Projects/Automatic translation software: Difference between revisions
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== In a word == |
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== !!! Help from linguist, software developers and general dogs bodies gratefully received !!! == |
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=== please email [mailto:olpc-automatic-translation@googlegroups.com Mailing List] for more info === |
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This projects aims at developing Machine Translation software on the OLPC. For more details see the Mission Statement and Objectives. At the moment we have translations running on the OLPC already. What could we do from there to make it a usable tool? What could *you* do? See Project Ideas below. This is becoming real ...and very exciting! |
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== Getting started == |
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So you want to see how Automatic Translation on the OLPC works? You've come to the right place. We've put together a working demo of the Moses decoder ('translator') for you to try out. It's a command line program, so you have to be familiar with Linux. But hey, the OLPC is a linux box out of the box! |
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More details of the Moses toolkit can be found here: |
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http://www.statmt.org/moses |
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Steps: |
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1. Run a virtual machine of the OLPC (If you have an actual OLPC, forget this step). I personally use Virtual Box (by Sun/Oracle, it's free and open source) |
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http://www.virtualbox.org/ |
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There are prepackaged VM files located here |
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http://dev.laptop.org/pub/virtualbox/ |
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I use version 656 because I have an OLPC of the same version, but take your pick |
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2. Download the model file into the olpc |
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http://groups.inf.ed.ac.uk/hoang/hieu/olpc/en-ht.tgz |
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and the decoder |
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http://groups.inf.ed.ac.uk/hoang/hieu/olpc/moses |
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This may be a bit tricky as the Web browser on the OLPC takes some getting used to. You can install wget |
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su root |
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yumm install wget |
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3. Make the moses decoder executable |
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chmod +x moses |
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3. Unzip the file and cd into the directory |
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tar zxf en-ht.tgz |
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cd model |
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4. Run the decoder, wait for 30 secs |
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../moses -f moses.ini |
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until the prompt: |
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Created input-output object : [1.000] seconds |
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5. Type in some English and watch it translate (here, into Haitian Creole) |
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i am a doctor |
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Translating: i am a doctor |
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reading bin ttable |
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size of OFF_T 8 |
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binary phrasefile loaded, default OFF_T: -1 |
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Collecting options took 0.200 seconds |
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Search took 0.280 seconds |
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BEST TRANSLATION: mwen se yon doktè [1111] [total=-0.520] <<0.000, -4.000, 0.000, -0.511, 0.000, 0.000, 0.000, 0.000, 0.000, -16.452, 0.000, -5.911, -0.693, -3.622, 1.000>> |
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mwen se yon doktè |
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Translation took 0.280 seconds |
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Finished translating |
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If you read on and think this is a great project, you've got a bit of spare time, and would like to help out in some way, we would love to hear from you. |
|||
We're especially looking for software developers, linguists, but will take on general dogs bodies, as we can all make our unique contribution. |
|||
Please email '''hieuhoang (at) gmail''', in the first instance, for more info |
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== Mission Statement and Objectives == |
== Mission Statement and Objectives == |
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We are creating a language translation application for the OLPC using the latest cutting-edge tools and systems taken from the automatic translation research community. Specifically, we are developing the application based on the Moses toolkit as the core component. |
We are creating a language translation application for the OLPC using the latest cutting-edge tools and systems taken from the automatic translation research community. Specifically, we are developing the application based on the ''Moses toolkit'' as the core component. |
