Sort by
Refine Your Search
-
Listed
-
Category
-
Country
- United States
- United Kingdom
- Germany
- Portugal
- Sweden
- France
- Netherlands
- Spain
- Singapore
- Belgium
- Norway
- Italy
- Denmark
- Poland
- United Arab Emirates
- Australia
- Austria
- Finland
- Luxembourg
- Romania
- China
- Morocco
- Canada
- Ireland
- Switzerland
- Worldwide
- Estonia
- Hong Kong
- Japan
- Malta
- Greece
- Andorra
- Brazil
- India
- Lithuania
- Armenia
- Cyprus
- Czech
- Europe
- New Zealand
- Saudi Arabia
- Taiwan
- 32 more »
- « less
-
Program
-
Field
- Computer Science
- Engineering
- Biology
- Medical Sciences
- Economics
- Mathematics
- Science
- Materials Science
- Chemistry
- Earth Sciences
- Electrical Engineering
- Linguistics
- Business
- Physics
- Psychology
- Environment
- Humanities
- Philosophy
- Arts and Literature
- Education
- Law
- Social Sciences
- Sports and Recreation
- 13 more »
- « less
-
. The QUBIC consortium will deliver disruptive innovations across three core quantum domains: Development of quantum algorithms to solve current industry-specific challenges. Advancement of quantum processors
-
new opening for a postdoctoral scholar to develop cutting-edge mathematics and algorithms to analyze complex data from Department of Energy (DOE) experimental facilities. This role involves research and
-
developments in sensor design, dataset transmission, data analysis, and numerical modeling to distinguish between normal and abnormal features. Here, the goal is to develop machine learning algorithms
-
unsupervised techniques, time-series modeling, and clustering algorithms. The candidate is expected to lead an effort to prepare generalized ML techniques for data quality monitoring for tasks across multiple
-
. This includes modelling, data analysis and algorithmic development, as well as experimental validation of models and algorithms. It contributes to the performance assessment of space missions. More specifically
-
artificial intelligence to atrial fibrillation and associated comorbidities, collaborating with Cardiology researchers to support the development and evaluation of artificial intelligence algorithms
-
-driven, machine learning approaches. The biomass data product will be validated by data from an international network of ground-truth forest sites (GEO-TREES, geo-trees.org). The developed algorithms thus
-
test algorithmic logic using simulation tools. Strong analytical, problem-solving, and debugging skills. Excellent technical writing, communication, and interpersonal skills. Where to apply Website https
-
candidates must thus have a strong interest in algorithmic development as well as embedded hardware integration. Role and responsibilities This PhD project will be executed in close cooperation with
-
numerical modeling and validation of brain-inspired algorithms Develop circuit-plausible training and inference algorithms, and analyze their behavior in LTspice and Cadence Spectre Perform algorithm–circuit