NLP - Senior Machine Learning Engineer

Washington, District of Columbia
US$155000 - US$175000 per annum + Equity

NLP - Senior Machine Learning Engineer

Greater Boston - Remote

USD $155,000 - $175,000 + Great PTO/Benefits + Equity

This is an opportunity for an innovative machine-learning engineer to use their expertise in NLP to find trends around the world and identify major correlations on what will happen next and mitigate damage for the now. You will work in one of Worlds' most innovative tech startups where they have captured the global capacity of disruption using unstructured text. They have seen great success attracting clients and investors because of their completely unique commitment to machine learning in this domain where NLP is at the core of all business decisions.

THE COMPANY

This is well funded, innovative, and highly experienced company that is changing the way the marketplace reacts and interacts with fluctuations in the market due to phenomena, enterprise, and news. As a Senior Machine Learning Engineer, you'll find yourself working closely with both Data leaders and engineering teams and will enjoy the pace and innovation that runs through the company culture. For those ready for a start up environment, you'll enjoy the perks that this company can offer you - I hope you bring a good sense of humor!

THE ROLE

As a Senior Machine Learning Engineer, you will be asked to be forward thinking in your approach to applying analytical techniques to advancing the department's capacity in creating unique algorithms and leveraging your NLP expertise. You will add to their implementation for machine learning for both internal and external projects. With a rich and varied dataset to work from, you'll have the chance to apply your machine learning and algorithmic techniques to all types of data sets to detect trends before anybody else in the world.

As a Machine Learning Engineer you will be required to:

· Fluency in Python, and ML/NLP Libraries

· Have strong experience in BERT, spaCy, and TensorFlow or other Deep Learning Frameworks

· Develop end to end AI and machine learning models

· Have a great attitude and want to work with a high performing team

· Work with a cross-functional team of machine learning engineers and OPs

· Productionalize models

· Help innovate the way AI is used within the company

You will need to be a proven problem solver, critical thinker, and have an advanced technical background to join this growing, yet experienced team.

THE BENEFITS

A competitive base salary of $155,000 - $175,000 + amazing benefits

YOUR QUALIFICATIONS

· PhD or Master's in Computer Science, Applied Mathematics, or Quantitative Fields

· Commercial experience developing machine learning and deep learning algorithms being put into production

· Experience working with cross-functional teams

· Extensive software engineering experience, working with models end to end

More than anything - You will need proven, commercial experience as a machine learning engineer working on NLP models!

HOW TO APPLY

Please register your interest by sending your CV to Sam Agre via the Apply link on this page.

KEYWORDS

Data Science, Machine Learning, Team Lead, Tech Lead, Software Engineering, Software Engineer, AI, Deep Learning, Robotics, NLP, TensorFlow, BERT, Keras, PyTorch, Artificial Intelligence

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87090
Washington, District of Columbia
US$155000 - US$175000 per annum + Equity
  1. Permanent
  2. Natural Language Processing

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