This package provides simple API data access to PAS and Classic AppServers via the inmydata platform
Project description
OpenEdge Agent SDK
The inmydata OpenEdge agent SDK enables you to build AI agents that can rapidly access data from the PAS and Classic AppServer instances.
Features
- Structured data interface - rapidly build data interfaces for you AI agents
- Calendar assistant - empower your AI agent with detailed knowledge of your financial calendars
Installation
Install the inmydata agent SDK with pip
pip install inmydata-openedge
Documentation
See https://developer.inmydata.com for quickstarts, documentation, and examples.
Usage/Examples
For these examples you will need to set the following environment variables:
- INMYDATA_API_KEY
- INMYDATA_TENANT
- INMYDATA_CALENDAR
Example of retrieving structured data
import os
from dotenv import load_dotenv
from inmydata.StructuredData import (
StructuredDataDriver,
AIDataSimpleFilter,
AIDataFilter,
LogicalOperator,
ConditionOperator,
TopNOption,
ChartType
)
load_dotenv()
driver = StructuredDataDriver(os.environ['INMYDATA_TENANT'])
driver.user = "demo" # Events to display charts will be available to the user specified here
driver.session_id = "test-session" # Session ID passed in the event to display charts. Can optionally be used to only show charts for the current session
# -- Get a json document that details the available schema
# get_schema retrieves metadata about available subjects (datasets), including:
# - Field names and types (dimensions and metrics)
# - AI descriptions for fields
# - Number of available dimensions and metrics per subject
# The optional 'source' parameter helps track where schema requests originate from
schema = driver.get_schema("Readme Documentation")
print(schema)
# Example output:
# {
# "schemaVersion": 1,
# "generatedAt": "2025-11-18T11:24:16Z",
# "source": "Readme Documentation",
# "subjectsCount": 1,
# "subjects": [
# {
# "name": "Inmystore Sales",
# "aiDescription": "This subject (dataset) contains transactional data for a retail organisation...",
# "factFieldTypes": {
# "Customer": {"name": "Customer", "type": "System.String", "aiDescription": null},
# "Date": {"name": "Date", "type": "System.DateTime", "aiDescription": null},
# "Financial Year": {"name": "Financial Year", "type": "System.Int32",
# "aiDescription": "This dimension contains a Year value..."}
# # ... more dimension fields
# },
# "metricFieldTypes": {
# "Cost of Sale": {"name": "Cost of Sale", "type": "System.Decimal",
# "dimensionsUsed": null, "aiDescription": ""},
# "Sales Value": {"name": "Sales Value", "type": "System.Decimal",
# "dimensionsUsed": null, "aiDescription": ""}
# # ... more metric fields
# },
# "numDimensions": 26,
# "numMetrics": 14
# }
# ]
# }
# -- Use get_data_simple when your filter is simple (only equality filters, no bracketing, no ORs, etc.)
# Build our simple filter
filter = []
filter.append(
AIDataSimpleFilter(
"Store", # Field to filter on
"Edinburgh") # Value to filter by
)
# Build a TopN filter to only show the Top 10 Sales People based on Sales Value
TopN = TopNOption("Sales Value", 10) # Field to order by and number of records to return (Positive for TopN, negative for BottomN)
TopNOptions = {}
TopNOptions["Sales Person"] = TopN # Apply the Top N option to the Sales Person field
df = driver.get_data_simple(
"Inmystore Sales", # Name of the subject we want to extract data from
["Sales Person","Sales Value"], # List of fields we want to extract
filter, # Filters to apply
False, # Whether filters are case sensitive
TopNOptions, # Apply the Top 10 Sales People based on Sales Value filter
SummaryRequest, # True if the request is one that should summarize data, false if it should retrieve unsummarized records
System) # The name of the system the subject is in that should be used to get the data
print(df)
# -- Use get_data when your filter more complex (non-equality matches, bracketing, ORs, etc.) --
# Build our filter
filter = []
filter.append(
AIDataFilter(
"Store",
ConditionOperator.Equals, # Condition to use in the filter
LogicalOperator.And, # Logical operator to use in the filter
"Edinburgh", # Value to filter by
0, # Number of brackets before this condition
0, # Number of brackets after this condition
False # Whether the filter is case sensitive
)
)
filter.append(
AIDataFilter(
"Store",
ConditionOperator.Equals, # Condition to use in the filter
LogicalOperator.Or, # Logical operator to use in the filter
"London", # Value to filter by
0, # Number of brackets before this condition
0, # Number of brackets after this condition
False # Whether the filter is case sensitive
)
)
df = driver.get_data(
"Inmystore Sales", # Name of the subject we want to extract data from
["Financial Year","Store","Sales Value"], # List of fields we want to extract
filter, # Filters to apply
{}) # Apply no TopN options
print(df)
Example of retrieving calendar periods
import os
from datetime import date
from dotenv import load_dotenv
from inmydata.CalendarAssistant import CalendarAssistant
load_dotenv()
# Get today's date
today = date.today()
# Initialize the Calendar Assistant with tenant and calendar name
assistant = CalendarAssistant(os.environ['INMYDATA_TENANT'], os.environ['INMYDATA_CALENDAR'])
# Get the current financial year
print("The current financial year is: " + str(assistant.get_financial_year(today)))
# Get the current financial quarter
print("The current financial quarter is: " + str(assistant.get_quarter(today)))
# Get the current financial month
print("The current financial month is: " + str(assistant.get_month(today)))
# Get the current financial week
print("The current financial week is: " + str(assistant.get_week_number(today)))
# Get the current financial periods
print("The current periods are:")
print(assistant.get_financial_periods(today))
# Get the date range for the current financial month
response = assistant.get_calendar_period_date_range(assistant.get_financial_year(today), assistant.get_month(today), CalendarPeriodType.month)
if response is not None:
print("The current financial month date range is: " + response.StartDate.strftime("%A, %B %d, %Y") + " to " + response.EndDate.strftime("%A, %B %d, %Y"))
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file inmydata_openedge-0.0.1.tar.gz.
File metadata
- Download URL: inmydata_openedge-0.0.1.tar.gz
- Upload date:
- Size: 128.0 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.11.6
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
29afe00329cedd96f683bae31f650a0f7b4de9e5af701851a01f968fe5a60ee0
|
|
| MD5 |
e5cd28183d9be443245130c940a4fa37
|
|
| BLAKE2b-256 |
55644209cb802c0a0fcea672f25138186e620daadd92ace1c3ebd84ab8c24aaf
|
File details
Details for the file inmydata_openedge-0.0.1-py3-none-any.whl.
File metadata
- Download URL: inmydata_openedge-0.0.1-py3-none-any.whl
- Upload date:
- Size: 13.4 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.11.6
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
08f9d40b3b2571c79dfbd4254dc982b6258f95582725184e0c2a3c265b273d96
|
|
| MD5 |
32e449fae5c503cc9001ac30f2e98df4
|
|
| BLAKE2b-256 |
f174d5ea2de144acefe737ba81482a284a7b7c8b3f81527728c947d390483d16
|