Commit Graph

17 Commits

Author SHA1 Message Date
Nabbil Khan cde79b12ab
Merge 60b0512be3 into 4a6f3e40a9 2026-03-04 09:11:56 +01:00
Manjeet Singh 4a6f3e40a9
Revise README for clarity and project details
Updated README to reflect project scope, architecture, and limitations.
2026-03-04 12:59:09 +05:30
nabbilkhan 60b0512be3 Harden token file layout checks and prevent exec-time fd leaks 2026-03-03 19:42:33 +00:00
nabbilkhan 991bf4d618 Harden token dataset validation across all training pipelines 2026-03-03 19:36:51 +00:00
maderix 443194bca4 Dashboard v2: live stats, JSON parsing, all three pipelines
- Parse static pipeline JSON step/batch/perf lines for real-time updates
- Running elapsed time, ms/step from wall-clock timestamps, steps/sec
- Compute ANE + Total TFLOPS from FLOPs/step when not reported directly
- Support --ane (train_large_ane) and --no-ane-extras flags
- Dynamic pipeline timing breakdown + CKPT_PATH per mode
2026-03-03 05:24:35 -08:00
maderix 3c1aae65d7 Merge dynamic training pipeline + CLI fixes + benchmark comparison 2026-03-03 04:36:03 -08:00
maderix 4c14ed0e25 CLI fixes + --no-ane-extras flag + README benchmark table
- Fix positional arg parsing (model_path, steps, lr were silently ignored)
- Add --model, --ckpt flags; forward ckpt_path across exec() restarts
- Add --no-ane-extras to disable ANE classifier/softmax/rmsnorm_bwd
- CPU fallback for softmax/classifier/rmsnorm_bwd when extras disabled
- Update README with 4-way benchmark comparison table (20 steps)
2026-03-03 04:34:55 -08:00
maderix cb474e1537 Add dynamic weight training pipeline — 110ms/step without recompilation
Dynamic weight pipeline that eliminates the ~3.7s recompile-every-10-steps
bottleneck. Weights are passed via IOSurface spatial dimension instead of
baked as constants, so kernels compile once at startup (345ms) and run
indefinitely without exec() restart.

Key components:
- training_dynamic/ — full pipeline (config, IO, MIL generators, train loop)
  - 9 dynamic kernels shared across all 12 layers
  - Vocab compaction 32K→9.2K for faster classifier
  - Vectorized cross-entropy with vDSP/NEON
  - Adam optimizer with gradient clipping + cosine LR schedule
  - Checkpoint save/resume

- test_dynamic_matmul.m — validates dynamic weight matmul vs cblas
- test_weight_patch.m — tests weight update via IOSurface

- dashboard.py — updated with --dynamic flag for v2 pipeline support,
  improved step regex parsing, --scratch/--lr/--accum CLI args

Performance: 110ms/step steady-state (no recompile overhead)
  ane_fwd=21 ane_bwd=28 io_fwd=12 io_bwd=15 silu=10 cls=13 rms=5 ms
2026-03-03 04:34:55 -08:00
Manjeet Singh c33077430e
Merge PR #19: Bridge API + ANE classifier/softmax/rmsnorm_bwd offload (16% faster)
Bridge+Memory leak fix+More functions
2026-03-03 13:10:57 +05:30
Vipul ebac5dd73f Python Bridge+Memory leak fix+More functions 2026-03-03 02:04:36 -05:00
Manjeet Singh 1b792fce34
Merge pull request #15 from maderix/claude/add-readme-scope-notice-EL9sS
Add Project Scope & Intent notice to README
2026-03-03 06:26:35 +05:30
Claude 752a3be81a
Add Project Scope & Intent notice to README
Weave in scope notice near the top covering project intent, what it
is/isn't, hype clarification, maintenance expectations, and fork
encouragement. Consolidate private API disclaimer with existing
disclaimer section to avoid duplication.

https://claude.ai/code/session_01NNL4MVEY1aKp19eGHTYJUv
2026-03-03 00:54:46 +00:00
Manjeet Singh 893f58e725
Merge pull request #2 from m0at/m5-maximized
ANE probe tests + training telemetry for M5 optimization
2026-03-02 14:57:12 +05:30
m0at 184b182bfc Add M5 probe results: weight reload fails, all QoS work, chaining API found
Key findings from running all 4 probes on Apple M5:

- Weight reload (unload+load after file overwrite) does NOT work — weights
  are baked at compile time, output is identical regardless of file changes
- weightsBuffer IOSurface parameter also does not override compiled weights
- All QoS values 0-63 work, no measurable latency difference (~0.07ms/eval)
- _ANEPerformanceStats has hwExecutionTime (ns) + perfCounterData
- _ANEChainingRequest supports loopback execution (output→input chaining)
- _ANEClient has real-time eval path and chaining preparation methods
- procedureIndex 0-15 all succeed on single-procedure models

Fixed probe tests to use fp32 I/O with cast (matching inmem_peak pattern)
and 64+ channel kernels (ANE minimum size requirement).

Full analysis in training/m5result.md.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-01 23:16:38 -08:00
m0at 40d3f45631 Add ANE probe tests and training telemetry for M5 optimization
Four standalone probe tests to characterize the M5 ANE:
- test_weight_reload: Can weights be hot-swapped via unload+load without recompilation?
- test_perf_stats: Enumerate _ANEPerformanceStats methods/properties and hardware counters
- test_qos_sweep: Measure compile/load/eval latency across QoS 0-63
- test_ane_advanced: Probe SharedEvents, weightsBuffer IOSurface, procedureIndex, VirtualClient

Training telemetry (train_large.m):
- JSON lines to stderr with per-step timing breakdown and per-batch TFLOPS metrics
- Enables external monitoring tools to visualize ANE utilization in real-time

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-01 22:54:58 -08:00
maderix 4d67db1bdb stories110M: 12-layer ANE training with dashboard, 107ms/step
- Scale to full stories110M (109M params, 12 layers) with real TinyStories data
- vDSP-vectorized cross-entropy (110ms→14ms), NEON fp16 IO, async dW
- TUI dashboard: loss curve, ANE/CPU power, CPU/memory graphs, text generation
- Split into modular headers: config, io, mil, cpu_ops
2026-03-01 03:14:39 -08:00
maderix f213c8db68 Initial release 2026-02-28 00:22:06 -08:00