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Spearmint

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14 reviews
  • 1 profiles
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Average star rating
4.4
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Spearmint Reviews

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Profile Name
Star Rating
11
3
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Aman J.
AJ
Aman J.
03/20/2024
Validated Reviewer
Review source: G2 invite
Incentivized Review

Testing without Coding Knowledge

Best: + GUI is best + UI/UX in dark mode + Best GraphQL Testing
PULKIT D.
PD
PULKIT D.
07/05/2023
Validated Reviewer
Review source: G2 invite
Incentivized Review

Incredible Experience

As a developer, for relentless debugging of code, this is a blessing. The out of the box libraries available for use are brilliant. Not only the ease for testing model but also the interface of the platform is highly interactive, easy to navigate and browny points for the documentations available to refer to.
Punit S.
PS
Punit S.
Google Certified Professional Cloud Architect | 6X Azure Certified
07/02/2023
Validated Reviewer
Review source: G2 invite
Incentivized Review

A developer's best friend!

The ease of use of the software clubbed with the intuitive UI is great and helps new users get easily acquainted with it. The out-of-the-box support for multiple coding languages is commendable. Spearmint helps developers debug their code faster and more efficiently. Writing test cases for various machine learning models has become a breeze.

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What is Spearmint?

Spearmint is an open-source software package designed to perform Bayesian optimization, a framework particularly useful for optimizing hyperparameters in machine learning models. Hosted on GitHub, Spearmint is maintained by the Harvard Intelligent Probabilistic Systems (HIPS) group. It employs Gaussian processes to model the objective function robustly, allowing for efficient exploration and exploitation of the search space. Spearmint's algorithm is useful for tuning algorithms where objective function evaluations are costly or time-consuming. The project provides a practical and sophisticated implementation for researchers and developers seeking to automate the hyperparameter tuning process.

Details

Website
github.com