Friday, 26 Jun 2026
Subscribe
logo logo
  • Global
  • Technology
  • Business
  • AI
  • Cloud
  • Edge Computing
  • Security
  • Investment
  • More
    • Sustainability
    • Colocation
    • Quantum Computing
    • Regulation & Policy
    • Infrastructure
    • Power & Cooling
    • Design
    • Innovations
  • 🔥
  • data
  • revolutionizing
  • Stock
  • Investment
  • Future
  • Secures
  • Growth
  • Top
  • Funding
  • Power
  • Center
  • technology
Font ResizerAa
Silicon FlashSilicon Flash
Search
  • Global
  • Technology
  • Business
  • AI
  • Cloud
  • Edge Computing
  • Security
  • Investment
  • More
    • Sustainability
    • Colocation
    • Quantum Computing
    • Regulation & Policy
    • Infrastructure
    • Power & Cooling
    • Design
    • Innovations
Have an existing account? Sign In
Follow US
© 2022 Foxiz News Network. Ruby Design Company. All Rights Reserved.
Silicon Flash > Blog > Cloud > Scaling Business Intelligence: Lessons from Carousell’s Cloud Journey
Cloud

Scaling Business Intelligence: Lessons from Carousell’s Cloud Journey

Published February 10, 2026 By Juwan Chacko
Share
4 Min Read
Scaling Business Intelligence: Lessons from Carousell’s Cloud Journey
SHARE
As technology companies like Carousell continue to migrate their reporting processes to cloud data platforms, a bottleneck is emerging within their business intelligence systems. Dashboards that once functioned smoothly on a small scale are now experiencing slowdowns, with queries taking longer to process and minor schema errors causing disruptions in reports. This has led to a delicate balancing act for teams, trying to meet the demands of both stable executive metrics and flexible exploration for analysts.

In the evolving landscape of cloud analytics, the demand for business intelligence tools to support both operational reporting and in-depth analysis has become a common challenge. This often results in a single environment taking on multiple roles – serving as a presentation layer, a modelling engine, and an ad-hoc compute system simultaneously.

A recent shift in architecture at Carousell, a Southeast Asian marketplace, sheds light on how analytics teams are addressing this issue. The company’s analytics engineers have moved away from a single overloaded BI instance towards a split design that separates critical reporting tasks from exploratory workloads. While this case study reflects Carousell’s experience, it mirrors a broader trend seen in cloud data stacks.

**When BI becomes a compute bottleneck:**
Modern BI tools offer the flexibility to define logic within the reporting layer, which can expedite initial development but also shift computational pressure away from optimised databases to the visualisation tier. At Carousell, heavy analytical tasks were burdening the system, with large datasets causing slow execution paths. This resulted in high query latency, disrupting business operations and stakeholder meetings.

**Separating stability from experimentation:**
In response to these challenges, Carousell engineers opted to reevaluate the distribution of computational workloads. They transferred heavy transformations upstream to BigQuery pipelines, where database engines are better equipped to handle large joins. The BI layer was then reoriented towards metric definition and presentation. This shift led to the creation of two distinct BI environments – one for pre-aggregated executive dashboards and weekly reporting, and the other for exploratory analysis. This segregation helps maintain performance and reliability in both areas.

See also  Revolutionizing Data Management: Oracle's Integration of GPT-5 with Databases and Cloud Applications

**Governance as part of infrastructure:**
To ensure stability, Carousell implemented stronger release controls in the new environment. Automated checks through tools like Looker CI and Look At Me Sideways (LAMS) were introduced to validate modelling rules before deployment. This not only catches SQL syntax errors but also enforces documentation and schema discipline, reducing the risk of errors and maintaining clear data definitions.

**Performance gains – and fewer firefights:**
Following the redesign, Carousell’s analytics team saw significant improvements in query times, with the 98th percentile query times dropping from over 40 seconds to under 10 seconds. This has transformed the way business reviews are conducted, allowing stakeholders to focus on evaluating real-time data rather than troubleshooting dashboards. By separating presentation, transformation, and experimentation, the analytics team has been able to reduce fragility and ensure predictable reporting outcomes.

In conclusion, the key lesson for teams scaling their analytics stacks is to establish clear architectural boundaries and determine which workloads belong in the warehouse versus the BI environment. By adopting a structured approach to data governance and performance optimisation, companies can enhance their analytics capabilities and drive better business outcomes.

TAGGED: Business, Carousells, cloud, Intelligence, Journey, Lessons, Scaling
Share This Article
Facebook LinkedIn Email Copy Link Print
Previous Article The Feasibility of Nuclear Power for AI Data Centers The Feasibility of Nuclear Power for AI Data Centers
Next Article Data Center Evolution: Apx Rebranded to Meet Changing Needs Data Center Evolution: Apx Rebranded to Meet Changing Needs
Leave a comment

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Your Trusted Source for Accurate and Timely Updates!

Our commitment to accuracy, impartiality, and delivering breaking news as it happens has earned us the trust of a vast audience. Stay ahead with real-time updates on the latest events, trends.
FacebookLike
LinkedInFollow

Popular Posts

MiniMax-M2: Reigning Supreme in Open Source LLMs for Agentic Tool Calling

Summary: MiniMax-M2, a new open source large language model, excels in agentic tool use and…

October 28, 2025

Breaking News: Cerence Stock Skyrockets!

Summary: 1. Cerence's technology was featured in 52% of newly made cars, leading to a…

November 20, 2025

Google Pixel Update Timeline: What’s the Next Drop Schedule?

Google Pixel users can expect the next major update to arrive in March 2026, featuring…

January 14, 2026

Eaton launches a new compact UPS to ‘match your every need’

The Compact and Efficient Eaton 93T UPS: A Must-Have for Mission-Critical Applications When it comes…

April 19, 2025

Revolutionizing AI Agents: The Breakthrough Multi-Session Claude SDK from Anthropic

Summary: 1. Anthropic has developed a solution to the agent memory problem with its Claude…

November 28, 2025

You Might Also Like

Genesys Expands into EU Market with AWS European Sovereign Cloud Deployment
Cloud

Genesys Expands into EU Market with AWS European Sovereign Cloud Deployment

Juwan Chacko
Unlocking the Future: The Crucial Role of Memory in AI Infrastructure Optimization
Cloud

Unlocking the Future: The Crucial Role of Memory in AI Infrastructure Optimization

Juwan Chacko
Google and CTC Global: Revolutionizing Grid Intelligence
Sustainability

Google and CTC Global: Revolutionizing Grid Intelligence

Juwan Chacko
Navigating the Cloud: A Manufacturing Perspective
Technology

Navigating the Cloud: A Manufacturing Perspective

SiliconFlash Staff
logo logo
Facebook Linkedin Rss

About US

Silicon Flash: Stay informed with the latest Tech News, Innovations, Gadgets, AI, Data Center, and Industry trends from around the world—all in one place.

Top Categories
  • Technology
  • Business
  • Innovations
  • Investments
Usefull Links
  • Home
  • Contact
  • Privacy Policy
  • Terms & Conditions

© 2025 – siliconflash.com – All rights reserved

Welcome Back!

Sign in to your account

Lost your password?