Mikayel Samvelyan, Developer in London, United Kingdom
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Mikayel Samvelyan

Verified Expert  in Engineering

Deep Learning Developer

Location
London, United Kingdom
Toptal Member Since
May 1, 2018

With a master's degree from the University of Oxford, Mikayel is a machine learning expert and data scientist specializing in natural language processing, computer vision, and reinforcement learning. He has substantial experience in research and development of deep learning solutions and has worked at such companies as Reddit, Mentor, and USC. Mikayel has co-authored several scientific publications at leading machine learning conferences.

Availability

Part-time

Preferred Environment

PyCharm, Vi

The most amazing...

...project I've worked on is developing a new AI algorithm that masters the game of StarCraft II.

Work Experience

Research Engineer (Computer Vision)

2020 - 2020
USC Information Sciences Institute (via Toptal)
  • Built a scalable pipeline for a video prediction models that runs parallel on multiple remote GPU instances.
  • Performed a pose estimation and projected 3D objects to their corresponding 2D projections in the videos.
  • Developed a motion detection software using Python and OpenCV.
  • Constructed a head pose estimation library using OpenCV and Dlib.
  • Developed a real-time object detection library based on YOLO.
  • The work has been presented to DARPA during the on-site visit to USC ISI.
Technologies: OpenCV, Python

Machine Learning Expert

2019 - 2019
Reddit (via Toptal)
  • Developed deep-learning solutions for large-scale natural language processing tasks using PyTorch.
  • Fine-tuned pre-trained NLP models, such as BERT, XLNet, and RoBERTa.
  • Conducted topic modeling experiments using methods such as LDA, NMF, and so on.
  • Built a modular pipeline for large-scale natural language classification tasks.
  • Analyzed large-scale datasets using BigQuery.
Technologies: Amazon SageMaker, Custom BERT, PyTorch, Python

Data Scientist

2018 - 2019
Highlander Technology, Inc. (via Toptal)
  • Developed and optimized deep learning solutions for large scale natural language processing tasks using PyTorch.
  • Implemented noise and novelty detection on a large corpus of data.
  • Performed rigorous data mining for raw and noisy data.
  • Created an API endpoint to use the model for multiclass classification.
  • Built a machine learning pipeline for large-scale multiclass classification.
Technologies: Amazon SageMaker, PyTorch, Python

Machine Learning Consultant

2018 - 2018
Mission Ready Marketing, LLC (via Toptal)
  • Designed a pipeline for machine learning methods to be used in a recommendation engine.
  • Examined the methods for building a recommendation system with unsupervised learning techniques for settings without historical data.
  • Analyzed item-based, user-based, matrix factorization-based, and hybrid recommender systems.
  • Created a full technical approach documentation for connecting the learning component of the project with the database and back-end.
Technologies: Python

Machine-learning Researcher

2018 - 2018
XIX.ai
  • Searched and identified objects on satellite, drone, and ground-based images.
  • Designed and implemented a deep reinforcement learning algorithm for large-scale fleet management.
  • Created a simulator for a ride-hailing service using Python.
  • Built a machine learning framework for predicting a user's intentions.
Technologies: Google Vision API, Sacred, PyTorch, Python

Research and Development Engineer

2014 - 2016
Mentor Graphics
  • Conducted research about algorithms for logic optimization, partitioning, placement, and routing.
  • Developed a unified environment for design capturing, simulation setup, verification, and analysis for a custom integrated circuit design platform.
  • Integrated the environment with third-party IDE software.
  • Created various kinds of reusable compiler-compilers using Lex and Yacc.
Technologies: Amazon Lex, Yacc, C++

Software Engineer

2012 - 2013
Instigate Robotics
  • Built firmware and software for robotic applications.
  • Developed 3D printing technologies.
  • Created an application's graphical user interface (GUI) with C++ and Qt.
  • Designed and implemented various embedded applications on STM32 and Arduino MCUs.
  • Built an educational development environment for robotics.
Technologies: Qt, Smalltalk, C++, C

Software Engineering Intern

2012 - 2012
Instigate Design
  • Developed a hard/software independent environment for parallel computing on multiprocessor computers.
  • Supported the development of a compiler's front end.
Technologies: Clang, C++

QMIX: Monotonic Value Function Factorization for Deep Multi-agent Reinforcement Learning

http://proceedings.mlr.press/v80/rashid18a.html
QMIX is a state-of-the-art value-based algorithm for collaborative deep multi-agent reinforcement learning for the settings of centralized training with decentralized execution.
QMIX employs a neural network that estimates joint action-values as a complex nonlinear combination of per-agent values that condition only on local observations. We structurally enforce that the joint-action value is monotonic in the per-agent values, which allows tractable maximization of the joint action-value in off-policy learning, and guarantees consistency between the centralized and decentralized policies.

