Comprehensive custom workflows Tools for Every Need

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

custom workflows

  • A CLI framework that orchestrates Anthropic’s Claude Code model for automated code generation, editing, and context-aware refactoring.
    0
    0
    What is Claude Code MCP?
    Claude Code MCP (Memory Context Provider) is a Python-based CLI tool designed to streamline interactions with Anthropic’s Claude Code model. It offers persistent conversation history, reusable prompt templates, and utilities for generating, reviewing, and refactoring code. Developers can invoke commands for code generation, automated edits, diff comparisons, and inline explanations, while extending functionality through a plugin system. MCP simplifies integrating Claude Code into development pipelines for more consistent, context-aware coding assistance.
  • A modular AI coding assistant toolkit that provides code generation, refactoring, debugging, and automated documentation features.
    0
    0
    What is CoderAssistants?
    CoderAssistants is an AI Agent framework designed to streamline software development workflows by embedding intelligent coding assistance directly into popular development environments and pipelines. At its core, CoderAssistants orchestrates large language models to generate boilerplate code, suggest improvements, automatically refactor legacy code, diagnose bugs based on error messages, and produce contextual documentation. Its modular plugin system allows teams to tailor agents for specific languages, frameworks, or compliance requirements, including custom prompt templates, workflow hooks, and automated testing integrations. By providing interactive chat-like assistants, CLI tools, and API endpoints, CoderAssistants ensures developers can interactively refine code, automate repetitive tasks, and maintain high code quality across projects.
  • Framework for building retrieval-augmented AI agents using LlamaIndex for document ingestion, vector indexing, and QA.
    0
    0
    What is Custom Agent with LlamaIndex?
    This project demonstrates a comprehensive framework for creating retrieval-augmented AI agents using LlamaIndex. It guides developers through the entire workflow, starting with document ingestion and vector store creation, followed by defining a custom agent loop for contextual question-answering. Leveraging LlamaIndex's powerful indexing and retrieval capabilities, users can integrate any OpenAI-compatible language model, customize prompt templates, and manage conversation flows via a CLI interface. The modular architecture supports various data connectors, plugin extensions, and dynamic response customization, enabling rapid prototyping of enterprise-grade knowledge assistants, interactive chatbots, and research tools. This solution streamlines building domain-specific AI agents in Python, ensuring scalability, flexibility, and ease of integration.
  • Ernie Bot Agent is a Python SDK for Baidu ERNIE Bot API to build customizable AI agents.
    0
    0
    What is Ernie Bot Agent?
    Ernie Bot Agent is a developer framework designed to streamline the creation of AI-driven conversational agents using Baidu ERNIE Bot. It provides abstractions for API calls, prompt templates, memory management, and tool integration. The SDK supports multi-turn conversations with context awareness, custom workflows for task execution, and a plugin system for domain-specific extensions. With built-in logging, error handling, and configuration options, it reduces boilerplate and enables rapid prototyping of chatbots, virtual assistants, and automation scripts.
  • AI-powered no-code form and workflow builder.
    0
    0
    What is Feathery AI?
    Feathery is an AI-powered no-code platform that helps teams build customizable and developer-friendly forms and workflows. It offers a comprehensive editor to polish and perfect the forms, making it ideal for product teams in various industries. With Feathery, users can create high-quality forms quickly, enhancing data intake workflows and improving the user experience.
  • GPTSwarm is a collaborative AI agent for automated teamwork and productivity.
    0
    0
    What is GPTSwarm?
    GPTSwarm acts as a collective intelligence platform where multiple AI agents interact and collaborate to solve complex problems and execute tasks more efficiently. Users can create workflows by coordinating various agents to perform specific roles, leading to improved productivity and time savings. This system is designed to streamline processes in project management, automation, and various workflows, providing scalable solutions tailored to individual and organizational needs.
  • Collection of pre-built AI agent workflows for Ollama LLM, enabling automated summarization, translation, code generation and other tasks.
    0
    1
    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.
  • Helpfull is an AI-powered assistant designed to enhance productivity through task automation and personalized workflows.
