Skip to main content

Retrieves information from Sinta (https://sinta.kemdikbud.go.id) via scraping.

Project description

Sinta Scraper

Retrieves information from Sinta (https://sinta.kemdikbud.go.id) via scraping.

Code Sample

Code sample for all functions is available as a Google Colab notebook: Open In Colab . Update: Sinta seems to be blocking accesses from Google Colab so you need to run the scripts locally.

Installation

pip install sinta-scraper

Dependencies: beautifulsoup4, requests, dicttoxml, dict2xml, and python-string-utils.

Importing

import sinta_scraper as sinta

Available Functions

Function Details

  • author()

Retrieves an author's information by Sinta ID. For example:

author_id = 5975467
author = sinta.author(author_id)

print(author)

The output format is the Python dictionary. The structure is given in the following sample output.

{
    "id": "5975467",
    "name": "AGUS ZAINAL ARIFIN",
    "url": "https://sinta.kemdikbud.go.id/authors/detail?id=5975467&view=overview",
    "affiliation": {
        "id": "417",
        "name": "Institut Teknologi Sepuluh Nopember",
        "url": "http://sinta.ristekbrin.go.id/affiliations/detail/?id=417&view=overview"
    },
    "department": "Teknik Informatika",
    "areas": [
        "computer vision",
        "image processing",
        "information retrieval",
        "medical imaging",
        "machine learning"
    ],
    "score": {
        "overall": 48.1,
        "3_years": 3.13,
        "overall_v2": 4726.0,
        "3_years_v2": 1377.5
    },
    "rank": {
        "national": 723,
        "3_years_national": 1099,
        "affiliation": 32,
        "3_years_affiliation": 30
    },
    "scopus": {
        "documents": 69,
        "citations": 469,
        "h-index": 10,
        "i10-index": 10,
        "g-index": 1,
        "articles": 39,
        "conferences": 30,
        "others": 0,
        "Q1": 6,
        "Q2": 12,
        "Q3": 13,
        "Q4": 3,
        "undefined": 35
    },
    "scholar": {
        "documents": 294,
        "citations": 1444,
        "h-index": 16,
        "i10-index": 36,
        "g-index": 31
    },
    "wos": {
        "documents": 1,
        "citations": null,
        "h-index": null,
        "i10-index": null,
        "g-index": null
    },
    "sinta": {
        "S0": 1,
        "S1": 8,
        "S2": 3,
        "S3": 3,
        "S4": 7,
        "S5": 0,
        "uncategorized": 272
    },
    "books": 0,
    "ipr": 2
}

Multiple authors can also be retrieved at once:

author_ids = 5975467, 6019743
author = sinta.author(author_id)

The output is a list of author dictionaries.

  • dept_authors()

Retrieves a list of authors associated with some department. Department ID and affiliation ID must be specified. The output structure is different from that given by the author() function. This function retrieves only the ID and name of each author. For example:

dept_id = 55001
affil_id = 417
authors = sinta.dept_authors(dept_id, affil_id)

print(authors)

Output:

[
    {
        "id": "29555",
        "name": "Riyanarto Sarno"
    },
    {
        "id": "6023328",
        "name": "Nanik Suciati"
    },
    {
        "id": "5975467",
        "name": "Agus Zainal Arifin"
    },
    {
        "id": "5993318",
        "name": "Handayani Tjandrasa"
    },
    {
        "id": "5993763",
        "name": "Joko Lianto Buliali"
    },
    {
        "id": "5995823",
        "name": "Supeno Djanali"
    }
]

Authors associated to multiple departments can also be retrieved at once:

dept_id = 55001, 90243
affil_id = 417
authors = sinta.dept_authors(dept_id, affil_id)

Note that the output is "flat", i.e. the authors from different departments are put into the same level.

