From huggingface-skills
Sets up an isolated Python environment for SageMaker/AWS work, ensuring correct Python version and latest boto3. Prevents dependency conflicts and stale SDKs.
How this skill is triggered — by the user, by Claude, or both
Slash command
/huggingface-skills:hf-cloud-python-env-setupThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Most SageMaker deployment failures that look like AWS problems are actually Python environment problems: wrong Python version, broken dependency resolution, stale SDK that doesn't know about a current API. This skill makes env setup boring and correct.
Most SageMaker deployment failures that look like AWS problems are actually Python environment problems: wrong Python version, broken dependency resolution, stale SDK that doesn't know about a current API. This skill makes env setup boring and correct.
boto3 or awscli. Newer ones have current API surfaces and security fixes. Only pin if the user explicitly requires a specific version.importlib.metadata.version("package-name"), never module.__version__. The latter is inconsistent across packages.boto3 directly. The SageMaker Python SDK is a valid alternative — see "boto3 vs the SageMaker SDK" below.The bundled deploy scripts (deploy.py, deploy_async.py, teardown.py) use boto3 directly and read image URIs from AWS's published Deep Learning Containers catalog. That fits this workflow's explicit-stages design — each skill produces a concrete value (region, role ARN, image URI) that the next one consumes — and boto3 is the stable underlying API client.
The SageMaker Python SDK (v3) is fine to use when the user prefers it or their project already does. Since PR #5960 (June 2026), ModelBuilder auto-routes HuggingFace models to the current containers (text-generation → HuggingFace vLLM, multimodal → vLLM-Omni, embeddings → TEI). Don't avoid the SDK over stale-image or wrong-container concerns — that routing is fixed.
Two specific SDK cases that still need care:
text-ranking task to TEI unconditionally, which is wrong for causal-LM rerankers like Qwen3-Reranker — those need vLLM (see hf-cloud-serving-image-selection). Pass the container explicitly for these models.ModelTrainer / FrameworkProcessor under SSO profiles. If SDK calls fail with credential errors while aws sts get-caller-identity succeeds in the same shell, suspect this rather than your AWS config.If you use the SDK, install it into the isolated env like everything else (.venv/bin/python -m pip install sagemaker). The bundled scripts don't require it.
The fastest path is the bundled script — it's Python, so it runs the same on Windows, macOS, and Linux:
python3 scripts/setup_env.py # macOS / Linux
python scripts/setup_env.py # Windows (PowerShell / cmd)
This script detects uv and uses it if available (faster), falls back to the stdlib venv module, creates .venv/ with Python 3.12 (override: python3 setup_env.py .venv 3.11), refuses unsupported Python versions, installs from the bundled requirements.txt, and is idempotent. It also prints the correct interpreter path for the host OS (see below).
Manual equivalent:
# Preferred: uv
uv venv --python 3.12 .venv
uv pip install --python .venv/bin/python --upgrade boto3 awscli # Windows: .venv\Scripts\python.exe
# Fallback: stdlib venv
python3.12 -m venv .venv
.venv/bin/python -m pip install --upgrade pip boto3 awscli
After setup, invoke the env's Python explicitly rather than activating the venv. The interpreter path differs by platform:
.venv/bin/python deploy.py # macOS / Linux
.venv\Scripts\python.exe deploy.py # Windows
This works the same in scripts, interactive shells, and agent tool calls. The rest of this skill writes .venv/bin/python for brevity — on Windows substitute .venv\Scripts\python.exe.
.venv/bin/python scripts/check_versions.py
Prints versions of boto3, botocore, awscli. Uses importlib.metadata.version() so it works on every package, including ones without __version__. Pass arbitrary names: ... check_versions.py transformers huggingface_hub.
Default requirements.txt covers SageMaker orchestration. Some deployments need extras (huggingface_hub for model inspection, transformers for tokenizer validation). Add these to a deployment-specific requirements file in the project, install with the env's Python, don't pin unless there's a reason.
Mysterious pip install resolution errors
Almost always Python 3.13+ trying to install packages without wheels yet, or installing into a polluted system Python. Recreate at 3.12: delete .venv and re-run python3 setup_env.py .venv 3.12 (the script recreates the env when the version doesn't match, so you can also just re-run it).
pip install succeeded but the script says "module not found"
You installed into a different interpreter than the one running the script. Always invoke Python explicitly: .venv/bin/python -m pip install ... and .venv/bin/python deploy.py.
Inline python -c "..." one-liners fail in PowerShell
PowerShell's quoting rules mangle nested/escaped quotes in inline Python. Don't debug the quoting — write the snippet to a small .py file and run that. (All bundled helpers are files for exactly this reason.)
boto3 call fails with "unknown parameter"
Your boto3 is older than the API surface. Upgrade with .venv/bin/python -m pip install --upgrade boto3. Don't downgrade the script to match an old version.
sagemaker (the SDK) installed but the bundled scripts fail
The bundled scripts don't use the SDK — they only need boto3/awscli from requirements.txt. Installing sagemaker alongside is harmless, but it doesn't replace the requirements install.
5plugins reuse this skill
First indexed Jul 7, 2026
npx claudepluginhub guchengod/skillsSets up an isolated Python environment for SageMaker/AWS work, ensuring correct Python version and latest boto3. Prevents dependency conflicts and stale SDKs.
Preflight checks for SageMaker AI environment: validates SDK version, AWS region, and execution role. Run this first when setting up or configuring SageMaker/Bedrock operations.
Guides deployment of SageMaker endpoints for ML model serving, including MLOps pipelines, monitoring, and production optimization.