onepanel
MetaSpore
Our great sponsors
onepanel | MetaSpore | |
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4 | 11 | |
696 | 627 | |
0.0% | 0.0% | |
0.0 | 3.7 | |
about 1 year ago | 21 days ago | |
Go | Python | |
Apache License 2.0 | Apache License 2.0 |
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.
onepanel
- Onepanel - open source machine learning IDE that you can deploy in any cloud or on-premises
- Onepanel - open source alternative to AWS SageMaker you can run on any cloud or on-premises
- Onepanel – Cloud-native deep learning platform
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[P] Onepanel - latest open source release now includes browser accessible deep learning desktop, hyperparameter tuning and Python DSL for defining parallel data processing or training pipelines.
GitHub repository: https://github.com/onepanelio/onepanel Documentation: https://docs.onepanel.ai
MetaSpore
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Quickly develop risk control algorithms in business scenarios based on MetaSpore
The evaluation problems related to financial loans are mainly based on tabular data, so the importance of feature engineering is self-evident. The common features in the dataset include ID type, Categorical type, and continuous number type, which require common data handling such as EDA, missing value completion, outlier processing, normalization, feature binning, and importance assessment. The process can reference the GitHub codebase: https://github.com/meta-soul/MetaSpore/blob/main/demo/dataset, which part about tianchi_loan instructions.
DMetaSoul uses MetaSpore on AlphaIDE to quickly implement a loan default rate prediction model on an open-source dataset and build a scorecard based on this model. Based on the Demo system of this version, the methods of feature derivation, binning, and screening can be more delicate, which often determines the upper limit of the performance of the risk control system. Finally, give the address of the code base and the AlphaIDE trial link (AlphaIDE tutorial): Default rate forecast: https://github.com/meta-soul/MetaSpore/tree/main/demo/riskmodels/loan_default MetaSpore's one-stop machine learning development platform: https://github.com/meta-soul/MetaSpore AlphaIDE trial link: https://registry-alphaide.dmetasoul.com
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A New One-stop AI development and production platform, AlphaIDE
I’ve posted about LakeSoul, an open-source framework for unified streaming and batch table storage, and MetaSpore, an open-source platform for machine learning.
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Usage Guide:Quickly deploy an intelligent data platform with the One-stop AI development and production platform, AlphaIDE
AlphaIDE is already integrated with MetaSpore. You can test MetaSpore’s introductory tutorial Notebook: https://github.com/meta-soul/MetaSpore/blob/main/tutorials/metaspore-getting-started.ipynb.
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[P]MMML | Deploy HuggingFace training model rapidly based on MetaSpore
Presented here on the lot code: https://github.com/meta-soul/MetaSpore/compare/add_python_preprocessor
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MMML | Deploy HuggingFace training model rapidly based on MetaSpore
DMetaSoul aims at the above technical pain points, abstracting and uniting many links such as model training optimization, online reasoning, and algorithm experiment, forming a set of solutions that can quickly apply offline pre-training model to online. This paper will introduce how to use the HuggingFace community pre-training model to conduct online reasoning and algorithm experiments based on MetaSpore technology ecology so that the benefits of the pre-training model can be fully released to the specific business or industry and small and medium-sized enterprises. And we will give the text search text and text search graph two multimodal retrieval demonstration examples for your reference.
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MMML | Deployment HuggingFace training model rapidly based on MetaSpore
A few days ago, HuggingFace announced a $100 million Series C funding round, which was big news in open source machine learning and could be a sign of where the industry is headed. Two days before the HuggingFace funding announcement, open-source machine learning platform MetaSpore released a demo based on the HuggingFace Rapid deployment pre-training model.
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The design concept of an almighty Opensource project about machine learning platform
2.5 [MetaSpore](https://github.com/meta-soul/MetaSpore**) online algorithm application framework** Offline training frameworks and online Serving services are now available. Then, an algorithm in the business scene landing is still a final step: an online algorithm experiment. In a service scenario, to verify the validity of an algorithm model, a baseline needs to be established and compared with the new algorithm model. Therefore, an online experimental framework is needed which can easily define algorithm experiments, read online features, and call model prediction services. In addition, multiple experiments can be traffic segmented to achieve ABTest effect comparison. A configuration center is also needed to quickly carry out multiple experimental iterations, which can dynamically load refresh experiments and cut flow configurations, support hot loading of experimental parameters, and various debugging and trace functions. This link also directly determines whether the AI model can be finally implemented into practical business applications.
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Almighty Opensource project about machine learning you should try out
MetaSpore, it has to be said, is a new machine learning platform with transcendent qualities that can solve problems that other products cannot. However, as a new open source project, it still has a lot to go, and I'll be keeping an eye on MetaSpore and sharing and reposting more information.
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A new machine learning platform that helps you quickly build industrial-grade recommendation systems
MetaSpore is an open-source one-stop machine learning development platform produced by DMetaSoul, providing the whole process framework and development interface from data preprocessing, model training, offline experiment, and online prediction to online experiment bucket ABTest. It is hoped that users can quickly build industrial-grade AI systems with distributed machine learning training, high-performance model reasoning, high availability AB experimental framework, and other capabilities in a low-code way based on MetaSpore.
What are some alternatives?
horovod - Distributed training framework for TensorFlow, Keras, PyTorch, and Apache MXNet.
LakeSoul - LakeSoul is an end-to-end, realtime and cloud native Lakehouse framework with fast data ingestion, concurrent update and incremental data analytics on cloud storages for both BI and AI applications.
polyaxon - MLOps Tools For Managing & Orchestrating The Machine Learning LifeCycle
Best_AI_paper_2020 - A curated list of the latest breakthroughs in AI by release date with a clear video explanation, link to a more in-depth article, and code
fake-news - Building a fake news detector from initial ideation to model deployment
Deep-Learning-In-Production - Build, train, deploy, scale and maintain deep learning models. Understand ML infrastructure and MLOps using hands-on examples.
mpi-operator - Kubernetes Operator for MPI-based applications (distributed training, HPC, etc.)
CLIP - CLIP (Contrastive Language-Image Pretraining), Predict the most relevant text snippet given an image
netron - Visualizer for neural network, deep learning and machine learning models
AirSim - Open source simulator for autonomous vehicles built on Unreal Engine / Unity, from Microsoft AI & Research
skyhookml - SkyhookML is an easy-to-use web platform for computer vision.
kubernetes-operator-roiergasias - 'Roiergasias' kubernetes operator is meant to address a fundamental requirement of any data science / machine learning project running their pipelines on Kubernetes - which is to quickly provision a declarative data pipeline (on demand) for their various project needs using simple kubectl commands. Basically, implementing the concept of No Ops. The fundamental principle is to utilise best of docker, kubernetes and programming language features to run a workflow with minimal workflow definition syntax. It is a Go based workflow running on command line or Kubernetes with the help of a custom operator for a quick and automated data pipeline for your machine learning projects (a flavor of MLOps).