share_log

Bigeye Launches Bigeye Dependency Driven Monitoring to Ensure Reliable Analytics

Bigeye Launches Bigeye Dependency Driven Monitoring to Ensure Reliable Analytics

Bigeye 推出 Bigeye 依賴驅動的監控功能,以確保可靠的分析
PR Newswire ·  03/25 11:15

SAN FRANCISCO, March 25, 2024 /PRNewswire/ -- Today Bigeye announces the availability of Bigeye Dependency Driven Monitoring. With this launch, Bigeye becomes the first data observability platform to allow enterprise data teams to connect their analytics dashboards, map every dependency across modern and legacy data sources, and deploy targeted data observability to ensure they stay reliable by default.

舊金山,2024年3月25日 /PRNewswire/ — Bigeye今天宣佈推出Bigeye依賴驅動監控。此次發佈後,Bigeye成爲第一個允許企業數據團隊連接分析儀表板、映射現代和傳統數據源的所有依賴關係並部署有針對性的數據可觀測性以確保它們在默認情況下保持可靠的數據可觀測性平台。

According to Bigeye's 2023 State of Data Quality Report, 70% of business leaders don't trust analytics dashboards to make critical decisions due to regular data quality incidents.

根據Bigeye的《2023年數據質量狀況報告》,由於定期發生數據質量事件,70%的企業領導者不信任分析儀表板來做出關鍵決策。

"Bigeye's new capabilities will let us surface the health of critical Power BI dashboards in real-time."

“Bigeye的新功能將使我們能夠實時顯示關鍵 Power BI 儀表板的運行狀況。”

Post this
發佈這個
Announcing Bigeye Dependency Driven Monitoring. Optimized data observability for every column powering critical analytics dashboards and data products.
宣佈推出 Bigeye 依賴驅動型監控。優化了爲關鍵分析儀表板和數據產品提供支持的每列的數據可觀察性。

Regarding this challenge Kyle Kirwan, CEO and Co-founder of Bigeye, said, "We've spoken with hundreds of enterprise data leaders and, despite investing heavily in data quality tools and processes, they still struggle to deliver reliable data analytics to business users. Something the data observability industry hasn't yet solved is how to handle the complexity and size of large enterprise data pipelines. This is because enterprise dashboards have a long list of dependencies that span modern and legacy technologies and data observability platforms have yet to offer true support for the types of hybrid environments nearly all Fortune 500 companies have."

關於這一挑戰,Bigeye首席執行官兼聯合創始人凱爾·柯萬表示:“我們已經與數百位企業數據領導者進行了交談,儘管在數據質量工具和流程上進行了大量投資,但他們仍然難以爲業務用戶提供可靠的數據分析。數據可觀測性行業尚未解決的問題是如何處理大型企業數據管道的複雜性和規模。這是因爲企業儀表板有一長串的依賴關係,涵蓋了現代和傳統技術,而數據可觀測性平台尚未爲幾乎所有《財富》500強公司都擁有的混合環境類型提供真正的支持。”

Bigeye Dependency Driven Monitoring uniquely solves this challenge by combining enterprise-grade lineage technology with data observability to automatically trace the entire enterprise data pipeline at column-level precision through traditional and modern technologies, ETL stages, and even across the boundary from cloud to on-premises environments.

Bigeye 依賴驅動監控通過將企業級世系技術與數據可觀測性相結合,通過傳統和現代技術、ETL 階段,甚至跨越邊界,從雲到本地環境,以列級精度自動跟蹤整個企業數據管道,從而獨特地解決了這一挑戰。

Bigeye Dependency Driven Monitoring improves data observability ROI

Bigeye 依賴驅動監控提高了數據可觀察性 ROI

Without a clear understanding of which columns are critical dependencies for business operations and which are not, data engineering teams are left with no choice but to deploy broad, blanket monitoring across a large number of tables and columns to reach adequate coverage. While this approach helps engineers identify anomalies anywhere they occur in the data environment, it also requires them to manage higher compute costs, unwanted alert noise, and additional overhead as a result of deploying unnecessary monitoring.

