# Active Goal: UniProt FoT/ToricGT Data Campaign Build a durable biological graph-reasoning data workspace for ToricGT on branch `toricblm-data`, centered at `/home/iska/Documents/amelie/bio/ToricGT/data`. The source evidence is the local bio-scale Parquet mirror at `/home/iska/Documents/amelie/bio/iska-net/data/raw_hf_bio_scale`, especially UniProt function text and UniRef50 sequence/annotation records, but also RFAM, RNAcentral, DNA coding-region, and PubChem SELFIES shards. Preserve provenance, avoid unnecessary duplication on the nearly full filesystem, and make every derived artifact inspectable, hashable, schema-valid, and suitable for Parquet publication. First, graphify the raw datasets into training rows that match the ToricGT papers' graph-first contract: stable graph JSON, node and edge token streams, directed source-field dependencies, clustered splits, content hashes, and rich metadata for TokenGT/TropicalGT/ToricGT loaders. For each biological row, keep the original sequence and source annotations together. UniProt-style rows should join sequence, protein/function text, GO labels, EC labels, taxonomy, UniRef cluster fields, representative accessions, sequence hashes, and AFDB/PDB-style lookup hooks whenever present or safely derivable. DNA rows should expose accession, organism, exons, introns, proteins, and sequence. RNA rows should expose UPI/id, type/family/clan, description, and sequence. PubChem SELFIES rows should be treated as medicinal-chemistry molecular strings that can later be lifted into atom/bond graphs if RDKit/selfies tooling is added. Second, add Forest-of-Thought structure without pretending that deterministic source conversion is authored reasoning. Each graphified row should carry a forest sidecar whose trees correspond to sequence evidence, annotation evidence, structure lookup evidence, and future design-condition evidence. Include sparse activation fields, consensus node sets, trajectory-balance metadata, continuous/hybrid latent coordinate proxies, GraphCG axis hints, tropical active support nodes, tropical margin proxies, toric phase-basis tags, and ConvexTok byte-packing notes. These sidecars should guide hidden-space FoT/GFlowNet training and test-time scaling without copying or fabricating reasoning traces. Third, create the next authored reasoning layer in reviewed batches. Each accepted authored record should be a rigorous FoT/ToT technical artifact grounded in UniProt-style evidence: difficult biochemistry, biomedicine, biophysics, cell biology, pathway reasoning, gene regulatory and adaptive systems, RNA medicine design, medicinal chemistry, molecular dynamics, neurobiology, morphology/phenotype/perturbation reasoning, expression and abundance reasoning, scientific coding, boolean circuit and graph grammar problems in biological settings, and advanced mathematics useful for the model. The forest should have multiple trees, genuine branch/evaluate/compare/merge logic, occasional rejected branches, safety-aware biomedical framing, and clear final targets. Scripts may validate, count, hash, shard, convert to Parquet, and publish accepted records; scripts must not mass-invent accepted reasoning text. Fourth, prepare Hugging Face publication for `AmelieSchreiber/uniprot_fot`. Publication should be Parquet-first, include dataset cards/manifests/split reports, preserve source provenance, and avoid uploading raw mixed-license data unless licensing has been reviewed. Push periodically after each 1K accepted authored entries or after meaningful graphified-data milestones. Any key usage must remain secret; never print tokens or commit secrets. Prefer existing authenticated HF tooling in the `iska-net-2` or `tokengt` conda environment. Completion requires evidence, not intention: raw source organization under ToricGT/data, graphified JSONL and Parquet outputs, successful validation of JSON parseability and directed edge integrity, manifests proving source shard counts and row counts, stable split clusters, records containing GFlowNet, FoT, continuous embedding, TokenGT, TropicalGT, and ToricGT fields, authored reasoning batches accepted in logs, and verified Parquet publication steps for the HF dataset repository.