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IBM watsonx.ai

IBM watsonx.ai

Overview

What is IBM watsonx.ai?

Watsonx.ai is part of the IBM watsonx platform that brings together new generative AI capabilities, powered by foundation models, and traditional machine learning into a studio spanning the AI lifecycle. Watsonx.ai can be used to train, validate, tune, and deploy…

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Recent Reviews
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Awards

Products that are considered exceptional by their customers based on a variety of criteria win TrustRadius awards. Learn more about the types of TrustRadius awards to make the best purchase decision. More about TrustRadius Awards

Reviewer Pros & Cons

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Pricing

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Essentials

$0

Cloud
per month

Free Trial

$0

Cloud
per month

Standard

$1,500

Cloud
per month

Entry-level set up fee?

  • No setup fee
For the latest information on pricing, visithttps://www.ibm.com/products/watsonx…

Offerings

  • Free Trial
  • Free/Freemium Version
  • Premium Consulting/Integration Services
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Product Demos

watsonx.ai Interactive Demo

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watsonx.ai: Summarize

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watsonx.ai: Generate

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Demo: Generative AI and machine learning with IBM watsonx.ai

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Product Details

What is IBM watsonx.ai?

Watsonx.ai is an enterprise-ready next-generation AI studio for machine learning and generative AI, powered by foundation models. With the watsonx.ai studio, AI builders — including data scientists, application developers and business analysts can build, train, validate, tune and deploy traditional machine learning and new generative AI capabilities with ease. Watsonx.ai is designed to support collaboration and scalability in AI application development and can be deployed across hybrid environments.


Components of the watsonx.ai studio


  • Foundation Models: Clients have access to IBM-developed foundation models of different sizes and architectures. These models start with the Slate family for non-generative AI tasks and the Granite series of models that use a decoder architecture to support a variety of enterprise level generative AI tasks. The collection also includes a curated selection of open source foundation models from Hugging Face, as well as third-party models for both language and code generation.

  • Prompt Lab: AI builders can work with foundation models and build prompts using prompt engineering. Within the Prompt Lab, users can experiment with zero-shot, one-shot, or few-shot prompting to support a range of Natural Language Processing (NLP) type tasks including question answering, content generation, summarization, text classification, and extraction. It also includes configurable model parameters that allow optimal experimentation with foundation model output, and optional “AI guardrails” to help filter out hateful, abusive or profane content from prompts and model output.

  • Synthetic Data: AI builders and data scientists can generate synthetic tabular data by importing data from a database, uploading a file, or creating a custom data schema. The statistics-based model can be used to improve the predictive accuracy of AI training models via edge cases and larger sample sizes, as well as the realism of client demos and employee training materials. The Synthetic Data Generator is available as part of the data science and MLOps toolset.

  • Data Science and MLOps toolset: A comprehensive set of tools, both programmatic and visual, that cover the full spectrum of AI application development and deployment, including: data preparation, synthetic data generation, python/R notebooks, open source libraries, API’s/SDK’s, visual tools to build data pipelines and flows, auto generated predictive models, federated learning, and an interface for prescriptive analytics used for decision optimization.




IBM watsonx.ai Features

  • Supported: Foundation Model Library with IBM and select open-source models from Hugging Face
  • Supported: Prompt Lab to experiment with foundation models and build prompts for various use cases and tasks
  • Supported: Tuning Studio to tune foundation models with labeled data
  • Supported: Data Science and MLOps tools to build machine learning models automatically with model training, development, visual modeling, and synthetic data generation

IBM watsonx.ai Screenshots

Screenshot of Foundation models available in watsonx.ai. Clients have access to IBM selected open source models from Hugging Face, as well as other third-party models, and a family of IBM-developed foundation models of different sizes and architectures.Screenshot of Prompt Lab in watsonx.ai where AI builders can work with foundation models and build prompts using prompt engineering techniques in watsonx.ai to support a range of Natural Language Processing (NLP) type tasks.Screenshot of Tuning Studio in watsonx.ai where AI builders can tune foundation models with labeled data for better performance and accuracy.Screenshot of Data science toolkit in watsonx.ai where AI builders can build machine learning models automatically with model training, development, visual modeling, and synthetic data generation.

