Branko-Dj on master
[travis][s]: Added update comma… (compare)
The data we're extracting from government sources is in some cases extremely dirty and poorly organized, so we're doing a lot of processing in Python before loading it, including starting to use a little bit of machine learning / and automated classification to try and tie together datasets which have no shared keys, and verify that we've done so correctly. The commercial data providers outsource this work to cheap labor overseas, who do it manually, but we don't have those resources so we're trying to automate it ,which seems like a valuable set of tools to develop for other purposes too!
This is very exciting - we've been doing this kind of work personally and with the community for many years cf https://datahub.io/docs/core-data
We know exactly how painful it is - and I agree with you that automation, machine learning plus community can make a big dent in this.
One of the reasons for working on the data factory - which is more pattern/framework - than a solution, is to try to have a common way to do this kind of stuff so that the community can have their own way to do things but collaborate and share more effectively.
We liken it to LAMP for web development back in the day: it was a standard set of patterns for how to do web dev that allowed for reuse, scale etc.
Similarly we want a pattern for "data development" / DataOps / data engineering.
The commercial data providers are very expensive platform monopolies -- S&P Global Market Intelligence seems to just buy out any company that does this work, while increasing their subscription rates by double digit percentages every year. Even the public utility commissions often don't have access to the data, and end up relying on what is provided in proceedings from the utilities they are supposed to be regulating. We've seen that even a small amount of independent quantitative analysis can be enough to get a PUC to call the utility's bluff and demand more rigorous or different analyses.
This kind of integrated programmatic pipeline for open data seems way overdue. I hope it takes off. So much wasted time goes into scraping this stuff over and over again in a way that doesn't produce any cumulative value.
Yes, there are two parts here: the approach / pattern, plus a critical mass of collaborators maintaining this stuff. The two inter-connect: standard patterns help distributed communities collaborate ...
I noticed that you've got a few EIA datasets in the core data collection, which I imagine you're pulling using the EIA API. Interestingly, they do not provide the most fine grained, useful, economically actionable information in their API! For instance, in the Excel spreadsheets they publicize for EIA Form 923, there's fuel consumption at the individual boiler level, and net generation at the individual generator level, but in the API, they only give plant level data, and even in the spreadsheets, they don't publicize a usable set of boiler-generator associations, though one can be inferred from the other information provided. We've heard similar things reported from folks that work with Oil and Gas production data.
:thumbsup: this is super useful info and we'd love to pull more data from them (or collaborate with others doing that) and get it on the datahub (plus a github / gitlab repo for comments etc)
This is great - i'm based between (near) Paris and London. It's really great to be in contact :smile:
I've just added an datahub awesome-data issue item: datahq/awesome-data#35 - please add to it and we can turn it into a page at https://datahub.io/awesome/ (this way people both know what people are up to and we have growing listing of material)
Hi @zaneselvans thanks for asking great questions :+1:
Generally, you don’t need to change the raw data but provide all these information in the metadata (
datapackage.json file). If you’re using our
data CLI tool, it should guess things like encoding, delimiters and date formats and reflect it in the generated descriptor file. I would suggest reading this blog post re initializing data packages - https://datahub.io/blog/how-to-initialize-a-data-package-using-data-tool and I’d use interactive mode to control the process.
datapackage.jsonfile to see how the data files are described
|delimited data on datahub - https://datahub.io/anuveyatsu/pipe-delimited
datacli tool at the end of it (from python if you want)
@vaibhavgeek can you give a bit more detail on the issue with file rename.
To upload a file: just follow the instructions here https://datahub.io/docs/getting-started/publishing-data
Hi there. Just been testing out Google's new Dataset Search and found some spam datasets uploaded to the old datahub.io around 2013.
Where could/should I raise an issue to look at removing spam? Thanks
See screenshot above and visit the page:
Do folks have a favorite easy to use package for visualizing and filtering data that's accessible via data packages? Something that a relative layperson could use?
The perfect thing would be something that already ingests tabular but is made Data Package aware. Right now you can fallback to anything that can ingest csv (which is pretty much all tools). I can suggest some tools for playing with data that would suit (and we could think about how to plugin Data Package support as we have with e.g. pandas etc.
Is there a recommended maximum file size for use with tabular data resources? When running
No there is no limit for tabular data packages. This is a bug with data validate - can you open an issue on https://github.com/datahq/data-cli
I think you can use either route and for bigger packages goodtables may be better (and is used internally).
My other question here is whether any of the files can be chunked/partitioned - frictionlessdata/specs#620
I wanted to updated our datasets on datahub.io/johnsnowlabs
When pushing the dataset this is what I got:
> Error! Max storage for user exceeded plan limit (5000MB)
However the total size of the data that has been uploaded is ~200MB