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    <title>data collection | Competition Data Observatory</title>
    <link>https://competition.dataobservatory.eu/tag/data-collection/</link>
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    <description>data collection</description>
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      <title>data collection</title>
      <link>https://competition.dataobservatory.eu/tag/data-collection/</link>
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    <item>
      <title>Open Data: The New Gold Without the Rush</title>
      <link>https://competition.dataobservatory.eu/post/2021-06-18-gold-without-rush/</link>
      <pubDate>Fri, 18 Jun 2021 17:00:00 +0000</pubDate>
      <guid>https://competition.dataobservatory.eu/post/2021-06-18-gold-without-rush/</guid>
      <description>&lt;p&gt;&lt;em&gt;If open data is the new gold, why even those who release fail to reuse it? We created an open collaboration of data curators and open-source developers to dig into novel open data sources and/or increase the usability of existing ones. We transform reproducible research software into research- as-service.&lt;/em&gt;&lt;/p&gt;
&lt;p&gt;Every year, the EU announces that billions and billions of data are now “open” again, but this is not gold. At least not in the form of nicely minted gold coins, but in gold dust and nuggets found in the muddy banks of chilly rivers. There is no rush for it, because panning out its value requires a lot of hours of hard work. Our goal is to automate this work to make open data usable at scale, even in trustworthy AI solutions.&lt;/p&gt;
















&lt;figure  id=&#34;figure-there-is-no-rush-for-it-because-panning-out-its-value-requires-a-lot-of-hours-of-hard-work-our-goal-is-to-automate-this-work-to-make-open-data-usable-at-scale-even-in-trustworthy-ai-solutions&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;There is no rush for it, because panning out its value requires a lot of hours of hard work. Our goal is to automate this work to make open data usable at scale, even in trustworthy AI solutions.&#34; srcset=&#34;
               /media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_b042523dffe8143dea3d8c8c9c3262f4.webp 400w,
               /media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_faa00e96d3d0b700cfcf1daa513f3ad2.webp 760w,
               /media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_b042523dffe8143dea3d8c8c9c3262f4.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      There is no rush for it, because panning out its value requires a lot of hours of hard work. Our goal is to automate this work to make open data usable at scale, even in trustworthy AI solutions.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;Most open data is not public, it is not downloadable from the Internet – in the EU parlance, “open” only means a legal entitlement to get access to it. And even in the rare cases when data is open and public, often it is mired by data quality issues. We are working on the prototypes of a data-as-service and research-as-service built with open-source statistical software that taps into various and often neglected open data sources.&lt;/p&gt;
&lt;p&gt;We are in the prototype phase in June and our intentions are to have a well-functioning service by the time of the conference, because we are working only with open-source software elements; our technological readiness level is already very high. The novelty of our process is that we are trying to further develop and integrate a few open-source technology items into technologically and financially sustainable data-as-service and even research-as-service solutions.&lt;/p&gt;
















&lt;figure  id=&#34;figure-our-review-of-about-80-eu-un-and-oecd-data-observatories-reveals-that-most-of-them-do-not-use-these-organizationss-open-data---instead-they-use-various-and-often-not-well-processed-proprietary-sources&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;Our review of about 80 EU, UN and OECD data observatories reveals that most of them do not use these organizations&amp;#39;s open data - instead they use various, and often not well processed proprietary sources.&#34; srcset=&#34;
               /media/img/observatory_screenshots/observatory_collage_16x9_800_hu47f74f5cdae63c7248c2367b9d148671_353025_0079ea9844f6c5e52b52fd0e627467a2.webp 400w,
               /media/img/observatory_screenshots/observatory_collage_16x9_800_hu47f74f5cdae63c7248c2367b9d148671_353025_ecd6d08ba5e9bac19c8173546f036651.webp 760w,
               /media/img/observatory_screenshots/observatory_collage_16x9_800_hu47f74f5cdae63c7248c2367b9d148671_353025_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/observatory_screenshots/observatory_collage_16x9_800_hu47f74f5cdae63c7248c2367b9d148671_353025_0079ea9844f6c5e52b52fd0e627467a2.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      Our review of about 80 EU, UN and OECD data observatories reveals that most of them do not use these organizations&amp;rsquo;s open data - instead they use various, and often not well processed proprietary sources.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;We are taking a new and modern approach to the &lt;code&gt;data observatory&lt;/code&gt; concept, and modernizing it with the application of 21st century data and metadata standards, the new results of reproducible research and data science. Various UN and OECD bodies, and particularly the European Union support or maintain more than 60 data observatories, or permanent data collection and dissemination points, but even these do not use these organizations and their members open data. We are building open-source data observatories, which run open-source statistical software that automatically processes and documents reusable public sector data (from public transport, meteorology, tax offices, taxpayer funded satellite systems, etc.) and reusable scientific data (from EU taxpayer funded research) into new, high quality statistical indicators.&lt;/p&gt;
















