There’s never been a more exciting time to join United Airlines. We’re on a path towards becoming the best airline in the history of aviation. Our shared purpose – Connecting People, Uniting the World – is about more than getting people from one place to another. It also means that as a global company that operates in hundreds of locations around the world with millions of customers and tens of thousands of employees, we have a unique responsibility to uplift and provide opportunities in the places where we work, live and fly, and we can only do that with a truly diverse and inclusive workforce. And we’re growing – in the years ahead, we’ll hire tens of thousands of people across every area of the airline. Our careers include a competitive benefits package aimed at keeping you happy, healthy and well-traveled. From employee-run "Business Resource Group" communities to world-class benefits like parental leave, 401k and privileges like space available travel, United is truly a one-of-a-kind place to work. Are you ready to travel the world?
We believe that inclusion propels innovation and is the foundation of all that we do. Uniteds Digital Technology team spans the globe and is made up of diverse individuals all working together with cutting-edge technology to build the best airline in the history of aviation. Our team designs, develops and maintains massively scaling technology solutions brought to life with innovative architectures, data analytics, and digital solutions.
Key Responsibilities:United Airlines is seeking talented people to join the Data and Machine Learning Engineering team. The organization is responsible for leading data driven insights innovation to support the Machine Learning needs for commercial and operational projects with a digital focus. This role will frequently collaborate with ML engineers,data scientists and data engineers. This role will design, architect, implement and lead key components of the Machine Learning Platform, Gen AI/ML business use cases, and establish processes and best practices.
Build high-performance, cloud-native machine learning infrastructure and services to enable rapid innovation across UnitedSet up containers and Serverless platform with cloud infrastructureDesign and develop tools and apps to enable ML automation using AWS ecosystemBuild data pipelines to enable ML models for batch and real-time dataHands on development expertise of Spark and Flink for both real time and batch applicationsSupport large scale model training and serving pipelines in distributed and scalable environmentStay aligned with the latest developments in cloud-native and ML ops/engineering and to experiment with and learn new technologies – NumPy, data science packages like sci-kit, microservices architectureOptimize, fine-tune generative AI/LLM models to improve performance and accuracy and deploy themEvaluate the performance of LLM models, Implement LLMOps processes to manage the end-to-end lifecycle of large language modelsEvaluate the performance of LLM models, implement LLMOps processes to manage the end – to end lifecycle of large language modelsDevelop, optimize, fine-tune Generative AI/LLM models to improve performance and accuracy and deploy themUnited values diverse experiences, perspectives, and we encourage everyone who meets the minimum qualifications to apply. While having the “desired” qualifications make for a stronger candidate, we encourage applicants who may not feel they check ALL of those boxes We are always looking for individuals who will bring something new to the table
There’s never been a more exciting time to join United Airlines. We’re on a path towards becoming the best airline in the history of aviation. Our shared purpose – Connecting People, Uniting the World – is about more than getting people from one place to another. It also means that as a global company that operates in hundreds of locations around the world with millions of customers and tens of thousands of employees, we have a unique responsibility to uplift and provide opportunities in the places where we work, live and fly, and we can only do that with a truly diverse and inclusive workforce. And we’re growing – in the years ahead, we’ll hire tens of thousands of people across every area of the airline. Our careers include a competitive benefits package aimed at keeping you happy, healthy and well-traveled. From employee-run "Business Resource Group" communities to world-class benefits like parental leave, 401k and privileges like space available travel, United is truly a one-of-a-kind place to work. Are you ready to travel the world?
We believe that inclusion propels innovation and is the foundation of all that we do. Uniteds Digital Technology team spans the globe and is made up of diverse individuals all working together with cutting-edge technology to build the best airline in the history of aviation. Our team designs, develops and maintains massively scaling technology solutions brought to life with innovative architectures, data analytics, and digital solutions.
Key Responsibilities:United Airlines is seeking talented people to join the Data and Machine Learning Engineering team. The organization is responsible for leading data driven insights innovation to support the Machine Learning needs for commercial and operational projects with a digital focus. This role will frequently collaborate with ML engineers,data scientists and data engineers. This role will design, architect, implement and lead key components of the Machine Learning Platform, Gen AI/ML business use cases, and establish processes and best practices.
