The newly unveiled Llama 3.1 collection of 8B, 70B, and 405B large language models (LLMs) is narrowing the gap between proprietary and open-source models. Their......
Supercharging Llama 3.1 across NVIDIA Platforms
Meta's Llama collection of large language models are the most popular foundation models in the open-source community today, supporting a variety of use cases.... Meta’s...
Build an Agentic RAG Pipeline with Llama 3.1 and NVIDIA NeMo Retriever NIMs
Employing retrieval-augmented generation (RAG) is an effective strategy for ensuring large language model (LLM) responses are up-to-date and not... Employing retrieval-augmented generation (RAG) is an...
Develop Production-Grade Text Retrieval Pipelines for RAG with NVIDIA NeMo Retriever
Enterprises are sitting on a goldmine of data waiting to be used to improve efficiency, save money, and ultimately enable higher productivity. With generative... Enterprises...
Automating Telco Network Design using NVIDIA NIM and NVIDIA NeMo
Telecom wireless network design demands streamlined processes and standardized approaches. Network architects, engineers, and IT professionals are challenged... Telecom wireless network design demands streamlined processes...
