Blog / Henrik Skogström
Henrik Skogström

Henrik Skogström

At Valohai I lead the growth team. My mission is to ensure that no company tries to reinvent the wheel and waste their resources building their own MLOps tooling.

Blog
November 21, 2023 Henrik Skogström
Easiest way to fine-tune Mistral 7B

We’ve built a template for fine-tuning Mistral 7B on Valohai. Mistral is an excellent combination of size and performance, and by fine-tuning it using a technique called LoRA, we can be very cost-efficient.

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Blog
November 06, 2023 Henrik Skogström
Dive into Valohai with our new serverless trial

We’re thrilled to announce our new free trial for all aspiring ML pioneers! With the new free trial, we’ve made it easy to kickstart your journey with our handpicked templates.

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Blog
August 23, 2023 Henrik Skogström
Why closed-source LLMs are not suited for production

ChatGPT continues to capture the public attention and many are looking to incorporate similar functionalities in their products. But is it a safe route for production-grade applications?

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May 29, 2023 Henrik Skogström
Enjoy Hugging Face's model library with Valohai's templates

We've built a set of Hugging Face templates that make it super simple to use the latest and greatest in open-source ML. These templates are available through the Valohai Ecosystem.

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Blog
March 16, 2023 Henrik Skogström
Large Language Models for the Rest of Us

With the popularization of LLM's developers and product folks are flocking to the space and testing out novel concepts. How will LLM products evolve over time?

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January 25, 2023 Henrik Skogström
Introducing the Valohai Ecosystem

The Valohai Ecosystem is a library of templates that enable users to kick off their projects with ease and reduce the amount of boilerplate code that needs to be written.

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Blog
April 26, 2022 Henrik Skogström
MLOps for IoT and Edge

There's a new wave of automation being enabled by the combination of machine learning and smart devices. With the complexity of use cases and amount of devices increasing, we'll have to adopt MLOps practices designed for IoT and edge.

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January 17, 2022 Henrik Skogström
Managing AI Products: Feasibility, Desirability and Viability

Product management is as massive a topic as machine learning so let's start with a fundamental question. When is it worthwhile to develop an AI product? A helpful tool most PMs have seen for this is the Sweet Spot for Innovation that IDEO popularized.

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Blog
October 28, 2021 Henrik Skogström
Machine learning lifecycle doesn’t end with the model

Let me preface this article by saying there isn’t a single accepted definition of a machine learning lifecycle. Most articles about the machine learning lifecycle tend to focus only on a small portion of the actual lifecycle: the Experimentation loop.

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Blog
September 03, 2021 Henrik Skogström
DLOps: MLOps for Deep Learning

DLOps, deep learning operations, is an evolution of MLOps, looking to answer the unique operational challenges that deep learning sets. A skeptic may look at it as unnecessarily muddying the waters with a new buzzword.

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Blog
August 26, 2021 Henrik Skogström
Three ways to install Valohai

One of the unique aspects of Valohai is that despite being a proprietary platform it can run in fully private, even airgapped, environments. Why is this important? Machine learning often revolves around data that is sensitive and thus data security is a fundamental requirement.

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August 24, 2021 Henrik Skogström
What is the AIIA blueprint and how does Valohai fit into it?

The AIIA blueprint is an excellent starting resource for teams looking to implement their stack for machine learning development. The initiative draws inspiration from other popularized tech stacks.

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Blog
July 05, 2021 Henrik Skogström
Data Augmentation Helps Improve Model Accuracy

Putting together a suitable dataset for training a model can be one of the biggest challenges. Data augmentation is an approach where you start with an existing dataset and expand it to have more variety.

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Blog
June 15, 2021 Henrik Skogström
The Best Machine Learning Podcasts

Summer is here and hopefully, for most of us, it means time to decompress. But if you are like me and learning is relaxing, podcasts are a great way to enjoy the summer weather while learning.

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May 04, 2021 Henrik Skogström
3 Roles in a Machine Learning Team (and How to Connect Them)

It's becoming more important to think about the competencies of a team rather than expecting every individual to be an expert at everything related to machine learning.

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March 25, 2021 Henrik Skogström
MLOps for AI Consultancies

How can MLOps make consultant-client relationships more productive? Starting with machine learning is a massive, strategic undertaking, and many are turning to consultancies and contractors to take the first steps with AI.

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Blog
March 18, 2021 Henrik Skogström
If You Missed the MLOps Webinar

March 16th, we held a webinar to follow up on our MLOps eBook. Together with our co-authors, we wanted to tackle the goal we set for MLOps in the eBook: “The goal of MLOps is to reduce technical friction to get the model from an idea into production in the shortest possible time to market with as little risk as possible.”

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Blog
December 21, 2020 Henrik Skogström
What Is The Difference Between DevOps And MLOps?

If you are involved with production machine learning in any way, understanding MLOps is essential. For people with software development experience, the easiest way to understand MLOps is to draw a parallel between it and DevOps.

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December 10, 2020 Henrik Skogström
The Bus Factor in Machine Learning development

The bus factor is a common term in software engineering describing the risk of a key contributor disappearing unexpectedly from a project – because they get hit by a bus. In machine learning the bus factor is magnified significantly.

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November 30, 2020 Henrik Skogström
When Should a Machine Learning Model Be Retrained?

Should a machine learning model be retrained each time new observations are available (or otherwise very frequently)? The answer is “it depends”, but this article looks at two components to consider: the use case and the costs.

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November 24, 2020 Henrik Skogström
The Easiest Way to Become a Valohai User

Buying an MLOps platform is tricky and for that reason we’ve introduced a model where teams can sign up for a two-week proof-of-concept project to test out our platform with their environment and projects.

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November 17, 2020 Henrik Skogström
When Is a Machine Learning Model Good Enough for Production?

As you start incorporating machine learning models into your end-user applications, the question comes up: “When is the model good enough to deploy?” There simply is no single right answer.

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Blog
October 26, 2020 Henrik Skogström
The MLOps Stack

To make it easier to consider what tools your organization could use to adopt MLOps, we’ve made a simple template that breaks down a machine learning workflow into components.

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Blog
October 21, 2020 Henrik Skogström
Risk Management in Machine Learning

Machine learning and artificial intelligence allow businesses to gain new insights and improve their business processes. However, they expose companies to additional risks because humans do not explicitly program the algorithms. Let's look at some of these risks and how data scientists and compliance officers can help mitigate them.

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October 09, 2020 Henrik Skogström
5 Signs You Might Be in Need of an MLOps Platform

Using the MLOps platform allows you to manage everything about machine learning in production, where each new update doesn’t feel like an entirely new project and easily dovetails to the last.

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Blog
September 23, 2020 Henrik Skogström
Why MLOps Is Vital To Your Development Team

To make an analogy to a more traditional industry, machine learning is shipping goods while MLOps is containerization. And much like containerization of global shipping, MLOps is equal parts process and infrastructure.

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Blog
September 07, 2020 Henrik Skogström
Why Are ML Engineers Becoming So Sought After?

For a long time, most machine learning initiatives have been stuck in a persistent state of proofs-of-concept. However, in the past year, we’ve seen a rapid acceleration of machine learning models getting real-world use. Consequently, machine learning engineers are increasingly sought after – nearly catching up to data scientists in posted jobs.

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