&lt;figure  id=&#34;figure-we-are-taking-a-new-and-modern-approach-to-the-data-observatory-concept-and-modernizing-it-with-the-application-of-21st-century-data-and-metadata-standards-the-new-results-of-reproducible-research-and-data-science&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;We are taking a new and modern approach to the ‘data observatory’ concept, and modernizing it with the application of 21st century data and metadata standards, the new results of reproducible research and data science&#34; srcset=&#34;
               /media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_c18a97f00bbcac322614b6c2d55783f6.webp 400w,
               /media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_8b655e803b41b817a8093a37ccd19689.webp 760w,
               /media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_1200x1200_fit_q75_h2_lanczos.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_c18a97f00bbcac322614b6c2d55783f6.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      We are taking a new and modern approach to the ‘data observatory’ concept, and modernizing it with the application of 21st century data and metadata standards, the new results of reproducible research and data science
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;ul&gt;
&lt;li&gt;We are building various open-source data collection tools in R and Python to bring up data from big data APIs and legally open, but not public, and not well served data sources. For example, we are working on capturing representative data from the Spotify API or creating harmonized datasets from the Eurobarometer and Afrobarometer survey programs.&lt;/li&gt;
&lt;li&gt;Open data is usually not public; whatever is legally accessible is usually not ready to use for commercial or scientific purposes. In Europe, almost all taxpayer funded data is legally open for reuse, but it is usually stored in heterogeneous formats, processed into an original government or scientific need, and with various and low documentation standards. Our expert data curators are looking for new data sources that should be (re-) processed and re-documented to be usable for a wider community. We would like to introduce our service flow, which touches upon many important aspects of data scientist, data engineer and data curatorial work.&lt;/li&gt;
&lt;li&gt;We believe that even such generally trusted data sources as Eurostat often need to be reprocessed, because various legal and political constraints do not allow the common European statistical services to provide optimal quality data – for example, on the regional and city levels.&lt;/li&gt;
&lt;li&gt;With &lt;a href=&#34;https://competition.dataobservatory.eu/authors/ropengov/&#34;&gt;rOpenGov&lt;/a&gt; and other partners, we are creating open-source statistical software in R to re-process these heterogenous and low-quality data into tidy statistical indicators to automatically validate and document it.&lt;/li&gt;
&lt;li&gt;We are carefully documenting and releasing administrative, processing, and descriptive metadata, following international metadata standards, to make our data easy to find and easy to use for data analysts.&lt;/li&gt;
&lt;li&gt;We are automatically creating depositions and authoritative copies marked with an individual digital object identifier (DOI) to maintain data integrity.&lt;/li&gt;
&lt;li&gt;We are building simple databases and supporting APIs that release the data without restrictions, in a tidy format that is easy to join with other data, or easy to join into databases, together with standardized metadata.&lt;/li&gt;
&lt;li&gt;We maintain observatory websites (see: &lt;a href=&#34;https://music.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Digital Music Observatory&lt;/a&gt;, &lt;a href=&#34;https://greendeal.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Green Deal Data Observatory&lt;/a&gt;, &lt;a href=&#34;https://economy.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Economy Data Observatory&lt;/a&gt;) where not only the data is available, but we provide tutorials and use cases to make it easier to use them. Our mission is to show a modern, 21st century reimagination of the data observatory concept developed and supported by the UN, EU and OECD, and we want to show that modern reproducible research and open data could make the existing 60 data observatories and the planned new ones grow faster into data ecosystems.&lt;/li&gt;
&lt;/ul&gt;
&lt;p&gt;We are working around the open collaboration concept, which is well-known in open source software development and reproducible science, but we try to make this agile project management methodology more inclusive, and include data curators, and various institutional partners into this approach. Based around our early-stage startup, Reprex, and the open-source developer community rOpenGov, we are working together with other developers, data scientists, and domain specific data experts in climate change and mitigation, antitrust and innovation policies, and various aspects of the music and film industry.&lt;/p&gt;
















&lt;figure  id=&#34;figure-our-open-collaboration-is-truly-open-new-data-curatorsauthorscuratordevelopersauthorsdeveloper-and-service-designersauthorsteam-even-volunteers-and-citizen-scientists-are-welcome-to-join&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;Our open collaboration is truly open: new [data curators](/authors/curator/),[developers](/authors/developer/) and [service designers](/authors/team/), even volunteers and citizen scientists are welcome to join.&#34; srcset=&#34;
               /media/img/observatory_screenshots/dmo_contributors_hua4f41ef7327b64bb97f169af135070bd_140729_a07a8e618fa7317f6f8256b9a334262e.webp 400w,
               /media/img/observatory_screenshots/dmo_contributors_hua4f41ef7327b64bb97f169af135070bd_140729_3a4ae7f72478fd880961b08e1f7075dd.webp 760w,
               /media/img/observatory_screenshots/dmo_contributors_hua4f41ef7327b64bb97f169af135070bd_140729_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/observatory_screenshots/dmo_contributors_hua4f41ef7327b64bb97f169af135070bd_140729_a07a8e618fa7317f6f8256b9a334262e.webp&#34;
               width=&#34;760&#34;
               height=&#34;427&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      Our open collaboration is truly open: new &lt;a href=&#34;https://competition.dataobservatory.eu/authors/curator/&#34;&gt;data curators&lt;/a&gt;,&lt;a href=&#34;https://competition.dataobservatory.eu/authors/developer/&#34;&gt;developers&lt;/a&gt; and &lt;a href=&#34;https://competition.dataobservatory.eu/authors/team/&#34;&gt;service designers&lt;/a&gt;, even volunteers and citizen scientists are welcome to join.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;Our open collaboration is truly open: new &lt;a href=&#34;https://competition.dataobservatory.eu/authors/curator/&#34;&gt;data curators&lt;/a&gt;, data scientists and data engineers are welcome to join. We develop open-source software in an agile way, so you can join in with an intermediate programming skill to build unit tests or add new functionality, and if you are a beginner, you can start with documentation and testing our tutorials. For business, policy, and scientific data analysts, we provide unexploited, exciting new datasets. Advanced developers can &lt;a href=&#34;https://competition.dataobservatory.eu/authors/developer/&#34;&gt;join&lt;/a&gt; our development team: the statistical data creation is mainly made in the R language, and the service infrastructure in Python and Go components.&lt;/p&gt;
</description>
    </item>
    
