Deciding on LLMs: Open or Closed Source? #llms
#largelanguagemodels #machinelearning #generativeai
LLMs typically refer to Large Language Models. These are advanced artificial intelligence models designed to understand and generate human-like text based on the input they receive.
Popular LLMs like GPT-3 by OpenAI are examples of closed-source models, where access is provided through an API. However, open-source alternatives also exist, such as GPT-2, which has an open-source implementation available. The choice between open source and closed source often depends on factors like the project's goals, resource availability, and the level of control and customization required.
Data science shorts
machine learning shorts
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#artificialintelligence #naturallanguageprocessing #llms
Видео Deciding on LLMs: Open or Closed Source? #llms канала TechViz - The Data Science Guy
LLMs typically refer to Large Language Models. These are advanced artificial intelligence models designed to understand and generate human-like text based on the input they receive.
Popular LLMs like GPT-3 by OpenAI are examples of closed-source models, where access is provided through an API. However, open-source alternatives also exist, such as GPT-2, which has an open-source implementation available. The choice between open source and closed source often depends on factors like the project's goals, resource availability, and the level of control and customization required.
Data science shorts
machine learning shorts
LLM shorts
genai shorts
#artificialintelligence #naturallanguageprocessing #llms
Видео Deciding on LLMs: Open or Closed Source? #llms канала TechViz - The Data Science Guy
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21 февраля 2024 г. 7:58:37
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