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@K-RnD-Lab

[K RnD Lab]

Continuous Research and Continuous Development (CR/CD): 🧪 S (SCIENCE), 🚀 E (ENTREPRENEURSHIP), 💻 T (TECHNOLOGY) >> Inspired by SET University

🔬 K R&D Lab

Open-Source Computational Research Hub by Oksana Kolisnyk

License: MIT HuggingFace GitHub

Computational research across science, entrepreneurship, and technology

⚠️ All models are hypothesis-generating and require experimental or empirical validation.


🌐 Three Research Spheres

K R&D Lab
│
├── 🧪 SCIENCE            — biology, medicine, plant science, ecology, chemistry, cognition
├── 🚀 ENTREPRENEURSHIP   — ventures, public cases, ecosystem signals, applied investigations
└── 💻 TECHNOLOGY         — ML tools, bioinformatics pipelines, reproducible methods, infrastructure

How findings are meant to be used:

  • Scientists → take hypotheses into wet-lab or field validation
  • Founders / operators → evaluate opportunities, systems, and decision logic
  • Students & researchers → replicate, extend, cite
  • Developers → reuse tools, pipelines, dashboards, and open infrastructure

🧪 SPHERE I — SCIENCE

Computational approaches to natural sciences. Methods: bioinformatics, cheminformatics, statistical modeling, network analysis.

🩺 S1 — Biomedical & Oncology

Computational models for cancer biology, RNA therapeutics, nanoparticle delivery, biomarkers, and rare cancers.

S1 — Biomedical & Oncology
│
├── 🧬 S1-A · PHYLO-GENOMICS    ← Genomics & Variants
├── 🔬 S1-B · PHYLO-RNA         ← RNA Therapeutics
├── 💊 S1-C · PHYLO-DRUG        ← Drug Discovery
├── 🧪 S1-D · PHYLO-LNP         ← Nanoparticle Delivery
├── 🩸 S1-E · PHYLO-BIOMARKERS  ← Biomarkers & Diagnostics
└── 🧠 S1-F · PHYLO-RARE        ← Rare Cancers / Frontier

Conference-aligned expertise

  • Nucleic-acid therapeutics: technologies and applicationsS1-B and S1-D
  • Bioinformatics and AI in biomedical research → cross-cutting across S1, with reusable methods in T1/T2
  • Biomarkers and molecular diagnosticsS1-E
  • Other translational research → cross-cutting umbrella across S1, E, and T
  • Recombinant proteins and MAB development technologies → future S1-G when it becomes a repeated line of work
  • Gene editing technologies and applications in medicine → future S1-H
  • Advanced cell therapies → future S1-I
  • Structure biology → future S1-J, or part of S1-C when tied to molecular design

Potential future S1 expansion tracks:

  • S1-G Biologics & Antibody Engineering
  • S1-H Gene Editing & Functional Therapeutics
  • S1-I Cell Therapies & Translational Platforms
  • S1-J Structural Biology & Molecular Design

🌿 S2 — Plant Science & Phytochemistry

Plant-intrinsic biology: phytochemicals, plant metabolites, bioactive compounds, and plant molecular traits.

🌾 S3 — Agricultural Biology & Biofertilizers

Applied agro-biology: soil, rhizosphere, biofertilizers, crop-growth systems, and intervention logic.

⚗️ S4 — Biochemistry & Metabolomics

Cross-organism biochemical mechanisms and metabolomic signatures.

🧠 S5 — Neuroscience & Aging

What computational patterns predict neurodegeneration and aging?

🌍 S6 — Ecology & Environmental Science

Ecosystems, biodiversity, environmental communities, and climate/pollution-linked system effects.

📚 S7 — K Life OS

A science-facing lane for measurable life systems, cognition, adaptive training, self-tracking, and longitudinal human-pattern research. It now uses an A–L life-sphere structure so each major life domain can become measurable when needed.

Where master prep belongs:

  • Primary home: 📚 S7 — K Life OS
  • Scientific sub-lane: S7-I · 🔎 Career or Education
  • Current project: R1 - Master Prep Analytics

This way it is treated first and fully as a learning-and-cognition research line inside the science sphere.


🚀 SPHERE II — ENTREPRENEURSHIP

Applied research for decision-making, venture design, operating systems, market intelligence, ecosystem signals, and visible public cases.

🧭 E1 — Venture, Product & Opportunity Systems

Opportunity framing, venture logic, product direction, operating hypotheses, and decision systems that help ideas become structured bets rather than loose intuition.

E1 — Venture, Product & Opportunity Systems
│
├── E1-R1  Opportunity Mapping & Problem Framing
├── E1-R2  Product / Venture Validation
└── E1-R3  Operating System Design

📊 E2 — Market, Audience & Behavioral Intelligence

Audience signals, segmentation, campaign logic, positioning research, and behavioral patterns translated into practical market insight.

