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    KNIME Business Hub - Basic Edition

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    Sold by: KNIME 
    Deployed on AWS
    Free Trial
    KNIME Business Hub on AWS provides a single environment for all data workers to collaborate on and deploy data science solutions across the organization.
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    Overview

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    --License information: Basic License, 5 users, 4 vCores, Single Team--

    KNIME helps everybody make sense of data.

    Its free and open-source KNIME Analytics Platform enables anyone - whether they come from a business, technical or data background - to intuitively work with data, every day.

    KNIME Business Hub is the commercial complement to KNIME Analytics Platform for collaborating on and deploying data science solutions to drive analytic insights across the organization.

    Anyone who builds analytic solutions with the low-code, no-code KNIME Analytics Platform can leverage KNIME Business Hub to scale these insights across the enterprise. KNIME Business Hub provides organizations with single, scalable environment to securely collaborate and share best practices, as well as deploy and monitor their analytical workflows. The scalable, cloud-native architecture and team-controlled execution, enables fast community adoption and reduces the burden on central IT. This suite of features enables organizations to build vibrant data science communities and accelerate the spread of data-driven decisioning.

    Highlights

    • Collaborate across teams and disciplines
    • Upskill business and domain experts
    • Automate spreadsheet work and repeatable data processes

    Details

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    Delivery method

    Delivery option
    64-bit (x86) Amazon Machine Image (AMI)

    Latest version

    Operating system
    Ubuntu 22.04 LTS

    Deployed on AWS
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    Buyer guide

    Financing for AWS Marketplace purchases

    AWS Marketplace now accepts line of credit payments through the PNC Vendor Finance program. This program is available to select AWS customers in the US, excluding NV, NC, ND, TN, & VT.
    Financing for AWS Marketplace purchases

    Pricing

    Free trial

    Try this product free for 31 days according to the free trial terms set by the vendor. Usage-based pricing is in effect for usage beyond the free trial terms. Your free trial gets automatically converted to a paid subscription when the trial ends, but may be canceled any time before that.

    KNIME Business Hub - Basic Edition

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    Pricing is based on actual usage, with charges varying according to how much you consume. Subscriptions have no end date and may be canceled any time. Alternatively, you can pay upfront for a contract, which typically covers your anticipated usage for the contract duration. Any usage beyond contract will incur additional usage-based costs.
    Additional AWS infrastructure costs may apply. Use the AWS Pricing Calculator  to estimate your infrastructure costs.

    Usage costs (54)

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    Dimension
    Cost/hour
    m6i.4xlarge
    Recommended
    $5.80
    c7i.4xlarge
    $5.80
    m6a.16xlarge
    $5.80
    c7i.24xlarge
    $5.80
    c6i.4xlarge
    $5.80
    m7a.16xlarge
    $5.80
    m7a.24xlarge
    $5.80
    c6i.12xlarge
    $5.80
    c7i.12xlarge
    $5.80
    c6i.24xlarge
    $5.80

    Vendor refund policy

    Refunds may be requested by sending an email to support@knime.com . Ensure to provide your name and email address, your AWS account number and the dates of usage you want refunded. Also include the reason for requesting a refund. Refund requests are reviewed on a case by case basis.

    Custom pricing options

    Request a private offer to receive a custom quote.

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    Legal

    Vendor terms and conditions

    Upon subscribing to this product, you must acknowledge and agree to the terms and conditions outlined in the vendor's End User License Agreement (EULA) .

    Content disclaimer

    Vendors are responsible for their product descriptions and other product content. AWS does not warrant that vendors' product descriptions or other product content are accurate, complete, reliable, current, or error-free.

    Usage information

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    Delivery details

    64-bit (x86) Amazon Machine Image (AMI)

    Amazon Machine Image (AMI)

    An AMI is a virtual image that provides the information required to launch an instance. Amazon EC2 (Elastic Compute Cloud) instances are virtual servers on which you can run your applications and workloads, offering varying combinations of CPU, memory, storage, and networking resources. You can launch as many instances from as many different AMIs as you need.

    Version release notes

    The release notes for the KNIME Business Hub 1.13.x versions can be found here: https://docs.knime.com/latest/business_hub_release_notes/index.html#bhub-changelog 

    Additional details

    Usage instructions

    To get started with KNIME Business Hub, navigate to http://<ip-address>:8800 to access the Admin console. Substitute "<ip-address>" with the IP address of the launched instance. The Admin console can take several minutes to initialize. Once initialized, you will be presented with a login screen. Use the EC2 instance identifier of the launched instance as the password. You can find the IP address and Instance ID on the EC2 console. Once logged in follow the directions to configure KNIME Business Hub. Once you complete the configuration the application will deploy and will accessible at the DNS name you specified during the configuration.

