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  5. AWS Data Wrangler vs NumPy

AWS Data Wrangler vs NumPy

OverviewComparisonAlternatives

Overview

NumPy
NumPy
Stacks4.3K
Followers799
Votes15
GitHub Stars30.7K
Forks11.7K
AWS Data Wrangler
AWS Data Wrangler
Stacks7
Followers30
Votes0

AWS Data Wrangler vs NumPy: What are the differences?

  1. 1. Installation and Compatibility: AWS Data Wrangler is specifically designed to work with Amazon Web Services (AWS) and is compatible with various AWS services such as Amazon Athena, Glue, Redshift, and more. On the other hand, NumPy is a foundational library for scientific computing in Python that can be used in a broader range of applications and is not limited to AWS services.

  2. 2. Data Source Support: AWS Data Wrangler provides a simplified interface and functionalities to interact with data sources stored on AWS. It offers seamless integration with various AWS data sources like S3, Lambda, and Glue. In contrast, NumPy does not have built-in support for AWS data sources and focuses more on efficient data manipulation and numerical operations.

  3. 3. Query Execution and Performance: AWS Data Wrangler leverages the distributed computing power of AWS services for query execution, resulting in high-performance data processing. It is optimized for handling large-scale datasets and complex data transformations. On the other hand, NumPy is primarily focused on providing efficient data manipulation and numerical computing capabilities at a lower level, without the built-in distributed query execution optimizations of AWS Data Wrangler.

  4. 4. Data Transformation Capabilities: AWS Data Wrangler provides a wide range of built-in data transformation functions and utilities that are tailored for working with AWS data sources. These functions allow users to efficiently filter, join, aggregate, and transform data. NumPy, on the other hand, offers a broad set of functions for mathematical and logical operations on multi-dimensional arrays, but does not have the same level of specialized data transformation capabilities for AWS data sources.

  5. 5. Cloud Data Integration: AWS Data Wrangler offers convenient integration with other AWS services like AWS Glue, which provides automated data cataloging and data transformation capabilities. It allows users to easily manage and integrate data from different AWS services. NumPy, however, does not have native integration capabilities with AWS cloud services and is more focused on numerical computing.

  6. 6. Ecosystem and Community: NumPy has a vast ecosystem and active community support, making it widely used and well-documented. It has a rich collection of libraries and frameworks built on top of it for various scientific and data analysis tasks. AWS Data Wrangler, being a more specialized library, has a smaller ecosystem and community. While it benefits from AWS's support and resources, the availability of third-party libraries and community support might be comparatively limited.

In Summary, AWS Data Wrangler offers specialized functionalities and integration with AWS services for efficient data handling and transformation, whereas NumPy is a general-purpose library for numerical computing with a broader range of applications and a larger ecosystem and community support.

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Detailed Comparison

NumPy
NumPy
AWS Data Wrangler
AWS Data Wrangler

Besides its obvious scientific uses, NumPy can also be used as an efficient multi-dimensional container of generic data. Arbitrary data-types can be defined. This allows NumPy to seamlessly and speedily integrate with a wide variety of databases.

It is a utility belt to handle data on AWS. It aims to fill a gap between AWS Analytics Services (Glue, Athena, EMR, Redshift) and the most popular Python data libraries (Pandas, Apache Spark).

Powerful n-dimensional arrays; Numerical computing tools; Interoperable; Performant; Easy to use
Writes in Parquet and CSV file formats; Utility belt to handle data on AWS
Statistics
GitHub Stars
30.7K
GitHub Stars
-
GitHub Forks
11.7K
GitHub Forks
-
Stacks
4.3K
Stacks
7
Followers
799
Followers
30
Votes
15
Votes
0
Pros & Cons
Pros
  • 10
    Great for data analysis
  • 4
    Faster than list
No community feedback yet
Integrations
Python
Python
Amazon Athena
Amazon Athena
Apache Spark
Apache Spark
Apache Parquet
Apache Parquet
PySpark
PySpark

What are some alternatives to NumPy, AWS Data Wrangler?

Pandas

Pandas

Flexible and powerful data analysis / manipulation library for Python, providing labeled data structures similar to R data.frame objects, statistical functions, and much more.

PyXLL

PyXLL

Integrate Python into Microsoft Excel. Use Excel as your user-facing front-end with calculations, business logic and data access powered by Python. Works with all 3rd party and open source Python packages. No need to write any VBA!

SciPy

SciPy

Python-based ecosystem of open-source software for mathematics, science, and engineering. It contains modules for optimization, linear algebra, integration, interpolation, special functions, FFT, signal and image processing, ODE solvers and other tasks common in science and engineering.

Dataform

Dataform

Dataform helps you manage all data processes in your cloud data warehouse. Publish tables, write data tests and automate complex SQL workflows in a few minutes, so you can spend more time on analytics and less time managing infrastructure.

PySpark

PySpark

It is the collaboration of Apache Spark and Python. it is a Python API for Spark that lets you harness the simplicity of Python and the power of Apache Spark in order to tame Big Data.

Anaconda

Anaconda

A free and open-source distribution of the Python and R programming languages for scientific computing, that aims to simplify package management and deployment. Package versions are managed by the package management system conda.

Dask

Dask

It is a versatile tool that supports a variety of workloads. It is composed of two parts: Dynamic task scheduling optimized for computation. This is similar to Airflow, Luigi, Celery, or Make, but optimized for interactive computational workloads. Big Data collections like parallel arrays, dataframes, and lists that extend common interfaces like NumPy, Pandas, or Python iterators to larger-than-memory or distributed environments. These parallel collections run on top of dynamic task schedulers.

Pentaho Data Integration

Pentaho Data Integration

It enable users to ingest, blend, cleanse and prepare diverse data from any source. With visual tools to eliminate coding and complexity, It puts the best quality data at the fingertips of IT and the business.

StreamSets

StreamSets

An end-to-end data integration platform to build, run, monitor and manage smart data pipelines that deliver continuous data for DataOps.

KNIME

KNIME

It is a free and open-source data analytics, reporting and integration platform. KNIME integrates various components for machine learning and data mining through its modular data pipelining concept.

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