Operations | Monitoring | ITSM | DevOps | Cloud

April 2022

CNCF Live: Power up your machine learning - Automated anomaly detection

Our Analytics & ML lead Andrew Maguire recently had a chance to share our new Anomaly Advisor feature with the wider CNCF community. In his demonstration he did some light chaos engineering (using Gremlin and stress-ng) to generate some real anomalies on his infrastructure and watch how it all played out in the Anomaly Advisor in Netdata Cloud. There were also some great questions and discussion from the audience around ML in general and in the observability space itself.

Machine learning model can distinguish antibody targets

A new study shows that it is possible to use the genetic sequences of a person’s antibodies to predict what pathogens those antibodies will target. Reported in the journal Immunity, the new approach successfully differentiates between antibodies against influenza and those attacking SARS-CoV-2, the virus that causes COVID-19.

Machine Learning For Biology Is Starting To Move Towards Retail

There has been a lot of coverage of machine learning (ML) for biological research, for radiology, and for other uses where the direct users are academics, researchers, and medical professionals. However, there is an opportunity for some biological information to be useful in the retail industry. One area is in skincare.

MLOps Pipeline with MLFlow, Seldon Core and Kubeflow

MLOps pipelines are a set of steps that automate the process of creating and maintaining AI/ML models. In other words, Data Scientists create multiple notebooks while building their experiments, and naturally the next step is a transition from experiments to production-ready code. The best way to do this is to build an effective MLOps pipeline. What’s the alternative, I hear you ask? Well, each time you want to create a model, you run your notebooks manually.

Machine learning for infrastructure monitoring and troubleshooting, explained

Learn exactly what machine learning is and how it takes part in the observability, monitoring, and troubleshooting industry. We'll also cover the future of ML trends within the industry, and how Netdata is staying at the forefront of machine learning development.