Adrianna J.

Machine Learning Engineer

Adrianna is an experienced Machine Learning Engineer with seven years of expertise spanning life sciences, consulting, consumer products, healthcare, and telecommunications.

Currently serving as a Technology Research Associate Principal, she is skilled in Python, TensorFlow, SPARQL, Stardog, AmpliGraph, Scikit-Learn, Docker, Streamlit, and Git.

With four years of specialized experience in graph machine learning, Adrianna has notably worked in Accenture and made significant contributions to projects like CLARIFY, where she led machine learning experiments, conducted comprehensive evaluations, and managed the deployment of solutions to hospitals.

She holds a Bachelor’s in Control Engineering and Robotics and a double Master’s in Data Science with a minor in Entrepreneurship from EIT Digital, which underscores her strong technical foundation and entrepreneurial mindset.

Main expertise
  • Databricks
    Databricks 4 years
  • OpenCV
    OpenCV 5 years
  • Computer Vision 5 years
Other skills
  • CSV 9 years
  • LaTeX
    LaTeX 8 years
  • Matplotlib
    Matplotlib 8 years
Adrianna
Adrianna J.

Ireland

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Selected experience

Employment

  • Technology Research Associate Principal

    Accenture - 4 years 8 months

    • Led the CLARIFY project to Accenture's Greater than Award Finals in the Inspiring Growth category, managing technology transfer for a neuro-symbolic query system on biomedical knowledge graphs;

    • Developed systems for relapse prediction and completed the TechStar 2023 leadership program;

    • Created a prototype REST API for AmpliGraph 2, demonstrated in client workshops;

    • Contributed to the EU Commission's CLARIFY H2020 project by delivering a client pilot, collaborating with 11 partners, and authoring deliverables;

    • Proposed four patent ideas, serving as lead author for two;

    • Co-supervised a PhD intern on interpretable Gene-Disease Prediction with GraphML;

    • Served as Virtual Buddy for a new joiner and participated in interview panels;

    • Presented at conferences such as Sketching in Hardware 2022, ESSEC Business School, and EIT Digital Alumni Annual Meeting on XAI and knowledge graphs;

    • Co-presented the COLING-22 Tutorial on Knowledge Graph Embeddings for NLP and authored a Medium Labs blog post on XAIl;

    • Conducted machine learning research on explainable AI for knowledge graph embedding models in precision medicine oncology applications;

    • Developed ExamplE, a novel explanation approach for link prediction, leading to a patent application and a Proof of Concept deployed at Hospital Puerta del Hierro for the CLARIFY H2020 project;

    • Designed experiments for lung cancer relapse prediction and contributed to the development of AmpliGraph 1.4;

    • Co-authored three deliverables to the EU Commission and submitted three patent ideas;

    • Led a human-based evaluation for a consumer goods project, resulting in client presentations and a conference paper;

    • Achieved runner-up status in the Accenture Hackathon: Al4Insurance and participated in the Eco Innovation Challenge;

    • Collaborated with the Human Insight Lab on various initiatives.

    Technologies:

    • Technologies:
    • Databricks Databricks
    • GNU Octave GNU Octave
    • HTML / CSS
    • JavaScript JavaScript
    • Data Modeling
    • Material-UI Material-UI
    • ChromaDB ChromaDB
    • SQL SQL
    • MongoDB MongoDB
    • Bash Bash
    • CircleCI CircleCI
    • CSS CSS
    • Clustering
    • CSV
    • D3.js D3.js
    • Cuda Cuda
    • Data Analytics
    • Data Engineering
    • React.js React.js
    • Unit Testing
    • Swagger Swagger
    • ChatGPT API ChatGPT API
    • LangChain LangChain
    • Prompt Engineering
    • REST API REST API
    • Git Git
    • Python Python
    • Docker Docker
    • Flask Flask
    • BeautifulSoup BeautifulSoup
    • Pandas Pandas
    • NumPy NumPy
    • Team leading
    • Data Science
    • Pytest Pytest
    • Machine Learning Machine Learning
    • TensorFlow TensorFlow
    • Open source Open source
    • Scikit-learn Scikit-learn
    • Streamlit Streamlit
  • R&D Software Engineer

    Nokia - 2 years 6 months

    • Began as a Working Student and received promotions, changing roles while working in a team responsible for developing a component test framework for 5G components (R&D Python Software Developer);

    • Collaborated on time synchronization in Base Transceiver Stations, with main tasks including web application development with machine learning support in Python, hosted in the cloud (R&D Embedded Software Engineer);

    • Contributed by writing new features in C++, fixing software bugs, unit-testing, documenting, and employing best practices of Object-Oriented Programming (OOP) and Test-Driven Development (TDD).

    Technologies:

    • Technologies:
    • GNU Octave GNU Octave
    • HTML / CSS
    • JavaScript JavaScript
    • Jenkins Jenkins
    • SQL SQL
    • MongoDB MongoDB
    • Bash Bash
    • CSS CSS
    • Clustering
    • CSV
    • Cuda Cuda
    • Data Analytics
    • Data Engineering
    • Unit Testing
    • Django Django
    • C++ C++
    • REST API REST API
    • Git Git
    • Python Python
    • Docker Docker
    • Flask Flask
    • Pandas Pandas
    • NumPy NumPy
    • Data Science
    • Agile Agile
    • Pytest Pytest
    • TensorFlow TensorFlow
    • Embedded systems

Education

  • MSc.Data Science

    Royal Institute of Technology (KTH) · 2018 - 2020

  • MSc.Data Science

    Cote d'Azure University · 2017 - 2019

  • BSc.Control Engineering and Robotics

    Wroclaw University of Technology · 2012 - 2016

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