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by andyxor 1805 days ago
they have a kick-ass ML team including David Barber[1] but could use a good web designer it seems.

I also wish it was 'one lesson from four years of building tools for ML'.

On a serious note, there is a book on Human-In-The-Loop ML by Robert Monarch, published just a few weeks ago [2], where concepts like "active learning" are elucidated. Also, Andrew Ng recently started 'Data-Centric AI' competition, focusing on improving the data but keeping the model fixed[3].

There seems to be a growing emphasis on data quality while models become commoditized and outsourced to 'ML as a service' (MLAAS) platforms. If I understood correctly humanloop project aspires to be 'all-in-one' MLAAS serving both the models/predictions but also taking care of data annotations, targeting the market currently served by e.g. Scale.AI and Salesforce Einstein.

[1] Bayesian Reasoning and Machine Learning http://web4.cs.ucl.ac.uk/staff/D.Barber/pmwiki/pmwiki.php?n=...

[2] Human-in-the-Loop Machine Learning https://www.manning.com/books/human-in-the-loop-machine-lear...

[3] https://https-deeplearning-ai.github.io/data-centric-comp/

1 comments

Hi Andy, thanks for the feedback on the site! We're actually redesigning at the moment so it should hopefully be fresher soon :P. Also great pointer to Rob Munroe's book. He actually used to be CTO at figure 8 before they were acquired.

You seem to be pretty clued up on the area, what do you see as the pros and cons of an end-to-end approach?

I'm actually using Scale.AI and few other annotation products, if you can provide a clear example how your product stands out/compares to existing annotations services that would be great. Specifically focusing on quality of annotations.

Normally we do this kind of benchmark internally by sending the same dataset to each service and running some stats on the results, but if a vendor comes in with a ready to use comparison report that would be easier sale.

As for end-to-end you would be competing with large internal ML teams and revenue bringing internal ML engines, i'm probably not the right audience for that type of product. Salesforce seems to be doing alright on that front, but from my discussions with them there is a lot of hand-holding and customizations for each client use case, it's a high-touch thing.

We see ourselves as quite different to Scale really as we don't provide annotation services, mainly the software.

One of the main differences is that we've pretty exclusively focussed on language rather than vision which has quite a different tech stack.

We also view human-in-the-loop not just as a way to get better data but actually as a better deployment paradigm.

P.s You're right that David is awesome btw!