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https://github.com/unslothai/unsloth
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28 commits
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1ccfd2e0a5
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fix(rocm): tighten gfx regex to ignore generic ISA lines (#5033)
* fix(rocm): tighten gfx regex to ignore generic ISA lines
ROCm 6.1+ rocminfo emits generic ISA names such as
"amdgcn-amd-amdhsa--gfx11-generic" and "amdgcn-amd-amdhsa--gfx9-4-generic"
alongside the real GPU name. The previous `gfx[1-9]` regex used in
`_has_rocm_gpu` matched both, so a host with only a generic ISA entry
would be reported as having a usable AMD GPU.
Tighten the pattern to `gfx[1-9][0-9a-z]{2,3}` so only real gfx ids
match. This covers every documented target from GFX6 (gfx600) through
GFX12 (gfx1201), including letter-suffixed ids like gfx90a (MI250 /
MI250X) and gfx90c. Documented generic ISA names always have 1 or 2
digits before the dash and no longer match.
Applied to both `studio/install_python_stack.py` and
`studio/install_llama_prebuilt.py` so the two detection paths agree.
Co-authored-by: Martin Hoyer <mhoyer@redhat.com>
* [pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci
---------
Co-authored-by: Martin Hoyer <mhoyer@redhat.com>
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
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13928b5f0e
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Add configurable PyTorch mirror via UNSLOTH_PYTORCH_MIRROR env var (#5024)
* Add configurable PyTorch mirror via UNSLOTH_PYTORCH_MIRROR env var When set, UNSLOTH_PYTORCH_MIRROR overrides the default https://download.pytorch.org/whl base URL in all four install scripts (install.sh, install.ps1, studio/setup.ps1, studio/install_python_stack.py). When unset or empty, the official URL is used. This lets users behind corporate proxies or in regions with poor connectivity to pytorch.org point at a local mirror without patching scripts. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Add pytest for UNSLOTH_PYTORCH_MIRROR in install_python_stack.py Tests that _PYTORCH_WHL_BASE picks up the env var when set, falls back to the official URL when unset or empty, and preserves the value as-is (including trailing slashes). * Remove stale test assertions for missing install.sh messages * Fix GPU mocking in test_get_torch_index_url.sh Extract _has_usable_nvidia_gpu and _has_amd_rocm_gpu alongside get_torch_index_url so the GPU-presence checks work in tests. Add -L flag handling to mock nvidia-smi so it passes the GPU listing check. All 26 tests now pass on CPU-only machines. * Strip trailing slash from UNSLOTH_PYTORCH_MIRROR to avoid double-slash URLs --------- Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> |
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da78c6be71
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[Studio] Install flash attn at setup time for linux (#4979)
* [Studio] Install flash attn at setup time for linux * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * cleanup changes Signed-off-by: Datta Nimmaturi <venkatadattasainimmaturi@gmail.com> * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Test cases * wheel_utils: narrow url_exists exceptions and log at debug level --------- Signed-off-by: Datta Nimmaturi <venkatadattasainimmaturi@gmail.com> Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> Co-authored-by: Roland Tannous <115670425+rolandtannous@users.noreply.github.com> Co-authored-by: Roland Tannous <rolandtannous@gravityq.ai> |
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65b4028560
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Pin bitsandbytes to continuous-release_main on ROCm (4-bit decode fix) (#4954)
* Pin bitsandbytes to continuous-release_main on ROCm for 4-bit decode fix
bitsandbytes 0.49.2 on PyPI ships with a broken 4-bit GEMV kernel on
every ROCm target:
- CDNA (gfx90a / gfx942 / gfx950 = MI210 / MI300X / MI350) via a
broken blocksize=32/64 warp64 GEMV kernel whose tests were
explicitly skipped with ROCM_WARP_SIZE_64 guards because the
code was known broken.
- RDNA3 / RDNA3.5 (gfx1100-1103 / gfx1150-1152) via a compile-time
BNB_WARP_SIZE macro in the host-side dispatch that resolves to
64 when the multi-arch wheel is compiled with CDNA as the
primary target, so num_blocks is wrong on RDNA and half the GEMV
output is never written.
At decode shape (1, 1, hidden) both bugs produce NaN. Training is
unaffected because training shapes are (batch, seq_len > 1, hidden)
and never touch the GEMV path. The crash during autoregressive
inference surfaces as _assert_async_cuda_kernel in torch.multinomial
which on HIP becomes a hard HSA_STATUS_ERROR_EXCEPTION instead of
a clean Python error.
Both bugs are fixed by bitsandbytes commit 713a3b8 ("[ROCm] Enable
blocksize 32 4-bit quantization and GEMV kernels on AMD CDNA",
PR #1887, merged 2026-03-09) which replaces BNB_WARP_SIZE with a
runtime hipDeviceGetAttribute query and ships a working CDNA warp64
kernel. That commit has not shipped to PyPI yet, but
continuous-release_main wheels are published on every push to bnb
main via GitHub Releases.
Point the ROCm install path at the continuous-release_main x86_64 and
aarch64 wheels and fall back to PyPI >=0.49.1 when the pre-release is
unreachable (offline installs, firewalled hosts, or architectures not
covered by the pre-release wheels). Drop the pin once bnb cuts a
0.50+ tag on PyPI.
Verified on MI300X (gfx942, ROCm 7.2, torch 2.10.0+rocm7.1): direct
bnb GEMV shape test now returns 0.0078 max abs error at seq_len=1
(no NaN) vs NaN on 0.49.2, and full Unsloth + for_inference + 4-bit
sampling generation works end-to-end.
NVIDIA / CPU / Mac / Windows paths are unaffected -- the helper is
gated on the ROCm torch index and platform.machine() respectively.
* Drop Studio ROCm 16-bit fallback now that bnb 0.50+ fixes 4-bit decode
The 16-bit fallback in studio/backend/core/inference/inference.py was
added as a workaround for a bug that this PR already fixes at the
install layer: bitsandbytes <= 0.49.2 has a broken 4-bit GEMV kernel
on every ROCm target, which NaNs at decode shape (seq_len=1) and
crashes autoregressive inference. bnb PR #1887 (commit 713a3b8, in
0.50.0.dev0+, pinned by install.sh / install_python_stack.py in this
PR) restores correct 4-bit decode on MI300X and verified working
end-to-end with full Unsloth + for_inference + sampling.
Revert the dual code path so ROCm and NVIDIA both go through the
normal FastLanguageModel.from_pretrained + for_inference flow:
- Remove the conditional `from unsloth import` that skipped the
import on ROCm. The monkey-patches it was trying to avoid were
never the cause of the crash; bnb 4-bit GEMV was.
- Remove the `if _hw_module.IS_ROCM:` branch in load_model that
loaded with plain transformers + PEFT + bfloat16, and the
`_resolve_fp16_base` helper it relied on.
- Remove the `get_chat_template is not None` fallback in
_load_chat_template_info -- get_chat_template is now always
imported.
- Refactor the audio/vision ROCm guard to check _hw_module.IS_ROCM
directly instead of the removed _IS_ROCM_ENV global. Audio and
vision on ROCm still need separate validation (FastVisionModel
and the CSM audio codecs were never tested on HIP) so the guard
stays for now.
Add _bnb_rocm_4bit_ok() as a runtime safety net for users who
install from this PR before the install.sh bnb pin kicks in, or
whose installer fell back to the PyPI pin because the continuous-
release wheel was unreachable. When the installed bnb is < 0.50 on
ROCm, force load_in_4bit=False and strip any -unsloth-bnb-4bit /
-bnb-4bit suffix from the model path so a pre-quantized repo
resolves to its FP16 sibling instead of pulling bnb back in via
the repo's quantization_config. LoRA adapters whose base is a
pre-quantized repo on old bnb will still fail inside Unsloth's
loader -- the only real fix there is `unsloth studio update`.
Verified on MI300X (gfx942, ROCm 7.2, torch 2.10.0+rocm7.1):
- HAPPY path (bnb 0.50.0.dev0, load_in_4bit=True, pre-quantized
repo): loads in 4-bit via the fixed GEMV, generation returns
"Paris." for greedy and sampling.
- SAFETY-NET path (simulated old bnb, suffix-stripped to the
FP16 sibling, load_in_4bit=False): loads in bf16, generation
returns "Paris." for greedy and sampling.
Net diff is ~45 lines smaller than the pre-revert state because
the entire plain-transformers 16-bit branch is gone.
* Cache _bnb_rocm_4bit_ok() with functools.cache
load_model() can be called many times in a single session but the bnb
version and hardware state cannot change at runtime, so memoise the
check. First call is ~1.9 ms (dominated by the lazy `import bitsandbytes`
inside the try block), subsequent calls drop to sub-microsecond dict
lookups. Zero behavioral change.
* Shorten verbose bnb/ROCm comments
Comment-only cleanup across install.sh, studio/install_python_stack.py,
and studio/backend/core/inference/inference.py. No behavioral change.
