LOG IN
SIGN UP
Tech Job Finder - Find Software, Technology Sales and Product Manager Jobs.
Sign In
OR continue with e-mail and password
E-mail address
Password
Don't have an account?
Reset password
Join Tech Job Finder
OR continue with e-mail and password
E-mail address
First name
Last name
Username
Password
Confirm Password
How did you hear about us?
By signing up, you agree to our Terms & Conditions and Privacy Policy.

Machine Learning Engineer-MLOps

at J.P. Morgan

Back to all Data Science / AI / ML jobs
J.P. Morgan logo
Bulge Bracket Investment Banks

Machine Learning Engineer-MLOps

at J.P. Morgan

Mid LevelNo visa sponsorshipData Science/AI/ML

Posted 21 days ago

No clicks

Compensation
Not specified

Currency: Not specified

City
New York City
Country
United States

Senior MLOps engineer responsible for building and maintaining end-to-end ML pipelines including distributed GPU training, batch and real-time serving, hyperparameter tuning, model monitoring and production validation. You will work on personalization and recommendation systems deployed in AWS, optimize large language models and vector databases, and ensure observability and performance of ML services. The role partners with product, architecture and cross-functional engineering teams to integrate new technologies and improve infrastructure for scalable, low-latency applications.

Location: New York, NY, United States

We are looking for a Senior MLOps engineer to work closely with Data Scientists to build and deploy ML models on a modern MLOps stack.  

As Lead Machine Learning Engineer on the Recommendation Engine team, you’ll build and maintain pipelines for distributed model training on large compute clusters, batch/real-time model serving, hyperparameter tuning at scale, model monitoring, production validation and other activities vital for model development, testing and deployment in a well-managed, controlled environment.  

Our product, Personalization and Insights, builds and supports high throughput, low latency applications which leverage state of the art machine learning architectures, and which are deployed in AWS.  These applications power personalized experiences across Chase Consumer & Community Banking channels, to help weave a user experience that includes traditional banking services with other services in the Travel, Merchant Offer Shopping, and Dining spaces. 

 

Job responsibilities 

  • Build, deploy, and maintain robust pipelines for distributed training on GPU-enabled clusters to support scalable machine learning workflows. 

  • Develop and manage pipelines for high-throughput, real-time inference as well as batch inference, ensuring optimal performance and reliability. 

  • Implement quantization techniques and deploy large language models (LLMs) to maximize efficiency and resource utilization. 

  • Oversee the management and optimization of vector databases to support advanced AI and machine learning applications. 

  • Establish and maintain comprehensive monitoring and observability pipelines to ensure system health, performance, and rapid issue resolution. 

  • Collaborate with cross-functional teams to integrate new technologies and continuously improve existing infrastructure. 

  • Partner with product, architecture, and other engineering teams to define scalable and performant technical solutions.    

 

Required qualifications, capabilities, and skills 

  • BS  in Computer Science or related Engineering field with 3+ years of experience Or MS degree in Computer Science or related Engineering field with 2+ years experience. 

  • Solid knowledge and extensive experience in Python 

  • Solid fundamentals in cloud computing, preferably AWS 

  • Deep knowledge and passion for data science fundamentals, training and deploying models 

  • Experience in monitoring and observability tools to monitor model input/output and features stats 

  • Operational experience in big data/ML tools such as Ray, DuckDB, Spark 

  • Solid grounding in engineering fundamentals and analytical mindset 

  • Action Oriented  and iterative development 

 

Preferred qualifications, capabilities, and skills 

 

  • Experience with recommendation and personalization systems is a plus. 

  • Solid fundamentals and experience in containers (docker ecosystem), container orchestration systems [Kubernetes, ECS], DAG orchestration [Airflow, Kubeflow etc] 

  • Good knowledge of Databases 

Come join us in reshaping the future!

Machine Learning Engineer-MLOps

at J.P. Morgan

Back to all Data Science / AI / ML jobs
J.P. Morgan logo
Bulge Bracket Investment Banks

Machine Learning Engineer-MLOps

at J.P. Morgan

Mid LevelNo visa sponsorshipData Science/AI/ML

Posted 21 days ago

No clicks

Compensation
Not specified

Currency: Not specified

City
New York City
Country
United States

Senior MLOps engineer responsible for building and maintaining end-to-end ML pipelines including distributed GPU training, batch and real-time serving, hyperparameter tuning, model monitoring and production validation. You will work on personalization and recommendation systems deployed in AWS, optimize large language models and vector databases, and ensure observability and performance of ML services. The role partners with product, architecture and cross-functional engineering teams to integrate new technologies and improve infrastructure for scalable, low-latency applications.

Location: New York, NY, United States

We are looking for a Senior MLOps engineer to work closely with Data Scientists to build and deploy ML models on a modern MLOps stack.  

As Lead Machine Learning Engineer on the Recommendation Engine team, you’ll build and maintain pipelines for distributed model training on large compute clusters, batch/real-time model serving, hyperparameter tuning at scale, model monitoring, production validation and other activities vital for model development, testing and deployment in a well-managed, controlled environment.  

Our product, Personalization and Insights, builds and supports high throughput, low latency applications which leverage state of the art machine learning architectures, and which are deployed in AWS.  These applications power personalized experiences across Chase Consumer & Community Banking channels, to help weave a user experience that includes traditional banking services with other services in the Travel, Merchant Offer Shopping, and Dining spaces. 

 

Job responsibilities 

  • Build, deploy, and maintain robust pipelines for distributed training on GPU-enabled clusters to support scalable machine learning workflows. 

  • Develop and manage pipelines for high-throughput, real-time inference as well as batch inference, ensuring optimal performance and reliability. 

  • Implement quantization techniques and deploy large language models (LLMs) to maximize efficiency and resource utilization. 

  • Oversee the management and optimization of vector databases to support advanced AI and machine learning applications. 

  • Establish and maintain comprehensive monitoring and observability pipelines to ensure system health, performance, and rapid issue resolution. 

  • Collaborate with cross-functional teams to integrate new technologies and continuously improve existing infrastructure. 

  • Partner with product, architecture, and other engineering teams to define scalable and performant technical solutions.    

 

Required qualifications, capabilities, and skills 

  • BS  in Computer Science or related Engineering field with 3+ years of experience Or MS degree in Computer Science or related Engineering field with 2+ years experience. 

  • Solid knowledge and extensive experience in Python 

  • Solid fundamentals in cloud computing, preferably AWS 

  • Deep knowledge and passion for data science fundamentals, training and deploying models 

  • Experience in monitoring and observability tools to monitor model input/output and features stats 

  • Operational experience in big data/ML tools such as Ray, DuckDB, Spark 

  • Solid grounding in engineering fundamentals and analytical mindset 

  • Action Oriented  and iterative development 

 

Preferred qualifications, capabilities, and skills 

 

  • Experience with recommendation and personalization systems is a plus. 

  • Solid fundamentals and experience in containers (docker ecosystem), container orchestration systems [Kubernetes, ECS], DAG orchestration [Airflow, Kubeflow etc] 

  • Good knowledge of Databases 

Come join us in reshaping the future!