docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2 linux/amd64

docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2 - 国内下载镜像源 浏览次数:7

这个Docker镜像由Semitechnologies提供,用于快速部署Transformer模型的推理服务,支持多种预训练Transformer模型(如BERT、GPT、RoBERTa等),可用于文本分类、问答、文本嵌入生成等常见自然语言处理推理任务,帮助开发者便捷地搭建高性能的Transformer模型推理API。

源镜像 docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2
国内镜像 swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2
镜像ID sha256:e48711f88f982f69c0abe51bca4e1e361fd026b126c268a34cea8f8ec32b9674
镜像TAG sentence-transformers-all-MiniLM-L6-v2
大小 11.78GB
镜像源 docker.io
项目信息 Docker-Hub主页 🚀项目TAG 🚀
CMD uvicorn app:app --host 0.0.0.0 --port 8080
启动入口 /bin/sh -c
工作目录 /app
OS/平台 linux/amd64
浏览量 7 次
贡献者
镜像创建 2025-11-07T17:22:06.931276122Z
同步时间 2026-03-12 01:47
环境变量
PATH=/usr/local/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin LANG=C.UTF-8 GPG_KEY=A035C8C19219BA821ECEA86B64E628F8D684696D PYTHON_VERSION=3.11.14 PYTHON_SHA256=8d3ed8ec5c88c1c95f5e558612a725450d2452813ddad5e58fdb1a53b1209b78

Docker拉取命令

docker pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2
docker tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2  docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2

Containerd拉取命令

ctr images pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2
ctr images tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2  docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2

Shell快速替换命令

sed -i 's#semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2#swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2#' deployment.yaml

Ansible快速分发-Docker

#ansible k8s -m shell -a 'docker pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2 && docker tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2  docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2'

Ansible快速分发-Containerd

#ansible k8s -m shell -a 'ctr images pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2 && ctr images tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2  docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2'

镜像构建历史


# 2025-11-08 01:22:06  0.00B 设置默认要执行的命令
CMD ["uvicorn app:app --host 0.0.0.0 --port 8080"]
                        
# 2025-11-08 01:22:06  0.00B 配置容器启动时运行的命令
ENTRYPOINT ["/bin/sh" "-c"]
                        
# 2025-11-08 01:22:06  113.20KB 复制新文件或目录到容器中
COPY . . # buildkit
                        
# 2025-11-08 01:22:06  66.36MB 复制新文件或目录到容器中
COPY /app/nltk_data /app/nltk_data # buildkit
                        
# 2025-11-08 01:22:06  91.81MB 复制新文件或目录到容器中
COPY /app/models /app/models # buildkit
                        
# 2025-11-08 01:21:57  0.00B 设置工作目录为/app
WORKDIR /app
                        
# 2025-11-08 01:21:57  11.45GB 执行命令并创建新的镜像层
RUN /bin/sh -c pip3 install -r requirements.txt # buildkit
                        
# 2025-11-08 01:17:39  224.00B 复制新文件或目录到容器中
COPY requirements.txt . # buildkit
                        
# 2025-11-08 01:17:39  28.03MB 执行命令并创建新的镜像层
RUN /bin/sh -c pip install --upgrade pip setuptools # buildkit
                        
# 2025-11-08 01:17:35  21.02MB 执行命令并创建新的镜像层
RUN /bin/sh -c apt-get update # buildkit
                        
# 2025-11-08 01:17:33  0.00B 设置工作目录为/app
WORKDIR /app
                        
# 2025-11-04 12:30:30  0.00B 设置默认要执行的命令
CMD ["python3"]
                        
# 2025-11-04 12:30:30  36.00B 执行命令并创建新的镜像层
RUN /bin/sh -c set -eux; 	for src in idle3 pip3 pydoc3 python3 python3-config; do 		dst="$(echo "$src" | tr -d 3)"; 		[ -s "/usr/local/bin/$src" ]; 		[ ! -e "/usr/local/bin/$dst" ]; 		ln -svT "$src" "/usr/local/bin/$dst"; 	done # buildkit
                        
