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быстрая прототипизация

  • Esquilax is a TypeScript framework for orchestrating multi-agent AI workflows, managing memory, context, and plugin integrations.
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    What is Esquilax?
    Esquilax is a lightweight TypeScript framework designed for building and orchestrating complex AI agent workflows. It provides developers with a clear API to declaratively define agents, assign memory modules, and integrate custom plugin actions such as API calls or database queries. With built-in support for context handling and multi-agent coordination, Esquilax streamlines the creation of chatbots, digital assistants, and automated processes. Its event-driven architecture allows tasks to be chained or triggered dynamically, while logging and debugging tools offer full visibility into agent interactions. By abstracting away boilerplate code, Esquilax helps teams rapidly prototype scalable AI-driven applications.
  • Collection of pre-built AI agent workflows for Ollama LLM, enabling automated summarization, translation, code generation and other tasks.
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    What is Ollama Workflows?
    Ollama Workflows is an open-source library of configurable AI agent pipelines built on top of the Ollama LLM framework. It offers dozens of ready-made workflows—like summarization, translation, code review, data extraction, email drafting, and more—that can be chained together in YAML or JSON definitions. Users install Ollama, clone the repository, select or customize a workflow, and run it via CLI. All processing happens locally on your machine, preserving data privacy while allowing you to iterate quickly and maintain consistent output across projects.
  • Julep AI creates scalable, serverless AI workflows for data science teams.
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    What is Julep AI?
    Julep AI is an open-source platform designed to help data science teams quickly build, iterate on, and deploy multi-step AI workflows. With Julep, you can create scalable, durable, and long-running AI pipelines using agents, tasks, and tools. The platform's YAML-based configuration simplifies complex AI processes and ensures production-ready workflows. It supports rapid prototyping, modular design, and seamless integration with existing systems, making it ideal for handling millions of concurrent users while providing full visibility into AI operations.
  • Lambda is an AI agent for developing and deploying machine learning models efficiently.
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    What is Lambda?
    Lambda is designed to streamline the workflow of data scientists by offering powerful tools for building, training, and deploying machine learning models. Key features include high-performance GPU and cloud solutions, which enable quick experimentation and model iteration. Additionally, Lambda supports various machine learning frameworks, allowing users to seamlessly integrate their existing workflows while harnessing the power of AI and ML technologies.
  • Make Real transforms sketches into functional websites using tldraw and AI.
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    What is make real by tldraw?
    Make Real is an innovative online tool that simplifies the process of turning hand-drawn user interface designs into functional websites. Utilizing the tldraw open-source drawing platform alongside OpenAI's GPT-4 with Vision, the tool allows users to input their API key, sketch their UI, and generate a working website almost instantly. Its intuitive features make web development accessible to designers and developers, streamlining the workflow from concept to creation.
  • Create interactive 3D environments with AI-powered MirageML.
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    What is Mirageml?
    MirageML is a cutting-edge AI platform designed to streamline the creative process for building 3D environments. Leveraging advanced AI technology, MirageML allows users to generate 3D meshes and textures simply by describing what they need in text. This transformative tool is perfect for artists, designers, and developers looking to rapidly prototype or fully develop 3D environments without the complexity of traditional design software.
  • Operit is an open-source AI agent framework offering dynamic tool integration, multi-step reasoning, and customizable plugin-based skill orchestration.
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    What is Operit?
    Operit is a comprehensive open-source AI agent framework designed to streamline the creation of autonomous agents for various tasks. By integrating with LLMs like OpenAI’s GPT and local models, it enables dynamic reasoning across multi-step workflows. Users can define custom plugins to handle data fetching, web scraping, database queries, or code execution, while Operit manages session context, memory, and tool invocation. The framework offers a clear API for building, testing, and deploying agents with persistent state, configurable pipelines, and error-handling mechanisms. Whether you’re developing customer support bots, research assistants, or business automation agents, Operit’s extensible architecture and robust tooling ensure rapid prototyping and scalable deployments.
  • PulpGen is an open-source AI framework for building modular, high-throughput LLM applications with vector retrieval and generation.
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    What is PulpGen?
    PulpGen provides a unified, configurable platform to build advanced LLM-based applications. It offers seamless integrations with popular vector stores, embedding services, and LLM providers. Developers can define custom pipelines for retrieval-augmented generation, enable real-time streaming outputs, batch process large document collections, and monitor system performance. Its extensible architecture allows plug-and-play modules for cache management, logging, and auto-scaling, making it ideal for AI-powered search, question-answering, summarization, and knowledge management solutions.
  • simple_rl is a lightweight Python library offering pre-built reinforcement learning agents and environments for rapid RL experimentation.
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    What is simple_rl?
    simple_rl is a minimalistic Python library designed to streamline reinforcement learning research and education. It provides a consistent API for defining environments and agents, with built-in support for common RL paradigms including Q-learning, Monte Carlo methods, and dynamic programming algorithms like value and policy iteration. The framework includes sample environments such as GridWorld, MountainCar, and Multi-Armed Bandits, facilitating hands-on experimentation. Users can extend base classes to implement custom environments or agents, while utility functions handle logging, performance tracking, and policy evaluation. simple_rl's lightweight architecture and clear codebase make it ideal for rapid prototyping, teaching RL fundamentals, and benchmarking new algorithms in a reproducible, easy-to-understand environment.
  • Code from Figma in your own style with Superflex.
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    What is Superflex?
    Superflex is an AI-powered tool that generates front-end code from Figma files, images, and prompts. It matches your coding style and utilizes existing UI components within your codebase. With seamless integration and smart coding akin to a seasoned developer, Superflex eliminates the need for manual coding and repetitive HTML/CSS tasks, making front-end development faster and more efficient.
  • Wonders offers AI-enhanced creative solutions for rapid market readiness.
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    What is Wonders?
    Wonders is an AI-driven platform designed to accelerate brand development and market readiness through creative sprints. Leveraging cutting-edge technology, it delivers rapid ideation, prototyping, and execution of creative concepts. Whether you're launching a new product or revitalizing an existing brand, Wonders offers the tools and insights needed to transform ideas into market-ready solutions. The platform combines AI-powered market analysis with creative expertise to ensure your brand stands out and achieves success efficiently.
  • HyperChat enables multi-model AI chat with memory management, streaming responses, function calling, and plugin integration in applications.
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    What is HyperChat?
    HyperChat is a developer-centric AI agent framework that simplifies embedding conversational AI into applications. It unifies connections to various LLM providers, handles session context and memory persistence, and delivers streamed partial replies for responsive UIs. Built-in function calling and plugin support enable executing external APIs, enriching conversations with real-world data and actions. Its modular architecture and UI toolkit allow rapid prototyping and production-grade deployments across web, Electron, and Node.js environments.
  • AgentSimJS is a JavaScript framework to simulate multi-agent systems with customizable agents, environments, action rules, and interactions.
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    What is AgentSimJS?
    AgentSimJS is designed to simplify the creation and execution of large-scale agent-based models in JavaScript. With its modular architecture, developers can define agents with custom states, sensors, decision-making functions, and actuators, then integrate them into dynamic environments parameterized by global variables. The framework orchestrates discrete time-step simulations, manages event-driven messaging between agents, and logs interaction data for analysis. Visualization modules support real-time rendering using HTML5 Canvas or external libraries, while plugins enable integration with statistical tools. AgentSimJS runs both in modern web browsers and Node.js, making it suitable for interactive web applications, academic research, educational tools, and rapid prototyping of swarm intelligence, crowd dynamics, or distributed AI experiments.
  • APLib provides autonomous game testing agents with perception, planning, and action modules to simulate user behaviors in virtual environments.
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    What is APLib?
    APLib is designed to simplify the development of AI-driven autonomous agents within gaming and simulation environments. Utilizing a Belief-Desire-Intention (BDI) inspired architecture, it offers modular components for perception, decision-making, and action execution. Developers define agent beliefs, goals, and behaviors via intuitive APIs and behavior trees. APLib agents can interpret game state through customizable sensors, formulate plans using built-in planners, and interact with the environment via actuators. The library supports integration with Unity, Unreal, and pure Java environments, facilitating automated testing, AI research, and simulations. It promotes reuse of behavior modules, rapid prototyping, and robust QA workflows by automating repetitive test scenarios and simulating complex player behaviors without manual intervention.