    Full directions are located here: https://docs.knime.com/latest/aws_marketplace_business_hub_guide/index.html#_connecting_to_the_knime_business_hub_admin_console 

    Support

    Vendor support

    Register your KNIME marketplace product for support at

    AWS infrastructure support

    AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.

    Product comparison

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    Accolades

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    Top
    100
    In Generative AI, Analytic Platforms, ML Solutions
    Top
    10
    In Databases & Analytics Platforms, ML Solutions, Data Analytics
    Top
    10
    In Amazon Redshift, Analytic Platforms

    Customer reviews

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    Sentiment is AI generated from actual customer reviews on AWS and G2
    Reviews
    Functionality
    Ease of use
    Customer service
    Cost effectiveness
    1 reviews
    Insufficient data
    Insufficient data
    Insufficient data
    Insufficient data
    15 reviews
    Insufficient data
    Positive reviews
    Mixed reviews
    Negative reviews

    Overview

     Info
    AI generated from product descriptions
    Low-Code/No-Code Development
    Enables intuitive data work and analytical solution building without requiring advanced programming knowledge through low-code and no-code interfaces.
    Collaborative Workflow Management
    Provides a centralized environment for multiple teams to collaborate on, share, and deploy data science solutions across the organization.
    Cloud-Native Architecture
    Utilizes scalable, cloud-native infrastructure designed for enterprise deployment and team-controlled execution.
    Workflow Automation
    Supports automation of repetitive data processes and spreadsheet-based tasks through analytical workflows.
    Deployment and Monitoring Capabilities
    Enables secure deployment and monitoring of analytical workflows with team-controlled execution and governance controls.
    Lakehouse Architecture
    Built on a lakehouse foundation providing unified data storage and governance across data engineering, analytics, BI, data science, and machine learning workloads
    Open Source Integration
    Constructed on open source data projects and open standards to maximize flexibility and interoperability across the data ecosystem
    Data Intelligence Engine
    Powered by a Data Intelligence Engine that enables organizational access to data and insights across diverse user roles and technical skill levels
    Unified Data Platform
    Consolidates data, analytics, and AI workloads on a single common platform running on Amazon S3, eliminating traditional data silos
    Collaborative Capabilities
    Provides native collaboration features enabling data teams to work together across the entire data and AI workflow
    Automatic Data Modeling and Preparation
    Automatic data modeling, data preparation and formulas with data science integration into interactive visualizations, dashboards and reports
    In-Place Analytics Architecture
    Cloud-scale in-place analytics that leverages underlying data sources for real-time data access without pre-loading data into platform memory, enabling analysis of massive datasets
    No-Code Visual Interface
    Intuitive no-code visual user experience enabling self-service data analysis and content creation for business users and non-technical users
    Role-Based Access Control and Governance
    Role-based data and content access security with centralized control through governed data discovery and multi-tenancy capabilities
    Multi-Source Data Integration
    Direct integration with AWS and cloud data sources including Amazon Redshift, RDS, EMR, S3, Athena, SAP HANA, SAP BW4/HANA, Exasol, and Snowflake

    Contract

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    Standard contract
    No
    No

    Customer reviews

    Ratings and reviews

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    4
    22 ratings
    5 star
    4 star
    3 star
    2 star
    1 star
    32%
    64%
    5%
    0%
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    1 AWS reviews
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    21 external reviews
    External reviews are from PeerSpot .
    NataliaRaffo

    Workflow automation has accelerated advanced analytics and machine learning delivery

    Reviewed on Mar 31, 2026
    Review from a verified AWS customer

    What is our primary use case?

    I am currently using KNIME Business Hub . In my experience, using KNIME Business Hub  as a unified platform for developing advanced analytics and artificial intelligence solutions enables distributed processing of large-scale data through Spark. Implementation of modern lakehouse architectures that integrate data engineering, data science, and analytics within a single environment enhances scalability, model versioning, and team collaboration. Currently, I use KNIME Business Hub to build data pipelines, train models, and deploy analytical solutions into production environments.