    0
    1
    What is Helpfull?
    Helpfull acts as a comprehensive AI assistant that leverages machine learning to optimize daily tasks. It aids users in managing their schedules, automating repetitive tasks, and providing intelligent reminders. By learning from user interactions, Helpfull can suggest personalized workflows and improve overall productivity, making it an invaluable tool for individuals and teams.
  • Manage library borrowing and lending seamlessly with ILLiad.
    0
    0
    What is Illiad?
    ILLiad is an interlibrary loan management system that enhances the workflow for libraries by automating the processes involved in borrowing and lending materials. It supports customizable workflows tailored to individual libraries' needs, allowing for efficient tracking of requests and better communication between institutions. With features like patron management and detailed reporting, ILLiad minimizes paperwork and improves operational efficiency, making it easier for libraries to deliver resources to their users.
  • Intlayer is an AI agent that simplifies your workflow with smart automation and intelligent assistance.
    0
    1
    What is Inltayer?
    Intlayer is designed to assist users by automating repetitive tasks and offering intelligent solutions to complex problems. It integrates seamlessly with various applications to enhance productivity, providing insights and support tailored to specific user needs. By utilizing advanced AI technologies, Intlayer helps organizations and individual users manage their workflows more effectively, ensuring that tasks are completed swiftly and accurately.
  • An open-source engine to build AI agents with deep document understanding, vector knowledge bases, and retrieval-augmented generation workflows.
    0
    0
    What is RAGFlow?
    RAGFlow is a powerful open-source RAG (Retrieval-Augmented Generation) engine designed to streamline the development and deployment of AI agents. It combines deep document understanding with vector similarity search to ingest, preprocess, and index unstructured data from PDFs, web pages, and databases into custom knowledge bases. Developers can leverage its Python SDK or RESTful API to retrieve relevant context and generate accurate responses using any LLM model. RAGFlow supports building diverse agent workflows, such as chatbots, document summarizers, and Text2SQL generators, enabling automation of customer support, research, and reporting tasks. Its modular architecture and extension points allow seamless integration with existing pipelines, ensuring scalability and minimal hallucinations in AI-driven applications.
  • An open-source framework of AI agents for automated data retrieval, knowledge extraction, and document-based question answering.
    0
    0
    What is Knowledge-Discovery-Agents?
    Knowledge-Discovery-Agents provides a modular set of pre-built and customizable AI agents designed to extract structured insights from PDFs, CSVs, websites, and other sources. It integrates with LangChain to manage tool usage, supports chaining of tasks like web scraping, embedding generation, semantic search, and knowledge graph creation. Users can define agent workflows, incorporate new data loaders, and deploy QA bots or analytics pipelines. With minimal boilerplate code, it accelerates prototyping, data exploration, and automated report generation in research and enterprise contexts.
  • Kypso simplifies R&D workflow management for engineering teams.
    0
    0
    What is Kypso?
    Kypso offers a unified platform to manage R&D workflows. Built specifically for engineering teams, Kypso enables seamless automation of complex and repetitive tasks, fostering efficient and scalable R&D processes. With its user-friendly interface, teams can build and automate their workflows, enhancing overall productivity and innovation. By integrating features like real-time collaboration, metrics visibility, and custom workflow creation, Kypso is designed to meet the dynamic needs of modern engineering teams, ensuring sustainable growth and improved project outcomes.
  • La Terminal - an advanced SSH client for iPhone and iPad.
    0
    0
    What is La Terminal?
    La Terminal is more than just a simple command-line shell. It provides a fully-native, first-class touch experience for command-line hackers on iPhone and iPad. Enabling seamless SSH connections, La Terminal is designed to cater to the needs of professionals who require robust terminal access on the go. It supports various features such as command search and custom workflows.
  • Integrates AI-driven agents into LiveKit sessions for real-time transcription, chatbot responses, and meeting assistance.
    0
    0
    What is LangGraph LiveKit Agents?