    <item>
      <title>There are Numerous Advantages of Switching from a National Level of the Analysis to a Sub National Level</title>
      <link>https://competition.dataobservatory.eu/post/2021-06-16-regions-release/</link>
      <pubDate>Wed, 16 Jun 2021 12:00:00 +0000</pubDate>
      <guid>https://competition.dataobservatory.eu/post/2021-06-16-regions-release/</guid>
      <description>















&lt;figure  &gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;&#34; srcset=&#34;
               /media/img/package_screenshots/regions_017_169_hu4c6da2626fe9335e12d5da3506258dd2_123607_1aeab2d63a062640baf35ce7ffff4b52.webp 400w,
               /media/img/package_screenshots/regions_017_169_hu4c6da2626fe9335e12d5da3506258dd2_123607_340cd90381be5d85c6b08caba8072821.webp 760w,
               /media/img/package_screenshots/regions_017_169_hu4c6da2626fe9335e12d5da3506258dd2_123607_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/package_screenshots/regions_017_169_hu4c6da2626fe9335e12d5da3506258dd2_123607_1aeab2d63a062640baf35ce7ffff4b52.webp&#34;
               width=&#34;760&#34;
               height=&#34;427&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;/figure&gt;
&lt;p&gt;The new version of our &lt;a href=&#34;https://ropengov.org/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;rOpenGov&lt;/a&gt; R package
&lt;a href=&#34;https://regions.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;regions&lt;/a&gt; was released today on
CRAN. This package is one of the engines of our experimental open
data-as-service &lt;a href=&#34;https://greendeal.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Green Deal Data
Observatory&lt;/a&gt; , &lt;a href=&#34;https://economy.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Economy Data
Observatory&lt;/a&gt; , &lt;a href=&#34;https://music.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Digital Music
Observatory&lt;/a&gt; prototypes, which aim to
place open data packages into open-source applications.&lt;/p&gt;
&lt;p&gt;In international comparison the use of nationally aggregated indicators
often have many disadvantages: they inhibit very different levels of
homogeneity, and data is often very limited in number of observations
for a cross-sectional analysis. When comparing European countries, a few
missing cases can limit the cross-section of countries to around 20
cases which disallows the use of many analytical methods. Working with
sub-national statistics has many advantages: the similarity of the
aggregation level and high number of observations can allow more precise
control of model parameters and errors, and the number of observations
grows from 20 to 200-300.&lt;/p&gt;
















&lt;figure  id=&#34;figure-the-change-from-national-to-sub-national-level-comes-with-a-huge-data-processing-price-internal-administrative-boundaries-their-names-codes-codes-change-very-frequently&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;The change from national to sub-national level comes with a huge data processing price: internal administrative boundaries, their names, codes codes change very frequently.&#34; srcset=&#34;
               /media/img/blogposts_2021/indicator_with_map_hue9f606f6489f63a22f67aeb7e2b3402b_98843_df043b13fb62aa7b45aa15fad51f4229.webp 400w,
               /media/img/blogposts_2021/indicator_with_map_hue9f606f6489f63a22f67aeb7e2b3402b_98843_09a0d6124e334c5f1727420a059512a9.webp 760w,
               /media/img/blogposts_2021/indicator_with_map_hue9f606f6489f63a22f67aeb7e2b3402b_98843_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/blogposts_2021/indicator_with_map_hue9f606f6489f63a22f67aeb7e2b3402b_98843_df043b13fb62aa7b45aa15fad51f4229.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      The change from national to sub-national level comes with a huge data processing price: internal administrative boundaries, their names, codes codes change very frequently.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;Yet the change from national to sub-national level comes with a huge
data processing price. While national boundaries are relatively stable,
with only a handful of changes in each recent decade. The change of
national boundaries requires a more-or-less global consensus. But states
are free to change their internal administrative boundaries, and they do
it with large frequency. This means that the names, identification codes
and boundary definitions of sub-national regions change very frequently.
Joining data from different sources and different years can be very
difficult.&lt;/p&gt;
















