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Alexandre Rademaker edited this page Jun 18, 2021 · 45 revisions

Contents

  1. Overview
  2. Obtaining PET
  3. Compiling and Installing PET
  4. PET for developers
  5. Compiling a grammar
  6. Running PET
  7. Tips and Tricks
  8. History

Overview

The PET system for efficient processing of unification-based grammars is an industrial strength implementation of the typed feature structure formalism used in DELPH-IN grammars. PET reads the exact same source files (modulo some configuration options) as the LKB grammar development environment and produces identical results. In a nutshell, PET can be viewed as a high-efficiency batch processing and application delivery engine, while the LKB mainly targets interactive grammar development.

Some features of PET include:

  • unknown word support, instantiating generic lexical entries at run-time

  • subsumption-based ambiguity factoring (giving a significant improvement in parsing efficiency for long inputs)

  • parse ranking according to a statistical parse selection model

  • compilation of the (Common-Lisp) MRS LKB code base, enabling output of (R)MRSs

  • output of fragmentary analysis hypotheses in case of parse failures

  • lattice input (via the YY, PIC and SMAF input formats, cf. PetInput)

  • a variety of XML-based input formats that generalize the lattice-oriented YY input mode

  • pruning of the search space using a PCFG model

When installed, PET comprises the executable files cheap (bottom-up chart parser) and flop (the grammar compiler).

Obtaining PET

PET is hosted at http://pet.opendfki.de/, using the Trac system. It features a Subversion repository for versioned source code management, an issue tracker for filing bug reports and feature requests and a Wiki, where you can find further instructions on accessing the Subversion repository and using Trac. There you can find the most recent source tarball distribution as well as the development tree.

There are no official binary distributions of PET, and users should expect to compile their own executable files from source (see the next section). Ubuntu users, however, can also obtain a compiled version of PET from the Ubuntu NLP Repository.

Compiling and Installing PET

Current PET development is exclusively carried out on Linux (x86.32) environments, hence most (reasonably) recent Linux distributions should work well. PET ports for Solaris (sparc, using gcc) and Windows (x86.32, using either CygWin or Borland C++) used to be supported, and in principle any platform for which a suitable C++ compiler is available (and for which external libraries used by PET exist) should allow successful compilation. Your mileage may vary.

In order to compile PET with complete functionality, a number of external packages (PetDependencies) need to be installed; in general, see the documentation for each of these packages, but some coarse instructions on versions that are known to work are available from the PetDependencies page. Compiling without some of these packages should also be possible (giving up, for example, UniCode support, [incr tsdb()] integration, or the embedded MRS code), although these configurations have not been tested for quite some time. See ./configure --help for a list of all configuration options.

PET uses the GNU build system, making it easy to configure and install the package. Note that if you've checked out a PET branch from the Subversion repository, you have to run autoreconf -i once (requiring the autoconf and automake packages), in order to generate the necessary build files (this is neither needed for the source tarball distribution nor after svn update). Finally, you minimally have to execute the following commands:

./configure
make
make install  # (as root)

The README file and the ./configure --help command give detailed instructions on how to configure and compile PET.

PET for developers

For instructions how to set up PET as a project in Eclipse, see PetEclipse. The Eclipse IDE for C/C++ Developers (a.k.a. Eclipse CDT) offers a feature-rich development platform for C++, which facilitates editing, navigating, and debugging C++ source code. There is a Roadmap.

Compiling a grammar

One needs to preprocess the grammar files (for example english.tdl for the ERG grammar) to be used with pet:

 flop english.tdl

This command generates the compiled grammar english.grm.

Running PET

The PET software has been used in a range of projects (and one commercial product), using grammars of several languages. There is a relatively large number of options and run-time parameters that allow customization of PET behavior to various tasks. Maybe the biggest factor of variation is in (a) how input to the cheap parser is prepared for PET-internal processing and in (b) what form analysis results are output (or returned to the caller) after parsing; these are discussed on separate PetInput and PetOutput pages, respectively. Many other aspects of PET run-time behavior can be controlled using command-line options (see the PetOptions page), given to the flop or cheap binaries upon invocation, and grammar-specific settings (see the PetParameters page), supplied in TDL syntax as part of each grammar. Since revision 498 in the main branch PET employs a logging framework for configurable log output, which is described in PetLogging. Finally, when using PET as a processing client to the [incr tsdb()] profiler, some of the options and parameters are controlled from within the [incr tsdb()] environment.

For an ongoing discussion on a PET API, cf. FeforPetApi.

Tips and Tricks

Some notes on robust parsing with PET: unknown word handling, memory limits and so on.

The PET build process attempts to set appropriate mmap setting for your architecture. However, this automation is not always successful. If on running flop or cheap you get an error message like

alloc: no space (up = b7f35000d, down = b7f35000d)
terminate called after throwing an instance of 'tError'
Aborted

then you should try changing your mmap settings, followed by recompilation. If you look in common/chunk-alloc.cpp, you will find a section like:

#define _MMAP_ANONYMOUS
#define _CORE_LOW  0x50000000
#define _CORE_HIGH 0xbf429fff
#define _MMAP_DOWN

Simply removing the line

#define _MMAP_DOWN

works on an IBM T41 laptop running SuSE 9.3. But trial and error may be necessary!

Mmap errors are likely kernel-specific, rather than tied to a particular linux-distro. The above SuSE 9.3 setting also works under Ubuntu 5.10 with kernel >= 2.6.10 and has been tested on an IBM Thinkpad T42 and a Dell Precision 4100.

History

PET was originally developed by UlrichCallmeier at DFKI GmbH and Saarland University, and some of its design is documented in his 2001 MSc thesis. The software subsequently served to build a commercial email auto response product (by YY Technologies, Mountain View, CA), ported to Windows NT, generally `hardened' (eliminating memory leakage, increasing robustness to exceptional situations, et al.), and extended in functionality and interfaces (including UniCode support, unknown word support, server and API library modes, lattice input, and initial MRS support); most of this work was done by Ulrich with help from StephanOepen and BerndKiefer (of DFKI). As part of the EU-funded Deep Thought project, Ulrich and Stephan later added support for subsumption-based ambiguity factoring (giving a significant improvement in parsing efficiency for long inputs), facilities to rank alternate parses according to a statistical (Maximum Entropy) parse selection model (which, typically, one would obtain using the Redwoods tools and a hand-constructed treebank), and the ability to compile in the (Common-Lisp) MRS code base also used in the LKB, thus enabling output of (R)MRSs in various standard formats.

Towards the end of 2003, Ulrich retired from active PET development, and Bernd has since been the main developer (with occasional help from others, specifically FrederikFouvry and YiZhang of Saarland University and Stephan). PET has seen a range of substantial additions in functionality since, including the ability to add (leaf) types at run-time, output fragmentary analysis hypotheses in case of parse failures, and an XML-based input format that generalizes the lattice-oriented YY input mode.

In 2006 YiZhang (Saarland University) added the ability to do selective unpacking, greatly decreasing the memory consumption for n-best parsing. Later, Yi added native C++ support for MRS extraction from parse results and MRS output in various formats. BartCramer added the possibility to constrain the search space by using a PCFG-guided pruning of tasks, on the chart cell level. In 2010, PeterAdolphs (DFKI Berlin) added chart mapping and the FSC input format.

To cite

Callmeier, Ulrich. "Efficient parsing with large-scale unification grammars." PhD diss., Master’s thesis, Universität des Saarlandes, Saarbrücken, Germany, 2001.

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