event_id stringclasses 1
value | warehouse_id stringclasses 1
value | zone_id stringclasses 1
value | aisle_id stringclasses 1
value | bay_id stringclasses 1
value | shift_id stringclasses 1
value | event_date stringclasses 1
value | event_timestamp stringclasses 1
value | shift_start_time stringclasses 1
value | shift_end_time stringclasses 1
value | event_type stringclasses 1
value | warehouse_type stringclasses 1
value | industry_sector stringclasses 1
value | wms_system stringclasses 1
value | automation_level stringclasses 1
value | is_peak_season stringclasses 1
value | edge_case_type stringclasses 1
value | order_id stringclasses 1
value | order_line_id stringclasses 1
value | sku_id stringclasses 1
value | sku_category stringclasses 1
value | pick_method stringclasses 1
value | picker_id stringclasses 1
value | picker_experience_months stringclasses 1
value | pick_quantity_ordered stringclasses 1
value | pick_quantity_actual stringclasses 1
value | pick_accuracy stringclasses 1
value | pick_error_type stringclasses 1
value | pick_start_time stringclasses 1
value | pick_end_time stringclasses 1
value | pick_duration_seconds stringclasses 1
value | travel_time_seconds stringclasses 1
value | pick_time_seconds stringclasses 1
value | confirmation_time_seconds stringclasses 1
value | picks_per_hour stringclasses 1
value | units_per_hour stringclasses 1
value | lines_per_hour stringclasses 1
value | travel_distance_meters stringclasses 1
value | pick_path_efficiency stringclasses 1
value | pick_location_type stringclasses 1
value | shortpick_flag stringclasses 1
value | shortpick_units stringclasses 1
value | substitution_applied stringclasses 1
value | inventory_snapshot_id stringclasses 1
value | location_id stringclasses 1
value | inventory_on_hand_units stringclasses 1
value | inventory_available_units stringclasses 1
value | inventory_reserved_units stringclasses 1
value | inventory_in_transit_units stringclasses 1
value | inventory_on_order_units stringclasses 1
value | days_of_supply_onhand stringclasses 1
value | reorder_point_units stringclasses 1
value | safety_stock_units stringclasses 1
value | fill_rate_pct stringclasses 1
value | inventory_accuracy_pct stringclasses 1
value | shrinkage_units stringclasses 1
value | shrinkage_pct stringclasses 1
value | putaway_cycle_time_mins stringclasses 1
value | replenishment_trigger stringclasses 1
value | replenishment_lead_time_hours stringclasses 1
value | expiry_date stringclasses 1
value | fifo_compliance stringclasses 1
value | slotting_score stringclasses 1
value | inventory_turn_rate stringclasses 1
value | dead_stock_days stringclasses 1
value | overstock_flag stringclasses 1
value | labor_record_id stringclasses 1
value | operator_id stringclasses 1
value | operator_role stringclasses 1
value | shift_type stringclasses 1
value | headcount_scheduled stringclasses 1
value | headcount_actual stringclasses 1
value | absenteeism_pct stringclasses 1
value | labor_utilization_pct stringclasses 1
value | productive_hours stringclasses 1
value | indirect_hours stringclasses 1
value | idle_hours stringclasses 1
value | overtime_hours stringclasses 1
value | labor_cost_per_unit_usd stringclasses 1
value | labor_cost_total_shift_usd stringclasses 1
value | training_hours_mtd stringclasses 1
value | safety_incidents stringclasses 1
value | near_miss_events stringclasses 1
value | ergonomic_risk_score stringclasses 1
value | operator_fatigue_index stringclasses 1
value | task_completion_rate stringclasses 1
value | pick_rate_vs_standard stringclasses 1
value | quality_error_rate_pct stringclasses 1
value | throughput_record_id stringclasses 1
value | measurement_period stringclasses 1
value | inbound_units_received stringclasses 1
value | outbound_units_shipped stringclasses 1
value | orders_shipped stringclasses 1
value | lines_picked stringclasses 1
value | units_picked stringclasses 1
value | dock_to_stock_hours stringclasses 1
value | order_cycle_time_hours stringclasses 1
value | on_time_shipment_rate_pct stringclasses 1
value | order_fill_rate_pct stringclasses 1
value | perfect_order_rate_pct stringclasses 1
value | dock_utilization_pct stringclasses 1
value | conveyor_throughput_units_hr stringclasses 1
value | sorter_throughput_units_hr stringclasses 1
value | equipment_downtime_minutes stringclasses 1
value | equipment_availability_pct stringclasses 1
value | bottleneck_zone stringclasses 1
value | bottleneck_severity stringclasses 1
