Biblio

Filters: Author is Van Landuyt, Dimitri  [Clear All Filters]
2022-05-20
Sion, Laurens, Van Landuyt, Dimitri, Yskout, Koen, Verreydt, Stef, Joosen, Wouter.  2021.  Automated Threat Analysis and Management in a Continuous Integration Pipeline. 2021 IEEE Secure Development Conference (SecDev). :30–37.
Security and privacy threat modeling is commonly applied to systematically identify and address design-level security and privacy concerns in the early stages of architecture and design. Identifying and resolving these threats should remain a continuous concern during the development lifecycle. Especially with contemporary agile development practices, a single-shot upfront analysis becomes quickly outdated. Despite it being explicitly recommended by experts, existing threat modeling approaches focus largely on early development phases and provide limited support during later implementation phases.In this paper, we present an integrated threat analysis toolchain to support automated, continuous threat elicitation, assessment, and mitigation as part of a continuous integration pipeline in the GitLab DevOps platform. This type of automation allows for continuous attention to security and privacy threats during development at the level of individual commits, supports monitoring and managing the progress in addressing security and privacy threats over time, and enables more advanced and fine-grained analyses such as assessing the impact of proposed changes in different code branches or merge/pull requests by analyzing the changes to the threat model.
2020-03-09
Sion, Laurens, Van Landuyt, Dimitri, Wuyts, Kim, Joosen, Wouter.  2019.  Privacy Risk Assessment for Data Subject-Aware Threat Modeling. 2019 IEEE Security and Privacy Workshops (SPW). :64–71.
Regulatory efforts such as the General Data Protection Regulation (GDPR) embody a notion of privacy risk that is centered around the fundamental rights of data subjects. This is, however, a fundamentally different notion of privacy risk than the one commonly used in threat modeling which is largely agnostic of involved data subjects. This mismatch hampers the applicability of privacy threat modeling approaches such as LINDDUN in a Data Protection by Design (DPbD) context. In this paper, we present a data subject-aware privacy risk assessment model in specific support of privacy threat modeling activities. This model allows the threat modeler to draw upon a more holistic understanding of privacy risk while assessing the relevance of specific privacy threats to the system under design. Additionally, we propose a number of improvements to privacy threat modeling, such as enriching Data Flow Diagram (DFD) system models with appropriate risk inputs (e.g., information on data types and involved data subjects). Incorporation of these risk inputs in DFDs, in combination with a risk estimation approach using Monte Carlo simulations, leads to a more comprehensive assessment of privacy risk. The proposed risk model has been integrated in threat modeling tool prototype and validated in the context of a realistic eHealth application.
2019-02-13
Sion, Laurens, Yskout, Koen, Van Landuyt, Dimitri, Joosen, Wouter.  2018.  Knowledge-enriched Security and Privacy Threat Modeling. Proceedings of the 40th International Conference on Software Engineering: Companion Proceeedings. :290–291.
Creating secure and privacy-protecting systems entails the simultaneous coordination of development activities along three different yet mutually influencing dimensions: translating (security and privacy) goals to design choices, analyzing the design for threats, and performing a risk analysis of these threats in light of the goals. These activities are often executed in isolation, and such a disconnect impedes the prioritization of elicited threats, assessment which threats are sufficiently mitigated, and decision-making in terms of which risks can be accepted. In the proposed TMaRA approach, we facilitate the simultaneous consideration of these dimensions by integrating support for threat modeling, risk analysis, and design decisions. Key risk assessment inputs are systematically modeled and threat modeling efforts are fed back into the risk management process. This enables prioritizing threats based on their estimated risk, thereby providing decision support in the mitigation, acceptance, or transferral of risk for the system under design.
2019-06-17
Sion, Laurens, Yskout, Koen, Van Landuyt, Dimitri, Joosen, Wouter.  2018.  Risk-Based Design Security Analysis. Proceedings of the 1st International Workshop on Security Awareness from Design to Deployment. :11-18.

Implementing security by design in practice often involves the application of threat modeling to elicit security threats and to aid designers in focusing efforts on the most stringent problems first. Existing threat modeling methodologies are capable of generating lots of threats, yet they lack even basic support to triage these threats, except for relying on the expertise and manual assessment by the threat modeler. Since the essence of creating a secure design is to minimize associated risk (and countermeasure costs), risk analysis approaches offer a very compelling solution to this problem. By combining risk analysis and threat modeling, elicited threats in a design can be enriched with risk analysis information in order to provide support in triaging and prioritizing threats and focusing security efforts on the high-risk threats. It requires the following inputs: the asset values, the strengths of countermeasures, and an attacker model. In his paper, we provide an integrated threat elicitation and risk analysis approach, implemented in a threat modeling tool prototype, and evaluate it using a real-world application, namely the SecureDrop whistleblower submission system. We show that the security measures implemented in SecureDrop indeed correspond to the high-risk threats identified by our approach. Therefore, the risk-based security analysis provides useful guidance on focusing security efforts on the most important problems first.

2018-06-11
Rafique, Ansar, Van Landuyt, Dimitri, Reniers, Vincent, Joosen, Wouter.  2017.  Towards Scalable and Dynamic Data Encryption for Multi-tenant SaaS. Proceedings of the Symposium on Applied Computing. :411–416.
Application-level data management middleware solutions are becoming increasingly compelling to deal with the complexity of a multi-cloud or federated cloud storage and multitenant storage architecture. However, these systems typically support traditional data mapping strategies that are created under the assumption of a fixed and rigorous database schema, and mapping data objects while supporting varying data confidentiality requirements therefore leads to fragmentation of data over distributed storage nodes. This introduces performance over-head at the level of individual database transactions and negatively affects the overall scalability. This paper discusses these challenges and highlights the potential of leveraging the data schema flexibility of NoSQL databases to accomplish dynamic and fine-grained data encryption in a more efficient and scalable manner. We illustrate these ideas in the context of an industrial multi-tenant SaaS application.
2017-08-18
Sion, Laurens, Van Landuyt, Dimitri, Yskout, Koen, Joosen, Wouter.  2016.  Towards Systematically Addressing Security Variability in Software Product Lines. Proceedings of the 20th International Systems and Software Product Line Conference. :342–343.

With the increasingly pervasive role of software in society, security is becoming an important quality concern, emphasizing security by design, but it requires intensive specialization. Security in families of systems is even harder, as diverse variants of security solutions must be considered, with even different security goals per product. Furthermore, security is not a static object but a moving target, adding variability. For this, an approach to systematically address security concerns in software product lines is needed. It should consider security separate from other variability dimensions. The main challenges to realize this are: (i) expressing security and its variability, (ii) selecting the right solution, (iii) properly instantiating a solution, and (iv) verifying and validating it. In this paper, we present our research agenda towards addressing the aforementioned challenges.