Software Alternatives, Accelerators & Startups

Apache Pinot VS ViyaDB

Compare Apache Pinot VS ViyaDB and see what are their differences

Apache Pinot logo Apache Pinot

Apache Pinot is a real-time distributed OLAP datastore, built to deliver scalable real-time analytics with low latency.

ViyaDB logo ViyaDB

In-Memory Analytical Database
Not present
  • ViyaDB Landing page
    Landing page //
    2022-01-11

Apache Pinot features and specs

  • Real-time Analytics
    Apache Pinot is designed for real-time analytics on large-scale data. It is capable of ingesting data from streaming sources like Apache Kafka, providing low-latency query capabilities on freshly ingested data.
  • High Throughput
    Pinot can handle high query loads and large datasets efficiently. Its architecture is optimized for distributed processing and fast query execution, making it suitable for use cases with high query throughput requirements.
  • Columnar Storage
    Pinot utilizes a columnar storage format, which allows efficient compression and fast retrieval of highly selective query results, reducing I/O and improving query performance.
  • Scalability
    Pinot is highly scalable and can be deployed across a distributed infrastructure. This makes it suitable for both growing startups and large enterprises with expanding data needs.
  • Integration with Big Data Ecosystem
    Apache Pinot integrates seamlessly with other big data technologies like Apache Kafka, Hadoop, and Spark, making it easier for organizations to adopt it in existing tech stacks.

Possible disadvantages of Apache Pinot

  • Complex Setup
    Deploying and configuring a Pinot cluster can be complex, especially for organizations without experience in distributed systems, requiring careful planning and resources.
  • Maintenance Overhead
    Running a Pinot cluster involves ongoing maintenance tasks such as monitoring, scaling, and upgrading the system, which can add to the operational overhead.
  • Learning Curve
    Organizations may encounter a steep learning curve when adopting Apache Pinot, especially if team members are not familiar with its architecture and operational procedures.
  • Limited Use Cases
    While Pinot is powerful for real-time analytics, it may not be the best choice for transactional or general-purpose database use cases, limiting its applicability in certain scenarios.
  • Resource Intensive
    Running Pinot efficiently requires a significant amount of computational resources, which might be a concern for organizations with limited infrastructure or budget.

ViyaDB features and specs

No features have been listed yet.

Category Popularity

0-100% (relative to Apache Pinot and ViyaDB)
Databases
61 61%
39% 39
Big Data
61 61%
39% 39
Data Dashboard
64 64%
36% 36
Relational Databases
0 0%
100% 100

User comments

Share your experience with using Apache Pinot and ViyaDB. 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 Apache Pinot and ViyaDB

Apache Pinot Reviews

Rockset, ClickHouse, Apache Druid, or Apache Pinot? Which is the best database for customer-facing analytics?
The biggest value behind Apache Pinot is that you can index each column, which allows it to process data at a super fast speed. โ€œItโ€™s like taking a pivot table and saving it to disk. So you can get this highly dimensional data with pre-computed aggregations and pull those out in what seems like supernaturally fast time,โ€ says Tim Berglund, Developer Relations at StarTree....
Source: embeddable.com

ViyaDB Reviews

We have no reviews of ViyaDB yet.
Be the first one to post

What are some alternatives?

When comparing Apache Pinot and ViyaDB, you can also consider the following products

ClickHouse - ClickHouse is an open-source column-oriented database management system that allows generating analytical data reports in real time.

MatrixOne - Hyperconverged cloud-edge native database. Contribute to matrixorigin/matrixone development by creating an account on GitHub.

Hashquery - A Python framework for defining and querying BI models in your data warehouse.

SlateDB - An embedded database built on object storage.

Apache Hive - Apache Hive data warehouse software facilitates querying and managing large datasets residing in distributed storage.

Apache Druid - Fast column-oriented distributed data store