Ultimate conditional logic Solutions for Everyone

Discover all-in-one conditional logic tools that adapt to your needs. Reach new heights of productivity with ease.

conditional logic

  • scenario-go is a Go SDK for defining complex LLM-driven conversational workflows, managing prompts, context, and multi-step AI tasks.
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    What is scenario-go?
    scenario-go serves as a robust framework for constructing AI agents in Go by allowing developers to author scenario definitions that specify step-by-step interactions with large language models. Each scenario can incorporate prompt templates, custom functions, and memory storage to maintain conversational state across multiple turns. The toolkit integrates with leading LLM providers via RESTful APIs, enabling dynamic input-output cycles and conditional branching based on AI responses. With built-in logging and error handling, scenario-go simplifies debugging and monitoring of AI workflows. Developers can compose reusable scenario components, chain multiple AI tasks, and extend functionality through plugins. The result is a streamlined development experience for building chatbots, data extraction pipelines, virtual assistants, and automated customer support agents fully in Go.
  • CrewAI is a no-code platform for creating AI digital workers that automate web tasks by recording your workflow steps.
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    What is CrewAI?
    CrewAI provides an AI-driven workspace for designing, training and deploying digital workers without writing a line of code. Users record their manual web interactions once, then CrewAI’s engine generalizes and repeats the steps on demand. Digital workers can authenticate, scrape data, complete forms, make decisions based on conditions and connect to external services via API. This accelerates process automation for sales outreach, data reporting and administrative workflows, scaling tasks across teams while ensuring reliability and compliance.
  • Visual no-code platform to orchestrate multi-step AI agent workflows with LLMs, API integrations, conditional logic, and easy deployment.
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    What is FlowOps?
    FlowOps delivers a visual, no-code environment where users define AI agents as sequential workflows. Through its intuitive drag-and-drop builder, you can assemble modules for LLM interactions, vector store lookups, external API calls, and custom code execution. Advanced features include conditional branching, looping constructs, and error handling to build robust pipelines. It integrates with popular LLM providers (OpenAI, Anthropic), databases (Pinecone, Weaviate), and REST services. Once designed, workflows can be deployed instantly as scalable APIs with built-in monitoring, logging, and version control. Collaboration tools allow teams to share and iterate on agent designs. FlowOps is ideal for creating chatbots, automated document extractors, data analysis workflows, and end-to-end AI-driven business processes without writing a single line of infrastructure code.
  • A no-code AI agent platform to build and deploy complex LLM workflows integrating models, APIs, databases, and automations.
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    What is Binome?
    Binome provides a visual flow builder where you assemble AI agent pipelines by dragging and dropping blocks for LLM calls, API integrations, database queries, and conditional logic. It supports major model providers (OpenAI, Anthropic, Mistral), memory and retrieval systems, scheduling, error handling, and monitoring. Developers can version, test, and deploy workflows as REST endpoints or webhooks, scale with ease, and collaborate across teams. It bridges LLM capabilities with enterprise data, enabling rapid prototyping and production-grade automation.
  • Landbot is a no-code chatbot platform for creating engaging conversational experiences.
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    What is Landbot AI?
    Landbot is a no-code chatbot platform designed to help businesses create interactive and engaging conversational experiences with ease. Using its visual builder, users can set up automated workflows with conditional logic, formulas, and rich content without needing to write a single line of code. It supports deployment across various channels including websites, WhatsApp, and other popular messaging platforms, enhancing customer engagement and satisfaction.
  • Nefi enables non-technical users to design, deploy, and manage custom AI agents via a no-code workflow builder.
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    What is Nefi.ai?
    Nefi.ai is a cloud-based platform for designing, training, and orchestrating AI-powered agents without writing code. It offers a visual canvas to assemble blocks like LLM modules, vector database retrieval, external API calls, conditional logic, and memory stores. Agents can be trained on custom documents or linked to enterprise data. Once built, they deploy as chatbots, email assistants, or scheduled tasks. Advanced features include monitoring dashboards, version control, role-based access, and integrations with Slack, Teams, and Zapier.
  • Pipe Pilot is a Python framework that orchestrates LLM-driven agent pipelines, enabling complex multi-step AI workflows with ease.
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    What is Pipe Pilot?
    Pipe Pilot is an open-source tool that lets developers build, visualize, and manage AI-driven pipelines in Python. It offers a declarative API or YAML configuration to chain tasks such as text generation, classification, data enrichment, and REST API calls. Users can implement conditional branches, loops, retries, and error handlers to create resilient workflows. Pipe Pilot maintains execution context, logs each step, and supports parallel or sequential execution modes. It integrates with major LLM providers, custom functions, and external services, making it ideal for automating reports, chatbots, intelligent data processing, and complex multi-stage AI applications.
  • AGIFlow enables visual creation and orchestration of multi-agent AI workflows with API integration and real-time monitoring.
