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fishman7337/README.md

~/whoami

const fishman7337 = {
  name: "Goh Kun Ming",
  handle: "fishman7337",
  base: "Singapore",
  education: "Diploma in Applied AI & Analytics, Singapore Polytechnic",
  currentRole: "AI Research Intern @ RSAF RAiD (AETHER)",
  publicResearch: "Quantum-Enhanced GANs preprint · arXiv:2508.09209",
  operatingMode: "research → reproducibility → evaluation → deployable systems",
  proofPoints: ["PyTorch", "Keras", "Qiskit", "Pandas/NumPy", "SQL", "AWS", "Docker", "CI/CD"]
};

I’m focused on a practical arc: ask a research question, build a reproducible baseline, measure it honestly, then turn the useful pieces into documented systems.

The common thread across the work below is quantum ML, computer vision, geospatial preparation, MLOps, and responsible release discipline.


Mission Control

Animated mission control visual for research systems governance and MLOps

🧠 Research

Hybrid quantum-classical ML, GAN baselines, reproducible experiments, and evaluation discipline.

🛰️ Perception

Computer vision, satellite imagery preparation, sensor fusion, remote-sensing features, and detection pipelines.

⚙️ Systems

Flask/FastAPI apps, Docker workflows, CI/CD, model serving, tests, security checks, and MLOps docs.

🛡️ Governance

Responsible AI thinking, model cards, data cards, threat models, and accountable release practices.

🧩 Expand the operating principles
Principle How I apply it
Truth-grounded claims I prefer honest baselines, clear limitations, and reproducible evidence over inflated results.
Systems thinking A model is only useful when the surrounding data, testing, deployment, monitoring, and docs are coherent.
Research-to-product loop I like converting experiments into usable, reviewable, well-documented artifacts.
Safety and governance I treat documentation, access control, threat modeling, and risk controls as first-class engineering work.

Research Spotlight

Animated HQCGAN research pipeline with quantum circuit latent priors and FID KID evaluation

Quantum-Enhanced Generative Adversarial Networks

Comparative Analysis of Classical and Hybrid Quantum-Classical Generative Adversarial Networks

My arXiv preprint investigates whether parameterised quantum circuits can act as useful latent priors for generative modelling under near-term quantum constraints. The work compares a classical GAN against multiple HQCGAN variants and keeps the claims bounded by image-quality metrics and limitations.

  • Compared a classical GAN against 3-, 5-, and 7-qubit HQCGAN variants.
  • Used Qiskit's AerSimulator with realistic noise models.
  • Focused on binary MNIST digits 0 and 1 to align with constrained quantum latent dimensions.
  • Ran 150-epoch experiments and evaluated image-generation quality with FID and KID.
Read the arXiv preprint

Quantum Machine Learning GANs Qiskit FID and KID

Quantum AI × Generative Modelling × Evaluation Discipline
🔬 Open the research mental model
flowchart LR
  A[Research Question] --> B[Classical Baseline]
  A --> C[Quantum Circuit Latent Prior]
  C --> D[3 / 5 / 7 Qubit HQCGAN Variants]
  B --> E[Training + Samples]
  D --> E
  E --> F[FID / KID Evaluation]
  F --> G[Bounded Claims + Limitations]
  G --> H[Reproducible Repository + arXiv]
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Selected Research And Builds

Animated project constellation showing fishman7337 public GitHub projects

Featured builds

🧬 Hybrid Quantum-Classical GAN Research

HQCGAN experiments comparing classical GAN baselines with noisy quantum-circuit latent priors on binary MNIST.

Signal stack: Qiskit · TensorFlow · GANs · FID/KID · experiment configs · reproducibility · arXiv.

Open repository

🛰️ ISR Satellite Imagery Pipeline

Satellite imagery preparation, geometry/topology feature engineering, preliminary model screening, and W&B-tracked orchestration.

Signal stack: remote sensing · computer vision · PyTorch · W&B · geospatial features · governance docs.

Open repository

🌐 Global Security Policy Intelligence

Historical security analytics, governance/public-policy panels, ML/DL, graph intelligence, RAG safety, and reproducible MLOps.

Signal stack: React · ML · graph analytics · Neo4j · data engineering · RAG guardrails.

Open repository

🥬 VeggieAI MLOps Platform

Vegetable image classifier with model serving, auth, prediction history, CI/CD, pytest, security checks, Docker, and MLOps docs.

Signal stack: Flask · TensorFlow serving · model registry · CI/CD · security scanning · operational docs.

