Metatext – Survto AI
Menu Close
Metatext
☆☆☆☆☆
Text extraction (3)

Metatext

Classify and extract text better and easier.

Visit Tool

Starting price Free + from $35/mo

Tool Information

Metatext is an AI-powered tool for classifying and extracting information from text and documents using custom-trained Large Language Models (LLMs). It's designed for various domain-specific problems, like classifying customer emails, extracting key terms from legal contracts, or summarizing specific format reports. Users can fine-tune models effortlessly using a no-code interface, distilling their data into private, scalable, custom models. Whether you need Binary, Multi-class, Multi-label, Sentiment, Topic, or Intent classifications for your text, Metatext can handle it. It can also extract key pieces of information, recognize entities, and identify keywords. For text generation, Metatext lets you fine-tune LLMs to your domain, which is valuable for tasks like Question & Answering or creating chatbots. Users can train models with less data and annotation time, evaluate them for enhancing trustworthiness, and deploy them efficiently. This deployment can be integrated into your systems via an API, Zapier, Google Sheets, Docker, AWS, and Hugging Face. Additionally, Metatext offers task-specific LLMs within a no-code platform for automating business processes. Its use cases extend to customer support, insights, content moderation, healthcare, finance, and HR.

F.A.Q (20)

Metatext is an AI-powered tool that specializes in the classification and extraction of information from text and documents using custom-trained Large Language Models (LLMs). It's meticulously created to solve various domain-specific problems such as classifying customer emails, extracting crucial terms from legal contracts, and summarizing particular format reports. Metatext provides users the luxury of effortlessly fine-tuning models via a no-code interface, which allows distilling of their data into private, scalable, custom models.

Metatext operates through a user-friendly, no-code interface. This interface allows users to easily distill their data into private, scalable, custom models. Through a few clicks and inputs, users can train models with less data and annotation time, evaluate them for trustworthiness, and deploy them efficiently.

Yes, Metatext is absolutely capable of performing Multi-label and Sentiment classifications. It provides users with the ability to classify their text in a multitude of ways, including Binary, Multi-class, Multi-label, Sentiment, Topic, or Intent classifications.

Metatext harbors the capability of text generation by allowing its users to fine-tune LLMs according to their domain. This characteristic is especially valuable for tasks such as Question & Answering or crafting chatbots. With less data and annotation time, models can be conveniently trained, thus facilitating text generation.

Metatext offers a wide array of integration options. It can be smoothly incorporated into your systems through different means including an API, Zapier, Google Sheets, Docker, AWS, and Hugging Face. This allows for the effortless deployment of trained models.

Metatext can be utilized in various business sectors such as customer support, finance, healthcare, HR, and more. Its flexibility and multi-faceted functionality allow it to cater to the unique requirements of these different sectors - from automating customer support processes to analyzing market sentiment in finance.

Metatext analyzes and classifies customer emails using specialized LLMs. These models assist in sorting emails into different categories, such as queries, complaints, requests, and more. This makes handling and responding to customer email much more efficient and accurate.

Metatext employs AI algorithms to intricately extract key terms from legal contracts. The algorithms comb through the text to recognize and highlight pivotal terms and clauses. This enables users to distill and comprehend essential information without flipping through volumes of contract documents.

Yes, Metatext can summarize specific format reports. It employs trained LLMs that can understand the content within a report, extract the key information, and provide a concise summary. This functionality is useful for quickly gleaning crucial details from comprehensive reports.

Fine-tuning LLMs to your domain with Metatext allows the algorithms to better understand and analyze text pertinent to your specific needs or business area. This leads to more accurate and relevant extractions, classifications, and text generations. It also enhances the model's overall performance in handling tasks like Question & Answering or creating chatbots.

Training models with Metatext requires less data and annotation time than traditional methods. User data and expertise are the fundamental elements needed to enable the AutoNLP engine to train and fine-tune the model for their specific use case.

Metatext enhances model trustworthiness through a comprehensive evaluation process. It provides mechanisms to understand how your model is performing and offers insights for improvement. Trustworthy models are central to successful AI applications, thus this process is critical in achieving results and user satisfaction.

Model deployment with Metatext is highly efficient. Once a model is trained and evaluated, it can be deployed quickly with a click of a button. The models can be integrated with various systems via API, Zapier, Google Sheets, Docker, AWS, and Hugging Face.

Yes, Metatext is able to recognize entities and identify keywords within a text. It employs powerful AI models to comb through text and pick out the crucial pieces of information, including recognized entities and specific keywords that are pivotal for understanding the document.

Absolutely, Metatext enables users to distill their data into private, scalable, custom models. This process is facilitated by the platform's no-code interface and sophisticated AI algorithms that learn and adapt from user-provided data.

In the healthcare sector, Metatext can be used to extract essential data from medical records, laboratory reports, and patient feedback. It can help healthcare providers to analyze data quickly and draw meaningful conclusions, aiding in more efficient patient care and medical decision-making.

Yes, Metatext can handle HR-related tasks. It is capable of identifying the best-fit candidates by matching their skills, experience, and qualifications to job requirements. This can streamline the recruitment process and improve the quality of hires.

Metatext helps automate business processes by crafting task-specific LLMs within its no-code platform. Whether it is for promptly categorizing customer tickets, detecting inappropriate content for moderation, or extracting critical data from medical and financial records, Metatext's custom models lend efficiency and accuracy to business operations.

For finance-related tasks, Metatext offers a multitude of capabilities. It can analyze market sentiment, review financial reports, and categorize customer feedback. This helps finance professionals stay ahead in investment decisions by delivering swift, efficient, and accurate results.

Yes, Metatext provides task-specific Large Language Models specifically tuned to automate customer support. These models help in categorizing and responding to customer tickets quickly and effectively, thereby improving customer service efficiency and satisfaction.

Pros and Cons

Pros

  • Custom-trained Large Language Models
  • No-code interface
  • Model fine-tuning
  • Binary Classification
  • Multi-class Classification
  • Multi-label Classification
  • Sentiment Analysis
  • Topic Classification
  • Intent Classifications
  • Text extraction
  • Entity recognition
  • Keyword identification
  • User-specific domain training
  • Less data and annotation time
  • Model evaluation feature
  • Efficient deployment
  • API integration
  • Zapier integration
  • Google Sheets integration
  • Docker integration
  • AWS integration
  • Hugging Face integration
  • Task-specific LLMs
  • Business process automation
  • Domain-specific problems solutions
  • Versatile use cases
  • Less annotation time
  • Data distillation into custom models
  • Text generation
  • Chatbot creation
  • Diverse industry suitability
  • Training with less data
  • Trustworthiness enhancement feature
  • Scalable custom models
  • Binary
  • Multi-class
  • Multi-label classifications
  • Private and scalable custom models
  • AutoNLP engine
  • Customer Support automation
  • Review analysis automation
  • Document categorization
  • Free Starter plan
  • Pro and Enterprise plans
  • Monitoring feature
  • Fast Deployment
  • Auto Training
  • Works with multiple languages
  • Help in distillation LLMs
  • Private and custom LLM models

Cons

  • JavaScipt enablement required
  • Only supports English language
  • May require significant data annotation
  • No option to download models
  • Reliant on external APIs and platforms
  • No free tier for businesses
  • Limited dataset file format support
  • Possible vendor lock-in for institutions
  • Limited task-specific model adjustments

Reviews

You must be logged in to submit a review.

No reviews yet. Be the first to review!