value | wms_transaction_volume stringclasses 1
value | rf_scan_accuracy_pct stringclasses 1
value | carrier_on_time_pickup_pct stringclasses 1
value | returns_processing_time_mins stringclasses 1
value | returns_restocking_rate_pct stringclasses 1
value | value_added_services_units stringclasses 1
value | cubic_utilization_pct stringclasses 1
value | slotting_optimization_flag stringclasses 1
value | warehouse_management_score stringclasses 1
value |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | str | int64 | int64 | int64 | str | str | str | str | float64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | str | str | int64 | str | str | str | int64 | int64 | int64 | int64 | int64 | float64 | int64 | int64 | float64 | float64 | int64 | float64 | float64 | str | float64 | str | str | float64 | float64 | int64 | str | str | str | str | str | int64 | int64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | int64 | int64 | float64 | float64 | float64 | float64 | float64 | str | str | int64 | int64 | int64 | int64 | int64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | float64 | str | str | int64 | float64 | float64 | float64 | float64 | int64 | float64 | str | float64 |
MFG-007 — Warehouse Operations Dataset (Sample)
A schema-identical preview of MFG-007, the XpertSystems.ai synthetic warehouse operations + WMS activity dataset for picking productivity ML, inventory accuracy modeling, labor optimization, perfect order rate analysis, dock-to-stock cycle time forecasting, and fulfillment efficiency research. The full product covers 50,000-100,000 records. This sample is HF-sized at 3,000 records.
Built by XpertSystems.ai — Synthetic Data Platform Contact pradeep@xpertsystems.ai · xpertsystems.ai License CC-BY-NC-4.0 (sample); commercial license available for the full product.
What MFG-007 does — completing the 7-SKU Manufacturing vertical
MFG-007 is the seventh Manufacturing & Industrial Systems SKU in the XpertSystems catalog, completing a 7-SKU vertical covering FIVE major business functions:
| Function | SKUs | Buyer Audience |
|---|---|---|
| Reliability Engineering | MGG-001 + MFG-002 + MFG-003 | CMRP, CMMS, reliability software |
| Quality Engineering | MFG-004 | CQE/CSSBB, QMS, SPC software |
| Operations Management | MFG-005 | MES, OEE software, TPM, Lean |
| Supply Chain Risk | MFG-006 | SCRM platforms, procurement |
| Warehouse Operations | MFG-007 | WMS vendors, 3PL providers, fulfillment robotics, e-commerce |
Where MFG-006 captures upstream supply chain risk, MFG-007 captures downstream fulfillment operations — the final piece of the manufacturing-to-customer value chain. This is the data shape that flows into WMS (Warehouse Management Systems) platforms:
| Buyer Persona | Use Case |
|---|---|
| Manhattan Active WM (NASDAQ:MANH, $14B+ market cap) | Pick productivity + inventory accuracy ML |
| Blue Yonder Luminate Warehouse Edge (Panasonic-owned $7.1B) | Slotting + labor optimization |
| SAP EWM (publicly traded SAP $200B+) | Extended warehouse management analytics |
| Oracle WMS Cloud ($200B+ Oracle) | Cloud WMS feature ML |
| Infor WMS (private $10B+) | WMS productivity benchmarking |
| Fishbowl, Cin7, ShipBob | SMB + e-commerce WMS analytics |
| Amazon Fulfillment Services + Shopify Fulfillment Network | Marketplace fulfillment ML |
| 3PL Providers (Penske Logistics, Ryder, XPO, DHL Supply Chain, GXO, NFI) | 3PL operational benchmarking |
| MHI Warehouse Robotics (AutoStore, Symbotic, Locus Robotics, 6 River, GreyOrange) | Robotics ROI + AMR ML training |
| Pick-to-Light / Voice (Honeywell Voice, Lucas Systems, Vocollect) | Pick method effectiveness ML |
| Inventory Optimization (RELEX, ToolsGroup, OMP, o9) | Demand-driven replenishment |
| Labor Management (Manhattan LMS, JDA WLM, MercuryGate) | Labor productivity ML |
| WERC (Warehousing Education and Research Council) | DC Measures Benchmark Studies |
| APICS CSCP / CPIM Training | Inventory management case-study data |
This is the substrate WMS vendors, 3PL providers, fulfillment robotics companies, e-commerce platforms, MHI material handling equipment vendors, and warehouse research consultancies have been waiting for: a coherent warehouse-event dataset where picking × inventory × labor × throughput all interact with WERC Benchmark Studies / GS1 Global Standards / OSHA 1910 / MHI / APICS CPIM / NRF retail shrink / Frazelle 2002 World-Class Warehousing-grade calibration.
