Oliver Schwabe, PhD

Oliver Schwabe, PhD

Frankfurt/Rhein-Main
2598 Follower:innen 500+ Kontakte

Info

Experienced delivery focused

- orchestrator of,
- path finder for and
-…

Artikel von Oliver Schwabe, PhD

Aktivitäten

Anmelden, um alle Aktivitäten zu sehen

Berufserfahrung

  • Rolls-Royce Grafik
  • -

  • -

    European Union

  • -

  • -

  • -

    Oberursel, Germany

  • -

    Frankfurt Am Main Area, Germany

  • -

    Mainz Area, Germany

  • -

    Frankfurt Am Main Area, Germany

  • -

    Frankfurt Am Main Area, Germany

  • -

    Hartford, Connecticut Area

Ausbildung

  • Instituto Superior Técnico Grafik
  • Thesis Title: “A Geometrical Framework for Forecasting Cost Uncertainty in Innovative High Value Manufacturing”

Veröffentlichungen

  • Realizing Sustainable Value from Engineering Innovation Ecosystems in EURope’s Outermost Regions.

    Springer

    The Outermost Regions are remote territories of EU Member States and emergent innovators seeking to derive sustainable value from the 4th industrial revolution through their Engineering Innovation Ecosystems (EIEs). They face unique challenges for creating sustainable value, which is realized when late adopters within such EIEs are reached, and their intent aligns with Citizen Good Health and Well-Being. This paper presents the initial results of experimental inductive case-study research…

    The Outermost Regions are remote territories of EU Member States and emergent innovators seeking to derive sustainable value from the 4th industrial revolution through their Engineering Innovation Ecosystems (EIEs). They face unique challenges for creating sustainable value, which is realized when late adopters within such EIEs are reached, and their intent aligns with Citizen Good Health and Well-Being. This paper presents the initial results of experimental inductive case-study research examining the conditions under which sustainable value can be achieved in the EIEs of the Azores and Madeira (Portugal), the Canary Islands (Spain) and La Réunion (France). The research applies Qualitative Comparative Analysis with Ecosystem, Innovation Diffusion, Sustainable Development, and Intellectual Capital assessment methods.

    Veröffentlichung anzeigen
  • Speed of Innovation Diffusion of Water Electrolysis Technologies

    Elsevier Procedia CIRP

    Abstract: Green hydrogen will help the European Green Deal achieve “net zero” greenhouse gas emissions by 2050. Green hydrogen is created through water electrolysis; however, a lack of infrastructure, investments, and a complex supply chain have made it more expensive than its fossil fuel competitors. This paper focuses on the challenge of diffusing novel electrolysis technologies through the green hydrogen supply chain. 16 case studies are examined using innovation ecosystem principles to…

    Abstract: Green hydrogen will help the European Green Deal achieve “net zero” greenhouse gas emissions by 2050. Green hydrogen is created through water electrolysis; however, a lack of infrastructure, investments, and a complex supply chain have made it more expensive than its fossil fuel competitors. This paper focuses on the challenge of diffusing novel electrolysis technologies through the green hydrogen supply chain. 16 case studies are examined using innovation ecosystem principles to estimate how fast these technologies will reach market saturation. Results are then compared to 12 case studies on the green hydrogen supply chain to provide a holistic view. Keywords: Green Deal; Green Hydrogen; Water Electrolysis; Supply Chain; Innovation Ecosystem; Diffusion of Innovation

    Andere Autor:innen
    Veröffentlichung anzeigen
  • Dynamic multistep uncertainty prediction in spatial geometry

    CIRPe 2020 – 8th CIRP Global Web Conference – Flexible Mass Customization

    Grenyer, A., Schwabe, O., Erkoyuncu, J.A., Zhao, Y.

    Maintenance procedures for complex engineering systems are increasingly determined by predictive algorithms based on historic data, experience and knowledge. Such data and knowledge is accompanied by varying degrees of uncertainty which impact equipment availability, turnaround time and unforeseen costs throughout the system life cycle. Once quantified, these uncertainties call for robust forecasting to facilitate dependable…

    Grenyer, A., Schwabe, O., Erkoyuncu, J.A., Zhao, Y.

