Required Skills

Sci-kit Keras Theano TensorFlow SparkMlib

Work Authorization

  • US Citizen

  • Green Card

  • EAD (OPT/CPT/GC/H4)

  • H1B Work Permit

Preferred Employment

  • Corp-Corp

  • W2-Permanent

  • W2-Contract

  • Contract to Hire

Employment Type

  • Consulting/Contract

education qualification

  • UG :- - Not Required

  • PG :- - Not Required

Other Information

  • No of position :- ( 1 )

  • Post :- 23rd Jan 2024

JOB DETAIL

  • Machine Learning Ops Engineer to build & support scalable, highly available and robust Machine Learning (ML) /Deep Learning (DL) platform using ML/DL frameworks, High-Performance Computing (HPC) machines, Data Science tools, products & services in cloud and on-premises for client’s data & analytics organization.
  • Role will expose you to cutting edge technologies related to ML/DL and the ideal candidate will be driven, focused and enthusiastic about learning new technologies and implement them.

Responsibilities

  • Build, install, configure, manage, and scale state-of-the-art machine learning platform in cloud (Azure preferred) & on-premises powering client’s Data & Analytics products and solutions.
  • Work with data scientists, architects, DevOps engineers, and vendors to implement scalable ML/DL solutions in cloud and on-premises to solve complex problems.
  • Creating & maintaining ML/DL pipelines and overall ML/DL workflow orchestration including but not limited to data collection, prep, transform, analyze, experiment, train, validate, serve, monitor, etc.
  • Implement ML/DL solutions addressing performance, scalability, and the governance/ traceability of machine learning models.
  • Iterate quickly through latest technologies, products, frameworks, and R&D on latest information related to ML/DL frameworks, tools & services.

Qualifications

  • 4+ years’ experience delivering DevOps and MLOps in a Production/Enterprise setting.
  • Bachelor’s degree required; Masters preferred in Computer Science or Data Science
  • Excellent written and oral communication and presentation skills.
  • Experienced in a technical role involving platform and infrastructure operation. 
  • System administration experience of Unix or Linux systems. 
  • Container-based deployment experience using Docker and Kubernetes. 
  • Proficient with the machine learning modelling lifecycle and comfortable addressing both functional and technical aspects of model delivery
  • Experience with managing, deployment of large distributed systems like Spark, DASK & H20 and heterogenous platform components.
  • Experienced with programming languages like Python or R and comfortable in understanding statistical foundations of most used ML algorithms.
  • Experienced with Machine Learning frameworks:  Sci-kit, Keras, Theano, TensorFlow, SparkMlib, etc. 
  • Preferred hand-on experience IBM Watson Machine Learning systems or related preferred
  • Preferred hands-on experience with HPC – Nvidia, CUDA
  • Preferred experience with configuration Management tools like Ansible, puppet
  • Preferred experience in monitoring and performance analysis of Machine Learning    platforms using tools like Graffana and Zabbix.

Company Information