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Unlike many automatic translation approaches, the toolkit support any language pair. Just add data! For example, our friends at Edinburgh University have used the same toolkit to translate 11 European language pairs. |
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We are concentrating our effort developing a system for Quechua-Spanish translation to be deployed in Peru. However, the application framework and core will support any language pair. |
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http://www.statmt.org/matrix/ |
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Moses is an cutting-edge, open-source statistical machine translation (SMT) system. It is a widely used tool for academic research into automatic translation. Its reliability and maturity has also meant that the system has also gained traction outside of academia as a core component in commercial translation systems. |
Moses is an cutting-edge, open-source statistical machine translation (SMT) system. It is a widely used tool for academic research into automatic translation. Its reliability and maturity has also meant that the system has also gained traction outside of academia as a core component in commercial translation systems. |
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Firstly, it will be a challenge to run a complex translation system on a resource constrained device like the OLPC. We intend to use our expertise as the creators and developers of the Moses system to reduce the resource requirements thus enabling the application to run with acceptable performance. |
Firstly, it will be a challenge to run a complex translation system on a resource constrained device like the OLPC. We intend to use our expertise as the creators and developers of the Moses system to reduce the resource requirements thus enabling the application to run with acceptable performance. |
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Secondly, a front-end graphical user interface (GUI) needs to be developed. The Moses system was designed to work with GUI, however, only a command line interface has thus far been implemented for the research oriented user-base. |
Secondly, a front-end graphical user interface (''GUI'') needs to be developed. The Moses system was designed to work with GUI, however, only a command line interface has thus far been implemented for the research oriented user-base. |
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Lastly, parallel |
Lastly, ''parallel text corpora'' need to be collated from which the translation ‘dictionary’ can be created for each language pair. The collection of such corpora is ad-hoc and may differ from country to country, however, such corpora are usually created from the output of governmental or mass media organisations. With the help of these resources, we will be able to build translation systems for languages pairs in many developing countries which are poorly served by commercial translation systems. The parallel corpora will be collated in collaboration with other researchers, volunteers and other interested parties. |
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Aside from the philanthropic aspects of the proposal, we hope that this project will increase interest and research into translation of minority languages in developing countries. |
Aside from the philanthropic aspects of the proposal, we hope that this project will increase interest and research into translation of minority languages in developing countries. |
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== Project Ideas == |
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Running a resource intensive application such as the Moses decoder is a challenge even on large servers in a well-funded academic institution. |
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We have outlined some ideas below to develop a system to enable school children in developing, equipped with a low resource laptop, to use our translation software. |
|||
1. Create a client-server application which will run the resource intensive application on a server. Clients will be a Web browser or a custom Pythong app. |
|||
- Skills required: Python, Apache, C++ |
|||
2. Fork the decoder source code to enable it to run on the OLPC. Minimize memory consumption, discard code not likely to be used by the application. |
|||
- Skills required: C++ |
|||
3. Minimize the work the decoder has to do by using a greedy search instead of a beam search, or have a very tight beam and other threshold. |
|||
- Skills required: C++, statistical machine translation |
|||
Other ideas and to-do's: |
|||
4. Different language pairs |
|||
5. Speech-to-speech translation |
|||
6. Integrating Optical Character Recognition (OCR) with translation |
|||
7. Enable sharing of user vocabulary via the OLPC Mesh network |
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8. Distributed training of data on the OLPC |
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To find out more about the Moses automatic translation toolkit, check out |
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http://www.statmt.org/moses/ |
|||
and sign up to the mailing list |
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[http://mailman.mit.edu/mailman/listinfo/moses-support Moses Support] |
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== Progress == |
== Progress == |
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12th march 2009 |
====12th march 2009==== |
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OLPC laptops received ! It beautiful. And small |
OLPC laptops received ! It beautiful. And small |
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Line 30: | Line 107: | ||
[[Image:DSCF6767.JPG]] |
[[Image:DSCF6767.JPG]] |
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What we've found out about the hardware: |
