git clone --recursive [email protected]:microsoft/loop-invariant-gen-experiments
# Install opam (OCaml package manager)
sudo apt install opam # or dnf, pacman, etc.
# Or you can download an opam binary, put it in the PATH
# and run it directly (no sudo required)
# Initialize opam (install an OCaml compiler)
opam init --compiler 4.14.1 # may take a while
eval $(opam env)
# Install Frama-C (including dependencies)
opam install frama-c=27.1
# ARCH is one of {x86_64-linux, win64}
wget http://cvc4.cs.stanford.edu/downloads/builds/{ARCH}-opt/cvc4-1.6-{ARCH}-opt
mv cvc4-1.6-{ARCH}-opt cvc4
# Add cvc4 to your PATH
opam install alt-ergo=2.4.3
wget wget https://github.com/Z3Prover/z3/releases/download/z3-4.12.2/z3-4.12.2-x64-glibc-2.31.zip
unzip z3-4.12.2-x64-glibc-2.31.zip
ln -s z3-4.12.2-x64-glibc-2.31/bin/z3
# Add z3 to your PATH
rm -f ~/.why3.conf
why3 config detect
# Ensure python version >= 3.11
# From src/
pip install -r requirements.txt
cd src/
python3 build_parser.py
Depending on how you access the LLM, you can follow the steps in the LLM access section below.
You can use Dockerfile
in src
to build a docker image and run it.
You can build the docker image by running the following commands starting from the root of this repository:
(If you get a permission error, you may need to run the following command with sudo
)
cd src/
docker build -t loopy --build-arg USER_ID=$(id -u) --build-arg GROUP_ID=$(id -g) .
Once the image is built, you can run it using the following command from the root of this repository:
(If you get a permission error, you may need to run the following command with sudo
)
docker run -it --rm \
--mount type=bind,source="$(pwd)"/data,target=/home/user/data/ \
--mount type=bind,source="$(pwd)"/config,target=/home/user/config/ \
--mount type=bind,source="$(pwd)"/experiments,target=/home/user/experiments/ \
--mount type=bind,source="$(pwd)"/templates,target=/home/user/templates/ \
--mount type=bind,source="$(pwd)"/logs,target=/home/user/logs/ \
--user "$(id -u):$(id -g)" \
-e OPENAI_API_KEY=<API_KEY> \
-e OPENAI_API_BASE=<API_ENDPOINT> \
-e OPENAI_API_VERSION=<API_VERSION> \
loopy /bin/bash
# If you don't need to interact with the Azure OpenAI API, skip the -e CLI options
If you are using an Azure OpenAI endpoint, you need to set the following environment variables before running the toolchain:
export OPENAI_API_KEY=<your key>
export OPENAI_API_BASE=<your API endpoint>
export OPENAI_API_VERSION=<your API version>
You should now be able to run the toolchain using the following command:
cd src/
python3 main.py --config-file <YAML_config_file> --max-benchmarks <max_benchmarks> [options]
If you are using a different endpoint, you will have to implement a wrapper class that inherits Provider
in llm_api_client.py
.
See the AzureOpenAI
class for an example.
If you are hosting a model locally, you can use a local model inference/serving engine and make HTTP requests to it. You will have to set the OPENAI_API_BASE
environment variable to the appropriate URL.
Extract the dataset from the ZIP file and place it in the root directory of the repository. You can run the toolchain using the following command:
cd src/
python3 main.py --config-file <YAML_config_file> --max-benchmarks <max_benchmarks> --no-preprocess [options]
where options can be any of --loop-invariants
, --termination-analysis
, etc. Use python3 main.py --help
to see the list of available options.
The --no-preprocess
option is used to skip the pre-processing step, since the datasets are already pre-processed.
If you are using a different dataset with assertions in non-ACSL syntax, you can skip using this option.
Pre-processing involves removing comments, converting the assertions to ACSL syntax, and filtering out benchmarks not supported by the specified benchmark_features.
The YAML configuration file contains the following fields:
checker: <checker_name> # only frama-c is supported for now
checker_timeout: <checker_options> # timeout argument for the checker, in seconds
model: <model_name> # the LLM to use (gpt-4, gpt-4-32k, gpt-3.5-turbo, etc.)
benchmarks: <path_to_benchmarks_file> # this file must contain the list of benchmarks to use, one file path per line, and the path must be relative to src/
benchmark_features: <features_of_the_benchmarks> # this string should indicate the features of the benchmarks under consideration.
# For e.g., "one_loop_one_method" describes benchmarks with a single loop and a single method.
# Other possible values are "multiple_methods_no_loops", "arrays_pointers_multiple_loops", "termination_one_loop_one_method".
# (If "termination" is specified, variants will be inferred. If "multiple_methods" is specified, pre-post conditions will be inferred).
debug: <debug_mode> # if true, the toolchain will print debug information
See config/sample_config.yaml for an example of a configuration file.
The dataset of pre-processed benchmarks used in our experiments is available here. These benchmarks were curated from different sources that may each carry their own licenses. The individual licenses are present in the respective directories in the ZIP file. Pre-processing involves removing comments, and converting the assertions to ACSL assertions (for Frama-C). The ZIP file contains the following subdirectories with pre-processed benchmarks:
loop_invariants
: Contains numerical benchmarks with one loop and one method. Loop invariants are to be inferred for the loop in each benchmark to prove the assertion(s) in the benchmark.arrays
: Contains benchmarks with arrays, one method and at least one loop. Loop invariants are to be inferred for the loop(s) in each benchmark to prove the assertion(s) in the benchmark.termination
: Contains numerical benchmarks with one loop, one method. A ranking function (and supporting loop invariants if necessary) are to be inferred to prove termination of the loop.recursive_functions
: Contains benchmarks with recursive functions, for which pre-post conditions are to be inferred, to prove the assertion(s) in each benchmark.
The loop invariants generated by Loopy can be found in the excel sheet here. This sheet includes the benchmarks that were successfully verified by Loopy.
This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com. When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.
This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.
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