Power analytics with trusted production data.

SepaIQ is a manufacturing analytics platform that organizes MES and production data so teams can analyze performance, predict losses, and scale analytics with confidence.

MES Data PLATFORM FOR MANUFACTURING ANALYTICS

Barriers to Trusted Analytics

AI is on everyone’s roadmap, but many manufacturers still struggle to get consistent numbers from the data they already have. SepaIQ helps you clear the barriers first, so analytics become reliable and AI has trustworthy inputs to learn from.

Scattered Data

Data lives in separate systems. Every project requires custom clean-up work before any real progress can begin.

With SepaIQ

Missing Context

Raw data is not connected to the MES context that gives it meaning. Teams can see what happened, but not why.

With SepaIQ

Data You Can’t Trust

Metrics and KPIs do not match across systems, and teams cannot rely on the numbers.

With SepaIQ

what You can do with SepaIQ

Each manufacturer starts with a different goal. SepaIQ supports a wide range of use cases, from improved OEE analysis to machine learning–driven quality, reliability, and optimization.

Predict loss before It happens

Predict Quality Drift and Reduce Scrap

Standardize Enterprise Analytics

ARCHITECTURE

How SepaIQ fits into your manufacturing stack

SepaIQ acts as the layer between production systems and downstream analytics and AI. It organizes and contextualizes production data so metrics stay consistent and dependable.

Production Sources

Ingest data from wherever it lives, including control, execution, and business systems.

ERP
Inventory
Quality
MES
SCADA
Plant Floor

Structure and contextualize production data in one managed layer, so every downstream system runs on the same logic.

Trusted Analytics and AI

Deliver model-ready data to the tools teams already use, for consistent results across systems and sites.

AI
BI
Data Lake
Data Warehouse

SepaIQ modules for analytics, connectivity, and AI

SepaIQ modules are designed to scale with your use cases. Start with Advanced Analytics, then layer in Enterprise, Connectors, LLM, and Machine Learning modules as requirements evolve.

Advanced Analytics Module

Central analytics layer where data is shaped, calculations run, and all customized analysis is made possible.

Enterprise Module

Designed for growing teams that need structured access, reliable change tracking, and controlled deployments.

Incoming Connector Module

Ingest event-driven data from external systems using Kafka, MQTT, and other protocols.

Outgoing Connector Module

Deliver SepaIQ results and event data to external systems using Kafka and Azure event services.

Machine Learning Module

Build, train, and run machine learning models using clean, contextualized production data.

LLM Module

Make production data easier to use with a chat-style interface for questions and summaries.

Built on Trusted Data, Ready for AI

When your data is consistent and contextualized, you can move beyond reporting. SepaIQ helps teams predict production loss and quality issues, surface trends in operator notes, and explore results through a natural-language chat experience.

CORE CAPABILITIES

Built for the Reality of Manufacturing Data

Handle the scale, complexity, and constant changes of plant-floor information with confidence.

High-Performance Analytics

Critical systems like HMI, SCADA, and MES can push production servers to their limits. SepaIQ offloads analytics to a server cluster, distributing workloads without overburdening production systems.​

Post-Production Updates

Manufacturing data is never static. Downtime reasons get corrected, lab results arrive later, and records evolve. SepaIQ saves changes only when values change and keeps related data in sync.

Data Contextualization

SepaIQ links raw events to production context, like equipment, materials, batches, and people. That turns “what happened” into “why it happened,” so analytics and AI results are more reliable.

Real-Time Plant Floor Updates

SepalQ analyzes data, performs predictions, and delivers valuable insights back to the people who can act on them in real time. Teams can respond faster to quality risks, downtime drivers, and emerging issues.

RESOURCES

See It In Action

Watch the platform in action, explore our modular licensing, or dive deeper into data architecture strategies.

Watch the Demo

Watch our SepaIQ webinar to see real-time analytics and AI-driven insights in action.

Pricing & Licensing

Explore our flexible pricing. Mix and match the specific modules and server scale that fit your project.

MES Context & UNS

Learn how incorporating MES context unlocks the true value of your Unified Namespace.

SepaIQ Module Features

A quick reference for module selection and architecture planning.

SepaIQ Platform

Required with every SepaIQ module purchase.

The foundation of the SepaIQ ecosystem. Collect production data and structure it with simple grouping and calculations to prepare it for advanced analytics and AI.

FEATURE
dESCRIPTION

BUILT-IN AGGREGATION CALCULATORS

Use simple built-in functions such as sum, average, minimum, maximum, and count to create basic summaries of your production data.

Includes up to 20 custom data groups, with up to 20 items per group.

LIMITED CUSTOM DATA GROUPS

Define a limited set of data groups to organize production information according to your equipment, products, and processes.

REST API INTERFACE

Enable full bi-directional interaction with SepalQ. Beyond simple data ingestion, external systems can subscribe to analytics requests, modify historical records, and query the LLM directly.

Native Ignition integration coming soon in 2026.

IGNITION INTEGRATION

Bring real-time production data from Ignition into SepaIQ through scripting or REST API so analytics and machine learning models can use the information already collected in your Ignition projects.

Native Sepasoft integration coming soon in 2026.

SEPASOFT MES INTEGRATION

Use the high-quality Batch, OEE, and SPC data from your Sepasoft MES system as the foundation for analytics in SepaIQ, connecting through scripting or REST API.

ACCESS MANAGEMENT

Control how users access and interact with SepaIQ using user-level permissions and OpenID-based authentication, ensuring secure sign-in and appropriate read, request, and edit access based on user responsibilities.

Advanced Analytics Module

Unlock high-performance analytics with custom calculations, unlimited flexible data groups, reusable templates, and external database connections.