    I am also using other tools because my company has many clients and our clients have different tools. We need to construct the analytical solutions in these tools. For example, I am using Python because in Python we construct the statistical and analytical models. Python is the primary language for developing advanced analytics and artificial intelligence solutions, including machine learning, deep learning, and large-scale data processing. My company has strong experience with different libraries, such as Pandas, NumPy, Scikit-learn, and TensorFlow . For our clients, we need to build, validate, and optimize predictive models. My team is multidisciplinary, and we integrate solutions into production environments through APIs, process automation, and end-to-end analytical pipelines, ensuring scalability and maintainability of the models. I always use Python as well. However, I use KNIME Business Hub in the same way because KNIME Business Hub is very important for constructing advanced analytical models. KNIME Business Hub now has many nodes to use for big data, data quality, data governance, and advanced analytics. We use KNIME Business Hub as well. It depends on the client because we always try to analyze what tool our client has, and then we try to use this tool. KNIME Business Hub is another tool that we now use, and we use the Python nodes as well for advanced analytics. In data governance, we try to use KNIME Business Hub to construct the data quality rules and other analysis. For example, to assess and understand the maturity of the companies, we sometimes use KNIME Business Hub. I use different tools, but sometimes KNIME Business Hub, and other times Python and KNIME Business Hub are different tools. I also use Amazon Web Service and Azure .

    My experience using KNIME Business Hub for the development of advanced analytics and machine learning solutions leverages a wide range of nodes across data preparation, modeling, and deployment stages. I always try to use specific nodes because we always try to use the CRISP-DM methodology, so we need to always do data preparation and transformation for advanced analytics solutions. Key nodes and components used include data preparation and transformation nodes such as File Reader, Row Filter, Column Filter, Missing Value, String Manipulation, Math Formula, Joiner, GroupBy, Pivoting, and Rule Engine. I use nodes for feature engineering, such as Normalizer, One to Many, Binner, Lag Column, and Feature Selection Loop , and other nodes for machine learning and AI. For example, Partitioning, Decision Tree Learner, Predictor, and Random Forest Learner are all models that KNIME Business Hub has, and we use them for our models. Sometimes, I always try to use the Python and R nodes because there I can program the code as well. For model evaluation, I use other nodes, such as Scorer, Confusion Matrix, and Numeric  Scorer. I love KNIME Business Hub because I can construct workflow automation and deployment. For me, it is very clear to understand the process for constructing analytical and advanced statistical models. It is good for me to use KNIME Business Hub for that. I use KNIME Business Hub end-to-end, from data preparation and feature engineering to machine learning, model evaluation, and workflow automation, integrating Python and R when more advanced modeling is required. I always try to use KNIME Business Hub.

    What is most valuable?

    It is very important that I have the workflow automation integrated with Python nodes, for example, and I can construct our main code to construct the solutions. For us, it is very important to have the workflow automation. In KNIME Business Hub, it is possible because we have the end-to-end approach to the models. We have, for example, some nodes for data preparation, and other nodes for feature engineering, and other nodes for machine learning and model evaluation, for example. We have only one workflow with all the nodes and all the processes. For us, this is an important impact because, for example, we have to construct segmentation models for our customers, and we define a frequency to run the models. For example, we need to run the cluster segmentation around each month. We have the automation of the workflow and we need only to put a run in a button and the process runs. For us, this is an important impact because the time to obtain the results is very quick.

    What needs improvement?

    Sometimes it is a little bit difficult to use some nodes when we have many large-scale data, for example, CSV files with a large amount of data. It is sometimes difficult to try to import the data in KNIME Business Hub nodes because I think that some features that are in the CSV in text, for example, large text, is difficult for KNIME Business Hub to import these fields. I don't know why, but it is very difficult. We need to try to use different nodes for importing the data, such as File Reader and CSV Reader. However, I think that it is always the features that have much text, it is difficult for KNIME Business Hub to understand and import this information. I don't know why, or maybe I don't know if we don't know what the better option is to configure the node to import all the CSV or the data set. However, we have always had this problem. In some nodes, sometimes it is the same because sometimes, for example, I have a CSV and in my CSV, I have a feature that is, for example, a date. When I import this data set in the File Reader node, I have problems with this field because it is a date, but the problem is that it imports it as text, for example. We try to use their nodes that convert text to date, but sometimes it is difficult, and it is not immediate to transform the text into a date. So we needed to convert the text into a date in the CSV, and then import it again in the KNIME Business Hub node and try to have a good read of this field. I know that KNIME Business Hub has some nodes to convert text to date and others, but sometimes it is difficult to use these nodes. I don't know why. Maybe it needs a specific format for the date and we need to transform our feature in this option. So sometimes it is a large process to convert these features. However, sometimes we need to investigate and search for other nodes, and try with other nodes to import these cases.

