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diptanu

469 カルマ登録 18 年前
Founder of @tensorlake. In the past I designed and worked on Hashicorp's cluster scheduler Nomad, the Titan cluster scheduler and Mesos at Netflix, and FBLearner at Facebook. Email - [email protected]

投稿

Zero-copy TLS ingress with kTLS and splice(2) for sandboxes

tensorlake.ai
1 ポイント·投稿者 diptanu·3 日前·0 コメント

Filter and Rank: Robust Multi-Cloud Sandbox Orchestration at Scale

tensorlake.ai
1 ポイント·投稿者 diptanu·2 か月前·0 コメント

Sandbox plumbing infrastructure for computer-use agents

tensorlake.ai
3 ポイント·投稿者 diptanu·2 か月前·0 コメント

Kosong: Kimi AI's Agent SDK

github.com
1 ポイント·投稿者 diptanu·8 か月前·0 コメント

Roles and Intelligence for Individual Contributors

raees.me
1 ポイント·投稿者 diptanu·9 か月前·0 コメント

コメント

diptanu
·4 か月前·議論
The tricky part of doing this in production is cloning sandboxes across nodes. You would have to snapshot the resident memory, file system (or a CoW layer on top of the rootfs), move the data across nodes, etc.
diptanu
·8 か月前·議論
There was an unusual traffic spike around that time, if you try now it should be a lot faster. We were calling up but there was not enough GPU capacity at that time.
diptanu
·8 か月前·議論
We haven’t tested Chandra yet, because it’s very new. Under the hood Tensorlake is very similar to Marker - it’s a pipeline based OCR API, we do layout detection, Text Recognition and Detection, Table Structure Understanding, etc. We then use VLMs to enrich the results. Our models are much bigger than marker, and thus takes a little longer to parse documents. We optimized for accuracy. We will have a faster API soon.
diptanu
·8 か月前·議論
It does, we have users in Europe and Asia using it with non English languages. Can you please send me a message at diptanu at tensorlake dot ai, would love to see why it didn’t work.
diptanu
·8 か月前·議論
OP mentioned Gemini and not Google’s Vertex OCR API which has very different performance and accuracy characteristics than Gemini
diptanu
·8 か月前·議論
Hey! I am the founder of Tensorlake. We benchmarked the models that our customers consider using in enterprises or regulated industries where there is a big need for processing documents for various automation. Benchmarking takes a lot of time so we focussed on the ones that we get asked about.

On Gemini and other VLMs - we excluded these models because they don't do visual grounding - aka they don't provide page layouts, bounding boxes of elements on the pages. This is a table stakes feature for use-cases customers are building with Tensorlake. It wouldn't be possible to build citations without bounding boxes.

On pricing - we are probably the only company offer a pure on-demand pricing without any tiers. With Tensorlake, you can get back markdown from every page, summaries of figures, tables and charts, structured data, page classification, etc - in ONE api call. This means we are running a bunch of different models under the hood. If you add up the token count, and complexity of infrastructure to build a complex pipeline around Gemini, and other OCR/Layout detection model I bet the price you would end up with won't be any cheaper than what we provide :) Plus doing this at scale is very very complex - it requires building a lot of sophisticated infrastructure - another source of cost behind modern Document Ingestion services.