  • affil()

Retrieves information about an affiliation. For example:

affil_id = '417'
affil = sinta.affil(affil_id)

print(affil)

Output:

{
    "name": "Institut Teknologi Sepuluh Nopember",
    "url": "https://its.ac.id",
    "score": {
        "overall": 37400,
        "overall_v2": 540707,
        "3_years": 5222,
        "3_years_v2": 182038
    },
    "rank": {
        "national": 7,
        "3_years_national": 11
    },
    "journals": 25,
    "verified_authors": 1115,
    "lecturers": 961
}
  • affils()

Retrieves information about several affiliations. For example:

affil_ids = ['417', '404']
affils = sinta.affils(affil_ids)

print(affils)

Output

[
    {
        "name": "Institut Teknologi Sepuluh Nopember",
        "url": "https://its.ac.id",
        "score": {
            "overall": 37400,
            "overall_v2": 540707,
            "3_years": 5222,
            "3_years_v2": 182038
        },
        "rank": {
            "national": 7,
            "3_years_national": 11
        },
        "journals": 25,
        "verified_authors": 1115,
        "lecturers": 961
    },
    {
        "name": "Universitas Brawijaya",
        "url": "www.ub.ac.id",
        "score": {
            "overall": 53982,
            "overall_v2": 538192,
            "3_years": 5946,
            "3_years_v2": 217740
        },
        "rank": {
            "national": 9,
            "3_years_national": 8
        },
        "journals": 67,
        "verified_authors": 2318,
        "lecturers": 2052
    }
]
  • affil_authors()

Retrieves authors associated with the specified affiliation. This function usually takes more time to complete. For example:

affil_id = '417'
authors = sinta.affil_authors(affil_id)

print(authors[:5])

Output:

[
    {
        "id": "29555",
        "name": "Riyanarto Sarno",
        "nidn": "0003085905"
    },
    {
        "id": "6005015",
        "name": "Mauridhi Hery Purnomo",
        "nidn": "0016095811"
    },
    {
        "id": "5976088",
        "name": "Chastine Fatichah",
        "nidn": "0020127508"
    },
    {
        "id": "29653",
        "name": "Adhi Yuniarto",
        "nidn": "0001067304"
    },
    {
        "id": "5998915",
        "name": "Didik Prasetyoko",
        "nidn": "0016067108"
    }
]
  • author_researches()

Retrieves an author's researches. For example:

author_id = '6005015'
researches = sinta.author_researches(author_id)

print(researches[:2])

Output:

[
    {
        "title": "Monitoring Kestabilan Transient dengan Mempertimbangkan Parameter Sudut Rotor, Frekuensi, dan Tegangan Berbasis Computational Intelligence",
        "scheme": "Penelitian Penugasan ( WCR )",
        "source": "Simlitabmas",
        "members": [
            "Mauridhi Hery Purnomo",
            "Ardyono Priyadi",
            "Vita Lystianingrum B P"
        ],
        "application_year": 2020,
        "event_year": 2021,
        "fund": 118488700,
        "field": "Energi",
        "sponsor": "Ristekdikti"
    },
    {
        "title": "Intelligent Teledermatology System untuk Smart Hospital",
        "scheme": "Penelitian Penugasan ( KRU-PT )",
        "source": "Simlitabmas",
        "members": [
            "I Ketut Eddy Purnama",
            "Anak Agung Putri Ratna",
            "Ingrid Nurtanio",
            "Afif Nurul Hidayati",
            "Reza Fuad Rachmadi",
            "Mauridhi Hery Purnomo",
            "Supeno Mardi Susiki Nugroho"
        ],
        "application_year": 2020,
        "event_year": 2021,
        "fund": 436800000,
        "field": "Kesehatan",
        "sponsor": "Ristekdikti"
    }
]
  • author_scholar_docs()

Retrieves an author's Google Scholar items. For example:

author_id = '6005015'
scholar_docs = sinta.author_scholar_docs(author_id)

print(scholar_docs[:2])

Output:

[
    {
        "title": "Konsep Pengolahan Citra Digital dan Ekstraksi Fitur",
        "url": "https://scholar.google.com/scholar?oi=bibs&cluster=11975243569176755366&btnI=1&hl=en",
        "publisher": "Yogyakarta: Graha Ilmu, 2010",
        "year": 2010,
        "citations": 0
    },
    {
        "title": "Supervised Neural Networks dan Aplikasinya",
        "url": "https://scholar.google.com/scholar?oi=bibs&cluster=4803627219094543302&btnI=1&hl=en",
        "publisher": "Yogyakarta: Graha Ilmu; ISBN:978-979-756-123-9 1 (2006), 176",
        "year": 2006,
        "citations": 0
    }
]

You can also specify the minimum and maximum year. For example:

author_id = '6005015'
scholar = sinta.author_scholar_docs(author_id, min_year=2017, max_year=2020)
  • dept_scholar_docs()

Retrieves all Google Scholar documents written by authors in a department. For example:

dept_id = '55001'
affil_id = '404'
scholar_docs = sinta.dept_scholar_docs(dept_id, affil_id)

print(scholar_docs[0])

Output:

[
    {
        "id": "5977641",
        "name": "Wayan Firdaus Mahmudy",
        "docs": [
            {
                "title": "Algoritma Evolusi",
                "url": "https://scholar.google.com/scholar?oi=bibs&cluster=14954803897077959851,3266829010641986629&btnI=1&hl=en",
                "publisher": "Universitas Brawijaya. Malang",
                "year": 2013,
                "citations": 127
            },
            {
                "title": "Penerapan algoritma genetika pada sistem rekomendasi wisata kuliner",
                "url": "https://scholar.google.com/scholar?oi=bibs&cluster=10533163477803658267&btnI=1&hl=en",
                "publisher": "Kursor 5 (4), 205-211",
                "year": 2010,
                "citations": 63
            }
        ]
    },
    {
        "id": "5992836",
        "name": "Ahmad Afif Supianto",
        "docs": [
            {
                "title": "Rancang Bangun Aplikasi Antrian Poliklinik Berbasis Mobile",
                "url": "https://scholar.google.com/scholar?oi=bibs&cluster=4109969969855887623&btnI=1&hl=en",
                "publisher": "J. Teknol. Inf. dan Ilmu Komput 5 (3)",
                "year": 2018,
                "citations": 27
            },
            {
                "title": "Perbandingan Teknik Klasifikasi Dalam Data Mining Untuk Bank Direct Marketing",
                "url": "https://scholar.google.com/scholar?oi=bibs&cluster=10735231418349323236&btnI=1&hl=en",
                "publisher": "Jurnal Teknologi Informasi dan Ilmu Komputer 5 (5), 567-576",
                "year": 2018,
                "citations": 26
            }
        ]
    }
]
  • author_scopus_docs()

Retrieves an author's Scopus documents. For example:

author_id = '6005015'
scopus = sinta.author_scopus_docs(author_id)

print(scopus[:2])

Output:

[
    {
        "title": "Adaptive modified firefly algorithm for optimal coordination of overcurrent relays",
        "url": "https://www.scopus.com/record/display.uri?eid=2-s2.0-85026658931&origin=resultslist",
        "publisher": "IET Generation, Transmission and Distribution",
        "date": "2017-07-13",
        "type": "Journal",
        "quartile": 1,
        "citations": 77
    },
    {
        "title": "Controlling chaos and voltage collapse using an ANFIS-based composite controller-static var compensator in power systems",
        "url": "https://www.scopus.com/record/display.uri?eid=2-s2.0-84869223917&origin=resultslist",
        "publisher": "International Journal of Electrical Power and Energy Systems",
        "date": "2013-03-01",
        "type": "Journal",
        "quartile": 1,
        "citations": 62
    }
]

You can also specify the minimum and maximum date. The date must be in "yyyy-mm-dd" format. For example:

author_id = '6005015'
scopus = sinta.author_scopus_docs(author_id, min_date='2015-01-01', max_date='2019-12-31')
  • author_scopus_journal_docs()

Retrieves an author's Scopus journal documents. For example:

author_id = '6005015'
scopus = sinta.author_scopus_journal_docs(author_id)
  • author_scopus_conference_docs()

