Software Alternatives, Accelerators & Startups

Dataiku VS Google Cloud TPU

Compare Dataiku VS Google Cloud TPU and see what are their differences

Dataiku logo Dataiku

Dataiku is the developer of DSS, the integrated development platform for data professionals to turn raw data into predictions.

Google Cloud TPU logo Google Cloud TPU

Custom-built for machine learning workloads, Cloud TPUs accelerate training and inference at scale.
  • Dataiku Landing page
    Landing page //
    2023-08-17
  • Google Cloud TPU Landing page
    Landing page //
    2023-08-19

Dataiku

$ Details
-
Release Date
2013 January
Startup details
Country
United States
State
New York
City
New York
Founder(s)
Clément Stenac
Employees
500 - 999

Dataiku features and specs

  • User-Friendly Interface
    Dataiku offers an intuitive and easy-to-navigate visual interface that allows users of all technical backgrounds to create, manage, and deploy data projects without needing extensive coding knowledge.
  • Collaborative Environment
    The platform supports collaborative work, enabling data scientists, engineers, and analysts to work together on the same projects seamlessly, sharing insights and models easily.
  • End-to-End Workflow
    Dataiku provides tools that cover the entire data pipeline, from data preparation and cleaning to model building, deployment, and monitoring, making it a comprehensive solution for data teams.
  • Integrations and Extensibility
    The platform integrates with many data storage systems, machine learning libraries, and cloud services, allowing users to leverage existing tools and infrastructure.
  • Automation Capabilities
    Dataiku offers automation features such as scheduling, automation scenarios, and machine learning model monitoring, which can significantly enhance productivity and efficiency.
  • Rich Documentation and Support
    Dataiku provides extensive documentation, tutorials, and a strong support community to help users navigate the platform and troubleshoot issues.

Possible disadvantages of Dataiku

  • Pricing
    Dataiku can be expensive, particularly for small businesses and startups. The cost may be a barrier to entry for organizations with limited budgets.
  • Resource Intensive
    The platform can be resource-hungry, requiring significant computing power, which may necessitate additional investments in hardware or cloud services.
  • Learning Curve for Advanced Features
    Although the basic interface is user-friendly, mastering advanced features and customizations can require a steep learning curve and significant training.
  • Limited Offline Capabilities
    Dataiku relies heavily on cloud services for many of its functionalities. This dependence might be restrictive in environments with limited or no internet access.
  • Custom Model Flexibility
    While Dataiku supports many machine learning frameworks, the process of integrating custom or niche models can be cumbersome compared to using those frameworks directly.
  • Dependency on Ecosystem
    The seamless experience of Dataiku often relies on the broader cloud and data ecosystem. Changes or issues in integrated services can impact its performance and reliability.

Google Cloud TPU features and specs

  • High Performance
    Google Cloud TPUs are optimized for high-performance machine learning tasks, particularly deep learning. They can significantly speed up the training of large ML models compared to traditional CPUs and GPUs.
  • Scalability
    TPUs offer excellent scalability options, allowing users to handle extensive datasets and large models efficiently. Google Cloud allows the deployment of TPU pods that can further scale computational resources.
  • Ease of Integration
    TPUs are well-integrated within the Google Cloud ecosystem, offering ease of use with TensorFlow. This can simplify the workflow for developers who are already using Google Cloud and TensorFlow.
  • Cost-Effective
    Google Cloud TPUs can be more cost-effective for large-scale machine learning tasks, providing substantial computing power for the price compared to equivalent GPU instances.
  • Purpose-Built Hardware
    TPUs are specifically designed to accelerate ML tasks, making them more efficient for specific deep learning operations such as matrix multiplications, which are common in neural networks.

Possible disadvantages of Google Cloud TPU

  • Limited Compatibility
    While TPUs are highly optimized for TensorFlow, they offer limited compatibility with other deep learning frameworks, which might restrict their usability for some projects.
  • Learning Curve
    Developers may face a learning curve when transitioning to TPUs from more traditional hardware like CPUs and GPUs, especially if they are not deeply familiar with TensorFlow.
  • Less Flexibility
    TPUs are less versatile for general computing tasks compared to CPUs and GPUs. They are highly specialized, making them less suitable for applications outside of specific ML tasks.
  • Regional Availability
    Availability of TPU resources may be limited to specific regions, which could pose a constraint for some users needing resources in particular geographical locations.
  • Cost Considerations for Smaller Tasks
    While TPUs can be cost-effective for large scale operations, they might not be the most economical choice for smaller, less computationally intensive tasks due to over-provisioning.