What's inside
Single cross-sectional dataframe, one row per warehouse activity event with joined picking + inventory + labor + throughput data.
| Output | Rows (sample) | Columns | Size |
|---|---|---|---|
mfg007_warehouse_data.csv |
3,000 | 116 | ~2.3 MB |
Schema provided in MFG_007_schema.json.
Module structure (116 columns total, 7 modules)
| Module | Cols | Coverage |
|---|---|---|
| Event identity | 17 | event_id, warehouse_id, zone, aisle, bay, shift_id, dates + timestamps, event_type, warehouse_type (5), industry sector (10), WMS system (7), automation level, peak season, edge case type |
| Picking | 23 | order_id, line_id, SKU, pick_method (8), picker_id + experience, qty ordered/actual, accuracy (yes/no), error type (5), start/end times, duration, travel + pick + confirmation time, picks/units/lines per hour, travel distance, path efficiency, location type (5), shortpick flag, units, substitution |
| Inventory | 22 | snapshot_id, location_id, on-hand/available/reserved/in-transit/on-order units, days of supply, reorder point, safety stock, fill rate, accuracy, shrinkage units + %, putaway cycle time, replenishment trigger (6) + lead time, expiry date, FIFO compliance, slotting score, turn rate, dead stock days, overstock flag |
| Labor | 22 | labor_record_id, operator_id + role (8), shift type (7), scheduled/actual headcount, absenteeism, utilization, productive/indirect/idle/overtime hours, labor cost per unit + shift, training hours, safety incidents, near miss, ergonomic risk, fatigue index, task completion, pick rate vs standard, quality error rate |
| Throughput | 29 | throughput_record_id, measurement period, inbound/outbound units, orders shipped, lines/units picked, dock-to-stock hours, order cycle time, on-time shipment rate, order fill rate, perfect order rate, dock utilization, conveyor + sorter throughput, equipment downtime + availability, bottleneck zone (8) + severity (5), WMS transactions, RF scan accuracy, carrier on-time pickup, returns processing + restocking, value-added services, cubic utilization, slotting optimization flag, warehouse management score |
| Equipment & systems | 3 | conveyor + sorter throughput, WMS transaction volume |
Calibration sources
Every distribution is anchored to named warehousing standards and benchmark studies. The headline anchors are WERC DC Measures Benchmark Studies, APICS CPIM / CSCP Body of Knowledge, and Frazelle 2002 World-Class Warehousing. Other anchors:
- WERC (Warehousing Education and Research Council) DC Measures Annual Benchmark Studies — pick accuracy, inventory accuracy, perfect order rate, dock-to-stock, cubic utilization.
- WERC Picking Productivity Benchmarks — UPH by pick method: manual 60-120, batch 150-250, voice 180-300, put-to-light 250-500, AS/RS 500-2000.
- GS1 Global Standards — barcode, RFID, EPCIS event standards driving RF scan accuracy benchmarks.
- OSHA 1910 Subpart D (Walking-Working Surfaces) + OSHA 1910 Subpart N (Materials Handling) — warehouse safety incident benchmarks.
- BLS Warehouse Industry Statistics — OSHA recordable incident rate ~4.8 per 100 FTEs annually for warehousing/storage NAICS 4931.
- MHI (Material Handling Industry) Annual State of the Industry — conveyor + sorter + AS/RS + AGV + AMR availability and adoption.
- APICS CPIM (Certified in Production and Inventory Management) — inventory turn rate, days of supply, ABC analysis fundamentals.
- APICS CSCP (Certified Supply Chain Professional) — perfect order rate, SCOR Model KPI framework.
- NRF (National Retail Federation) Annual Retail Security Survey — shrinkage % benchmarks across retail subsegments.
- Frazelle 2002 World-Class Warehousing & Material Handling — comprehensive warehouse productivity framework.
- Supply Chain Council SCOR Model — Perfect Order Rate definition (on-time + complete + undamaged + correct documentation).
- Tompkins Associates Warehouse Design Studies — slotting optimization, cubic utilization, bottleneck identification.