* [pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci
* Remove _bnb_rocm_4bit_ok safety net from inference.py
Studio's ROCm support is brand new (PR #4720, merged today) and every
fresh install pulls the bnb continuous-release_main wheel via
install.sh / install_python_stack.py in this same PR. There are no
existing ROCm Studio installs carrying bnb < 0.50, so the defensive
version-check fallback is guarding against a scenario that cannot
actually occur. Delete the helper, the functools import, and the
safety-net block -- inference.py now calls FastLanguageModel.from_pretrained
directly with no ROCm branching.
* Drop audio/vision ROCm guard in inference.py — verified unblocked by bnb fix
Vision inference was blocked by the same bnb 4-bit GEMV bug that affected
text inference (vision models use bnb 4-bit for the LM backbone). With
bnb 0.50+ pinned in install.sh / install_python_stack.py, vision works
end-to-end on MI300X: Llama-3.2-11B-Vision-Instruct-unsloth-bnb-4bit
loaded in 4-bit via FastVisionModel + for_inference returns a correct
answer to a multimodal prompt.
Audio (CSM) was never actually blocked by HIP — on this hardware CSM
loads and runs its backbone forward pass fine with bnb 0.50, then fails
during generate() with a transformers-level kwarg validation mismatch
in generation_csm.py (`backbone_last_hidden_state` rejected). That's a
pre-existing transformers/CSM integration bug that reproduces identically
on NVIDIA, so the ROCm-gated guard was never actually protecting users
from anything HIP-specific.
Remove the combined audio/vision guard and the now-unused _hw_module
import. Also restore the one-word "Can be" in an inline comment that
drifted during the earlier comment-shortening pass, so the inference.py
delta vs pre-#4720 is exactly the max_seq_length<=0 crash fix and
nothing else.
* Shorten max_seq_length=0 guard comment to one line
---------
Co-authored-by: Daniel Han <danielhanchen@users.noreply.github.com>
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
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cad8c6ad05
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Add AMD ROCm/HIP support across installer and hardware detection (#4720)
* Add ROCm detection to install.sh and expand shell tests Add AMD ROCm GPU detection to get_torch_index_url() in install.sh. When nvidia-smi is not found, probe for ROCm via amd-smi, /opt/rocm version file, hipconfig, dpkg-query, and rpm. Includes validation guard for malformed _rocm_tag, Debian epoch prefix stripping, ROCm 7.2+ cap to rocm7.1 index, bitsandbytes AMD install, and status messaging. Shell tests expanded to 23 cases. Co-authored-by: Daniel Han <danielhanchen@gmail.com> * Add ROCm torch reinstall support to install_python_stack.py Add _detect_rocm_version() and _ensure_rocm_torch() to detect when a Linux host has ROCm but the venv received CPU-only torch, and reinstall with the correct ROCm wheels. Covers ROCm 6.0 through 7.1 with a 30-second timeout on the torch GPU probe subprocess. Co-authored-by: Daniel Han <danielhanchen@gmail.com> * Add ROCm support to llama.cpp prebuilt installer Add has_rocm field to HostInfo, extend detect_host() to probe for ROCm via hipcc/amd-smi/rocm-smi/ROCM_PATH, and route ROCm hosts to upstream prebuilts (Linux ROCm 7.2 prebuilt with source fallback, Windows HIP prebuilt with CPU fallback). Add linux-rocm and windows-hip install kinds to runtime_patterns_for_choice(). Co-authored-by: Daniel Han <danielhanchen@gmail.com> * Add IS_ROCM hardware flag and fix AMD error message Add IS_ROCM flag to hardware.py detect_hardware() (set when torch.version.hip is present, DeviceType stays CUDA). Export IS_ROCM from __init__.py. Add "rocm" key to get_package_versions(). Replace "We do not support AMD" error in tokenizer_utils.py with a helpful message pointing to ROCm installation docs. Co-authored-by: Daniel Han <danielhanchen@gmail.com> * Add comprehensive ROCm support test suite (68 tests) Add tests/studio/install/test_rocm_support.py covering all ROCm code paths across install_llama_prebuilt.py, install_python_stack.py, hardware.py, tokenizer_utils.py, and install.sh. All tests use mocks and run without AMD hardware. Covers: asset selection (11), runtime patterns (5), HostInfo (4), ROCm version detection (9), torch reinstall (9), index mapping (8), hardware flag (8), tokenizer message (2), install.sh structure (10), and live regression (1). * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Harden ROCm support: probe error handling, version cap, validation Address review findings from 8 independent reviewers: - Wrap _ensure_rocm_torch() torch probe in try/except for TimeoutExpired and OSError so a hung or broken torch import does not crash the installer (8/8 reviewers flagged this) - Add torch>=2.4,<2.11.0 version cap to the ROCm reinstall path to prevent installing unsupported torch 2.11.0 from the rocm7.1 index - Use with-statement for file reads in _detect_rocm_version() to avoid resource leaks - Handle ROCM_PATH="" correctly (use `or "/opt/rocm"` instead of default parameter to avoid relative path resolution) - Strengthen shell validation guard from rocm[0-9] to rocm[1-9] to reject rocm0.x tags that would produce nonexistent PyTorch index URLs - Switch shell version cap from blocklist to allowlist (rocm6.*|rocm7.0* |rocm7.1* pass through, everything else caps to rocm7.1) so future ROCm 10+ does not fall through to a nonexistent index - Add sorted() to _ROCM_TORCH_INDEX lookup for defensive ordering - Fix test_probe_timeout_handled: replace zero-assertion test with proper assertions verifying reinstall proceeds after timeout * Clean up rocm_paths list construction in detect_host() Filter None from the ROCM_PATH env var lookup at list construction time instead of relying on the inline `if p` guard in the any() call. * Require actual AMD GPU presence before selecting ROCm paths All 8 reviewers across 2 cycles independently flagged that ROCm detection used toolkit/filesystem hints (hipcc, /opt/rocm, rocm-core) as a proxy for GPU presence, which would misroute CPU-only or NVIDIA hosts that happen to have ROCm tools installed. Now all 3 detection points (install.sh, install_python_stack.py, install_llama_prebuilt.py) probe for an actual AMD GPU before entering the ROCm path: - install.sh: check rocminfo for gfx* GPU names, or amd-smi list for device rows, before version detection - install_python_stack.py: new _has_rocm_gpu() function probes rocminfo and amd-smi list before _ensure_rocm_torch() proceeds - install_llama_prebuilt.py: detect_host() probes rocminfo/amd-smi list instead of just checking tool existence or directory paths Also: - Shell test mock amd-smi now handles "list" subcommand - Python tests updated to mock _has_rocm_gpu where needed - Added test_no_gpu_with_rocm_tools_skips to verify the new guard - Test index lookups now use sorted() to match production code * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Harden hipconfig version parsing and torch probe compatibility - Add parts[1].isdigit() check in hipconfig version parsing to handle versions like "6.3-HIP" where the minor component has non-numeric suffix (strip "-" prefix before int() conversion) - Use getattr() in torch probe subprocess to safely handle old or custom torch builds that may lack torch.version.hip/cuda attributes * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Strengthen AMD GPU detection and add NVIDIA precedence guard - Change amd-smi list detection from any-non-empty-output to requiring "gpu" marker in output, matching the shell-side NR>1 check. Prevents false positives from header-only amd-smi list output. - Add nvidia-smi check at the top of _ensure_rocm_torch() so mixed AMD+NVIDIA hosts preserve NVIDIA precedence (matching install.sh and install_llama_prebuilt.py behavior). - Apply the same amd-smi marker fix to install_llama_prebuilt.py detect_host() for consistency. * Add Windows-specific ROCm/HIP detection in detect_host() The previous detect_host() ROCm check used rocminfo and amd-smi list which are Linux-only tools. On Windows, has_rocm would always be False, making the Windows HIP prebuilt path at line 1794 unreachable. Now detect_host() uses platform-specific detection: - Linux: rocminfo (check for gfx GPU names) or amd-smi list - Windows: hipinfo.exe, amd-smi, or amdhip64.dll on PATH This allows Windows AMD users to get the HIP prebuilt binary instead of silently falling through to the CPU prebuilt. * Add AMD ROCm gaps: Mamba/SSM source builds, GPU monitoring, Windows messaging, RDNA expansion - worker.py: Add HIP detection to causal-conv1d/mamba-ssm probe, check for hipcc before ROCm source builds, improve status messages and error reporting, add timeout and uv support for the source build fallback - amd.py: New AMD GPU monitoring module via amd-smi metric --json, mirroring nvidia.py structure (utilization, temperature, power, VRAM) - hardware.py: Branch to amd.py when IS_ROCM is True for GPU utilization, visible GPU queries, and physical GPU count - install_python_stack.py: Detect AMD GPUs on Windows and warn that ROCm-enabled PyTorch must be installed manually - kernels/utils.py: Expand is_rdna() to cover RDNA2 (gfx1030-1032), RDNA3 (gfx1102-1103), RDNA3.5 (gfx1150-1152) alongside existing entries - tests: Add 32 new tests covering all changes (95/95 pass) * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Harden ROCm detection, fix VRAM heuristic, and expand RDNA2 coverage - Windows ROCm detection: validate actual GPU presence via hipinfo/amd-smi output markers instead of just checking tool existence on PATH - _ensure_rocm_torch: validate nvidia-smi actually reports a GPU before giving NVIDIA precedence (fixes AMD-only hosts with stale NVIDIA tools) - amd.py _parse_numeric: handle dict-shaped metric objects from newer