ApertureDB Multimodal AI Workflows - Automate common AI tasks for multimodal data
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How do you easily generate embeddings, detect objects, infer new attributes, or query your multimodal data? Stop wrestling with your datasets - use ApertureDB Multimodal AI workflows instead! Ingest or enrich complex datasets, run Jupyter notebooks, and more.



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ApertureDB
ApertureDB
If you want to see a live demo of how you can use workflows, do join us for our lunch & learn in the morning at 9am PT
https://lu.ma/vnabtolp
ApertureDB
@vishakha_gupta4 @hamza_afzal_butt The best part is that what the workflows do is open source. While the workflows on the cloud UI are a subset of possibilities, this repository has the all the detailed workings of workflows under the hood.
With this repository as a reference guide, following are the possibilities:
You may refer to what those scripts are doing to get a blue print for building your own workflow.
You may submit a PR. A PR for any custom workflow would be highly encouraged. TIA.
If it is a general enough workflow, it would eventually get published on the cloud UI too!
ApertureDB
@hamza_afzal_butt do join in the lunch & learn happening now - it's one of the things Luis can answer showing how to from the repo as Gautam described : https://lu.ma/vnabtolp
Hi Vishakha – How does ApertureDB compare to alternatives in terms of read/write speed and query performance on both small and large datasets? Additionally, does it have any unique optimizations or "special sauce" for faster token processing?
ApertureDB
@mceoin great question - we have some recent benchmarking results summarized here: https://docs.aperturedata.io/category/benchmarks--comparisons
Mainly, for vector search, we are anywhere between 2-10X faster in terms of KNN throughput and offer sub-10msec latencies on service side. For graph search, our prior evaluations against Neo4j put us sometimes over 30X faster. Mainly, ApertureDB continues to scale for very large workloads (Billion scale graphs so far and 10s and millions of embeddings per search space). We have optimizations when we load data - so far we have tested it more on parallel load of large number of blobs or images - we can extend that to faster token processing though we are yet to test it.
@vishakha_gupta4 30x Neo4j is very impressive. Will have to check it out!
ApertureDB
@mceoin let's set up time to chat - would love to understand your use case and see if we can collaborate.
LangDrive
This is a game-changer for AI developers! Congrats on the launch @ApertureDB
ApertureDB
@michael_vandi thanks a lot. We are happy to be working with you all!
This is the hidden missing piece in SO MANY ML workloads. Great work by the ApetureDB team!
ApertureDB
Thank you @aronchick we look forward to our collaborative examples coming in the near future to demonstrate how everyone can use these end to end even starting from edge to query
Love this! Super useful for devs. Congrats on the launch!
ApertureDB
@mahima_manik thank you for your support. Looking forward to integrating this with Datahawk!
TweetChat
ApertureDB
@peterbordes thank you ! we are seeing more and more people realize the need for the combined solution that we offer. It is hard to do vector in one, graph in another , data in a third place. Starts to wear people out as they scale and try to keep up with the rate at which AI is evolving
ApertureDB
👋 Hey Product Hunt,
We’re kicking off Summer of Workflows — a 12-week series of ApertureDB Multimodal AI Workflows designed to accelerate how developers build their AI agents and GenAI applications with multimodal data.
Release #1 is here: 📥 Croissant Ingestion Workflow — A powerful, ready-to-run workflow that ingests datasets defined using the MLCommons Croissant format directly into ApertureDB.
▶️ Watch the 2-min Demo
🛠️ What it does:
Parses Croissant metadata Downloads referenced assets (images, video, text, etc.)
Ingests them into ApertureDB — keeping structure, attributes, and relationships fully intact
Sets you up for faster AI/ML experimentation, production pipelines, and even RAG agents.
This workflow works out of the box with many datasets hosted by MLCommons, Hugging Face, Kaggle, and other public sources.
💡 Why it matters:
Multimodal data is everywhere — but it’s messy, inconsistent, and scattered. Croissant (by MLCommons) solves the format problem. This workflow solves the ingestion problem.
🔗 Try it now:
→ Run it in the cloud
→ Read the docs
💬 Tell us what you think about this workflow and what you'd like to see us build next. Hit the comments with your ideas—We're listening!
This is just the beginning. One new workflow will launch every Wednesday this summer. Follow along and let us know what you build!
-Team ApertureData
Daily.co
Great team + really interesting space — multimodal feels like one of the key themes this year.
ApertureDB
If you couldn’t make it to our lunch & learn session demonstrating how to Launch Your AI Project Today with ApertureDB Multimodal AI Workflows—you can watch the full session on-demand now!
Learn how to:
Launch AI workflows in minutes – No complex setup required
Use pre-built solutions for image embeddings, classification & more
Accelerate AI development – Focus on building, not infrastructure
Bonus: Get access to sample code and resources to kickstart your AI project!
WATCH ON DEMAND NOW
View PDF Slides
You can of course try it out and tell us what other workflows you would like to see on https://cloud.aperturedata.io