Build high-performance, cloud-native machine learning infrastructure and services to enable rapid innovation across UnitedSet up containers and Serverless platform with cloud infrastructureDesign and develop tools and apps to enable ML automation using AWS ecosystemBuild data pipelines to enable ML models for batch and real-time dataHands on development expertise of Spark and Flink for both real time and batch applicationsSupport large scale model training and serving pipelines in distributed and scalable environmentStay aligned with the latest developments in cloud-native and ML ops/engineering and to experiment with and learn new technologies – NumPy, data science packages like sci-kit, microservices architectureOptimize, fine-tune generative AI/LLM models to improve performance and accuracy and deploy themEvaluate the performance of LLM models, Implement LLMOps processes to manage the end-to-end lifecycle of large language modelsEvaluate the performance of LLM models, implement LLMOps processes to manage the end – to end lifecycle of large language modelsDevelop, optimize, fine-tune Generative AI/LLM models to improve performance and accuracy and deploy themUnited values diverse experiences, perspectives, and we encourage everyone who meets the minimum qualifications to apply. While having the “desired” qualifications make for a stronger candidate, we encourage applicants who may not feel they check ALL of those boxes We are always looking for individuals who will bring something new to the table
What’s needed to succeed (Minimum Qualifications): Bachelors degree in Computer Science, Data Science, Generative AI, Engineering or related discipline or Mathematics experience7 years of software engineering experience with languages such as Python, Go, Java, Scala, Kotlin, or C/C 7 years of experience in machine learning, deep learning, and natural language processingStrong technical leadership and familiarity with data science methodologies and frameworks (e.g., PyTorch, Tensorflow) and preferably building and deploying production ML pipelinesExperience in ML model life cycle development experience and prefer experience to common algorithms like XGBoost, CatBoost, Deep Learning, etcExperience setting up and optimizing data stores (RDBMS/NoSQL) for production use in the ML app contextCloud-native DevOps, CI/CD experience using tools such as Jenkins or AWS CodePipeline; experience with GitOps using tools such as ArgoCD, Flux, or Jenkins XExperience with generative models such as GANs, VAEs, and autoregressive modelsPrompt engineering: Ability to design and craft prompts that evoke desired responses from LLMsLLM evaluation: Ability to evaluate the performance of LLMs on a variety of tasks, including accuracy, fluency, creativity, and diversityLLM debugging: Ability to identify and fix errors in LLMs, such as bias, factual errors, and logical inconsistenciesLLM deployment: Ability to deploy LLMs in production environments and ensure that they are reliable and secureExperience with LLMOps (Large Language Model Operations) to manage the end-to-end lifecycle of large language modelsExperience with generative ai methods such as retrieval augmented generation (RAG) and instruction fine tuningMust be legally authorized to work in the United States for any employer without sponsorshipWhat will help you propel from the pack (Preferred Qualifications):Masters/PhD degree in Computer Science or related STEM field5 years of experience working in cloud environments (AWS preferred) - Kubernetes, Dockers, ECS and EKS5 years of experience with Big Data technologies such as Spark, Flink and SQL programming5 years of experience with cloud-native DevOps, CI/CD3 – 5 years of relevant enterprise Architecture experienceWhat’s needed to succeed (Minimum Qualifications): Bachelors degree in Computer Science, Data Science, Generative AI, Engineering or related discipline or Mathematics experience7 years of software engineering experience with languages such as Python, Go, Java, Scala, Kotlin, or C/C 7 years of experience in machine learning, deep learning, and natural language processingStrong technical leadership and familiarity with data science methodologies and frameworks (e.g., PyTorch, Tensorflow) and preferably building and deploying production ML pipelinesExperience in ML model life cycle development experience and prefer experience to common algorithms like XGBoost, CatBoost, Deep Learning, etcExperience setting up and optimizing data stores (RDBMS/NoSQL) for production use in the ML app contextCloud-native DevOps, CI/CD experience using tools such as Jenkins or AWS CodePipeline; experience with GitOps using tools such as ArgoCD, Flux, or Jenkins XExperience with generative models such as GANs, VAEs, and autoregressive modelsPrompt engineering: Ability to design and craft prompts that evoke desired responses from LLMsLLM evaluation: Ability to evaluate the performance of LLMs on a variety of tasks, including accuracy, fluency, creativity, and diversityLLM debugging: Ability to identify and fix errors in LLMs, such as bias, factual errors, and logical inconsistenciesLLM deployment: Ability to deploy LLMs in production environments and ensure that they are reliable and secureExperience with LLMOps (Large Language Model Operations) to manage the end-to-end lifecycle of large language modelsExperience with generative ai methods such as retrieval augmented generation (RAG) and instruction fine tuningMust be legally authorized to work in the United States for any employer without sponsorshipWhat will help you propel from the pack (Preferred Qualifications):Masters/PhD degree in Computer Science or related STEM field5 years of experience working in cloud environments (AWS preferred) - Kubernetes, Dockers, ECS and EKS5 years of experience with Big Data technologies such as Spark, Flink and SQL programming5 years of experience with cloud-native DevOps, CI/CD3 – 5 years of relevant enterprise Architecture experience