&lt;figure  id=&#34;figure-our-regions-r-packagehttpsregionsdataobservatoryeu-helps-the-data-processing-validation-and-imputation-of-sub-national-regional-datasets-and-their-coding&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;Our [regions R package](https://regions.dataobservatory.eu/) helps the data processing, validation and imputation of sub-national, regional datasets and their coding.&#34; srcset=&#34;
               /media/img/blogposts_2021/recoded_indicator_with_map_hubda8124fbfd6305eacfd3d4f0fcd06cc_71873_65df57cf4311bb2623535a1a5be044c0.webp 400w,
               /media/img/blogposts_2021/recoded_indicator_with_map_hubda8124fbfd6305eacfd3d4f0fcd06cc_71873_81a53fd42fac7f0c3fe4e1a89d5b7892.webp 760w,
               /media/img/blogposts_2021/recoded_indicator_with_map_hubda8124fbfd6305eacfd3d4f0fcd06cc_71873_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/blogposts_2021/recoded_indicator_with_map_hubda8124fbfd6305eacfd3d4f0fcd06cc_71873_65df57cf4311bb2623535a1a5be044c0.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      Our &lt;a href=&#34;https://regions.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;regions R package&lt;/a&gt; helps the data processing, validation and imputation of sub-national, regional datasets and their coding.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;There are numerous advantages of switching from a national level of the
analysis to a sub-national level comes with a huge price in data
processing, validation and imputation, and the
&lt;a href=&#34;https://regions.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;regions&lt;/a&gt; package aims to help this
process.&lt;/p&gt;
&lt;p&gt;You can review the problem, and the code that created the two map
comparisons, in the &lt;a href=&#34;https://regions.dataobservatory.eu/articles/maping.html&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Maping Regional Data, Maping Metadata
Problems&lt;/a&gt;
vignette article of the package. A more detailed problem description can
be found in &lt;a href=&#34;https://regions.dataobservatory.eu/articles/Regional_stats.html&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Working With Regional, Sub-National Statistical
Products&lt;/a&gt;.&lt;/p&gt;
&lt;p&gt;This package is an offspring of the
&lt;a href=&#34;https://ropengov.github.io/eurostat/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;eurostat&lt;/a&gt; package on
&lt;a href=&#34;https://ropengov.github.io/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;rOpenGov&lt;/a&gt;. It started as a tool to
validate and re-code regional Eurostat statistics, but it aims to be a
general solution for all sub-national statistics. It will be developed
parallel with other rOpenGov packages.&lt;/p&gt;
&lt;h2 id=&#34;get-the-package&#34;&gt;Get the Package&lt;/h2&gt;
&lt;p&gt;You can install the development version from
&lt;a href=&#34;https://github.com/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;GitHub&lt;/a&gt; with:&lt;/p&gt;
&lt;pre&gt;&lt;code&gt;devtools::install_github(&amp;quot;rOpenGov/regions&amp;quot;)
&lt;/code&gt;&lt;/pre&gt;
&lt;p&gt;or the released version from CRAN:&lt;/p&gt;
&lt;pre&gt;&lt;code&gt;install.packages(&amp;quot;regions&amp;quot;)
&lt;/code&gt;&lt;/pre&gt;
&lt;p&gt;You can review the complete package documentation on
&lt;a href=&#34;https://regions.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;regions.dataobservaotry.eu&lt;/a&gt;. If
you find any problems with the code, please raise an issue on
&lt;a href=&#34;https://github.com/rOpenGov/regions&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Github&lt;/a&gt;. Pull requests are welcome
if you agree with the &lt;a href=&#34;https://contributor-covenant.org/version/2/0/CODE_OF_CONDUCT.html&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Contributor Code of
Conduct&lt;/a&gt;&lt;/p&gt;
&lt;p&gt;If you use &lt;code&gt;regions&lt;/code&gt; in your work, please cite the
package as:
Daniel Antal, Kasia Kulma, Istvan Zsoldos, &amp;amp; Leo Lahti. (2021, June 16). regions (Version 0.1.7). CRAN. &lt;a href=&#34;%28https://doi.org/10.5281/zenodo.4965909%29&#34;&gt;http://doi.org/10.5281/zenodo.4965909&lt;/a&gt;&lt;/p&gt;
&lt;p&gt;&lt;a href=&#34;https://cran.r-project.org/package=regions&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;















&lt;figure  &gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img src=&#34;https://www.r-pkg.org/badges/version/regions&#34; alt=&#34;CRAN_Status_Badge&#34; loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;/figure&gt;
&lt;/a&gt;&lt;/p&gt;
&lt;h2 id=&#34;join-us&#34;&gt;Join us&lt;/h2&gt;
&lt;p&gt;&lt;em&gt;Join our open collaboration Economy Data Observatory team as a &lt;a href=&#34;https://competition.dataobservatory.eu/authors/curator&#34;&gt;data curator&lt;/a&gt;, &lt;a href=&#34;https://competition.dataobservatory.eu/authors/developer&#34;&gt;developer&lt;/a&gt; or &lt;a href=&#34;https://competition.dataobservatory.eu/authors/team&#34;&gt;business developer&lt;/a&gt;. More interested in environmental impact analysis? Try our &lt;a href=&#34;https://greendeal.dataobservatory.eu/#contributors&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Green Deal Data Observatory&lt;/a&gt; team! Or your interest lies more in data governance, trustworthy AI and other digital market problems? Check out our &lt;a href=&#34;https://music.dataobservatory.eu/#contributors&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Digital Music Observatory&lt;/a&gt; team!&lt;/em&gt;&lt;/p&gt;
&lt;p&gt;&lt;a href=&#34;https://twitter.com/intent/follow?screen_name=EconDataObs&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;















&lt;figure  &gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img src=&#34;https://img.shields.io/twitter/follow/EconDataObs.svg?style=social&#34; alt=&#34;Follow GreenDealObs&#34; loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;/figure&gt;
&lt;/a&gt;&lt;/p&gt;
</description>
    </item>
    
