Aquarium Learning References Capped?

Access even more references from these marketplace competitors

  • 4.8 / 5.0 (415)
    3+ References
  • 4.8 / 5.0 (1394)
    Premium81+ References
  • 4.8 / 5.0 (933)
    8+ References

Aquarium Learning Testimonials

  • currently locked
  • currently locked
  • currently locked
  • Reference Rating
    4.7 / 5.0
    Customer References3 total
    About

    Alegion is a technology company that integrates human and machine intelligence to deliver high-accuracy data labeling for machine learning model training, validation, and exception handling. The Alegion platform delivers data solutions spanning the model development lifecycle to help Fortune 500 companies across retail, finance, technology, automotive, defense, agriculture, and healthcare industries accelerate their AI and ML initiatives and increase model confidence. Alegion has the most powerful and flexible annotation platform for training data in the market.

  • Reference Rating
    4.7 / 5.0
    Customer References81 total
    About

    Neptune.ai is an experiment tracking hub bringing organization and collaboration to data science projects. Neptune records your entire experimentation process - exploratory notebooks, model training runs, code, hyperparameters, metrics, data versions, results, exploration visualizations, and more. Everything is stored and backed-up in an organized knowledge repository, ready to be accessed, analyzed, shared, and discussed with your team. No matter what type of problems you are working on, Neptune fits them all, from evaluating credit risk to finding the nuclei in divergent images.

  • Reference Rating
    4.7 / 5.0
    Customer References8 total
    About

    iMerit is working with customers to enrich and label their data and to achieve the best results from their algorithms. All the work powers advanced algorithms in machine learning, computer vision, natural language understanding, e-commerce, augmented reality, and data analytics. They work on data for transformative technologies such as advancing cancer cell research, optimizing crop yields, and training driverless cars to understand their environment.