Machine Learning Engineer - Contract - W2 Only

  • Austin, TX
  • Posted 12 days ago | Updated 9 hours ago

Overview

On Site
BASED ON EXPERIENCE
Contract - Independent
Contract - W2
Contract - 5+ mo(s)

Skills

machine learning
python

Job Details

Machine Learning Engineer
Ampcus Inc is currently hiring for a Machine Learning Engineer which is based at Austin, TX or Morris Plains, NJ for 6-12 Months Project.


Title: Machine Learning Engineer
Location: Austin, TX or Morris Plains, NJ
Expected Duration: 6 -12 Months

Job Description:


We are seeking a highly skilled Machine Learning Engineer to join our team. The core hours for this role are 9:00 AM - 5:00 PM CST, and it offers a hybrid work arrangement in either Austin, TX or Morris Plains, NJ.

Duties:
As a Machine Learning Engineer, you will leverage your 7+ years of experience to design, build, and maintain machine learning models and pipelines. You will work with various data sources, both structured and unstructured, and utilize your strong Python skills, including MLlib, TensorFlow, and PyTorch.

Required Skills:
  • Proficiency with machine learning libraries such as TensorFlow, PyTorch, and Scikit-learn.
  • Experience in deploying and optimizing pipelines that support various data science processes.
  • Expertise in setting up model life cycle management with tools like MLFlow.
  • Developing and deploying Spark/Databricks jobs using enterprise tools like Jenkins and GitHub Actions.
  • Experience with containerization solutions such as Docker and Kubernetes.
  • Proficiency with AWS cloud services and running Apache Spark applications.
  • Experience in API development using FastAPI or Flask.
  • Proven industry experience in building forecasting models.

Education:
A bachelor's degree in Engineering, Mathematics, or a related field is required.
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