    Built on LangGraph, this toolkit orchestrates AI agents within LiveKit rooms, capturing audio streams, transcribing speech via Whisper, and generating contextual replies using popular LLMs like OpenAI or local models. Developers can define event-driven triggers and dynamic workflows using LangGraph’s declarative orchestration, enabling use cases such as Q&A handling, live polling, real-time translation, action item extraction, or sentiment monitoring. The modular architecture supports seamless integration, extensibility for custom behaviors, and effortless deployment in Node.js or browser-based environments with full API access.
  • LangGraph is a graph-based multi-agent AI framework that coordinates multiple agents for code generation, debugging, and chat.
    0
    0
    What is LangGraph-MultiAgent for Code and Chat?
    LangGraph provides a flexible multi-agent system built on directed graphs, where each node represents an AI agent specialized in tasks like code synthesis, review, debugging, or chat. Users define workflows in JSON or YAML, specifying agent roles and communication paths. LangGraph manages task distribution, message routing, and error handling across agents. It supports plugging into various LLM APIs, extensible custom agents, and visualization of execution flows. With CLI and API access, LangGraph simplifies building complex automated pipelines for software development, from initial code generation to continuous testing and interactive developer assistance.
  • MCP Ollama Agent is an open-source AI agent automating tasks via web search, file operations, and shell commands.
    0
    0
    What is MCP Ollama Agent?
    MCP Ollama Agent leverages the Ollama local LLM runtime to provide a versatile agent framework for task automation. It integrates multiple tool interfaces, including web search via SERP API, file system operations, shell command execution, and Python environment management. By defining custom prompts and tool configurations, users can orchestrate complex workflows, automate repetitive tasks, and build specialized assistants tailored to various domains. The agent handles tool invocation and context management, maintaining conversation history and tool responses to generate coherent actions. Its CLI-based setup and modular architecture make it easy to extend with new tools and adapt to different use cases, from research and data analysis to development support.
  • Swarms.ai lets you design, deploy and manage collaborative AI agents to automate tasks across your organization.
    0
    0
    What is Swarms.ai?
    Swarms.ai provides a visual interface to define and connect multiple AI agents into intelligent workflows. Each agent can be configured with specific roles, data sources, and custom API integrations. Agents collaborate by passing messages, triggering actions, and sharing context to handle complex tasks end to end. The platform offers role-based access control, versioning, and real-time analytics to monitor swarm performance. No coding is required: users drag and drop components, set triggers, and link outputs to design automated processes for support, sales, operations, and more.
  • Melissa is an AI-powered personal assistant that manages tasks, automates workflows, and answers queries through natural language chat.
    0
    0
    What is Melissa?
    Melissa operates as a conversational AI agent that uses advanced natural language understanding to interpret user commands, generate context-aware responses, and perform automated tasks. It provides features such as task scheduling, appointment reminders, data lookup, and integration with external APIs like Google Calendar, Slack, and email services. Users can extend Melissa’s capabilities through custom plugins, create workflows for repetitive processes, and access its knowledge base for quick information retrieval. As an open-source project, developers can self-host Melissa on cloud or local servers, configure permissions, and tailor its behavior to suit organizational requirements or personal preferences, making it a flexible solution for productivity, customer support, and digital assistance.
  • A multi-agent AI framework that orchestrates specialized GPT-powered agents to collaboratively solve complex tasks and automate workflows.
    0
    0
    What is Multi-Agent AI Assistant?
    Multi-Agent AI Assistant is a modular Python-based framework that orchestrates multiple GPT-powered agents, each assigned to discrete roles such as planning, research, analysis, and execution. The system supports message passing between agents, memory storage, and integration with external tools and APIs, enabling complex task decomposition and collaborative problem-solving. Developers can customize agent behavior, add new toolkits, and configure workflows via simple configuration files. By leveraging distributed reasoning across specialized agents, the framework accelerates automated research, data analysis, decision support, and task automation. The repository includes sample implementations and templates, allowing rapid prototyping of intelligent assistants and digital workers capable of handling end-to-end workflows in business, education, and research environments.
Featured