AI Buyer Insights:

Citigroup, a VestmarkONE customer evaluated BlackRock Aladdin Wealth

Swedbank, a Temenos T24 customer evaluated Oracle Flexcube

Cantor Fitzgerald, a Kyriba Treasury customer evaluated GTreasury

Moog, an UKG AutoTime customer evaluated Workday Time and Attendance

Wayfair, a Korber HighJump WMS customer just evaluated Manhattan WMS

Westpac NZ, an Infosys Finacle customer evaluated nCino Bank OS

Michelin, an e2open customer evaluated Oracle Transportation Management

Citigroup, a VestmarkONE customer evaluated BlackRock Aladdin Wealth

Swedbank, a Temenos T24 customer evaluated Oracle Flexcube

Cantor Fitzgerald, a Kyriba Treasury customer evaluated GTreasury

Moog, an UKG AutoTime customer evaluated Workday Time and Attendance

Wayfair, a Korber HighJump WMS customer just evaluated Manhattan WMS

Westpac NZ, an Infosys Finacle customer evaluated nCino Bank OS

Michelin, an e2open customer evaluated Oracle Transportation Management

List of Snowflake ML Customers

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Logo Customer Industry Empl. Revenue Country Vendor Application Category When SI Insight
Jahez International Company for Information Systems Technology Retail 500 $325M Saudi Arabia Snowflake Snowflake ML ML and Data Science Platforms 2024 n/a
In 2024, Jahez International Company for Information Systems Technology implemented Snowflake ML within its ML and Data Science Platforms footprint to productionize real time Estimated Time of Arrival ETA and logistics models for delivery optimization in Saudi Arabia. The deployment used Snowflake ML Model Serving running in Snowpark Container Services to host containerized inference workloads. The implementation centralized model serving and inference, configuring real time ETA prediction pipelines and logistics optimization models that support courier order assignment. Snowflake ML enabled model packaging and containerized deployment with automated scaling to reduce deployment delays and maintain continuous model serving. Operational coverage targeted delivery operations across Jahez Group's Saudi Arabia logistics network, impacting courier dispatch and order assignment workflows and integrating with existing delivery orchestration processes. The Snowpark Container Services architecture delivered sub one second online inference, supporting real time decisioning at the point of dispatch. Governance and rollout emphasized productionization best practices within the ML and Data Science Platforms environment, including controlled model serving, automated scaling, and rollback capable deployments to manage operational risk. The Snowflake ML implementation delivered improved courier order assignment, reduced deployment delays through auto scaling, and yielded reported cost and efficiency improvements.
Scene+ Professional Services 60 $8M Canada Snowflake Snowflake ML ML and Data Science Platforms 2024 n/a
In 2024, Scene+ implemented Snowflake ML to productionize CRM and loyalty models for its Canadian loyalty program. The deployment used Snowflake ML within the ML and Data Science Platforms category to centralize model development, versioning and production scoring for more than 30 models. Development and operational tooling centered on Snowflake ML components, including notebooks for exploratory and reproducible development, a feature store to enforce consistent feature engineering, a model registry for version control and deployment metadata, and ML observability for monitoring model behavior in production. This configuration removed the need for cross-platform data movement by keeping training, feature materialization and scoring inside the Snowflake environment, and pipelines were configured to support repeatable training and promotion workflows. Integration scope focused on CRM and loyalty data pipelines, with production scoring surfaced to loyalty operations and analytics teams supporting campaign and member lifecycle use cases across Canada. Operational coverage encompassed model development, validation and production hosting for loyalty use cases rather than exporting data and models to external ML tooling. Governance leveraged the model registry and ML observability to enforce version control, deployment approvals and monitoring workflows during staged rollouts to production. The deployment reduced time-to-production by over 60% and lowered costs by more than 35% across 30+ models, outcomes reported by the implementation team.
Storio group Retail 1109 $401M Netherlands Snowflake Snowflake ML ML and Data Science Platforms 2024 n/a
In 2024, Storio group implemented Snowflake ML to build a scalable MLOps platform supporting personalized product recommendations, aligning the company with the ML and Data Science Platforms category for production-grade model development and monitoring. The deployment of Snowflake ML centralized model training, evaluation, and lineage capture within Snowflake's execution environment to reduce handoffs between feature engineering and production scoring. The implementation leveraged Snowflake ML capabilities including ML Observability, Dynamic Tables and ML Lineage to operationalize model lifecycle workflows. Dynamic Tables were used to automate feature materialization and refresh for inference, ML Lineage provided traceability for model artifacts and feature provenance, and ML Observability powered automated dashboards for live model evaluation and feature-drift monitoring. Operational coverage extended across Storio group's European operations and focused on personalization workflows for photo-product recommendations, with the data science function and product personalization pipelines as primary consumers. Model governance and traceability were reinforced through lineage and observability instrumentation, enabling controlled production rollouts and continuous monitoring of model behavior. The initiative yielded faster production cycles and freed data scientists to concentrate on value-driving work by automating dashboards for live evaluation and drift detection, while Snowflake ML served as the centralized ML and Data Science Platforms environment for ongoing model development and observability.
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FAQ - APPS RUN THE WORLD Snowflake ML Coverage

Snowflake ML is a ML and Data Science Platforms solution from Snowflake.

Companies worldwide use Snowflake ML, from small firms to large enterprises across 21+ industries.

Organizations such as Storio group, Jahez International Company for Information Systems Technology and Scene+ are recorded users of Snowflake ML for ML and Data Science Platforms.

Companies using Snowflake ML are most concentrated in Retail and Professional Services, with adoption spanning over 21 industries.

Companies using Snowflake ML are most concentrated in Netherlands, Saudi Arabia and Canada, with adoption tracked across 195 countries worldwide. This global distribution highlights the popularity of Snowflake ML across Americas, EMEA, and APAC.

Companies using Snowflake ML range from small businesses with 0-100 employees - 33.33%, to mid-sized firms with 101-1,000 employees - 33.33%, large organizations with 1,001-10,000 employees - 33.33%, and global enterprises with 10,000+ employees - 0%.

Customers of Snowflake ML include firms across all revenue levels — from $0-100M, to $101M-$1B, $1B-$10B, and $10B+ global corporations.

Contact APPS RUN THE WORLD to access the full verified Snowflake ML customer database with detailed Firmographics such as industry, geography, revenue, and employee breakdowns as well as key decision makers in charge of ML and Data Science Platforms.