Dataiku videos

AutoML with Dataiku: And End-to-End Demo

More videos:

  • Review - Dataiku: For Everyone in the Data-Powered Organization
  • Tutorial - Dataiku DSS Tutorial 101: Your very first steps

Google Cloud TPU videos

No Google Cloud TPU videos yet. You could help us improve this page by suggesting one.

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Category Popularity

0-100% (relative to Dataiku and Google Cloud TPU)
Data Science And Machine Learning
Data Science Tools
92 92%
8% 8
Data Dashboard
0 0%
100% 100
Python Tools
100 100%
0% 0

User comments

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Reviews

These are some of the external sources and on-site user reviews we've used to compare Dataiku and Google Cloud TPU

Dataiku Reviews

15 data science tools to consider using in 2021
Some platforms are also available in free open source or community editions -- examples include Dataiku and H2O. Knime combines an open source analytics platform with a commercial Knime Server software package that supports team-based collaboration and workflow automation, deployment and management.
The 16 Best Data Science and Machine Learning Platforms for 2021
Description: Dataiku offers an advanced analytics solution that allows organizations to create their own data tools. The company’s flagship product features a team-based user interface for both data analysts and data scientists. Dataiku’s unified framework for development and deployment provides immediate access to all the features needed to design data tools from scratch....

Google Cloud TPU Reviews

We have no reviews of Google Cloud TPU yet.
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Social recommendations and mentions

Based on our record, Google Cloud TPU seems to be more popular. It has been mentiond 6 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.

Dataiku mentions (0)

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

Google Cloud TPU mentions (6)

  • AI Model Optimization on AWS Inferentia and Trainium
    Photo by julien Tromeur on Unsplash We are in a golden age of AI, with cutting-edge models disrupting industries and poised to transform life as we know it. Powering these advancements are increasingly powerful AI accelerators, such as NVIDIA H100 GPUs, Google Cloud TPUs, AWS's Trainium and Inferentia chips, and more. With the growing number of options comes the challenge of selecting the most optimal... - Source: dev.to / 7 months ago
  • Pathways Language Model (Palm): 540B Parameters for Breakthrough Perf
    According to https://cloud.google.com/tpu, each individual TPUv3 has 420 Teraflops, and TPUv4 is supposed to double that performance, so if that guess is correct, it should take a few seconds to do inference. Quite impressive really. - Source: Hacker News / about 3 years ago
  • The AI Research SuperCluster
    You can also rent a cloud TPU-v4 pod (https://cloud.google.com/tpu) which 4096 TPUv-4 chips with fast interconnect, amounting to around 1.1 exaflops of compute. It won't be cheap though (excess of 20M$/year I believe). - Source: Hacker News / over 3 years ago
  • Stadia's future includes running the backend of other streaming platforms, job listing reveals
    Actually, that's done with TPUs which are more efficient: https://cloud.google.com/tpu. Source: almost 4 years ago
  • Nvidia CEO: Ethereum Is Going To Be Quite Valuable, Transactions Will Still Be A Lot Faster
    TPU training uses Google silicon and is thus a true deep learning alternative to Nvidia. Source: almost 4 years ago
View more

What are some alternatives?

When comparing Dataiku and Google Cloud TPU, you can also consider the following products

Scikit-learn - scikit-learn (formerly scikits.learn) is an open source machine learning library for the Python programming language.

machine-learning in Python - Do you want to do machine learning using Python, but you’re having trouble getting started? In this post, you will complete your first machine learning project using Python.

Pandas - Pandas is an open source library providing high-performance, easy-to-use data structures and data analysis tools for the Python.

OpenCV - OpenCV is the world's biggest computer vision library

AWS Personalize - Real-time personalization and recommendation engine in AWS

NumPy - NumPy is the fundamental package for scientific computing with Python