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 machine learning engineering


Operand Quant: A Single-Agent Architecture for Autonomous Machine Learning Engineering

arXiv.org Artificial Intelligence

We present Operand Quant, a single-agent, IDE-based architecture for autonomous machine learning engineering (MLE). Operand Quant departs from conventional multi-agent orchestration frameworks by consolidating all MLE lifecycle stages -- exploration, modeling, experimentation, and deployment -- within a single, context-aware agent. On the MLE-Benchmark (2025), Operand Quant achieved a new state-of-the-art (SOTA) result, with an overall medal rate of 0.3956 +/- 0.0565 across 75 problems -- the highest recorded performance among all evaluated systems to date. The architecture demonstrates that a linear, non-blocking agent, operating autonomously within a controlled IDE environment, can outperform multi-agent and orchestrated systems under identical constraints.


Lead, Machine Learning Engineering & AI Research

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Computation is revolutionizing drug discovery. Advances in big chemical data, massive computing power, artificial intelligence, and molecular dynamics simulation are changing the way we develop new drugs. At 1910 Genetics, we put computation at the heart of drug discovery, blending expertise in computational chemistry, structural biology, pharmacology, genetics, data science, and software engineering to develop drugs for previously undruggable targets.


Machine Learning Engineering for Edge AI: Challenges and Best Practices

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Machine learning engineering is the field of developing, implementing, and maintaining machine learning systems. It involves the application of engineering principles to the design, development, and deployment of machine learning models, algorithms, and applications. The primary focus of ML engineering is to build scalable and efficient machine learning systems that can process large volumes of data and generate accurate predictions. It involves various tasks such as data preparation, model development, model training, model deployment, and model monitoring. ML engineering requires a combination of skills in computer science, mathematics, statistics, and domain-specific knowledge.


Senior Manager, Machine Learning Engineering (Coupang Play) at Coupang - Singapore, Singapore

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Launched in December 2020, Coupang Play is Coupang's OTT (over-the-top) service. Coupang Play aims to become the definitive destination for digital content. Backed by our strong Product and Engineering teams in Seoul, Singapore, and Mountain View -- Coupang Play has been creating and optimizing the viewing experience for our customers. Coupang Play is available on mobile devices, tablet PCs, smart TVs, and your preferred browsers. We are building a competitive content library that includes TV for children and all ages, movies, live sports, educational content, and more.


Oferta de Empleo machine learning engineering lead en Sevilla Page Personnel

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Perfil buscado (Hombre/Mujer) The successful candidate will join the company s Technology Department as a Machine Learning Engineering Lead. In partnership with multiple stakeholders, you will focus on developing and delivering leading edge analytics solutions using Google Cloud and, as a key member of our engineering practice, you will mentor a small team of data scientists and analysts as we grow and drive the data science capability of the team. He/she will assume the following responsibilities: • Define and support the research and analytical process to deliver business insights • Responsible for advanced statistical and machine learning modeling • Develop data driven analytical tools • Machine learning - build models that can be used for asset health and grid operations • Lead a small team of data scientists and data engineers • Machine Learning Engineering Lead International technology company that develops its own product. International technology company that develops its own product.


Cloud Machine Learning Engineering and MLOps

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With more companies leveraging software that runs on the Cloud, there is a growing need to find and hire individuals with the skills needed to build solutions on a variety of Cloud platforms. Employers agree: Cloud talent is hard to find. This Specialization is designed to address the Cloud talent gap by providing training to anyone interested in developing the job-ready, pragmatic skills needed for careers that leverage Cloud-native technologies. In the first course, you will learn how to build foundational Cloud computing infrastructure, including websites involving serverless technology and virtual machines, using the best practices of DevOps. The second course will teach you how to build effective Microservices using technologies like Flask and Kubernetes that are continuously deployed to a Cloud platform: Amazon Web Services (AWS), Azure or Google Cloud Platform (GCP).


Machine Learning Systems Pt. 2: Data Pipelines with TensorFlow Extended

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In part 1, I covered an overview and some of the primary challenges in doing MLOps. Implementing models at scale can be a difficult exercise due to the changing nature of data, business, and code. In this part, I'll show how you can build data pipeline components using TensorFlow Extended (TFX). This will follow the work and skills taught in the Machine Learning Engineering (MLOps) in Production Specialization by DeepLearning.ai, I'll go through the final assignment here, but I'll be applying it to a new dataset.


Manager, Machine Learning Engineering

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Find open roles in Artificial Intelligence (AI), Machine Learning (ML), Natural Language Processing (NLP), Computer Vision (CV), Data Engineering, Data Analytics, Big Data, and Data Science in general, filtered by job title or popular skill, toolset and products used.


Machine Learning Engineering for Production (MLOps)

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In the fourth course of Machine Learning Engineering for Production Specialization, you will learn how to deploy ML models and make them available to end-users. You will build scalable and reliable hardware infrastructure to deliver inference requests both in real-time and batch depending on the use case. You will also implement workflow automation and progressive delivery that complies with current MLOps practices to keep your production system running. Additionally, you will continuously monitor your system to detect model decay, remediate performance drops, and avoid system failures so it can continuously operate at all times. Understanding machine learning and deep learning concepts is essential, but if you're looking to build an effective AI career, you need production engineering capabilities as well.


Building Intelligent Systems: A Guide to Machine Learning Engineering: Hulten, Geoff: 9781484234310: Amazon.com: Books

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This book teaches you how to build an Intelligent System from end to end and leverage machine learning in practice. You will understand how to apply your existing skills in software engineering, data science, machine learning, management, and program management to produce working systems. Building Intelligent Systems is based on more than a decade of experience building Internet-scale Intelligent Systems that have hundreds of millions of user interactions per day in some of the largest and most important software systems in the world. Software engineers, machine learning practitioners, and technical managers who want to build effective intelligent systems.