-
Notifications
You must be signed in to change notification settings - Fork 6
ellisk42/sasquatch
Folders and files
Name | Name | Last commit message | Last commit date | |
---|---|---|---|---|
Repository files navigation
# Unsupervised program synthesis # The general idea is to find the most compressive representation of the data, where we consider representations that are of the form f(x_i), where f is a program to be synthesized and x_i is an unobserved argument to that program. Through some noise model, f(x_i) produces the ith observation. Thus, we compress, or "squash" the data, hence the name Sasquatch. To run this software on the SVRT problems: - setup a python virtual environment - install Z3 locally into the virtual environment - clone this repo into the virtual environment - Download SVRT to gain access to the images - run `python parse.py <n>` where `<n>` is an SVRT problem number ## Dependencies ## - Z3 ## Project Structure ## The project includes the following files: - README: this file - setup.py: installation information for pip - bin/: the executable files associated with this project - experiment.sh: a wrapper for running iterative experiments on MIT's athena computers - sasquatch/: the project's python files - sasquatch.py: the core wrapper around Z3 for squashing via program synthesis - experiments/: applications of Sasquatch - morphology/: an experiment in discovering programs for English morphology - celex.py - corpus.py - ipa.py - language.py - lexicon.py - loop_language.py - morphology.py - morphology_baseline.py - process_verbs.py - verbs - regress/: an experiment in discovering programs for linear regression - regress.py - svrt/: an experiment in discovering programs for SVRT image classification - classifier.py - dinnerParty.py: an implementation of parallel mapping - find_bad_parses.py - parse.py - parser_utilities.py - vision.py - vision_data.py - vision_notes - analysis/: - accuracies.py - curves.py - figures.py - final_data/: - many data files - neural/: - collect_data.py - neural.lua
About
No description, website, or topics provided.
Resources
Stars
Watchers
Forks
Releases
No releases published
Packages 0
No packages published