    For how long have I used the solution?

    I started with KNIME Business Hub around fifteen years ago.

    What do I think about the stability of the solution?

    For me, it is great. I think that sometimes we have some missing problems in some nodes when we are constructing the statistical models, but we always try to visit the forum for KNIME Business Hub and then we try to resolve the problem. However, I think that for now, I need to come back again to Germany to make another training because I saw that KNIME Business Hub now has many new nodes and I need to explore the new nodes and try to use more. For now, KNIME Business Hub is excellent for me and for our team.

    Which other solutions did I evaluate?

    We are a partner from KNIME Business Hub at this moment and I made different certifications in Germany, in Berlin, with KNIME Business Hub about machine learning nodes. I think that was around 2016. In 2018, we made two certifications with KNIME Business Hub.

    What other advice do I have?

    For now, we always try to use KNIME Business Hub to integrate with Power BI because we use Power BI to present the results and the visualization for the models. In KNIME Business Hub, I try to use some graphics, but for our internal analysis. For our clients, we use Power BI to present the results for the models.

    I think that KNIME Business Hub is very robust and is a leading solution for analytics and advanced analytics. I think that now we have many nodes to construct the analytical models in the big data nodes and to process structured data. This is important because it is very easy to use the nodes in KNIME Business Hub in these cases. For example, in Python, it is a little bit complex to construct the code. In KNIME Business Hub, we have the end-to-end approach to the workflow, the complete workflow to resolve the process for the model. This is very good to have good results and quick results for advanced solutions, for analytics and for artificial intelligence. I think that I prefer KNIME Business Hub to Python, for example.

    I think that the price is good. I think that a good option is to analyze, for example, the cost for Amazon Web Service, AI components of Azure  and Amazon, and try to compare to KNIME Business Hub, and I think that it is a good price. However, always in our solutions, we need to make a good calculation for all the solutions because we have many solutions, and because all our clients don't have KNIME Business Hub. Sometimes we use KNIME Business Hub for our internal development of the analytical models. However, sometimes our clients have KNIME Business Hub, so it is perfect because we can construct the models there. When our clients don't have KNIME Business Hub, we need to use other tools because sometimes our clients tell us that they need us to construct the model only in their tool, for example, Amazon Web Service or in Python, so we need to construct there. Because sometimes they don't know about KNIME Business Hub and they want to use the tools that they have. However, I think that it is comfortable to use KNIME Business Hub for our clients. They like it very much because it is very easy and now it is very robust for statistical and advanced analytical solutions. My overall rating for KNIME Business Hub is eight out of ten.

    DanieleGentile

    Enables fast project development with efficient workflow modifications and promising features while offering modularity and reusability

    Reviewed on Apr 02, 2025
    Review provided by PeerSpot

    What is our primary use case?

    I primarily use KNIME  for ETL, extracting data from different sources. I extract data from endpoints of Drupal  created for me by developers, then transfer this data into Oracle. After extracting, I create a model in Oracle with ETL, which is used by Power BI. Following this, I create a star schema of the data.

    What is most valuable?

    KNIME  is simple and allows for fast project development due to its reusability. I appreciate the ability to make improvements or modifications in existing workflows. Although I have not yet used the forecasting and customer profiling features, I find them promising.

    Another effective feature is the ability to use GET request objects to retrieve data from websites or APIs. This makes iterative steps easy to manage. It is more elastic and modern compared to SAP Data Services , allowing node creation and regrouping components or steps for reuse in different projects.

    What needs improvement?

    I have seen the potential to interact with Python, which is currently a bit limited. I am interested in the newer version, 5.4, when it becomes available. The machine learning and profileration aspects are fascinating and align with my academic background in statistics.

    For how long have I used the solution?

    I have been working with KNIME for almost five years now.

    What do I think about the stability of the solution?

    Occasionally, when using the GET object, there might be issues due to the velocity of the lines or the IT system of the commission. Overall, stability is not a significant concern.

    What do I think about the scalability of the solution?

    I have not encountered any scalability limitations with KNIME at the moment.

    How are customer service and support?

    I contacted their technical support around five times. While they cannot always provide immediate answers, they are generally efficient and simplify tasks, especially in the initial phase of learning KNIME.

