources  Complex Data: Paper, architectural blueprints, un/structured, audio, video, social media  Distributed Data: By department, geography, on-premises & cloud  High Costs: Personnel manually search, process, review & disclose; printing; IT infrastructure  Short Timelines: Responses often required within 20 days  New regulations for privacy and data protection add additional complexity CHALLENGES OF PUBLIC DISCLOSURE
  • 9.  What is the definition of a draft? When do these need to be disclosed?  Dealing Personal Identifiable Information (PII) and Protected Health Information (PHI).  Handling litigation documents.  Different deadlines for responding.  Different cost structures (pay per page or pay per request).  Different redaction rules and different ways to identify redactions in the documents.  Different disclosure formats and methods. VARIATIONS IN EXCEPTIONS, EXEMPTIONS, DEADLINES THEREFOR WE NEED AUTOMATION
  • 11. DIRECTLY COLLECT DATA FROM ITS ORIGINAL LOCATION Upload extra information of the investigation yourself (PST, disks, USB) SLIDE / 11
  • 12. Full-Text index with the ZyLAB IM Platform:  File systems  Legacy email collections (msg) Collect only full-text query-based information. SLIDE / 12 SEARCH BASED COLLECTIONS
  • 13. WHAT KIND OF AUTOMATION ARE WE TALKING ABOUT? Deep Processing Analysis Review Acceleration Support for 700+ file formats Email Threading Faceted Navigation & Dashboards Support for Compound & Compressed formats Deduplication & Near Duplicate Analysis Advanced Tagging Workflow Embedded Object Extraction Advanced Entity Extraction Assisted Review with AI & Machine Translation OCR Non-searchable content Automatic Classification (Pre-Tagging) Manual & Automatic Redaction Index Audio Content AI-Based Topic Modeling Flexible Production Formats
  • 14. AUTOMATE DEDUPLICATION • By Custodian • By Matter • De-duplication can be done by hash value which can be keyed off of different metadata fields
  • 17. AUTOMATE CATEGORIZATION Use Auto-Classification & Analytics Scenarios to slice, dice & tag your data
  • 18. AUTOMATE DATA VISUALIZATION Predefine Facets for Exemption Codes, Departments, Custodians etc.
  • 19.  Privileged information: automatically identify communications with our lawyers.  PII, PHI, and GDPR: redaction and pseudonymization DEAL WITH LEGAL ASPECTS SLIDE / 19
  • 20. Structured and unstructured information (and all combinations) AUTOMATE SEARCH
  • 21. AUTOMATE TAGGING DECISIONS Benefit from Reviewing in Full Context of Family Groups, Email Threads, then Bulk Tag
  • 23.  Boolean keyword queries are often defined so they pick up a white range of potentially relevant documents to avoid the risk of missing relevant data, this results in picking up a lot of noise as well. Reviewing all these non- relevant documents leads to higher review cost than essential.  Highly experienced analysts with many years of experience who manage all query options are able to reach recall levels of 70-80%, but most normal investigators do not have all the knowledge to do so. As a result, they often find only part of the answers.  In both cases, the reviewer, analyst or investigator does not know exactly how much they actually found and what is still missing. By using machine learning we can tackle all the above problems. BUT DOES EVERYBODY KNOW HOW TO SEARCH … SLIDE / 23
  • 24.
  • 25. SLIDE / 25 DEMO: ZYLAB MACHINE LEARNING ON ENRON DATA SET
  • 26. 0 200 400 600 800 1000 1200 1400 1600 ZyLAB Assisted Review Manual Review Hours MACHINE LEARNING: SMARTER, BETTER & FASTER  15-20 faster than manual review  10-20% more accurate, fully defensible SLIDE / 26
  • 27. SLIDE / 27 FLEXIBLE BUT POWERFUL PRODUCTIONS
  • 28. AUTOMATE SHARING DISCLOSURES WITH THE PUBLIC SLIDE / 28 https://nepis.epa.gov
  • 29.
  • 30.  Industry-leading technology made affordable  Advanced features available to all clients  Manageable whether you have a large legal and/or litigation- support department or none  Scalable to support companies and firms of any size FOR CASES OF ANY SIZE
  • 31.  Your environment is ready within a week of signing a contract  We will work with your to migrate existing matters or set up new matters.  Upload data to the matter or ship to ZyLAB Intake.  Review User Training provided.  Support and Additional Services available as needed. HOW TO GET STARTED WITH SAAS
  • 32.  Using ZyLAB software for the handling of FOIA and Public Records Requests leads to huge time and resource savings, less probability for errors and less risk to damage your citizens, employees or organization by accidental disclosures. Organizations using ZyLAB for FOIA have quoted this functionality to be a Productivity Revolution. - IT Director, City Government, U.S.  “At the end of an administration, turning over all email to NARA could take up to a year. With ZyLAB, the NSC can now just turn over the server to NARA. ZyLAB’s XML format is our standard archival format for e-mails.” - Jason Baron, (Former) Director of Litigation at the National Archives SLIDE / 32
  • 33.  Integrate with open source and 3rd party case management tools.  Collect and search directly across from email boxes, O365, file shares, other electronic content repositories and even paper collections to identify potentially relevant documents.  Automatic classification of collected documents per department, document type, custodian, withholding reasons, exemptions and many other relevant document categories.  Auto-redact Personal Identifiable Information (PII) and Protected Health Information (PHI).  Easy to use review and production functionality, including powerful review accelerators and reporting functionality developed in the demanding world of eDiscovery.  Share user friendly and powerful search of old disclosures with public to limit number of new requests. BENEFITS OF USING ZYLAB FOR SUBJECT ACCESS REQUESTS
  • 34. ZYLAB BENEFIT TO IT  ZyLAB’s direct collection and robust processing automates many of the manual tasks IT normally has to perform on very short notice and often in weekends by legal. This saves IT tremendous efforts, resources and overtime.  ZyLAB’s scalable and flexible architecture allows IT to scale up and scale down eDiscovery resources as needed without the need to reinstall the software or redeploy the data over multiple resources.  ZyLAB’s ability to run both on-premises, private cloud, Azure or in hybrid environments, allows organizations to select the most optimal architecture for a specific eDiscovery projects.  ZyLAB’s ability to run in Azure allows direct collection to O365 resources from a close by (fast collection times) computer facility in the same jurisdiction as the O365 runs in. In Azure, ZyLAB perfectly fits Azure ability to spin-on and spin-off machines as needed. 34
  • 35. SIGN UP FOR OUR COMMUNITY
  • 36.
  • 37. MORE READING – WWW.ZYLAB.COM/RESOURCES/EBOOKS/ SLIDE / 37
  • 38. Q&A MORE INFORMATION: WWW.ZYLAB.COM 38 More ZyLAB Webinars and events: https://zylab.com/company/event-calendar/