%global _empty_manifest_terminate_build 0 Name: python-record-keeper Version: 0.9.32 Release: 1 Summary: Record experiment data easily License: MIT License URL: https://github.com/KevinMusgrave/record-keeper Source0: https://mirrors.nju.edu.cn/pypi/web/packages/0d/80/638964de3494cf9e7cba7ea96406b27bc5f88ea647897eb82ce45f42dd33/record-keeper-0.9.32.tar.gz BuildArch: noarch Requires: python3-numpy Requires: python3-torch %description # record-keeper ## Installation ``` pip install record-keeper ``` ## The Problem: When running machine-learning experiments, having more logged data is usually better than less. But adding new series of data to log can often require changes to your training code. When you want to log dozens of different series of data, your code starts to look awful. ## The Solution: Use RecordKeeper, and easily add loggable information when you write a new class. The example below is modified from the [pytorch-metric-learning](https://github.com/KevinMusgrave/pytorch-metric-learning/blob/master/src/pytorch_metric_learning/miners/batch_hard_miner.py) library. First, create a list that contains the names of the attributes you want to record (```self._record_these``` in the example below). ```python class BatchHardMiner(BaseTupleMiner): def __init__(self, **kwargs): super().__init__(**kwargs) self._record_these = ["hardest_triplet_dist", "hardest_pos_pair_dist", "hardest_neg_pair_dist"] ``` Then tell RecordKeeper the name of the list to read. RecordKeeper will log and save all the attributes described in the list. It'll search recursively too, if you have nested objects. ```python from torch.utils.tensorboard import SummaryWriter import record_keeper as record_keeper_package from pytorch_metric_learning import miners record_writer = record_keeper_package.RecordWriter(your_folder_for_logs) tensorboard_writer = SummaryWriter(log_dir=your_tensorboard_folder) record_keeper = record_keeper_package.RecordKeeper(tensorboard_writer, record_writer, ["_record_these"]) your_miner_dictionary = {"tuple_miner": miners.BatchHardMiner()} # Then at each iteration of training: record_keeper.update_records(your_miner_dictionary, current_iteration) ``` Now the attributes described in ```_record_these```, (specifically, ```hardest_triplet_dist```, ```hardest_pos_pair_dist```, and ```hardest_neg_pair_dist```) can be viewed on Tensorboard. These data series are also saved in sqlite and CSV format. If you only want to use Tensorboard, then pass in only a SummaryWriter, and vice versa. The dictionary that you pass into ```record_keeper.update_records``` can contain any number of objects, and for each one, RecordKeeper will check if the object has a "_record_these" attribute. As long as you're making your dictionaries programmatically, it's possible to add large amounts of loggable data without clogging up your training code. See [pytorch-metric-learning](https://github.com/KevinMusgrave/pytorch-metric-learning/) and [powerful-benchmarker](https://github.com/KevinMusgrave/powerful-benchmarker/) to see RecordKeeper in action. %package -n python3-record-keeper Summary: Record experiment data easily Provides: python-record-keeper BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip %description -n python3-record-keeper # record-keeper ## Installation ``` pip install record-keeper ``` ## The Problem: When running machine-learning experiments, having more logged data is usually better than less. But adding new series of data to log can often require changes to your training code. When you want to log dozens of different series of data, your code starts to look awful. ## The Solution: Use RecordKeeper, and easily add loggable information when you write a new class. The example below is modified from the [pytorch-metric-learning](https://github.com/KevinMusgrave/pytorch-metric-learning/blob/master/src/pytorch_metric_learning/miners/batch_hard_miner.py) library. First, create a list that contains the names of the attributes you want to record (```self._record_these``` in the example below). ```python class BatchHardMiner(BaseTupleMiner): def __init__(self, **kwargs): super().