HubPublic
PackagePublished package

@pasar6987/sf-manufacturing-account-forecast

Demand forecasting at the account and product level with period metrics and manual adjustments.

Published package · Latest published 1.0.1 Mar 4, 2026 · 5 datasets / 32 measures in the latest review · Updated Mar 11, 2026

Release path

1.0.1Published Mar 4, 2026

Publisher

@pasar6987Published Mar 4, 2026

Structure snapshot

5 datasets32 measures · 92 dimensions

Semantic Graph

Relationship counts appear after the graph loads.

Loading graph

Package graph is loading

Package relationships will appear when the summary is ready.

Reference context

Secondary package facts stay compact

Updated
Mar 11, 2026
Visibility
Public hub listing
License
MIT
Created
Mar 4, 2026

Reference facts

Secondary package facts after the usage path is clear

Licensing, categorization, ownership, and linked metadata stay below the runnable path so the page reads in the right order.

Format

OSI

Upstream

developer.salesforce.com/docs/atlas.en-us.object_reference.meta/object_reference

Repository

Not linked

Owner

@pasar6987

Organization

Independent

License

MIT

Visibility

Public hub listing

Publisher

@pasar6987Published Mar 4, 2026

Latest published version

1.0.1Published Mar 4, 2026

Tags

salesforcecrmmanufacturingaccount-forecast

Schema preview

Schema 0.1.1

SDK handoff

Use this package in code and AI

After structure review, move straight into typed reads with load() or compact LLM context with to_prompt().

Python SDK

Python example for @pasar6987/sf-manufacturing-account-forecast

This example uses the current package ref and, when preview data is available, fills in real dataset names from the published summary.

import rawctx

model = rawctx.load("@pasar6987/sf-manufacturing-account-forecast")
prompt = rawctx.to_prompt(
    "@pasar6987/sf-manufacturing-account-forecast",
    datasets=["AccountForecast", "AccountForecastAdjustment"],
    max_tokens=2000,
)

print(model.datasets)        # ["AccountForecast", "AccountForecastAdjustment", "AccountForecastPeriodMetric"]
print(model.measures)        # [Measure(name="AccountForecast.DefaultAccountGrowthPercentage", ...), Measure(name="AccountForecast.DefaultMarketGrowthPercentage", ...), Measure(name="AccountForecast.TotalAdjustedRevenue", ...)]
print(model.dimensions)      # [Dimension(name="AccountId", ...), Dimension(name="EndDate", ...), Dimension(name="LastCalculatedDate", ...)]
print(model.relationships)   # [Relationship(name='...', ...)]
print(prompt)

README

Package narrative and examples

Use documentation after the package clears provenance, ownership, and runnable-path checks.

@pasar6987/sf-manufacturing-account-forecast

Demand forecasting at the account and product level with period metrics and manual adjustments.

Overview

Count
Objects (Datasets)5
Dimensions92
Measures32
Relationships5

Objects

  • AccountForecast — Represents the rolling forecast record of a particular account. The forecast is prepared using data directly from sales agreements, orders, and opportunities.
  • AccountForecastAdjustment — Represents the manual adjustments made to forecast values for a particular account.
  • AccountForecastPeriodMetric — Represents records of account metrics which vary by period but are not specific for a product.
  • AccountProductForecast — Represents the cumulative values for planned quantities, opportunities, and orders of a sales agreement for a given product across all periods in that rolling time period.
  • AccountProductPeriodForecast — Represents the quantity and revenue information of opportunities, sales agreements, orders, and resultant forecasted quantities for a product in a particular time period of the forecast rolling period. Other than the fields AdjustedForecastQuantity and AdjustedForecastRevenue, no other fields of this object can be updated.

Install

rawctx snapshot-download @pasar6987/sf-manufacturing-account-forecast

Structure review

Inspect package structure after the usage path is clear

Use the structural review when you need the package footprint, field counts, and model paths before a deeper explorer pass.

Models1
datasets5
measures32
dimensions92
relationships5
AI context1
models/sf-manufacturing-account-forecast.osi.yamlAI context included
5 datasets32 measures92 dimensions5 relationships