  • AI companion for crafting, deploying, and maintaining backends.
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    What is BackX?
    Backx.ai offers an AI companion for developers, facilitating the creation, deployment, and management of backends across various use cases. It aims to boost productivity through its advanced AI capabilities, offering streamlined processes from database management to API development and serverless applications. It features one-click production-grade code generation, context-aware capabilities, versioned artifacts, instant deployment, and auto-documentation. This platform integrates seamlessly with existing tools and frameworks, providing unprecedented accuracy and flexibility.
  • A Python framework enabling AI agents to execute plans, manage memory, and integrate tools seamlessly.
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    What is Cerebellum?
    Cerebellum offers a modular platform where developers define agents using declarative plans composed of sequential steps or tool invocations. Each plan can call built-in or custom tools—such as API connectors, retrievers, or data processors—through a unified interface. Memory modules allow agents to store, retrieve, and forget information across sessions, enabling context-aware and stateful interactions. It integrates with popular LLMs (OpenAI, Hugging Face), supports custom tool registration, and features an event-driven execution engine for real-time control flow. With logging, error handling, and plugin hooks, Cerebellum boosts productivity, facilitating rapid agent development for automation, virtual assistants, and research applications.
  • An AI Agent platform automating data science workflows by generating code, querying databases, and visualizing data seamlessly.
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    What is Cognify?
    Cognify enables users to define data science goals and lets AI Agents handle the heavy lifting. Agents can write and debug code, connect to databases for querying insights, produce interactive visualizations, and even export reports. With a plugin architecture, users can extend functionality to custom APIs, scheduling systems, and cloud services. Cognify offers reproducibility, collaboration features, and logging to track agent decisions and outputs, making it suitable for rapid prototyping and production workflows.
  • LAWLIA is a Python framework for building customizable LLM-based agents that orchestrate tasks through modular workflows.
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    What is LAWLIA?
    LAWLIA provides a structured interface to define agent behaviors, plugin tools, and memory management for conversational or autonomous workflows. Developers can integrate with major LLM APIs, configure prompt templates, and register custom tools like search, calculators, or database connectors. Through its Agent class, LAWLIA handles planning, action execution, and response interpretation, allowing multi-turn interactions and dynamic tool invocation. Its modular design supports extending capabilities via plugins, enabling agents for customer support, data analysis, code assistance, or content generation. The framework streamlines agent development by managing context, memory, and error handling under a unified API.
  • Llama-Agent is a Python framework that orchestrates LLMs to perform multi-step tasks using tools, memory, and reasoning.
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    What is Llama-Agent?
    Llama-Agent is a developer-focused toolkit for creating intelligent AI agents powered by large language models. It offers tool integration to call external APIs or functions, memory management to store and retrieve context, and chain-of-thought planning to break down complex tasks. Agents can execute actions, interact with custom environments, and adapt through a plugin system. As an open-source project, it supports easy extension of core components, enabling rapid experimentation and deployment of automated workflows across various domains.
  • Protofy is a no-code AI Agent builder enabling rapid conversational agent prototypes with custom data integration and embeddable chat interfaces.
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    What is Protofy?
    Protofy provides a comprehensive toolkit for rapid development and deployment of AI-driven conversational agents. Leveraging advanced language models, it allows users to upload documents, integrate APIs, and connect knowledge bases directly to the agent’s backend. A visual flow editor makes it easy to design dialogue paths, while customizable persona settings ensure consistent brand voice. Protofy supports multi-channel deployment via embeddable widgets, REST endpoints, and integrations with messaging platforms. Real-time testing environment offers debug logs, user interaction metrics, and performance analytics to optimize agent responses. No coding skills are required, enabling product managers, designers, and developers to collaborate efficiently on bot design and launch prototypes in minutes.
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