Personetics Published: September 19, 2019
Job Type
Category
Level of education
Undergraduate
Spoken Language needed
Hebrew, English
Level of Hebrew
Medium
Location of job
Tel Aviv/ Ramat Gan
How many relevant years experience do you require for the role:
2 years

Description

Personetics is developing an innovative predictive analytics platform that enables financial institutions to deliver a uniquely engaging digital experience.

As we continue to expand , We're looking for a Data Scientist to join our fast-growing Product team.

The ideal candidate will be involved in applying ML models into the company’s core product in a methodological manner.

This is a great opportunity to become a part of an innovative team that develops models and tools with great impact on our products and clients.

About the position
- Research, Develop and Apply Machine Learning and Statistical Learning Models
- Own a business problem end-to-end by conducting advanced analysis, designing and coding appropriate solutions using machine-learning
- Collaborate with Management, Product Managers, Subject Matter Experts and R&D teams
- Communicate results and ideas to key decision makers
- Keep up to date with the latest technological trends
- Implement new statistical or other mathematical methodologies as needed for specific model or analysis

Requirements

- Degree in Computer Science, Statistics, Applied Math, Engineering or related field
- 2+ years practical experience in relevant position
- Excellent understanding of machine learning, statistical analysis and data mining techniques and algorithms
- Vast experience implementing data processing and ML modelling with Python and relevant data science packages
- Experience with libraries such as: Pytorch, Tensorflow, Keras, scikit-learn, numpy, pandas
- Data-oriented personality with creative thinking and strong problem solving skills
- Attention to detail
- Great written and verbal communication skills
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