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AWS lambda stuck importing library

I am trying to deploy my ECR image to aws lambda. The image works fine locally, but on aws, it gets stuck importing this library https://github.com/jianfch/stable-ts.

import json
import boto3
import requests
import numpy
print("All imports ok 1 ...")

from stable_whisper import load_model
print("All imports ok 2 ...")

The first statement is printed but it gets stuck on importing and the second statement never got printed until it timed out.

Docker File:


# Build FFmpeg
FROM public.ecr.aws/lambda/python:3.8 as lambda-base

COPY requirements.txt ./
COPY myfunction.py ./

RUN pip3 install -r requirements.txt

WORKDIR /ffmpeg_sources
RUN yum install autoconf automake bzip2 bzip2-devel cmake libxcb libxcb-devel \
    freetype-devel gcc gcc-c++ git libtool make pkgconfig zlib-devel -y -q

# Compile NASM assembler
RUN curl -OL https://www.nasm.us/pub/nasm/releasebuilds/2.15.05/nasm-2.15.05.tar.bz2
RUN tar xjvf nasm-2.15.05.tar.bz2
RUN cd nasm-2.15.05 && sh autogen.sh && \
    ./configure --prefix="/ffmpeg_sources/ffmpeg_build" \
    --bindir="/ffmpeg_sources/bin" && \
    make && make install

# Compile Yasm assembler
RUN curl -OL https://www.tortall.net/projects/yasm/releases/yasm-1.3.0.tar.gz
RUN tar xzvf yasm-1.3.0.tar.gz
RUN cd yasm-1.3.0 && \
    ./configure --prefix="/ffmpeg_sources/ffmpeg_build" \
    --bindir="/ffmpeg_sources/bin" && \
    make && make install

# Compile FFmpeg
RUN curl -OL https://ffmpeg.org/releases/ffmpeg-snapshot.tar.bz2
RUN tar xjvf ffmpeg-snapshot.tar.bz2
RUN cd ffmpeg && \
    export PATH="/ffmpeg_sources/bin:$PATH" && \
    export PKG_CONFIG_PATH="/ffmpeg_sources/ffmpeg_build/lib/pkgconfig" && \
    ./configure \
    --prefix="/ffmpeg_sources/ffmpeg_build" \
    --pkg-config-flags="--static" \
    --extra-cflags="-I/ffmpeg_sources/ffmpeg_build/include" \
    --extra-ldflags="-L/ffmpeg_sources/ffmpeg_build/lib" \
    --extra-libs=-lpthread \
    --extra-libs=-lm \
    --enable-libxcb \
    --bindir="/ffmpeg_sources/bin" && \
    make && \
    make install
# Final image with code and dependencies
FROM lambda-base

COPY myfunction.py /var/task/


CMD ["myfunction.lambda_handler"]

inside the requirements.txt, I tried both stable-ts and git+https://ift.tt/dcB0svN

I appreciate any help.



source https://stackoverflow.com/questions/75285572/aws-lambda-stuck-importing-library

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