Tamil Dependency Treebank version 0.1 (TamilTB.v0.1) is an attempt to develop a syntactically annotated corpora for Tamil. TamilTB.v0.1 contains 600 sentences enriched with manual annotation of morphology and dependency syntax in the style of Prague Dependency Treebank. TamilTB.v0.1 has been created at the Institute of Formal and Applied Linguistics, Charles University in Prague.
The presented data and metadata include answers to questions raised in the questionnaire focused on the experience of teaching practicums and their role in the practical preparation of English language teachers at the Faculty of Arts, Charles University, as well as a basic quantitative analysis of the answers.
The analysis of the questionnaires shows that trainees are, in most cases, prepared for their teaching practicum both professionally and in terms of pedagogy and psychology, and the use of reflective teaching methods seems very useful. The benefits of the teaching practicum include, in particular, getting to know the real situation of teaching in secondary schools and working with a larger group of pupils, getting to know oneself as a teacher, gaining self-confidence, and becoming aware of one's own limits and areas for improvement. The downsides of the current system of teaching practice include mainly the low time allocation, the lack of integration of the practice in the curriculum, and the lack of involvement of the trainee in the daily running of the school (administrative work, supervision, meetings) and the lack of quality feedback from the faculty teacher.
TectoMT is a highly modular NLP (Natural Language Processing) software system implemented in Perl programming language under Linux. It is primarily aimed at Machine Translation, making use of the ideas and technology created during the Prague Dependency Treebank project. At the same time, it is also hoped to significantly facilitate and accelerate development of software solutions of many other NLP tasks, especially due to re-usability of the numerous integrated processing modules (called blocks), which are equipped with uniform object-oriented interfaces.
A collection of pointers to teaching and learning materials on linguistics and linguistic tools, including quick starts, how-tos, technical documentation, short teaching modules (2h), and full courses. This resource is collaboratively built by its users.
This submission contains Dockerfile for creating a Docker image with compiled Tensor2tensor backend with compatible (TensorFlow Serving) models available in the Lindat Translation service (https://lindat.mff.cuni.cz/services/transformer/). Additionally, the submission contains a web frontend for simple in-browser access to the dockerized backend service.
Tensor2Tensor (https://github.com/tensorflow/tensor2tensor) is a library of deep learning models and datasets designed to make deep learning more accessible and accelerate ML research.