19 research outputs found

    High Performance Network Evaluation and Testing

    Get PDF

    Characterizing the IoT ecosystem at scale

    Get PDF
    Internet of Things (IoT) devices are extremely popular with home, business, and industrial users. To provide their services, they typically rely on a backend server in- frastructure on the Internet, which collectively form the IoT Ecosystem. This ecosys- tem is rapidly growing and offers users an increasing number of services. It also has been a source and target of significant security and privacy risks. One notable exam- ple is the recent large-scale coordinated global attacks, like Mirai, which disrupted large service providers. Thus, characterizing this ecosystem yields insights that help end-users, network operators, policymakers, and researchers better understand it, obtain a detailed view, and keep track of its evolution. In addition, they can use these insights to inform their decision-making process for mitigating this ecosystem’s security and privacy risks. In this dissertation, we characterize the IoT ecosystem at scale by (i) detecting the IoT devices in the wild, (ii) conducting a case study to measure how deployed IoT devices can affect users’ privacy, and (iii) detecting and measuring the IoT backend infrastructure. To conduct our studies, we collaborated with a large European Internet Service Provider (ISP) and a major European Internet eXchange Point (IXP). They rou- tinely collect large volumes of passive, sampled data, e.g., NetFlow and IPFIX, for their operational purposes. These data sources help providers obtain insights about their networks, and we used them to characterize the IoT ecosystem at scale. We start with IoT devices and study how to track and trace their activity in the wild. We developed and evaluated a scalable methodology to accurately detect and monitor IoT devices with limited, sparsely sampled data in the ISP and IXP. Next, we conduct a case study to measure how a myriad of deployed devices can affect the privacy of ISP subscribers. Unfortunately, we found that the privacy of a substantial fraction of IPv6 end-users is at risk. We noticed that a single device at home that encodes its MAC address into the IPv6 address could be utilized as a tracking identifier for the entire end-user prefix—even if other devices use IPv6 privacy extensions. Our results showed that IoT devices contribute the most to this privacy leakage. Finally, we focus on the backend server infrastructure and propose a methodology to identify and locate IoT backend servers operated by cloud services and IoT vendors. We analyzed their IoT traffic patterns as observed in the ISP. Our analysis sheds light on their diverse operational and deployment strategies. The need for issuing a priori unknown network-wide queries against large volumes of network flow capture data, which we used in our studies, motivated us to develop Flowyager. It is a system built on top of existing traffic capture utilities, and it relies on flow summarization techniques to reduce (i) the storage and transfer cost of flow captures and (ii) query response time. We deployed a prototype of Flowyager at both the IXP and ISP.Internet-of-Things-Geräte (IoT) sind aus vielen Haushalten, Büroräumen und In- dustrieanlagen nicht mehr wegzudenken. Um ihre Dienste zu erbringen, nutzen IoT- Geräte typischerweise auf eine Backend-Server-Infrastruktur im Internet, welche als Gesamtheit das IoT-Ökosystem