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Bosses blinded by confidence about shadow AI use by workers
The Register
Large language models are machine learning models trained to predict and generate text and other language-based outputs.
Large language models are machine learning models trained to predict and generate text and other language-based outputs.
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Cloud AI isn't perfect, but it actually works.
My local LLMs are enough to replace cloud platforms for my productivity tasks
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Small but not useless
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Tracking: Bosses blinded by confidence about shadow AI use by workers
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AKA: Jank Incarnate After months of pain, I finally got a working setup. There's a bunch of quirks about running a multi-Tesla setup. I was planning to write something about my experience after I get it running. Currentl…
TL;DR Some AI behavior reminded me of ADHD/Trauma Response (thought loops, task paralysis...) and I laughed it off at first. Then I treated it like my neurodivergent friends: give em some slack. And just like that, the t…
For real tho, 9b, 27b, 122b, I don’t really care at this point, just show us that you still love us. EDIT: I guess I gotta use /s on my posts from now on. Nobody appreciates a good sarcatic shitpost anymore clearly. I lo…
AI chatbots show bias toward Catholicism, researchers say
The PrismML team really cooked with these models. They're only ~3GB in size (compared to FLUX.2 Klein 4B, which is ~16GB). Apache-2.0! Official collection on HF: https://huggingface.co/collections/prism-ml/bonsai-image L…
Common questions on LLMs, surfaced from across the indexed web.
Everyone’s talking about MCP these days when it comes to large language models (LLMs)—here’s what you need to know.
LLMs ArchivesSLMs are well-positioned for the agentic era because they use a narrow slice of LLM functionality for any single language model errand. LLMs are built to be powerful generalists, but most agents use only a very narrow subset of their capabilities. They typically parse commands, generate structured outputs such as JSON for tool calls, or produce summaries and answer contextualized questions. These tasks are repetitive (up to the differences in prompt payloads), predictable, and highly specialized—well within the scope of specialized SLMs. An LLM trained to handle open-domain conversations is o
How Small Language Models Are Key to Scalable Agentic AI | NVIDIA Technical BlogIf SLMs have clear advantages, why do most agents still rely so heavily on LLMs? We hypothesize that the barriers are perception-based or caused by organizational culture rather than technical limitations. Shifting to SLM-enabled architectures requires an intentional mindset change. SLM research uses generalist benchmarks, even though agentic workloads demand different evaluation metrics. Plus, LLMs often dominate the headlines. As the cost savings and reliability of SLM-enabled systems become undeniable, momentum will shift. The transition could mirror past shifts in computing, such as the mo
How Small Language Models Are Key to Scalable Agentic AI | NVIDIA Technical Blog