Sabitlenmiş Tweet
Cortex
90 posts

Cortex
@cortex_so
Local AI API Platform. Run and customize models locally. Stores models in universal file formats. Powers 👋🏻 @jandotai. Built by @menloresearch
Katılım Haziran 2024
37 Takip Edilen331 Takipçiler
Cortex retweetledi

Jan v0.6.8 is out: Jan is more stable now!
- Stability fixes for model loading
- Better llama.cpp: clearer errors & backend suggestions
- Faster MoE models with CPU offload
- Search private @huggingface models
- Custom Jinja templates
Update your Jan or download the latest.
English
Cortex retweetledi

Introducing Jan-v1: 4B model for web search, an open-source alternative to Perplexity Pro.
In our evals, Jan v1 delivers 91% SimpleQA accuracy, slightly outperforming Perplexity Pro while running fully locally.
Use cases:
- Web search
- Deep Research
Built on the new version of Qwen's Qwen3-4B-Thinking (up to 256k context length), fine-tuned for reasoning and tool use in Jan.
You can run the model in Jan, llama.cpp, or vLLM. To enable search in Jan, go to Settings → Experimental Features → On, then Settings → MCP Servers → enable a search-related MCP such as Serper.
Use the model:
- Jan-v1-4B: huggingface.co/janhq/Jan-v1-4B
- Jan-v1-4B-GGUF: huggingface.co/janhq/Jan-v1-4…
Credit to the @Alibaba_Qwen team for Qwen3 4B Thinking & @ggerganov for llama.cpp.
English
Cortex retweetledi
Cortex retweetledi

Jan v0.6.6 is out: Jan now runs fully on llama.cpp.
- Cortex is gone, local models now run on @ggerganov's llama.cpp
- Toggle between llama.cpp builds
- @huggingface added as a model provider
- Hub enhanced
- Images from MCPs render inline in chat
Update Jan or grab the latest.
GIF
English
Cortex retweetledi

Running AI locally is taking control.
The data stays on your computer, under your control and out of anyone else's reach.
That's how it should be. Jan lets you do that.
Keith@gnukeith
You should use LLMs locally On your hardware that you own and control Matter a fact, self-host as many things as you can
English
Cortex retweetledi

Jan v0.6.5 is out: SmolLM3-3B now run locally
Highlights 💫
- Support for @huggingface's SmolLM3-3B
- Fully responsive design across all screen sizes
- New layout for Model Providers
Update your Jan or download the latest.
GIF
English
Cortex retweetledi

Menlo Research is hiring, come build cool stuff with us.
Some open roles:
- Sr Backend Engineer (Tauri)
- Sr Software Engineer
- Research Engineer (PyTorch)
- Lead Electromechanical Systems Engineer
- Mechanical Engineer
- Management Associate
menlo.bamboohr.com/careers/
English
Cortex retweetledi
Cortex retweetledi
Cortex retweetledi

Open-source models can do Deep Research too.
This video shows a full research report created by Jan-nano.
To try it:
- Get Jan-nano from Jan Hub
- In settings, turn on MCP Servers and @serperapi
- Paste your Serper API key
Your deep research assistant is ready.
English
Cortex retweetledi
Cortex retweetledi
Cortex retweetledi

Meet Jan-nano, a 4B model that outscores DeepSeek-v3-671B using MCP.
It's built on Qwen3-4B with DAPO fine-tuning, it handles:
- real-time web search
- deep research
Model + GGUF: huggingface.co/collections/Me…
To run it locally:
- Install Jan Beta: jan.ai/docs/desktop/b…
- Download Jan-nano in Jan Hub
- Settings -> MCP, enable MCP and add your Serper API key for web tools
Full technical report will be published shortly.
English
Cortex retweetledi

Deep Search is coming to Jan, maybe in your browser too. 👀
Roman@roman_koshchei
@jandotai Can Jan add Deep Search feature like in Grok?
English
Cortex retweetledi

Run DeepSeek R1's new distills in Jan.
Go to the model page on @huggingface, hit "Use this model" and pick 👋🏻 Jan.
Jan runs on llama.cpp - if it works there, it works here.

English
Cortex retweetledi
Cortex retweetledi

Run Devstral-Small in 👋 Jan
- Find the GGUF model on @huggingface
- Click "Use this model"
- Select Jan
Jan supports GGUF, so any GGUF model you find, you can run locally in Jan.
English
Cortex retweetledi
Cortex retweetledi

GGUF models on Hugging Face run in Jan with one click.
Click "Use this model", select 👋 Jan.
Thanks to @huggingface folks, @ggerganov's llama.cpp and the quant crew; @bartowski1182, @UnslothAI, and others.
English