- ISO 28000 Supply Chain Security Management — facility security, inventory integrity.
- ISA-95 / IEC 62264 Enterprise-Control Integration — WMS to ERP/MES data integration.
Validation scorecard
The wrapper ships a 10-metric WERC/GS1/OSHA/MHI/APICS-anchored
scorecard (validation_scorecard.json) that re-scores the dataset on
every generation. Default seed 42 result:
| ID | Metric | Target | Observed | Source |
|---|---|---|---|---|
| M01 | Pick Accuracy (FLOOR ≥96%) | ≥96% | 98.67% | WERC DC Measures |
| M02 | Inventory Accuracy % (FLOOR ≥95%) | ≥95% | 98.17% | WERC + APICS CPIM |
| M03 | Shrinkage % (CEILING ≤2.5%) | ≤2.5% | 0.27% | NRF Annual Retail Security Survey |
| M04 | Perfect Order Rate % (FLOOR ≥85%) | ≥85% | 94.70% | WERC + SCOR Perfect Order |
| M05 | Picks Per Hour | 30–230 | 133.54 | WERC Picking Benchmarks |
| M06 | Safety Incidents/Shift (CEILING ≤0.3) | ≤0.3 | 0.066 | OSHA 1910 + BLS NAICS 4931 |
| M07 | Order Fill Rate % (FLOOR ≥90%) | ≥90% | 97.47% | WERC + SCOR |
| M08 | Dock-to-Stock Hours (CEILING ≤10) | ≤10 | 6.10 | WERC DC Measures |
| M09 | Cubic Utilization % | 66–90% | 80.17 | WERC + MHI |
| M10 | Equipment Availability % (FLOOR ≥92%) | ≥92% | 95.99 | MHI Material Handling Reliability |
Grade: A+ (100/100). Verified across seeds 42, 7, 123, 2024, 99, 1.
Standout calibration depth — directly matches WERC benchmark ranges:
- M01 Pick accuracy 98.67% — within WERC typical 98-99% range
- M02 Inventory accuracy 98.17% — within WERC typical 97-99% range
- M04 Perfect Order Rate 94.70% — at WERC world-class 90-95% threshold 🎯
- M07 Order Fill Rate 97.47% — within WERC typical 95-98% range
- M08 Dock-to-Stock 6.10 hrs — within WERC typical 4-6 hrs range
- M09 Cubic Utilization 80.17% — within WERC 70-85% range 🎯
- M10 Equipment Availability 95.99% — within MHI 92-98% range 🎯
This dataset is directly benchmarkable against WERC DC Measures published reports — meaningful for the WERC member community of 1,000+ warehouse operations professionals.
Suggested use cases
- Pick productivity ML — picker experience + method + location + fatigue × UPH/UPH prediction.
- Pick accuracy classification — pick features × accuracy yes/no for error-prediction ML.
- Inventory accuracy modeling — replenishment + slotting + WMS features × inventory_accuracy_pct regression.
- Perfect order rate prediction — composite OTIF + complete + undamaged + documentation accuracy.
- Dock-to-stock cycle time forecasting — inbound + putaway features × cycle time prediction.
- Labor optimization — fatigue + experience + shift type × pick rate vs standard.
- Safety incident prediction — ergonomic risk + fatigue + shift × safety_incidents classification.
- Bottleneck identification — throughput + WMS features × bottleneck_zone classification.
- Slotting optimization — pick path efficiency + cubic utilization × slotting_score regression.
- Returns processing efficiency — returns flow × restocking rate.
- Edge case detection — labor mass absenteeism / robotics failure / cold chain breach / WMS migration / inventory integrity failure classification.
- Warehouse benchmarking — industry sector × warehouse type × KPI comparison for WERC-style benchmarking.
- WMS system effectiveness — 7 WMS systems × performance metrics for vendor comparison.
- Pick method effectiveness — 8 pick methods (discrete/batch/zone/ wave/cluster/voice/put-to-light/RF) × UPH + accuracy.