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430Mhz CPU. AMD geode x86 processor |
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237MB RAM |
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1GB flash disk |
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Linux OS |
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The UI feels a bit sluggish. I'm apprenhensive about putting the a resource intensive decoder onto the machine |
|||
====3rd May 2009==== |
|||
Finally got some time to look into developing a GUI for the OLPC. The OLPC used something called Sugar, which I think is the X-Windows windowing manager. The preferred language is Python, using a library call PyGTK, which looks like TCL/TK from way back. After a few hours googling and mashing up example programs. Managed to knock up a rudimentary GUI that should be able to function as the basis for the rest of the development. Its pretty basic, but has most of what's needed, development wise. |
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[[Image:ui1.JPG]] |
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It's able to call the executable with the required ini file. However, the input & output of the decoder is completely detached from the GUI. The next step is to integrate the decoder and GUI. The suggestions have been to use TCP/IP ports or wrap the decoder with a SOAP server. However, just been thinking about this and may be able to use named pipes. This was done a while ago but had reliabilty issues. Will look at this in more details next time. |
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====31st May 2009==== |
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Hooked the Moses lib into a socket server so can request translations client-server style. Hopefully, this will reliable and flexible way of calling the decoder from the front end. It will also allow us to move the servver part to the OLPC school server should the laptop be too feeble to handle decoding for realistic models. |
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Integrated tokenizer from borrowed from Hoang Industries Conglomates. |
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[[Image:Picture_1.jpg]] |
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====12th Jully, 2009==== |
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Finally got the python gui to talk to the moses server! The end of the beginning |
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[[Image:OLPC-trans-12-7-09.png]] |
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====30th April 2010==== |
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After a long break, come back to the project with a trained model for Haitian Creole and refreshed webpage. |
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== Credits == |
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Lovingly created and nurtured by Hieu Hoang,with support from his office mates Loic Dugast, Abhishek Arun. With help and encourage of the Edinburgh Uni SMT team |
Latest revision as of 19:31, 19 December 2010
In a word
This projects aims at developing Machine Translation software on the OLPC. For more details see the Mission Statement and Objectives. At the moment we have translations running on the OLPC already. What could we do from there to make it a usable tool? What could *you* do? See Project Ideas below. This is becoming real ...and very exciting!
Getting started
So you want to see how Automatic Translation on the OLPC works? You've come to the right place. We've put together a working demo of the Moses decoder ('translator') for you to try out. It's a command line program, so you have to be familiar with Linux. But hey, the OLPC is a linux box out of the box!
More details of the Moses toolkit can be found here:
http://www.statmt.org/moses
Steps:
1. Run a virtual machine of the OLPC (If you have an actual OLPC, forget this step). I personally use Virtual Box (by Sun/Oracle, it's free and open source) http://www.virtualbox.org/ There are prepackaged VM files located here http://dev.laptop.org/pub/virtualbox/ I use version 656 because I have an OLPC of the same version, but take your pick 2. Download the model file into the olpc http://groups.inf.ed.ac.uk/hoang/hieu/olpc/en-ht.tgz and the decoder http://groups.inf.ed.ac.uk/hoang/hieu/olpc/moses
This may be a bit tricky as the Web browser on the OLPC takes some getting used to. You can install wget su root yumm install wget
3. Make the moses decoder executable chmod +x moses
3. Unzip the file and cd into the directory tar zxf en-ht.tgz cd model 4. Run the decoder, wait for 30 secs ../moses -f moses.ini until the prompt: Created input-output object : [1.000] seconds
5. Type in some English and watch it translate (here, into Haitian Creole) i am a doctor Translating: i am a doctor reading bin ttable size of OFF_T 8 binary phrasefile loaded, default OFF_T: -1 Collecting options took 0.200 seconds Search took 0.280 seconds BEST TRANSLATION: mwen se yon doktè [1111] [total=-0.520] <<0.000, -4.000, 0.000, -0.511, 0.000, 0.000, 0.000, 0.000, 0.000, -16.452, 0.000, -5.911, -0.693, -3.622, 1.000>> mwen se yon doktè Translation took 0.280 seconds Finished translating
If you read on and think this is a great project, you've got a bit of spare time, and would like to help out in some way, we would love to hear from you.
We're especially looking for software developers, linguists, but will take on general dogs bodies, as we can all make our unique contribution.
Please email hieuhoang (at) gmail, in the first instance, for more info
Mission Statement and Objectives
We are creating a language translation application for the OLPC using the latest cutting-edge tools and systems taken from the automatic translation research community. Specifically, we are developing the application based on the Moses toolkit as the core component.
