Transformer Lab

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Transformer Lab

Transformer Lab

@transformerlab

The Modern User Interface for ML Research. Open source. https://t.co/WdcBhhEZQt

Katılım Aralık 2023
137 Takip Edilen829 Takipçiler
Transformer Lab retweetledi
Deep Gandhi
Deep Gandhi@deepgandhi_07·
Presenting at Upper Bound 2026 on how ML research platforms have evolved past traditional HPC schedulers. "Beyond Slurm: Modern Advancements in Machine Learning Research Platforms" Thu May 21 · 3–4pm MDT MacEwan Stage (Salon 2) Would be glad to connect with others there! #UpperBound2026 @AmiiThinks @transformerlab
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Transformer Lab
Transformer Lab@transformerlab·
Here's a demo of how easy it is to train a text to speech model in Transformer Lab. 🎙️ Base model: orpheus-3b-0.1-ft 📚 Dataset: campwill/HAL-9000-Speech 📝 Eval: bosonai/EmergentTTS-Eval 🧪 Train, sample, and listen back without leaving the UI ⌨️ GUI shown here, agent friendly CLI also available Get started: lab.cloud Links to artifacts👇
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Transformer Lab retweetledi
dstack
dstack@dstackai·
.@transformerlab has integrated with dstack! Transformer Lab is an agent friendly ML research platform for training models with modern experiment tracking, automated hyperparameter sweeps, and persistent storage across ephemeral nodes. With dstack, those workflows run across any GPU cloud or on-prem cluster. Both projects are open source. Check it out 👇🏽 lab.cloud/blog/dstack-la…
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Transformer Lab
Transformer Lab@transformerlab·
Transformer Lab now integrates with @dstackai. Run your full research workflow in Transformer Lab orchestrating compute through dstack across GPU clouds, Kubernetes and bare-metal clusters. ⚙️ Provision GPUs via dstack's unified control plane for compute orchestration. 🧪 Track experiments seamlessly via Transformer Lab; no digging through scattered logs across clusters / environments. 📦 Checkpointing, auto-recovery, global object storage to scale experiments. 🤖 Hyperparameter sweep automation to test more model configs faster. All open source. Get started here: lab.cloud/for-teams/
Transformer Lab@transformerlab

x.com/i/article/2047…

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Transformer Lab
Transformer Lab@transformerlab·
Transformer Lab “tasks” let you run complex ML workflows with a single click. Import a task from the Task Gallery, configure your parameters, and run. Each task packages all setup and dependencies so you skip the troubleshooting. 🎬 Our Wan2.1 text-to-video task is a great example. Running it normally requires significant setup work. As a Transformer Lab task, you one-click import it, type a prompt and you're generating video. 🧪 The Task Gallery covers training, fine-tuning, evaluation and more. 🛠️ Create your own tasks and share them with your team. 💻 Runs on your local machine, an on-prem cluster or a cloud provider like @runpod. Open source and free. Try it out: lab.cloud
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Transformer Lab retweetledi
Transformer Lab
Transformer Lab@transformerlab·
🚀 Support for Runpod is live on Transformer Lab for Teams. Add your Runpod API key and start running workloads on Transformer Lab for Teams using Runpod instances. What you can do: ⚡ Queue workloads to run automatically or reserve an on-demand instance with Jupyter, VSCode and vLLM on dedicated Runpod GPUs 🧪 Submit training and eval jobs with built-in experiment tracking 🔄 Automate checkpointing and failure recovery. If an instance drops, your job restarts from the last saved checkpoint 💾 Store artifacts persistently, so model weights and eval results are accessible after the Runpod instance terminates 🔗 Supports SLURM and SkyPilot so teams that use Runpod alongside on-prem clusters can manage everything from a unified interface Get started here: lab.cloud/blog/runpod-no…
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Transformer Lab
Transformer Lab@transformerlab·
We launched ComfyUI as a task in Transformer Lab. Set up Transformer Lab, pick any compute you have access to, launch the task, and you're in ComfyUI. No environment setup. 🖥️ Run on an isolated Runpod pod 🏗️ Run on your own HPC cluster 💻 Run locally All from within Transformer Lab. Same interface, same workflow. If you've been using pre-built templates to avoid the setup pain, this does the same thing but on whatever compute you want, including your own hardware. Open source and free. Get started here: lab.cloud
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Transformer Lab retweetledi
clem 🤗
clem 🤗@ClementDelangue·
Looks like it’s confirmed Cursor’s new model is based on Kimi! It reinforces a couple of things: - open-source keeps being the greatest competition enabler - another validation for chinese open-source that is now the biggest force shaping the global AI stack - the frontier is no longer just about who trains from scratch, but who adapts, fine-tunes, and productizes fastest (seeing the same thing with OpenClaw for example).
Lee Robinson@leerob

Yep, Composer 2 started from an open-source base! We will do full pretraining in the future. Only ~1/4 of the compute spent on the final model came from the base, the rest is from our training. This is why evals are very different. And yes, we are following the license through our inference partner terms.

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Transformer Lab
Transformer Lab@transformerlab·
NVIDIA DGX support is now live in Transformer Lab. Got an NVIDIA DGX Spark? Skip the hassle of setting up CUDA 13 and other ML libraries on your machine. Transformer Lab handles environment setup while managing your entire workflow: training/fine-tuning/evals, tracking runs, storing datasets/checkpoints and more. Try it out. Open source, free to use. Feedback welcome. lab.cloud/docs/install/
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Transformer Lab
Transformer Lab@transformerlab·
If you’re setting up an ML research cluster, we wrote this guide for you: The Definitive Guide to Building a Machine Learning Research Cluster From Scratch: • Technical blueprint for single “under-the-desk” GPU server to scaling university-wide cluster for 1,000+ users • Tried and tested configurations for drivers, orchestration, storage, scheduling, and UI with a bias toward modern, simple tooling that is open source and easy to maintain. • Step-by-step install guides (CUDA, ROCm, k3s, Rancher, SLURM/SkyPilot paths) We’ve helped research labs of all sizes build their ML platforms with the goal to create a unified environment to unlock researchers to do their best work. Different budgets, different constraints, but the same questions come up: • How do we evolve from a single workstation into shared compute gracefully? • Selecting an orchestrator / scheduler: SLURM vs. SkyPilot vs. Kubernetes vs. Others? • What storage approach won’t collapse once data + users grow? • How do we avoid building a fragile set of scripts that are hard to maintain? Read the full guide on GitHub (PRs/issues welcome): github.com/transformerlab…
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Transformer Lab
Transformer Lab@transformerlab·
This is amazing to hear -- there is so much opportunity together. Hugging Face has been a terrific steward of open source AI.
Georgi Gerganov@ggerganov

Today ggml.ai joins Hugging Face Together we will continue to build ggml, make llama.cpp more accessible and empower the open-source community. Our joint mission is to make local AI easy and efficient to use by everyone on their own hardware.

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Transformer Lab
Transformer Lab@transformerlab·
6000 commits and we're just getting started!
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Transformer Lab retweetledi
MozillaVentures
MozillaVentures@MozillaVentures·
ML research teams have been stuck with outdated tooling for far too long. Excited to see @TransformerLab launch Transformer Lab for Teams — bringing open, modern infrastructure to real research workflows. Mozilla Ventures is proud to support this team.
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