About a-team Marketing Services
The knowledge platform for the financial technology industry
The knowledge platform for the financial technology industry

A-Team Insight Blogs

Octopai Supports Cloud Migration with Cloud Native Data Lineage for Business Intelligence

Subscribe to our newsletter

As data volumes grow, new sources emerge, and firms migrate to the cloud, data lineage has become essential to mapping, visualising and understanding data across the enterprise, and crucial to providing business users with trusted information. Octopai, which came to market in 2018, offers automated metadata-based data lineage with a focus on analysing and understanding an organisation’s business intelligence (BI) landscape.

The company is based in Rosh Haayin, Israel, raised initial funding in 2016, and spent the next two years developing an innovative product that would be ready when needed. Octopai CEO, Amnon Drori, explains: “Five years ago, we saw a problem that was small but would become large and need a technology solution. The amount of data firms were using was growing rapidly and it was increasingly accessed by business users after it had been though BI and analytics applications – this raises questions about where the data was actually coming from in the data warehouse and could it be trusted?”

Octopai answers these questions – and more – with an enterprise grade Software-as-a-Service (SaaS) automated data lineage platform running on Microsoft Azure. The platform includes machine learning, subtext decision tree analysis, and algos, and collects metadata from every BI tool, regardless of vendor or type, in order to visualise and analyse an organisation’s BI landscape. With automated data lineage in place, business users can trust the data they are using and make better decisions. Drori comments: “90% of the lineage done by Octopai cannot be done manually.”

Solutions supported by the Octopai platform come from traditional data warehouse and BI vendors such as Oracle and Business Objects, as well as from next-generation vendors such as Snowflake, Qlik and Tableau. The platform also includes automated metadata discovery that can map where data fields exist down to code line level in 20 seconds. It is accompanied by an automated business glossary to ensure data consistency across an organisation and ease compliance with regulations such as GDPR that require personally identifiable information (PII) to be located wherever it resides in an organisation.

As financial firms migrate to the cloud and adopt cloud native BI solutions, Octopai is ready with a cloud native version of its platform. The first cloud native solution on the platform is Microsoft Azure Data Factory. With Octopai’s support and analysis of Azure Data Factory, organisations can view end-to-end data lineage from the data factory to reporting. More cloud native applications will be added to the platform as the year progresses.

Drori says: “Evolution doesn’t replace tools, but creates more complex on premise and cloud environments. If BI is on premise, in the cloud or in a hybrid environment, Octopai provides a layer to analyse the complete landscape and provide intelligence on the BI. We can help firms trust their data, make money, save money, and keep their executives out of jail.”

Use cases of automated data lineage described by Octopai include identifying and understanding different answers given by multiple BI tools to the same question; finding the cause of reporting errors by pinpointing the data in question and explaining where it came from and any modifications it went through; supporting system migration and updates; identifying redundant systems and data; ensuring compliance with data privacy regulations; and executing impact analysis of any proposed changes to operational or business processes.

Subscribe to our newsletter

Related content

WEBINAR

Recorded Webinar: Hearing from the Experts: AI Governance Best Practices

The rapid spread of artificial intelligence in the financial industry presents data teams with novel challenges. AI’s ability to harvest and utilize vast amounts of data has raised concerns about the privacy and security of sensitive proprietary data and the ethical and legal use of external information. Robust data governance frameworks provide the guardrails needed...

BLOG

Bloomberg BQuant Wins A-Team AICM Best AI Solution for Historical Data Analysis Award

When global markets were roiled by the announcement of massive US trade tariffs, Bloomberg saw the amount of financial and other data that runs through its systems surge to 600 billion data points, almost double the 400 billion it manages on an average day. “These were just mind-blowingly large volumes of data,” says James Jarvis,...

EVENT

Data Management Summit New York City

Now in its 15th year the Data Management Summit NYC brings together the North American data management community to explore how data strategy is evolving to drive business outcomes and speed to market in changing times.

GUIDE

Regulatory Data Handbook 2025 – Thirteenth Edition

Welcome to the thirteenth edition of A-Team Group’s Regulatory Data Handbook, a unique and practical guide to capital markets regulation, regulatory change, and the data and data management requirements of compliance across Europe, the UK, US and Asia-Pacific. This year’s edition lands at a moment of accelerating regulatory divergence and intensifying data focused supervision. Inside,...