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# Query system
## Goal
Given a set of query sequences, determine for each sequence how many of its k-mers are found in the index and, for each indexed genome, how many k-mers match. The query system is the foundation for read classification and sequence-to-genome mapping.
---
## Input
- Query sequences in FASTA or FASTQ format (gzip supported, streaming stdin supported). GenBank flat files are not supported at query time (only at index time).
- Sequences shorter than k bases are silently skipped.
- Non-ACGT characters are handled by the superkmer decomposition layer: they act as hard breaks, producing shorter superkmers (identical to the behaviour at indexing time).
---
## Algorithm
The query follows the same superkmer-based partitioning strategy used at indexing time.
```
for each chunk of sequences (parallel workers via obipipeline):
build QueryBatch: decompose all sequences into s-mers via superkmers, deduplicate
allocate seq_results[seq_idx][smer_pos] = None ← per-sequence s-mer result vectors
split superkmers by partition via minimiser hash
for each partition p:
query_partition(p, superkmers_routed_to_p)
→ load QueryLayer(s) for p
→ for each s-mer in each superkmer: MphfLayer::find(smer)
fill seq_results[seq_idx][kmer_offset + j] from partition results
for each sequence:
apply_findere(seq_results[seq_idx], effective_z) ← per full sequence
accumulate confirmed k-mer results into acc and cov
emit annotated sequences
```
Superkmers that appear more than once in the batch (same sequence or across sequences) are deduplicated: each unique `RoutableSuperKmer` is queried once per partition, and the result is broadcast to every `SKDesc` entry that references it.
**Findere requires full-sequence aggregation.** `apply_findere` is applied once per sequence on the complete s-mer result vector, after all partitions have contributed. Applying it per superkmer would produce false negatives at superkmer boundaries, where the z-window spans two superkmers.
Batches are processed in parallel via `obipipeline` workers; the `--threads` flag controls the number of worker threads.
---
## Findere z-window filter
For approximate index modes, the index physically stores s-mers of size `s = k_user z + 1`. At query time, `set_k(s)` is in effect, so queries naturally produce s-mer results. `apply_findere` then aggregates z consecutive s-mer results into one k_user-mer answer:
```rust
fn apply_findere(
results: &[Option<Box<[u32]>>], // N s-mer results
z: usize,
n_genomes: usize,
) -> Vec<Option<Box<[u32]>>> // N z + 1 k_user-mer results
```
Input length N (s-mers), output length N z + 1 (k_user-mers).
For each genome g independently, a sliding window of size z scans the input. Output position i is confirmed for genome g iff all z values `results[i..i+z][g]` are nonzero (`None` counts as zero for all genomes). The scan is O(n) per genome.
Output values come from `results[i]` (leftmost s-mer of each window); genomes not confirmed are zeroed. If all genomes are zero, the position is returned as `None`.
**Short sequences**: when the s-mer count is less than z, no complete window can form — `apply_findere` returns an empty vector. K-mers from sequences shorter than k_user are not emitted.
**Exact indexes**: `z = 1`, `apply_findere` is a passthrough (output length = input length).
### Effective z at query time
`effective_z` is resolved at the start of `run()`:
```rust
let effective_z = args.findere_z.unwrap_or_else(|| match idx.meta().config.evidence {
IndexMode::Approx { z, .. } | IndexMode::Hybrid { z, .. } => z as usize,
IndexMode::Exact => 1,
});
```
The `-z` CLI option overrides the index metadata value. A higher z increases stringency (lower FP, some true positives may be discarded at sequence ends); a lower z increases sensitivity.
---
## Layer lookup: `MphfLayer::find`
`MphfLayer::open(dir, mode: &IndexMode)` receives the mode from `PartitionMeta` — no per-layer file is read. The caller (`QueryLayer`) never chooses the dispatch path: it is fixed at open time by `LayerEvidence`. See [obilayeredmap](../implementation/obilayeredmap.md) for the full `find` / `find_strict` API.