如果不清楚哪些列是業務運營的關鍵依賴關係,哪些不是,數據工程團隊別無選擇,只能對大量表格和列進行廣泛而全面的監控,以達到足夠的覆蓋範圍。雖然這種方法可以幫助工程師識別數據環境中任何地方出現的異常,但它也要求他們管理更高的計算成本、不必要的警報噪音以及部署不必要的監控所產生的額外開銷。

Bigeye Dependency Driven Monitoring turns this paradigm on its head by allowing data analysts and business users to start from their critical dashboard and—in just a few clicks—enable data observability on each column that matters, and none that don't.

Bigeye 依賴關係驅動監控顛覆了這種模式,它允許數據分析師和業務用戶從他們的關鍵儀表板開始,只需點擊幾下,即可在每個重要的列上啓用數據可觀察性,而沒有無關的列。

When compared with other data observability approaches, Bigeye Dependency Driven Monitoring provides:

與其他數據可觀測性方法相比,Bigeye 依賴驅動監控提供:

  • Faster time to value and improved trust for data consumers.
  • Clear visibility into the health of the entire analytics data pipeline for analysts.
  • Reduced alert noise and faster issue resolution for data engineers.
  • Lower total cost of ownership and less compute overhead for data leaders.
  • 縮短價值實現時間,提高數據消費者的信任。
  • 讓分析師清楚地了解整個分析數據管道的運行狀況。
  • 減少了警報噪音,加快了數據工程師的問題解決速度。
  • 降低總擁有成本,減少數據領導者的計算開銷。

When a data issue is detected, Bigeye will instantly notify each data source owner impacted through Slack or Microsoft Teams. Bigeye can also automatically create a bi-directional ticket in ITSM tools like JIRA and ServiceNow for integrated incident management.

當檢測到數據問題時,Bigeye將立即通知每個受Slack或微軟團隊影響的數據源所有者。Bigeye還可以在JIRA和ServiceNow等ITSM工具中自動創建雙向票證,以進行綜合事件管理。

For data consumers, Bigeye will display data health updates directly in their analytics dashboard, providing instant insight into whether or not their analytics are reliable. Data engineering teams can then use Bigeye's lineage-powered root cause and impact analysis to quickly trace the data problem to the source for fast triage and resolution.

對於數據消費者,Bigeye將直接在其分析儀表板中顯示數據運行狀況更新,從而即時了解他們的分析是否可靠。然後,數據工程團隊可以使用Bigeye的世系驅動的根本原因和影響分析,快速將數據問題追溯到源頭,從而快速進行分類和解決。

Powered by Bigeye Lineage Plus—complete lineage for enterprise data stacks

由 Bigeye Lineage Plus 提供支持——企業數據堆棧的完整世系

Data lineage has become a ubiquitous feature for many types of data operations tools. Due to the complexity of mapping lineage in legacy or on-premises environments, most tools require the customer to use complex, custom APIs or manual entry to try and capture a full picture of an enterprise pipeline.

數據譜系已成爲許多類型數據操作工具的無處不在的功能。由於在傳統或本地環境中映射譜系的複雜性,大多數工具要求客戶使用複雜的自定義 API 或手動輸入來嘗試捕捉企業管道的全貌。

Bigeye Dependency Driven Monitoring is powered by Bigeye Lineage Plus, a complete data lineage technology built to handle the largest, most complex enterprise pipelines. Bigeye Lineage Plus includes 50 connectors for transactional databases, cloud data warehouses, data lakes, ETL platforms, analytics tools, and more. Each connector includes parsers that trace lineage at the column level even as it moves from cloud to on-premises sources. As a result, data analysts and data engineers can view a single lineage map of their entire pipeline all the way through to an analytics dashboard or data product.

