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HelloRAG
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HelloRAG

Ingesting multi-modal data for LLM applications, effortlessly.

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Starting price Free + from $200/mo

Tool Information

HelloRAG is a multi-modal data processing tool designed for human and machine generated data ingestion for Large Language Model (LLM) applications. It can facilitate the processing of a wide range of data complexities and modalities through artificial intelligence-powered automation and scalable human intelligence. This ensures precision and customization at scale. HelloRAG's primary functions include semantic-preserving extraction, annotation, and transformation of various types of data, including texts, tables, audios, videos, formulas, and figures for downstream retrieval and generation tasks. Further, its no-code platform transforms labor-intensive tasks into simplified, streamlined workflows. The tool integrates seamlessly with the open-source Richly Annotated Graph (RAG) framework, including components like LlamaIndex and LangChain, to support your LLM applications. HelloRag offers a user-friendly interface, creating an accessible platform for non-technical users. It also provides full control and transparency into the data ingestion process. The data handling and storage is secure, and it supports various types of documents including PDF, PPTX/PPT, and DOCX/DOC. It also provides AI-assisted parsing and annotation functionality.

F.A.Q (20)

HelloRAG integrates with the Richly Annotated Graph (RAG) framework by providing the data ingestion and processing capability. It works seamlessly with RAG framework components like LlamaIndex and LangChain to support Large Language Model applications.

HelloRAG can process and transform a wide variety of data types, including but not limited to texts, tables, audios, videos, formulas, and figures. It can handle both human-generated and machine-generated data, and can process these data types for downstream retrieval and generation tasks.

HelloRAG's AI-powered automation facilitates the processing of a wide range of data complexities and modalities. This includes the extraction, annotation, and transformation of various forms of data while preserving their semantics. It achieves this with the help of advanced artificial intelligence methodologies and scalable human intelligence.

Yes, HelloRAG is thoroughly equipped to process and handle complex and multi-modal data. Thanks to its AI-powered automated system and scalable human intelligence, the tool can manage data modalities and complexities of any nature or size.

HelloRAG supports various types of documents for ingest, including PDF, PPTX/PPT, and DOCX/DOC.

HelloRAG guarantees secure data handling and storage. The specifics of how it ensures this security are not specified on their website, but the firm commitment to secure practices is emphasized.

Yes, HelloRAG does offer a free trial. It includes up to 10 files (each with fewer than 20 pages) and supports PDF, PPTX/PPT, and DOCX/DOC formats. The free trial also covers secure data handling and storage, as well as AI-assisted parsing and annotation without vision mode.

In the context of HelloRAG, semantic-preserving extraction refers to pulling out the data while ensuring its inherent meaning is not lost or altered. This mechanism is important in securing accurate and effective data interpretation and utilization later on, particularly in LLM applications.

HelloRAG’s no-code platform comprises of systems that transform labor-intensive tasks into simple, streamlined workflows. Through semantic preserving extraction, annotation, and data transformation features, it automates complex tasks and offers a user-friendly experience.

Yes, non-technical users can use HelloRAG effectively. The platform is deliberately designed with a user-friendly interface making it accessible for non-technical users while still offering full control to them.

Yes, HelloRAG is purpose-built to support Large Language Model (LLM) applications. It facilitates the ingestion of human and machine generated multi-modal data for these applications, and integrates seamlessly with the Richly Annotated Graph framework, which is commonly used in LLM applications.

HelloRAG's primary functions include semantic-preserving extraction, annotation, and transformation of various types of data. These functions enable the tool to process a wide range of data complexities and modalities, and cater to a variety of LLM applications, enhancing the overall efficiency and effectiveness of data processing.

LlamaIndex and LangChain are components of the Richly Annotated Graph (RAG) framework. As per the information on their website, HelloRAG integrates seamlessly with these components, suggesting a functional relationship between these components and HelloRAG, but the specific functionality of LlamaIndex and LangChain is not described.

AI-assisted parsing in HelloRAG involves breaking down large data sets into smaller elements so they can be better understood and analyzed. Along with AI-assisted annotation, this functionality improves the quality, precision and customization of the data ingestion process.

Yes, HelloRAG can process and extract information from audios and videos. It is a multi-modal data processing tool, which means it can handle different types of data sources, including audios and videos.

HelloRAG simplifies labor-intensive tasks mainly through the implementation of advanced AI-assisted automation techniques and a no-code platform. It creates simple, effortless, and streamlined workflows, transforming repetitive and labor-intensive tasks into manageable components.

Yes, HelloRAG does provide annotation functionality. It comes with an advanced AI-assisted automation system that supports semantic-preserving extraction, annotation, and transformation of data. The automation assists in annotating the data to make it easier to understand, manage, and use for various downstream tasks.

HelloRAG provides three pricing tiers: Free trial, Starter, and Advanced. The Free trial allows processing up to 10 files with less than 20 pages each. The Starter package costs $200 per month and includes support for up to 5000 pages per month, with aid for additional pages. The Advanced package costs $900 per month for up to 30,000 pages per month with several other additional benefits. Both paid packages include additional features such as layout-based indexing, technical support, and more.

Yes, HelloRAG provides technical and customer support. The level of support varies by pricing tier. The Starter Plan includes Slack channel support, while the Advanced Plan offers dedicated technical support.

Layout-based indexing in HelloRAG refers to the tool's ability to analyze the arrangement of elements (layout) within documents in order to make content more searchable and retrievable. It aids in the extraction and annotation of data, making the retrieving process efficient and effective.

Pros and Cons

Pros

  • Multi-modal data processing
  • Precision and customization at scale
  • Semantic-preserving data extraction
  • Annotation and transformation functionalities
  • Supports various data types
  • No-code platform
  • Eases labor-intensive tasks
  • RAG framework integration
  • User-friendly interface
  • Full control in data ingestion
  • Transparent data ingestion process
  • Secure data handling and storage
  • Supports multiple document types
  • Supports downstream tasks
  • LlamaIndex and LangChain components
  • Accessible for non-technical users
  • Streamlined workflows
  • Scalable human intelligence
  • Data ingestion for LLM applications
  • Supports PDF
  • PPTX/PPT
  • DOCX/DOC
  • Layout-based indexing

Cons

  • Requires technical support for errors
  • Limited file type compatibility
  • Expensive for larger capacities
  • No API for automation & integration
  • Potential queueing for computing resources
  • Premium support costs extra
  • No-code may limit customization
  • RAG centric
  • lacks versatility
  • Incomplete support for vision mode
  • May have learning curve for complex data

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