    Maintenance procedures for complex engineering systems are increasingly determined by predictive algorithms based on historic data, experience and knowledge. Such data and knowledge is accompanied by varying degrees of uncertainty which impact equipment availability, turnaround time and unforeseen costs throughout the system life cycle. Once quantified, these uncertainties call for robust forecasting to facilitate dependable maintenance costing and ensure equipment availability. This paper builds on the theory of spatial geometry as a methodology to forecast uncertainty where available data is insufficient for the application of traditional statistical analysis. To ensure continuous forecast accuracy, a conceptual dynamic multistep prediction model is presented applying spatial geometry with long-short term memory (LSTM) neural networks. Based in MATLAB, this deep learning model predicts uncertainty for the in-service life of a given system. The further into the future the model predicts, the lower the confidence in the uncertainty prediction. Forecasts are therefore also made for a single time step ahead. When this single step is reached in real time, the next step is forecast and used to update the long range prediction. The uncertainty here is contributed by an aggregation of quantitative data and qualitative, subjective expert opinions and additional traits such as environmental conditions. It is therefore beneficial to indicate which of these factors prompts the greatest impact on the aggregated uncertainty for each forecast point. Future work will include the option to simulate and interpolate input data to enhance the accuracy of the LSTM and explore suitable approaches to mitigate, tolerate or exploit uncertainty through deep learning.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • A Maturity Model for Rapid Diffusion of Innovation in High Value Manufacturing

    CIRPe 2020 – 8th CIRP Global Web Conference – Flexible Mass Customization

    In order to support accelerating the diffusion of innovations in high value manufacturing related to enabling flexible mass customization, this paper presents a research-based maturity model for forecasting the speed of innovation diffusion from ideation to market saturation. The model provides an early stage applied research view of (groups of) “game changing” variables, which accelerate diffusion of innovations to significantly reduce financial uncertainty and minimize the time to derive…

    In order to support accelerating the diffusion of innovations in high value manufacturing related to enabling flexible mass customization, this paper presents a research-based maturity model for forecasting the speed of innovation diffusion from ideation to market saturation. The model provides an early stage applied research view of (groups of) “game changing” variables, which accelerate diffusion of innovations to significantly reduce financial uncertainty and minimize the time to derive value from the original idea. The model is applied to multiple case studies related to the repurposing and customization of existing mass manufacturing infrastructures and processes to meet novel requirements. Case studies include among others a reference model based on a literature review, the diffusion of 3-D printing technology in manufacturing, the diffusion of novel cement manufacturing technology and the manufacturing of intensive care ventilators during the Covid-19 pandemic. The diffusion of innovation model applied is based on diffusion of innovation principles founded in the research of Everett Rodgers, the Bass Diffusion Curve and aligned to recent advances in living (eco-) systems theory. Special emphasis is placed on determining not only the relevance of “known-known” success factors for rapid innovation diffusion, but also on identifying “unknown-unknown” game changers enabling the required changes at pace. Key findings are that “game changing” factors for the innovations are primarily the interdependent availability of budget and resources to achieve market saturation, urgency of need shared by all participants, observability of impact (value creation) and compatibility with existing ways of work. Critical as well is population of all diffusion web roles with unique individuals. Further research is suggested regarding the dependency of assessed variable (groups) and the integration of Technical Readiness Level phases into the forecasting model.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • A Framework for Accelerating Innovation through Innovation Webs (in the Construction Industry)

    in Sustainability and Automation in Smart Constructions. Proceedings of the International Conference on Automation Innovation in Construction (CIAC-2019), Leiria, Portugal. Springer ISBN 978-3-030-35533-3

    Any efforts to accelerate innovation from ideation through market saturation depend on understanding the systemic behavior occurring within and through-out this process. “Systemic” is hereby understood to describe the holistic inter-actions of participants assuming roles and exchanging (in-) tangible deliverables from a living systems perspective based on the axiom that innovation is a social phenomenon which can only be served and not managed. Based upon previous research at individual, group,…