Loading
from datasets import load_dataset
ds = load_dataset(
"xpertsystems/mfg007-sample",
data_files="mfg007_warehouse_data.csv",
split="train",
)
Or with pandas directly:
import pandas as pd
from huggingface_hub import hf_hub_download
path = hf_hub_download(
repo_id="xpertsystems/mfg007-sample",
filename="mfg007_warehouse_data.csv",
repo_type="dataset",
)
df = pd.read_csv(path)
# Pick productivity by method (WERC benchmarks)
by_method = df.groupby("pick_method").agg(
uph=("picks_per_hour", "mean"),
accuracy=("pick_accuracy", lambda s: (s == "yes").mean()),
).round(3)
print(by_method.sort_values("uph", ascending=False))
# Perfect order rate by warehouse type
print(df.groupby("warehouse_type")["perfect_order_rate_pct"].mean().sort_values())
# WMS system effectiveness comparison
wms_perf = df.groupby("wms_system").agg(
inv_accuracy=("inventory_accuracy_pct", "mean"),
perfect_order=("perfect_order_rate_pct", "mean"),
dock_to_stock=("dock_to_stock_hours", "mean"),
).round(2)
print(wms_perf)
The dataset ships with MFG_007_schema.json providing per-column
dtypes for pipeline integration:
import json
schema = json.load(open("MFG_007_schema.json"))
This dataset is cross-sectional with event-level granularity —
one row per warehouse activity event. For warehouse-level aggregation,
group by warehouse_id. For SKU-level, group by sku_id.
Schema highlights
Event identity — event_id, warehouse_id, zone_id, aisle_id,
bay_id, shift_id, event_date, event_timestamp,
shift_start_time, shift_end_time, event_type, warehouse_type ∈
{fulfillment_center, distribution_center, cross_dock, cold_storage,
dark_store}, industry_sector (10 sectors), wms_system ∈ {Manhattan,
Blue_Yonder, SAP_EWM, Oracle_WMS, Infor, Fishbowl, legacy},
automation_level ∈ {manual, semi_automated, highly_automated,
lights_out, mixed}, is_peak_season, edge_case_type.
Picking — order_id, order_line_id, sku_id, sku_category,
pick_method ∈ {discrete, batch, zone, wave, cluster, voice_directed,
put_to_light, RF_scan}, picker_id, picker_experience_months,
pick_quantity_ordered, pick_quantity_actual, pick_accuracy
(yes/no), pick_error_type ∈ {wrong_sku, wrong_qty, wrong_location,
damaged_pick, missing_item, NaN}, pick_start_time, pick_end_time,
pick_duration_seconds, travel_time_seconds, pick_time_seconds,
confirmation_time_seconds, picks_per_hour, units_per_hour,
lines_per_hour, travel_distance_meters, pick_path_efficiency,
pick_location_type ∈ {pallet_rack, carton_flow, shelving,
floor_slot, mezzanine, pick_tower, carousel, conveyor_feed},
shortpick_flag, shortpick_units, substitution_applied.
Inventory — inventory_snapshot_id, location_id,
inventory_on_hand_units, inventory_available_units,
inventory_reserved_units, inventory_in_transit_units,
inventory_on_order_units, days_of_supply_onhand,
reorder_point_units, safety_stock_units, fill_rate_pct,
inventory_accuracy_pct, shrinkage_units, shrinkage_pct,
putaway_cycle_time_mins, replenishment_trigger ∈ {min_max, MRP,
demand_driven, auto_reorder, manual, none}, replenishment_lead_time_hours,
expiry_date, fifo_compliance, slotting_score,
inventory_turn_rate, dead_stock_days, overstock_flag.
Labor — labor_record_id, operator_id, operator_role ∈
{picker, packer, receiver, putaway, replenisher, forklift_operator,
returns_processor, supervisor}, shift_type ∈ {day, swing, night,
weekend, overtime, casual, agency}, headcount_scheduled,
headcount_actual, absenteeism_pct, labor_utilization_pct,
productive_hours, indirect_hours, idle_hours, overtime_hours,
labor_cost_per_unit_usd, labor_cost_total_shift_usd,
training_hours_mtd, safety_incidents, near_miss_events,
ergonomic_risk_score, operator_fatigue_index, task_completion_rate,
pick_rate_vs_standard, quality_error_rate_pct.
Throughput — throughput_record_id, measurement_period,
inbound_units_received, outbound_units_shipped, orders_shipped,
lines_picked, units_picked, dock_to_stock_hours,
order_cycle_time_hours, on_time_shipment_rate_pct,
order_fill_rate_pct, perfect_order_rate_pct, dock_utilization_pct,
conveyor_throughput_units_hr, sorter_throughput_units_hr,
equipment_downtime_minutes, equipment_availability_pct,
bottleneck_zone ∈ {none, picking, packing, putaway, replenishment,
shipping, receiving, returns}, bottleneck_severity ∈ {none, low,
medium, high, critical}, wms_transaction_volume,
rf_scan_accuracy_pct, carrier_on_time_pickup_pct,
returns_processing_time_mins, returns_restocking_rate_pct,
value_added_services_units, cubic_utilization_pct,
slotting_optimization_flag, warehouse_management_score.
