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Building a Local Large Language Model (LLM)
Season 6 · Episode 2

Building a Local Large Language Model (LLM)

Another #ComputingWeek talk turned into a podcast! Two Red Hat software engineers, both recent graduates of SETU, returned to discuss the issues surrounding running your own LLM on a local machine, how models and datasets are built and reduced (quantised) so as to run on a laptop rather than an array of servers. Mark Campbell and Dimitri Saradkis provided excellent insight on the technical issues surround this topic, before getting into some of the ethical and moral issues with host Rob O'Connor at the end. You can connect with all the people on this podcast on LinkedIn at: Mark Campbell https://www.linkedin.com/in/mark-campbell-76846b194/ Dimitri Saradakis https://www.linkedin.com/in/dimitri-saridakis-32a087139/ Rob O'Connor https://www.linkedin.com/in/robertoconnorirl/ Here are links to some of the tools referenced in the podcast: Red Hat OpenShift AI https://www.redhat.com/en/technologies/cloud-computing/openshift/openshift-ai LMStudio https://lmstudio.ai/ Ollama https://ollama.ai/ HuggingFace https://huggingface.co/

The Machine: A computer science education podcast · Rob O'Connor

February 8, 202451m 30s

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Show Notes

Another #ComputingWeek talk turned into a podcast! Two Red Hat software engineers, both recent graduates of SETU, returned to discuss the issues surrounding running your own LLM on a local machine, how models and datasets are built and reduced (quantised) so as to run on a laptop rather than an array of servers. Mark Campbell and Dimitri Saradkis provided excellent insight on the technical issues surround this topic, before getting into some of the ethical and moral issues with host Rob O'Connor at the end.

You can connect with all the people on this podcast on LinkedIn at:

Here are links to some of the tools referenced in the podcast: