
Recherche avancée
Médias (1)
-
SWFUpload Process
6 septembre 2011, par
Mis à jour : Septembre 2011
Langue : français
Type : Texte
Autres articles (95)
-
MediaSPIP 0.1 Beta version
25 avril 2011, parMediaSPIP 0.1 beta is the first version of MediaSPIP proclaimed as "usable".
The zip file provided here only contains the sources of MediaSPIP in its standalone version.
To get a working installation, you must manually install all-software dependencies on the server.
If you want to use this archive for an installation in "farm mode", you will also need to proceed to other manual (...) -
Multilang : améliorer l’interface pour les blocs multilingues
18 février 2011, parMultilang est un plugin supplémentaire qui n’est pas activé par défaut lors de l’initialisation de MediaSPIP.
Après son activation, une préconfiguration est mise en place automatiquement par MediaSPIP init permettant à la nouvelle fonctionnalité d’être automatiquement opérationnelle. Il n’est donc pas obligatoire de passer par une étape de configuration pour cela. -
ANNEXE : Les plugins utilisés spécifiquement pour la ferme
5 mars 2010, parLe site central/maître de la ferme a besoin d’utiliser plusieurs plugins supplémentaires vis à vis des canaux pour son bon fonctionnement. le plugin Gestion de la mutualisation ; le plugin inscription3 pour gérer les inscriptions et les demandes de création d’instance de mutualisation dès l’inscription des utilisateurs ; le plugin verifier qui fournit une API de vérification des champs (utilisé par inscription3) ; le plugin champs extras v2 nécessité par inscription3 (...)
Sur d’autres sites (3476)
-
ffmpeg extract multiple frames from single input
10 octobre 2023, par Andrew StillI'm trying to dynamically extract multiple different frames from single video input. So the command I'm calling looking like this


ffmpeg -loglevel debug -hide_banner -t 13.269541 -y -ss 0 -i "input-s3-url" -ss 13.269541 -i "same-input-s3-url" -map 0:v -vframes 1 /tmp/ca4cd7a3159743938c5362c171ea2cae.0.png -map 1:v -vframes 1 /tmp/ca4cd7a3159743938c5362c171ea2cae.13.269541.png



It works and everything is good, until I deploy it to lambda. Even though I'm using 10gb of RAM it still failing with error. Locally it works like a charm but not on lambda. I'm not sure what the problem here but i'm regularly (not always) getting SIGSEGV




Double-checked memory usage and it's doesn't look like a reason, but I'm not sure how correct this number




I'm think maybe it's because it's making requests for each input, at least that's what I saw in debug mode, but still have no idea what's the problem here, would appreciate any suggestions/optimizations/help. Thanks


ffmpeg added on lambda using this layer - https://serverlessrepo.aws.amazon.com/applications/us-east-1/145266761615/ffmpeg-lambda-layer


-
FFmpeg transcode GIF into Mp4 and Mp4 to AVI using GPU
9 octobre 2023, par CristianI'm trying to convert GIF animated to mp4 and mp4 to AVI with FFmpeg.


I started to use just the CPU, but I have to process millions of GIFs/mp4 content pieces. So, I started to have a lot of errors processing them, and it ended as a bottleneck. Therefore, I'm trying to use GPU to process the videos.


Converting GIF to mp4 with CPU, I run the following command :


ffmpeg -i animated.gif -movflags faststart -pix_fmt yuv420p -vf "scale=trunc(iw/2)*2:trunc(ih/2)*2" video.mp4



Using the GPU I'm trying the following :


ffmpeg
 -y
 -hwaccel nvdec
 -hwaccel_output_format cuda
 -i gifInputPath
 -threads 1
 -filter_threads 1
 -c:v h264_nvenc
 -vf hwupload_cuda,scale_cuda=-2:320:240:format=yuv420p
 -gpu 0
 mp4VideoPath



The above command generates an exit status 1.


The following is the dmesg command log


Converting mp4 videos to AVI videos I'm running the following command


ffmpeg
-i videoInputPath
-vcodec rawvideo
-pix_fmt yuv420p
-acodec pcm_s16le
-ar 44100
-ac 2
-s 320x240
-r 4
-f avi
aviOutputVideoPath



For GPU I tried :


ffmpeg
 -y
 -hwaccel cuda
 -hwaccel_output_format cuda
 -i videoInputPath
 -threads 1
 -filter_threads 1
 -c:a pcm_s16le
 -ac 2
 -ar 44100
 -c:v h264_nvenc
 -vf hwupload_cudascale_cuda=-2:320:240:format=yuv420p
 -r 4
 -f avi
 -gpu 0
 aviOutputVideoPath



The following is the dmseg output is log


- 

-
What should be the best command for converting the GIF into Mp4 and Mp4 into AVI based on CPU configuration using the GPU(Amazon Nvidia t4) for best performance, low CPU, and moderated GPU consumption ?


-
What are the best suggestions to Process these content pieces concurrently using GPU ?








Note : I'm using Golang to execute the FFmpeg commands.


-
-
AWS Lambda : "Unzipped size must be smaller than 106534017 bytes" after adding single file
17 septembre 2023, par leonWhen trying to deploy my lambdas using AWS through the serverless framework I had no problems until I tried adding the ffmpeg binary.


Now the ffmpeg binaries I have tried to add have ranged from 26 mb to 50 mb. Whichever I add, I get the following error :


UPDATE_FAILED: WhatsappDocumentHandlerLambdaFunction (AWS::Lambda::Function)
Resource handler returned message: "Unzipped size must be smaller than 106534017 bytes (Service: Lambda, Status Code: 400, Request ID: ...)" (RequestToken: ..., HandlerErrorCode: InvalidRequest)



The problem is that I did not add the file to this function. I added it to a completely different one.


I have tried the following things :


- 

- Creating an "empty" function that only contains the ffmpeg binary and a function handler
- Creating a layer that only contains the ffmpeg binary
- Deleting the ffmpeg binary (the error goes away and deployment succeeds
- Varying sizes of ffmpeg binaries between 26 and 50mb
- Getting the ffmpeg-lambda-layer (https://github.com/serverlesspub/ffmpeg-aws-lambda-layer ; https://serverlessrepo.aws.amazon.com/applications/us-east-1/145266761615/ffmpeg-lambda-layer) and deploying it myself












When trying every single one of these options I get the UPDATE_FAILED error in a different function that surely is not too big.


I know I can deploy using a docker image but why complicate things with docker images when it should work ?


I am very thankful for any ideas.