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Machine Learning Engineer

Engineering | Monmouth Junction, NJ | Full Time, Part Time, Contract, Temp to Perm, and Internship

Job Description

About Us:

At Parabole, we believe enterprise knowledge should be centrally and digitally available to all stakeholders in an organisation-for everything from powering business intelligence to data analytics to building the next-gen intelligent applications in banking and financial services.

That's why the team here at Parabole is building a smart machine that can read and analyze any unstructured content and transform them into actionable insights and are looking for those who want to join us in this journey.

Machine Learning Engineer

Engineering I Princeton I NJ I Full Time

We’re looking for machine learning engineers with a unique area of expertise in NLP, Topic Modelling, LDA and LCA clustering techniques that can be applied to improving the performance and capabilities of our knowledge automation engine.


  • The candidate will drive the development of Machine Learning algorithms for building automation software for regulatory compliance and risk management domain for banking and financial services.


  • An ideal candidate would be currently a senior/ master's student or a recent graduate in Computer Science with a concentration in Machine Learning, Mathematics/ Statistics and Computer Science.
  • Exposure to Machine Learning and Cognitive algorithms (classification, categorization, feature engineering, information retrieval, knowledge discovery, and topic modelling) would be preferred.
  • He/She will have a strong exposure to Data structures, writing algorithms, NLP
  • Strong ability to create quick prototype, handle ambiguity, strong ability for co-development and learn

Preferred Skills:

  • Knowledge of Java, Python, C++
  • R/Matlab and Python
  • Good knowledge of Linear algebra, random process, statistical analysis

To apply, please submit:

  • Resume / LinkedIn / homepage

  • A short self-introduction  (Skills and area of interest)