    Which solution did I use previously and why did I switch?

    I also worked with Power BI and BusinessObjects and have experience with typical data services access.

    How was the initial setup?

    The initial setup was straightforward, taking between half an hour and an hour depending on the data entity.

    Which other solutions did I evaluate?

    I use SAP Data Services as well, but I find KNIME more elastic and modern.

    What other advice do I have?

    I am impressed by the modularity and reusability in KNIME, especially the ability to make small adjustments to object configurations. I am interested in its interaction with Python and machine learning aspects. Also, I recommend KNIME to others as I face difficulty finding reasons not to. My overall rating for KNIME is between nine and ten.

    Ana Toftigues

    Intuitive design and helps with academic work while graphic features need clarity

    Reviewed on Dec 17, 2024
    Review provided by PeerSpot

    What is our primary use case?

    I use KNIME  for my academic works.

    What is most valuable?

    KNIME  is more intuitive and easier to use, which is the principal advantage.

    What needs improvement?

    For graphics, the interface is a little confusing. So, this is a point that could be improved.

    For how long have I used the solution?

    I have been using KNIME for six months.

    What other advice do I have?

    I'd rate the solution seven out of ten.

    reviewer1515237

    Provides data analytics with easy setup and vast documentation

    Reviewed on Jul 30, 2024
    Review provided by PeerSpot

    What is our primary use case?

    We use the solution for data analytics and logic design.

    How has it helped my organization?

    The product is working fine with Oracle.

    What needs improvement?

    It is is written in Java. If they can output the Javascript, it will be much better. Also, it could be integrated with Visual Studio.

    For how long have I used the solution?

    I have been using KNIME for three years.

    What do I think about the scalability of the solution?

    20 users are using this solution. Scalability is quite easy, but handling many notes can become messy.

    How are customer service and support?

    Most of the things is available in the community.

    How was the initial setup?

    It's quite easy to setup.

    I have a CSV reader. When I reset that CS reader, and It gave some error.

    What other advice do I have?

    I have a CSV reader, and I encounter an error whenever I try to save. However, if I reset the CSV reader, I am able to save successfully. It’s a rare issue, but there's something wrong with the CSV reader. The error message doesn't provide a solution, only indicating a problem with the CSV reader.

    I want to save the project but always face saving issues. If I reset the node, the saving works fine. The error message isn’t clear about what is wrong or how to fix it. I discovered on my own that resetting the CSV reader from green to yellow allows me to save the project. This issue is quite rare.

    Last Friday, there was a widespread CrowdStrike issue, and I had to restart my computer. After restarting, I lost my entire project.

    I recommend the solution.

    Overall, I rate the solution a nine out of ten.

    Júlio César Gomes Fonseca

    User-friendly tool with efficient integration features

    Reviewed on Jul 15, 2024
    Review provided by PeerSpot

    What is our primary use case?

    We used the product to prepare data for our team. I would prepare SQLs and check them in Oracle Developer, then create workflows in KNIME to manage and process the data, creating specific tables for modeling.

    What is most valuable?

    The product is a great alternative because it is not an open-source tool and offers simplicity, making it easier for our large team to use.

    What needs improvement?

    Sometimes, we needed more space to handle larger operations, especially since our machines had limited space and memory due to Kubernetes clusters. Breaking up SQLs was necessary to handle the data flow better.

    For how long have I used the solution?

    I extensively used KNIME for about one year and at least two months.

    What do I think about the stability of the solution?

    The product is quite stable.

    What do I think about the scalability of the solution?

    The platform is scalable. It is possible to configure the system to effectively manage memory and space requirements.

    I rate the scalability a seven out of ten.

    How are customer service and support?

    The community support is good, and plenty of shared knowledge is available.

    Which solution did I use previously and why did I switch?

    We had licensing issues with other tools, but KNIME worked well as an alternative.

    What other advice do I have?

    We integrated KNIME with Oracle, Apache, and other tools. It allowed us to pull data from various sources, such as Oracle, CSV, and Excel, into one consolidated table, which was very efficient.

    Overall, I rate it an eight. It is a good tool, especially for our current requirements. However, there were limitations, such as space issues and occasional process slowdowns due to memory constraints. Despite these challenges, it is a solid product.

    I recommend it to other professionals, particularly those who work with diverse datasets and require a flexible tool to manage data flows. It is user-friendly, especially for individuals with a background in Java or Python, as it allows for custom operations and automation, which I found very helpful in my experience.

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