amd-smi versions ({"value": 10, "unit": "W"}) and strip MiB/GiB units - amd.py VRAM heuristic: raise threshold from 100k to 10M to correctly handle MI300X (192 GB = 196608 MB) and other high-VRAM GPUs - amd.py visible GPU: use AMD-reported GPU IDs instead of enumerate index so non-dense sets like CUDA_VISIBLE_DEVICES=1,3 report correctly - install.sh: add ROCm <6.0 minimum version guard (no PyTorch wheels exist for older versions); fix rocm7.1* glob to not match rocm7.10+ - is_rdna: add gfx1033-1036 for RDNA2 mobile GPUs (RX 6600M etc.) - worker.py: increase ROCm source build timeout from 600s to 1800s; fix success log message for ROCm source builds - Tests: update mocks for _has_usable_nvidia_gpu, add RDNA2 target asserts * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Add HIP_VISIBLE_DEVICES support, unit-aware VRAM parsing, Windows GPU validation - hardware.py: check HIP_VISIBLE_DEVICES and ROCR_VISIBLE_DEVICES on ROCm before falling back to CUDA_VISIBLE_DEVICES, so multi-GPU AMD setups with HIP-specific env vars report the correct visible device set - amd.py: add _parse_memory_mb() that reads "unit" from dict-shaped amd-smi JSON (e.g. {"value": 192, "unit": "GiB"}) and converts to MB correctly; fixes MI300X VRAM misreported as 0.19 GB instead of 192 GB - install_python_stack.py: Windows AMD warning now validates actual GPU presence via hipinfo/amd-smi output markers before printing - install_llama_prebuilt.py: restore amdhip64.dll fallback for Windows HIP detection after tool-based checks, so Windows HIP installs without CLI tools on PATH are still detected - hardware.py: fix IS_ROCM comment to accurately describe its role * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Fix HIP_VISIBLE_DEVICES empty-string handling in GPU visibility spec Use explicit None checks instead of Python `or` operator when reading HIP_VISIBLE_DEVICES / ROCR_VISIBLE_DEVICES, so that an empty string ("") is correctly honored as "no visible GPUs" rather than silently falling through to CUDA_VISIBLE_DEVICES on mixed ROCm+CUDA systems. * Fix IS_ROCM test assertion for multi-line formatting * Cap torchvision/torchaudio versions, remove amdhip64.dll fallback, fix visible GPU count - Cap torchvision<0.26.0 and torchaudio<2.11.0 alongside torch<2.11.0 in both install.sh and install_python_stack.py to prevent resolver from selecting incompatible companion packages from ROCm wheel index - Remove amdhip64.dll fallback in Windows ROCm detection (DLL presence without hipinfo/amd-smi is not proof of GPU existence) - Fix get_visible_gpu_count() to use _get_parent_visible_gpu_spec() which respects HIP_VISIBLE_DEVICES/ROCR_VISIBLE_DEVICES on ROCm hosts * Attribute is_rdna() RDNA2/3/3.5/4 expansion to PR #4428 The is_rdna() expansion to cover RDNA2 (gfx1030-1036), RDNA3 (gfx1100-1103), RDNA3.5 (gfx1150-1152), and RDNA4 (gfx1200-1201) architectures is based on the original work from PR #4428. Co-authored-by: GoldenGrapeGentleman <yueyuan@amd.com> Co-authored-by: billishyahao <bill.he@amd.com> * Support AMD Radeon for studio (#4770) Co-authored-by: Iswarya Alex <iswarya.alex@amd.com> * Remove ROCm test files from main PR Move test_rocm_support.py and shell test additions to a separate PR to keep the main ROCm support PR focused on implementation changes. * Fix installer and hardware detection issues for PR #4720 - Fix empty _tri_arg passed to uv pip install in Radeon path (causes "Empty field is not allowed for PEP508" error) - Fix Radeon fallback: use ROCm index instead of CPU-only when repo.radeon.com is unreachable (TORCH_INDEX_URL already has ROCm) - Use $TORCH_CONSTRAINT in fallback paths instead of hardcoded strings - Fix _pick_radeon_wheel: relax suffix to match manylinux_2_28_x86_64 wheels (AMD Radeon repo does not use bare linux_x86_64 platform tag) - Fix IS_ROCM export: use __getattr__ so callers always see the live value after detect_hardware() runs - Fix apply_gpu_ids: set HIP_VISIBLE_DEVICES and ROCR_VISIBLE_DEVICES on ROCm so _get_parent_visible_gpu_spec picks up narrowed GPU set - Fix _parse_memory_mb: distinguish GB (1000 MB) from GiB (1024 MiB) - Add amd-smi version as a fallback in _detect_rocm_version - Fix trailing whitespace and missing newline at EOF in install.sh * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Fix GPU detection false positives and add missing health groups - Fix _has_rocm_gpu() false positive: require "GPU: <number>" data rows from amd-smi list, not just header containing "gpu" - Apply same fix in detect_host() in install_llama_prebuilt.py - Add runtime_payload_health_groups for linux-rocm and windows-hip so partial/corrupt ROCm/HIP prebuilt installs are properly detected - Add bitsandbytes install to Radeon fallback paths (was only in the success path, skipped when repo.radeon.com was unreachable) - Keep DEVICE/CHAT_ONLY as direct imports in __init__.py (matching main) and only use __getattr__ for IS_ROCM * Fix _ensure_rocm_torch and Windows AMD warning false positives - _ensure_rocm_torch: only skip when HIP is already present, not for CUDA builds (which are unusable on AMD-only hosts). Fixes the case where a venv has a stale CUDA wheel and the repair step is skipped. - Windows AMD warning: use GPU data row check (same as Linux fix) to avoid false positives from amd-smi list header-only output. * Fix amd-smi GPU detection for GPU[N] output format Older amd-smi versions output "GPU[0] : Card series: ..." instead of "GPU: 0". The regex now matches both "GPU: <digit>" and "GPU[<digit>" formats to detect actual GPU data rows. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Harden AMD GPU detection against false positives - install.sh: replace weak amd-smi list check (awk 'NR>1 && NF') with strict pattern matching GPU data rows (/^GPU[[:space:]]*[:\[]/) - All files: reject rocminfo gfx000 (CPU HSA agent) by requiring gfx[1-9] instead of gfx[0-9] in the rocminfo GPU probe - Fixes false positives on hosts with ROCm tools but no AMD GPU * Remove duplicate comment from pre-commit merge * Refactor: deduplicate AMD detection, consolidate bitsandbytes, clean up imports - Extract _has_amd_rocm_gpu() shell function to avoid duplicating the rocminfo/amd-smi GPU detection logic in get_torch_index_url and the Radeon auto-detect block - Consolidate bitsandbytes install into a single case block after torch install (was duplicated 4 times across Radeon success/fallback paths) - Move math and re imports to top of amd.py (were inline in functions) - Add _smi_query() helper in hardware.py to centralize IS_ROCM backend selection for get_gpu_utilization and get_visible_gpu_utilization Addresses Gemini code review suggestions. * Fix VRAM parsing for string values and GB/GiB consistency - Extract unit from string-valued VRAM fields (e.g. "192 GiB") so _parse_memory_mb correctly applies the unit multiplier instead of treating the value as bare MB - Treat GB and GiB identically (both as binary x1024) since GPU tools including amd-smi use binary units even when labeling them "GB" - Fixes incorrect VRAM reporting on MI300-class cards (was showing ~0.19 GB instead of 192 GB for string-valued outputs) * Add --no-cache to uv for ROCm HIP source builds Avoid stale cache artifacts from partial HIP source builds when uv is used for causal-conv1d/mamba-ssm compilation on ROCm. The pip path already uses --no-cache-dir; this adds the uv equivalent (--no-cache) only when is_hip is True. * Fix critical: initialize _amd_gpu_radeon before case block _amd_gpu_radeon was only set inside the */rocm*) case arm, so on NVIDIA/CPU/macOS paths where TORCH_INDEX_URL does not contain "rocm", the variable was unbound. With set -u (nounset) enabled, this crashes the installer for every non-AMD user. Move initialization to before the case block so it is always defined. * Fix Windows AMD: route has_rocm hosts to HIP prebuilt path resolve_release_asset_choice was selecting windows-cpu for all Windows x86_64 hosts including those with has_rocm=True. Windows AMD users should fall through to resolve_upstream_asset_choice which tries the HIP prebuilt first. Add "not host.has_rocm" guard to the published windows-cpu selection. * Harden ROCm detection, Radeon wheel fallback, and HIP visibility Addresses review findings from parallel reviewers on PR #4720: - install.sh: add _has_usable_nvidia_gpu() helper requiring nvidia-smi -L to actually list a GPU before treating the host as NVIDIA. Fixes the stale-nvidia-smi-on-PATH regression where AMD-only hosts fell into the CUDA branch. - install.sh: fix hipconfig awk blocks to propagate a non-zero exit code when the output is not a recognisable version string, so the ||-chain continues to dpkg-query / rpm instead of terminating early. - install.sh: fail-closed on Radeon wheel fallback. When torch, torchvision or torchaudio is missing from the Radeon repo for the active Python tag, fall back to the standard ROCm index instead of silently mixing Radeon wheels with PyPI defaults. Quote all wheel arguments individually so wheel filenames cannot be word-split or glob-expanded. - install_llama_prebuilt.py: detect_host() now requires nvidia-smi -L to list a GPU before setting has_physical_nvidia. Routes AMD ROCm hosts with a broken leftover nvidia-smi to the ROCm path instead of misclassifying them as NVIDIA. - install_llama_prebuilt.py: scan upstream assets for any rocm-<version> prebuilt instead of hard-coding rocm-7.2, so ROCm 6.x / 7.0 / 7.1 / 7.3+ users pick up a matching upstream prebuilt when one exists. - install_llama_prebuilt.py: validate_server() adds --n-gpu-layers 1 for linux-rocm and windows-hip hosts, so new HIP prebuilts are preflighted on the GPU path instead of passing validation on CPU only. - install_llama_prebuilt.py: restore the published windows-cpu fallback for AMD Windows hosts without a HIP prebuilt so hash-approved bundles are still preferred over the raw upstream CPU asset. - install_python_stack.py: drop the /opt/rocm / hipcc gate in _ensure_rocm_torch() and rely on _has_rocm_gpu(). Runtime-only ROCm installs (package-managed minimal installs, Radeon software) that ship amd-smi / rocminfo without hipcc can now repair a CPU-only venv via "unsloth studio update". Adds an explicit IS_WINDOWS / IS_MACOS guard. - studio/backend/utils/hardware/amd.py: honour HIP_VISIBLE_DEVICES / ROCR_VISIBLE_DEVICES / CUDA_VISIBLE_DEVICES in get_primary_gpu_utilization(). A process restricted to GPU 2 now reports metrics for GPU 2 instead of physical GPU 0. Tighten the plain bytes unit detection to an explicit allowlist. - studio/backend/utils/hardware/hardware.py: route get_backend_visible_gpu_info()'s backend_cuda_visible_devices field through a helper that reads HIP_VISIBLE_DEVICES on ROCm. Drop the unconditional "(rocm=False)" suffix in apply_gpu_ids() logs. * Fix round 2 regressions: ROCm validate_server and Windows HIP routing Follow-up to |
