Listing Thumbnail

    Dataiku Trial

     Info
    Sold by: Dataiku 
    Deployed on AWS
    AWS Free Tier
    Accelerate Enterprise AI with Dataiku on AWS

    Overview

    Play video

    This trial version of Dataiku allows you to deploy into your AWS environment for prototyping, testing and evaluating the full extent of Dataiku capabilities.

    Dataiku is The Universal AI Platform™, empowering teams to deliver AI and analytics projects faster - all within a secure, collaborative, and governed environment.

    • Data Scientists use familiar tools to focus on high-impact work, with automation and streamlined collaboration.
    • Business Analysts get faster insights with intuitive data prep and accessible machine learning.
    • Data Teams scale projects with built-in governance and transparency.


    Built for AWS:
    • Connect securely to all data sources, including Amazon S3, Amazon Redshift, and Amazon RDS.
    • Scale data and ML processing with Dataiku elastic compute powered by Amazon EKS for Python, R, Spark, and more.
    • Accelerate AI development with pre-built workflows integrating AWS AI services, such as Amazon SageMaker and Amazon Comprehend.
    • Distributed creation of advanced analytics through its visual platform, fostering greater collaboration between technical and non-technical teams.
    • Leverage the Dataiku LLM Mesh to connect to Amazon Bedrock for Chat, RAG, and Agentic workflows.


    AI at Scale, Supported Every Step

    With expert services and a robust learning platform, Dataiku helps organizations of any size adopt AI at scale - quickly and confidently.

    With Dataiku visual, end-to-end collaborative AI platform: - Data Scientists spend more time on high-impact AI projects, leveraging the languages and tools they already know, automating repetitive tasks and efficiently collaborating with stakeholders. - Business Analysts generate deeper intelligence, faster, thanks to comprehensive data access, smart data preparation and accessible machine learning. - Data Teams can deliver more projects and more value from analytics and AI all with built in transparency and governance. Dataiku and AWS innovate together to enable organizations of any size to deliver enterprise AI in a highly scalable environment. - Dataiku natively integrates with AWS Services and products to enable organizations of any size to deliver enterprise AI at scale. - Dataiku enables users to ingest and manipulate a wide variety of data including Athena, Redshift and more, from the AWS ecosystem and beyond. - Dataiku empowers analytic teams to extend data science collaboration through integrations with Amazon Sagemaker Get started today with Dataiku on AWS!

    Highlights

    • Take full advantage of your investment in the AWS platform with Dataiku's unique push down to Amazon's storage and compute.
    • Empower more users to clean and enrich data, build advanced data pipelines, and create machine learning models in a visual interface.
    • Accelerate deployment on AWS, leveraging Sagemaker and Bedrock, with a fully managed service (SaaS) hosted and managed by Dataiku.

    Details

    Delivery method

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

    Latest version

    Operating system
    OtherLinux 9

    Deployed on AWS

    Unlock automation with AI agent solutions

    Fast-track AI initiatives with agents, tools, and solutions from AWS Partners.
    AI Agents

    Features and programs

    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

    Dataiku Trial

     Info
    Pricing and entitlements for this product are managed through an external billing relationship between you and the vendor. You activate the product by supplying a license purchased outside of AWS Marketplace, while AWS provides the infrastructure required to launch the product. AWS Subscriptions have no end date and may be canceled any time. However, the cancellation won't affect the status of the external license.
    Additional AWS infrastructure costs may apply. Use the AWS Pricing Calculator  to estimate your infrastructure costs.

    Vendor refund policy

    Refunds are not provided, but one can cancel at any time.

    How can we make this page better?

    We'd like to hear your feedback and ideas on how to improve this page.
    We'd like to hear your feedback and ideas on how to improve this page.

    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

     Info

    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.

    Additional details

    Usage instructions

    Browse to http(s)://INSTANCE_PUBLIC_ADDRESS/

    You might need to wait few minutes that the instance starts and initializes.

    You will have a first authentication to prove that you're the owner of the instance (with a basic access authentication):

    • login = instance id
    • password = empty

    Then, you will have access to Dataiku DSS visual interface. Note that only Chrome and Firefox are supported.

    Administrative (command-line) access can be obtained through ssh centos@INSTANCE_PUBLIC_ADDRESS. A standard installation of Dataiku DSS runs under linux user account "dataiku".

    For additional information, or any issue, please see our resources and Q & A pages.

    Support

    Vendor support

    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.

    Similar products

    Customer reviews

    Ratings and reviews

     Info
    4.5
    2 ratings
    5 star
    4 star
    3 star
    2 star
    1 star
    50%
    50%
    0%
    0%
    0%
    2 AWS reviews
    |
    56 external reviews
    Star ratings include only reviews from verified AWS customers. External reviews can also include a star rating, but star ratings from external reviews are not averaged in with the AWS customer star ratings.
    Ravi-Srivastava

    Has enabled reliable data pipeline creation and supports rule-based alerts for quality monitoring

    Reviewed on Oct 14, 2025
    Review from a verified AWS customer

    What is our primary use case?

    My main use cases in Dataiku  include ensuring a strong data pipeline ingestion. We have people from data management, so we need to take care of the pipeline, their data quality, data drifting, all these things. We are taking care of it with the Dataiku  rule-based alert systems we have created.

    What is most valuable?

    The best feature in Dataiku is that once the data is connected in the underneath layer, it flows exceptionally smoothly if you know how to tweak it. If you don't know, then it will create a mess. If you know how to tweak it and make the data according to your requirement, then it will be good. If you don't know and are trying to learn on the production, then it is a disaster.

