- Main
- Computers - Internet & World Wide Web
- Kubernetes for MLOps - Scaling...
Kubernetes for MLOps - Scaling Enterprise Machine Learning, Deep Learning, and AI
Sam CharringtonSukakah Anda buku ini?
Bagaimana kualitas file yang diunduh?
Unduh buku untuk menilai kualitasnya
Bagaimana kualitas file yang diunduh?
Enterprise interest in machine learning and artificial intelligence continues to grow, with
organizations dedicating increasingly large teams and resources to ML/AI projects. As
businesses scale their investments, it becomes critical to build repeatable, efficient, and
sustainable processes for model development and deployment.
The move to drive more consistent and efficient processes in machine learning parallels
efforts towards the same goals in software development. Whereas the latter has come to be
called DevOps, the former is increasingly referred to as MLOps.
While DevOps, and likewise MLOps, are principally about practices rather than technology, to
the extent that those practices are focused on automation and repeatability, tools have been
an important contributor to their rise. In particular, the advent of container technologies like
Docker was a significant enabler of DevOps, allowing users to drive increased agility, efficiency,
manageability, and scalability in their software development efforts.
Containers remain a foundational technology for both DevOps and MLOps. Containers provide
a core piece of functionality that allow us to run a given piece of code—whether a notebook,
an experiment, or a deployed model—anywhere, without the “dependency hell” that plagues
other methods of sharing software. But, additional technology is required to scale containers
to support large teams, workloads, or applications. This technology is known as a container
orchestration system, the most popular of which is Kubernetes.
organizations dedicating increasingly large teams and resources to ML/AI projects. As
businesses scale their investments, it becomes critical to build repeatable, efficient, and
sustainable processes for model development and deployment.
The move to drive more consistent and efficient processes in machine learning parallels
efforts towards the same goals in software development. Whereas the latter has come to be
called DevOps, the former is increasingly referred to as MLOps.
While DevOps, and likewise MLOps, are principally about practices rather than technology, to
the extent that those practices are focused on automation and repeatability, tools have been
an important contributor to their rise. In particular, the advent of container technologies like
Docker was a significant enabler of DevOps, allowing users to drive increased agility, efficiency,
manageability, and scalability in their software development efforts.
Containers remain a foundational technology for both DevOps and MLOps. Containers provide
a core piece of functionality that allow us to run a given piece of code—whether a notebook,
an experiment, or a deployed model—anywhere, without the “dependency hell” that plagues
other methods of sharing software. But, additional technology is required to scale containers
to support large teams, workloads, or applications. This technology is known as a container
orchestration system, the most popular of which is Kubernetes.
Kategori:
Tahun:
2020
Edisi:
2
Bahasa:
english
Nama seri:
This Week in ML
File:
PDF, 2.66 MB
Tag Anda:
IPFS:
CID , CID Blake2b
english, 2020
Selama 1-5 menit file akan dikirim ke email Anda.
Dalam 1-5 menit file akan dikirim ke Telegram Anda.
Perhatian: Pastikan bahwa Anda telah menautkan akun Anda ke Bot Telegram Z-Library.
Dalam 1-5 menit file akan dikirim ke perangkat Kindle Anda.
Catatan: Anda perlu memverifikasi setiap buku yang ingin Anda kirim ke Kindle Anda. Periksa email Anda untuk yakin adanya email verifikasi dari Amazon Kindle.
Pengubahan menjadi sedang diproses
Pengubahan menjadi gagal
Manfaat status premium
- Kirimlah ke Pembaca online
- Batas unduhan yang ditingkatkan
- Konversi file
- Lebih banyak hasil pencarian
- Manfaat yang lain