Need advice about which tool to choose?Ask the StackShare community!

GraphLab Create

8
40
+ 1
3
scikit-learn

1.2K
1.1K
+ 1
44
Add tool

GraphLab Create vs scikit-learn: What are the differences?

<Write Introduction here>
  1. Deployment Process: GraphLab Create provides a simpler deployment process where models can be easily deployed to production using GraphLab Create's own RESTful API, while scikit-learn requires more manual effort to deploy models in a production environment.

  2. Feature Engineering: GraphLab Create offers a more automated approach to feature engineering with built-in tools for feature engineering and selection, while scikit-learn requires users to manually engineer and select features before training models.

  3. Deep Learning Support: GraphLab Create has built-in support for deep learning models such as neural networks, making it suitable for complex tasks requiring deep learning, whereas scikit-learn lacks built-in deep learning support and is more focused on traditional machine learning models.

  4. Ease of Use: scikit-learn is known for its simplicity and user-friendliness, making it easier for beginners to get started with machine learning, while GraphLab Create might have a steeper learning curve due to its more advanced features and complexity.

  5. Scalability: GraphLab Create is designed for handling large datasets and complex tasks, making it more suitable for big data projects, whereas scikit-learn may struggle with scalability when dealing with massive volumes of data.

  6. Documentation: scikit-learn has extensive documentation and a large community of users, resulting in plenty of resources for troubleshooting and learning, while GraphLab Create's documentation may not be as comprehensive, and the community support might be more limited.

In Summary, GraphLab Create and scikit-learn differ in deployment process, feature engineering, deep learning support, ease of use, scalability, and documentation.

Get Advice from developers at your company using StackShare Enterprise. Sign up for StackShare Enterprise.
Learn More
Pros of GraphLab Create
Pros of scikit-learn
  • 1
    Intelligent Function Defaults
  • 1
    Fast Data Summary
  • 1
    Simple Machine Learning Tools
  • 25
    Scientific computing
  • 19
    Easy

Sign up to add or upvote prosMake informed product decisions

Cons of GraphLab Create
Cons of scikit-learn
    Be the first to leave a con
    • 2
      Limited

    Sign up to add or upvote consMake informed product decisions

    - No public GitHub repository available -

    What is GraphLab Create?

    Building an intelligent, predictive application involves iterating over multiple steps: cleaning the data, developing features, training a model, and creating and maintaining a predictive service. GraphLab Create does all of this in one platform. It is easy to use, fast, and powerful.

    What is scikit-learn?

    scikit-learn is a Python module for machine learning built on top of SciPy and distributed under the 3-Clause BSD license.

    Need advice about which tool to choose?Ask the StackShare community!

    Jobs that mention GraphLab Create and scikit-learn as a desired skillset
    What companies use GraphLab Create?
    What companies use scikit-learn?
      No companies found
      See which teams inside your own company are using GraphLab Create or scikit-learn.
      Sign up for StackShare EnterpriseLearn More

      Sign up to get full access to all the companiesMake informed product decisions

      What tools integrate with GraphLab Create?
      What tools integrate with scikit-learn?
        No integrations found

        Sign up to get full access to all the tool integrationsMake informed product decisions

        Blog Posts

        GitHubPythonReact+42
        49
        40727
        What are some alternatives to GraphLab Create and scikit-learn?
        TensorFlow
        TensorFlow is an open source software library for numerical computation using data flow graphs. Nodes in the graph represent mathematical operations, while the graph edges represent the multidimensional data arrays (tensors) communicated between them. The flexible architecture allows you to deploy computation to one or more CPUs or GPUs in a desktop, server, or mobile device with a single API.
        Turi Create
        It simplifies the development of custom machine learning models. You don't have to be a machine learning expert to add recommendations, object detection, image classification, image similarity or activity classification to your app.
        Amazon SageMaker
        A fully-managed service that enables developers and data scientists to quickly and easily build, train, and deploy machine learning models at any scale.
        Azure Machine Learning
        Azure Machine Learning is a fully-managed cloud service that enables data scientists and developers to efficiently embed predictive analytics into their applications, helping organizations use massive data sets and bring all the benefits of the cloud to machine learning.
        Amazon Machine Learning
        This new AWS service helps you to use all of that data you’ve been collecting to improve the quality of your decisions. You can build and fine-tune predictive models using large amounts of data, and then use Amazon Machine Learning to make predictions (in batch mode or in real-time) at scale. You can benefit from machine learning even if you don’t have an advanced degree in statistics or the desire to setup, run, and maintain your own processing and storage infrastructure.
        See all alternatives