{ "dataset": "PISA 2018 (OECD)", "source": "https://webfs.oecd.org/pisa2018/ (direct SPSS downloads available)", "access": "FREE direct download", "scale": "~600K students, ~900 item columns, 80+ countries", "files": { "SPSS_STU_COG.zip (456 MB)": { "CNTSTUID": "Student ID", "CNT": "Country", "BOOKID": "Booklet", "CM*Q*S": "Math items (scored 0/1/2, 7=not administered)", "CR*Q*S": "Reading items", "CS*Q*S": "Science items" }, "SPSS_STU_QQQ.zip (478 MB)": { "CNTSTUID": "Student ID (merge key)", "CNT": "Country", "ST004D01T": "Gender (1=Female, 2=Male)", "ESCS": "SES index (continuous)", "IMMIG": "Immigration (1=native,2=1st,3=2nd gen)", "LANGN": "Language at home", "PV1MATH-PV10MATH": "Plausible values" } }, "download_urls": { "cognitive": "https://webfs.oecd.org/pisa2018/SPSS_STU_COG.zip", "questionnaire": "https://webfs.oecd.org/pisa2018/SPSS_STU_QQQ.zip" }, "python_code": "\nimport pyreadstat\n# Download and extract the zips first, then:\ndf_cog, meta = pyreadstat.read_sav('COG/CY07_MSU_STU_COG.sav')\ndf_qqq, meta = pyreadstat.read_sav('QQQ/CY07_MSU_STU_QQQ.sav')\ndf = df_qqq.merge(df_cog, on=['CNTSTUID','CNT'])\n# Now df has items + demographics per student\n", "has_demographics": true, "has_item_responses": true, "has_selected_answer": false, "has_question_text": "PARTIAL ~30-50% in separate OECD PDFs" }