Best Machine Learning Apps for Android of 2024

Find and compare the best Machine Learning apps for Android in 2024

Use the comparison tool below to compare the top Machine Learning apps for Android on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    SensiML Analytics Studio Reviews
    Sensiml analytics toolkit. Create smart iot sensor devices rapidly reduce data science complexity. Compact algorithms can be created that run on small IoT devices and not in the cloud. Collect precise, traceable, and version-controlled datasets. Advanced AutoML code-gen is used to quickly create autonomous working device code. You can choose your interface and level of AI expertise. All aspects of your algorithm will remain accessible to you. Edge tuning models can be built that adapt to the data they receive. SensiML Analytics Toolkit suite automates every step of the process to create optimized AI IoT sensor recognition codes. The workflow employs a growing number of advanced ML algorithms and AI algorithms to generate code that can learn new data, either in the development phase or once it is deployed. The key tools for healthcare decision support are non-invasive, rapid screening applications that use intelligent classification of one or several bio-sensing inputs.
  • 2
    Torch Reviews
    Torch is a scientific computing platform that supports machine learning algorithms and has wide support for them. It is simple to use and efficient thanks to a fast scripting language, LuaJIT and an underlying C/CUDA implementation. Torch's goal is to allow you maximum flexibility and speed when building your scientific algorithms, while keeping it simple. Torch includes a large number of community-driven packages for machine learning, signal processing and parallel processing. It also builds on the Lua community. The core of Torch is the popular optimization and neural network libraries. These libraries are easy to use while allowing for maximum flexibility when implementing complex neural networks topologies. You can create arbitrary graphs of neuro networks and parallelize them over CPUs or GPUs in an efficient way.