| """ | |
| HSAQ β Hybrid Sensitivity-Aware Quantization | |
| ============================================= | |
| Novel mixed-precision quantization pipeline that combines: | |
| 1. Per-layer sensitivity profiling (output drift measurement) | |
| 2. Memory-budget-aware tier assignment (critical / normal / tolerant) | |
| 3. Mixed-precision HQQ/AWQ/GPTQ quantization (3/4-bit) per sensitivity tier | |
| 4. Optional structured attention-head pruning for tolerant layers | |
| 5. Optional 2-bit quantization for tolerant layers (quality cliff risk) | |
| 6. LoRA domain adapter training for quality recovery | |
| 7. 5-stage model hunter: discover β filter β score β profile β emit | |
| Target: Fit 13-20B models on 12 GB consumer GPUs with all layers on GPU. | |
| No CPU offload β PCIe shuffle per token tanks inference 5-10x. | |
| Usage: | |
| from quantization.hsaq import HSAQPipeline, ModelHunterPipeline | |
| # Single-model quantization | |
| pipeline = HSAQPipeline( | |
| model_id="Qwen/Qwen2.5-14B-Instruct", | |
| gpu_budget_gb=11.2, | |
| calibration_dataset="wikitext", | |
| ) | |
| pipeline.run() # profiles β classifies β quantizes β adapts | |
| # Multi-model hunter | |
| hunter = ModelHunterPipeline(HunterConfig()) | |
| results = hunter.run() # discover β filter β score β profile β emit | |
| """ | |
| from quantization.hsaq.adapter import LoRAAdapterTrainer | |
| from quantization.hsaq.assignment import ( | |
| Assignment, | |
| AssignmentResult, | |
| BudgetInfeasibleError, | |
| LayerCandidate, | |
| LayerOption, | |
| assign_bit_widths, | |
| pareto_frontier, | |
| ) | |
| from quantization.hsaq.budget import MemoryBudgetCalculator | |
| from quantization.hsaq.candidate import ( | |
| DiscoveryStage, | |
| EmitStage, | |
| FilterConfig, | |
| FilterStage, | |
| HunterConfig, | |
| ModelHunterPipeline, | |
| ScoreStage, | |
| compute_model_hash, | |
| extract_arch_from_config, | |
| kv_bytes_per_token, | |
| predict_vram_mixed_34bit, | |
| ) | |
| from quantization.hsaq.candidate_record import ( | |
| ArchType, | |
| CandidateRecord, | |
| EligibilityTier, | |
| predict_kv_gb, | |
| predict_weights_gb, | |
| ) | |
| from quantization.hsaq.config import ( | |
| HSAQBudget, | |
| HSAQConfig, | |
| LayerSensitivity, | |
| LayerTier, | |
| SensitivityResult, | |
| TierBudget, | |
| ) | |
| from quantization.hsaq.pipeline import HSAQPipeline | |
| from quantization.hsaq.pruner import AttentionHeadPruner | |
| from quantization.hsaq.sensitivity import ( | |
| PIPELINE_VERSION, | |
| SensitivityCacheDB, | |
| SensitivityProfiler, | |
| ) | |
| __all__ = [ | |
| "PIPELINE_VERSION", | |
| "ArchType", | |
| "Assignment", | |
| "AssignmentResult", | |
| "AttentionHeadPruner", | |
| "BudgetInfeasibleError", | |
| "CandidateRecord", | |
| "DiscoveryStage", | |
| "EligibilityTier", | |
| "EmitStage", | |
| "FilterConfig", | |
| "FilterStage", | |
| "HSAQBudget", | |
| "HSAQConfig", | |
| "HSAQPipeline", | |
| "HunterConfig", | |
| "LayerCandidate", | |
| "LayerOption", | |
| "LayerSensitivity", | |
| "LayerTier", | |
| "LoRAAdapterTrainer", | |
| "MemoryBudgetCalculator", | |
| "ModelHunterPipeline", | |
| "ScoreStage", | |
| "SensitivityCacheDB", | |
| "SensitivityProfiler", | |
| "SensitivityResult", | |
| "TierBudget", | |
| "assign_bit_widths", | |
| "compute_model_hash", | |
| "extract_arch_from_config", | |
| "kv_bytes_per_token", | |
| "pareto_frontier", | |
| "predict_kv_gb", | |
| "predict_vram_mixed_34bit", | |
| "predict_weights_gb", | |
| ] | |