Hae
  • Hae
  • Omat Kuvataulut

MLOps - Through the ages

Luo Kuvakäsikirjoitus
Kopioi tämä kuvakäsikirjoitus
MLOps - Through the ages
Storyboard That

Luo oma kuvakäsikirjoitus

Kokeile ilmaiseksi!

Luo oma kuvakäsikirjoitus

Kokeile ilmaiseksi!

Kuvakäsikirjoitus Teksti

  • Liuku: 1
  • Remember when we used to throw our models over the wall to ops and hope for the best
  • Now it's all about CI/CD pipelines with GitHub Actions or GitLab CI, continuous training with Vertex AI, and automated deployments with Argo CD and Tekton.
  • True. And managing dependencies without containerization was a nightmare. Thank goodness for Docker, Podman, and Helm charts.
  • Liuku: 2
  • Back then, we didn't even think about model drift or monitoring production metrics.
  • Exactly! Today, tools like Prometheus, Grafana, Evidently AI, and WhyLabs help us catch performance issues and data drift early.
  • And remember when version control meant emailing model files back and forth? Now we have DVC, MLflow, and Weights Biases for experiment tracking.
  • It's amazing how practices have evolved. Keeps us on our toes!
  • Liuku: 3
  • Imagine the future: fully autonomous pipelines with AIOps platforms like DataRobot, and real-time collaborative model training with Federated Learning frameworks!
  • Yeah! And AI-driven MLOps tools that not only predict and fix issues but also optimize resource allocation in real-time using reinforcement learning algorithms.
  • Plus, we'll have advanced explainability tools like SHAP and LIME integrated directly into production systems, providing real-time insights and transparency.
  • And don't forget the potential of quantum computing to revolutionize training times and model complexity. The next few years are going to be groundbreaking for MLOps!
  • Liuku: 0
  • Oh yeah! "It works on my machine" was our favorite excuse before Docker and Kubernetes.
Yli 30 miljoonaa kuvakäsikirjoitusta luotu