bildet. Dieses Ökosystem wächst rapide an und bie- tet den Nutzern immer mehr Dienste an. Das IoT-Ökosystem ist jedoch sowohl eine Quelle als auch ein Ziel von signifikanten Risiken für die Sicherheit und Privatsphäre. Ein bemerkenswertes Beispiel sind die jüngsten groß angelegten, koordinierten globa- len Angriffe wie Mirai, durch die große Diensteanbieter gestört haben. Deshalb ist es wichtig, dieses Ökosystem zu charakterisieren, eine ganzheitliche Sicht zu bekommen und die Entwicklung zu verfolgen, damit Forscher, Entscheidungsträger, Endnutzer und Netzwerkbetreibern Einblicke und ein besseres Verständnis erlangen. Außerdem können alle Teilnehmer des Ökosystems diese Erkenntnisse nutzen, um ihre Entschei- dungsprozesse zur Verhinderung von Sicherheits- und Privatsphärerisiken zu verbes- sern. In dieser Dissertation charakterisieren wir die Gesamtheit des IoT-Ökosystems indem wir (i) IoT-Geräte im Internet detektieren, (ii) eine Fallstudie zum Einfluss von benutzten IoT-Geräten auf die Privatsphäre von Nutzern durchführen und (iii) die IoT-Backend-Infrastruktur aufdecken und vermessen. Um unsere Studien durchzuführen, arbeiten wir mit einem großen europäischen Internet- Service-Provider (ISP) und einem großen europäischen Internet-Exchange-Point (IXP) zusammen. Diese sammeln routinemäßig für operative Zwecke große Mengen an pas- siven gesampelten Daten (z.B. als NetFlow oder IPFIX). Diese Datenquellen helfen Netzwerkbetreibern Einblicke in ihre Netzwerke zu erlangen und wir verwendeten sie, um das IoT-Ökosystem ganzheitlich zu charakterisieren. Wir beginnen unsere Analysen mit IoT-Geräten und untersuchen, wie diese im Inter- net aufgespürt und verfolgt werden können. Dazu entwickelten und evaluierten wir eine skalierbare Methodik, um IoT-Geräte mit Hilfe von eingeschränkten gesampelten Daten des ISPs und IXPs präzise erkennen und beobachten können. Als Nächstes führen wir eine Fallstudie durch, in der wir messen, wie eine Unzahl von eingesetzten Geräten die Privatsphäre von ISP-Nutzern beeinflussen kann. Lei- der fanden wir heraus, dass die Privatsphäre eines substantiellen Teils von IPv6- Endnutzern bedroht ist. Wir entdeckten, dass bereits ein einzelnes Gerät im Haus, welches seine MAC-Adresse in die IPv6-Adresse kodiert, als Tracking-Identifikator für das gesamte Endnutzer-Präfix missbraucht werden kann — auch wenn andere Geräte IPv6-Privacy-Extensions verwenden. Unsere Ergebnisse zeigten, dass IoT-Geräte den Großteil dieses Privatsphäre-Verlusts verursachen. Abschließend fokussieren wir uns auf die Backend-Server-Infrastruktur und wir schla- gen eine Methodik zur Identifizierung und Lokalisierung von IoT-Backend-Servern vor, welche von Cloud-Diensten und IoT-Herstellern betrieben wird. Wir analysier- ten Muster im IoT-Verkehr, der vom ISP beobachtet wird. Unsere Analyse gibt Auf- schluss über die unterschiedlichen Strategien, wie IoT-Backend-Server betrieben und eingesetzt werden. Die Notwendigkeit a-priori unbekannte netzwerkweite Anfragen an große Mengen von Netzwerk-Flow-Daten zu stellen, welche wir in in unseren Studien verwenden, moti- vierte uns zur Entwicklung von Flowyager. Dies ist ein auf bestehenden Netzwerkverkehrs- Tools aufbauendes System und es stützt sich auf die Zusammenfassung von Verkehrs- flüssen, um (i) die Kosten für Archivierung und Transfer von Flow-Daten und (ii) die Antwortzeit von Anfragen zu reduzieren. Wir setzten einen Prototypen von Flowyager sowohl im IXP als auch im ISP ein