E2 — Market, Audience & Behavioral Intelligence
│
├── E2-R1  Audience Segmentation
├── E2-R2  Campaign & Messaging Effectiveness
└── E2-R3  Consumer Behavior Modeling

🤝 E3 — Ecosystem, Partnerships & External Signals

Ecosystem mapping, partnership landscapes, social/open signals, and external monitoring that help locate leverage, context, and strategic timing.

E3 — Ecosystem, Partnerships & External Signals
│
├── E3-R1  Ecosystem Mapping
├── E3-R2  Partnership & Stakeholder Landscapes
└── E3-R3  Open, Social & Signal Tracking

🗂️ E4 — Applied Investigations & Public Cases

Cross-domain investigations that are visible, systems-facing, and useful as public case studies rather than private notes.

E4 — Applied Investigations & Public Cases
│
├── E4-A — Systems & Workflow Cases
├── E4-B — Learning & Preparation Cases
└── E4-C — Life OS & Longitudinal Self-Research Cases

How to use E4 correctly:

  • E4-A — workflows, operations, process evolution, system cleanup
  • E4-B — preparation dashboards, learning cases, adaptive progress stories
  • E4-C — broader life-system analytics only when they become real longitudinal research rather than private journaling

💻 SPHERE III — TECHNOLOGY

Computational tools, automation, reproducibility, dashboards, and open research infrastructure. Methods: machine learning, NLP, statistical modeling, software engineering, and interface design for usable research systems.

Bio-oriented tooling belongs in this sphere when the output is a reusable method, scoring system, interface, or infrastructure layer rather than a biological claim itself.

🛠️ T1 — Research Tools, ML & Analytical Engines

Reusable engines, models, and pipelines for scientific and analytical work.

T1 — Research Tools, ML & Analytical Engines
│
├── T1-R1  OpenVariant Engine
├── T1-R2  Corona ML Pipeline
├── T1-R3  AutoCorona NLP
└── T1-R4  Synthetic Lethal Finder

📐 T2 — Reproducibility, Scoring & Method Systems

Frameworks, scoring systems, confidence labels, evaluation logic, and reproducible analytical methodology.

T2 — Reproducibility, Scoring & Method Systems
│
├── T2-R1  Research Gap Scoring
├── T2-R2  Confidence Labeling
└── T2-R3  Reproducible Evaluation Workflows

🖥️ T3 — Dashboards, Interfaces & Open Infrastructure

Reusable interfaces, public dashboards, literature-gap tooling, registries, and open infrastructure that make research more usable and inspectable.

T3 — Dashboards, Interfaces & Open Infrastructure
│
├── T3-R1  Dashboard Templates & Public Interfaces
├── T3-R2  Literature Gap Detection
└── T3-R3  Dataset Registries & Open Research Infrastructure

🗂️ Repository & Naming Convention

Naming pattern: SPHERE-DIRECTION_RN_MonthYear

Examples:
  S1-Biomedical_R1_03-2026       ← OpenVariant
  S1-Biomedical_R11_06-2026      ← LNP in CSF
  S2-Plant_R1_09-2026            ← Phytochemical profiler
  S7-CareerEducation_R1_03-2026  ← master prep analytics / preparation research
  E4B-LearningCases_R1_03-2026   ← public dashboard mirror for preparation case
  T1-MLTools_R2_04-2026          ← reusable research pipeline

Standard repo structure:

  • README.md — research question, methods, key findings
  • report.md — full findings plus confidence labels
  • CITATION.cff — citation metadata
  • LICENSE — MIT
  • requirements.txt — Python dependencies
  • app.py — Gradio interactive demo if applicable
  • data/raw/ — original public datasets or download scripts
  • data/processed/ — cleaned, analysis-ready data
  • figures/ — plots and visualizations
  • execution_trace.ipynb — reproducible notebook

🧭 Navigation

New to the lab?

  • Start with the demo spaces and readable repo overviews
  • Move from beginner review to reproducible notebooks and reports

Scientist / researcher?

  • Use report.md in each repo for findings, datasets, and confidence labels
  • Treat all claims as computational until experimentally validated

Founder / operator?

  • Focus on ENTREPRENEURSHIP lanes for venture logic, market sensemaking, systems, and public-case framing

Developer / contributor?

  • Focus on TECHNOLOGY lanes for reusable tools, dashboards, reproducibility, and open infrastructure

📖 Citation

@misc{kolisnyk2026krdlab,
  author    = {Kolisnyk, Oksana},
  title     = {K R&D Lab: Open-Source Computational Research Hub},
  year      = {2026},
  publisher = {GitHub},
  url       = {https://github.com/K-RnD-Lab},
  note      = {Three spheres: Science, Entrepreneurship, Technology. All results are hypothesis-generating.}
}

⚠️ Disclaimer

All computational models are research-grade and experimental. Results labeled simulated require validation before clinical, pharmaceutical, agricultural, or commercial application. This work does not constitute medical, agronomic, or business advice.

Built with Python · Gradio · scikit-learn · pandas · matplotlib
© 2026 Oksana Kolisnyk · KOSATIKS GROUP · MIT License

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