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Ideas for choosing visualization idioms depending on the used data set

Time-series multi-omics data tool

What? question:

Data set Data
Genomics 1 FASTA file for each timestamp and tabular with KOs
Transcriptomics NaN
Metabolomics Tabular data (.csv, .xlsx...) with time column
Proteomics 1 FASTA file for each timestamp and encoding tabular
Physico-chemical Tabular data (.csv, .xlsx...) with time column

Why? question:

Analyze Search Query
Consume: discover and present. Target unknown: browse and explore. Identify
Produce: record and derive. (without annotate) Target known: nothing (without lookup and locate). Compare
NaN NaN Without summarize

How? question:

Data set Encode Manipulate Facet Reduce
Genomics FASTA: W2V -> PCA -> Map; KOs: Map Select and navigate (without change) Juxtapose (without partition and superimpose) Filter (without aggregate and embed)
Transcriptomics NaN Select and navigate (without change) Juxtapose (without partition and superimpose) Filter (without aggregate and embed)
Metabolomics Map Select and navigate (without change) Juxtapose (without partition and superimpose) Filter (without aggregate and embed)
Proteomics FASTA: W2V -> PCA -> Map; Tabular: BioPython -> Tabular -> Map Select and navigate (without change) Juxtapose (without partition and superimpose) Filter (without aggregate and embed)
Physico-chemical Map Select and navigate (without change) Juxtapose (without partition and superimpose) Filter (without aggregate and embed)