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impl OwnedQuantizedModelCuda {
/// PAR-112: True token-by-token streaming generation
///
/// Generates tokens one at a time and calls the callback after each token.
/// The callback receives the token ID and can return `false` to stop generation early.
///
/// This enables true real-time streaming where each token is delivered
/// as soon as it's generated, rather than pseudo-streaming where all tokens
/// are generated first then iterated.
///
/// # Arguments
///
/// * `prompt` - Initial token IDs
/// * `config` - Generation configuration
/// * `on_token` - Callback called for each generated token, returns `false` to stop
///
/// # Example
///
/// ```ignore
/// model.generate_gpu_resident_streaming(&prompt, &config, |token_id| {
/// println!("Generated: {}", token_id);
/// true // continue generation
/// })?;
/// ```
pub fn generate_gpu_resident_streaming<F>(
&mut self,
prompt: &[u32],
config: &QuantizedGenerateConfig,
mut on_token: F,
) -> Result<Vec<u32>>
where
F: FnMut(u32) -> bool,
{
if prompt.is_empty() {
return Ok(Vec::new());
}
let ttft_trace = std::env::var("TTFT_TRACE").is_ok();
let t_start = if ttft_trace { Some(std::time::Instant::now()) } else { None };
macro_rules! ttft_mark {
($label:expr) => {
if let Some(t0) = t_start {
eprintln!("[TTFT] {:>20}: {:>7.2}ms", $label, t0.elapsed().as_secs_f64() * 1000.0);
}
};
}
// GH-167: Check context length BEFORE GPU dispatch to return clean error
if prompt.len() > self.model.config.context_length {
return Err(RealizarError::ContextLimitExceeded {
provided: prompt.len(),
maximum: self.model.config.context_length,
});
}
// THREAD-RESOLVED: Ensure CUDA context is current for this thread
self.executor
.make_current()
.map_err(|e| RealizarError::UnsupportedOperation {
operation: "cuda_make_current".to_string(),
reason: format!("Failed to set CUDA context current: {e}"),
})?;
ttft_mark!("make_current");
// Check architecture support
if !self.supports_gpu_resident() {
return Err(RealizarError::UnsupportedOperation {
operation: "generate_gpu_resident_streaming".to_string(),
reason: "Model architecture not supported for GPU-resident path".to_string(),
});
}
// Create KV cache with GQA-aware dimensions
let num_kv_heads = self.model.config.num_kv_heads;
let head_dim = self.model.config.hidden_dim / self.model.config.num_heads;
let kv_dim = num_kv_heads * head_dim;
let mut cache = OwnedQuantizedKVCache::new(
self.model.config.num_layers,
kv_dim,
prompt.len() + config.max_tokens,
);
ttft_mark!("kv_cache_alloc");
// Reset GPU KV cache positions (lengths → 0)
self.executor.reset_kv_cache_gpu();
ttft_mark!("reset_gpu");
let mut tokens = prompt.to_vec();
// realizr#199 (PMAT-450): Check prefix cache before prefill.
#[cfg(feature = "gpu")]
let prefix_hit = self.prefix_cache.lookup(prompt);
#[cfg(not(feature = "gpu"))]
let prefix_hit: Option<(Vec<Vec<f32>>, Vec<Vec<f32>>)> = None;
#[cfg(feature = "gpu")]
let prefix_was_hit = prefix_hit.is_some();
#[cfg(not(feature = "gpu"))]
let prefix_was_hit = false;
let prefill_first_token;
if let Some((cached_k, cached_v)) = prefix_hit {
// PMAT-450: Prefix cache hit — skip prefill, restore GPU KV cache
eprintln!("[PMAT-450] PREFIX CACHE HIT: {} prompt tokens, skipping prefill", prompt.len());
let kv_pairs: Vec<(Vec<f32>, Vec<f32>)> = cached_k.into_iter().zip(cached_v).collect();
self.executor
.restore_kv_cache_from_host(&kv_pairs, prompt.len())
.map_err(|e| RealizarError::UnsupportedOperation {
operation: "restore_kv_cache_from_host".to_string(),
reason: format!("Prefix cache restore failed: {e}"),
})?;
prefill_first_token = None; // No prefill extraction — go straight to decode
ttft_mark!("prefix_cache_hit");
} else {
// PMAT-083: Prefill ALL tokens and extract first predicted token from LM head.
let greedy = config.temperature == 0.0 || config.top_k == 1;
let prefill_count = if greedy { prompt.len() } else { prompt.len() - 1 };
prefill_first_token = if prefill_count > 0 {
self.run_prefill(prompt, &mut cache, prefill_count, ttft_trace, greedy)?