Unlike many automatic translation approaches, the toolkit support any language pair. Just add data! For example, our friends at Edinburgh University have used the same toolkit to translate 11 European language pairs.
http://www.statmt.org/matrix/
Moses is an cutting-edge, open-source statistical machine translation (SMT) system. It is a widely used tool for academic research into automatic translation. Its reliability and maturity has also meant that the system has also gained traction outside of academia as a core component in commercial translation systems.
The challenge of creating an SMT system on the OLPC is immensed.
Firstly, it will be a challenge to run a complex translation system on a resource constrained device like the OLPC. We intend to use our expertise as the creators and developers of the Moses system to reduce the resource requirements thus enabling the application to run with acceptable performance.
Secondly, a front-end graphical user interface (GUI) needs to be developed. The Moses system was designed to work with GUI, however, only a command line interface has thus far been implemented for the research oriented user-base.
Lastly, parallel text corpora need to be collated from which the translation ‘dictionary’ can be created for each language pair. The collection of such corpora is ad-hoc and may differ from country to country, however, such corpora are usually created from the output of governmental or mass media organisations. With the help of these resources, we will be able to build translation systems for languages pairs in many developing countries which are poorly served by commercial translation systems. The parallel corpora will be collated in collaboration with other researchers, volunteers and other interested parties.
Aside from the philanthropic aspects of the proposal, we hope that this project will increase interest and research into translation of minority languages in developing countries.
Project Ideas
Running a resource intensive application such as the Moses decoder is a challenge even on large servers in a well-funded academic institution.
We have outlined some ideas below to develop a system to enable school children in developing, equipped with a low resource laptop, to use our translation software.
1. Create a client-server application which will run the resource intensive application on a server. Clients will be a Web browser or a custom Pythong app. - Skills required: Python, Apache, C++ 2. Fork the decoder source code to enable it to run on the OLPC. Minimize memory consumption, discard code not likely to be used by the application. - Skills required: C++ 3. Minimize the work the decoder has to do by using a greedy search instead of a beam search, or have a very tight beam and other threshold. - Skills required: C++, statistical machine translation
Other ideas and to-do's:
4. Different language pairs 5. Speech-to-speech translation 6. Integrating Optical Character Recognition (OCR) with translation 7. Enable sharing of user vocabulary via the OLPC Mesh network 8. Distributed training of data on the OLPC
To find out more about the Moses automatic translation toolkit, check out
http://www.statmt.org/moses/
and sign up to the mailing list
Moses Support
Progress
12th march 2009
OLPC laptops received ! It beautiful. And small
What we've found out about the hardware:
430Mhz CPU. AMD geode x86 processor 237MB RAM 1GB flash disk Linux OS
The UI feels a bit sluggish. I'm apprenhensive about putting the a resource intensive decoder onto the machine
3rd May 2009
Finally got some time to look into developing a GUI for the OLPC. The OLPC used something called Sugar, which I think is the X-Windows windowing manager. The preferred language is Python, using a library call PyGTK, which looks like TCL/TK from way back. After a few hours googling and mashing up example programs. Managed to knock up a rudimentary GUI that should be able to function as the basis for the rest of the development. Its pretty basic, but has most of what's needed, development wise.
It's able to call the executable with the required ini file. However, the input & output of the decoder is completely detached from the GUI. The next step is to integrate the decoder and GUI. The suggestions have been to use TCP/IP ports or wrap the decoder with a SOAP server. However, just been thinking about this and may be able to use named pipes. This was done a while ago but had reliabilty issues. Will look at this in more details next time.
31st May 2009
Hooked the Moses lib into a socket server so can request translations client-server style. Hopefully, this will reliable and flexible way of calling the decoder from the front end. It will also allow us to move the servver part to the OLPC school server should the laptop be too feeble to handle decoding for realistic models.
Integrated tokenizer from borrowed from Hoang Industries Conglomates.
12th Jully, 2009
Finally got the python gui to talk to the moses server! The end of the beginning
30th April 2010
After a long break, come back to the project with a trained model for Haitian Creole and refreshed webpage.
Credits
Lovingly created and nurtured by Hieu Hoang,with support from his office mates Loic Dugast, Abhishek Arun. With help and encourage of the Edinburgh Uni SMT team