Nico Axtmann
MLOps - What’s the deal behind it?
#1about 3 minutes
The challenge of applying AI research in business
AI research focuses on benchmarks and theory, creating a significant gap between academic breakthroughs and successful industry adoption.
#2about 5 minutes
Introducing MLOps and its growing market landscape
MLOps emerged to address the high failure rate of AI projects, with its market and industry interest growing significantly since 2019.
#3about 5 minutes
What MLOps is and the engineering challenges it solves
MLOps is a set of practices for reliably deploying and maintaining ML models, addressing the complex interplay between data, code, models, and infrastructure.
#4about 3 minutes
Navigating the chaotic and overwhelming MLOps landscape
The MLOps field is currently fragmented with too many tools, conflicting best practices, and a high risk of vendor lock-in, making it difficult to navigate.
#5about 2 minutes
Using data management and open source tools for MLOps
Invest in robust data, model, and experiment management, and leverage open source tools like ONNX, DVC, and Docker to build reproducible systems.
#6about 9 minutes
Why ML engineering is the key to successful AI products
Strong software and ML engineering skills are the primary bottleneck for productionizing AI, making it a critical discipline for any company serious about ML.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
01:01 MIN
Understanding the role and challenges of MLOps
The Road to MLOps: How Verivox Transitioned to AWS
00:11 MIN
The challenge of operationalizing production machine learning systems
Model Governance and Explainable AI as tools for legal compliance and risk management
01:58 MIN
The convergence of ML and DevOps in MLOps
AI Model Management Life Circles: ML Ops For Generative AI Models From Research to Deployment
36:30 MIN
The rise of MLOps and AI security considerations
MLOps and AI Driven Development
06:19 MIN
Defining LLMOps and understanding its core benefits
From Traction to Production: Maturing your LLMOps step by step
01:43 MIN
Defining MLOps and its role in production ML
DevOps for Machine Learning
03:01 MIN
Understanding the core principles and lifecycle of MLOps
MLOps on Kubernetes: Exploring Argo Workflows
12:16 MIN
Understanding the new AI developer stack and MLOps workflow
Developer Experience, Platform Engineering and AI powered Apps
Featured Partners
Related Videos
Effective Machine Learning - Managing Complexity with MLOps
Simon Stiebellehner
DevOps for Machine Learning
Hauke Brammer
The state of MLOps - machine learning in production at enterprise scale
Bas Geerdink
The State of GenAI & Machine Learning in 2025
Alejandro Saucedo
DevOps for AI: running LLMs in production with Kubernetes and KubeFlow
Aarno Aukia
Deployed ML models need your feedback too
David Mosen
MLOps on Kubernetes: Exploring Argo Workflows
Hauke Brammer
From Traction to Production: Maturing your GenAIOps step by step
Maxim Salnikov
Related Articles
View all articles.gif?w=240&auto=compress,format)
.gif?w=240&auto=compress,format)
.gif?w=240&auto=compress,format)

From learning to earning
Jobs that call for the skills explored in this talk.

AI Systems and MLOps Engineer for Earth Observation
Forschungszentrum Jülich GmbH
Jülich, Germany
Intermediate
Senior
Linux
Docker
AI Frameworks
Machine Learning


Machine Learning Ops (MLOps) Engineer
Spait Infotech Private Limited
Sheffield, United Kingdom
Remote
£55-120K
Intermediate
ETL
Azure
Scrum
+12

AI & MLOps Engineer - SaaS / AI-Driven Services
Nyou
Linz, Austria
€50-75K
Azure
Python
Kubernetes
Machine Learning
+1

Machine Learning (ML) Engineer Expert - frameworks MLOps / Python / Orchestration/Pipelines
ASFOTEC
Canton de Lille-6, France
Senior
GIT
Bash
DevOps
Python
Gitlab
+6



Machine Learning Engineer (MLOps)
Moneybox
Charing Cross, United Kingdom
€60K
Junior
GIT
Azure
DevOps
Python
+12

MLOps Engineer (Kubernetes, Cloud, ML Workflows)
FitNext Co
Charing Cross, United Kingdom
Remote
Intermediate
DevOps
Python
Docker
Grafana
+6