Perf migration#14
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LIBERO sweep report -
|
| Model | n_act | Tasks | Successes | Terminated | SR | client/step (ms) | client/call (ms) |
|---|---|---|---|---|---|---|---|
bitvla |
8 | 10 | 10/10 | 0/10 | 100.00% | 18.16 | 145.26 |
evo1 |
8 | 10 | 9/10 | 0/10 | 90.00% | 29.73 | 237.87 |
gr00t_n1_5 |
16 | 10 | 10/10 | 0/10 | 100.00% | 6.80 | 108.85 |
gr00t_n1_6 |
16 | 10 | 8/10 | 0/10 | 80.00% | 6.20 | 99.25 |
gr00t_n1_7 |
16 | 10 | 10/10 | 0/10 | 100.00% | 6.36 | 101.70 |
openvla_oft |
8 | 10 | 10/10 | 0/10 | 100.00% | 32.06 | 256.44 |
pi0 |
50 | 10 | 8/10 | 0/10 | 80.00% | 5.27 | 263.65 |
pi05 |
10 | 10 | 10/10 | 0/10 | 100.00% | 16.66 | 166.56 |
smolvla |
1 | 10 | 10/10 | 0/10 | 100.00% | 85.66 | 85.66 |
vla_adapter |
8 | 10 | 10/10 | 0/10 | 100.00% | 13.49 | 107.92 |
Server-side inference breakdown
Parsed from _server_logs/<arch>.log lines:
vla-server: rid=… served=… total=… ms vision=… inf=… other=…
These are server-side measurements only - they exclude ZMQ transport and client pre/post. total = vision + inf + other.
| Model | Samples | total (ms) | vision | inf | other |
|---|---|---|---|---|---|
bitvla |
17 | 111.00 | 20.18 | 90.81 | 0.00 |
evo1 |
23 | 227.92 | 132.39 | 81.10 | 14.42 |
gr00t_n1_5 |
9 | 86.14 | 27.12 | 52.87 | 6.18 |
gr00t_n1_6 |
15 | 95.28 | 22.33 | 43.63 | 29.29 |
gr00t_n1_7 |
10 | 73.52 | 26.16 | 41.79 | 5.56 |
openvla_oft |
16 | 230.02 | 45.08 | 183.98 | 0.94 |
pi0 |
4 | 123.47 | 25.85 | 91.68 | 5.95 |
pi05 |
19 | 137.76 | 25.56 | 105.13 | 7.08 |
smolvla |
152 | 72.05 | 36.80 | 33.65 | 1.60 |
vla_adapter |
18 | 84.23 | 43.54 | 40.54 | 0.18 |
Transport + client overhead
overhead = client/call − server total - time spent outside vla-server (ZMQ over loopback + client preprocessing + protobuf round-trip).
| Model | client/call (ms) | server total (ms) | overhead (ms) |
|---|---|---|---|
bitvla |
145.26 | 111.00 | 34.26 |
evo1 |
237.87 | 227.92 | 9.95 |
gr00t_n1_5 |
108.85 | 86.14 | 22.70 |
gr00t_n1_6 |
99.25 | 95.28 | 3.97 |
gr00t_n1_7 |
101.70 | 73.52 | 28.18 |
openvla_oft |
256.44 | 230.02 | 26.42 |
pi0 |
263.65 | 123.47 | 140.18 |
pi05 |
166.56 | 137.76 | 28.80 |
smolvla |
85.66 | 72.05 | 13.62 |
vla_adapter |
107.92 | 84.23 | 23.69 |
Peak memory
Sampled by the inline mem_sampler function in eval/run_libero.sh while vla-server was alive:
- Peak VRAM - max of per-PID
used_memoryfromnvidia-smi --query-compute-apps, polled every 1s.(no GPU)on Tegra/Jetson, which doesn't support that query. - Peak RAM -
VmHWMfrom/proc/<pid>/status(kernel-tracked high-water mark of resident memory). Host only - does not include the iGPU's unified-memory allocations. - Peak sys RAM / sys Δ - peak system-wide used RAM (
MemTotal - MemAvailable) and its rise over the sampler-start baseline. On Tegra (unified memory) this is the only metric that captures the iGPU weights VRAM/VmHWM miss; the Δ is an upper bound on the server's footprint (a co-resident client/sim is included).
| Model | Peak VRAM (MiB) | Peak RAM (MiB) | Peak sys RAM (MiB) | sys Δ (MiB) | Samples |
|---|---|---|---|---|---|
bitvla |
1464 | 1181.9 | 9483.2 | 3140.4 | 118 |
evo1 |
1716 | 736.6 | 9564.2 | 3436.5 | 135 |
gr00t_n1_5 |
5062 | 1439.3 | 6871.4 | 3079.9 | 122 |
gr00t_n1_6 |
6098 | 1443.6 | 6933.8 | 3284.5 | 96 |
gr00t_n1_7 |
6456 | 1419.8 | 6976.0 | 3280.5 | 109 |
openvla_oft |
14866 | 1039.6 | 6853.9 | 682.3 | 208 |
pi0 |
5672 | 705.4 | 9716.2 | 3853.7 | 140 |
pi05 |
6128 | 726.7 | 9642.6 | 3024.6 | 203 |
smolvla |
1588 | 766.4 | 9715.6 | 3526.4 | 213 |
vla_adapter |
3086 | 1066.8 | 9839.7 | 3347.5 | 117 |
Client/call improvement vs ci/baselines/rtx3090.json
client/call (ms) from the table above vs the RTX 3090 baseline (Δ% negative = faster).
| Model | baseline (ms) | report (ms) | Δ (ms) | Δ% |
|---|---|---|---|---|
evo1 |
508.84 | 237.87 | -270.97 | -53.3% |
bitvla |
302.78 | 145.26 | -157.52 | -52.0% |
gr00t_n1_5 |
226.69 | 108.85 | -117.84 | -52.0% |
gr00t_n1_6 |
164.64 | 99.25 | -65.39 | -39.7% |
gr00t_n1_7 |
164.16 | 101.70 | -62.46 | -38.0% |
smolvla |
112.63 | 85.66 | -26.97 | -23.9% |
pi0 |
311.68 | 263.65 | -48.03 | -15.4% |
vla_adapter |
120.00 | 107.92 | -12.08 | -10.1% |
openvla_oft |
256.00 | 256.44 | +0.44 | +0.2% |
pi05 |
161.00 | 166.56 | +5.56 | +3.5% |
| total | 2328.42 | 1573.16 | -755.26 | -32.4% |
Bottom line: 8 of 10 models are faster than baseline.
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Runtime
gguf_readeracross the model loaders (was duplicated per arch).scripts/quantize_gguf.pyrepacks LM weights to Q8_0/Q4_0 and the loader runs quantized GGUFs directly. Q8_0 is near-lossless and roughly halves the LM.vla-cli: one-shot inference from an image plus tokens, no server or simulator.Fixes
action_dim == horizon * per_action_dim) so a client noise buffer cannot underrun.Infra
docs/ARCHITECTURE.mddesign overview and a README quickstart (download, merge mmproj, onevla-cliprediction); documentattention_maskas evo1-only.Validation
-Wall -Wextra.cross-attention change.