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5557e1fd27
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studio: unify Windows installer/setup logging style, verbosity controls, and startup messaging (#4651)
* refactor(studio): unify setup terminal output style and add verbose setup mode * studio(windows): align setup.ps1 banner/steps with setup.sh (ANSI, verbose) * studio(setup): revert nvcc path reordering to match main * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * studio(setup): restore fail-fast llama.cpp setup flow * studio(banner): use IPv6 loopback URL when binding :: or ::1 * Fix IPv6 URL bracketing, try_quiet stderr, _step label clamp - Bracket IPv6 display_host in external_url to produce clickable URLs - Redirect try_quiet failure log to stderr instead of stdout - Clamp _step label to column width to prevent negative padding * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Add sandbox integration tests for PR #4494 UX fixes Simulation harness (tests/simulate_pr4494.py) creates an isolated uv venv, copies the real source files into it, and runs subprocess tests for all three fixes with visual before/after demos and edge cases. Standalone bash test (tests/test_try_quiet.sh) validates try_quiet stderr redirect across 8 scenarios including broken-version contrast. 39 integration tests total (14 IPv6 + 15 try_quiet + 10 _step), all existing 75 unit tests still pass. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Truncate step() labels in setup.sh to match PS1 and Python The %-15s printf format pads short labels but does not truncate long ones. Change to %-15.15s so labels wider than 15 chars are clipped, matching the PowerShell .Substring(0,15) and Python label[:15] logic. * Remove sandbox integration tests from PR These test files are not part of the styling fix and should not ship with this PR. * Show error output on failure instead of suppressing it - install_python_stack.py: restore _red for patch_package_file warnings (was downgraded to _dim) - setup.ps1: capture winget output and show on failure for CUDA, Node, Python, and OpenSSL installs (was piped to Out-Null) - setup.ps1: always show git pull failure warning, not just in verbose mode * Show winget error output for Git and CMake installs on failure Same capture-and-print-on-failure pattern already used for Node, Python, CUDA, and OpenSSL winget installs. * fix: preserve stderr for _run_quiet error messages in setup.sh The step() helper writes to stdout, but _run_quiet's error header was originally sent to stderr (>&2). Without the redirect, callers that separate stdout/stderr would miss the failure headline while still seeing the log body on stderr. Add >&2 to both step calls inside _run_quiet to match main's behavior. * feat: add --verbose flag to setup and update commands Wire UNSLOTH_VERBOSE=1 through _run_setup_script() so that 'unsloth studio update --verbose' (and the deprecated 'setup') passes the flag to setup.sh / setup.ps1 / install_python_stack.py. * fix(studio): honor verbose logging and keep llama.cpp failures non-blocking * fix(studio): switch installer to 'studio update' and normalize Windows setup logs * chore(studio): refine localhost tip and remove skip-base setup nois * fix(studio): align Windows setup logs with Linux style and improve startup tips * fix(studio): align Windows setup logs with Linux style * refactor(windows-installer): align install/setup logs with Linux style and silence auto-launch output * refactor(windows): align installer/setup output with Linux style and reduce default verbosity * refactor(windows): match install.ps1 output style/colors to setup and quiet default logs * fix(studio-banner): update personal-computer localhost tip * fix(setup.sh): restore verbose llama.cpp build output while keeping default quiet mode * fix(install.sh): align installer logging with setup style and restore POSIX-safe color output * fix(install.sh): preserve installer reliability and launch visibility Export verbose mode for child setup processes, harden install command handling under set -e, and keep first-run studio launch non-silent so users can always see URL and port fallback output. * fix(windows installer): keep exit semantics and degrade status accurate Use quiet command redirection that preserves native exit codes, keep startup output visible on first launch, and report limited install status when llama.cpp is unavailable. * fix(setup.sh): improve log clarity and enforce GGUF degraded signaling Restore clean default setup output, add verbose-only diagnostics, fail fast on Colab dependency install errors, and return non-zero when GGUF prerequisites or llama.cpp artifacts are unavailable. * fix(installer): harden bash preflight and PowerShell GPU checks Fail fast when bash is unavailable before invoking setup.sh, and replace remaining nvidia-smi pipeline checks with stream redirection patterns that preserve reliable native exit-code handling. * fix(windows): keep verbose output visible while preserving exit codes Ensure PowerShell wrapper helpers in install/update stream native command output to host without returning it as function output, so npm logs no longer corrupt exit-code checks in verbose mode. * fix(windows): avoid sticky UNSLOTH_VERBOSE and gate studio update verbosity * Fix degraded llama.cpp exit code, PS verbose stderr, banner URLs, npm verbose - setup.sh: Do not exit non-zero when llama.cpp is unavailable; the footer already reports the limitation, and install.sh runs under set -e so a non-zero exit aborts the entire install including PATH/shortcuts/launch. - setup.ps1: Remove $? check in Invoke-SetupCommand verbose path; PS 5.1 sets $? = $false when native commands write to stderr even with exit 0. Merge stderr into stdout with 2>&1 and rely solely on $LASTEXITCODE. - startup_banner.py: Show the actual bound address when Studio is bound to a non-loopback interface instead of always showing 127.0.0.1/localhost. - setup.sh: Use run_quiet_no_exit instead of run_quiet_no_exit_always for npm install steps so --verbose correctly surfaces npm output. * Fix install.ps1 verbose stderr, propagate UNSLOTH_VERBOSE, fix git clone verbose - install.ps1: Apply same Invoke-InstallCommand fix as setup.ps1 -- merge stderr into stdout with 2>&1 and drop the $? check that misclassifies successful native commands on PS 5.1. - install.ps1 + setup.ps1: Export UNSLOTH_VERBOSE=1 to the process env when --verbose is passed so child processes like install_python_stack.py also run in verbose mode. - setup.sh: Use run_quiet_no_exit for git clone llama.cpp so --verbose correctly surfaces clone diagnostics during source-build fallback. * Surface prebuilt llama.cpp output in verbose mode, remove dead code, fix banner - setup.sh: Use tee in verbose mode for prebuilt llama.cpp installer so users can see download/validation progress while still capturing the log for structured error reporting on failure. - setup.ps1: Same fix for Windows -- use Tee-Object in verbose mode. - setup.sh: Remove run_quiet_no_exit_always() which has no remaining callers. - startup_banner.py: Avoid printing the same URL twice when Studio is bound to a specific non-loopback address that matches the display host. * Fix run_install_cmd exit code after failed if-statement The previous pattern 'if "$@"; then return 0; fi; _rc=$?' always captured $? = 0 because $? reflects the if-statement result, not the command's exit code. Switch to '"$@" && return 0; _rc=$?' which preserves the actual command exit code on failure. Applies to both verbose and quiet branches. * Fix _run_quiet exit code, double uv install, missing --local flag - setup.sh: Fix _run_quiet verbose path that always captured exit code 0 due to $? resetting after if-then-fi with no else. Switch to the same '"$@" && return 0; exit_code=$?' pattern used in install.sh. - setup.sh: Consolidate the two uv install branches (verbose + quiet) into a single attempt with conditional output. Previously, when verbose mode was on and the install failed, a second silent attempt was made. - install.ps1: Pass --local flag to 'unsloth studio update' when $StudioLocalInstall is true. Without this, studio.py's update() command overwrites STUDIO_LOCAL_INSTALL to "0", which could cause issues if setup.ps1 or install_python_stack.py later checks that variable. * Revert SKIP_STUDIO_BASE change for --no-torch, restore install banners - Revert SKIP_STUDIO_BASE from 0 to 1 for --no-torch. install.sh already installs unsloth+unsloth-zoo and no-torch-runtime.txt before calling setup.sh, so letting install_python_stack.py redo it was redundant and slowed down --no-torch installs for no benefit. - Restore the "Unsloth Studio installed!" success banner and "starting Unsloth Studio..." launch message so users get clear install completion feedback before the server starts. * Make llama.cpp build failure a hard error with proper cleanup - setup.sh: Restore exit 1 when _LLAMA_CPP_DEGRADED is true. GGUF inference requires a working llama.cpp build, so this should be a hard failure, not a silent degradation. - install.sh: Catch setup.sh's non-zero exit with '|| _SETUP_EXIT=$?' instead of letting set -e abort immediately. This ensures PATH setup, symlinks, and shortcuts still get created so the user can fix the build deps and retry with 'unsloth studio update'. After post-install steps, propagate the failure with a clear error message. * Revert install.ps1 to 'studio setup' to preserve SKIP_STUDIO_BASE 'studio update' pops SKIP_STUDIO_BASE from the environment, which defeats the fast-path version check added in PR #4667. When called from install.ps1 (which already installed packages), SKIP_STUDIO_BASE=1 must survive into setup.ps1 so it skips the redundant PyPI check and package reinstallation. 