    <item>
      <title>Open Data is Like Gold in the Mud Below the Chilly Waves of Mountain Rivers</title>
      <link>https://competition.dataobservatory.eu/post/2021-06-10-founder-daniel-antal/</link>
      <pubDate>Thu, 10 Jun 2021 07:00:00 +0000</pubDate>
      <guid>https://competition.dataobservatory.eu/post/2021-06-10-founder-daniel-antal/</guid>
      <description>















&lt;figure  id=&#34;figure-open-data-is-like-gold-in-the-mud-below-the-chilly-waves-of-mountain-rivers-panning-it-out-requires-a-lot-of-patience-or-a-good-machine&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;Open data is like gold in the mud below the chilly waves of mountain rivers. Panning it out requires a lot of patience, or a good machine.&#34; srcset=&#34;
               /media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_b042523dffe8143dea3d8c8c9c3262f4.webp 400w,
               /media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_faa00e96d3d0b700cfcf1daa513f3ad2.webp 760w,
               /media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/slides/gold_panning_slide_notitle_hu8f7296f20da8c17f972a0534c44322c2_1382486_b042523dffe8143dea3d8c8c9c3262f4.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      Open data is like gold in the mud below the chilly waves of mountain rivers. Panning it out requires a lot of patience, or a good machine.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;&lt;strong&gt;As the founder of the automated data observatories that are part of Reprex’s core activities, what type of data do you usually use in your day-to-day work?&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;The automated data observatories are results of syndicated research, data pooling, and other creative solutions to the problem of missing or hard-to-find data. The music industry is a very fragmented industry, where market research budgets and data are scattered in tens of thousands of small organizations in Europe. Working for the music and film industry as a data analyst and economist was always a pain because most of the efforts went into trying to find any data that can be analyzed. I spent most of the last 7-8 years trying to find any sort of information—from satellites to government archives—that could be formed into actionable data. I see three big sources of information: textual,numeric, and continuous recordings for on-site, offsite, and satellite sensors. I am much better with numbers than with natural language processing, and I am &lt;a href=&#34;https://greendeal.dataobservatory.eu/post/2021-06-06-tutorial-cds/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;improving with sensory sources&lt;/a&gt;. But technically, I can mint any systematic information—the text of an old book, a satellite image, or an opinion poll—into datasets.&lt;/p&gt;
&lt;p&gt;&lt;strong&gt;For you, what would be the ultimate dataset, or datasets that you would like to see in the Economy Data Observatory?&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;I am a data scientist now, but I used to be a regulatory economist, and I have worked a lot with competition policy and monopoly regulation issues. Our observatories can automatically monitor market and environmental processes, which would allow us to get into computational antitrust. Peter Ormosi, our competition curator, is particularly &lt;a href=&#34;https://economy.dataobservatory.eu/post/2021-06-02-data-curator-peter-ormosi/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;interested in&lt;/a&gt; killer acquisitions: approved mergers of big companies that end up piling up patents that are not used. I am more interested in describing systematically which markets are getting more concentrated and more competitive, in real time. Does data concentration coincide with market concentration?&lt;/p&gt;
&lt;p&gt;To bring an example from the realm of our &lt;a href=&#34;https://music.dataobservatory.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Digital Music Observatory&lt;/a&gt;, which was a prototype to this one, I have been working for some time on creating streaming volume and price indexes, like the &lt;em&gt;Dow Jones Industrial Average&lt;/em&gt; or the various bond market indexes, that talk more about price, demand, and potential revenue in music streaming markets all over the world. We did a first take on this in the &lt;a href=&#34;https://ceereport2020.ceemid.eu/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Central European Music Industry Report&lt;/a&gt; and recently we iterated on the model for the &lt;em&gt;UK Intellectual Property Office&lt;/em&gt; and the &lt;em&gt;UK Music Creators’ Earnings&lt;/em&gt; project. We want to take this further to create a pan-Europe streaming market index, and we will be probably the first to actually be able to report on music market concentrations, and in fact, more or less in a real-time mode.&lt;/p&gt;
















&lt;figure  id=&#34;figure-we-would-like-to-further-developer-our-20-country-streaming-indexeshttpsceereport2020ceemideumarkethtmlceemid-ci-volume-indexes-into-a-global-music-market-index&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;We would like to further developer our 20-country [streaming indexes]((https://ceereport2020.ceemid.eu/market.html#ceemid-ci-volume-indexes)) into a global music market index.&#34; srcset=&#34;
               /media/img/blogposts_2021/medianvalue-1_hu5941f179e15628adbbb6d4dc0db86cd1_46382_59d954e926db1ce3ce9376aac454a3aa.webp 400w,
               /media/img/blogposts_2021/medianvalue-1_hu5941f179e15628adbbb6d4dc0db86cd1_46382_75d58bfbbfae9d25c5551030d6d4206a.webp 760w,
               /media/img/blogposts_2021/medianvalue-1_hu5941f179e15628adbbb6d4dc0db86cd1_46382_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/blogposts_2021/medianvalue-1_hu5941f179e15628adbbb6d4dc0db86cd1_46382_59d954e926db1ce3ce9376aac454a3aa.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      We would like to further developer our 20-country &lt;a href=&#34;%28https://ceereport2020.ceemid.eu/market.html#ceemid-ci-volume-indexes%29&#34;&gt;streaming indexes&lt;/a&gt; into a global music market index.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;&lt;strong&gt;Is there a number or piece of information that recently surprised you? If so, what was it?&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;There were a few numbers that surprised me, and some of them were brought up by our observatory teams. Karel is &lt;a href=&#34;post/2021-06-08-data-curator-karel-volckaert/&#34;&gt;talking&lt;/a&gt; about the fact that not all green energy is green at all: many hydropower stations contribute to the greenhouse effect and not reduce it. Annette brought up the growing interest in the &lt;a href=&#34;https://competition.dataobservatory.eu/post/2021-06-09-team-annette-wong/&#34;&gt;Dalmatian breed&lt;/a&gt; after the Disney &lt;em&gt;101 Dalmatians&lt;/em&gt; movies, and it reminded me of the astonishing growth in interest for chess sets, chess tutorials, and platform subscriptions after the success of Netflix’s &lt;em&gt;The Queen’s Gambit&lt;/em&gt;.&lt;/p&gt;
















