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.
Hybrid quantum-classical ML, GAN baselines, reproducible experiments, and evaluation discipline. |
Computer vision, satellite imagery preparation, sensor fusion, remote-sensing features, and detection pipelines. |
Flask/FastAPI apps, Docker workflows, CI/CD, model serving, tests, security checks, and MLOps docs. |
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. |
🔬 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]
|
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. |
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. |
|
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. |
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 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 |
AI kernels · statistical modelling · perception systems · cloud deployment · responsible engineering
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 |
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



