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Dillon Niederhut
Dillon Niederhut
Data Scientist, Novi Labs
Verified email at berkeley.edu - Homepage
Title
Cited by
Cited by
Year
Autoregressive and Machine Learning Driven Production Forecasting–Midland Basin Case Study
I Gupta, O Samandarli, A Burks, V Jayaram, D McMaster, D Niederhut, ...
Unconventional Resources Technology Conference, 26–28 July 2021, 3104-3117, 2021
152021
GeoSHAP: A novel method of deriving rock quality index from machine learning models and principal components analysis
T Cross, K Sathaye, K Darnell, J Ramey, K Crifasi, D Niederhut
Unconventional Resources Technology Conference, 20–22 July 2020, 1056-1064, 2020
132020
Predicting water production in the Williston Basin using a machine learning model
T Cross, K Sathaye, K Darnell, D Niederhut, K Crifasi
Unconventional Resources Technology Conference, 20–22 July 2020, 3492-3503, 2020
102020
Proceedings of the 18th Python in Science Conference
S Hossain, C Calloway, D Lippa, D Niederhut, D Shupe
SciPy, Austin, Texas, pp. 126–133,, 2019
62019
Benchmarking operator performance in the Williston Basin using a predictive machine learning model
T Cross, K Sathaye, K Darnell, D Niederhut, K Crifasi
SPE/AAPG/SEG Unconventional Resources Technology Conference, D033S072R002, 2020
52020
Deriving Time-Dependent Scaling Factors for Completions Parameters in the Williston Basin using a Multi-Target Machine Learning Model and Shapley Values
T Cross, D Niederhut, K Sathaye, K Darnell, K Crifasi
SPE/AAPG/SEG Unconventional Resources Technology Conference, D033S071R002, 2020
42020
Gesture and the origins of language
D Niederhut
The Evolution Of Language, 266-273, 2012
42012
Predictive Modeling of Well Performance Using Learning and Time-Series Techniques
J Ramey, DE Niederhut, KD Crifasi, KN Darnell
US Patent App. 17/387,766, 2022
32022
The impact of spacing and time on gas/oil ratio in the Permian Basin: A multi-target machine learning approach
K Sathaye, T Cross, K Darnell, J Reed, J Ramey, D Niederhut
Unconventional Resources Technology Conference, 20–22 July 2020, 914-916, 2020
32020
niacin: A Python package for text data enrichment
D Niederhut
Journal of Open Source Software 5 (50), 2136, 2020
32020
Understanding the spacing, completions, and geological influences on decline rates and B values
D Niederhut, A Cui, C Macalla, J Reed
SPE/AAPG/SEG Unconventional Resources Technology Conference, D031S055R002, 2022
22022
Monaco: A Monte Carlo Library for Performing Uncertainty and Sensitivity Analyses.
WS Shambaugh, M Agarwal, C Calloway, D Niederhut, D Shupe
SciPy, 244-250, 2022
22022
Quantifying the Diminishing Impact of Completions Over Time Across the Bakken, Eagle Ford, and Wolfcamp Using a Multi-Target Machine Learning Model and SHAP Values
T Cross, D Niederhut, A Cui, K Sathaye, J Chaplin
SPE/AAPG/SEG Unconventional Resources Technology Conference, D021S048R003, 2021
22021
The impact of interwell spacing over time—A machine learning approach
K Sathaye, T Cross, K Darnell, J Reed, J Ramey, D Niederhut
Unconventional Resources Technology Conference, 20–22 July 2020, 2962-2970, 2020
22020
Software Transactional Memory in Pure Python.
D Niederhut
SciPy, 9-11, 2017
22017
Beyond “neuroevidence”
D Niederhut
The past, present and future of language evolution research, 102, 2014
22014
Emotion and the perception of biological motion
D Niederhut
22009
Understanding the drivers of parent-child depletion: A machine learning approach
D Niederhut, A Cui
SPE/AAPG/SEG Unconventional Resources Technology Conference, D031S071R005, 2023
12023
Decomposition of Publicly Reported Combined Hydrocarbon Streams Using Machine Learning in the Montney and Duvernay
KN Darnell, K Crifasi, G Stotts, D Tsang, V Lavoie, T Cross, D Niederhut, ...
SPE/AAPG/SEG Unconventional Resources Technology Conference, D033S084R002, 2020
12020
Safe handling instructions for missing data.
D Niederhut
SciPy, 56-60, 2018
12018
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