
Giga ML
We are introducing X1 Large 32k.Most powerful On-prem LLM for the enterprise.
Date | Investors | Amount | Round |
---|---|---|---|
* | $3.6m | Seed | |
Total Funding | 000k |
Related Content
GigaML is a cutting-edge startup that specializes in providing tools and services for managing and fine-tuning machine learning models, particularly those based on OpenAI's GPT-4 technology. The company operates in the rapidly growing artificial intelligence (AI) and machine learning (ML) market, catering primarily to developers, data scientists, and businesses that require advanced AI capabilities.
GigaML's core offering includes a platform that allows users to create datasets from logs, manage these datasets, and fine-tune AI models to better suit their specific needs. Users can either select tags and models or manually upload datasets. The platform supports various types of fine-tuning, enabling clients to optimize their AI models for specific tasks or industries.
The business model of GigaML is usage-based, meaning clients pay based on the amount of data processed and the extent of model fine-tuning they require. This flexible pricing structure makes it accessible for both small startups and large enterprises, allowing them to scale their usage according to their needs.
GigaML generates revenue by charging for API access, dataset management, and model fine-tuning services. Clients can easily get started by signing up on the GigaML console, generating an API key, and integrating the GigaML library into their existing systems using popular programming languages like Python and NodeJS.
In summary, GigaML provides a comprehensive solution for managing and enhancing AI models, making it easier for businesses to leverage advanced machine learning technologies. The company's focus on high-quality data logging and flexible fine-tuning options positions it well in the competitive AI market.
Keywords: AI, machine learning, GPT-4, dataset management, fine-tuning, API, usage-based pricing, developers, data scientists, OpenAI.