[RAILS] Summary of recommended APIs for artificial intelligence, machine learning, and AI

Watson API Provided by: IBM Link: https://www.ibm.com/watson/jp-ja/developercloud/services-catalog.html Functions: Search, Text Analysis, Image Recognition, Speech Recognition, Speech Reading, Translation, Psychological Analysis, Sentiment Analysis, Data Analysis Platform

Vision AI Provided by: Google Link: https://cloud.google.com/vision/ Function: Analyze images in the cloud or on the edge

Cloud Speech-to-Text API Provided by: Google Link: https://cloud.google.com/speech-to-text/ Function: Convert voice to text by machine learning, support short-time voice and long-time voice

Cloud AutoML Provided by: Google Link: https://cloud.google.com/automl/ Features: Quick and easy training of custom ML models

dialogflow Provided by: Google Link: https://dialogflow.com/ Function: API that responds to reservations / orders from customers and inquiries with a natural language processor (chatbot)

Wit Courtesy: Wit.ai Link: https://wit.ai/ Function: Natural language processing

AWS Machine Learning

Provided by: AWS Link: https://aws.amazon.com/jp/machine-learning/ Features: Speech, Advanced Text Analysis, Document Analysis, Translation, Transcription, Interactive Agent

reference

http://smsurf.app-rox.com/api/

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