Ascend.Io Unveils Custom Data Engineering Agents: Build Powerful Agents For Data Operations In Minutes, Not Months
"Building powerful and safe AI agents shouldn't take weeks," said Sean Knapp, Founder & CEO of Ascend. "With Custom Agents, teams can build, test, and deploy sophisticated data operations automation safely in just a couple of minutes. This represents the next evolution of our Agentic Data Engineering platform-moving beyond built-in intelligence to user-defined automation that understands your unique business context."
Intelligent Event-Driven Automation Made Simple
Custom Agents transform how data teams handle routine operations and incident response. When system events like pipeline failures, data quality issues, or performance anomalies occur, Ascend's observability engine automatically triggers the appropriate agent. These agents then leverage Ascend's unified metadata layer to understand the full context of the situation-from pipeline dependencies and data lineage to recent code changes-before taking intelligent action.
A typical workflow might unfold as follows: a critical pipeline failure triggers a custom agent that analyzes error logs using Ascend's comprehensive metadata, determines the root cause, creates a detailed GitHub issue with relevant code snippets, raises an incident with PagerDuty, and simultaneously sends a contextual notification to the appropriate Slack channel-all without human intervention.
Extensible Through Industry-Standard Integrations
Custom Agents seamlessly connect to external systems through Model Context Protocol (MCP) servers, enabling teams to integrate with their existing toolchain using just a few lines of configuration. Whether sending notifications through Slack, creating incident reports in PagerDuty, managing GitHub issues and pull requests, or connecting to any MCP-compatible service, custom agents operate as natural extensions of existing workflows.
"The power isn't just in the intelligence-it's in how easily these agents integrate with the tools teams already use," added Cody Peterson, Product Manager at Ascend. "We're not asking teams to abandon their workflows; we're making them dramatically more efficient."
Beyond Incident Response: Governance and Optimization
While incident response represents an immediate use case, custom agents excel at proactive data operations. Teams can deploy agents that enforce coding style guides or automatically optimize pipeline performance based on usage patterns. Furthermore, teams can fine-tune Ascend's built-in agents with organization-specific business logic and context using Custom Rules. This flexibility transforms agents from reactive tools into proactive members of the data engineering team.
Custom Agents are now available to all Ascend customers as part of the Agentic Data Engineering platform.
About Ascend
Ascend is on a mission to make data engineering delightful. The Ascend Data Automation Cloud empowers data teams to build, automate, and optimize data pipelines with ease. Combining a powerful metadata core, advanced automation, and integrated AI agents, Ascend eliminates engineering toil, enabling teams to focus on innovation and delivering data faster than ever before.
By unifying data engineering workloads across the entire data lifecycle, Ascend enables organizations to reduce operational overhead and enhance collaboration among data professionals. With features like DataAware orchestration, dynamic workload optimization, and end-to-end data observability, Ascend helps organizations power their applications, enhance decision-making, and achieve impactful business outcomes. Learn more on our website:
Jenny Hurn
Ascend
email us here
Legal Disclaimer:
EIN Presswire provides this news content "as is" without warranty of any kind. We do not accept any responsibility or liability for the accuracy, content, images, videos, licenses, completeness, legality, or reliability of the information contained in this article. If you have any complaints or copyright issues related to this article, kindly contact the author above.

Legal Disclaimer:
MENAFN provides the
information “as is” without warranty of any kind. We do not accept
any responsibility or liability for the accuracy, content, images,
videos, licenses, completeness, legality, or reliability of the information
contained in this article. If you have any complaints or copyright
issues related to this article, kindly contact the provider above.
Most popular stories
Market Research

- Japan Buy Now Pay Later Market Size To Surpass USD 145.5 Billion By 2033 CAGR Of 22.23%
- BTCC Summer Festival 2025 Unites Japan's Web3 Community
- GCL Subsidiary, 2Game Digital, Partners With Kucoin Pay To Accept Secure Crypto Payments In Real Time
- Smart Indoor Gardens Market Growth: Size, Trends, And Forecast 20252033
- Nutritional Bar Market Size To Expand At A CAGR Of 3.5% During 2025-2033
- Pluscapital Advisor Empowers Traders To Master Global Markets Around The Clock
Comments
No comment