tomgrek / ml-deployment-demoLinks
ML Deployment, Two Ways
☆56Updated 6 years ago
Alternatives and similar repositories for ml-deployment-demo
Users that are interested in ml-deployment-demo are comparing it to the libraries listed below
Sorting:
- Deploy your ML model as an API on AWS☆41Updated 4 years ago
- ☆38Updated 5 years ago
- My presentation at ODSC India 2018 about Deep Learning with Apache Spark☆27Updated 6 years ago
- Guide on creating an API for serving your ML model☆66Updated 3 years ago
- Contains the code and deck for the presentation on Applying Deep Transfer Learning for NLP in Analytics Vidhya's DataHack Summit 2019☆82Updated 5 years ago
- Example custom model image trainable and distributable via AWS SageMaker☆35Updated 2 years ago
- A Guide to Scaling Machine Learning Models in Production☆88Updated 7 years ago
- ☆50Updated 4 years ago
- Repository for a data science starter app using Flask, Angular and Docker. https://medium.com/@dvelsner/deploying-a-simple-machine-learni…☆88Updated 7 years ago
- BERT, AWS RDS, AWS Forecast, EMR Spark Cluster, Hive, Serverless, Google Assistant + Raspberry Pi, Infrared, Google Cloud Platform Natura…☆139Updated 4 years ago
- Repo that generates https://github.com/full-stack-deep-learning/fsdl-text-recognizer-project☆58Updated 2 years ago
- Text summarization algorithm for the Capstone Project at Springboard code bootcamp☆54Updated 2 years ago
- Code and resources for my blog and articles to share Data Science and AI knowledge and learnings with everyone☆211Updated 5 years ago
- Codes used for the hack session in DHS 2019☆53Updated 5 years ago
- ☆155Updated 4 years ago
- Deep Learning Summer School + Tensorflow + OpenCV cascade training + YOLO + COCO + CycleGAN + AWS EC2 Setup + AWS IoT Project + AWS SageM…☆174Updated 3 years ago
- Sample Notebooks for PipelineAI☆44Updated 2 years ago
- Kaggler TV☆54Updated 5 years ago
- ☆33Updated last year
- Collection of presentation of my work on various platforms and meetups☆22Updated 6 years ago
- This Repository contains the material for my tutorial "Managing the end-to-end machine learning lifecycle with MLFlow" at pyData/pyCon Be…