Open repository

Open the full project map
Arena Repository What it demonstrates
🧬 Quantum / Generative AI hybrid-quantum-classical-gan-research HQCGAN research, noisy quantum circuits, GAN evaluation, reproducible experiments
🛰️ Geospatial / ISR ISR Satellite imagery preparation, feature engineering, PyTorch screening, W&B orchestration
🌐 Policy Intelligence global-security-policy-intelligence Historical analytics, graph intelligence, RAG safety, governance panels
🥬 MLOps Product sp-daaa-doaa-ca2-vegetable-classification-application Model serving, CI/CD, security scans, Docker, classification app
🏙️ Multimodal ML App sp-daaa-doaa-ca1-housing-price-ml-application Tabular + NLP + image signals, Flask, Docker, tests, MLOps docs
🔐 Secure Systems yubikey-secure-endpoint-system Rust endpoint watchdog, security-key checks, audit logging, threat thinking
📈 Math + Regression sp-daaa-mai-ca3-wage-modelling Regression modelling, gradient descent, pytest, LaTeX reporting
💬 NLP / Deep Learning sp-daaa-dele-ca1-movie-review-sentiment-analysis RNN, LSTM, GRU sentiment/rating prediction workflows
🕹️ Reinforcement Learning sp-daaa-dele-ca2-pendulum-reinforcement-learning DQN-style experimentation and control-task learning
📊 Visual Analytics sp-daaa-davi-ca1-hdb-price-dashboard HDB resale analytics, Tableau workbook, cleaning/validation scripts

Technical Stack

Animated skill constellation across machine learning vision quantum MLOps data and security

AI kernels · statistical modelling · perception systems · cloud deployment · responsible engineering

Technology skill icons

PyTorch TensorFlow Keras scikit-learn Qiskit OpenCV ROS
Pandas NumPy SQL PostgreSQL SQLite statsmodels Plotly Tableau
AWS Docker FastAPI Flask GitHub Actions pytest Weights and Biases
Open the capability matrix
Capability Tools / methods Portfolio signal
Machine Learning Python, PyTorch, TensorFlow, Keras, scikit-learn, evaluation metrics Classification, regression, GANs, RL, practical ML apps
Data + Statistics Pandas, NumPy, SQL, statsmodels, Plotly/Tableau HDB analytics, wage modelling, dashboards, validation scripts
Vision + Robotics OpenCV, ROS, sensor fusion, satellite imagery, feature engineering ISR, CV classification, object detection, perception pipelines
Quantum AI Qiskit, AerSimulator, parameterised quantum circuits, NISQ-aware design HQCGAN research and arXiv preprint
Systems + Cloud Flask, FastAPI, Docker, GitHub Actions, pytest, AWS Model serving, CI/CD, security checks, deployable apps
Governance + Security threat models, audit logs, model cards, risk controls, Rust Responsible AI docs and secure endpoint tooling

Roadmap / Build Log

Animated build roadmap timeline for Goh Kun Ming

mindmap
  root((fishman7337))
    Applied AI Research
      Quantum GANs
      Honest Baselines
      Reproducible Experiments
    Perception Intelligence
      Computer Vision
      Sensor Fusion
      Remote Sensing
    AI Systems Engineering
      Flask and FastAPI
      Docker and CI/CD
      Model Serving
      Testing
    Data + Governance
      Dashboards
      Graph Intelligence
      RAG Safety
      Model Cards
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Systems Console

Animated research terminal showing AI systems, experiments, and deployment checks


GitHub Telemetry

GitHub profile details for fishman7337 GitHub summary stats for fishman7337 Productive time card for fishman7337 Repositories per language for fishman7337 Most committed languages for fishman7337 GitHub streak stats for fishman7337 GitHub activity graph for fishman7337 GitHub profile trophies
fishman7337 contribution snake animation

Contact

Email LinkedIn GitHub Research arXiv



Animated footer wave with motto

Pinned Loading

  1. hybrid-quantum-classical-gan-research hybrid-quantum-classical-gan-research Public

    A research-grade repository for Hybrid Quantum-Classical Generative Adversarial Networks (HQCGANs), comparing classical GAN baselines with noisy quantum-circuit latent priors using binary MNIST. In…

    Jupyter Notebook

  2. sp-daaa-dele-ca1-movie-review-sentiment-analysis sp-daaa-dele-ca1-movie-review-sentiment-analysis Public

    Movie review sentiment classification and rating prediction using RNN architectures (SimpleRNN, LSTM, GRU). Includes preprocessing (tokenisation, stopword removal, lemmatisation), hyperparameter tu…

    Jupyter Notebook

  3. sp-daaa-dele-ca1-vegetable-cnn-classification sp-daaa-dele-ca1-vegetable-cnn-classification Public

    Convolutional Neural Network for multi-class image classification, achieving 88% validation accuracy. Includes preprocessing, data augmentation, model training with callbacks, and performance evalu…

    Jupyter Notebook

  4. sp-daaa-dele-ca2-emnist-generative-adversarial-network sp-daaa-dele-ca2-emnist-generative-adversarial-network Public

    Generative Adversarial Network (GAN) implementation for synthesising handwritten digits from the MNIST dataset. Includes full training pipeline, visualisation of generated samples, and evaluation u…

    Jupyter Notebook

  5. sp-daaa-doaa-ca1-housing-price-ml-application sp-daaa-doaa-ca1-housing-price-ml-application Public

    EstateScope AI is a Flask-based multimodal housing valuation platform built for Singapore Polytechnic ST1516 CA1, combining tabular property features, NLP listing descriptions, image-based CNN sign…

    Jupyter Notebook

  6. sp-daaa-doaa-ca2-vegetable-classification-application sp-daaa-doaa-ca2-vegetable-classification-application Public

    VeggieAI MLOps Platform: a Flask-based vegetable image classification app with model serving, authentication, prediction history, CI/CD, pytest, security checks, Docker, and MLOps documentation.

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