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TrueFoundry

TrueFoundry

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    Pharmaceuticals

Sophisticated mlops tool set for machine learning model tracking and deployment

  • April 17, 2023
  • Review provided by G2

What do you like best about the product?
With their sophisticated MLops tool set, we quickly resolved our model deployment and tracking worries in no time. It's so flexible that users can easily manage the deployed solutions through their centralized dashboard and also easy to work between users and teams. The user can get diverged view from their interactive plots and one-to-one comparison between the models as part of model tracking.
What do you dislike about the product?
Nothing to be specific to dislike in this tool set. It serves the purpose and also enhances the way the developer will solutionize the model tracking and eployments
What problems is the product solving and how is that benefiting you?
Before the TrueFoundry MLops toolset, we are spending hours deploying our machine learning model and getting them to serve the live traffic. But this toolset have saved almost ~60% of our time on deployment-related activities. Also, with efficient model tracking, we could quickly call on our star solution.


    Madhurima .

Machine Learning in Production made easy with TrueFoundry

  • April 17, 2023
  • Review provided by G2

What do you like best about the product?
1. User-friendly UI
2. Prompt and proactive support team
3. Lightweight SDK
4. Experimentation to Production in minutes
What do you dislike about the product?
None as such
The TrueFoundry team is always ready to mitigate bugs or any blockers.
What problems is the product solving and how is that benefiting you?
1. Lets us track and compare between our models
2. Lets us keep all ML workspaces in a single space
3. Enables us to deploy our solutions to prod environments seamlessly and swiftly
4. Lets us a control over our solutions as an efficient MLOps platform.