@Rostlab

Top repositories

1

nalaf

NLP framework in python for entity recognition and relationship extraction
Python
112
star
2

goPredSim

Python
38
star
3

ConSurf

Evolutionary conservation estimation of residues or nucleotides
C++
32
star
4

bindPredict

Prediction of binding residues for metal ions, nucleic acids, and small molecules.
Python
31
star
5

JS16_ProjectA

In this project we will lay the foundations for our system by integrating data from multiple sources into a central database. The database will serve the apps and the visualization tool that will be developed in other projects.
JavaScript
28
star
6

EAT

Embedding-based annotation transfer (EAT) uses Euclidean distance between vector representations (embeddings) of proteins to transfer annotations from a set of labeled lookup protein embeddings to query protein embedding.
Python
22
star
7

DM_CS_WS_2016-17

Repo for general info of the course and communication
21
star
8

VESPA

VESPA is a simple, yet powerful Single Amino Acid Variant (SAV) effect predictor based on embeddings of the Protein Language Model ProtT5.
Python
17
star
9

ProNA2020

ProNA2020: System predicting protein-DNA, protein-RNA and protein-protein binding sites from sequence
Python
14
star
10

predictprotein-docker

Based off of the official Rostlab & PredictProtein website installation, as of 2020-09-07, the produced Docker image from this repository will result in a fully functioning predictprotein suite, including all of its required methods. Databases are not included.
Dockerfile
13
star
11

relna

Biomedical Relation Extraction for Transcription Factor and Gene / Gene Products (part of a Master Thesis at Rostlab, TUM)
HTML
12
star
12

JS16_ProjectF

In this project we will build a web portal for our GoT data analysis and visualization system. The website will integrate all the apps created in projects B-D with the help of the integration team assigned to Project E.
JavaScript
10
star
13

JS16_ProjectC_Group10

The known GoT world is vast and stretches over the three continents of Westeros, Essos and Sothorys. Readers of the Ice and Fire books will get acquainted and transported from King's Landing to the borders of the Seven Kingdoms, and further on across the Narrow Sea. Over two thousand characters mentioned in the books have been associated with multiple landmarks in the GoT world. Your mission is to find character-place associations and put those associations on an interactive GoT map. Such a tool will help us figure out where did Gregor β€œthe hound” Clegane went on his travels and how are these travels coincide with the travels of Breanne of Tarth (hint: they never crossed paths in the books, however they had a deadly duel during the show).
JavaScript
9
star
14

FunFamsClustering

Python
8
star
15

SNAP2

SNP effect predictor
Perl
7
star
16

nala

Text mining of natural language mutations mentions
HTML
6
star
17

LocText

Relation Extraction (RE) of: Proteins <--> Cell Compartments
HTML
5
star
18

JS18_ProjectA_Group2

In this project we created the framework that translates natural language to data visualization creation. This project encompasses loading and querying data and creating simple graphs.
TypeScript
5
star
19

LambdaPP

JavaScript
4
star
20

LocNuclei

Prediction of subnuclear locations
Python
3
star
21

PredictProtein

PredictProtein is an automatic service for protein database searches and the prediction of aspects of protein structure and function.
Perl
3
star
22

JS16_ProjectB_Group6

Game of Thrones characters are always in danger of being eliminated. The challenge in this assignment is to see at what risk are the characters that are still alive of being eliminated. The goal of this project is to rank characters by their Percentage Likelihood of Death (PLOD). You will assign a PLOD using machine learning approaches.
JavaScript
3
star
23

some-scripts

General-utility scripts that hopefully are useful for somebody
Python
2
star
24

PP2_CS_WS_2015-16

Communication and documentation for the class
2
star
25

LocTree3

Protein Subcelullar Localization Sequenced-Based Predictor
Roff
2
star
26

pssh-parser

A simple JS pssh parser
JavaScript
2
star
27

RostSpace

Python
2
star
28

JS16_ProjectD_Group5

Joffrey Baratheon is one of the most loathed characters in TV history. As a matter of fact people were celebrating his TV death on Twitter. We are interested to learn more on how people feel about different characters by analyzing tweets mentioning GoT characters. In this project you will be analyzing Twitter feeds across a timeline, you will look for the name of GoT characters in that feed and try to identify whether the tweet is positive or negative. You can then generate a metric that evaluates what is the accumulated sentiment expressed on Twitter for that given character at a given point in time, and what is the trend (positive, negative). It will be interesting to intersect the sentiments for characters following the airing of a certain episode (you can easily get the airing date for an episode from the database constructed in Project A).
JavaScript
2
star
29

someNA

Protein DNA/RNA binding predictor
Perl
1
star
30

MetaStudent

Sequence-based Protein GO / Functional Predictor
Python
1
star
31

MetaDisorder

Protein sequenced-based Disorder Predictor
Perl
1
star
32

bindadjust

Python
1
star
33

smiles-cl

Python
1
star
34

TMvis

Combining AlphaFold 2 structures with predicted transmembrane proteins into interactive 3D visualizations of protein structures embedded into membranes.
Python
1
star
35

JS18_ProjectB_Group3

JavaScript
1
star
36

JS16_ProjectB_Group7

Game of Thrones characters are always in danger of being eliminated. The challenge in this assignment is to see at what risk are the characters that are still alive of being eliminated. The goal of this project is to rank characters by their Percentage Likelihood of Death (PLOD). You will assign a PLOD using machine learning approaches.
JavaScript
1
star