Derivative Data Security using Artificial Intelligence
Data security the most dynamic and ever evolving trade becomes even significant while dealing with large volumes of unstructured data. To comply with regulation and standards like GDPR it is important to understand, equip and keep abreast of new tools and techniques in data security.
Enterprises are increasingly storing large volumes of unstructured data. However, irrespective of the data format or type, unstructured data is difficult to secure and control its transfer. This is a major problem due to evolving compliance policies and the need to adhere to standards such as GDPR. Through derivative data security practices, enterprises can utilize machine learning and deep learning techniques to determine and trace clones and derivatives of unstructured data across the enterprise. In this talk, Zia Babar will provide a background on data security approaches, and provide a demonstration on machine learning and deep learning techniques can be used for providing derivative data security.
Date and Time
Location
Hosts
Registration
- Date: 18 Feb 2021
- Time: 06:00 PM to 09:00 PM
- All times are (GMT-05:00) US/Eastern
- Add Event to Calendar
- Starts 07 January 2021 10:00 AM
- Ends 18 February 2021 05:00 PM
- All times are (GMT-05:00) US/Eastern
- Admission fee ?
Speakers
Zia Babar
Biography:
Speaker's Bio: Zia Babar (https://www.linkedin.com/in/
Agenda
6:00 PM --- Virtual Registration and welcome remarks by session chair and vice chair
6:20 PM --- Technical Session
8:20 PM --- Floor Open for discussion and Q & A
8:50 PM --- Closing