} else {
None
};
ttft_mark!("prefill");
}
// PMAT-109: Graph persistence — do NOT clear decode graph here.
// init_prefill_workspace clears the graph only when it actually reallocates
// (longer prompt exceeds buffer_capacity). When PAR-200 fires (same/shorter
// prompt), workspace buffer addresses are stable → graph replay is valid.
// This eliminates cuGraphExecDestroy from every request's TTFT critical path,
// fixing the bimodal tail (95% at 20ms, 5% at 42ms → uniform).
// Supersedes: PMAT-085, CORRECTNESS-013, PMAT-107 (all addressed by PAR-200).
// Generate tokens
let mut position;
let mut last_token;
let first_token_offset;
if let Some(first_tok) = prefill_first_token {
// PMAT-083: First token came from prefill LM head — skip first decode
position = prompt.len(); // KV cache has ALL prompt positions
last_token = first_tok;
first_token_offset = 0; // First loop iteration generates second output token
// Emit the first token immediately
tokens.push(first_tok);
if config.stop_tokens.contains(&first_tok) {
return Ok(tokens);
}
if !on_token(first_tok) {
return Ok(tokens);
}
ttft_mark!("first_token(prefill)");
} else {
// Original path: last prompt token feeds into first decode
position = prompt.len() - 1;
last_token = prompt[prompt.len() - 1];
first_token_offset = 0;
}
let max_decode = if prefill_first_token.is_some() {
config.max_tokens.saturating_sub(1) // Already emitted one token
} else {
config.max_tokens
};
for _token_num in 0..max_decode {
let next_token = if config.temperature == 0.0 || config.top_k == 1 {
let tok = self.forward_gpu_resident_to_token_id(last_token, &mut cache, position)?;
if _token_num == first_token_offset && prefill_first_token.is_none() {
ttft_mark!("first_decode");
}
tok
} else {
let logits = self.forward_gpu_resident(last_token, &mut cache, position)?;
OwnedQuantizedModel::sample_topk(&logits, config.temperature, config.top_k)
};
// Check stop tokens
if config.stop_tokens.contains(&next_token) {
break;
}
tokens.push(next_token);
// PAR-112: Call the streaming callback IMMEDIATELY after generating each token
// If callback returns false, stop generation early
if !on_token(next_token) {
break;
}
last_token = next_token;
position += 1;
}
// realizr#199 (PMAT-450): Insert PROMPT KV into prefix cache.
// CRITICAL: snapshot prompt.len() positions, NOT the full KV (which includes
// generated tokens). On cache hit we restore prompt KV and decode from scratch.
#[cfg(feature = "gpu")]
if !prefix_was_hit {
let num_layers = self.model.config.num_layers;
// Temporarily truncate KV to prompt length for snapshot
let current_lens: Vec<(usize, usize)> = (0..num_layers)
.map(|l| (l, self.executor.kv_cache_len(l)))
.collect();
for &(l, _) in ¤t_lens {
self.executor.set_kv_cache_len(l, prompt.len());
}
match self.executor.snapshot_kv_cache_to_host(num_layers) {
Ok(kv_snapshot) => {
let (k_vecs, v_vecs): (Vec<_>, Vec<_>) = kv_snapshot.into_iter().unzip();
self.prefix_cache.insert(prompt.to_vec(), k_vecs, v_vecs);
eprintln!("[PMAT-450] PREFIX CACHE INSERT: {} prompt tokens ({} layers)", prompt.len(), num_layers);
}
Err(e) => {
eprintln!("[PMAT-450] PREFIX CACHE SNAPSHOT ERROR: {}", e);
}
}
// Restore original KV lengths
for &(l, len) in ¤t_lens {
self.executor.set_kv_cache_len(l, len);
}
}
Ok(tokens)
}
/// PAR-106: Batched GPU-resident generation for continuous batching
///
/// Processes multiple prompts concurrently with true weight sharing:
/// - Single weight read produces N tokens (one per active request)
/// - Target: 400 tok/s (2x Ollama) with 4+ concurrent requests
///
/// Key optimization: Uses `forward_batch_with_cache_cuda_native` which
/// amortizes memory bandwidth across the batch.