IBM watsonx.ai Video

IBM watsonx.ai Technical Details

Deployment TypesOn-premise, Software as a Service (SaaS), Cloud, or Web-Based
Operating SystemsWindows, Linux, Mac
Mobile ApplicationNo

Frequently Asked Questions

Watsonx.ai is part of the IBM watsonx platform that brings together new generative AI capabilities, powered by foundation models, and traditional machine learning into a studio spanning the AI lifecycle. Watsonx.ai can be used to train, validate, tune, and deploy generative AI, foundation models, and machine learning capabilities, and build AI applications with less time and data.

IBM watsonx.ai starts at $0.

Amazon SageMaker, Azure OpenAI Service, and Vertex AI are common alternatives for IBM watsonx.ai.

The most common users of IBM watsonx.ai are from Enterprises (1,001+ employees).
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Comparisons

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Reviews and Ratings

(14)

Reviews

(1-4 of 4)
Companies can't remove reviews or game the system. Here's why
March 17, 2024

Highly Secured tool

Amritanshu Kumar | TrustRadius Reviewer
Score 8 out of 10
Vetted Review
Verified User
Incentivized
This tool is used on a primary basis in our organization as it helps us in creating BI reports easily. It helps us to present our reports easily to our clients and if we talk about the analysis part then this tool helps us in looking at our past data and forecasting the future. So without this tool, many tasks remain incomplete in our organization. We can easily do such tasks as setting targets and doing future analysis with this tool.
  • it has many Reliable tools for algorithm modeling visualization.
  • Highly secured, Integrated and all data optimized in one management
  • Easily prepared and extract data from document.
  • User-interface can be improved
If I am talking about BI reports it helps me a lot. Because it helps to easily extract data from the documents and this tool has many reliable Algorithm modeling visualizations. What I like the most about this tool is its data security, the integration with Python notebooks, and the support for running SQL queries in the cloud
  • This tool has helped us a lot in growing our business
  • Our clients have also have great faith in IBM watsonx.ai
Score 8 out of 10
Vetted Review
Verified User
Incentivized
IBM watsonx.ai is a very secured tool providing the ultimate features of one management data optimization. This tool is really helpful on the cases of working within the large dataset in real time. With the help of AI it facilitates to create various data solutions and we can build it from the scratch saving time.
  • features of training your data model
  • can build the components from scratch
  • better process agility
  • APIs integration could be improved.
  • steep learnings for tuning AI models
  • performance lag
with the help of IBM watsonx.ai we can easily train, tune, and validate various machine learning models easily and can deploy. The Granite are based for the GPT like architecture for generative tasks, Sandstone models are used for the fine tuning on the specific task.
It also provides the efficiency and sustainability saving time and cost.
  • effective "LiGO" algorithm saving time and cost
  • access to the catalog of open source models for enterprises
  • fine tuning techniques
Score 8 out of 10
Vetted Review
Verified User
Incentivized
We use it to answer customer support inquiries from our FAQ database on various topics about payments, internet banking usage tips, documents needed, etc. It successfully extracts the informations from our knowledge base presenting it in a clear and conversational style.
  • categorize large volumes of text
  • sentiment analysis and intent recognition
  • document summarization
  • more business focused models
  • a better UI / dashboard
  • a bit expensive
Well suited for large companies in sentiment analysis in social media or client interactions, knowledge base and document summarizations, translations / multilingual content.
  • faster customer service
  • increased productivity by using document summarization
  • decrease in customer service human operator interactions
IBM watsonx.ai is more enterprise oriented providing more options regarding on-premises setup and other compliance issues. Better suited for the corporate world.
Chris Lenderborg | TrustRadius Reviewer
Score 10 out of 10
Vetted Review
Verified User
Incentivized
The use of IBM watsonx is focused on open source with secure functions to scale within the framework of data processes in my company with very good results; it was implemented with the purpose of creating a robust and secure process environment based on AI. We are working on new AI projects, and IBM watsonx is one of the most scalable tools; I can say the main reason for setting it up is to get the benefits of robust data science.
  • API and SDK Libraries.
  • A scalable century of AI life with secure tools.
  • Tuning Studio.
  • I don't like the price.
Based on my experience, I can recommend that you have a good AI management system in your company account, and if you have the money at your disposal to invest in IBM watsonx, do not hesitate. We are using API models to obviously build a work environment with sustainable flow as well. We have AI and ML lifecycle support.
  • API and SDK libraries.
  • Robust workflow.
  • Supporting the AI ​​and ML life cycle.
  • We have already met our objectives in creating a supportive environment.
  • This open-source tool increases the financial feasibility of the workflow.
  • High price.
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