Generative AI, like ChatGPT, is pretty cool. It can talk like a human and understand complex stuff. But here’s the thing: LLM are trained with large public data. If you want to harvest full benefits of LLM then models need to be trained with company domain specific data.
So, how can businesses use generative AI without giving away their secrets? Well, there are three main ways. In this blog, we’ll break them down for you. We’ll talk about what’s good, what’s not so good, and how each way can help businesses get the most out of AI while keeping their secrets safe. Let’s dive in!
But First let us explore the 3 LLM data training approaches.
GPT-3, a large language model, was trained from scratch on a huge amount of diverse text data from the internet, including websites, books, and other public sources. OpenAI’s proprietary AI Platform was used to gather and clean this data. With 175 billion parameters, the training process was extremely costly, potentially running into tens of millions of dollars for hardware and electricity alone.
The Central Statistics Office (CSO) Ireland needed to switch from SAS (Statistical Analysis System) to R as its main programming language, this required translation of old SAS code into similar R code, their data science team started exploring LLMs for simpler conversion and eventually chose OpenAI.
They fine-tuned particular models to improve the caliber of translation and noticed visible improvements in the accuracy and reliability of translations.
Below are 3 comparison factors that will help you to decide the best approach for your company.
The IMF (International Monetary Fund) updated its statistics processing and distribution platforms to align with modern best practices, such as search and browsing capabilities. A prototype called StatGPT was developed, using Generative AI and prompt-tuning to help users access data on the distribution platform.
ChatGPT’s main job is to understand and extract necessary parameters from a natural language prompt, use this information to build query parameters, and perform a data query against an API that returns statistical data.
Think of LLMs as super-powered assistants that can learn and adapt to your specific needs. Just like ChatGPT, they can handle tasks like writing various kinds of content, translating languages, and even generating creative text formats.
By carefully considering these factors, you can make an informed decision about the LLM approach that best aligns with your project’s needs and your risk tolerance.
Feeling overwhelmed? Don’t worry! Contact Us and discover how LLMs can propel your business forward. Also Get more details about AI/ML services
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