Remove Data Platform Remove DevOps Remove Software Development
article thumbnail

Accelerating AI/ML development at BMW Group with Amazon SageMaker Studio

Flipboard

Moreover, the JuMa infrastructure, which is based on AWS serverless and managed services, helps reduce operational overhead for DevOps teams and allows them to focus on enabling use cases and accelerating AI innovation at BMW Group. More importantly, the use of these platforms was misaligned with BMW Group’s IT cloud-first strategy.

ML 153
article thumbnail

Why Software Engineers Should Be Embracing AI: A Guide to Staying Ahead

ODSC - Open Data Science

Let’s go and explore together how AI can revolutionize key areas of software development, from coding to testing, deployment, and security. These tools use machine learning models trained on vast amounts of code to assist developers in writing cleaner, more efficient code. The result? So what are you waiting for?

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Ground truth generation and review best practices for evaluating generative AI question-answering with FMEval

AWS Machine Learning Blog

He has touched on most aspects of these projects, from infrastructure and DevOps to software development and AI/ML. After earning his bachelors degree in software engineering and a masters in computer vision and machine learning from Polytechnique Montreal, Philippe joined AWS to put his expertise to work for customers.

article thumbnail

Definite Guide to Building a Machine Learning Platform

The MLOps Blog

Version control for code is common in software development, and the problem is mostly solved. However, machine learning needs more because so many things can change, from the data to the code to the model parameters and other metadata. . My Story DevOps Engineers Who they are? What do they want to accomplish?

article thumbnail

Top Synthetic Data Tools/Startups For Machine Learning Models in 2023

Marktechpost

The advantages of using synthetic data include easing restrictions when using private or controlled data, adjusting the data requirements to specific circumstances that cannot be met with accurate data, and producing datasets for DevOps teams to use for software testing and quality assurance.