ADR-0008: binary activation wire format — raw bfloat16 over HTTP, zstd compression, 128-token chunked prefill; replaces base64 JSON (~33% overhead removed). ADR-0009: coverage-first shard assignment and tracker-as-first-layer-node — any node serving layers[0..k] becomes the inference entry point for that model; bin-packing fills all coverage gaps before adding redundancy; tracker issues LOAD_SHARD/DROP_SHARD rebalance directives; nodes declare VRAM + quantization. US-011: binary wire format migration US-012: real PyTorch layer execution (transformers + bitsandbytes, test on GPT-2) US-013: coverage-first tracker bin-packing with VRAM-aware shard assignment US-014: tracker-as-node (tracker node serves first layers + handles client requests) CONTEXT.md: Tracker Node, Coverage Map, Rebalance Directive terms added. Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
3.3 KiB
3.3 KiB
US-013 — Coverage-first tracker shard assignment
Upgrade the tracker's route selection to a coverage-first, speed-weighted bin-packing algorithm. The tracker maintains a live coverage map per model, issues rebalance directives when gaps appear, and assigns shard ranges to nodes based on declared VRAM, quantization, and benchmark throughput.
Context
Per ADR-0009:
- Coverage gap = any layer range in a model with zero serving nodes → model is unroutable
- Coverage-first: fill all gaps before adding redundancy to covered ranges
- Speed-weighted bin-packing: fill fastest nodes to their VRAM limit first; cascade to next-fastest
- Continuous rebalancing: triggered every 30s and on every node join/leave event
- Rebalance directive:
LOAD_SHARDorDROP_SHARDinstruction sent from tracker to node
Node registration now includes capability data:
{
"wallet": "...",
"endpoint": "http://10.0.0.5:7000",
"vram_bytes": 25769803776,
"ram_bytes": 137438953472,
"quantizations": ["nf4", "int8", "bfloat16"],
"benchmark_tokens_per_sec": 12.4,
"benchmark_model": "openai-community/gpt2"
}
Model preset metadata (stored in tracker config) includes bytes_per_layer at each quantization level and total_layers. The tracker can compute max assignable layers for any node.
Acceptance Criteria
- Tracker accepts
vram_bytes,ram_bytes,quantizations,benchmark_tokens_per_secin the node registration payload GET /v1/coverage/<model_preset>returns the coverage map: list of{start_layer, end_layer, node_count}for each assigned range- A model is only routable when all layer ranges have
node_count >= 1 - When a new node registers, the tracker assigns it to the highest-priority uncovered range (or expands the most-loaded range if fully covered)
- When a node disconnects (heartbeat timeout), the tracker marks affected ranges as reduced-coverage and, if any reach 0, issues
LOAD_SHARDdirectives to idle nodes within 30 seconds - The shard assignment respects VRAM:
assigned_layers <= floor((vram_bytes * 0.8) / bytes_per_layer_at_quant) - Speed weighting: given two idle nodes both capable of covering a gap, the tracker assigns the wider sub-range to the faster node
- An integration test: start tracker with a model preset, register three nodes with different VRAM, assert the coverage map shows 100% coverage and the largest VRAM node received the widest shard range
- A second integration test: kill the node covering the middle layer range; assert tracker issues a
LOAD_SHARDdirective to an idle node and coverage recovers python -m pytestpasses- Commit only this story's changes
Implementation Notes
- Coverage map data structure:
dict[str, list[tuple[int, int, int]]]keyed by model preset - Bin-packing is run in-process on the tracker (not a separate service); it's triggered by registration/heartbeat events and a 30s periodic timer
- Rebalance directives are delivered as responses to node heartbeat POSTs (node polls tracker every 10s anyway) — no new push channel needed
bytes_per_layeris read from amodel_presets.jsonconfig file; add GPT-2 (12 layers, ~30MB/layer bfloat16) as the test preset- The current tracker
_select_routefunction is extended, not replaced — backward compat with stub nodes that don't send VRAM data (default to 8GB / bfloat16 if omitted)