observations
Here are 39 public repositories matching this topic...
OpenAPI which maps custom EHRs into FHIR R4 Patient and Observation resources. Other resources were not implemented (yet).
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Apr 22, 2021 - C#
An integration platform for QoO Assessment as a Service
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Dec 12, 2021 - Java
Create Linearized Dark files for MIRAGE
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Sep 17, 2020 - Python
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May 4, 2021 - Python
Short Presentation about CISTools: CDO for observation data.
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Feb 28, 2019
sondera is a python package providing clients for accessing Swedish hydrology and meteorology related open data. Data sources currently include SMHI open data API and SGU groundwater API.
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Aug 1, 2023 - Python
Tool to calculate horizon and azimuth of an object
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Oct 11, 2021 - C++
Cryospheric Monitoring and Prediction Online
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Feb 21, 2024 - Python
Creating a web app for school principals to collect and manage various types of notes and make them actionable.
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Mar 28, 2024 - JavaScript
On the constraints of galaxy assembly bias in velocity space (2022MNRAS.509..380M)
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Apr 23, 2024 - C
CODAS (Common Ocean Data Access System) installation guide with Windows Subsystem Linux (WSL). Unofficial support.
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Mar 15, 2024
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Jul 27, 2017 - Java
Safeguard for observers to prevent problems in the invocation order
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Jan 28, 2018 - PHP
Scripts and programs from the astrometric workshop
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Jul 15, 2020 - R
Updated mixed layer depth code (this is a mix of code that was actually used and code that is just exploratory and rather messy)
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Oct 21, 2021 - Jupyter Notebook
The purpose of this application is to test LLM-generated interpretations of medical observations. The explanations are generated fully automatically by a large language model. This application should be used for experimental purposes only. It does not provide support for real world cases and does not replace advice from medical professionals.
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Nov 27, 2023 - Jupyter Notebook
CausalFlow: Causal Discovery Methods with Observational and Interventional Data from Time-series
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May 8, 2024 - R
Convert sparse spatial data to a spatially and temporally resolved 2D/3D data
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Aug 24, 2022 - Python
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