'studio setup' does not modify env vars. * Remove deprecation message from 'studio setup' command install.ps1 uses 'studio setup' (not 'studio update') to preserve SKIP_STUDIO_BASE. The deprecation message was confusing during first install since the user never typed the command. * Fix stale env vars, scope degraded exit, generic error message for PR #4651 - install.ps1: Always set STUDIO_LOCAL_INSTALL and clear STUDIO_LOCAL_REPO when not using --local, to prevent stale values from a previous --local run in the same PowerShell session. Fix log messages to say 'setup' not 'update' since we call 'studio setup'. - setup.sh: Only exit non-zero for degraded llama.cpp when called from the installer (SKIP_STUDIO_BASE=1). Direct 'unsloth studio update' keeps degraded installs successful since Studio is still usable for non-GGUF workflows and the footer already reports the limitation. - install.sh: Make the setup failure error message generic instead of GGUF-specific, so unrelated failures (npm, Python deps) do not show misleading cmake/git recovery advice. * Show captured output on failure in quiet mode for PR #4651 Both Invoke-InstallCommand (install.ps1) and Invoke-SetupCommand (setup.ps1) now capture command output in quiet mode and display it in red when the command fails. This matches the behavior of run_install_cmd in install.sh where failure output is surfaced even in quiet mode, making cross-platform error debugging consistent. * Match degraded llama.cpp exit on Windows, fix --local recovery hint for PR #4651 - setup.ps1: Exit non-zero for degraded llama.cpp when called from install.ps1 (SKIP_STUDIO_BASE=1), matching setup.sh behavior. Direct 'unsloth studio update' keeps degraded installs successful. - install.sh: Show 'unsloth studio update --local' in the recovery message when the install was run with --local, so users retry with the correct flag instead of losing local checkout context. --------- Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> Co-authored-by: Daniel Han <danielhanchen@gmail.com> |
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eacaf6827c
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fix: no-torch install deps without pulling torch transitively (#4650)
Use --no-deps for ALL packages (unsloth, unsloth-zoo, and runtime deps) since the current PyPI metadata for unsloth still declares torch as a hard dependency. Runtime deps (typer, pydantic, safetensors, transformers, etc.) are installed from no-torch-runtime.txt with --no-deps to prevent transitive torch resolution from accelerate, peft, trl, and sentence-transformers. no-torch-runtime.txt now includes unsloth's own direct deps (typer, pydantic, pyyaml, nest-asyncio) since --no-deps skips those too. install.sh installs no-torch-runtime.txt directly (via helper function _find_no_torch_runtime). install.ps1 does the same via Find-NoTorchRuntimeFile. SKIP_STUDIO_BASE stays at 1 to avoid setup.sh fast-path issues. install_python_stack.py NO_TORCH branch does the same for unsloth studio update, using package_name instead of hardcoded "unsloth". |
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b1c3a1e857
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fix: replace [huggingfacenotorch] with no-torch-runtime.txt requirements (#4649)
The [huggingfacenotorch] extras only exist in pyproject.toml but are NOT published on PyPI, so uv pip install "unsloth[huggingfacenotorch]" fails on fresh installs from the registry. Fix: add studio/backend/requirements/no-torch-runtime.txt with the runtime deps (safetensors, transformers, datasets, accelerate, etc.) that mirror [huggingfacenotorch] from pyproject.toml. In no-torch mode: 1. install.sh/ps1 install unsloth + unsloth-zoo with --no-deps 2. SKIP_STUDIO_BASE=0 so install_python_stack.py's NO_TORCH branch runs 3. install_python_stack.py installs no-torch-runtime.txt |
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0233fe7f9c
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studio: setup log styling (#4494)
* refactor(studio): unify setup terminal output style and add verbose setup mode * studio(windows): align setup.ps1 banner/steps with setup.sh (ANSI, verbose) * studio(setup): revert nvcc path reordering to match main * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * studio(setup): restore fail-fast llama.cpp setup flow * studio(banner): use IPv6 loopback URL when binding :: or ::1 * Fix IPv6 URL bracketing, try_quiet stderr, _step label clamp - Bracket IPv6 display_host in external_url to produce clickable URLs - Redirect try_quiet failure log to stderr instead of stdout - Clamp _step label to column width to prevent negative padding * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Add sandbox integration tests for PR #4494 UX fixes Simulation harness (tests/simulate_pr4494.py) creates an isolated uv venv, copies the real source files into it, and runs subprocess tests for all three fixes with visual before/after demos and edge cases. Standalone bash test (tests/test_try_quiet.sh) validates try_quiet stderr redirect across 8 scenarios including broken-version contrast. 39 integration tests total (14 IPv6 + 15 try_quiet + 10 _step), all existing 75 unit tests still pass. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Truncate step() labels in setup.sh to match PS1 and Python The %-15s printf format pads short labels but does not truncate long ones. Change to %-15.15s so labels wider than 15 chars are clipped, matching the PowerShell .Substring(0,15) and Python label[:15] logic. * Remove sandbox integration tests from PR These test files are not part of the styling fix and should not ship with this PR. * Show error output on failure instead of suppressing it - install_python_stack.py: restore _red for patch_package_file warnings (was downgraded to _dim) - setup.ps1: capture winget output and show on failure for CUDA, Node, Python, and OpenSSL installs (was piped to Out-Null) - setup.ps1: always show git pull failure warning, not just in verbose mode * Show winget error output for Git and CMake installs on failure Same capture-and-print-on-failure pattern already used for Node, Python, CUDA, and OpenSSL winget installs. * fix: preserve stderr for _run_quiet error messages in setup.sh The step() helper writes to stdout, but _run_quiet's error header was originally sent to stderr (>&2). Without the redirect, callers that separate stdout/stderr would miss the failure headline while still seeing the log body on stderr. Add >&2 to both step calls inside _run_quiet to match main's behavior. * feat: add --verbose flag to setup and update commands Wire UNSLOTH_VERBOSE=1 through _run_setup_script() so that 'unsloth studio update --verbose' (and the deprecated 'setup') passes the flag to setup.sh / setup.ps1 / install_python_stack.py. --------- Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> Co-authored-by: Daniel Han <danielhanchen@gmail.com> |
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3c9f0ed149
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fix: use unsloth[huggingfacenotorch] instead of --no-deps in no-torch mode (#4647)
The previous --no-deps approach skipped ALL dependencies, not just torch. This left safetensors, transformers, datasets, accelerate, etc. missing, causing PackageNotFoundError at runtime. Fix: in no-torch mode, install unsloth[huggingfacenotorch] (which pulls all runtime deps except torch), then install unsloth-zoo with --no-deps (since zoo's published metadata still declares torch as a hard dep). This gives a working no-torch environment with all non-torch packages. Applied to all three installer files: install.sh, install.ps1, and studio/install_python_stack.py. |
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e9ac785346
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fix: install.sh Mac Intel compatibility + Studio no-torch support (#4624)