    Any efforts to accelerate innovation from ideation through market saturation depend on understanding the systemic behavior occurring within and through-out this process. “Systemic” is hereby understood to describe the holistic inter-actions of participants assuming roles and exchanging (in-) tangible deliverables from a living systems perspective based on the axiom that innovation is a social phenomenon which can only be served and not managed. Based upon previous research at individual, group, region, nation state, federation and global levels, this paper introduces a framework of systemic variables most critical for influencing the speed of value creation for ideas traveling across the diffusion of innovation curve. These variables are derived from a series of collaboration patterns portrayed as “innovation webs” that describe the dynamics found within the innovation stages of ideation, research, socialization, market validation and commercialization. The paper delivers actionable insights enabling the acceleration of innovation in industries such as construction and provides recommendations for future action-research to mature the dependency model suggested of variables affecting the speed of innovation.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • On The Change of Cost Risk and Uncertainty throughout the Life Cycle of Manufacturing Products

    Elsevier, Procedia CIRP Volume 86, 2019, Pages 239-244

    In practice cost estimators typically assume that cost risk and uncertainty continuously decrease across the whole product life cycle. Industry case studies and semi-structured interviews indicate that while cost risk and uncertainty decreases between technology readiness levels / stage gates, it increases when technology readiness levels / stage gates change. This increase can lead to cost risk and uncertainty levels above those at previous technology readiness levels / stage gates. This…

    In practice cost estimators typically assume that cost risk and uncertainty continuously decrease across the whole product life cycle. Industry case studies and semi-structured interviews indicate that while cost risk and uncertainty decreases between technology readiness levels / stage gates, it increases when technology readiness levels / stage gates change. This increase can lead to cost risk and uncertainty levels above those at previous technology readiness levels / stage gates. This difference between assumptions in practice and evidence from case studies and semi-structured interviews may lead to the over- and / or under-assignment of capital reserves over time, thus resulting in binding project capital unnecessarily and / or the need to increase projects budgets in an unplanned manner. Further research is suggested regarding the scale of changes in cost risk and uncertainty when technology readiness level changes / stage gates are arrived at in order to improve robustness of forecasting efforts.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • Dynamics of Cost Uncertainty for Innovative High Value Manufacturing Products – A Geometric Phenomenon

    Elsevier, Procedia CIRP Volume 78, 2018, Pages 225-230.

    In practice the forecasting of cost uncertainty for high value manufacturing products is typically a statistical exercise focused on predicting a static cost range at a future point in time. This only leads to robust forecasts if sufficient historical data is available, robust knowledge of cost estimating relationships exists and these relationships do not change in the time between creating the forecast and verifying its accuracy. The more innovative the product is the less likely it however…

    In practice the forecasting of cost uncertainty for high value manufacturing products is typically a statistical exercise focused on predicting a static cost range at a future point in time. This only leads to robust forecasts if sufficient historical data is available, robust knowledge of cost estimating relationships exists and these relationships do not change in the time between creating the forecast and verifying its accuracy. The more innovative the product is the less likely it however is that these prerequisites are met. Using cost data from the U.K. Ministry of Defence Royal Air Force A400M transport aircraft from 2002 to 2014 as an example, the dynamics of cost estimating relationships over time are examined using a novel non-statistical forecasting approach. The approach considers cost uncertainty as a geometric phenomenon, does not rely on prior information and permits easy identification of patterns in changes of cost estimating relationships over time.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • A GEOMETRICAL FRAMEWORK FOR FORECASTING COST UNCERTAINTY IN INNOVATIVE HIGH VALUE MANUFACTURING

    PhD Thesis Cranfield University

    Increasing competition and regulation are raising the pressure on manufacturing
    organisations to innovate their products. Innovation is fraught by significant uncertainty
    of whole product life cycle costs and this can lead to hesitance in investing which may
    result in a loss of competitive advantage. Innovative products exist when the minimum
    information for creating accurate cost models through contemporary forecasting
    methods does not exist. The scientific research challenge is…

    Increasing competition and regulation are raising the pressure on manufacturing
    organisations to innovate their products. Innovation is fraught by significant uncertainty
    of whole product life cycle costs and this can lead to hesitance in investing which may
    result in a loss of competitive advantage. Innovative products exist when the minimum
    information for creating accurate cost models through contemporary forecasting
    methods does not exist. The scientific research challenge is that there are no forecasting
    methods available where cost data from only one time period suffices for their
    application.

