All categories
    cartcart

    Evaluation of Hash Functions for Multipoint Sampling in IP Networks: Diplomarbeit

     
    Evaluation of Hash Functions for Multipoint Sampling in IP Networks: Diplomarbeit

    Description

    Diploma Thesis from the year 2008 in the subject Computer Science - Applied, grade: 1, Technical University of Berlin, language: English, abstract: Network Measurements play an essential role in operating and developing today's
    Internet. A variety of measurement applications demand for multipoint
    network measurements, e.g. service providers need to validate their delay guarantees
    from Service Level Agreements and network engineers have incentives to
    track where packets are changed, reordered, lost or delayed. Multipoint measurements
    create an immense amount of measurement data which demands for high
    resource measurement infrastructure. Data selection techniques, like sampling
    and filtering, provide efficient solutions for reducing resource consumption while
    still maintaining sufficient information about the metrics of interest. But not all
    selection techniques are suitable for multipoint measurements; only deterministic filtering allows a synchronized selection of packets at multiple observation points.
    Nevertheless a fillter bases its selection decision on the packet content and hence
    is suspect to bias, i.e the selected subset is not representative for the whole population.
    Hash-based selection is a filtering method that tries to emulate random
    selection in order to obtain a representative sample for accurate estimations of
    traffic characteristics.
    The subject of the thesis is to assess which hash function and which packet content
    should be used for hash-based selection to obtain a seemingly random and
    unbiased selection of packets. This thesis empirically analyzes 25 hash functions
    and different packet content combinations on their suitability for hash-based
    selection. Experiments are based on a collection of 7 real traffic groups from
    different networks.

    Product details

    EAN/ISBN:
    9783869432953
    Edition:
    2.
    Medium:
    Paperback
    Number of pages:
    89
    Publication date:
    2012-08-03
    Publisher:
    Examicus
    Manufacturer:
    Unknown
    EAN/ISBN:
    9783869432953
    Edition:
    2.
    Medium:
    Paperback
    Number of pages:
    89
    Publication date:
    2012-08-03
    Publisher:
    Examicus
    Manufacturer:
    Unknown

    Shipping

    laposte
    The edition supplied may vary.
    Currently sold out