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Airtrain AINo-code LLM fine-tuning and evaluation.

Airtrain AI is a no-code compute platform for Large Language Models. Proprietary AI models such as GPT-4 are very powerful but also very costly, slow, unreliable, and unsecured. As businesses look to scale their AI prototypes into production-grade products, they struggle with large AI bills, slow APIs and large failure rates. On the other hand, smaller language models have been proven to be able to perform on-part with large ones with fine-tuned on high-quality datasets. Airtrain AI lets AI practitioners explore alternatives to proprietary models, build up training datasets, evaluate, fine-tune, and serve a large selection of open-source LLMs.

2022-07-05
Active
Early
S22
5
B2B
United States of AmericaAmerica / CanadaRemotePartly Remote
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More About Airtrain AI

Airtrain AI | The Unstructured Data Platform

The key to better AI is better data.

Key Features

  • Data Curation: Auto-clustering, AI labeling/classification, and noise reduction to amplify high-quality data.
  • LLM Fine-Tuning: Customize large language models (LLMs) to your specific use case.
  • LLM Playground: Vibe-check 28 state-of-the-art LLMs at once.
  • LLM Evaluation: Compare LLMs on your entire evaluation set.
  • Dataset Exploration: Discover semantic clusters, browse embedding space, and uncover unseen patterns and insights.

Use Cases

  • AI Application Improvement: Enhance AI apps, RAG pipelines, and models with high-quality training and evaluation datasets.
  • Cost Reduction: Fine-tune and evaluate LLMs to replace costly models, reducing inference costs by up to 90%.
  • Data Insights: Automatically generate insights for all your datasets to discover hidden niches and patterns.

Pricing

Get started for free or book a demo to explore advanced features. Flexible pricing plans are available to suit different team sizes and requirements.

Teams

Airtrain AI is trusted by teams at leading organizations. Our platform supports collaborative efforts in dataset curation, LLM fine-tuning, and evaluation, enabling teams to accelerate their AI workflows and achieve better results.