Software Alternatives, Accelerators & Startups

Upsolver VS Hadoop

Compare Upsolver VS Hadoop and see what are their differences

Note: These products don't have any matching categories. If you think this is a mistake, please edit the details of one of the products and suggest appropriate categories.

Upsolver logo Upsolver

Upsolver is a robust Data Lake Platform that simplifies big & streaming data integration, management and preparation on premise (HDFS) or in the cloud (AWS, Azure, GCP).

Hadoop logo Hadoop

Open-source software for reliable, scalable, distributed computing
  • Upsolver Landing page
    Landing page //
    2023-08-06
  • Hadoop Landing page
    Landing page //
    2021-09-17

Upsolver features and specs

  • Ease of Use
    Upsolver provides a user-friendly interface, making it accessible for users with varying levels of technical expertise. It simplifies complex data processing tasks, reducing the need for extensive coding knowledge.
  • Real-time Data Processing
    Upsolver is specifically designed for real-time data ingestion and processing. This capability allows businesses to react quickly to new data and gain timely insights.
  • Integration Capabilities
    Upsolver supports integration with a wide range of data sources and destinations, including AWS services, databases, and data lakes, enhancing its flexibility and utility across various data ecosystems.
  • Scalability
    The platform can scale to handle large volumes of data without significant performance degradation, making it suitable for enterprise-grade applications.
  • Serverless Architecture
    Being serverless, Upsolver eliminates the need for infrastructure management, allowing users to focus more on data processing and analytics rather than on maintenance.

Possible disadvantages of Upsolver

  • Cost
    While Upsolver offers powerful features, they come at a premium price, which might be a concern for small to medium-sized businesses with limited budgets.
  • Learning Curve
    Despite its user-friendly interface, there can still be a learning curve for users unfamiliar with data processing principles or the specific paradigms Upsolver employs.
  • Dependency on Cloud Providers
    Upsolver is heavily integrated with cloud services, particularly AWS, which might not be ideal for organizations looking for multi-cloud or on-premises solutions.
  • Limited Customizability
    For very specific or advanced use cases, Upsolver might not offer the level of customizability that a fully hand-coded solution would provide.
  • Support and Documentation
    While Upsolver provides customer support and documentation, some users have reported that the documentation can be insufficient for complex implementations, potentially requiring additional support.

Hadoop features and specs

  • Scalability
    Hadoop can easily scale from a single server to thousands of machines, each offering local computation and storage.
  • Cost-Effective
    It utilizes a distributed infrastructure, allowing you to use low-cost commodity hardware to store and process large datasets.
  • Fault Tolerance
    Hadoop automatically maintains multiple copies of all data and can automatically recover data on failure of nodes, ensuring high availability.
  • Flexibility
    It can process a wide variety of structured and unstructured data, including logs, images, audio, video, and more.
  • Parallel Processing
    Hadoop's MapReduce framework enables the parallel processing of large datasets across a distributed cluster.
  • Community Support
    As an Apache project, Hadoop has robust community support and a vast ecosystem of related tools and extensions.

Possible disadvantages of Hadoop

  • Complexity
    Setting up, maintaining, and tuning a Hadoop cluster can be complex and often requires specialized knowledge.
  • Overhead
    The MapReduce model can introduce additional overhead, particularly for tasks that require low-latency processing.
  • Security
    While improvements have been made, Hadoop's security model is considered less mature compared to some other data processing systems.
  • Hardware Requirements
    Though it can run on commodity hardware, Hadoop can still require significant computational and storage resources for larger datasets.
  • Lack of Real-Time Processing
    Hadoop is mainly designed for batch processing and is not well-suited for real-time data analytics, which can be a limitation for certain applications.
  • Data Integrity
    Distributed systems face challenges in maintaining data integrity and consistency, and Hadoop is no exception.

Analysis of Upsolver

Overall verdict

  • Overall, Upsolver is considered a good solution for organizations looking to streamline their data processing workflows without investing heavily in custom engineering. It provides a practical combination of features that make big data processing accessible and efficient.

Why this product is good

  • Upsolver is known for its ease of use and capability to handle large volumes of event data in real-time. It simplifies the process of transforming and analyzing data streams by providing a no-code/low-code platform. This reduces the need for extensive engineering resources, making it accessible to data teams of varying sizes and skill levels. Additionally, it integrates well with popular data lakes and warehouses, enhancing its versatility.

Recommended for

  • Data teams that lack extensive engineering resources.
  • Organizations that require real-time data processing capabilities.
  • Businesses utilizing cloud data lakes or warehouses.
  • Companies looking to simplify ETL processes with minimal coding.

Analysis of Hadoop

Overall verdict

  • Hadoop is a robust and powerful data processing platform that is well-suited for organizations that need to manage and analyze large-scale data. Its resilience, scalability, and open-source nature make it a popular choice for big data solutions. However, it may not be the best fit for all use cases, especially those requiring real-time processing or where ease of use is a priority.

Why this product is good

  • Hadoop is renowned for its ability to store and process large datasets using a distributed computing model. It is scalable, cost-effective, and efficient in handling massive volumes of data across clusters of computers. Its ecosystem includes a wide range of tools and technologies like HDFS, MapReduce, YARN, and Hive that enhance data processing and analysis capabilities.

Recommended for

  • Organizations dealing with vast amounts of data needing efficient batch processing.
  • Businesses that require scalable storage solutions to manage their data growth.
  • Companies interested in leveraging a diverse ecosystem of data processing tools and technologies.
  • Technical teams that have the expertise to manage and optimize complex distributed systems.

