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by ilirium 1228 days ago

  Location: Brazil (South America)
  Remote: Yes, or Hybrid or Office
  Willing to relocate: Yes, it is possible
  Technologies: Data Science, Machine Learning, Deep Learning, Computer Vision. Geospational data and IoT sensors (weather and environmental), satellite images, gridded/array data and time-series.
  Résumé/CV: https://www.linkedin.com/in/ilirium/ DM or email for formal resume in PDF
  Email: [kalimulin.jbs] located in the [gmail.com] service

Hi, I have 12+ years in tech and analytics, of which 4+ years are working as a Data Scientist. I completed PhD degree 8 years ago. I have broad experience with machine/deep learning (ML & DL) and data science in computer vision (CV), geospatial & climate data. Solid software engineering skills and mindset. I use satellite images, radar data, and time-series structured data in my projects. Now I am learning Rust and am interested in using it in projects.

Main tech stack: Python and Golang, Numpy, Pandas, SciPy, Scikit-learn, PyTorch, OpenCV, Pillow, Git, Bash, Jupyter, Matplotlib, PyCharm, Docker, GDAL, PROJ, QGIS, GeoTIFF, HDF5, GRIB, NetCDF4, WKT, optical flow.

Weather and environment data: NOAA, GFS, ERA5, WRF, solar radiation, weather radars, SILAM, WaveWatch and etc.

Key results related to hard skills:

– Create, train and tune DL models (classification, segmentation, prediction tasks)

– Statistical processing and data analytics of times series from IoT sensors and satellite images

– Remote sensing and computer vision: georeferencing, warping, image filtering and processing, object recognition, interpolation

– Benchmarking and speed up: async, threads, multiprocessing, multidimensional array algorithms with Numpy

– Developed backends for data analyzing services and prediction API in Python and Golang

– Dashboard for comparing data sources by different statistic metrics

– Deployed services to production and staging with Docker Compose, GitLab CI/CD and Bash

Key results related to soft skills:

– Wide experience of remote work, also before the lockdown

– Defended a Ph.D. degree on time

– Presented research results on scientific conferences (more than 20)

– Retrained myself from a research fellow in the electronics industry to the data scientist in IT