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Amazon Sagemaker

Amazon SageMaker is a fully-managed platform that enables developers and data scientists to quickly and easily build, train, and deploy machine learning models at any scale. With Amazon SageMaker, all the barriers and complexity that typically slow down developers who want to use machine learning are removed. The service includes models that can be used together or independently to build, train, and deploy your machine learning models.

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Spotlight Implicit Sequence 0.9

Latest Version:
0.9
A sequence based recommender system for implicit datasets.

    Product Overview

    Models for recommending items given a sequence of previous implicit user/item interactions. Solves user cold start problem.

    Key Data

    Categories
    Type
    Algorithm
    Fulfillment Methods
    Amazon SageMaker

    Highlights

    • Please note: Models trained on GPU instances must use GPU instances for inference. Same applies to CPU-trained models.

    • Feature roadmap:

      • allow exclude_items during inference (to exclude items already purchased/viewed by the user)
      • support pipe mode
      • support for supplying interaction weighting values
    • Now supports parameter tuning. Requires training and testing data channel for tuning.

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    Pricing Information

    Use this tool to estimate the software and infrastructure costs based your configuration choices. Your usage and costs might be different from this estimate. They will be reflected on your monthly AWS billing reports.


    Estimating your costs

    Choose your region and launch option to see the pricing details. Then, modify the estimated price by choosing different instance types.

    Version
    Region

    Software Pricing

    Algorithm Training$0.00/hr

    running on ml.p3.2xlarge

    Model Realtime Inference$0.00/hr

    running on ml.p3.2xlarge

    Model Batch Transform$0.00/hr

    running on ml.p3.2xlarge

    Infrastructure Pricing

    With Amazon SageMaker, you pay only for what you use. Training and inference is billed by the second, with no minimum fees and no upfront commitments. Pricing within Amazon SageMaker is broken down by on-demand ML instances, ML storage, and fees for data processing in notebooks and inference instances.
    Learn more about SageMaker pricing

    SageMaker Algorithm Training$3.825/host/hr

    running on ml.p3.2xlarge

    SageMaker Realtime Inference$3.825/host/hr

    running on ml.p3.2xlarge

    SageMaker Batch Transform$3.825/host/hr

    running on ml.p3.2xlarge

    Algorithm Training

    For algorithm training in Amazon SageMaker, the software is priced based on hourly pricing that can vary by instance type. Additional infrastructure cost, taxes or fees may apply.
    InstanceType
    Algorithm/hr
    ml.m5.large
    $0.00
    ml.m5.xlarge
    $0.00
    ml.m5.2xlarge
    $0.00
    ml.m5.4xlarge
    $0.00
    ml.m5.12xlarge
    $0.00
    ml.m5.24xlarge
    $0.00
    ml.m4.xlarge
    $0.00
    ml.m4.2xlarge
    $0.00
    ml.m4.4xlarge
    $0.00
    ml.m4.10xlarge
    $0.00
    ml.m4.16xlarge
    $0.00
    ml.c5.xlarge
    $0.00
    ml.c5.2xlarge
    $0.00
    ml.c5.4xlarge
    $0.00
    ml.c5.9xlarge
    $0.00
    ml.c5.18xlarge
    $0.00
    ml.c4.xlarge
    $0.00
    ml.c4.2xlarge
    $0.00
    ml.c4.4xlarge
    $0.00
    ml.c4.8xlarge
    $0.00
    ml.p2.xlarge
    $0.00
    ml.p2.8xlarge
    $0.00
    ml.p2.16xlarge
    $0.00
    ml.p3.2xlarge
    Vendor Recommended
    $0.00
    ml.p3.8xlarge
    $0.00
    ml.p3.16xlarge
    $0.00

    Usage Information

    Fulfillment Methods

    Amazon SageMaker

    See example notebook for general usage information.

    Metrics

    Name
    Regex
    MRR
    MRR: ([0-9\\.]+)

    Channel specification

    Fields marked with * are required

    training

    *
    Training dataset. CSV file. Must include headers. Must include minimally columns titled 'user_id', 'item_id', and 'timestamp'. Do not include any nulls or missing ids.
    Input modes: File
    Content types: text/csv
    Compression types: None

    testing

    Optional testing dataset, required for tuning. CSV file. Must include headers. Must include minimally columns titled 'user_id', 'item_id', and 'timestamp'. Do not include any nulls or missing ids. If included, training logs will include MRR score.
    Input modes: File
    Content types: text/csv
    Compression types: None

    Hyperparameters

    Fields marked with * are required

    representation

    Sequence representation to use
    Type: Categorical
    Tunable: Yes

    loss

    Loss function
    Type: Categorical
    Tunable: Yes

    embedding_dim

    Number of embedding dimensions to use for users and items.
    Type: Integer
    Tunable: Yes

    num_negative_samples

    Number of negative samples to generate for adaptive hinge loss
    Type: Integer
    Tunable: Yes

    n_iter

    Number of iterations to run
    Type: Integer
    Tunable: Yes

    batch_size

    Minibatch size
    Type: Integer
    Tunable: Yes

    l2

    L2 loss penalty
    Type: Continuous
    Tunable: Yes

    learning_rate

    Initial learning rate
    Type: Continuous
    Tunable: Yes

    random_seed

    Random seed used to initialize random state to use when fitting
    Type: Integer
    Tunable: No

    Additional Resources

    End User License Agreement

    By subscribing to this product you agree to terms and conditions outlined in the product End user License Agreement (EULA)

    Support Information

    Spotlight Implicit Sequence 0.9

    see attached example notebook

    AWS Infrastructure

    AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.

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    Refund Policy

    No refunds.

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