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dtreai committed May 25, 2024
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- [Introduction](#introduction)
- [Features](#features)
- [Enterprise Grid](#enterprise-grid)
- [Usage](#usage)
- [Initial setup](#initial-setup)
- [Preparing Input Data List](#preparing-input-data-list)
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- **Chain Assembly:** Generates a list of LLM chained instances based on the predefined templates and output keys.

## Enterprise Grid

At Mathematics and AI Institute, we're proud to offer the enterprise edition of SynthToT, tailored specifically for enterprise users. SynthToT Enterprise Edition provides advanced features designed to deliver a streamlined, scalable, and production-grade system synthetic data generation agent for your organization's needs. With SynthToT Enterprise, you can meet the demands of large-scale data products and enable a complex synthetic dataset generation system for safety-critical applications.

- Autotransformers: Integrate autotransformers for automated data transformation, enabling efficient and seamless preprocessing of input data for synthetic dataset generation.

- User Interface (UI): Access SynthToT Enterprise Edition through an intuitive user interface, providing a user-friendly experience for configuring settings, monitoring processes, and accessing generated datasets.

- Scalability: Scale SynthToT Enterprise Edition effortlessly to accommodate growing datasets and increased computational demands, ensuring seamless performance under heavy workloads.

- Integration Capabilities: Integrate SynthToT Enterprise Edition seamlessly with existing event-driven data processing systems, and MLOps pipelines for enhanced interoperability and continous data flow.

- Automated Quality Assurance: Utilize automated quality assurance mechanisms to ensure the accuracy, consistency, and reliability of generated synthetic datasets, reducing manual intervention and error rates.

- Plugable Thought Templates: Customize the synthetic data generation process by plugging in thought templates, allowing users to define and utilize their own templates tailored to specific use cases and domains.

### Get Started with SynthToT Enterprise Edition

To get started with SynthToT Enterprise Edition, [contact our team](mailto:[email protected]) for a demo or trial.

## Usage

### Initial setup
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