Adrianna J.

Machine Learning-utvecklare

Adrianna är en erfaren Machine Learning-utvecklare med sju års erfarenhet inom life science, konsultverksamhet, konsumentprodukter, hälso- och sjukvård samt telekommunikation.

Hon arbetar för närvarande som Technology Research Associate Principal och är skicklig i Python, TensorFlow, SPARQL, Stardog, AmpliGraph, Scikit-Learn, Docker, Streamlit och Git.

Med fyra års specialiserad erfarenhet av maskininlärning i grafer har Adrianna gjort betydande bidrag till projekt som CLARIFY, där hon ledde maskininlärningsexperiment, genomförde omfattande utvärderingar och hanterade distributionen av lösningar till sjukhus.

Hon har en kandidatexamen i reglerteknik och robotik samt en dubbel masterexamen i datavetenskap med en biämne i entreprenörskap från EIT Digital, vilket understryker hennes starka tekniska grund och entreprenörstänkande.

Huvudsaklig expertis
  • LaTeX
    LaTeX 8 år
  • Databricks
    Databricks 4 år
  • GNU Octave
    GNU Octave 5 år
Andra kompetenser
  • Matlab
    Matlab 6 år
  • REST API
    REST API 6 år
  • jQuery
    jQuery 5 år
Adrianna
Adrianna J.

Ireland

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Anställningar

  • Technology Research Associate Principal

    Accenture - 4 år 7 månader

    • 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.

    Teknologier:

    • Teknologier:
    • 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 år 6 månader

    • 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).

    Teknologier:

    • Teknologier:
    • 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

Utbildning

  • 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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