Kat Morgan

Kat Morgan

Senior Community Engineer

The Pulumi 'Push to start' GitOps Experience

The Pulumi 'Push to start' GitOps Experience

As a skeptic of “quick starts” myself, I approach most marketing promises with a measure of cautious excitement. If the great and powerful algorithm, friends, or a peer brought your attention here, then I invite you to take this one seriously.

Pulumi, with its full support of many general-purpose programming languages, can appear like a chore to get started with. The feeling can haunt seasoned developers as much as practitioners new to infrastructure code.

However, I’ll show you that finding the proverbial easy street is easier than you might believe. The pulumi new developer story just gets sweeter when combined with a few other nice-to-have conveniences.

Read more →

Unlocking the Benefits of LangChain AI for Dev, Sec and Ops

Unlocking the Benefits of LangChain AI for Dev, Sec and Ops

The emergence of DevOps revolutionized software development. Now, with AI powered tools like LangChain, these transformations are being accelerated. Unsurprisingly, our distinguished speaker at the launch of Pulumi’s in-person AI Talks, Patrick Debois, who coined the term “DevOps,” has recently tuned into LLM and GenAI Ops using the Langchain framework.

Read more →

Deploy AI Models on Amazon SageMaker using Pulumi Python IaC

Deploy AI Models on Amazon SageMaker using Pulumi Python IaC

Running models from Hugging Face on Amazon SageMaker is a popular deployment option for AI/ML services. While the SageMaker console allows for provisioning these cloud resources, this deployment pattern is labor intensive to document and vulnerable to human errors when reproducing as a regular operations practice. Infrastructure as Code (IaC) offers a reliable and easy to duplicate deployment practice. By developing this IaC with Pulumi, practitioners can choose to write their infrastructure code in Python and seamlessly develop both AI application code and IaC code in the same language.

Read more →

The Real AI Challenge is Cloud, not Code!

The Real AI Challenge is Cloud, not Code!

The AI industry is stealing the show as tech’s goldrush of the ’20s. Just looking at ChatGPT’s record setting user growth, and rapid 3rd party integration by top brands, it is not surprising the hype suggests this is the beginning of a major digital transformation.

However, using AI/ML in your own products has some major challenges and obstacles. Below is a diagram of the end to end workflow of building and using an AI model: preparing the data, training a model, fine-tuning a model, hosting and running a model, building a backend service to serve the model, and building the user interface that interacts with the model. Most AI engineers are only involved in a few steps of the process. However, there is one challenge that is common across the entire workflow: creating and managing the cloud infrastructure is hard.

Read more →