Upsolver videos

No Upsolver videos yet. You could help us improve this page by suggesting one.

Add video

Hadoop videos

What is Big Data and Hadoop?

More videos:

  • Review - Product Ratings on Customer Reviews Using HADOOP.
  • Tutorial - Hadoop Tutorial For Beginners | Hadoop Ecosystem Explained in 20 min! - Frank Kane

Category Popularity

0-100% (relative to Upsolver and Hadoop)
Business & Commerce
100 100%
0% 0
Databases
0 0%
100% 100
Online Services
100 100%
0% 0
Big Data
0 0%
100% 100

User comments

Share your experience with using Upsolver and Hadoop. For example, how are they different and which one is better?
Log in or Post with

Reviews

These are some of the external sources and on-site user reviews we've used to compare Upsolver and Hadoop

Upsolver Reviews

Top 10 AWS ETL Tools and How to Choose the Best One | Visual Flow
In this way, Upsolver removes the complexity of Big Data and Real-Time projects and reduces their use time from several weeks or months to several hours. With the latest Volcano technology, this tool queries the entire data lake in less than a millisecond and stores 10x the amount of data in RAM.
Source: visual-flow.com

Hadoop Reviews

A List of The 16 Best ETL Tools And Why To Choose Them
Companies considering Hadoop should be aware of its costs. A significant portion of the cost of implementing Hadoop comes from the computing power required for processing and the expertise needed to maintain Hadoop ETL, rather than the tools or storage themselves.
16 Top Big Data Analytics Tools You Should Know About
Hadoop is an Apache open-source framework. Written in Java, Hadoop is an ecosystem of components that are primarily used to store, process, and analyze big data. The USP of Hadoop is it enables multiple types of analytic workloads to run on the same data, at the same time, and on a massive scale on industry-standard hardware.
5 Best-Performing Tools that Build Real-Time Data Pipeline
Hadoop is an open-source framework that allows to store and process big data in a distributed environment across clusters of computers using simple programming models. It is designed to scale up from single servers to thousands of machines, each offering local computation and storage. Rather than relying on hardware to deliver high-availability, the library itself is...

Social recommendations and mentions

Based on our record, Hadoop seems to be a lot more popular than Upsolver. While we know about 25 links to Hadoop, we've tracked only 1 mention of Upsolver. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.

Upsolver mentions (1)

  • Anyone Used Dremio?
    Most of the pains of using query engines over object storage are in the ongoing management of files (partitioning, compression, merging many small files into fewer larger files) Cloud data lakes are tremendously valuable when it comes to exploratory and ad-hoc data analysis. If you really require sub-second queries on structured data, you're better off with a data warehouse. I'm not totally clear on your use... Source: over 3 years ago

Hadoop mentions (25)

  • Apache Hadoop: Open Source Business Model, Funding, and Community
    This post provides an in‐depth look at Apache Hadoop, a transformative distributed computing framework built on an open source business model. We explore its history, innovative open funding strategies, the influence of the Apache License 2.0, and the vibrant community that drives its continuous evolution. Additionally, we examine practical use cases, upcoming challenges in scaling big data processing, and future... - Source: dev.to / 30 days ago
  • What is Apache Kafka? The Open Source Business Model, Funding, and Community
    Modular Integration: Thanks to its modular approach, Kafka integrates seamlessly with other systems including container orchestration platforms like Kubernetes and third-party tools such as Apache Hadoop. - Source: dev.to / 30 days ago
  • India Open Source Development: Harnessing Collaborative Innovation for Global Impact
    Over the years, Indian developers have played increasingly vital roles in many international projects. From contributions to frameworks such as Kubernetes and Apache Hadoop to the emergence of homegrown platforms like OpenStack India, India has steadily carved out a global reputation as a powerhouse of open source talent. - Source: dev.to / about 1 month ago
  • Unveiling the Apache License 2.0: A Deep Dive into Open Source Freedom
    One of the key attributes of Apache License 2.0 is its flexible nature. Permitting use in both proprietary and open source environments, it has become the go-to choice for innovative projects ranging from the Apache HTTP Server to large-scale initiatives like Apache Spark and Hadoop. This flexibility is not solely legal; it is also philosophical. The license is designed to encourage transparency and maintain a... - Source: dev.to / 3 months ago
  • Apache Hadoop: Pioneering Open Source Innovation in Big Data
    Apache Hadoop is more than just software—it’s a full-fledged ecosystem built on the principles of open collaboration and decentralized governance. Born out of a need to process vast amounts of information efficiently, Hadoop uses a distributed file system and the MapReduce programming model to enable scalable, fault-tolerant computing. Central to its success is a diverse ecosystem that includes influential... - Source: dev.to / 3 months ago
View more

What are some alternatives?

When comparing Upsolver and Hadoop, you can also consider the following products

IRI Voracity - IRI Voracity is an automated data management platform that helps you extract, transform and load (ETL) your data lake to any data warehouse or cloud.

Apache Spark - Apache Spark is an engine for big data processing, with built-in modules for streaming, SQL, machine learning and graph processing.

Zaloni Data Platform - Get self-service data from a platform that accelerates business insights. Use data from any source, anywhere: the cloud, on-premises, multi-cloud or hybrid.

PostgreSQL - PostgreSQL is a powerful, open source object-relational database system.

Kylo - Kylo is an end-to-end data lake management software that provides data from many sources in an automated fashion and optimizes it.

Apache Storm - Apache Storm is a free and open source distributed realtime computation system.