✨Feature Overview
What's included in the AtomCloud software platform?
Last updated
What's included in the AtomCloud software platform?
Last updated
Currently addressing the needs of imaging based characterization data
Platform Features | |
---|---|
Data streams | |
---|---|
RHEED features | |
---|---|
Contact us: For any questions about the features in the AtomCloud platform, please contact us via email at support@atomicdatasciences.com or send us a message using the slack feedback feature in the AtomCloud application.
XPS features | |
---|---|
SEM features | |
---|---|
Logs | |
---|---|
File upload and real-time ingestion
✔
Generic filetypes (MP4, AVI, TIFF, JPG, PNG, TXT)
Technique-specific filetypes (IMM, IMG, SPE, VMS)
Batch upload (ZIP, TAR, GZ, 7Z, RAR)
If you don't see your data format listed, we'll add it!
✔
Automated batch and real-time data processing
✔
Analysis and visualizations built for RHEED XPS, SEM, and instrument log files
✔
Result standardization and schemas
✔
User management and team data visibility
✔
Cross data stream analysis and variance detection
✔
Python API client - query results with general search
✔
Data annotation, tagging, and grouping
✔
Custom workflows and automations
✔
RHEED
✔
XPS
✔
Equipment Log Data (e.g., growth logs)
✔
SEM
✔
Metadata and user annotation
✔
Automated data processing
✔
Standardization of data
✔
Automatic handling of rotation in RHEED video
✔
Automated Clustering - segmentation of growth phases
✔
Specular Oscillations (visualization and metrics)
✔
Streak-to-spot ratio - measure of growth mode
✔
Single image analysis - extraction and pattern analysis
✔
Lattice spacing and surface reconstruction extraction
✔
Automated data processing, no peak fitting
✔
Standardization of data
✔
Spectra from k-alpha source
✔
Survey spectra of in-organic materials
✔
User refined elemental selection
✔
Automated data processing
✔
Standardization of data
✔
Feature extraction and quantification
✔
Automated data processing
✔
Standardization of data
✔
Linking with other characterization data streams
✔
Use in multi-trial variance detection alongside characterization
✔