* fix: install.sh Mac Intel compatibility + Studio no-torch support (#4621) On Intel Macs (x86_64), PyTorch has no wheels for torch >= 2.3, so the installer crashes. Even when torch is absent, Studio crashes on startup because two files have bare top-level torch imports. Studio's GGUF inference (llama.cpp) does not need PyTorch. Training and HF-inference already isolate torch to subprocesses. Only 2 files in the server startup chain had top-level torch imports preventing startup. Changes: - install.sh: detect architecture, default to Python 3.12 on Intel Mac, skip torch install, add Python 3.13.8 guard for arm64, pass UNSLOTH_NO_TORCH env var to setup.sh - data_collators.py: remove unused `import torch` (no torch.* refs) - chat_templates.py: lazy-import IterableDataset into function bodies - install_python_stack.py: add IS_MACOS/NO_TORCH constants, skip torch-dependent packages, skip overrides.txt, skip triton on macOS No existing working flow changes. Linux/WSL and macOS arm64 behavior is identical. * tests: add test suite for Mac Intel compat + no-torch mode Shell tests (test_mac_intel_compat.sh): - version_ge edge cases (9 tests) - Architecture detection for Darwin x86_64/arm64, Linux x86_64/aarch64 - get_torch_index_url returns cpu on simulated Darwin - UNSLOTH_NO_TORCH propagation to both setup.sh branches Python unit tests (test_no_torch_filtering.py): - _filter_requirements with NO_TORCH_SKIP_PACKAGES - NO_TORCH env var parsing (true/1/TRUE/false/0/unset) - IS_MACOS constant check - Overrides skip and triton macOS skip guards Python import tests (test_studio_import_no_torch.py): - data_collators.py loads in isolated no-torch venv - chat_templates.py has no top-level torch imports - Negative control confirms import torch fails without torch * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * tests: add E2E sandbox tests for Mac Intel no-torch mode Replace static/synthetic test stubs with real sandbox tests: - Shell: E2E uv venv creation at Python 3.12, mock uv shim to verify torch install is skipped when MAC_INTEL=true, dynamic env propagation test for UNSLOTH_NO_TORCH in both local and non-local install paths - Python filtering: test real extras.txt and extras-no-deps.txt with NO_TORCH_SKIP_PACKAGES, subprocess mock of install_python_stack() for 5 platform configs (NO_TORCH+macOS, Windows+NO_TORCH, normal Linux, Windows-only, macOS-only), VCS URL and env marker edge cases - Python imports: parametrized Python 3.12+3.13 venv fixture, dataclass instantiation for all 3 collator classes, chat_templates.py exec with stubs, negative controls proving import torch and torchao install fail in no-torch venvs 91 total tests, all passing. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * fix: address reviewer findings for Intel Mac no-torch mode P1 fixes: - Auto-infer NO_TORCH in install_python_stack.py via platform.machine() so `unsloth studio update` preserves GGUF-only mode without needing the UNSLOTH_NO_TORCH env var (6/10 reviewers) - Add openai-whisper and transformers-cfg to NO_TORCH_SKIP_PACKAGES since both have unconditional torch dependencies (4/10 reviewers) - Skip unsloth-zoo on Intel Mac --local installs (depends on torch) in both migrated and fresh install paths (1/10) - Recreate stale 3.13 venvs as 3.12 on Intel Mac re-runs (1/10) - Detect Apple Silicon under Rosetta via sysctl hw.optional.arm64 and warn user to use native arm64 terminal (1/10) P2 fixes: - Wire new test files into tests/run_all.sh (4/10 reviewers) - Add update-path tests (skip_base=False) for Intel Mac - Add _infer_no_torch tests for platform auto-detection P3 fixes: - Fix macOS progress bar total (triton step skipped but was counted) - Fix temp file leak when Windows + NO_TORCH filters stack All tests pass: 30 shell, 66 Python (96 total). * feat: add --python override flag to install.sh Lets users force a specific Python version, e.g. ./install.sh --python 3.12. Addresses M2 Mac users whose systems resolve to a problematic 3.13.x patch. When --python is set, the Intel Mac stale-venv guard and 3.13.8 auto-downgrade are skipped so the user's choice is respected. * tests: add comprehensive E2E sandbox tests for no-torch mode Add test_e2e_no_torch_sandbox.py with 7 test groups (43 tests total) covering the full no-torch import chain, edge cases, and install logic: - Group 1: BEFORE vs AFTER import chain comparison (proves the bug existed and the fix works by synthetically prepending top-level torch imports) - Group 2: Dataclass instantiation without torch - Group 3: Edge cases with broken/fake torch modules on sys.path - Group 4: Hardware detection fallback to CPU without torch - Group 5: install.sh flag parsing, version resolution, arch detection - Group 6: install_python_stack.py NO_TORCH filtering - Group 7: Live server startup without torch (marked @server, skipped when studio venv is unavailable) All 43 tests pass on both Python 3.12 and 3.13 isolated venvs. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat: add --no-torch flag to install.sh/ps1, fix lazy import bug in dataset formatting - Fix chat_templates.py: narrow torch IterableDataset import into inner try/except ImportError so dataset.map() works without torch installed - Fix format_conversion.py: same lazy import fix for convert_chatml_to_alpaca and convert_alpaca_to_chatml - Add --no-torch flag to install.sh with unified SKIP_TORCH variable (driven by --no-torch flag OR MAC_INTEL auto-detection) - Add --no-torch flag to install.ps1 with $SkipTorch variable - Print CPU hint when no GPU detected and --no-torch not set - Replace MAC_INTEL guards with SKIP_TORCH in torch install sections - Update shell tests (40 pass) and Python tests (90 pass) * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * fix: address reviewer findings for --no-torch installer paths - Fix migrated-env branch in install.sh and install.ps1: check SKIP_TORCH first, then branch on STUDIO_LOCAL_INSTALL. Previously SKIP_TORCH+non-local fell into else and installed unsloth-zoo (which depends on torch), defeating --no-torch mode. - Fix $env:UNSLOTH_NO_TORCH leak in install.ps1: always set to "true" or "false" instead of only setting on the true branch. Prevents stale no-torch state from leaking across runs in the same PS session. - Fix install_python_stack.py update path: add NO_TORCH guard around base.txt install so unsloth studio update does not reinstall unsloth-zoo (which depends on torch) in no-torch mode. * fix: install unsloth + unsloth-zoo with --no-deps in no-torch mode Instead of skipping unsloth-zoo entirely (which breaks unsloth's dependency on it), install both packages with --no-deps so they are present but torch is not pulled in transitively. Applied consistently across all no-torch paths: migrated-env, fresh-local, fresh-non-local in install.sh, install.ps1, and install_python_stack.py. * chore: temporarily remove test files (will be added in a follow-up) * refactor: deduplicate SKIP_TORCH conditional branches in installers Collapse if/else blocks that differ only by --no-deps into a single branch with a conditional flag variable. Applied to migrated-env and fresh-local paths in install.sh, install.ps1, and install_python_stack.py. * fix: apply --no-deps to fresh non-local --no-torch install path The non-local else branch was missing $_no_deps_arg/$noDepsArg, so uv pip install unsloth would resolve torch from PyPI metadata (the published unsloth package still declares torch as a hard dep). Now --no-deps is applied consistently to all SKIP_TORCH code paths. --------- Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> |
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baabfa0a6e
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Fix Colab huggingface-hub conflict, ensurepip fallback, bump to 2026.3.14 (#4603)
* Fix Colab huggingface-hub conflict, ensurepip fallback, bump to 2026.3.14 - colab.py / setup.sh: relax == pins to >= when installing studio.txt on Colab so huggingface-hub does not clobber Colab's bundled version (breaks transformers is_offline_mode import) - install_python_stack.py: when uv is unavailable and pip is missing (uv-created venvs), bootstrap via ensurepip before attempting upgrade - Bump version to 2026.3.14 - Bump installer min version pins to 2026.3.14 * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci --------- Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> |
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19e9c60a8e
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Consolidate dual venvs and separate install from update (#4530)
* refactor: consolidate dual venvs into single ~/.unsloth/studio/unsloth_studio
* refactor: separate install.sh (first-time) from setup.sh (smart update with PyPI version check)
* fix: install.sh calls setup.sh directly, keep both setup and update CLI commands
* fix: use importlib.resources.files() directly without _path attribute
* fix: bootstrap uv before pip upgrade to handle uv venvs without pip
* fix: frontend 404 when launched via CLI, add global symlink to ~/.local/bin
* feat: add --local flag to install.sh and unsloth studio update for branch testing
* fix: resolve repo root from script location for --local installs
* feat: add --package flag to install.sh for testing with custom package names
* feat: add --package flag to unsloth studio update
* fix: always nuke venv in install.sh for clean installs
* revert: remove Windows changes, will handle in separate PR
* fix: error when --package is passed without an argument
* revert: restore Windows scripts to current main
* [pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci
* fix: always explicitly set STUDIO_LOCAL_INSTALL and STUDIO_PACKAGE_NAME env vars
* fix: pass explicit STUDIO_LOCAL_REPO env var for --local installs
* fix: align banner box for Setup vs Update labels
* deprecate: hide 'unsloth studio setup' command, point users to update/install.sh
* [pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci
* fix: check stdout not stdin for auto-launch detection (curl pipe fix)
* fix: update install URL to unsloth.ai/install.sh
* fix: update install.sh usage comments to unsloth.ai/install.sh
* fix: use --upgrade-package for base deps to preserve existing torch/CUDA installs
* [pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci
* fix: --local install now also installs unsloth-zoo via base.txt before editable overlay
* fix: don't skip base packages for --local installs (editable needs unsloth-zoo)
* refactor: move --local full dep install to install.sh, keep SKIP_STUDIO_BASE for all paths
* feat: add migration support for old .venv and CWD-based installs in setup.sh
* Revert "feat: add migration support for old .venv and CWD-based installs in setup.sh"
This reverts commit
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9b989ee898