    The aim of this research study was to develop a framework for forecasting cost
    uncertainty using cost data from only one time period. The developed framework
    consists of components that prepare minimum information for conversion into a future
    uncertainty range, forecast a future uncertainty range, and propagate the uncertainty
    range over time. The uncertainty range is represented as a vector space representing the
    state space of actual cost variance for 3 to n reasons, the dimensionality of that space is
    reduced through vector addition and a series of basic operators is applied to the
    aggregated vector in order to create a future state space of probable cost variance. The
    framework was validated through three case studies drawn from the United States
    Department of Defense.

    The novelty of the framework is found in the use of geometry to increase the amount of
    insights drawn from the cost data from only one time period and the propagation of cost
    uncertainty based on the geometric shape of uncertainty ranges. In order to demonstrate
    its benefits to industry, the framework was implemented at an aerospace manufacturing
    company for identifying potentially inaccurate cost estimates in early stages of the
    whole product life cycle.

    Veröffentlichung anzeigen
  • An Approach for Selecting Cost Estimation Techniques for Innovative High Value Manufacturing Products

    Procedia CIRP, Volume 55, 2016, Pages 41–46, 5th CIRP Global Web Conference - Research and Innovation for Future Production (CIRPe 2016)

    This paper presents an approach for determining the most appropriate technique for cost estimation of innovative high value manufacturing products depending on the amount of prior data available. Case study data from the United States Scheduled Annual Summary Reports for the Joint Strike Fighter (1997-2010) is used to exemplify how, depending on the attributes of a priori data certain techniques for cost estimation are more suitable than others. The data attribute focused on is the…

    This paper presents an approach for determining the most appropriate technique for cost estimation of innovative high value manufacturing products depending on the amount of prior data available. Case study data from the United States Scheduled Annual Summary Reports for the Joint Strike Fighter (1997-2010) is used to exemplify how, depending on the attributes of a priori data certain techniques for cost estimation are more suitable than others. The data attribute focused on is the computational complexity involved in identifying whether or not there are patterns suited for propagation. Computational complexity is calculated based upon established mathematical principles for pattern recognition which argue that at least 42 data sets are required for the application of standard regression analysis techniques. The paper proposes that below this threshold a generic dependency model and starting conditions should be used and iteratively adapted to the context. In the special case of having less than four datasets available it is suggested that no contemporary cost estimating techniques other than analogy or expert opinion are currently applicable and alternate techniques must be explored if more quantitative results are desired. By applying the mathematical principles of complexity groups the paper argues that when less than four consecutive datasets are available the principles of topological data analysis should be applied. The preconditions being that the cost variance of at least three cost variance types for one to three time discrete continuous intervals is available so that it can be quantified based upon its geometrical attributes, visualised as an n-dimensional point cloud and then evaluated based upon the symmetrical properties of the evolving shape. Further work is suggested to validate the provided decision-trees in cost estimation practice.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • Short Interval Control for the Cost Estimate Baseline of Novel High Value Manufacturing Products – A Complexity Based Approach

    Procedia CIRP, Volume 55, 2016, Pages 29–34, 5th CIRP Global Web Conference - Research and Innovation for Future Production (CIRPe 2016)

    Novel high value manufacturing products by default lack the minimum a priori data needed for forecasting cost variance over of time using regression based techniques. Forecasts which attempt to achieve this therefore suffer from significant variance which in turn places significant strain on budgetary assumptions and financial planning. The authors argue that for novel high value manufacturing products short interval control through continuous revision is necessary until the context of the…

    Novel high value manufacturing products by default lack the minimum a priori data needed for forecasting cost variance over of time using regression based techniques. Forecasts which attempt to achieve this therefore suffer from significant variance which in turn places significant strain on budgetary assumptions and financial planning. The authors argue that for novel high value manufacturing products short interval control through continuous revision is necessary until the context of the baseline estimate stabilises sufficiently for extending the time intervals for revision. Case study data from the United States Department of Defence Scheduled Annual Summary Reports (1986-2013) is used to exemplify the approach. In this respect it must be remembered that the context of a baseline cost estimate is subject to a large number of assumptions regarding future plausible scenarios, the probability of such scenarios, and various requirements related to such. These assumptions change over time and the degree of their change is indicated by the extent that cost variance follows a forecast propagation curve that has been defined in advance. The presented approach determines the stability of this context by calculating the effort required to identify a propagation pattern for cost variance using the principles of Kolmogorov complexity. Only when that effort remains stable over a sufficient period of time can the revision periods for the cost estimate baseline be changed from continuous to discrete time intervals. The practical implication of the presented approach for novel high value manufacturing products is that attention is shifted from the bottom up or parametric estimation activity to the continuous management of the context for that cost estimate itself. This in turn enables a faster and more sustainable stabilisation of the estimating context which then creates the conditions for reducing cost estimate uncertainty in an actionable and timely manner.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • A framework for geometric quantification and forecasting of cost uncertainty for aerospace innovations

