With good theoretical and practical knowledge of the computer vision algorithms, neural networks, and deep learning in the field of computer vision (CNN, RNN, autoencoders, GAN)
Highly skilled in machine learning methods application
With an exceptional mathematical base (algebra, probability theory). Functional analysis proficiency will be a big advantage. Math faculties education is preferred
Python coding, Git , Ubuntu, DVC
Experienced in Keras, Tensorflow, PyTorch, OpenCV
Able to conduct research autonomously and proactively (incl. studying math articles and applying the knowledge in practice)
Striving to develop solutions completely new to the market, to the industry and to the world.
Experience in Machine Learning 1-2 years;
Practical skills with Deep Learning (TensorFlow / PyTorch / Keras) on similar media projects;
Good practice in CNN, frequency, GAN
Expertise in NLP (Natural Language Processing);
Desire to work in Security (Malware Analysis);
Previous skills in Python/Pandas, Redis, Git, RabbitMQ, JS/ CSS/HTML, JSON, Vanilla JS, AJAX, SQL/MySQL/PostgreSQL, PHP, Ruby, Ajax, API, Go, Java, C, C++ etc;
Excellent knowledge of web architecture & existing social media
DataScience skills will be an advantage
Higher technical education;
Technical English (higher level is advantage);
Hacking thinking is a must
(MLOps, ML, Data Analysis, Python, SQL, ETL, Visualization, Wiki)
Technical or Economics Degree
3+ years of corresponding experience
Experience with MLOps (preferably DVC, MLflow, Airflow, Flask, Docker, Git, etc.)
Strong Machine Learning and Data Analysis skills
Experience with ML frameworks (TensorFlow/Keras, etc.)
Strong Python and SQL
Experience with ETL and visualization tools
Good understanding of DWH & Data Lakes architecture
Good documentation skills
Intermediate English level or higher
MS or higher in the following areas: Statistics and Mathematics
At least 3-5 years of professional industry experience, in addition to your academic experience
Outstanding quantitative analytical ability
Able to take less than precise business requirements and translate them into logic problems which you enjoy solving
Independent and creative approach to problem solving
Excellent written and verbal communication skills, with prior experience explaining assumptions, conclusions and methodology to both internal and external customers
In-depth knowledge of Statistics/Probability/Machine Learning
General Statistical concepts such as hypothesis testing, estimation, inference
Supervised and unsupervised statistical techniques such as regression (linear / logistic), time series analysis, clustering
Machine Learning foundations such as bias/variance trade-off, regularization, dimension reduction
Real world experience with popular machine Learning algorithms such as Random Forest, Boosting, SVMs
Experience with unstructured text data using NLP methods such as Latent Dirichlet Allocation (LDA), Latent Semantic Analysis (LSA), Sentiment Models, Word Embeddings, Text Similarity, Entity extraction is a strong plus
Strong programming experience in Pyton and one of the following: Scala/Java, R
Understanding of algorithm complexity and performance implications
Knowledge of data structures and algorithms
Good knowledge of Knowledge Engineering
Good knowledge of Graph technology, Knowledge Graphs, Graph Data bases and Ontologies
Experience with SQL
Familiarity with R Shiny framework is a plus
Опыт работы: 3 года
Data Scientist - 3 года
Опыт в Python
Опыт в PySpark
Опыт в NLP
— Technologies:
Mediapipe framework (Skeleton models and behavior recognition)
yolov5
CNNs
Torch
Python
OpenCV
Experience with models on edge devices
— Experience:
2+ years in CV applications;
previous experience in building high load computer vision applications;
previous experience in training and deploying of light models on EDGE device;
models distillation.
Solid background in NLP.
Strong programming experience in either R or Python.
Working knowledge of Linux.
Proven track record in analyzing and interpreting large data sets and statistical analysis.
Degree in relevant fields such as statistics, computer science, computational biology, etc.
A Ph.D. degree is not required but preferred.
Solid knowledge of machine learning and deep learning techniques.
Highly organized with meticulous attention to detail.
The ability to communicate clearly and effectively with specialists from your own and other fields.
Знання математичної статистики та теорії ймовірності
Знання Python/R, SQL
Рівень володіння англійською мовою не нижче pre-intermediate
Вища освіта у галузі прикладної математики, статистики, економічної кібернетики, програмування
Досвід побудови моделей машинного навчання
Досвід роботи у фінансовій сфері