ML Models
Tangram, PostgresML & ZenML seem neat. Using Cog to package ML models.
Linksβ
- Lip Reading - Cross Audio-Visual Recognition using 3D Architectures
- Cortex - API platform for machine learning engineers. (Web)
- BentoML - Model Serving Made Easy. (Docs)
- Lobe - Helps you train machine learning models with a free, easy to use tool. (Tweet) (HN)
- Algorithmia - Deploy Autoscaling ML Models using Serverless Microservices. (GitHub)
- How to Deploy ML models with AWS Lambda (2020)
- Verta - MLOps software supports model development, deployment, operations, monitoring.
- Guild AI - Experiment tracking, ML developer tools. (Code)
- Neuralet - Open-source platform for edge deep learning models on GPU, TPU, and more. (Code)
- InterpretML - Fit interpretable models. Explain blackbox machine learning.
- What-If Tool - Visually probe the behavior of trained machine learning models, with minimal coding. (Code)
- LightAutoML - Automatic model creation framework.
- Evidently - Interactive reports to analyze machine learning models during validation or production monitoring. (Web)
- MLCube - Project that reduces friction for machine learning by ensuring that models are easily portable and reproducible. (Docs)
- Service Streamer - Boosting your Web Services of Deep Learning Applications.
- Shapash - Makes Machine Learning models transparent and understandable by everyone. (Web) (HN)
- BudgetML: Deploy ML models on a budget (HN)
- Introducing Model Search: An Open Source Platform for Finding Optimal ML Models (2021)
- Model Search - Framework that implements AutoML algorithms for model architecture search at scale.
- Embedding stores (2021)
- Running ML models in a game (and in Wasm!) (2020)
- Deep learning model compression (2021)
- ModelDB - Open Source ML Model Versioning, Metadata, and Experiment Management.
- Gradio - Generate an easy-to-use UI for your ML model, function, or API with only a few lines of code. (Code)
- Awesome Model Quantization
- Tracking the Performance of Your Machine Learning Models With MLflow (2021)
- Counterfit - CLI that provides a generic automation layer for assessing the security of ML models.
- Convect - Instant Serverless Deployment of ML Models. (HN)
- Using Argo to Train Predictive Models (2021) (HN)
- Yellowbrick - Visual analysis and diagnostic tools to facilitate machine learning model selection. (Docs)
- Deep Learning Model Convertors
- Tuning Model Performance (2021)
- SHAP - Game theoretic approach to explain the output of any machine learning model.
- Lazy Predict - Helps build a lot of basic models without much code and helps understand which models works better without any parameter tuning.
- How to Monitor Models (2020)
- How to Serve Models (2020)
- StudioML - Python model management framework. (Code)
- MLapp - ML model serving app based on APIs.
- Machine Learning Hyperparameter Optimization with Argo (2021)
- Snakepit - Coqui's machine learning job scheduler.
- MLServer - Inference server for your machine learning models, including support for multiple frameworks, multi-model serving and more. (Docs)
- SpotML - Managed ML Training on Cheap AWS/GCP Spot Instances. (HN)
- Mosaic ML - Making ML Training Efficient. (Tweet)
- RecoEdge - Deploy recommendation engines with Edge Computing.
- MLRun - Open-Source MLOps Orchestration Framework.
- PrimeHub - Toil-free multi-tenancy machine learning platform in your Kubernetes cluster. (Docs)
- MLeap - Deploy ML Pipelines to Production. (Docs)
- ServingMLFastCelery - Working example for serving a ML model using FastAPI and Celery.
- Cog - Containers for machine learning. (HN) (Tweet)
- Explaining Machine Learning Models: A Non-Technical Guide to Interpreting SHAP Analyses (2021)
- Improving a Machine Learning System Is Hard (2021)
- Removal-based explanations - Lightweight implementation of removal-based explanations for ML models.
- Gordo - Building thousands of models with timeseries data to monitor systems.
- Mosec - Model Serving made Efficient in the Cloud.
- MLNotify - Add just 1 import line and MLNotify will let you know the second it's done.
- Build models like we build open-source software (2021) (HN)
- Deepchecks - Python package for comprehensively validating your machine learning models and data with minimal effort.
- Auptimizer - Automatic ML model optimization tool.
- runx - Deep Learning Experiment Management.
- ML Console - Web app to train ML models, for free and client-side. (HN)
- MMDeploy - OpenMMLab Model Deployment Framework. (Docs)
- Wonnx - Aimed at being an ONNX Provider for every GPU on all platforms written in 100% Rust.
- How to Build a Machine Learning Demo in 2022
- Zetane Viewer - ML models and internal tensors 3D visualizer.
- ONNX Model Zoo - Collection of pre-trained, state-of-the-art models in the ONNX format.
- Model Zoo for MindSpore
- Seldon - Machine Learning Deployment for Kubernetes. (GitHub)
- ORMB - Docker for Your ML/DL Models Based on OCI Artifacts.
- Spaces - Hugging Face (Tweet)
- Nanitβs AI Development Process (2022)
- ailia SDK ML Models
- BentoML - Simplify Model Deployment. (GitHub)
- bentoctl - Fast model deployment with BentoML on cloud platforms.
- ModelCenter - Efficient, Low-Resource, Distributed transformer implementation based on BMTrain.
- PostgresML - End-to-end machine learning system. It enables you to train models and make online predictions using only SQL, without your data ever leaving your favorite database. (Web) (HN)
- UniLM AI - Pre-trained models across tasks (understanding, generation and translation), languages, and modalities.
- Domino - Discover slices of data on which your models underperform.
- Merlin - Kubernetes-friendly ML model management, deployment, and serving.
- Baseten - Build ML-powered applications. (HN)
- Triton Inference Server - Provides a cloud and edge inferencing solution optimized for both CPUs and GPUs.
- Feature Store - Feature store co-designed with a data platform and MLOps framework. (Announcement)
- Auto-ViML - Automatically Build Variant Interpretable ML models fast.
- Angel - Flexible and Powerful Parameter Server for large-scale machine learning.
- Trainer - General purpose model trainer, as flexible as it gets.
- onnxcustom - Tutorial on how to convert machine learned models into ONNX.
- Vetiver - Version, share, deploy, and monitor models.
- Cloud TPU VMs are generally available (2022) (HN)
- NannyML - Detecting silent model failure.
- Pydra - Pydantic and Hydra for configuration management of model training experiments (2022)
- BlindAI - Confidential AI inference server.
- Vertigo - AI for IoT & The Edge.
- Compair - Model evaluation utilities.
- LightAutoML - Fast and customizable framework for automatic ML model creation (AutoML).
- MLEM - Version and deploy your ML models following GitOps principles. (Web)
- Serving ML at the Speed of Rust (2022) (HN)
- Sematic - Open-source framework to build ML pipelines faster. (Web) (HN)
- ML Platform Workshop - Example code for a basic ML Platform based on Pulumi, FastAPI, DVC, MLFlow and more.
- Mlflow Deployment Controller - Listens MLFlow model registry changes and deploy models based on configurations.
- Truss - Serve any model without boilerplate code. (HN) (Docs)
- Remote Runner - Easy pythonic way to migrate your python training scripts from a local environment to a powerful cloud-backed instance.
- BMList - List of big pre-trained models (GPT-3, DALL-E2...).
- ModelBox - Extensible machine learning model store and model transformation and distribution service.