Bigeye 依賴關係驅動型監控由 Bigeye Lineage Plus 提供支持,這是一項完整的數據沿襲技術,專爲處理最大、最複雜的企業管道而設計。Bigeye Lineage Plus 包括 50 個連接器,用於交易數據庫、雲數據倉庫、數據湖、ETL 平台、分析工具等。每個連接器都包含解析器,即使從雲端遷移到本地源代碼時,也可以在列級別跟蹤世系。因此,數據分析師和數據工程師可以查看其整個管道的單一譜系圖,一直到分析儀表板或數據產品。

Bigeye Lineage Plus includes:

Bigeye Lineage Plus 包括:

  • 50+ connectors covering modern and legacy enterprise data sources
  • Support for cloud and on-premises infrastructure
  • ETL job information capture so no step in the pipeline is lost
  • 50 多個連接器,涵蓋現代和傳統企業數據源
  • 支持雲和本地基礎架構
  • 採集 ETL 任務信息,確保管道中的任何步驟都不會丟失

Bigeye Lineage Plus connectors for many of the most popular data sources are available today, including Tableau, Microsoft Power BI, Snowflake, Databricks, Google BigQuery, Amazon Redshift, Azure Synapse, IBM DB2, Oracle Database, MySQL, PostgreSQL, Microsoft SQL Server, SAP HANA, and Vertica.

當今許多最受歡迎的數據源的Bigeye Lineage Plus連接器上市,包括Tableau、微軟 Power BI、Snowflake、Databricks、谷歌 BigQuery、亞馬遜 Redshift、Azure Synapse、IBM DB2、甲骨文數據庫、MySQL、PostgreSQL、微軟 SQL Server、SAP HANA 和 Vertica。

A wide range of additional connectors will be made available throughout 2024, including Informatica PowerCenter, IBM Netezza, Teradata, SAS, Talend, SnapLogic, Apache Spark, IBM DataStage, MicroStrategy, QlikView, SAP Business Objects, Tibco Spotfire, and others.

2024年全年將提供各種其他連接器,包括Informatica PowerCenter、IBM Netezza、Teradata、SAS、Talend、SnapLogic、Apache Spark、IBM DataStage、微策略、QlikView、SAP業務對象、Tibco Spotfire等。

Customer quote: South32

客戶報價:South32

"Bigeye's new capabilities will let us surface the health of critical Power BI dashboards in real-time to our data consumers who use them to make critical decisions daily in the field. Before Bigeye, we considered building this capability ourselves and we're confident that using Bigeye's pre-built Lineage Plus connectors will save us significant time and resources while speeding time-to-value."

“Bigeye的新功能將使我們能夠向數據消費者實時顯示關鍵的Power BI儀表板的運行狀況,他們每天使用這些儀表板在現場做出關鍵決策。在使用Bigeye之前,我們曾考慮過自己建立這種能力,我們相信使用Bigeye的預建Lineage Plus連接器將爲我們節省大量時間和資源,同時縮短價值實現時間。”

- Ash Smith, Manager, Data Platform, South32

-Ash Smith,數據平台經理,South32

About Bigeye

關於 Bigeye

Bigeye is enterprise-grade data observability for modern and legacy data stacks. Bigeye brings together data observability, end-to-end lineage, and scalability and security to give enterprise data teams unmatched insight into the reliability of data powering their business—no matter if it's on-prem, in the cloud, or hybrid.

Bigeye 是適用於現代和傳統數據堆棧的企業級數據可觀測性。Bigeye 將數據可觀測性、端到端沿襲以及可擴展性和安全性相結合,爲企業數據團隊提供無與倫比的洞察力,了解數據爲其業務提供動力的可靠性,無論是本地、雲端還是混合環境。

SOURCE Bigeye

來源 Bigeye

声明:本內容僅用作提供資訊及教育之目的,不構成對任何特定投資或投資策略的推薦或認可。 更多信息
    搶先評論