Data and Applications Security Developments and Directions Dr. Bhavani Thuraisingham The University of Texas at Dallas Multilevel Secure Data Management September 14, 2012
Outline l What is an MLS/DBMS? l Summary of Developments l Challenges l MLS/DBMS Designs and Prototypes l Data Models and Functions l Directions
What is an MLS/DBMS? Users are cleared at different security levels Data in the database is assigned different sensitivity levels-- multilevel database Users share the multilevel database MLS/DBMS is the software that ensures that users only obtain information at or below their level In general, a user reads at or below his level and writes at his level
Why MLS/DBMS? Operating systems control access to files; coarser grain of granularity Database stores relationships between data Content, Context, and Dynamic access control Traditional operating systems access control to files is not sufficient Need multilevel access control for DBMSs
Summary of Developments Early Efforts 1975 – 1982; example: Hinke-Shafer approach Air Force Summer Study, 1982 Research Prototypes (Integrity Lock, SeaView, LDV, etc.); Present Trusted Database Interpretation; published 1991 Commercial Products; Present
Air Force Summer Study Air Force convened a summer study to investigate MLS/DBMS designs Then study was divided into three groups focusing on different aspects Group 1 investigated the Integrity Lock approach; Trusted subject approach and Distributed approach Group 2 investigated security for military messaging systems Group 3 focused on longer-term issues such as inference and aggregation
Outcome of the Air Force Summer Study Report published in 1983 MITRE designed and developed systems based on Integrity Lock and Trust subject architectures Rome Air Development Center (RADC, now Air Force Research Lab) funded efforts to examine long-term approaches; example: SeaView and LDV both intended to be A1 systems RADC also funded efforts to examine the distributed approach Several prototypes and products followed
TDI Trusted Database Interpretation is the Interpretation of the Trusted Computer Systems Evaluation criteria to evaluate commercial products Classes C1, C2, B1, B2, B3, A1 and Beyond TCB (Trusted Computing Base Subsetting) for MAC, DAC, etc. (mandatory access control, discretionary access control) Companion documents for Inference and Aggregation, Auditing, etc.
Taxonomy for MLS/DBMSs Integrity Lock Architecture: Trusted Filter; Untrusted Back-end, Untrusted Front-end. Checksum is computed by the filter based on data content and security level. Checksum recomputed when data is retrieved. Operating Systems Providing Access Control/ Single Kernel: Multilevel data is partitioned into single level files. Operating system controls access to the filed Extended Kernel: Kernel extensions for functions such as inference and aggregation and constraint processing Trusted Subject: DBMS provides access control to its own data such as relations, tuples and attributes Distributed: Data is partitioned according to security levels; In the partitioned approach, data is not replicated and there is one DBMS per level. In the replicated approach lower level data is replicated at the higher level databases
Integrity Lock
Operating System Providing Mandatory Access Control
Extended Kernel
Trusted Subject
Distributed Approach - I
Distributed Approach II
Overview of MLS/DBMS Designs Hinke-Schaefer (SDC Corporation) Introduced operating system providing mandatory access control Integrity Lock Prototypes: Two Prototypes developed at MITRE using Ingres and Mistress relational database systems SeaView: Funded by Rome Air Development Center (RADC) (now Air Force Rome Laboratory) and used operating system providing mandatory access control and introduced polyinstation Lock Data Views (LDV) : Extended kernel approach developed by Honeywell and funded by RADC and investigated inference and aggregation
Overview of MLS/DBMS Designs (Concluded) ASD, ASD-Views: Developed by TRW based on the Trusted subject approach. ASD Views provided access control on views SDDBMS: Effort by Unisys funded by RADC and investigated the distributed approach SINTRA: Developed by Naval Research Laboratory based on the replicated distributed approach SWORD: Designed at the Defense Research Agency in the UK and there goal was not to have polyinstantiation
Some MLS/DBMS Commercial Products Developed (late 1980s, early 1990s) l Oracle (Trusted ORACLE7 and beyond): Hinke-Schafer and Trusted Subject based architectures l Sybase (Secure SQL Server): Trusted subject l ARC Professional Services Group (TRUDATA/SQLSentry): Integrity Lock l Informix (Informix-On-LineSecure): Trusted Subject l Digital Equipment Corporation (SERdb) (this group is now part of Oracle Corp): Trusted Subject l InfoSystems Technology Inc. (Trusted RUBIX): Trusted Subject l Teradata (DBC/1012): Secure Database Machine l Ingres (Ingres Intelligent Database): Trusted Subject
Some Challenges: Inference Problem Inference is the process of forming conclusions from premises If the conclusions are unauthorized, it becomes a problem Inference problem in a multilevel environment Aggregation problem is a special case of the inference problem - collections of data elements is Secret but the individual elements are Unclassified Association problem: attributes A and B taken together is Secret - individually they are Unclassified
Some Challenges: Polyinstantiation Mechanism to avoid certain signaling channels Also supports cover stories Example: John and James have different salaries at different levels
Some Challenges: Covert Channel Database transactions manipulate data locks and covertly pass information Two transactions T1 and T2; T1 operates at Secret level and T2 operates at Unclassified level Relation R is classified at Unclassified level T1 obtains read lock on R and T2 obtains write lock on R T1 and T2 can manipulate when they request locks and signal one bit information for each attempt and over time T1 could covertly send sensitive information to T1
Multilevel Secure Data Model: Classifying Databases
Multilevel Secure Data Model: Classifying Relations
Multilevel Secure Data Model: Classifying Attributes/Columns
Multilevel Secure Data Model: Classifying Tuples/Rows
Multilevel Secure Data Model: Classifying Elements
Multilevel Secure Data Model: Classifying Views
Multilevel Secure Data Model: Classifying Metadata
MLS/DBMS Functions Overview
MLS/DBMS Functions Secure Query Processing
MLS/DBMS Functions Secure Transaction Management
MLS/DBMS Functions Secure Integrity Management
Status and Directions MLS/DBMSs have been designed and developed for various kinds of database systems including object systems, deductive systems and distributed systems Provides an approach to host secure applications Can use the principles to design privacy preserving database systems Challenge is to host emerging secure applications including e- commerce and biometrics systems