Pinned Repositories
azure-storage-blob-go
Microsoft Azure Blob Storage Library for Go
bat_echolocation_detection
beer_reviews
cobra
A Commander for modern Go CLI interactions
Course_AWS_Certified_Machine_Learning
odsc_mlops_from_model_to_prod
Machine Learning Operations (MLOps) are essential to build successful Data Science use-cases. Today, ML is powering data driven use-cases that are transforming industries around the world. In order to seize and hold it's competitive advantage business needs to reduce risk therefore a new expertise rises to include data science models in operational systems. According to Gartner Research “While many organizations have experimented with AI proofs of concept, there are still major blockers to operationalizing its development. IT leaders must strive to move beyond the POC to ensure that more projects get to production and that they do so at scale to deliver business value. (July 2020)”. In this session, we will discuss the role of MLOps and how they can help data science models from deployment to maintenance with focus on: keep track of performance degradation overtime from model predictions quality, setting up continuous evaluation metrics and tuning the model performance in both training and serving pipelines that are deployed in production.
parquet-go-source
source provider for parquet-go
python-data-viz-workshop
A 3-hour workshop on data visualization in Python with notebooks and exercises for following along.
pytorch-gnn-tutorial-odsc2021
Repository for GNN tutorial using Pytorch and Pytorch Geometric (PyG) for ODSC 2021
snowloader2
yangp18's Repositories
yangp18/azure-storage-blob-go
Microsoft Azure Blob Storage Library for Go
yangp18/bat_echolocation_detection
yangp18/beer_reviews
yangp18/cobra
A Commander for modern Go CLI interactions
yangp18/Course_AWS_Certified_Machine_Learning
yangp18/odsc_mlops_from_model_to_prod
Machine Learning Operations (MLOps) are essential to build successful Data Science use-cases. Today, ML is powering data driven use-cases that are transforming industries around the world. In order to seize and hold it's competitive advantage business needs to reduce risk therefore a new expertise rises to include data science models in operational systems. According to Gartner Research “While many organizations have experimented with AI proofs of concept, there are still major blockers to operationalizing its development. IT leaders must strive to move beyond the POC to ensure that more projects get to production and that they do so at scale to deliver business value. (July 2020)”. In this session, we will discuss the role of MLOps and how they can help data science models from deployment to maintenance with focus on: keep track of performance degradation overtime from model predictions quality, setting up continuous evaluation metrics and tuning the model performance in both training and serving pipelines that are deployed in production.
yangp18/parquet-go-source
source provider for parquet-go
yangp18/python-data-viz-workshop
A 3-hour workshop on data visualization in Python with notebooks and exercises for following along.
yangp18/pytorch-gnn-tutorial-odsc2021
Repository for GNN tutorial using Pytorch and Pytorch Geometric (PyG) for ODSC 2021
yangp18/snowloader2
yangp18/workshop
AI and Machine Learning with Kubeflow, Amazon EKS, and SageMaker