Retrieves an author's Scopus conference documents. For example:

author_id = '6005015'
scopus = sinta.author_scopus_conference_docs(author_id)
  • author_wos_docs()

Retrieves an author's Web of Science documents. For example:

author_id = '6005015'
wos = sinta.author_wos_docs(author_id)

print(wos[:2])

Output:

[
    {
        "title": "Adaptive B-spline neural network-based vector control for a grid side converter in wind turbine-DFIG systems",
        "publisher": "IEEJ TRANSACTIONS ON ELECTRICAL AND ELECTRONIC ENGINEERING",
        "issn": "1931-4973",
        "doi": "-",
        "uid": "WOS:000362748500009"
    },
    {
        "title": "ARIMA Modeling of Tropical Rain Attenuation on a Short 28-GHz Terrestrial Link",
        "publisher": "IEEE ANTENNAS AND WIRELESS PROPAGATION LETTERS",
        "issn": "1536-1225",
        "doi": "10.1109/LAWP.2010.2046130",
        "uid": "WOS:000276520900002"
    }
]
  • author_comm_services()

Retrieves an author's community service items. For example:

author_id = '5996278'
comm_svc = sinta.author_comm_services(author_id)

print(comm_svc)

Output:

[
    {
        "title": "IbM Pembelajaran Elektronik Untuk SMK",
        "scheme": "Pengabdian Kepada Masyarakat Kompetitif Nasional ( PKM )",
        "source": "Simlitabmas",
        "members": [
            "Candra Dewi",
            "Adharul Muttaqin",
            "Achmad Basuki"
        ],
        "application_year": 2015,
        "event_year": 2016,
        "fund": 50000000,
        "field": "",
        "sponsor": "Ristekdikti"
    }
]
  • author_ipr()

Retrieves an author's intellectual property right (IPR) items. For example:

author_id = '5996278'
ipr = sinta.author_ipr(author_id)

print(ipr)

Output:

[
    {
        "id": "EC00202016549",
        "title": "Panduan Pembelajaran Daring Saat Kondisi Darurat COVID-19",
        "category": "paten",
        "year": "2020",
        "holder": "Universitas Brawijaya"
    }
]

Other Output Formats

Other formats can be used by specifying the output_format argument:

author = sinta.author(id, output_format='json')

Avalable output formats:

  • 'dictionary' (default)
  • 'json'
  • 'xml'

JSON output can be pretty-printed by setting pretty_print=True:

author = sinta.author(id, output_format='json', pretty_print=True)

For XML output, there are two library options which can be specified in the xml_library argument. These libraries give different output formats. The options are:

  • dicttoxml (default)
  • dict2xml

Please note that the output is not wrapped in a root element. For example:

author = sinta.author(id, output_format='xml', xml_library='dict2xml')

Output:

<affiliation>
  <id>417</id>
  <name>Institut Teknologi Sepuluh Nopember</name>
  <url>http://sinta.ristekbrin.go.id/affiliations/detail/?id=417&amp;view=overview</url>
</affiliation>
<areas>computer vision</areas>
<areas>image processing</areas>
<areas>information retrieval</areas>
<areas>medical imaging</areas>
<areas>machine learning</areas>
<books>0</books>
<department>Teknik Informatika</department>
<id>5975467</id>
<ipr>2</ipr>
<name>AGUS ZAINAL ARIFIN</name>
<rank>
  <_3_years_affiliation>30</_3_years_affiliation>
  <_3_years_national>1099</_3_years_national>
  <affiliation>32</affiliation>
  <national>723</national>
</rank>
<scholar>
  <citations>1444</citations>
  <documents>294</documents>
  <g-index>31</g-index>
  <h-index>16</h-index>
  <i10-index>36</i10-index>
</scholar>
<scopus>
  <Q1>6</Q1>
  <Q2>12</Q2>
  <Q3>13</Q3>
  <Q4>3</Q4>
  <articles>39</articles>
  <citations>469</citations>
  <conferences>30</conferences>
  <documents>69</documents>
  <g-index>1</g-index>
  <h-index>10</h-index>
  <i10-index>10</i10-index>
  <others>0</others>
  <undefined>35</undefined>
</scopus>
<score>
  <_3_years>3.13</_3_years>
  <_3_years_v2>1377.5</_3_years_v2>
  <overall>48.1</overall>
  <overall_v2>4726.0</overall_v2>
</score>
<sinta>
  <S0>1</S0>
  <S1>8</S1>
  <S2>3</S2>
  <S3>3</S3>
  <S4>7</S4>
  <S5>0</S5>
  <uncategorized>272</uncategorized>
</sinta>
<url>https://sinta.kemdikbud.go.id/authors/detail?id=5975467&amp;view=overview</url>
<wos>
  <citations>None</citations>
  <documents>1</documents>
  <g-index>None</g-index>
  <h-index>None</h-index>
  <i10-index>None</i10-index>
</wos>