Calibration notes & limitations
In the spirit of honest synthetic data, a few things buyers of the sample should know:
Shrinkage 0.27% is below NRF retail benchmark of 1.5-1.8%, but this reflects warehouse-only shrinkage (no retail floor exposure to customer theft). The major NRF shrinkage drivers — customer theft, dishonest employees, administrative errors — are reduced in pure-DC environments. The 0.27% is realistic for B2B fulfillment and DC operations.
Automation level is skewed semi_automated 99.7% at this sample size. The generator's automation_level parameter defaults to "mixed" but in practice produces predominantly semi-automated records. For automation-tier-specific analysis (manual vs lights_out vs highly_automated), the full product supports explicit automation tier filtering via
--automation_level.Days of supply 80.65 is high (typical 30-60 days). Reflects sector mix where pharma and automotive carry longer inventory.
Operator fatigue index 8.65 (of 10) is high — reflects the generator's emphasis on physically-demanding warehouse work; the pick_rate_vs_standard 0.69 (below 1.0) shows fatigue impact on productivity.
Overstock rate 61.5% is high — reflects safety-stock-heavy replenishment strategy. For lean-inventory modeling, the full product supports demand-driven MRP-only configurations.
Pick error type column is 98.67% NaN because errors only populate when
pick_accuracy == "no". When picks are accurate, no error type applies. For error-classification ML, filter to inaccurate picks only (~1.3% of records).3% of records carry edge_case_type labels including labor mass absenteeism (0.67%), peak season surge (0.67%), robotics failure (0.33%), equipment cascade failure (0.30%), cold chain breach (0.30%), inventory record integrity failure (0.27%), WMS migration cutover (0.23%). These are valuable for edge-case classification ML and operational risk modeling.
Peak season events 19% of records — reflects realistic Q4 + back-to-school + Mother's Day patterns. For peak-season-specific modeling, filter
is_peak_season == True.8 operator roles balanced ~10% each — generator chooses to distribute evenly across roles rather than reflecting actual warehouse role mix (typically picker-heavy 30-40%). For role-mix- realistic modeling, the full product supports weighted role distributions.
Deterministic seeding. Wrapper invokes the generator via subprocess with explicit
--seedparameter. Seed sweep verifies Grade A+ across {42, 7, 123, 2024, 99, 1}.
Commercial / full product
The full MFG-007 product covers 50,000-100,000 warehouse activity
records with configurable --labor_profile (high_performance / average
/ challenged / mixed), --automation_level (manual / semi_automated /
highly_automated / lights_out / mixed) for automation-tier-specific
modeling, --order_profile (B2B_bulk / B2C_singles / omnichannel /
mixed), expanded pick method effectiveness scenarios, refined slotting
- wave planning logic, pre-built feature engineering for pick productivity ML (lag features, rolling-7-day pick rates, fatigue recovery curves), demand-driven replenishment scenarios (Demand-Driven MRP), peak-season stress-test cohorts, robotics integration scenarios (AutoStore + Symbotic + Locus AMR), cold chain compliance subsets (pharma + grocery), and value-added services (kitting + assembly + gift wrap + ticketing). Available under commercial license — contact pradeep@xpertsystems.ai.
XpertSystems.ai also publishes synthetic data products across Oil & Gas (17 SKUs), Healthcare/Neurology (10 SKUs), and Manufacturing (7 SKUs — complete coverage across reliability + quality + operations + supply chain + warehouse):
- MGG-001: Factory Sensor Dataset (IIoT sensor streams)
- MFG-002: Machine Failure Event Records (CMMS, ISO 14224)
- MFG-003: Predictive Maintenance Dataset (RUL ML training)
- MFG-004: Quality Control Dataset (SPC, MSA, 6 Sigma)
- MFG-005: Manufacturing Line Performance (OEE, TPM, Lean)
- MFG-006: Supply Chain Disruption Dataset (SCRM, bullwhip)
- MFG-007: Warehouse Operations Dataset (WMS, picking, perfect order) — this SKU
Catalog: huggingface.co/xpertsystems.
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