1. Products
  2. Project Sandman
  3. Alternatives
The best alternatives to Project Sandman are Google Pixel, ModelDepot, and PerceptiLabs. If these 3 options don't work for you, we've listed over 10 alternatives below.
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Best alternatives to Project Sandman
  • Google's new phones, Pixel and Pixel XL
  • Discover and share the right machine learning model for every problem, project, or application. ModelDepot is a place where you can find and share optimized, pretrained ML models that are perfect for your development needs.
  • PerceptiLabs is a drag and drop visual modeling tool to build, train and tune your ML model, with a portal to actually see how your model works.
  • Gradient is a platform for building and scaling real-world machine learning applications.
  • Dioptra diagnoses your model to identify failure modes like bias and drift; and uses active learning techniques to curate the best data to fix it.
  • The textbook for modern machine learning
  • Deploy your model to an HTTP endpoint with a single line of code. Monitor, manage, and update your models in production with a simple Python API. Check out a demo or try it for free with a quickstart: TensorFlow or Hugging Face Transformers.
  • Curate your training data using a simple visual interface. Don't waste your time in labeling images which don't add value to training your model. Use the software to find the most relevant samples to label.
  • PhotoFinder was developed with the goal of simplifying maintenance of an ever-increasing photo library. By using machine-learning and computer vision technologies, the software is able to find the best photos, but also the worst, the blurry and redundant.
  • Qualdo™ helps enterprises monitor mission-critical ML & data issues, errors, and quality using Advanced Data & ML Engineering.
  • chitra (चित्र) is a Deep Learning library for Model Building, Explainable AI, Data Visualization, API Building & Deployment. Easily create UI for Machine Learning models or Rest API backend that can be deployed for serving ML Models in Production.