&lt;figure  id=&#34;figure-the-queens-gambit-chess-boom-moves-online-by-rachael-dottle-on-bloombergcomhttpswwwbloombergcomgraphics2020-chess-boom&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;*The Queen’s Gambit’ Chess Boom Moves Online By Rachael Dottle* on [bloomberg.com](https://www.bloomberg.com/graphics/2020-chess-boom/)&#34; srcset=&#34;
               /media/img/blogposts_2021/queens_gambit_bloomberg_hub50434a1789646b36daf41ad10e65b52_92708_4fc47acea402086dd3891772877289db.webp 400w,
               /media/img/blogposts_2021/queens_gambit_bloomberg_hub50434a1789646b36daf41ad10e65b52_92708_b60a154be5ab781fb70d16f62f39966c.webp 760w,
               /media/img/blogposts_2021/queens_gambit_bloomberg_hub50434a1789646b36daf41ad10e65b52_92708_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/blogposts_2021/queens_gambit_bloomberg_hub50434a1789646b36daf41ad10e65b52_92708_4fc47acea402086dd3891772877289db.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      &lt;em&gt;The Queen’s Gambit’ Chess Boom Moves Online By Rachael Dottle&lt;/em&gt; on &lt;a href=&#34;https://www.bloomberg.com/graphics/2020-chess-boom/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;bloomberg.com&lt;/a&gt;
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;Annette is talking about the importance of cultural influencers, and on that theme, what could be more exciting that &lt;a href=&#34;https://www.netflix.com/nl-en/title/80234304&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Netflix’s biggest success&lt;/a&gt; so far is not a detective series or a soap opera but a coming-of-age story of a female chess prodigy. Intelligence is sexy, and we are in the intelligence business.&lt;/p&gt;
&lt;p&gt;But to tell a more serious and more sobering number, I recently read with surprise that there are &lt;a href=&#34;https://www.theguardian.com/society/2021/may/27/number-of-smokers-has-reached-all-time-high-of-11-billion-study-finds&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;more people smoking cigarettes&lt;/a&gt; on Earth in 2021 than in 1990. Population growth in developing countries replaced the shrinking number of developed country smokers. While I live in Europe, where smoking is strongly declining, it reminds me that Europe’s population is a small part of the world. We cannot take for granted that our home-grown experiences about the world are globally valid.&lt;/p&gt;
&lt;p&gt;&lt;strong&gt;Do you have a good example of really good, or really bad use of data?&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;&lt;a href=&#34;https://fivethirtyeight.com/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;FiveThirtyEight.com&lt;/a&gt; had a wonderful podcast series, produced by Jody Avirgan, called &lt;em&gt;What’s the Point&lt;/em&gt;.  It is exactly about good and bad uses of data, and each episode is super interesting. Maybe the most memorable is &lt;em&gt;Why the Bronx Really Burned&lt;/em&gt;. New York City tried to measure fire response times, identify redundancies in service, and close or re-allocate fire stations accordingly. What resulted, though, was a perfect storm of bad data: The methodology was flawed, the analysis was rife with biases, and the results were interpreted in a way that stacked the deck against poorer neighborhoods. It is similar to many stories told in a very compelling argument by Catherine D’Ignazio and Lauren F. Klein in their much celebrated book,  &lt;em&gt;Data Feminism&lt;/em&gt;. Usually, the bad use of data starts with a bad data collection practice. Data analysts in corporations, NGOs, public policy organizations and even in science usually analyze the data that is available.&lt;/p&gt;
&lt;p&gt;&lt;em&gt;You can find these examples, together with many more that our contributors recommend, in the motivating examples of &lt;a href=&#34;https://contributors.dataobservatory.eu/data-curators.html#create-new-datasets&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Create New Datasets&lt;/a&gt; and the &lt;a href=&#34;https://contributors.dataobservatory.eu/data-curators.html#critical-attitude&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Remain Critical&lt;/a&gt; parts of our onboarding material. We hope that more and more professionals and citizen scientist will help us to create high-quality and open data.&lt;/em&gt;&lt;/p&gt;
&lt;p&gt;The real power lies in designing a data collection program. A consistent data collection program usually requires an investment that only powerful organizations, such as government agencies, very large corporations, or the richest universities can afford. You cannot really analyze the data that is not collected and recorded; and usually what is not recorded is more interesting than what is. Our observatories want to democratize the data collection process and make it more available, more shared with research automation and pooling.&lt;/p&gt;
















