Dexcent IDS

We are Industrial DataOps Practitioners!
3aV77UGRjo7uB7Sa3maYaE4j6VEsYTVqGdZnQmk0uzqFA6wt2YBVpr3zc4vedS4s.png

Asset Performance Management

Operational Optimization Readiness

Key Performance Indicator(KPI) Alignment

Key Performance Indicator(KPI) Alignment : Effective KPI alignment is essential for organizations seeking to harness the benefits of digital transformation. It provides a roadmap for success, enables organizations to measure progress accurately, facilitates informed decision-making, and ensures that digital initiatives are closely aligned with the overarching business strategies.

Operator-Driven Reliability Readiness Assessment : Effective KPI alignment is essential for organizations seeking to harness the benefits of digital transformation. It provides a roadmap for success, enables organizations to measure progress accurately, facilitates informed decision-making, and ensures that digital initiatives are closely aligned with the overarching business strategy

Condition Based Maintenance Readiness

Condition-based maintenance readiness assessments evaluate the organization's preparedness and capacity to adopt and effectively implement Condition-Based Maintenance (CBM) strategies for its operational technology assets. CBM relies on real-time monitoring and analysis of asset conditions to schedule maintenance activities only when necessary, maximizing asset reliability and minimizing downtime.

Scroll to Top

Table of Content

1. Purpose
1.1. Purpose and Goals
1.2. Why The Industrial DataOps Process Is Needed?
1.3. Industrial DataOps Practitioner Engagement
1.3.1. Oversee An Existing Industrial DataOps Program
1.3.2. High Data Secrecy Organizations
1.3.3. Full Engagement
1.4. Principles
1.4.1. Know Your Data
1.4.2. Curate Your Data
1.4.3. Unify Your Data
1.4.4. Analyze Your Data
1.4.5. Hardware, Software, and People Working Together
1.5. Lifecycle
2. Intention
2.1. Scope
2.2. Assumptions
3. Terminology & References
3.1. Definitions
3.2. Acronyms and Abbreviations
3.3. Industry References, Standards, Regulations and Guidelines
3.4. Site Related References, Standards, Regulations and Guidelines
4. Expectations and Responsibilities
4.1. Roles
4.2. Role Job Description
4.3. Role Assignment
5. Opportunity Identification
5.1. Need Initiated
5.2. Improvement Initiated
6.Discovery
7. Baselining
7.1. Data Rationalization
7.2. Data Justification
7.3. Data Impact
7.4. Data Flow
7.4.1. Data Producer
7.4.2. Data Path
7.4.3. Data Consumer
7.5. Data Good State
7.5.1. Failure Conditions
7.5.2. Warning Conditions
7.5.3. Abnormal Conditions
7.6. Data Processing Team
8. Target Confidence Factors
9. Critical Success Factors
10. Risk Analysis / Mitigation Plan
10.1. Risk Analysis
10.2. Mitigation Plan
11. Technology Selection
11.1. Hardware
11.2. Software
11.3. People
12. Project Execution
12.1. Project Synergy
12.2. Project Synergy
12.3. Resource Acquisition
12.4. Scheduling
12.5. Implementation
12.6. Training
12.7. Maintenance
12.8. Contingency
13. Evaluation Vs Baseline
14. Calibration & Sustainment
14.1. Training
14.2. Maintenance
14.3. Obsolescence
15. Continuous Improvement Process
15.1. Continuous Process Documentation
15.2. Audit
16. Management Of Change (MOC)
16.1. Applicability
16.2. Methodology