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Pierre Fabre Dermo-Cosmétique / Recherche Appliquée

Country: France

Pierre Fabre Dermo-Cosmétique / Recherche Appliquée

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4 Projects, page 1 of 1
  • Funder: French National Research Agency (ANR) Project Code: ANR-18-CE10-0012
    Funder Contribution: 610,488 EUR

    The CAASC project considers a supply chain where independent partners accept to share in a cloud platform a series of information about their mid-term plans. Maintenance and misalignment of these plans is a major source of problems (stock-outs, over-stocks, distribution over-costs, irrelevant capacities) in supply chains. Shared information concern agreed plans, but also the current status and current forecasts associated to sales, production, inventory, transports. In particular, CAASC is interested in the detection of deviations between the agreed partners’ plans and the current situation in order to look for, if required, supply chain agile adaptations to these deviations. CAASC takes advantage of the software and test infrastructures developed for the H2020 C2NET project. But, while C2NET was interested in the import of data, their integration into a supply chain model and the detection of deviations, CAASC is focusing on the analysis of deviations and the development of agility capabilities. One major add-on of CAASC is the management of uncertainties in the monitoring process of a plan in order to reduce the nervousness of decisions, counter the bullwhip effect or avoid an irrelevant protection of decoupling points. As a consequence, CAASC develops three research axis: The first axis concerns the identification and quantification of uncertainties. The point is to take advantage of the flow of data in the solution, and the capabilities of automated learning algorithms. The goal is to model effective uncertainties in a supply chain: typify, classify, quantify or discover emergent uncertainties, while selecting the appropriate modelling approach (probabilities, possibilities, uncertain probabilities, ). This axis takes advantage of the knowhow of Linagora for machine learning algorithms, the experience in decision under uncertainty of IRIT/ADRIA and the knowledge in supply chain risks management of the whole consortium. The second axis studies the projection of a series of uncertainties and deviations on a plan. It evaluates the capability of an actor to control the effects of uncertainties and deviations on his perimeter. It results in the identification of risks for the other partners. While bibliography is systematically focusing on one type of uncertainty, the goal here is to integrate various representations of uncertainties, in order to result in a more realistic risks characterisation. Third, for critical risks anticipating adaptation strategies are mandatory. More than re-planning algorithms, we propose to provide a compact representation of risks management strategies for supply chain planning. This totally new approach in the domain of supply chain planning, based on the principles of knowledge compilation, will guaranty finding adaptations in polynomial time when risks occur. CAASC considers two types of case studies adapted from C2NET and integrating supply chain uncertainties and risks. The first is a series of scenarios of various sizes that result from real data extracted from the Pierre Fabre Group information systems. They enable measuring the scalability of the solution. The second type is a serious game that enables to assess the dynamic behaviours. On these use cases, various managerial effects are looked for: the formalisation of the decision makers behaviours, the impacts of the proposed tools on the capacity of people to collaborate, and more globally, the organisational changes. Finally, the tools and services developed during this project aim at being integrated in the OpenPaaS solution, the cloud collaborative open-source platform provided by Linagora. The objective is to develop differentiating services for industrial companies. Overall, the funding will support 2 PhDs, a high scientific integration with Linagora and an industrial validation by the Pierre Fabre company.

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  • Funder: European Commission Project Code: 636909
    Overall Budget: 7,126,500 EURFunder Contribution: 7,126,500 EUR

    The goal of C2NET Project is the creation of cloud-enabled tools for supporting the supply network optimization of manufacturing and logistic assets based on collaborative demand, production and delivery plans. C2NET Project will provide a scalable real-time architecture, platform and software to allow the supply network partners: to master complexity and data security of the supply network, to store product, process and logistic data, to optimize the manufacturing assets by the collaborative computation of production plans, to optimize the logistics assets through efficient delivery plans and to render the complete set of supply chain management information on the any digital mobile device (PC, tablets, smartphones, …) of decision makers enabling them to monitor, visualize, control, share and collaborate. The Project results will be: i) the C2NET Data Collection Framework for IoT-based continuous data collection from supply network resources; ii) the C2NET Optimizer for the optimization of manufacturing and logistics assets of the supply network by the collaborative computation of production, replenishment and delivery plans; iii) the C2NET Collaboration Tools for providing support to the collaborative processes of the supply network, and iv) the C2NET Cloud Platform (C2NET CPL) to integrate the data module, the optimizers and the collaborative tools in the cloud. C2NET will be designed to comprehensively cover the entire supply chain considering all stages of manufacturing, distribution and sales to supply a product to market. Different actors in the supply network as plant managers, planners, carriers, shop floor workers, shop assistants or customers are potential users of the services that will be offered by C2NET. A distinguishing feature of these services is to have complete visibility and real-time status of the entire supply chain at all times looking for an optimal response to maximize both local and global benefit

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  • Funder: French National Research Agency (ANR) Project Code: ANR-21-CE34-0027
    Funder Contribution: 477,682 EUR

    UV filters are widely used for skin protection against cancer. Their impact on corals was poorly investigated but it was shown that octocrylene and several benzophenone filters exert direct detrimental effects on corals, and that other ingredients in sunscreens and cosmetics exacerbate their toxicity. The SPOC project will search for stress biomarkers in corals to introduce a practical reliable tool to quantify coral response to pollutants and evaluate all UV filters allowed in cosmetic products in Europe, while considering the public health importance of sunscreens. Eventually, we will also investigate on the relationship between site contamination and the observed decrease of coral bleaching temperature threshold, and we will qualify wild sites water quality for coral well-being through transplantation experiments and biomarker-based quantification of coral stress.

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  • Funder: French National Research Agency (ANR) Project Code: ANR-08-SECU-0010
    Funder Contribution: 1,418,080 EUR
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