# 2025-11-04 12:30:30  42.03MB 执行命令并创建新的镜像层
RUN /bin/sh -c set -eux; 		savedAptMark="$(apt-mark showmanual)"; 	apt-get update; 	apt-get install -y --no-install-recommends 		dpkg-dev 		gcc 		gnupg 		libbluetooth-dev 		libbz2-dev 		libc6-dev 		libdb-dev 		libffi-dev 		libgdbm-dev 		liblzma-dev 		libncursesw5-dev 		libreadline-dev 		libsqlite3-dev 		libssl-dev 		make 		tk-dev 		uuid-dev 		wget 		xz-utils 		zlib1g-dev 	; 		wget -O python.tar.xz "https://www.python.org/ftp/python/${PYTHON_VERSION%%[a-z]*}/Python-$PYTHON_VERSION.tar.xz"; 	echo "$PYTHON_SHA256 *python.tar.xz" | sha256sum -c -; 	wget -O python.tar.xz.asc "https://www.python.org/ftp/python/${PYTHON_VERSION%%[a-z]*}/Python-$PYTHON_VERSION.tar.xz.asc"; 	GNUPGHOME="$(mktemp -d)"; export GNUPGHOME; 	gpg --batch --keyserver hkps://keys.openpgp.org --recv-keys "$GPG_KEY"; 	gpg --batch --verify python.tar.xz.asc python.tar.xz; 	gpgconf --kill all; 	rm -rf "$GNUPGHOME" python.tar.xz.asc; 	mkdir -p /usr/src/python; 	tar --extract --directory /usr/src/python --strip-components=1 --file python.tar.xz; 	rm python.tar.xz; 		cd /usr/src/python; 	gnuArch="$(dpkg-architecture --query DEB_BUILD_GNU_TYPE)"; 	./configure 		--build="$gnuArch" 		--enable-loadable-sqlite-extensions 		--enable-optimizations 		--enable-option-checking=fatal 		--enable-shared 		$(test "${gnuArch%%-*}" != 'riscv64' && echo '--with-lto') 		--with-ensurepip 	; 	nproc="$(nproc)"; 	EXTRA_CFLAGS="$(dpkg-buildflags --get CFLAGS)"; 	LDFLAGS="$(dpkg-buildflags --get LDFLAGS)"; 	LDFLAGS="${LDFLAGS:--Wl},--strip-all"; 	make -j "$nproc" 		"EXTRA_CFLAGS=${EXTRA_CFLAGS:-}" 		"LDFLAGS=${LDFLAGS:-}" 	; 	rm python; 	make -j "$nproc" 		"EXTRA_CFLAGS=${EXTRA_CFLAGS:-}" 		"LDFLAGS=${LDFLAGS:--Wl},-rpath='\$\$ORIGIN/../lib'" 		python 	; 	make install; 		cd /; 	rm -rf /usr/src/python; 		find /usr/local -depth 		\( 			\( -type d -a \( -name test -o -name tests -o -name idle_test \) \) 			-o \( -type f -a \( -name '*.pyc' -o -name '*.pyo' -o -name 'libpython*.a' \) \) 		\) -exec rm -rf '{}' + 	; 		ldconfig; 		apt-mark auto '.*' > /dev/null; 	apt-mark manual $savedAptMark; 	find /usr/local -type f -executable -not \( -name '*tkinter*' \) -exec ldd '{}' ';' 		| awk '/=>/ { so = $(NF-1); if (index(so, "/usr/local/") == 1) { next }; gsub("^/(usr/)?", "", so); printf "*%s\n", so }' 		| sort -u 		| xargs -rt dpkg-query --search 		| awk 'sub(":$", "", $1) { print $1 }' 		| sort -u 		| xargs -r apt-mark manual 	; 	apt-get purge -y --auto-remove -o APT::AutoRemove::RecommendsImportant=false; 	apt-get dist-clean; 		export PYTHONDONTWRITEBYTECODE=1; 	python3 --version; 		pip3 install 		--disable-pip-version-check 		--no-cache-dir 		--no-compile 		'setuptools==79.0.1' 		'wheel<0.46' 	; 	pip3 --version # buildkit
                        
