AI Applications with Watson
Explore the world of AI-powered language processing by acquiring the skills necessary to construct chatbots, analyze sentiment, and incorporate AI insights into practical applications.
Description for AI Applications with Watson
Development of Chatbots: Utilize AI and machine learning to construct and program chatbots that communicate in natural language on IBM Cloud.
Data Synthesis: Utilize Watson Discovery to synthesize data for querying in order to extract sentiment, concepts, entities, and taxonomy.
Emotion and Sentiment Analysis: Implement Tone Analyzer and Personality Insights to uncover consumer preferences, sentiments, and emotions in hotel reviews.
Chatbot integration: Incorporate sentiment and preference data into the chatbot to improve consumer interactions.
Level: Intermediate
Certification Degree: Yes
Languages the Course is Available: 12
Offered by: On edX provided by IBM
Duration: 2�4 hours per week approx 3 weeks
Schedule: Flexible
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