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Darwin on the Assembly Line w/ Scania

On May 19th, 17:00 (BST) join us for our next virtual meetup; Darwin on the Assembly Line. Join Dimitri, Lead Data Scientist at Scania, as he discusses flow shop scheduling, or production line sequencing, as they call it at Scania, a well-studied problem in operations research. It arises in many modern manufacturing processes in which multiple different items are produced on the same assembly line. The solution Scania presents is both scalable and highly customisable. Find out how it’s being deployed and how it’s optimising efficiency in the manufacturing process in this meetup.
Recorded May 19 2021 39 mins
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Dimitri Schritt Lead Data Scientist, Scania
Presentation preview: Darwin on the Assembly Line w/ Scania

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  • Darwin on the Assembly Line w/ Scania Recorded: May 19 2021 39 mins
    Dimitri Schritt Lead Data Scientist, Scania
    On May 19th, 17:00 (BST) join us for our next virtual meetup; Darwin on the Assembly Line. Join Dimitri, Lead Data Scientist at Scania, as he discusses flow shop scheduling, or production line sequencing, as they call it at Scania, a well-studied problem in operations research. It arises in many modern manufacturing processes in which multiple different items are produced on the same assembly line. The solution Scania presents is both scalable and highly customisable. Find out how it’s being deployed and how it’s optimising efficiency in the manufacturing process in this meetup.
Your Path to Enterprise AI
Dataiku is the centralized data platform that moves businesses along their data journey from analytics at scale to enterprise AI. By providing a common ground for data experts and explorers, a repository of best practices, shortcuts to machine learning and AI deployment/management, and a centralized, controlled environment, Dataiku is the catalyst for data-powered companies.

Customers like Unilever, GE, BNP Paribas, Santander use Dataiku to ensure they are moving quickly and growing exponentially along with the amount of data they’re collecting. By removing roadblocks, Dataiku ensures more opportunity for business-impacting models and creative solutions, allowing teams to work faster and smarter.

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