Software Alternatives, Accelerators & Startups

Evidently AI VS Qubole

Compare Evidently AI VS Qubole and see what are their differences

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Evidently AI logo Evidently AI

Open-source monitoring for machine learning models

Qubole logo Qubole

Qubole delivers a self-service platform for big aata analytics built on Amazon, Microsoft and Google Clouds.
  • Evidently AI Landing page
    Landing page //
    2023-08-19
  • Qubole Landing page
    Landing page //
    2023-06-22

Evidently AI features and specs

  • Automated Monitoring
    Evidently AI provides automated monitoring of machine learning models, which helps in identifying performance degradation or drift, ensuring models remain accurate and reliable over time.
  • User-Friendly Interface
    The platform offers a user-friendly interface that allows practitioners with varying levels of expertise to easily navigate through features and monitor models effectively.
  • Comprehensive Reporting
    Evidently AI generates detailed reports that include key metrics and insights about model performance, making it easier to communicate findings with stakeholders.
  • Integration Capabilities
    It can be integrated seamlessly with existing data pipelines and machine learning infrastructures, allowing for more streamlined workflows.
  • Open Source
    As an open-source tool, Evidently AI enables greater flexibility and customization, allowing users to modify and extend its features to suit specific needs.

Possible disadvantages of Evidently AI

  • Limited Advanced Features
    While Evidently AI covers basic and intermediate monitoring needs well, it may lack some of the more advanced features offered by other specialized commercial platforms.
  • Dependency Management
    Being open-source, managing dependencies and ensuring compatibility with other tools or libraries can sometimes be challenging and may require additional effort.
  • Resource Intensive
    The tool may require significant computational resources for large scale models or big datasets, which could be a limitation for some users.
  • Initial Setup Complexity
    Initial setup and configuration of the platform might be complex for users without a strong technical background, potentially causing a steeper learning curve.

Qubole features and specs

  • Scalability
    Qubole allows seamless scalability, adjusting resources automatically based on workload, which facilitates efficient handling of large data sets and peaks in demand.
  • Multi-cloud Support
    Qubole offers support for multiple cloud providers, including AWS, Azure, and Google Cloud, giving users flexibility and freedom to choose or shift between cloud services.
  • Unified Interface
    The platform provides a unified interface for diverse data processing engines such as Apache Spark, Hadoop, Presto, and Hive, simplifying the management of big data operations.
  • Cost Management
    Qubole includes features for cost management and optimization, such as intelligent spot instance usage, which can reduce operational costs significantly.
  • Data Security
    Qubole offers robust security features, including encryption, access controls, and compliance with various regulations, which assists in maintaining data privacy and protection.
  • Integration Capabilities
    The platform supports integration with many other tools and services, which enables a streamlined pipeline for data extraction, transformation, loading (ETL), and analysis.

Possible disadvantages of Qubole

  • Complex Setup
    For users unfamiliar with big data infrastructure and cloud platforms, the initial setup and configuration of Qubole may present a steep learning curve.
  • Cost Overruns
    Without careful management and monitoring, the automatic scaling and utilization of cloud resources can lead to unexpected and potentially high costs.
  • Dependency on Cloud Availability
    As a cloud-based platform, Qubole's performance and availability are contingent on the underlying cloud provider, which means service disruptions or performance issues in the cloud can affect Qubole’s operations.
  • Vendor Lock-in
    While Qubole supports multiple clouds, migrating away from the platform to another big data solution can be complex due to dependency on Qubole-specific configurations and optimizations.
  • Support and Documentation
    Some users have reported that the quality and depth of support and documentation provided by Qubole can vary, which may affect troubleshooting and learning.
  • User Interface
    While the interface is comprehensive, some users may find it less intuitive compared to other platforms, which can hinder ease of use and efficiency.

Analysis of Evidently AI

Overall verdict

  • Yes, Evidently AI is a solid choice for monitoring and understanding machine learning models.

Why this product is good

  • User-Friendly: Evidently AI offers an intuitive interface that simplifies the process of monitoring machine learning models.
  • Comprehensive Dashboards: It provides detailed dashboards that help in tracking and understanding model performance over time.
  • Open-Source: As an open-source tool, it allows users to customize and extend its functionality, ensuring it meets specific needs.
  • Automated Reporting: The platform automates the creation of reports, saving time and reducing manual effort in analyzing model outputs.
  • Community Support: Being open-source, it has a community that contributes to its growth and provides support, making it reliable and up-to-date.

Recommended for

  • Data Scientists: To streamline model monitoring and gain insights into model performance.
  • Machine Learning Engineers: To automate the reporting and monitoring process, ensuring models perform optimally.
  • Organizations: That need a scalable and customizable solution for machine learning model reporting and monitoring.
  • Companies Looking for Open-Source Solutions: Those who prefer open-source tools for flexibility and cost-effectiveness.

Analysis of Qubole

Overall verdict

  • Qubole is generally considered a good platform for managing big data workloads, especially for businesses that seek flexibility and efficiency in processing and analyzing large-scale datasets. Its ability to automate and optimize workflows can lead to significant productivity gains and cost savings.

Why this product is good

  • Qubole is a cloud-based data platform that is designed to simplify and optimize big data processing. It allows data teams to manage and analyze large datasets efficiently by providing a unified interface for various data processing engines, including Apache Spark, Hive, and Presto. Its scalability, ease of integration with multiple cloud providers, automated data workflows, and support for machine learning models make it a valuable tool for organizations handling extensive data operations.

Recommended for

  • Data engineers and data scientists who need a robust platform for processing large volumes of data.
  • Organizations looking to leverage cloud-based solutions for big data processing and analytics.
  • Companies that want to integrate multiple data processing engines under a single management platform.
  • Businesses that require flexibility in scaling their data infrastructure in response to changing workloads.

Evidently AI videos

How to Monitor Machine Learning Models (Evidently AI)

Qubole videos

Fast and Cost Effective Machine Learning Deployment with S3, Qubole, and Spark

More videos:

  • Review - Migrating Big Data to the Cloud: WANdisco, GigaOM and Qubole
  • Review - Democratizing Data with Qubole

Category Popularity

0-100% (relative to Evidently AI and Qubole)
AI
100 100%
0% 0
Data Dashboard
0 0%
100% 100
Developer Tools
100 100%
0% 0
Big Data
0 0%
100% 100

User comments

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Social recommendations and mentions

Based on our record, Evidently AI seems to be more popular. It has been mentiond 2 times since March 2021. 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.

Evidently AI mentions (2)

  • [D] Using MLFlow for model performance tracking
    It is doable. However the main focus of MLFlow is in experiment tracking. I would suggest for you to look into another monitoring tools such evidentlyai . You can track more things than performance (e.g.data drift). Which may be helpful in a production setting. Source: almost 3 years ago
  • Five Data Quality Tools You Should Know
    Evidently is an open-source Python library that analyzes and monitors machine learning models. It generates interactive reports based on Panda DataFrames and CSV files for troubleshooting models and checking data integrity. These reports show model health, data drift, target drift, data integrity, feature analysis, and performance by segment. - Source: dev.to / over 3 years ago

Qubole mentions (0)

We have not tracked any mentions of Qubole yet. Tracking of Qubole recommendations started around Mar 2021.

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Machine Learning Playground - Breathtaking visuals for learning ML techniques.

Snowflake - Snowflake is the only data platform built for the cloud for all your data & all your users. Learn more about our purpose-built SQL cloud data warehouse.