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These aren’t edge cases. They’re the normal operating conditions for teams running Dataiku workflows across multiple tools. Here’s how Control‑M handles each one.
UPSTREAM DATA
Control-M monitors file arrivals across cloud storage, MFT platforms, and enterprise systems. It prevents Dataiku scenarios from launching until required data is present, validated, and complete, eliminating failed runs caused by missing inputs.
MODEL PIPELINES
Control-M detects successful completion states across upstream jobs, evaluates dependencies, and automatically launches downstream Dataiku scenarios. End-to-end orchestration replaces manual handoffs, custom scripts, and fragile scheduler dependencies.
FAILURE RECOVERY
Control-M detects execution failures immediately, triggers configurable retries, routes alerts through PagerDuty or Slack, and prevents downstream Dataiku processes from consuming incomplete data or producing unreliable model outputs.
SLA RISK
Control-M continuously tracks workflow progress against SLA targets, predicts breaches before deadlines are missed, and enables corrective action while there’s still time to protect downstream reporting and decision-making processes.
CROSS-PLATFORM DATAOPS
Control-M provides a single orchestration layer across platforms, tracking dependencies, execution status, and recovery actions from one place. Teams gain visibility into the entire workflow instead of isolated tool-level views.
INTEGRATION FACTS
|
workload.types |
Dataiku jobs · Dataiku scenarios · dataset rule computation · data preparation pipelines · machine learning model runs · batch analytics workloads |
|
trigger.type |
file arrival (S3 · Azure Blob · GCS · SFTP) · API/webhook · upstream job completion · Dataiku scenario completion · event-based trigger · time schedule |
|
cross_tool.deps |
Apache Airflow DAG trigger · Databricks job completion · Snowflake workload execution · Spark processing · Fivetran sync completion · REST API call · file delivery confirmation |
|
cloud.platforms |
AWS · Microsoft Azure · Google Cloud Platform · hybrid environments · Control-M SaaS + on-premises |
|
error_handling |
configurable retry count · interval · downstream cascade prevention · automated workflow hold · SLA pre-breach alert · PagerDuty · Slack |
|
throughput |
high-volume batch processing · machine learning pipelines · large-scale data preparation · parallel workflow execution · event-driven orchestration |
|
observability |
job-level audit log · SLA tracking with breach prediction · dependency lineage graph · Datadog/Splunk integration · SIEM-compatible event stream |
end-to-end orchestration
Control-M orchestrates workflows across Dataiku, Snowflake, Databricks, Spark, Airflow, file transfers, and cloud services in a single job flow — with dependency tracking, SLA visibility, and automated recovery across all of them.
|
Dataiku |
scenario execution · workflow orchestration · status tracking · dependency management |
|
Snowflake |
warehouse execution · SQL processing · downstream publishing |
|
Databricks |
job triggering · status monitoring · recovery coordination |
|
Apache Spark |
transformation orchestration · dependency control · execution tracking |
|
Apache Airflow |
DAG triggering · status collection · workflow coordination |
|
Cloud Storage (S3/Azure Blob/GCS |
file detection · event triggers · data readiness validation |
|
BI Platforms |
report delivery · analytics refresh · completion confirmation |
airflow coexistance
The objection is common: we’re already on Airflow.” The issues isn’t what Airflow does - it’s what happens before and after Airflow runs. That’s where pipelines actually fail.
Airflow manages its DAG. Control-M manages everything surrounding it.
airflow handles
control-m adds
MONITOR WORKFLOWS
Dataiku provides visibility into its own processes, but production workflows extend beyond a single platform.
Control-M provides centralized monitoring across ingestion, transformation, machine learning, and delivery processes in a single operational view:
Pipeline execution status
Runtime history tracking
Upstream dependencies
Downstream dependencies
SLA risk indicators
sla assurance
Data science and analytics teams depend on predictable delivery windows, but Dataiku cannot manage every upstream dependency.
Control-M tracks complete workflow execution, predicts SLA risks, and automates recovery actions before deadlines are missed:
SLA breach prediction
Automated escalation
Configurable recovery actions
Dependency-aware scheduling
Business deadline tracking
Learn how Control-M helps teams orchestrate complex processes with greater visibility, coordination, and control.