### `QueryLayer` variant selection
`QueryLayer::open` in `query_layer.rs` selects the data matrix to pair with `MphfLayer`:
| Condition | Variant | Data returned per k-mer |
|---|---|---|
| `with_counts=true` and `counts/` exists | `Count` | raw count per genome |
| `presence/` exists | `Presence` | 0/1 per genome (bit matrix) |
| only `counts/` exists | `Count` | counts used as-is |
| neither exists | `SetOnly` | 1 for every genome |
---
## Presence / count mode at query time
The `--force-presence` flag and `--presence-threshold` control how per-genome values are accumulated, independently of what the index stores:
```
genome_totals[g] += if presence { u32::from(v >= threshold) } else { v }
```
`presence` is true when `--force-presence` is set or when the index has no counts (`!with_counts`). The default `presence_threshold` is 1, so any nonzero count counts as a match.
---
## Coverage vectors (`--detail`)
When `--detail` is requested, a 3-D accumulator `cov[seq_idx][genome][kmer_pos]` is allocated after all partitions are queried, with dimensions derived from `n_kmers_out = n_smers z + 1` (k_user-mer positions, not s-mer positions):
```
cov[seq_idx][g][pos] += contribution
where pos is the k_user-mer index in the filtered (post-Findere) vector
```
Coverage reflects confirmed k_user-mers only. The vectors are emitted in the JSON annotation under the key `"coverage"`.
---
## `kmer_missing` semantics
`kmer_missing` counts k_user-mer positions where the first s-mer (`seq_results[seq_idx][pos]`) is `None` — i.e. absent from the index entirely. K-mers where the z-window fails because a later s-mer is absent or zero are not counted as missing (the first s-mer being present is used as proxy for index membership).
---
## Output format
Output sequences are written in **OBITools4 format**: the original sequence with a JSON annotation map in the title line.
```
>read_id {"kmer_count":59,"kmer_strict_matches":{"genome_a":42,"genome_b":7}}
ATCGATCG...
```
With `--detail`:
```
>read_id {"kmer_count":59,"kmer_strict_matches":{...},"coverage":{"genome_a":[0,1,2,...],...}}
ATCGATCG...
```
Genome keys follow the iteration order of `meta.genomes`.
---
## Annotation schema
| Key | Type | Condition | Semantics |
|---|---|---|---|
| `kmer_count` | int | always | k-mers confirmed (post-Findere) with at least one genome match |
| `kmer_missing` | int | `--count-missing` | k-mers absent from the index entirely (pre-Findere None) |
| `kmer_strict_matches` | object | always | per-genome accumulated value (label → count or 0/1) |
| `coverage` | object | `--detail` | per-genome array of per-position contributions (label → [u32]) |
`kmer_count + kmer_missing` ≤ total k_user-mers in the sequence. The gap corresponds to k_user-mers whose z-window was not fully confirmed (at least one s-mer absent or zero for all genomes) but whose first s-mer was present in the index.
---
## CLI
```
obikmer query <index> [--detail] [--mismatch] [--count-missing]
[--force-presence] [--presence-threshold <n>]
[-z <z>] [-T <threads>]
<query.fa> [<query2.fa> ...]
```
| Option | Default | Semantics |
|---|---|---|
| `-z` / `--findere-z` | from index metadata | Override Findere z parameter |
| `--detail` | off | Emit per-position coverage vectors in JSON |
| `--count-missing` | off | Add `kmer_missing` field to JSON |
| `--force-presence` | off | Report 0/1 per genome regardless of index counts |
| `--presence-threshold` | 1 | Minimum count to declare genome present |
| `-T` / `--threads` | all CPUs | Worker threads |
`--mismatch` is accepted but currently ignored with a warning on stderr.
---
## Future work
- **`--mismatch`**: 1-mismatch approximate matching — generate `3·k` single-substitution variants per k-mer, look each up independently.
- **Read classification** (`--classify`): assign each read to the genome with the highest match score.
- **Whitelist / blacklist filtering**: threshold-based accept/reject on per-genome match scores.