Management Dashboard for Torchserve
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Updated
Jan 31, 2023 - Python
Management Dashboard for Torchserve
PMML scoring library for Scala
Pushing Text To Speech models into production using torchserve, kubernetes and react web app 😄
An end-to-end Machine Learning project from writing a Jupyter notebook to check the viability of the solution, to breaking down the same into modular code, creating a Flask web app integrated with a HTML template to make a website interface, and deploying on AWS and Azure.
Serving large ml models independently and asynchronously via message queue and kv-storage for communication with other services [EXPERIMENT]
🔥🔥🔥🔥🧊🔥🔥 A Data Platform for Monitoring and Detecting Anomalies in Real-Time.
Deployment of 3D-Detection and Tracking pipeline in simulation based on rosbags and real-time.
In the first course of Machine Learning Engineering for Production Specialization, you will identify the various components and design an ML production system end-to-end: project scoping, data needs, modeling strategies, and deployment constraints and requirements; and learn how to establish a model baseline, address concept drift, and prototype…
Simply Automate Monitoring Infrastructure with Terraform, Ansible, AWS EC2, Nginx, Prometheus, Grafana and Github Actions 😄
A EKS-based ML deployment solution
This repo shows how to implement a simple image generation app that uses Jax-Implementation of a conditional VAE, Jax, fastapi, docker, streamlit, heroku, ec2, and cloudflare 😃
Powerful AutoML toolkit
Identifying Patterns and Trends in Campus Placement Data using Machine Learning
This project is part of the Udacity Azure ML Nanodegree. In this project, we use Azure to configure a cloud-based machine learning production model, deploy it, and consume it. We also create, publish, and consume a pipeline.
Base classes and utilities that are useful for deploying ML models.
A regression model to predict calories burnt using values from multiple sensors.
A basic example of deploying machine learning applications
Ensemble Learning | Flask
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