Seldon is the enterprise-grade machine intelligence platform that help businesses to deploy real-time recommendations and predictions and solve real-world problems faster.

Data scientist are in short supply and create the most value when they can focus on solving the domain-specific problems that are unique to their organisation or industry. The problem is many data scientist spend too much time reinventing the wheel because they want control.

Seldon provides an open-source data science stack that includes industry-leading technologies such as Apache Spark and Kafka. Our fully integrated solution enables developers and data scientists to deploy an end-to-end scalable machine learning pipeline. The pipeline includes data collection, feature transformation, building and deploying predictive models, serving the results via a REST API and monitoring the impact on core business KPIs.

Data scientists often want to operationalise custom algorithms and models, so we created a Microservices...
Seldon is the enterprise-grade machine intelligence platform that help businesses to deploy real-time recommendations and predictions and solve real-world problems faster.

Data scientist are in short supply and create the most value when they can focus on solving the domain-specific problems that are unique to their organisation or industry. The problem is many data scientist spend too much time reinventing the wheel because they want control.

Seldon provides an open-source data science stack that includes industry-leading technologies such as Apache Spark and Kafka. Our fully integrated solution enables developers and data scientists to deploy an end-to-end scalable machine learning pipeline. The pipeline includes data collection, feature transformation, building and deploying predictive models, serving the results via a REST API and monitoring the impact on core business KPIs.

Data scientists often want to operationalise custom algorithms and models, so we created a Microservices API that makes it easy to connect third party algorithms, the open source libraries and closed APIs.

Seldon offers both enterprise and SaaS (MLaaS) solutions. Use Seldon Cloud to get started quickly with lower maintenance overheads or have total control with an on-premise solution. Many organisations, particularly in the finance industry, have data protection policies prevent sensitive data from leaving their firewall.
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Investors

Federico Pirzio-Biroli
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Federico Pirzio-Biroli London based angel investor, primarily investing in seed level, early stage technology-based startups through my company, Playfair Capital.
Bertelsmann Dig Media Investments (BDMI)
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Bertelsmann Dig Media Investments (BDMI) BDMI is a strategic venture investor focused on digital media
Innovation Warehouse Pitch Application
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Innovation Warehouse Pitch Application Application to Innovation Warehouse's weekly pitching sessions
m8 Capital
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m8 Capital VC firm investing in companies engaged in mobile and related technologies
Playfair Investment portfolio
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Playfair Investment portfolio A London based early and seed stage investor in technology start ups

Employees

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Recommendations

Seldon has been around for a while and has pivoted from being just a prediction platform to a machine learning (as a service) platform that can run multiple models and be used in many organisations. Though focussing on the Fintech arena, Seldon core can be deployed in any industry (a ML solution that runs in a Kubernetes environment).

Now Seldon is developing Seldon Deploy which is a UI based deployment system allowing models to deployed an tested automatically, this could be on live infrastructure with a percentage of traffic sent to the new model, or completely separate infrastructure, it's all up to how the deployment is specified. There are also levels of authority, so models can be developed by specialists, then made available for deployment and authorised by the correct people or teams.

If you're looking to do machine learning, then Seldon could ease the implantation, allowing data scientists to concentrate on the models themselves.