Projects

Digital geoscience, applied ML, and field visualization work

Selected projects focused on upstream oil and gas workflows, seismic interpretation, reservoir characterization, Python automation, AI-assisted workflows, and decision-support applications.

2. Applied ML

Seismic Attribute ML - Reservoir Property Prediction and Interpretation QC

Python-based workflows for seismic-attribute-driven reservoir property prediction using well-calibrated data, feature testing, blind-well validation, model QC, and geological consistency checks.

Problem addressed
Reservoir property prediction requires both statistical testing and geological consistency, especially when well control is limited.
Workflow
Feature screening, model training, blind-well validation, prediction review, and interpretation QC using seismic attributes and well data.
Technologies
Python, pandas, NumPy, scikit-learn, XGBoost concepts, Jupyter, seismic attributes, well data, reservoir characterization.
Why it matters
Supports more disciplined use of machine learning in reservoir characterization by tying prediction outputs back to geoscience checks.

3. Interpretation automation

OpendTect + Python - ML-Assisted Seismic Interpretation Automation

Developing workflows using open-source seismic interpretation packages such as OpendTect and Python-based geoscience libraries to enhance automation of structural and stratigraphic seismic interpretation through machine learning, geometric analysis, and geophysical attribute workflows.

Problem addressed
Seismic interpretation workflows can include repetitive manual screening, attribute review, and QC steps that are candidates for automation support.
Workflow
Prototype fault detection, horizon analysis, seismic facies, geometric attributes, geophysical attributes, and interpretation QC workflows.
Technologies
OpendTect, Python, seismic attributes, geometric analysis, geophysical attribute workflows, machine learning concepts.
Why it matters
Connects interpretation experience with open-source tools and Python workflows that can reduce repetitive work and improve QC discipline.

4. Reservoir uncertainty

STOIIP Monte Carlo App - Reservoir Uncertainty and ZMAP Grid Integration

Streamlit-based reservoir volumetrics workflow for STOIIP estimation using Monte Carlo simulation, uncertainty handling, ZMAP reservoir grid input, spatial mapping, and 3D visualization concepts.

Problem addressed
Volumetric uncertainty needs transparent assumptions, repeatable calculations, and spatial context.
Workflow
Input distribution handling, Monte Carlo simulation, ZMAP grid integration, uncertainty summaries, maps, and visualization concepts.
Technologies
Python, Streamlit, NumPy, pandas, ZMAP grids, reservoir volumetrics, 3D visualization concepts.
Why it matters
Makes uncertainty review more repeatable and easier to communicate across technical and management audiences.

5. Structural QC

Fault Damage and Amplitude Profile Analysis

Python/Jupyter workflow for extracting fault-normal seismic or grid profiles, analyzing amplitude variation around interpreted fault segments, and supporting structural interpretation QC.

Problem addressed
Fault-related amplitude and grid behavior can be difficult to compare consistently along interpreted structural trends.
Workflow
Extract fault-normal profiles, compare amplitude behavior, review trends, and support interpretation QC.
Technologies
Python, Jupyter, NumPy, pandas, seismic/grid profiles, visualization workflows.
Why it matters
Turns structural interpretation checks into repeatable analysis rather than one-off visual inspection.

6. Geoscience utilities

ZMAP / GeoTIFF / Geoscience Data Automation Utilities

Utilities and workflows for ZMAP grid handling, GeoTIFF processing, Excel-to-LAS conversion, report building, visualization, and repetitive geoscience data preparation tasks.

Problem addressed
Geoscience projects often lose time to repeated data conversion, formatting, and reporting tasks.
Workflow
Read, write, convert, visualize, and package technical data for review and communication.
Technologies
Python, pandas, NumPy, geospatial data handling, GeoTIFF, ZMAP, Excel, LAS, reporting utilities.
Why it matters
Reduces manual preparation work and improves consistency across technical deliverables.