QMIX was presented at ICML 2018, one of the leading conferences for machine learning research.

PyMARL: Python Multi-agent Reinforcement Learning

https://github.com/oxwhirl/pymarl
PyMARL is a research platform for deep multi-agent reinforcement learning which allows out-of-the-box experimentation and development.

Written in PyTorch, PyMARL features implementations of several state-of-the-art methods such as QMIX, COMA, and independent Q-Learning.

In collaboration with the Berkeley AI Research lab, some of the above algorithms have also been successfully ported to the scalable RLlib framework.

SMAC: The StarCraft Multi-agent Challenge

https://github.com/oxwhirl/smac
The StarCraft Multi-agent Challenge (SMAC) is a benchmark for cooperative multi-agent reinforcement learning (MARL) that provides elements of partial observability, challenging dynamics, and high-dimensional observation spaces. SMAC is built using the StarCraft II game engine, creating a testbed for research in cooperative MARL where each game unit is an independent RL agent.

Paper: https://arxiv.org/abs/1902.04043
Blogpost: http://whirl.cs.ox.ac.uk/blog/smac/
Blogpost by NVIDIA: https://nvda.ws/2I88F1I

SMAC was presented at AAMAS 2019, the largest and most influential conference in the area of agents and multiagent systems.

ADAM Visual Perception

https://github.com/isi-vista/adam-visual-perception
Our learning process depends on having a fairly rich (though developmentally plausible) input representation. This repository explores how two aspects of visual perception which are vital for early language learning can be captured by algorithms, namely motion cause detection and gaze object detection.
2016 - 2017

Master of Science Degree in Computer Science

University of Oxford - Oxford, UK

2014 - 2016

Master of Science Degree in Computer Science and Applied Mathematics

Yerevan State University - Yerevan, Armenia

2010 - 2014

Bachelor of Science Degree in Computer Science and Applied Mathematics

Yerevan State University - Yerevan, Armenia

2013 - 2013

Undergraduate Exchange in Computer Science

Delta State University - Cleveland, MS, USA

AUGUST 2015 - PRESENT

CS190.1x: Scalable Machine Learning

The University of California, Berkeley via edX

MAY 2015 - PRESENT

Algorithms: Design and Analysis, Part 2

Stanford University via Coursera

APRIL 2015 - PRESENT

Algorithms: Design and Analysis, Part 1

Stanford University via Coursera

Libraries/APIs

SciPy, NumPy, Pandas, PyTorch, TensorFlow, Scikit-learn, Keras, OpenCV, Spark ML, PySpark, Google Vision API, Google APIs

Tools

Jupyter, LaTeX, Makefile, Vim Text Editor, Subversion (SVN), Git, PyCharm, CVS, MATLAB, Tmux, Tableau, Amazon Lex, Sacred, BigQuery, Amazon SageMaker, AutoML

Frameworks

Flask, .NET, Qt, Spark

Languages

C++, C#, Python, Java, Lua, SQL, R, C, Objective-C, Smalltalk, Assembler x86, Prolog, Lisp, JavaScript, Octave

Platforms

Unix, Docker, MacOS, Linux, Amazon EC2, Amazon Web Services (AWS)

Storage

MongoDB, PostgreSQL, Redshift

Paradigms

Requirements Analysis, Design Patterns, Data Science

Other

System Programming, Deep Learning, Reinforcement Learning, Natural Language Processing (NLP), Custom BERT, Statistics, Classification, Predictive Modeling, Machine Learning, Mathematics, Data Visualization, Generative Pre-trained Transformers (GPT), Robotics, Computer Vision, Recommendation Systems, Big Data, Image Processing, Physics, Vi, Yacc, Clang, Time Series Analysis

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