&lt;figure  id=&#34;figure-you-cannot-really-analyze-the-data-that-is-not-collected-and-recorded-and-usually-what-is-not-recorded-is-more-interesting-than-what-is-our-observatories-want-to-democratize-the-data-collection-process-and-make-it-more-available-more-shared-with-research-automation-and-pooling&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;You cannot really analyze the data that is not collected and recorded; and usually what is not recorded is more interesting than what is. Our observatories want to democratize the data collection process and make it more available, more shared with research automation and pooling.&#34; srcset=&#34;
               /media/img/slides/value_added_from_automation_hu0cd38ea00fa26e2a5a435a4734d443af_246915_0c9aff1728ccce942df2d778c9b3c8f3.webp 400w,
               /media/img/slides/value_added_from_automation_hu0cd38ea00fa26e2a5a435a4734d443af_246915_140e32925c748c51631149098ba27aac.webp 760w,
               /media/img/slides/value_added_from_automation_hu0cd38ea00fa26e2a5a435a4734d443af_246915_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/slides/value_added_from_automation_hu0cd38ea00fa26e2a5a435a4734d443af_246915_0c9aff1728ccce942df2d778c9b3c8f3.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      You cannot really analyze the data that is not collected and recorded; and usually what is not recorded is more interesting than what is. Our observatories want to democratize the data collection process and make it more available, more shared with research automation and pooling.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;&lt;strong&gt;From your perspective, what do you see being the greatest problem with open data in 2021?&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;I have been involved with open data policies since 2004. The problem has not changed much: more and more data are available from governmental and scientific sources, but in a form that makes them useless. Data without clear description and clear processing information is useless for analytical purposes: it cannot be integrated with other data, and it cannot be trusted and verified. If researchers or government entities that fall under the &lt;a href=&#34;https://eur-lex.europa.eu/legal-content/EN/TXT/?uri=uriserv:OJ.L_.2019.172.01.0056.01.ENG&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Open Data Directive&lt;/a&gt; release data for reuse in a way that does not have descriptive or processing metadata, it is almost as if they did not release anything. You need this additional information to make valid analyses of the data, and to reverse-engineer them may cost more than to recollect the data in a properly documented process. Our developers, particularly &lt;a href=&#34;https://competition.dataobservatory.eu/post/2021-06-04-developer-leo-lahti/&#34;&gt;Leo&lt;/a&gt; and &lt;a href=&#34;post/2021-06-07-data-curator-pyry-kantanen/&#34;&gt;Pyry&lt;/a&gt; are talking eloquently about why you have to be careful even with governmental statistical products, and constantly be on the watch out for data quality.&lt;/p&gt;
















&lt;figure  id=&#34;figure-our-apidata-is-not-only-publishing-descriptive-and-processing-metadata-alongside-with-our-data-but-we-also-make-all-critical-elements-of-our-processing-code-available-for-peer-review-on-ropengovauthorsropengov&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;Our [API](/#data) is not only publishing descriptive and processing metadata alongside with our data, but we also make all critical elements of our processing code available for peer-review on [rOpenGov](/authors/ropengov/)&#34; srcset=&#34;
               /media/img/observatory_screenshots/EDO_API_metadata_table_hu31b494a33d5ae09272643545372dbd1d_100491_86c8542ed13dd7e9324ad56aab26416e.webp 400w,
               /media/img/observatory_screenshots/EDO_API_metadata_table_hu31b494a33d5ae09272643545372dbd1d_100491_67baa4653e1363f7eacffae952745089.webp 760w,
               /media/img/observatory_screenshots/EDO_API_metadata_table_hu31b494a33d5ae09272643545372dbd1d_100491_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/observatory_screenshots/EDO_API_metadata_table_hu31b494a33d5ae09272643545372dbd1d_100491_86c8542ed13dd7e9324ad56aab26416e.webp&#34;
               width=&#34;760&#34;
               height=&#34;428&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      Our &lt;a href=&#34;https://competition.dataobservatory.eu/#data&#34;&gt;API&lt;/a&gt; is not only publishing descriptive and processing metadata alongside with our data, but we also make all critical elements of our processing code available for peer-review on &lt;a href=&#34;https://competition.dataobservatory.eu/authors/ropengov/&#34;&gt;rOpenGov&lt;/a&gt;
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;&lt;strong&gt;What do you think the Economy Data Observatory, and our other automated observatories do, to make open data more credible in the European economic policy community and be accepted as verified information?&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;Most of our work is in research automation, and a very large part of our efforts are aiming to reverse engineer missing descriptive and processing metadata. In a way, I like to compare ourselves to the working method of the open-source intelligence platform &lt;a href=&#34;https://www.bellingcat.com&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Bellingcat&lt;/a&gt;. They were able to use publicly available, &lt;a href=&#34;https://www.bellingcat.com/category/resources/case-studies/?fwp_tags=mh17&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;scattered information from satellites and social media&lt;/a&gt; to identify each member of the Russian military company that illegally entered the territory of Ukraine and shot down the Malaysian Airways MH17 with 297, mainly Dutch, civilians on board.&lt;/p&gt;
















