ML+X Community Member Survey (Fall 2023)
Please fill out this brief survey so that we can better understand the backgrounds, practices, and needs of machine learning (ML) practitioners working in Madison. The results from this survey will assist the ML+X community in planning future events.

This survey takes 5 to 10 minutes to complete.
ML-Related Work
In this section we ask you a few questions about your ML-related work
What ML models/methods are you currently learning or using for your work?
How often do you use these programming languages in your ML-related work?
Never
Rarely
Sometimes
Often
Matlab
Python
R
Julia
Bash
C/C++
JavaScript
Scala
Java
Clear selection
Are there any other languages you sometimes or often use in your ML-related work?
How often do you use the following tools/frameworks in your ML-related work?
Never
Rarely
Sometimes
Often
HuggingFace
NVIDIA tools
PyTorch
Keras
Tensorflow
Scikit-learn (sklearn)
XGBoost
Center for High Throughput Computing (CHTC)
AWS
Google Cloud Platform
Google Colab
Google Copilot
ChatGPT
Microsoft Azure
Clear selection
How often do the following challenges impede your ML-related work? 

Never
Rarely
Sometimes
Often
Understanding the data prior to modeling (EDA pipelines)
Diagnosing and improving an ML model
Insufficient computing capabilities (memory, storage space, lack of GPUs, etc.)
Insufficient quantity of data
Insufficient quality of data
Cost of labelling data
Lack of model explanability
Undesirable forms of model bias
Moral concerns (privacy, safety, transparency, bias, potential for harm, ensuring fairness, etc.)
Regulatory concerns (compliance with laws around protected data, auditing, FERPA, HIPAA, IRB, etc.)
ML Library changes / inconsistencies
Difficulty knowing where to begin
Communicating results with stakeholders
Feature selection / feature engineering
Clear selection
Are there other challenges you sometimes or often face in your ML-related work?
In your ML-related work, how important are the following concerns to you?
Not important
A little important
Important
Very important
The model can be run on limited hardware
The model is not a black-box
The model is fair
The model is well-documented (model use cases, training data sources, model cards, etc.)
The model leads to good impacts
The model's results are interpretable by end-users
The model is accurate
Clear selection
Are their other things important to you in your ML-related work?
Next
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