Harness was initially developed to deploy pipelines and provide cost management for applications hosted in Kubernetes environments; they are now expanding on that vision with the first CI/CD and cloud cost management platform fully available across the three major public cloud platforms.
Google announces Cloud Build: CI CD for the Google Cloud Platform
Download Zip: https://jinyurl.com/2vHCwh
Each cloud provider requires dedicated engineering expertise and tools to manage specific cloud provider nuances. This slows down engineering teams that are already burdened with too many tools. Today's enterprises need a full-stack CI/CD platform that permits them to move seamlessly between the big three public cloud providers (AWS, Azure and GCP), while allowing them to lower cloud costs. Harness enables customers to consolidate their build, deploy, verify, and cost management processes into a single, streamlined platform without worrying about the complexity of a multi-cloud environment.
commercetools is unique among commerce platforms in that it requires a cloud. The cloud is where extensions and customizations to commercetools are made and hosted. You also need a cloud for building and running your own microservices and frontend(s). commercetools is the only commerce platform that's in the cloud as a first-class citizen, not on the cloud using it just for computer hosting. Commerce platforms that are on the cloud have no access to the underlying cloud and all of the innovation those clouds can unlock.
We at commercetools are multi-tenant SaaS and, therefore, use a cloud in order to run our services. This white paper explains how Google Cloud and commercetools have come together to provide the best platform for your next-generation commerce initiatives.
About GitLabGitLab is The One DevOps Platform for software innovation. As The One DevOps Platform, GitLab provides one interface, one data store, one permissions model, one value stream, one set of reports, one spot to secure your code, one location to deploy to any cloud, and one place for everyone to contribute. The platform is the only true cloud-agnostic end-to-end DevOps platform that brings together all DevOps capabilities in one place.
Platform teams can easily add guardrails to infrastructure CI/CD pipelines (between the plan & apply stages) to ensure all requests for infrastructure are validated before deployment to the cloud. This limits platform team involvement by providing failure messages to end users during their pre-deployment checks which tell them which policies they have violated.
When it comes to modernizing applications or developing modern applications, a consistent hybrid cloud architecture can provide the best of both worlds i.e. pace of innovation with service choices for developers and flexibility with control for IT. However, the right data platform and performance monitoring for applications, can be the difference between low conversion rate due to application malfunctioning and sustaining brand loyalty for businesses with their end-users.
Pulumi offers the most complete infrastructure as code platform for building, deploying and managing modern cloud infrastructure and applications. Pulumi enables cloud engineers to use familiar languages to describe their cloud infrastructure - bringing core software engineering tools and practices to bear on managing and getting the maximum value from their cloud platforms of choice - across dozens of cloud and SaaS providers.
Since the launch of Databricks on Google Cloud in early 2021, Databricks and Google Cloud have been partnering together to further integrate the Databricks platform into the cloud ecosystem and its native services. Databricks is built on or tightly integrated with many Google Cloud native services today, including Cloud Storage, Google Kubernetes Engine, and BigQuery. Databricks and Google Cloud are excited to announce an MLflow and Vertex AI deployment plugin to accelerate the model development lifecycle.
Step 2: Download the google-cloud-mlflow plugin from PyPi onto your cluster. You can do this by downloading directly onto your cluster as a library or run the following pip command in a notebook attached to your cluster: 2ff7e9595c
Comments