pub fn generate_batch_gpu_resident(
&mut self,
prompts: &[Vec<u32>],
config: &QuantizedGenerateConfig,
) -> Result<Vec<Vec<u32>>> {
if prompts.is_empty() {
return Ok(Vec::new());
}
// Check architecture support
if !self.supports_gpu_resident() {
return Err(RealizarError::UnsupportedOperation {
operation: "generate_batch_gpu_resident".to_string(),
reason: "Model architecture not supported for GPU-resident path".to_string(),
});
}
let num_prompts = prompts.len();
let max_prompt_len = prompts.iter().map(Vec::len).max().unwrap_or(0);
let max_seq_len = max_prompt_len + config.max_tokens;
// PAR-045: Create KV caches with GQA-aware dimensions
let num_kv_heads = self.model.config.num_kv_heads;
let head_dim = self.model.config.hidden_dim / self.model.config.num_heads;
let kv_dim = num_kv_heads * head_dim;
let mut caches: Vec<OwnedQuantizedKVCache> = (0..num_prompts)
.map(|_| OwnedQuantizedKVCache::new(self.model.config.num_layers, kv_dim, max_seq_len))
.collect();
// Reset GPU KV cache positions
self.executor.reset_kv_cache_gpu();
// Initialize token sequences
let mut sequences: Vec<Vec<u32>> = prompts.to_vec();
let mut done: Vec<bool> = vec![false; num_prompts];
// Prefill: Process each prompt's tokens (can't batch different lengths easily)
for (prompt_idx, prompt) in prompts.iter().enumerate() {
for (pos, &token_id) in prompt.iter().enumerate() {
if pos < prompt.len() - 1 {
// PAR-106: Use single-token forward for prefill
// (batched prefill would require padding/masking complexity)
let _ = self.forward_gpu_resident(token_id, &mut caches[prompt_idx], pos)?;
}
}
}
// Track positions per prompt (filter empty prompts)
let mut positions: Vec<usize> = prompts
.iter()
.map(|p| p.len().saturating_sub(1))
.collect();
let mut last_tokens: Vec<u32> = prompts
.iter()
.map(|p| p.last().copied().unwrap_or(0))
.collect();
// PAR-106: Batched decode loop with weight sharing
for _gen_idx in 0..config.max_tokens {
// Collect active prompts
let active_indices: Vec<usize> = (0..num_prompts).filter(|&i| !done[i]).collect();
if active_indices.is_empty() {
break;
}
// PAR-106/PAR-108: Sequential CUDA graphs outperform batched CPU path.
// The batched GEMV kernel is 15x faster, but CUDA graphs amortize
// kernel launch overhead which is more impactful. Batched path achieves
// ~225 tok/s vs ~360 tok/s for sequential graphs.
//
// To achieve 2x Ollama (400 tok/s), need multi-token CUDA graph capture
// that batches M tokens into a single graph execution.
for &prompt_idx in &active_indices {
let next_token = self.forward_gpu_resident_to_token_id(
last_tokens[prompt_idx],
&mut caches[prompt_idx],
positions[prompt_idx],
)?;
if config.stop_tokens.contains(&next_token) {
done[prompt_idx] = true;
} else {
sequences[prompt_idx].push(next_token);
last_tokens[prompt_idx] = next_token;
positions[prompt_idx] += 1;
if sequences[prompt_idx].len() >= max_seq_len {
done[prompt_idx] = true;
}
}
}
}
Ok(sequences)
}
}
include!("generate_2.rs");