ck
frontends-team-compass
Our great sponsors
ck | frontends-team-compass | |
---|---|---|
9 | 3 | |
579 | 53 | |
2.4% | - | |
10.0 | 6.9 | |
5 days ago | about 2 months ago | |
Python | ||
Apache License 2.0 | BSD 3-clause "New" or "Revised" License |
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
ck
-
Do you have an idle @Nvidia GPU? Can you please help the community test the beta version of the open-source framework for composable benchmarking and design space exploration of ML Systems?
If you have an idle Nvidia GPU and Linux, can you please help the community test the beta version of the open-source framework for composable benchmarking and design space exploration of ML systems: https://github.com/mlcommons/ck/blob/master/cm-mlops/project/mlperf-inference-v3.0-submissions/docs/crowd-benchmark-mlperf-bert-inference-cuda.md ?
- Sharing a tutorial to modularize ML Systems
-
[N] Tutorial to modularize ML Systems benchmarks from the Student Cluster Competition'22
Hi! Just sharing this tutorial from the Student Cluster Competition at SuperComputing'22 to learn how to modularize and run ML Systems benchmarks. 10 international teams had about 30 minutes to run it and most of them succeeded while sharing their results at the live dashboard . It is a part of the ongoing effort to modularize ML Systems and automate their benchmarking and optimization. Feedback is very welcome!
-
Asking for a favor to test modular ML benchmark for Student Cluster Competition
We would like to ask for a favor: we have prepared a tutorial to help students run the MLPerf inference benchmark across different platforms at the Student Cluster Competition at SuperComputing'22 in a few days: https://github.com/mlcommons/ck/blob/master/docs/tutorials/s... .
We would like to test it across different machines before students run it ;) . If you have time, please help us go through this tutorial and run this benchmark on any available system - it should not take more than 20..30 minutes.
If you encounter any issues, please report them at https://github.com/mlcommons/ck/issues so that we could fix them before the competition.
Thank you for supporting this community project!
- MLCommons is creating a new working group to modularize ML Systems
-
[N] Open working group to modularize ML Systems
Just to let you know that we are preparing a new working group at MLCommons to help the community modularize ML/AI Systems and automate their benchmarking, optimization and deployment. It will be based on the MLPerf methodology and MLCommons "Collective Knowledge" automation meta-framework that was already used to automate recent MLPerf inference benchmark submissions from Qualcomm, HPE, Lenovo, Krai, DELL and OctoML. Please join the group here to provide your feedback and help with this community effort! Thank you!
-
[N] Releasing the MLPerf automation framework to plug in real-world ML models, data sets and tools
Hi! Just sharing our open-source project to automate MLPerf benchmarks and make it easier for everyone to plug in their real-world ML models, data sets, frameworks/SDKs and hardware. Feedback is very welcome!
-
Research software code is likely to remain a tangled mess
– Their solution product https://cknowledge.io/ and source code https://github.com/ctuning/ck\
I guess it should be helpful to the researchers community.
frontends-team-compass
-
Jupyter + copilot
You may be interested in reading/leaving feedback on https://github.com/jupyterlab/team-compass/issues/172
- Research software code is likely to remain a tangled mess
-
I'm working on a tool to help people learn data science with screen readers, so please give me feedback!
On the other hand, it seems that there will be accessibility improvements for Jupyter in the not too distant future. https://github.com/jupyterlab/team-compass/issues/98
What are some alternatives?
osmnx - OSMnx is a Python package to easily download, model, analyze, and visualize street networks and other geospatial features from OpenStreetMap.
seurat - R toolkit for single cell genomics
SmartSim - SmartSim Infrastructure Library.
docker-stacks - Ready-to-run Docker images containing Jupyter applications
budgetml - Deploy a ML inference service on a budget in less than 10 lines of code.
dslinter - `dslinter` is a pylint plugin for linting data science and machine learning code. We plan to support the following Python libraries: TensorFlow, PyTorch, Scikit-Learn, Pandas and NumPy.
awesome-jupyter - A curated list of awesome Jupyter projects, libraries and resources
aws-deployment-framework - The AWS Deployment Framework (ADF) is an extensive and flexible framework to manage and deploy resources across multiple AWS accounts and regions based on AWS Organizations.
JupyterLab - JupyterLab computational environment.
terraform-tui - Terraform textual UI
best-of-jupyter - 🏆 A ranked list of awesome Jupyter Notebook, Hub and Lab projects (extensions, kernels, tools). Updated weekly.