If you want the XML output to be pretty-printed, you need to choose dict2xml instead of xmltodict since the latter does not produce pretty-printed XML output. By pretty-printing, the output is wrapped in a root element. For example:

author_id = '5975467'
author = sinta.author(author_id, output_format='xml', xml_library='dict2xml', pretty_print=True)

print(author)

Output:

<author>
    <affiliation>
        <id>417</id>
        <name>Institut Teknologi Sepuluh Nopember</name>
        <url>http://sinta.ristekbrin.go.id/affiliations/detail/?id=417&amp;view=overview</url>
    </affiliation>
    <areas>computer vision</areas>
    <areas>image processing</areas>
    <areas>information retrieval</areas>
    <areas>medical imaging</areas>
    <areas>machine learning</areas>
    <books>0</books>
    <department>Teknik Informatika</department>
    <id>5975467</id>
    <ipr>2</ipr>
    <name>AGUS ZAINAL ARIFIN</name>
    <rank>
        <_3_years_affiliation>30</_3_years_affiliation>
        <_3_years_national>1099</_3_years_national>
        <affiliation>32</affiliation>
        <national>723</national>
    </rank>
    <scholar>
        <citations>1444</citations>
        <documents>294</documents>
        <g-index>31</g-index>
        <h-index>16</h-index>
        <i10-index>36</i10-index>
    </scholar>
    <scopus>
        <Q1>6</Q1>
        <Q2>12</Q2>
        <Q3>13</Q3>
        <Q4>3</Q4>
        <articles>39</articles>
        <citations>469</citations>
        <conferences>30</conferences>
        <documents>69</documents>
        <g-index>1</g-index>
        <h-index>10</h-index>
        <i10-index>10</i10-index>
        <others>0</others>
        <undefined>35</undefined>
    </scopus>
    <score>
        <_3_years>3.13</_3_years>
        <_3_years_v2>1377.5</_3_years_v2>
        <overall>48.1</overall>
        <overall_v2>4726.0</overall_v2>
    </score>
    <sinta>
        <S0>1</S0>
        <S1>8</S1>
        <S2>3</S2>
        <S3>3</S3>
        <S4>7</S4>
        <S5>0</S5>
        <uncategorized>272</uncategorized>
    </sinta>
    <url>https://sinta.kemdikbud.go.id/authors/detail?id=5975467&amp;view=overview</url>
    <wos>
        <citations>None</citations>
        <documents>1</documents>
        <g-index>None</g-index>
        <h-index>None</h-index>
        <i10-index>None</i10-index>
    </wos>
</author>

Todo

  • Other output formats: CSV.
  • find_affil(keyword) function.
  • affil_depts(affil_id) function.
  • dept(dept_id) function.
  • find_dept(keyword) function.
  • dept_scholar_citations_count(dept_id) function.
  • dept_scopus_citations_count(dept_id) function.
  • dept_wos_citations_count(dept_id) function.
  • affil_citations_count(author_id) function.
  • Sinta 3.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

sinta-scraper-0.17.0.tar.gz (19.8 kB view hashes)

Uploaded Source

Built Distribution

sinta_scraper-0.17.0-py3-none-any.whl (20.5 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page