FEATURE
dESCRIPTION

CUSTOM CALCULATIONS

Build custom metrics with drag-and-drop tools and basic JavaScript to calculate cycle efficiency, quality ratios, material usage, or any plant-specific KPIs tailored to your operations.

SPC AND OEE BUILT-IN CALCULATORS

Use pre-defined SPC and OEE calculations to evaluate performance, losses, and variability using consistent, industry-standard metrics.

Limited by server performance and available system resources

UNLIMITED CUSTOM DATA GROUPS

Define unlimited logical groups of production data aligned to your equipment, products, and processes. Organize data using ISA-95 structures, UNS conventions, or custom hierarchies that fit your operations.

USER TEMPLATES

Save common data group designs or analysis setups as templates so teams can reuse proven configurations across lines, products, and sites.

Supported databases: MySQL, SQL Server, MariaDB, PostgreSQL, Redshift

READ-ONLY DATA GROUPS

Include external data from ERP, quality, historian systems, and databases as read-only inputs so production, quality, and business data can be analyzed together.

Supported databases: MySQL, SQL Server, MariaDB, PostgreSQL, Redshift

EXTERNAL DATABASE PUBLISHING

Send analysis results or contextualized data from SepaIQ to external SQL databases so downstream systems and BI tools can use clean, structured information.

Enterprise Module

Scale securely across sites and teams with project-based access, CI/CD-ready deployment management, and robust change tracking.

FEATURE
dESCRIPTION

PROJECT-BASED ACCESS CONTROL

Assign users to specific workspaces so they only see the data groups associated with that project. Analytics and LLM responses stay limited to the data each person is authorized to access.

PROJECT-BASED RESOURCES

Assign data groups, models, connectors, and templates to specific workspaces so each project has its own clear set of resources. This keeps analysis, data flows, and configurations organized and separated across projects or sites.

CI/CD SUPPORT

Manage configuration changes across development, test, and production environments using repositories (e.g., Git) for secure, versioned deployment workflows.

PROCESS DATA CHANGE LOG

Record every change made to process data so teams can review what changed, who changed it, and when. This keeps historical analysis accurate and trustworthy.

Incoming Connector Module

Stream MES, quality, maintenance, and external production data into SepaIQ using Kafka, MQTT, and other event-driven protocols.

FEATURE
dESCRIPTION

SPARKPLUG CONNECTOR

Subscribe to Sparkplug MQTT topics so SepaIQ can consume structured, stateful messages from SCADA and edge devices.

KAFKA CONNECTOR

Ingest high-throughput event streams from Kafka topics so large volumes of time-series data arrive in SepaIQ with minimal latency.

MQTT V3 CONNECTOR

Consume MQTT v3 topics from brokers such as a Unified Namespace so sensor and MES events stream directly into SepaIQ.

MQTT V5 CONNECTOR

Use MQTT v5 features such as shared subscriptions and user properties when subscribing to event streams that need richer metadata.

Outgoing Connector Module

Send contextualized production data and analytics results to external systems through supported event-driven connectors, enabling real-time integration with BI, AI, and cloud platforms.

FEATURE
dESCRIPTION

KAFKA CONNECTOR

Publish high-throughput event streams from SepaIQ to Kafka topics so data lakes, pipelines, and enterprise systems can consume analytics-ready information with minimal latency.

AZURE EVENT GRID CONNECTOR

Push SepaIQ updates into Azure Event Grid so cloud services, serverless functions, and business applications can react to production events in real time.

AZURE IOT HUB CONNECTOR

Push SepaIQ data into Azure IoT Hub so cloud services, analytics pipelines, and downstream applications can consume structured production data from a centralized IoT messaging platform.

Machine Learning Module

Build and run predictive models that look for patterns in production data to flag early signs of downtime, losses, quality risks, and process deviations before they affect performance.

FEATURE
dESCRIPTION

BUILT-IN PREDICTION MODELS

Use built-in ML models to predict losses, failures, and quality issues without needing to design algorithms from scratch.

MODEL TUNING & TRAINING

Evaluate how a model performs on real production data using clear training results and scoring metrics. Fine-tune and retrain the model to improve accuracy and confidence before relying on predictions in operational decisions.

SEAMLESS INTEGRATION WITH ANALYSIS

Run prediction models directly within analysis to keep results tied to the same data, filters, and calculations teams already trust. This makes predictions easier to validate, compare, and use without switching tools or reworking data.

SENTIMENT ANALYSIS

Analyze operator comments, log entries, or other textual fields to uncover trends, concerns, or early warnings that support predictive quality and maintenance.

LLM Module

Integrate with large language models, enabling teams to ask plain-language questions and quickly get accurate, data-backed explanations of production events, issues, and trends.

FEATURE
dESCRIPTION

GENERATIVE AI & LLM INTEGRATION

Leverage SepaIQ’s native LLM-ready data model to enable conversational analytics without building custom pipelines, prompts, or data-preparation workflows.

CONVERSATIONAL ANALYTICS

Let teams explore production data using natural language instead of queries, scripts, or dashboards.

SECURE LLM ACCESS

SepaIQ acts as the intermediary between your production data and the LLM. Sensitive data stays inside your environment, and only authorized information is sent to or used by the model.

LLM REQUEST REVIEW & VALIDATION

Insert a scripting layer between the LLM and SepaIQ analysis to review and adjust requests before they run. This allows teams to enforce rules, standardize formats, and keep LLM-driven analysis aligned with approved analytics behavior.

LLM ACCESS CONTROL

Define which analysis parameters the LLM can reference or modify when running analysis. This helps limit access to sensitive properties, prevent misleading queries, and keep AI-generated results consistent with approved reporting and analysis practices.

MULTI-LINGUAL SUPPORT

Ensure consistent decision-making across multi-national facilities by enabling users to interact with the same underlying data model using their local language.

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