Index, with base 2015 = 100
0 views·0 downloads
The Industrial Production Index (IPI) in Malaysia measures the rate of change in production of industrial commodities in the Mining, Manufacturing, and Electricity sectors in real terms over time.
The IPI is a base year-weighted arithmetic average of quantity relatives calculated using the Laspeyres formula, with the base year of 1968 (1968=100) being the first year of its construction. The IPI pertains to Malaysia, with the exception of the base years 1968 and 1981, which pertain to Peninsular Malaysia. Data for December 2022 is provisional; it will be updated and subsequently published in the January 2023 publication.
Index of Industrial Production, June 2023, the latest edition of the monthly industrial production statistics published by DOSM. OpenDOSM also features a dashboard on industrial production.
The Industrial Production Index (IPI) publication is a monthly publication which covers three main sectors namely Mining, Manufacturing and Electricity which in line with the industrial definition in the International Recommendations for the Index of Industrial Production (IRIIP), 2010.
08 Aug 2023, 12:00
11 Sept 2023, 12:00
This data is made open under the Creative Commons Attribution 4.0 International License (CC BY 4.0). A human-readable copy of the license is available Here.
Image (PNG)
Suitable for general digital use.
0
Vector Graphic (SVG)
Suitable for high quality prints or further image editing.
0
Full Dataset (CSV)
Recommended for individuals seeking an Excel-friendly format.
0
Full Dataset (Parquet)
Recommended for data scientists seeking to work with data via code.
0
Connect directly to the data with Python.
# If not already installed, do: pip install pandas fastparquet
import pandas as pd
URL_DATA = 'https://storage.dosm.gov.my/ipi/ipi.parquet'
df = pd.read_parquet(URL_DATA)
if 'date' in df.columns: df['date'] = pd.to_datetime(df['date'])
print(df)
import requests
import pprint
url = "https://api.data.gov.my/data-catalogue?id=ipi&limit=3"
response_json = requests.get(url=url).json()
pprint.pprint(response_json)
© 2023 Public Sector Open Data