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    What is AGIFlow?
    At its core, AGIFlow provides an intuitive canvas where users can assemble AI agents into dynamic workflows, defining triggers, conditional logic, and data exchanges between agents. Each agent node can execute custom code, call external APIs, or leverage pre-built models for NLP, vision, or data processing tasks. With built-in connectors to popular databases, web services, and messaging platforms, AGIFlow streamlines integration and orchestration across systems. Version control and rollback features allow teams to iterate rapidly, while real-time logging, metrics dashboards, and alerting ensure transparency and reliability. Once workflows are tested, they can be deployed on scalable cloud infrastructure with scheduling options, enabling businesses to automate complex processes such as report generation, customer support routing, or research pipelines.
  • TreeInstruct enables hierarchical prompt workflows with conditional branching for dynamic decision-making in language model applications.
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    What is TreeInstruct?
    TreeInstruct provides a framework to build hierarchical, decision-tree based prompting pipelines for large language models. Users can define nodes representing prompts or function calls, set conditional branches based on model output, and execute the tree to guide complex workflows. It supports integration with OpenAI and other LLM providers, offering logging, error handling, and customizable node parameters to ensure transparency and flexibility in multi-turn interactions.
  • DAGent builds modular AI agents by orchestrating LLM calls and tools as directed acyclic graphs for complex task coordination.
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    What is DAGent?
    At its core, DAGent represents agent workflows as a directed acyclic graph of nodes, where each node can encapsulate an LLM call, custom function, or external tool. Developers define task dependencies explicitly, enabling parallel execution and conditional logic, while the framework manages scheduling, data passing, and error recovery. DAGent also provides built-in visualization tools to inspect the DAG structure and execution flow, improving debugging and auditability. With extensible node types, plugin support, and seamless integration with popular LLM providers, DAGent empowers teams to build complex, multi-step AI applications such as data pipelines, conversational agents, and automated research assistants with minimal boilerplate. The library's focus on modularity and transparency makes it ideal for scalable agent orchestration in both experimental and production environments.
  • Devon is a Python framework for building and managing autonomous AI agents that orchestrate workflows using LLMs and vector search.
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    What is Devon?
    Devon provides a comprehensive suite of tools for defining, orchestrating, and running autonomous agents within Python applications. Users can outline agent goals, specify callable tasks, and chain actions based on conditional logic. Through seamless integration with language models like GPT and local vector stores, agents ingest and interpret user inputs, retrieve contextual knowledge, and generate plans. The framework supports long-term memory via pluggable storage backends, enabling agents to recall past interactions. Built-in monitoring and logging components allow real-time tracking of agent performance, while a CLI and SDK facilitate rapid development and deployment. Suitable for automating customer support, data analysis pipelines, and routine business operations, Devon accelerates the creation of scalable digital workers.
  • 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.
  • A Python framework for constructing multi-step reasoning pipelines and agent-like workflows with large language models.
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    What is enhance_llm?
    enhance_llm provides a modular framework for orchestrating large language model calls in defined sequences, allowing developers to chain prompts, integrate external tools or APIs, manage conversational context, and implement conditional logic. It supports multiple LLM providers, custom prompt templates, asynchronous execution, error handling, and memory management. By abstracting the boilerplate of LLM interaction, enhance_llm streamlines the development of agent-like applications—such as automated assistants, data processing bots, and multi-step reasoning systems—making it easier to build, debug, and extend sophisticated workflows.
  • FastGPT is an open-source AI knowledge base platform enabling RAG-based retrieval, data processing, and visual workflow orchestration.
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    What is FastGPT?
    FastGPT serves as a comprehensive AI agent development and deployment framework designed to simplify the creation of intelligent, knowledge-driven applications. It integrates data connectors for ingesting documents, databases, and APIs, performs preprocessing and embedding, and invokes local or cloud-based models for inference. A retrieval-augmented generation (RAG) engine enables dynamic knowledge retrieval, while a drag-and-drop visual flow editor lets users orchestrate multi-step workflows with conditional logic. FastGPT supports custom prompts, parameter tuning, and plugin interfaces for extending functionality. You can deploy agents as web services, chatbots, or API endpoints, complete with monitoring dashboards and scaling options.
  • Formvox: Create secure, mobile-friendly online forms and surveys with ease.
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    What is FormVox?
    Formvox is a platform designed to simplify the creation of secure online forms and surveys. It offers a user-friendly interface, allowing you to build forms quickly with drag-and-drop functionality. The platform ensures that the forms are mobile-friendly and includes advanced customization options such as conditional logic and custom notifications. Additionally, Formvox provides robust analytics and reporting tools, ensuring that you can effectively manage and analyze the data collected.
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