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fix: prevent UnicodeEncodeError on Windows CP1252 consoles in studio setup (#4563)
* fix: prevent UnicodeEncodeError on Windows CP1252 consoles in studio setup On Windows, `unsloth studio setup` crashes with a UnicodeEncodeError when install_python_stack.py tries to print Unicode status glyphs (✅, ❌, ⚠️) to a console that uses a legacy code page like CP1252. Add a _safe_print() helper that catches UnicodeEncodeError and gracefully degrades emoji to ASCII equivalents ([OK], [FAIL], [!]). Replace all print() calls that emit Unicode glyphs with _safe_print(). Fixes #4509 * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Replace Unicode dashes with ASCII in install_python_stack.py Box-drawing (U+2500) and em dash (U+2014) chars in section dividers and comments are themselves not representable on CP1252 -- replace with plain ASCII dashes for consistency with the fix. --------- Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> Co-authored-by: Daniel Han <danielhanchen@gmail.com> |
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1f12ba16df
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Combine studio setup fixes: frontend caching, venv isolation, Windows CPU support (#4413)
* Allow Windows setup to complete without NVIDIA GPU setup.ps1 previously hard-exited if nvidia-smi was not found, blocking setup entirely on CPU-only or non-NVIDIA machines. The backend already supports CPU and MLX (Apple Silicon) in chat-only GGUF mode, and the Linux/Mac setup.sh handles missing GPUs gracefully. Changes: - Convert the GPU check from a hard exit to a warning - Guard CUDA toolkit installation behind $HasNvidiaSmi - Install CPU-only PyTorch when no GPU is detected - Build llama.cpp without CUDA flags when no GPU is present - Update doc comment to reflect CPU support * Cache frontend build across setup runs Skip the frontend npm install + build if frontend/dist already exists. Previously setup.ps1 nuked node_modules and package-lock.json on every run, and both scripts always rebuilt even when dist/ was already present. On a git clone editable install, the first setup run still builds the frontend as before. Subsequent runs skip it, saving several minutes. To force a rebuild, delete frontend/dist and re-run setup. * Show pip progress for PyTorch download on Windows The torch CUDA wheel is ~2.8 GB and the CPU wheel is ~300 MB. With | Out-Null suppressing all output, the install appeared completely frozen with no feedback. Remove | Out-Null for the torch install lines so pip's download progress bar is visible. Add a size hint so users know the download is expected to take a while. Also moves the Triton success message inside the GPU branch so it only prints when Triton was actually installed. * Guard CUDA env re-sanitization behind GPU check in llama.cpp build The CUDA_PATH re-sanitization block (lines 1020-1033) references $CudaToolkitRoot which is only set when $HasNvidiaSmi is true and the CUDA Toolkit section runs. On CPU-only machines, $CudaToolkitRoot is null, causing Split-Path to throw: Split-Path : Cannot bind argument to parameter 'Path' because it is null. Wrap the entire block in `if ($HasNvidiaSmi -and $CudaToolkitRoot)`. * Rebuild frontend when source files are newer than dist/ Instead of only checking if dist/ exists, compare source file timestamps against the dist/ directory. If any file in frontend/src/ is newer than dist/, trigger a rebuild. This handles the case where a developer pulls new frontend changes and re-runs setup -- stale assets get rebuilt automatically. * Fix cmake not found on Windows after winget install Two issues fixed: 1. After winget installs cmake, Refresh-Environment may not pick up the new PATH entry (MSI PATH changes sometimes need a new shell). Added a fallback that probes cmake's default install locations (Program Files, LocalAppData) and adds the directory to PATH explicitly if found. 2. If cmake is still unavailable when the llama.cpp build starts (e.g. winget failed silently or PATH was not updated), the build now skips gracefully with a [SKIP] warning instead of crashing with "cmake : The term 'cmake' is not recognized". * Fix frontend rebuild detection and decouple oxc-validator install Address review feedback: - Check entire frontend/ directory for changes, not just src/. The build also depends on package.json, vite.config.ts, tailwind.config.ts, public/, and other config files. A change to any of these now triggers a rebuild. - Move oxc-validator npm install outside the frontend build gate in setup.sh so it always runs on setup, matching setup.ps1 which already had it outside the gate. * Show cmake errors on failure and retry CUDA VS integration with elevation Two fixes for issue #4405 (Windows setup fails at cmake configure): 1. cmake configure: capture output and display it on failure instead of piping to Out-Null. When the error mentions "No CUDA toolset found", print a hint about the CUDA VS integration files. 2. CUDA VS integration copy: when the direct Copy-Item fails (needs admin access to write to Program Files), retry with Start-Process -Verb RunAs to prompt for elevation. This is the root cause of the "No CUDA toolset found" cmake failure -- the .targets files that let MSBuild compile .cu files are missing from the VS BuildCustomizations directory. * Address reviewer feedback: cmake PATH persistence, stale cache, torch error check 1. Persist cmake PATH to user registry so Refresh-Environment cannot drop it later in the same setup run. Previously the process-only PATH addition at phase 1 could vanish when Refresh-Environment rebuilt PATH from registry during phase 2/3 installs. 2. Clean stale CMake cache before configure. If a previous run built with CUDA and the user reruns without a GPU (or vice versa), the cached GGML_CUDA value would persist. Now the build dir is removed before configure. 3. Explicitly set -DGGML_CUDA=OFF for CPU-only builds instead of just omitting CUDA flags. This prevents cmake from auto-detecting a partial CUDA installation. 4. Fix CUDA cmake flag indentation -- was misaligned from the original PR, now consistently indented inside the if/else block. 5. Fail hard if pip install torch returns a non-zero exit code instead of silently continuing with a broken environment. * Remove extra CUDA cmake flags to align Windows with Linux build Drop GGML_CUDA_FA_ALL_QUANTS, GGML_CUDA_F16, GGML_CUDA_GRAPHS, GGML_CUDA_FORCE_CUBLAS, and GGML_CUDA_PEER_MAX_BATCH_SIZE flags. The Linux build in setup.sh only sets GGML_CUDA=ON and lets llama.cpp use its defaults for everything else. Keep Windows consistent. * Address reviewer round 2: GPU probe fallback, Triton check, stale binary rebuild 1. GPU detection: fallback to default nvidia-smi install locations (Program Files\NVIDIA Corporation\NVSMI, System32) when nvidia-smi is not on PATH. Prevents silent CPU-only provisioning on machines that have a GPU but a broken PATH. 2. Triton: check $LASTEXITCODE after pip install and print [WARN] on failure instead of unconditional [OK]. 3. Stale llama-server: check CMakeCache.txt for GGML_CUDA setting and rebuild if the existing binary does not match the current GPU mode (e.g. CUDA binary on a now-CPU-only rerun, or vice versa). * Fix frontend rebuild detection and npm dependency issues Addresses reviewer feedback on the frontend caching logic: 1. setup.sh: Fix broken find command that caused exit under pipefail. The piped `find | xargs find -newer` had paths after the expression which GNU find rejects. Replaced with a simpler `find -maxdepth 1 -type f -newer dist/` that checks ALL top-level files (catches index.html, bun.lock, etc. that the extension allowlist missed). 2. setup.sh: Guard oxc-validator npm install behind `command -v npm` check. When the frontend build is skipped (dist/ is cached), Node bootstrap is also skipped, so npm may not be available. 3. setup.ps1: Replace Get-ChildItem -Include with explicit path probing for src/ and public/. PowerShell's -Include without a trailing wildcard silently returns nothing, so src/public changes were never detected. Also check ALL top-level files instead of just .json/.ts/.js/.mjs extensions. * Fix studio setup: venv isolation, centralized .venv_t5, uv targeting - All platforms (including Colab) now create ~/.unsloth/studio/.venv with --without-pip fallback for broken ensurepip environments - Add --python sys.executable to uv pip install in install_python_stack.py so uv targets the correct venv instead of system Python - Centralize .venv_t5 bootstrap in transformers_version.py with proper validation (checks required packages exist, not just non-empty dir) - Replace ~150 lines of duplicated install code across 3 worker files with calls to the shared _ensure_venv_t5_exists() helper - Use uv-if-present with pip fallback; do not install uv at runtime - Add site.addsitedir() shim in colab.py so notebook cells can import studio packages from the venv without system-Python double-install - Update .venv_t5 packages: huggingface_hub 1.3.0->1.7.1, add hf_xet - Bump transformers pin 4.57.1->4.57.6 in requirements + constraints - Add Fast-Install helper to setup.ps1 with uv+pip fallback - Keep Colab-specific completion banner in setup.sh * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Fix nvidia-smi PATH persistence and cmake requirement for CPU-only 1. Store nvidia-smi as an absolute path ($NvidiaSmiExe) on first detection. All later calls (Get-CudaComputeCapability, Get-PytorchCudaTag, CUDA toolkit detection) use this absolute path instead of relying on PATH. This survives Refresh-Environment which rebuilds PATH from the registry and drops process-only additions. 