    I have used Dataiku's AutoML tools. The AutoML tools have helped me on the fly, as you can apply the machine learning models. They are continuously reading your data and then creating the feature enablement. The moment feature enablement has happened, then you can do the model registry on the fly. Those model registries can trigger your new data. Imagine whatever the data test and train that is passed. Your operational data which is coming new every day, then that feature is enabled and it will give the reasonable amount of prediction and reasonable amount of value on the column so that you can utilize those. You can consume those in the application layer.

    Dataiku's data source integration flexibility is completely up to the requirement. We are not using it for ourselves. We are using it for business teams, and they are sending the requirement and we are ingesting according to their requirement. The important thing is, imagine raw data is coming A, but they need A plus B plus C multiply by D. All those kinds of enablement we are doing with the help of Dataiku.

    Our source system, the core system, is continuously throwing the raw data on the landing layer. Then from the landing layer, we are converting those raw data and making it as a consumption layer, consumable data. With the help of this, we are doing it.

    What needs improvement?

    In terms of enhancing collaboration within my team, I would not say Dataiku is the best one because it's so expensive. We are not able to provide it to everyone. There are very few people who have the developer license and are using it. Once the data pipeline is created, then we are directly handing over that data pipeline to our user on the ingestion layer. It is not a very cost-effective solution, I must say, though it is good for developing purposes only.

    Pricing can be improved.

    For how long have I used the solution?

    I have been using this product for four years.

    What do I think about the stability of the solution?

    In my opinion, Dataiku is stable because we know how to use it. There are many unstable things happening, so it's not that only the application is stable or unstable. Even so many other things, we are facing challenges. I cannot only blame one thing.

    In terms of stabilization, if my data has no outlier creation in the raw data, then it is quite stable. I would rate it a seven.

    How are customer service and support?

    For support, I haven't created any support tickets, so I really don't know about it, but it is quite good.

    How would you rate customer service and support?

    Positive

    How was the initial setup?

    The initial setup started with HANA . Then they introduced Databricks . When Databricks  got live, then they started giving this license for Dataiku. We got the Dataiku license and learning. Everything went smoothly. Now Databricks is replaced by Snowflake . Even on Snowflake , we can do many things.

    What was our ROI?

    It is hard to say if I've seen a return on investment in Dataiku because we are far away from the monetization of the data. There are other teams who are taking care of the monetization. We are not from resource management, so it becomes very hard for us to calculate the ROIC on this at each and every application level. We are not using only Dataiku, we are using many other products.

    Which other solutions did I evaluate?

    In my opinion, it is good, not bad. I must say because I'm using many other tools as for a data operating model. It is much better than other tools because it has a clickable solution. Most of our data citizens who really don't know the coding thing can easily do things with the help of the mouse. Most of the things are working fine, so there is nothing to complain about.

    What other advice do I have?

    Overall, Dataiku is really good. I would rate it an 8 out of 10.

    Which deployment model are you using for this solution?

    Hybrid Cloud

    If public cloud, private cloud, or hybrid cloud, which cloud provider do you use?

    palbha n.

    Dataiku : Making your Data Science work easy

    Reviewed on Oct 03, 2025
    Review provided by G2
    What do you like best about the product?
    I find the platform very easy to use, which makes it great for quickly prototyping and getting your MVP out as soon as possible. It's also simple to plug and play, which really speeds up the process.
    What do you dislike about the product?
    I find the documentation somewhat incomplete, with few tutorials available. It can be a struggle to find solutions when I need help.
    What problems is the product solving and how is that benefiting you?
    Both MVP and end-to-end approaches allow for rapid use case development, but when it comes to building large-scale, scalable solutions with real impact, the process can be more challenging.
    Sanket B.

    Emerging player in Data Science

    Reviewed on Aug 20, 2025
    Review provided by G2
    What do you like best about the product?
    One of the best feature in Dataiku is No code feature which can help resources who are not comfortable in coding. It supports Python/R libraries and workflow playbook.
    What do you dislike about the product?
    Still expensive solution for implementation.
    What problems is the product solving and how is that benefiting you?
    Generally Dataiku helped us to build Data Science projects and predictive analysis to build some KPI's.
    Education Management

    Experience using Dataiku

    Reviewed on Jul 02, 2025
    Review provided by G2
    What do you like best about the product?
    I like how intuitive is to use Dataiku, there are many features that reminds me of a blend of SQL, excel, and python.
    What do you dislike about the product?
    It can be difficult if you wanna implement advanced tools such as python in the flow.
    What problems is the product solving and how is that benefiting you?
    Analyzing fraudulent transactions, uncovering hidden patterns.
    Airlines/Aviation

    Easy to use Data Analytics Platform

    Reviewed on May 06, 2025
    Review provided by G2
    What do you like best about the product?
    The UI is easy to use, it just take me small amount of time to learn and understand the concept related to Dataiku and can create my own flow. The CS is very responsive, the reply to my question very fast.
    What do you dislike about the product?
    I think Dataiku is already working with the latest trend of Ai, but I think it would be better if It include feature like the integrate between copilot & VS code, which allow seamless generation of code by AI
    What problems is the product solving and how is that benefiting you?
    Dataiku solves problems like complex data pipeline management, collaboration within teams, and automating repetitive AI/ML tasks. It benefits me by simplifying workflows with a visual interface, also me and my teammate could collaborate more easier in the platform.
    View all reviews