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Образовательные инструменты ИИ

  • Simplified PyTorch implementation of AlphaStar, enabling StarCraft II RL agent training with modular network architecture and self-play.
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    What is mini-AlphaStar?
    mini-AlphaStar demystifies the complex AlphaStar architecture by offering an accessible, open-source PyTorch framework for StarCraft II AI development. It features spatial feature encoders for screen and minimap inputs, non-spatial feature processing, LSTM memory modules, and separate policy and value networks for action selection and state evaluation. Using imitation learning to bootstrap and reinforcement learning with self-play for fine-tuning, it supports environment wrappers compatible with StarCraft II via pysc2, logging through TensorBoard, and configurable hyperparameters. Researchers and students can generate datasets from human gameplay, train models on custom scenarios, evaluate agent performance, and visualize learning curves. The modular codebase enables easy experimentation with network variants, training schedules, and multi-agent setups. Designed for education and prototyping rather than production deployment.
  • AI-powered study platform for personalized learning.
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    What is Monic AI?
    Monic.ai is a comprehensive AI-driven platform focused on enhancing educational outcomes. With a suite of tools for creating quizzes, flashcards, and summaries, it caters to diverse learning preferences and aims to make studying more interactive and efficient. The platform supports numerous languages, making it accessible globally. By leveraging AI, Monic.ai transforms the way students engage with their study materials, offering real-time assessments and personalized content.
  • A Unity ML-Agents based environment for training cooperative multi-agent inspection tasks in customizable 3D virtual scenarios.
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    What is Multi-Agent Inspection Simulation?
    Multi-Agent Inspection Simulation provides a comprehensive framework for simulating and training multiple autonomous agents to perform inspection tasks cooperatively within Unity 3D environments. It integrates with the Unity ML-Agents toolkit, offering configurable scenes with inspection targets, adjustable reward functions, and agent behavior parameters. Researchers can script custom environments, define the number of agents, and set training curricula via Python APIs. The package supports parallel training sessions, TensorBoard logging, and customizable observations including raycasts, camera feeds, and positional data. By adjusting hyperparameters and environment complexity, users can benchmark reinforcement learning algorithms on coverage, efficiency, and coordination metrics. The open-source codebase encourages extension for robotics prototyping, cooperative AI research, and educational demonstrations in multi-agent systems.
  • An open-source AI agent combining Mistral-7B with Delphi for interactive moral and ethical question answering.
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    What is DelphiMistralAI?
    DelphiMistralAI is an open-source Python toolkit that integrates the powerful Mistral-7B LLM with the Delphi moral reasoning model. It offers both a command-line interface and a RESTful API for delivering reasoned ethical judgments on user-supplied scenarios. Users can deploy the agent locally, customize judgment criteria, and inspect generated rationales for each moral decision. This tool aims to accelerate AI ethics research, educational demonstrations, and safe, explainable decision support systems.
  • AIglot offers multilingual coaching software to interact with real-time conversations in various languages.
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    What is Aiglot?
    AIglot offers versatile multilingual coaching software designed to facilitate real-time conversations across various languages. It integrates advanced artificial intelligence to provide instant language translation and feedback, ensuring seamless communication and learning. The platform is ideal for students, professionals, and language enthusiasts who seek to improve their language skills with the help of cutting-edge AI technology. It stands out for its interactive approach, making language learning more engaging and effective.
  • AIpacman is a Python framework providing search-based, adversarial, and reinforcement learning agents to master the Pac-Man game.
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    What is AIpacman?
    AIpacman is an open-source Python project that simulates the Pac-Man game environment for AI experimentation. Users can choose from built-in agents or implement custom ones using search algorithms like DFS, BFS, A*, UCS; adversarial methods such as Minimax with Alpha-Beta pruning and Expectimax; or reinforcement learning techniques like Q-Learning. The framework provides configurable mazes, performance logging, visualization of agent decision-making, and a command-line interface for running matches and comparing scores. It is designed to facilitate educational lessons, research benchmarks, and hobbyist projects in AI and game development.
  • Vanilla Agents provides ready-to-use implementations of DQN, PPO, and A2C RL agents with customizable training pipelines.
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    What is Vanilla Agents?
    Vanilla Agents is a lightweight PyTorch-based framework that delivers modular and extensible implementations of core reinforcement learning agents. It supports algorithms like DQN, Double DQN, PPO, and A2C, with pluggable environment wrappers compatible with OpenAI Gym. Users can configure hyperparameters, log training metrics, save checkpoints, and visualize learning curves. The codebase is organized for clarity, making it ideal for research prototyping, educational use, and benchmarking new ideas in RL.
  • Python-based RL framework implementing deep Q-learning to train an AI agent for Chrome's offline dinosaur game.
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    What is Dino Reinforcement Learning?
    Dino Reinforcement Learning offers a comprehensive toolkit for training an AI agent to play the Chrome dinosaur game via reinforcement learning. By integrating with a headless Chrome instance through Selenium, it captures real-time game frames and processes them into state representations optimized for deep Q-network inputs. The framework includes modules for replay memory, epsilon-greedy exploration, convolutional neural network models, and training loops with customizable hyperparameters. Users can monitor training progress via console logs and save checkpoints for later evaluation. Post-training, the agent can be deployed to play live games autonomously or benchmarked against different model architectures. The modular design allows easy substitution of RL algorithms, making it a flexible platform for experimentation.
  • HumanOrAI lets you distinguish between human and AI-generated faces online.
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    What is Human or AI??
    HumanOrAI is a web-based application that allows users to test their ability to distinguish between genuine human faces and AI-generated ones. The tool utilizes datasets provided by NVIDIA, integrating both real-life images and AI-generated images to create an engaging user experience. Users are presented with images and asked to identify whether each one is a real human or an AI creation, making it both an entertaining and educational activity for understanding advancements in AI facial generation.
  • Open-source Python framework using NEAT neuroevolution to autonomously train AI agents to play Super Mario Bros.
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    What is mario-ai?
    The mario-ai project offers a comprehensive pipeline for developing AI agents to master Super Mario Bros. using neuroevolution. By integrating a Python-based NEAT implementation with the OpenAI Gym SuperMario environment, it allows users to define custom fitness criteria, mutation rates, and network topologies. During training, the framework evaluates generations of neural networks, selects high-performing genomes, and provides real-time visualization of both gameplay and network evolution. Additionally, it supports saving and loading trained models, exporting champion genomes, and generating detailed performance logs. Researchers, educators, and hobbyists can extend the codebase to other game environments, experiment with evolutionary strategies, and benchmark AI learning progress across different levels.
  • Create AI Characters with facial expressions and feelings in multiple languages.
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    What is Meetmine Ai?
    MeetMine.ai is an innovative platform that enables users to create AI characters with realistic facial expressions and emotions. The AI characters can communicate in multiple languages, making them versatile for various applications. Users can easily train these characters as per their requirements and seamlessly integrate them into their websites or tools. This platform is especially beneficial for enhancing customer interactions, providing entertainment, and educational purposes.
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