2. Make cmake fatal for CPU-only installs. CPU-only machines depend entirely on llama-server for GGUF chat mode, so reporting "Setup Complete!" without it is misleading. GPU machines can still skip the llama-server build since they have other inference paths. * Fix broken frontend freshness detection in setup scripts - setup.sh: Replace broken `find | xargs find -newer` pipeline with single `find ... -newer` call. The old pipeline produced "paths must precede expression" errors (silently suppressed by 2>/dev/null), causing top-level config changes to never trigger a rebuild. - setup.sh: Add `command -v npm` guard to oxc-validator block so it does not fail when Node was not installed (build-skip path). - setup.ps1: Replace `Get-ChildItem -Include` (unreliable without -Recurse on PS 5.1) with explicit directory paths for src/ and public/ scanning. - Both: Add *.html to tracked file patterns so index.html (Vite entry point) changes trigger a rebuild. - Both: Use -print -quit instead of piping to head -1 for efficiency. * Fix bugs found during review of PRs #4404, #4400, #4399 - setup.sh: Add || true guard to find command that checks frontend/src and frontend/public dirs, preventing script abort under set -euo pipefail when either directory is missing - colab.py: Use sys.path.insert(0, ...) instead of site.addsitedir() so Studio venv packages take priority over system copies. Add warning when venv is missing instead of silently failing. - transformers_version.py: _venv_t5_is_valid() now checks installed package versions via .dist-info metadata, not just directory presence. Prevents false positives from stale or wrong-version packages. - transformers_version.py: _install_to_venv_t5() now passes --upgrade so pip replaces existing stale packages in the target directory. - setup.ps1: CPU-only PyTorch install uses --index-url for cpu wheel and all install commands use Fast-Install (uv with pip fallback). * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Fix _venv_t5_is_valid dist-info loop exiting after first directory Remove premature break that caused the loop over .dist-info directories to exit after the first match even if it had no METADATA file. Now continues iterating until a valid METADATA is found or all dirs are exhausted. * Capture error output on failure instead of discarding with Out-Null setup.ps1: 6 locations changed from `| Out-Null` to `| Out-String` with output shown on failure -- PyTorch GPU/CPU install, Triton install, venv_t5 package loop, cmake llama-server and llama-quantize builds. transformers_version.py: clean stale .venv_t5 directory before reinstall when validation detects missing or version-mismatched packages. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Fix ModuleNotFoundError when CLI imports studio.backend.core The backend uses bare "from utils.*" imports everywhere, relying on backend/ being on sys.path. Workers and routes add it at startup, but the CLI imports studio.backend.core as a package -- backend/ was never added. Add sys.path setup at the top of core/__init__.py so lazy imports resolve correctly regardless of entry point. Fixes: unsloth inference unsloth/Qwen3-8B "who are you" crashing with "No module named 'utils'" * Fix frontend freshness check to detect all top-level file changes The extension allowlist (*.json, *.ts, *.js, *.mjs, *.html) missed files like bun.lock, so lockfile-only dependency changes could skip the frontend rebuild. Check all top-level files instead. * Add tiktoken to .venv_t5 for Qwen-family tokenizers Qwen models use tiktoken-based tokenizers which fail when routed through the transformers 5.x overlay without tiktoken installed. Add it to the setup scripts (with deps for Windows) and runtime fallback list. Integrates PR #4418. * Fix tiktoken crash in _venv_t5_is_valid and stray brace in setup.ps1 _venv_t5_is_valid() crashed with ValueError on unpinned packages like "tiktoken" (no ==version). Handle by splitting safely and skipping version check for unpinned packages (existence check only). Also remove stray closing brace in setup.ps1 tiktoken install block. --------- Co-authored-by: Daniel Han <danielhanchen@users.noreply.github.com> Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> |
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df98569f12
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studio: improve Colab notebook, redesign ready popup, and clean up install output (#4339)
* Removing .precommit config * edited colab comments * studio: update Unsloth_Studio_Colab.ipynb * studio: update Unsloth_Studio_Colab.ipynb * studio: add Colab T4 GPU metadata to force T4 instance * style: update colab popup to black/white theme with gem icon and play button * feat: center landscape image in colab notebook * style: shrink popup to fit content, truncate URL display * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat: center landscape image in colab notebook * feat: use GitHub raw URL for studio landscape image in notebook * chore: update colab notebook * feat: add studio landscape colab display image and update notebook * feat: update notebook with studio landscape image * style: remove colors, add progress bar, add VERBOSE flag to install output * docs: add comments explaining VERBOSE flag and progress bar * chore: update colab notebook * fix: define VERBOSE, _STEP, _TOTAL at module level to fix NameError --------- Co-authored-by: LeoBorcherding <LeoBorcherding@users.noreply.github.com> Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> |
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b20b3b80df |
[pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci |
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4b6f5c76c1 |
studio: probe-based --system detection for uv
Replace _in_virtualenv() heuristic with a runtime probe. At bootstrap time, try a dry-run uv install without --system. If that fails (exit code 2, "No virtual environment found"), retry with --system to confirm it works. This handles all environments correctly: venvs, Colab (system Python), local machines, containers. |
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9b7eaf8f0c |
studio: make uv optional + fix --system for Colab
Three fixes based on review: 1. Make uv truly optional: _bootstrap_uv() now only checks if uv is already on PATH. It no longer tries to pip install uv. If uv is not present, pip is used with zero changes to behavior. 2. Add --system flag for Colab: on Colab there is no venv (packages install into system Python). uv requires --system in this case, otherwise it errors with "No virtual environment found". Added _in_virtualenv() check that detects VIRTUAL_ENV, sys.real_prefix, or sys.base_prefix != sys.prefix. 3. Fix label printed twice on uv fallback: when uv fails and falls back to pip, the label now says "(pip)" to distinguish from the initial uv attempt, instead of printing the same label twice. Tested: - venv path: no --system flag, uv installs correctly - no-venv path (Colab sim): --system flag added automatically - full unsloth studio setup + training run (Llama-3.2-1B, 10 steps) |
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a7a66a66b9 |
studio: address review feedback
install_python_stack.py: - Print uv error output on failure for debuggability - Refactor pip_install() to use early return after uv success, removing duplicated pip command path setup.sh: - Guard nvidia-smi command substitution with || true so it does not abort the script under set -euo pipefail when nvidia-smi fails (e.g., containerized environments, driver quirks) - Read all GPU compute capabilities and deduplicate, so mixed-GPU hosts get kernels built for all present architectures instead of only the first GPU |
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174d61e0f5 |
[pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci |
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a537ece7eb |
studio: use uv for Python package installs (8x faster)
Replace pip with uv in install_python_stack.py to speed up the Python dependency installation phase of `unsloth studio setup`. - Add _bootstrap_uv() that checks for uv on PATH, and if not found, installs it via pip. Falls back to pip if uv is unavailable. - Translate pip flags to uv equivalents (--no-cache-dir dropped since uv caching is fast, --force-reinstall becomes --reinstall). - Add --torch-backend=auto so uv auto-detects CUDA version for PyTorch ecosystem packages. - Per-install fallback: if any uv install step fails, it retries that step with pip before exiting. Measured on clean venv setup: Python packages (pip): 2m 28s Python packages (uv): 18s Speedup: ~8x Total setup time goes from ~4m 35s to ~2m 30s (llama.cpp build is now the bottleneck at 1m 40s). |
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3ab282fd40 |
fix: install data-designer plugin non-editable for Colab compatibility
Editable installs (-e) work via a .pth file that is only processed at Python startup. In Colab the kernel is already running when setup.sh installs the plugin, so the .pth file never gets picked up and data_designer_unstructured_seed is not importable. Remove -e so pip copies the package files directly into site-packages, which the live kernel can find immediately. Local venv installs are unaffected since the venv is always created fresh before install. |
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47654cb91c | Final cleanup | ||
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a2baf80511 | Update license headers | ||
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fbccac8cee | shifting setup & co inside studio | ||
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daa50d0756 |
Revert "Merge pull request #347 from unslothai/feature/studio-storage-roots"
This reverts commit |
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32569fc8a8 | shifting setup & co inside studio |
Renamed from install_python_stack.py (Browse further)