__init__(**kwargs) self._record_these = ["hardest_triplet_dist", "hardest_pos_pair_dist", "hardest_neg_pair_dist"] ``` Then tell RecordKeeper the name of the list to read. RecordKeeper will log and save all the attributes described in the list. It'll search recursively too, if you have nested objects. ```python from torch.utils.tensorboard import SummaryWriter import record_keeper as record_keeper_package from pytorch_metric_learning import miners record_writer = record_keeper_package.RecordWriter(your_folder_for_logs) tensorboard_writer = SummaryWriter(log_dir=your_tensorboard_folder) record_keeper = record_keeper_package.RecordKeeper(tensorboard_writer, record_writer, ["_record_these"]) your_miner_dictionary = {"tuple_miner": miners.BatchHardMiner()} # Then at each iteration of training: record_keeper.update_records(your_miner_dictionary, current_iteration) ``` Now the attributes described in ```_record_these```, (specifically, ```hardest_triplet_dist```, ```hardest_pos_pair_dist```, and ```hardest_neg_pair_dist```) can be viewed on Tensorboard. These data series are also saved in sqlite and CSV format. If you only want to use Tensorboard, then pass in only a SummaryWriter, and vice versa. The dictionary that you pass into ```record_keeper.update_records``` can contain any number of objects, and for each one, RecordKeeper will check if the object has a "_record_these" attribute. As long as you're making your dictionaries programmatically, it's possible to add large amounts of loggable data without clogging up your training code. See [pytorch-metric-learning](https://github.com/KevinMusgrave/pytorch-metric-learning/) and [powerful-benchmarker](https://github.com/KevinMusgrave/powerful-benchmarker/) to see RecordKeeper in action. %package help Summary: Development documents and examples for record-keeper Provides: python3-record-keeper-doc %description help # record-keeper ## Installation ``` pip install record-keeper ``` ## The Problem: When running machine-learning experiments, having more logged data is usually better than less. But adding new series of data to log can often require changes to your training code. When you want to log dozens of different series of data, your code starts to look awful. ## The Solution: Use RecordKeeper, and easily add loggable information when you write a new class. The example below is modified from the [pytorch-metric-learning](https://github.com/KevinMusgrave/pytorch-metric-learning/blob/master/src/pytorch_metric_learning/miners/batch_hard_miner.py) library. First, create a list that contains the names of the attributes you want to record (```self._record_these``` in the example below). ```python class BatchHardMiner(BaseTupleMiner): def __init__(self, **kwargs): super().__init__(**kwargs) self._record_these = ["hardest_triplet_dist", "hardest_pos_pair_dist", "hardest_neg_pair_dist"] ``` Then tell RecordKeeper the name of the list to read. RecordKeeper will log and save all the attributes described in the list. It'll search recursively too, if you have nested objects. ```python from torch.utils.tensorboard import SummaryWriter import record_keeper as record_keeper_package from pytorch_metric_learning import miners record_writer = record_keeper_package.RecordWriter(your_folder_for_logs) tensorboard_writer = SummaryWriter(log_dir=your_tensorboard_folder) record_keeper = record_keeper_package.RecordKeeper(tensorboard_writer, record_writer, ["_record_these"]) your_miner_dictionary = {"tuple_miner": miners.BatchHardMiner()} # Then at each iteration of training: record_keeper.update_records(your_miner_dictionary, current_iteration) ``` Now the attributes described in ```_record_these```, (specifically, ```hardest_triplet_dist```, ```hardest_pos_pair_dist```, and ```hardest_neg_pair_dist```) can be viewed on Tensorboard. These data series are also saved in sqlite and CSV format. If you only want to use Tensorboard, then pass in only a SummaryWriter, and vice versa. The dictionary that you pass into ```record_keeper.update_records``` can contain any number of objects, and for each one, RecordKeeper will check if the object has a "_record_these" attribute. As long as you're making your dictionaries programmatically, it's possible to add large amounts of loggable data without clogging up your training code. See [pytorch-metric-learning](https://github.com/KevinMusgrave/pytorch-metric-learning/) and [powerful-benchmarker](https://github.com/KevinMusgrave/powerful-benchmarker/) to see RecordKeeper in action. %prep %autosetup -n record-keeper-0.9.32 %build %py3_build %install %py3_install install -d -m755 %{buildroot}/%{_pkgdocdir} if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi pushd %{buildroot} if [ -d usr/lib ]; then find usr/lib -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/lib64 ]; then find usr/lib64 -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/bin ]; then find usr/bin -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/sbin ]; then find usr/sbin -type f -printf "/%h/%f\n" >> filelist.lst fi touch doclist.lst if [ -d usr/share/man ]; then find usr/share/man -type f -printf "/%h/%f.gz\n" >> doclist.lst fi popd mv %{buildroot}/filelist.lst . mv %{buildroot}/doclist.lst . %files -n python3-record-keeper -f filelist.lst %dir %{python3_sitelib}/* %files help -f doclist.lst %{_docdir}/* %changelog * Wed May 31 2023 Python_Bot - 0.9.32-1 - Package Spec generated