&lt;figure  id=&#34;figure-how-we-create-value-for-research-oriented-consultancies-public-policy-institutes-university-research-teams-journalists-or-ngos&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;How we create value for research-oriented consultancies, public policy institutes, university research teams, journalists or NGOs.&#34; srcset=&#34;
               /media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_c18a97f00bbcac322614b6c2d55783f6.webp 400w,
               /media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_8b655e803b41b817a8093a37ccd19689.webp 760w,
               /media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_1200x1200_fit_q75_h2_lanczos.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/slides/automated_observatory_value_chain_huf9c0a6d9b150a8fdeb42cadf99abee90_616274_c18a97f00bbcac322614b6c2d55783f6.webp&#34;
               width=&#34;760&#34;
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  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      How we create value for research-oriented consultancies, public policy institutes, university research teams, journalists or NGOs.
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;p&gt;We do not do such investigations but work very similarly to them in how we are filtering through many data sources and attempting to verify them when their descriptions and processing history is unknown. In the last years, we were able to estore the metadata of many European and African open data surveys, economic impact, and environmental impact data, or many other open data that was lying around for many years without users.&lt;/p&gt;
&lt;p&gt;Open data is like gold in the mud below the chilly waves of mountain rivers. Panning it out requires a lot of patience, or a good machine. I think we will come to as surprising and strong findings as Bellingcat, but we are not focusing on individual events and stories, but on social and environmental processes and changes.&lt;/p&gt;
















&lt;figure  id=&#34;figure-join-our-open-collaboration-economy-data-observatory-team-as-a-data-curatorauthorscurator-developerauthorsdeveloper-or-business-developerauthorsteam-or-share-your-data-in-our-public-repository-economy-data-observatory-on-zenodohttpszenodoorgcommunitieseconomy_observatory&#34;&gt;
  &lt;div class=&#34;d-flex justify-content-center&#34;&gt;
    &lt;div class=&#34;w-100&#34; &gt;&lt;img alt=&#34;Join our open collaboration Economy Data Observatory team as a [data curator](/authors/curator), [developer](/authors/developer) or [business developer](/authors/team), or share your data in our public repository [Economy Data Observatory on Zenodo](https://zenodo.org/communities/economy_observatory/)&#34; srcset=&#34;
               /media/img/observatory_screenshots/edo_and_zenodo_hue3bbdd36723034473d5308625670dcc8_399948_5cfbbb0284fd756cc51fe0231cdb8d2b.webp 400w,
               /media/img/observatory_screenshots/edo_and_zenodo_hue3bbdd36723034473d5308625670dcc8_399948_47604e6f9323a65eb8211807a2f934f8.webp 760w,
               /media/img/observatory_screenshots/edo_and_zenodo_hue3bbdd36723034473d5308625670dcc8_399948_1200x1200_fit_q75_h2_lanczos_3.webp 1200w&#34;
               src=&#34;https://competition.dataobservatory.eu/media/img/observatory_screenshots/edo_and_zenodo_hue3bbdd36723034473d5308625670dcc8_399948_5cfbbb0284fd756cc51fe0231cdb8d2b.webp&#34;
               width=&#34;760&#34;
               height=&#34;507&#34;
               loading=&#34;lazy&#34; data-zoomable /&gt;&lt;/div&gt;
  &lt;/div&gt;&lt;figcaption data-pre=&#34;Figure&amp;nbsp;&#34; data-post=&#34;:&amp;nbsp;&#34; class=&#34;numbered&#34;&gt;
      Join our open collaboration Economy Data Observatory team as a &lt;a href=&#34;https://competition.dataobservatory.eu/authors/curator&#34;&gt;data curator&lt;/a&gt;, &lt;a href=&#34;https://competition.dataobservatory.eu/authors/developer&#34;&gt;developer&lt;/a&gt; or &lt;a href=&#34;https://competition.dataobservatory.eu/authors/team&#34;&gt;business developer&lt;/a&gt;, or share your data in our public repository &lt;a href=&#34;https://zenodo.org/communities/economy_observatory/&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Economy Data Observatory on Zenodo&lt;/a&gt;
    &lt;/figcaption&gt;&lt;/figure&gt;
&lt;h2 id=&#34;join-us&#34;&gt;Join us&lt;/h2&gt;
&lt;p&gt;&lt;em&gt;Join our open collaboration Economy Data Observatory team as a &lt;a href=&#34;https://competition.dataobservatory.eu/authors/curator&#34;&gt;data curator&lt;/a&gt;, &lt;a href=&#34;https://competition.dataobservatory.eu/authors/developer&#34;&gt;developer&lt;/a&gt; or &lt;a href=&#34;https://competition.dataobservatory.eu/authors/team&#34;&gt;business developer&lt;/a&gt;. More interested in environmental impact analysis? Try our &lt;a href=&#34;https://greendeal.dataobservatory.eu/#contributors&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Green Deal Data Observatory&lt;/a&gt; team! Or your interest lies more in data governance, trustworthy AI and other digital market problems? Check out our &lt;a href=&#34;https://music.dataobservatory.eu/#contributors&#34; target=&#34;_blank&#34; rel=&#34;noopener&#34;&gt;Digital Music Observatory&lt;/a&gt; team!&lt;/em&gt;&lt;/p&gt;
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