Job Search and Career Advice Platform

Aktiviere Job-Benachrichtigungen per E-Mail!

Fachbereich Biologie, Chemie, Pharmazie

Freie Universität Berlin

Berlin

Vor Ort

EUR 55.000 - 75.000

Vollzeit

Gestern
Sei unter den ersten Bewerbenden

Erstelle in nur wenigen Minuten einen maßgeschneiderten Lebenslauf

Überzeuge Recruiter und verdiene mehr Geld. Mehr erfahren

Zusammenfassung

A leading research university in Berlin is looking for an information theorist to work on analyzing data related to neural networks. The candidate will utilize their expertise in information theory and mathematics to develop analytical tools aimed at understanding brain wiring. This role requires a PhD in mathematics or a related field and prior experience in research focused on information theory. Join a collaborative team working at the forefront of neurobiology research.

Qualifikationen

  • PhD in mathematics or a related field.
  • Prior experience with information theory in research.

Aufgaben

  • Analyze large datasets of fly brain synaptic connections.
  • Develop tools to measure information capacity and content.

Kenntnisse

Information theory
Mathematical modeling
Bioinformatics

Ausbildung

PhD in mathematics or a related field
Jobbeschreibung
Overview

The Hiesinger lab is a basic research neurobiology lab at the Free University in Berlin Germany. The main focus of the lab is the study of how genomic information 'unfolds' to develop neural networks with remarkable information content: flies, which we use as a model, have brains that compute flying in 3D, navigation, metabolism and advanced learning and memory capabilities - all prior to any training. Our team includes neuroscientists, advanced laser microscopists (to live observe brain wiring), bioinformaticians and closely collaborating mathematicians. Starting in we are conducting a dedicated study entitled 'The Information content of brain wiring', funded by the Volkswagen Foundation Pioneering Research Program 'the unknown unknown.' The basic premise is simple: The information content of artificial neuronal networks can be saved in precise bits, yet no such number has ever made sense for biological neuronal networks. Not only the number, even what parameters should be quantified remains unclear – a true unknown unknown to be tackled experimentally within an information theoretical framework. The laboratory is part of a larger university community and an interdisciplinary research consortium to study brain wiring that includes.

Job description

We are seeking an information theorist with an academic background in mathematics or bioinformatics and a specialization in information theory (Shannon entropy, compressibility, effective complexity and logical depth). The data basis for the analyses are two-fold: first, recent connectome data, i. e. large datasets of all synaptic connections in the fly brain based on electron-microscopic reconstruction; second, high-resolution live imaging data of the developmental transformations that encode information in biological neural networks. The information theorist will be embedded with experimental scientists and other mathematicians to develop the tools to analyse this data and come up with measure of both information capacity and information content of brain wiring.

Requirements
  • PhD in mathematics or a related field.
Professional Experience
  • Previous academic experience with information theory in basic or applied research. We are not looking for a data analyst of 'omics' data, but a theorist with the expertise to develop new ideas and models.
Hol dir deinen kostenlosen, vertraulichen Lebenslauf-Check.
eine PDF-, DOC-, DOCX-, ODT- oder PAGES-Datei bis zu 5 MB per Drag & Drop ablegen.