Comprehensive code modulaire Tools for Every Need

Get access to code modulaire solutions that address multiple requirements. One-stop resources for streamlined workflows.

code modulaire

  • Agentic App Template scaffolds Next.js apps with pre-built multi-step AI agents for Q&A, text generation, and knowledge retrieval.
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    What is Agentic App Template?
    Agentic App Template is a fully configured Next.js project that serves as a foundation for developing AI-driven agentic applications. It incorporates a modular folder structure, environment variable management, and example agent workflows leveraging OpenAI’s GPT models and vector databases like Pinecone. The template demonstrates key patterns such as sequential multi-step chains, conversational Q&A agents, and text generation endpoints. Developers can easily customize chain logic, integrate additional services, and deploy to platforms like Vercel or Netlify. With TypeScript support and built-in error handling, the scaffold reduces initial setup time and provides clear documentation for further extension.
  • 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.
  • Implements decentralized multi-agent DDPG reinforcement learning using PyTorch and Unity ML-Agents for collaborative agent training.
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    What is Multi-Agent DDPG with PyTorch & Unity ML-Agents?
    This open-source project delivers a complete multi-agent reinforcement learning framework built on PyTorch and Unity ML-Agents. It offers decentralized DDPG algorithms, environment wrappers, and training scripts. Users can configure agent policies, critic networks, replay buffers, and parallel training workers. Logging hooks allow TensorBoard monitoring, while modular code supports custom reward functions and environment parameters. The repository includes sample Unity scenes demonstrating collaborative navigation tasks, making it ideal for extending and benchmarking multi-agent scenarios in simulation.
  • Enso is a web-based AI agent platform for building and deploying interactive task automation agents visually.
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    What is Enso AI Agent Platform?
    Enso is a browser-based platform that lets users create custom AI agents through a visual flow-based builder. Users drag and drop modular code and AI components, configure API integrations, embed chat interfaces, and preview interactive workflows in real time. Once designed, agents can be tested instantly and deployed with one click to the cloud or exported as containers. Enso simplifies complex automation tasks by combining no-code simplicity with full code extensibility, enabling rapid development of intelligent assistants and data-driven workflows.
  • Open-source PyTorch-based framework implementing CommNet architecture for multi-agent reinforcement learning with inter-agent communication enabling collaborative decision-making.
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    What is CommNet?
    CommNet is a research-oriented library that implements the CommNet architecture, allowing multiple agents to share hidden states at each timestep and learn to coordinate actions in cooperative environments. It includes PyTorch model definitions, training and evaluation scripts, environment wrappers for OpenAI Gym, and utilities for customizing communication channels, agent counts, and network depths. Researchers and developers can use CommNet to prototype and benchmark inter-agent communication strategies on navigation, pursuit–evasion, and resource-collection tasks.
  • Drive Flow is a flow orchestration library enabling developers to build AI-driven workflows integrating LLMs, functions, and memory.
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    What is Drive Flow?
    Drive Flow is a flexible framework that empowers developers to design AI-powered workflows by defining sequences of steps. Each step can invoke large language models, execute custom functions, or interact with persistent memory stored in MemoDB. The framework supports complex branching logic, loops, parallel task execution, and dynamic input handling. Built in TypeScript, it uses a declarative DSL to specify flows, enabling clear separation of orchestration logic. Drive Flow also provides built-in error handling, retry strategies, execution context tracking, and extensive logging. Core use cases include AI assistants, automated document processing, customer support automation, and multi-step decision systems. By abstracting orchestration, Drive Flow accelerates development and simplifies maintenance of AI applications.
  • Efficient Prioritized Heuristics MAPF (ePH-MAPF) quickly computes collision-free multi-agent paths in complex environments using incremental search and heuristics.
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    What is ePH-MAPF?
    ePH-MAPF provides an efficient pipeline for computing collision-free paths for dozens to hundreds of agents on grid-based maps. It uses prioritized heuristics, incremental search techniques, and customizable cost metrics (Manhattan, Euclidean) to balance speed and solution quality. Users can select between different heuristic functions, integrate the library into Python-based robotics systems, and benchmark performance on standard MAPF scenarios. The codebase is modular and well-documented, enabling researchers and developers to extend it for dynamic obstacles or specialized environments.
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