AI-Supported Application
(Redirected from AI application)
Jump to navigation
Jump to search
An AI-Supported Application is a software application that is an AI-supported system (which makes significant use of AI tech).
- Context:
- It can range from being a Interactive AI Application (with human/AI interactions) to being a Non-Interactive AI Application (where AI operates autonomously without direct user input).
- ...
- It can reference an AI-based Application Architecture, where the underlying system design incorporates AI components for task processing, decision-making, or prediction.
- It can be a Conversational AI-based Application that allows users to interact with the application through natural language, typically using technologies like chatbots or voice assistants.
- It can include applications that use Predictive Analytics to make data-driven predictions or recommendations based on historical data.
- It can be an application designed for specific domains like healthcare, finance, marketing, and autonomous systems, where AI is used to automate or optimize processes.
- It can enable personalized experiences for users by utilizing machine learning models that learn from user behavior to tailor responses, recommendations, or services.
- It can be a part of broader systems, such as AI-driven analytics platforms or automated decision-making systems in industries like e-commerce, transportation, or manufacturing.
- It can leverage continuous learning through reinforcement learning to improve performance over time without explicit human intervention.
- ...
- Example(s):
- an Interactive AI Application, such as:
- a LLM-based Application like ChatGPT, which uses large language models to generate conversational responses to user inputs.
- a Self-Driving Car that uses AI for real-time decision-making, object recognition, and route planning.
- a Movie Recommendation System like Netflix's AI-driven suggestion engine, which recommends content based on viewing history and preferences.
- one with a App Chat Feature, such as GitHub Copilot X, which assists developers in writing code by offering AI-generated code suggestions.
- an AI Companion, like a virtual assistant that interacts with users in a personalized way, such as Replika.
- a Language-Focused AI-Supported Application, such as:
- an NLU (Natural Language Understanding) Application used to analyze and comprehend user inputs, often in chatbots or voice assistants like Siri or Google Assistant.
- an NLG (Natural Language Generation) Application that generates coherent and contextually relevant text, such as writing assistants like Jasper AI.
- a Vision-Focused AI-Supported Application, such as:
- an AI-powered Image Recognition System, used in applications like Google Photos for image sorting or self-driving cars for detecting objects on the road.
- a Facial Recognition System used in security or user identification in mobile devices.
- a Domain-Specific AI-Supported Application, such as:
- an AI-Supported Healthcare Application that helps doctors diagnose medical conditions based on medical imaging or predictive models, like IBM Watson Health.
- an AI-Supported LegalTech Application that ...
- …
- an Interactive AI Application, such as:
- Counter-Example(s):
- a Minimal Viable Application that does not rely on AI for its core functionality, focusing instead on traditional programming methods and rule-based systems.
- a Traditional Software Application that automates processes using pre-defined rules but lacks learning or adaptive AI components.
- a Manual Data Entry Tool where the user inputs data and the system performs calculations or processing without any AI-based prediction or automation.
- See: AI System, Intelligent Digital Agent, Human/Computer Interaction, Machine Learning, Conversational AI, Automated Decision-Making.