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Data Integration Observability Architect

Job in Dallas, Dallas County, Texas, 75215, USA
Listing for: W3Global
Full Time position
Listed on 2026-05-21
Job specializations:
  • IT/Tech
    Data Engineer, Data Security, Cloud Computing, Systems Engineer
Job Description & How to Apply Below

Job Title:
Data / Batch / Integration Observability Architect

Locations:
Dallas, Texas, Remote

Minimum Experience:

Above 15

Skill Set:
Enterprise Observability Architecture, Open Telemetry framework design, APM & Cloud monitoring platforms expertise, ITSM integration & event correlation, AIOps & anomaly detection, Kubernetes & microservices monitoring, Alert optimization & noise reduction, SLI/SLO framework definition, Integration architecture & governance standards, traces),Integration architecture & governance standards

Job Description

Data / Batch / Integration Observability Architect

Experience &

Purpose:

Minimum 15+ years of experience in the data domain, with strong expertise in defining and implementing monitoring and observability frameworks for enterprise-scale data ecosystems. Responsible for establishing a scalable data observability strategy across pipelines, batch workloads, databases, and integration layers to ensure end-to-end visibility, reliability, operational resilience, and business-impact awareness.

Key Responsibilities

Assess observability across:

Batch jobs, schedulers, ETL/ELT pipelines, and data platforms

Database monitoring, performance, and query behavior

Integration and middleware workflows across systems

Evaluation:

Pipeline visibility (latency, failures, throughput, dependencies, data SLAs)

Effectiveness of schedulers/orchestration platforms (e.g., Active Batch, Airflow, Control-M)

Database observability and performance monitoring practices

Identify:

Blind spots in data flow, lineage, and cross-system dependencies

Failure detection gaps beyond job-level (data quality, freshness, volume anomalies)

Inefficiencies in retry mechanisms, alerting, and operational workflows

Define:

Standard observability patterns and frameworks for data workloads

Dependency-aware monitoring models across upstream and downstream systems

Actionable dashboards, alerts, and SLAs aligned to business impact

Repeatable onboarding patterns for new pipelines and data services

Enable intelligent observability:

Reduce alert noise and improve signal quality and actionability

Correlate events across pipelines, databases, and integrations

Link technical failures to business outcomes and downstream impact

Incorporate AI capabilities:

Anomaly detection in pipeline behavior, data patterns, and performance trends

Failure prediction and early warning signals for batch/data workflows

Intelligent alerting and correlation across data ecosystems leveraging AIOps platforms such SNOW ITOM, Moog soft or Big Panda

Contribute to:

Target-state data observability architecture and engineering blueprint

Retrofit and modernization guidance for existing pipelines and platforms

Integration with ITSM, incident management, and operational workflows

Technical Skills

Experience with (any of the following):

Schedulers / Orchestration:
Active Batch, Airflow, Control-M, Autosys

Data Platforms:
Azure Data Factory, Databricks, Snowflake, Hadoop ecosystem

Observability Tools:
Azure Monitor, Log Analytics (KQL), Splunk, ELK, Dynatrace, Prometheus

Hands-on experience with:

Active Batch (job scheduling and monitoring)

SQL Sentry or similar tools (database observability)

Azure Log Analytics (KQL for data monitoring)

Azure Monitor (data-related metrics/logs)

Understanding of Data pipelines and integration patterns

Working knowledge of:

Data pipelines (ETL/ELT), batch processing, and integration patterns

Database systems and performance monitoring tools (e.g., SQL Sentry or equivalent)

Logs, metrics, and event correlation across distributed systems

Expectations / Success Criteria

Identify and eliminate critical data pipeline blind spots and failure gaps

Establish standard, reusable observability patterns for data workloads

Enable end-to-end visibility across upstream and downstream dependencies

Improve alert quality, reduce noise, and accelerate issue detection and resolution (MTTR)

Deliver a practical, implementable data observability blueprint

Drive adoption of proactive and AI-assisted monitoring practices across data ecosystems

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