# 2025-11-04 12:23:03  0.00B 设置环境变量 PYTHON_SHA256
ENV PYTHON_SHA256=8d3ed8ec5c88c1c95f5e558612a725450d2452813ddad5e58fdb1a53b1209b78
                        
# 2025-11-04 12:23:03  0.00B 设置环境变量 PYTHON_VERSION
ENV PYTHON_VERSION=3.11.14
                        
# 2025-11-04 12:23:03  0.00B 设置环境变量 GPG_KEY
ENV GPG_KEY=A035C8C19219BA821ECEA86B64E628F8D684696D
                        
# 2025-11-04 12:23:03  3.81MB 执行命令并创建新的镜像层
RUN /bin/sh -c set -eux; 	apt-get update; 	apt-get install -y --no-install-recommends 		ca-certificates 		netbase 		tzdata 	; 	apt-get dist-clean # buildkit
                        
# 2025-11-04 12:23:03  0.00B 设置环境变量 LANG
ENV LANG=C.UTF-8
                        
# 2025-11-04 12:23:03  0.00B 设置环境变量 PATH
ENV PATH=/usr/local/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
                        
# 2025-11-04 04:44:10  78.62MB 
# debian.sh --arch 'amd64' out/ 'trixie' '@1762202650'
                        
                    

