Personal details

Radu G. - Remote data scientist

Radu G.

Based in: 🇷🇴 Romania
Timezone: Bucharest (UTC+3)

About

My years of experience in the industry with my academic background definitely endorse me. However, I think that my edge is given by my multidisciplinarity and my passion for general knowledge (from anatomy to the history of arts). As this obviously comes beside my pursuit in artificial intelligence I tend to come up with great ideas and plans to solve uncommon issues.

Work Experience

Machine Learning & Computer Vision Engineer
dotlumen | Oct 2020 - Present
Python
Linux
Azure
NumPy
CUDA
Machine learning
Scipy
Computer Vision
NLP
Research
Deep Learning
ROS
Embedded Systems
PyTorch
AWS

Artificial Intelligence

  • research and benchmarked SOTA in Computer Vision, NLP, and AI-related for 5+ broad intelligent tasks using PyTorch, scikit, NumPy, open
  • conceptualized new algorithms for detection and classification with 90-95% accuracies
  • integrated, validated and optimized models pipeline for execution on cloud, Linux & ROS

Data processing

  • created a standardized dataset for validation of optical character recognition
  • integrated feature engineering and sensor fusion with SLAM and navigation algorithms
  • designed and constructed a pipeline for complete generalized data processing methods for object detection, segmentations and classifications

Embedded

  • engaged in ML-related design and testing of hardware components
  • optimized low-level processing (GPU, DLA, PVA) using advanced libraries (Cuda, VPI, TRT)

Architecture and management

  • cooperated using git and R&D for a prototype model methodology
  • mentored new employees in ML and data science departments
  • identifying and adapting business needs to solutions into the product weekly
  • contributed to software planning, management decisions
  • helped in business-related responsibilities and miscellaneous tasks (from pr, hr to logistics)
  • tested and presented regularly the product in demos to investors and stakeholders
Machine Learning Engineer
Robert Bosch | Jun 2019 - Aug 2020
Python
Machine learning
Computer Vision
Docker
Apache Spark
Deep Learning
TensorFlow
Apache Hadoop
Keras

Teamwork and methodology

  • cooperated using agile methods with 8-12 members
  • planned the project timeline for iterative development
  • designed the architecture, behaviour and structure
  • documented the process consistently, diagnosis and visualization of results

Statistics and Big Data

  • dynamic anomaly detection on time series signal using statistical modelling for +99% accuracy
  • processing big data streams using spark, Hadoop, & map reduce concepts on 20+ TB dataset
  • deployed SOTA solution as a docker container in a multi-node cluster

Machine Learning and Active Learning

  • implemented labelling & diagnosis interface in video classification for a 20x faster process
  • trained & fine tuned transfer learning CNN model in Keras for the classification of street infrastructure with 98% accuracy
  • innovated with a semi-supervised active learning pipeline for similar performance with 8-24x faster training and 10-80x less data (work presented in conferences)

Projects

Multiple projects
SEO
Image Processing
NumPy
Pandas
Machine learning
Computer Vision
Nltk
Deep Learning
Embedded Systems
Keras
Recommender Systems
PyTorch
Multiple projects are described in detail and generally

Education

Babes-Bolyai University
Master's degree・Artificial Intelligence
Sep 2020 - Jul 2022
Babes-Bolyai University
Bachelor's degree・Computer Science
Sep 2017 - Jul 2020

Certifications & Awards

Qualified in semi-finals of an international autonomous RC driving contest
Robert Bosch
Qualified for a 7-month Startup Incubator program
Innovation labs