    Telecommunication Economics

    Get PDF
    This book constitutes a collaborative and selected documentation of the scientific outcome of the European COST Action IS0605 Econ@Tel "A Telecommunications Economics COST Network" which run from October 2007 to October 2011. Involving experts from around 20 European countries, the goal of Econ@Tel was to develop a strategic research and training network among key people and organizations in order to enhance Europe's competence in the field of telecommunications economics. Reflecting the organization of the COST Action IS0605 Econ@Tel in working groups the following four major research areas are addressed: - evolution and regulation of communication ecosystems; - social and policy implications of communication technologies; - economics and governance of future networks; - future networks management architectures and mechanisms

    Taming IO Spikes in Enterprise and Campus VM Deployment

    No full text

    Enhancing programmability for adaptive resource management in next generation data centre networks

    Get PDF
    Recently, Data Centre (DC) infrastructures have been growing rapidly to support a wide range of emerging services, and provide the underlying connectivity and compute resources that facilitate the "*-as-a-Service" model. This has led to the deployment of a multitude of services multiplexed over few, very large-scale centralised infrastructures. In order to cope with the ebb and flow of users, services and traffic, infrastructures have been provisioned for peak-demand resulting in the average utilisation of resources to be low. This overprovisionning has been further motivated by the complexity in predicting traffic demands over diverse timescales and the stringent economic impact of outages. At the same time, the emergence of Software Defined Networking (SDN), is offering new means to monitor and manage the network infrastructure to address this underutilisation. This dissertation aims to show how measurement-based resource management can improve performance and resource utilisation by adaptively tuning the infrastructure to the changing operating conditions. To achieve this dynamicity, the infrastructure must be able to centrally monitor, notify and react based on the current operating state, from per-packet dynamics to longstanding traffic trends and topological changes. However, the management and orchestration abilities of current SDN realisations is too limiting and must evolve for next generation networks. The current focus has been on logically centralising the routing and forwarding decisions. However, in order to achieve the necessary fine-grained insight, the data plane of the individual device must be programmable to collect and disseminate the metrics of interest. The results of this work demonstrates that a logically centralised controller can dynamically collect and measure network operating metrics to subsequently compute and disseminate fine-tuned environment-specific settings. They show how this approach can prevent TCP throughput incast collapse and improve TCP performance by an order of magnitude for partition-aggregate traffic patterns. Futhermore, the paradigm is generalised to show the benefits for other services widely used in DCs such as, e.g, routing, telemetry, and security

    Online learning on the programmable dataplane

    Get PDF
    This thesis makes the case for managing computer networks with datadriven methods automated statistical inference and control based on measurement data and runtime observations—and argues for their tight integration with programmable dataplane hardware to make management decisions faster and from more precise data. Optimisation, defence, and measurement of networked infrastructure are each challenging tasks in their own right, which are currently dominated by the use of hand-crafted heuristic methods. These become harder to reason about and deploy as networks scale in rates and number of forwarding elements, but their design requires expert knowledge and care around unexpected protocol interactions. This makes tailored, per-deployment or -workload solutions infeasible to develop. Recent advances in machine learning offer capable function approximation and closed-loop control which suit many of these tasks. New, programmable dataplane hardware enables more agility in the network— runtime reprogrammability, precise traffic measurement, and low latency on-path processing. The synthesis of these two developments allows complex decisions to be made on previously unusable state, and made quicker by offloading inference to the network. To justify this argument, I advance the state of the art in data-driven defence of networks, novel dataplane-friendly online reinforcement learning algorithms, and in-network data reduction to allow classification of switchscale data. Each requires co-design aware of the network, and of the failure modes of systems and carried traffic. To make online learning possible in the dataplane, I use fixed-point arithmetic and modify classical (non-neural) approaches to take advantage of the SmartNIC compute model and make use of rich device local state. I show that data-driven solutions still require great care to correctly design, but with the right domain expertise they can improve on pathological cases in DDoS defence, such as protecting legitimate UDP traffic. In-network aggregation to histograms is shown to enable accurate classification from fine temporal effects, and allows hosts to scale such classification to far larger flow counts and traffic volume. Moving reinforcement learning to the dataplane is shown to offer substantial benefits to stateaction latency and online learning throughput versus host machines; allowing policies to react faster to fine-grained network events. The dataplane environment is key in making reactive online learning feasible—to port further algorithms and learnt functions, I collate and analyse the strengths of current and future hardware designs, as well as individual algorithms

    Bowdoin Orient v.119, no.1-25 (1989-1990)

    Get PDF
    https://digitalcommons.bowdoin.edu/bowdoinorient-1990s/1000/thumbnail.jp

    Bowdoin Orient v.134, no.1-24 (2004-2005)

    Get PDF
    https://digitalcommons.bowdoin.edu/bowdoinorient-2000s/1005/thumbnail.jp
    corecore