镜像信息

{
    "Id": "sha256:e48711f88f982f69c0abe51bca4e1e361fd026b126c268a34cea8f8ec32b9674",
    "RepoTags": [
        "semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference:sentence-transformers-all-MiniLM-L6-v2"
    ],
    "RepoDigests": [
        "semitechnologies/transformers-inference@sha256:fe4f9cc950d7dda2e1e0e683fce79082d9db18e18287436ebd2bfe118e17f156",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/semitechnologies/transformers-inference@sha256:1567b398f4c033ed8acd89d5f1b24de0f925936cd91fc89208dfceee4e4b369a"
    ],
    "Parent": "",
    "Comment": "buildkit.dockerfile.v0",
    "Created": "2025-11-07T17:22:06.931276122Z",
    "Container": "",
    "ContainerConfig": null,
    "DockerVersion": "",
    "Author": "",
    "Config": {
        "Hostname": "",
        "Domainname": "",
        "User": "",
        "AttachStdin": false,
        "AttachStdout": false,
        "AttachStderr": false,
        "Tty": false,
        "OpenStdin": false,
        "StdinOnce": false,
        "Env": [
            "PATH=/usr/local/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin",
            "LANG=C.UTF-8",
            "GPG_KEY=A035C8C19219BA821ECEA86B64E628F8D684696D",
            "PYTHON_VERSION=3.11.14",
            "PYTHON_SHA256=8d3ed8ec5c88c1c95f5e558612a725450d2452813ddad5e58fdb1a53b1209b78"
        ],
        "Cmd": [
            "uvicorn app:app --host 0.0.0.0 --port 8080"
        ],
        "ArgsEscaped": true,
        "Image": "",
        "Volumes": null,
        "WorkingDir": "/app",
        "Entrypoint": [
            "/bin/sh",
            "-c"
        ],
        "OnBuild": null,
        "Labels": null
    },
    "Architecture": "amd64",
    "Os": "linux",
    "Size": 11782362813,
    "GraphDriver": {
        "Data": {
            "LowerDir": "/var/lib/docker/overlay2/376387e3378a261b272f50ebc7c6e1dc9a7ce62a1490fe95f6a0695895f36906/diff:/var/lib/docker/overlay2/012926480a4bf5bedd2db4840784ea720c29f9fa2576da1ddc4e82ffbac5a503/diff:/var/lib/docker/overlay2/65222c7eda787ba3e680a0ed4c02b1479bddedd8180acf796da9449688f56ab8/diff:/var/lib/docker/overlay2/34c91fd5e2c7156557ad2c19845a2948e21ed1acf911dac7ce4812aa0d5a9fd2/diff:/var/lib/docker/overlay2/920fbbbbf1fa8adc270ce1a570ef47df25453396ed3b4f1d4bc84fda0ef9f291/diff:/var/lib/docker/overlay2/1057ce334475bf903285e772fd684435c6b2f87b8bfd3be0d7bc6c5651645eee/diff:/var/lib/docker/overlay2/49c87828baa48a01e915885451fb28cbad8d20aea25a7f9fbc083908020ff7b5/diff:/var/lib/docker/overlay2/f6737a8ea731f20fc23fb0a1ff6c6b6d89cad0922c6bf56b63ac017918b4966c/diff:/var/lib/docker/overlay2/d03b1406e723eaae3ec9d7c23da355cbb2088f4feebb18f6847dba99bcda9b78/diff:/var/lib/docker/overlay2/36fc5c25ad68f6d1d61483c417cc40899f14d896407a5025e017718fd773ecce/diff:/var/lib/docker/overlay2/26adc23475d2b824f7d68f7df05d06bd27287e3e42ed6ecc2b7e891a700d62fb/diff:/var/lib/docker/overlay2/4e1a661d384d3151ce9ddee29da904c842f0611b032f0e8f9952e9f549127e9c/diff",
            "MergedDir": "/var/lib/docker/overlay2/9c450800b4a63a7c8e2d936be05fcbe02ae84b0fcc5949eb52a510d4d1709eaa/merged",
            "UpperDir": "/var/lib/docker/overlay2/9c450800b4a63a7c8e2d936be05fcbe02ae84b0fcc5949eb52a510d4d1709eaa/diff",
            "WorkDir": "/var/lib/docker/overlay2/9c450800b4a63a7c8e2d936be05fcbe02ae84b0fcc5949eb52a510d4d1709eaa/work"
        },
        "Name": "overlay2"
    },
    "RootFS": {
        "Type": "layers",
        "Layers": [
            "sha256:36d06fe0cbc654e5f67d58c960ed33e53127e4a3288d8ce6f6a60a9c311794d4",
            "sha256:c28fab3840a6c6d51c515f35b44cefd6df484ffac07029b114df0d8ee1522420",
            "sha256:cdd505bd8879cc44acac7f3dbfcc4adef811a8a2996d790ce0dfdea3159800cd",
            "sha256:3e79ec3d489e3dd6ff054c140f09e69519a942557cbd7a70ca67a5bbcc5a45ea",
            "sha256:88871b46644c9bb1dc8c20fd379724d3217498aa709f806e3310471e2bf72022",
            "sha256:c71d1b60c4ab8ba9cbbcbea9695c9d5c6886c360fa83a81142357a1a0add4931",
            "sha256:e1cb93ff9075e920c7c972dc77fa719bf64fc3758e877026fd9f2b89112e2ad3",
            "sha256:98fea8687ef1dc06018641660420a3319d00ba30a10181e73f0f4239b9bdfb28",
            "sha256:151d4b4f29e0b16d4b0cc309db3fe4170cf47804171c9dd94442b54d3169c5c8",
            "sha256:5f70bf18a086007016e948b04aed3b82103a36bea41755b6cddfaf10ace3c6ef",
            "sha256:d9c410dab8ac388eefed0cfb3e1e38841cf3a0909f0065067465d079bd1b7f49",
            "sha256:dbe7758c442b78fd482534f51a16a6ea16290ed1f5e40ebfa01398316de17abc",
            "sha256:43b108b67e02257fc860293c735aeb10f7aea27429bf0323ed608953e00a70a0"
        ]
    },
    "Metadata": {
        "LastTagTime": "2026-03-12T01:24:25.219412498+08:00"
    }
}

更多版本

178

docker.io/semitechnologies/transformers-inference:baai-bge-m3-onnx

linux/amd64 docker.io14.48GB2026-03-11 04:04
17