    Journal Progress in Aerospace Sciences

    Quantification and forecasting of cost uncertainty for aerospace innovations is challenged by conditions of small data which arises out of having few measurement points, little prior experience, unknown history, low data quality, and conditions of deep uncertainty. Literature research suggests that no frameworks exist which specifically address cost estimation under such conditions. In order to provide contemporary cost estimating techniques with an innovative perspective for addressing such…

    Quantification and forecasting of cost uncertainty for aerospace innovations is challenged by conditions of small data which arises out of having few measurement points, little prior experience, unknown history, low data quality, and conditions of deep uncertainty. Literature research suggests that no frameworks exist which specifically address cost estimation under such conditions. In order to provide contemporary cost estimating techniques with an innovative perspective for addressing such challenges a framework based on the principles of spatial geometry is described. The framework consists of a method for visualising cost uncertainty and a dependency model for quantifying and forecasting cost uncertainty. Cost uncertainty is declared to represent manifested and unintended future cost variance with a probability of 100% and an unknown quantity and innovative starting conditions considered to exist when no verified and accurate cost model is available. The shape of data is used as an organising principle and the attribute of geometrical symmetry of cost variance point clouds used for the quantification of cost uncertainty. The results of the investigation suggest that the uncertainty of a cost estimate at any future point in time may be determined by the geometric symmetry of the cost variance data in its point cloud form at the time of estimation. Recommendations for future research include using the framework to determine the “most likely values” of estimates in Monte Carlo simulations and generalising the dependency model introduced. Future work is also recommended to reduce the framework limitations noted.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • Geometric Quantification of Cost Uncertainty Propagation: A Case Study

    Procedia CIRP, Vol. 37, 2015, pp.158-163, CIRPe 2015 - Understanding the life cycle implications of manufacturing

    This paper presents a novel technique for quantifying cost uncertainty propagation through the metrics of spatial geometry. Case study data was drawn from U.S. Department of Defense Selected Acquisition Report Summary Tables covering total base year cost variance of acquisition programs for between 1986 and 2013 for various whole product life cycle phases (i.e. concept, development, manufacturing, utilisation, support and retirement). The cost variances for quantity, schedule, engineering…

    This paper presents a novel technique for quantifying cost uncertainty propagation through the metrics of spatial geometry. Case study data was drawn from U.S. Department of Defense Selected Acquisition Report Summary Tables covering total base year cost variance of acquisition programs for between 1986 and 2013 for various whole product life cycle phases (i.e. concept, development, manufacturing, utilisation, support and retirement). The cost variances for quantity, schedule, engineering, estimating, other and support are treated as manifested uncertainty and considered as vertices of simplex geometries propagating over time thus creating an uncertainty “cloud”. Length, size, volume, density, mass and symmetry are investigated for identifying, describing and predicting cloud propagation. The hypothesis is raised that the symmetry metric is suitable for determining confidence in the propagation behavior of cloud uncertainty across the whole product life cycle. Further work is suggested to develop standards for the evaluation of topological symmetries in cost estimation.


    Keywords: Cloud Uncertainty; Cost Variance; Spatial Geometry; Topological Data Analysis; Uncertainty Propagation; Whole Product Life Cycle

    Andere Autor:innen
    Veröffentlichung anzeigen
  • “Value Networks and the True Nature of Collaboration”

    Meghan-Kiffer Press, ISBN-10: 0929652525

    Work life is completely changing as social networking and collaboration platforms allow a more human-centric way of organizing work. Yet work design tools, structures, processes, and systems are not evolving as rapidly, and in many cases are simply inadequate to support the new flexible and networked ways of working. Value Networks and the true nature of collaboration meets this challenge head on with a systemic, human-network approach to managing business operations and ecosystems. Value…

    Work life is completely changing as social networking and collaboration platforms allow a more human-centric way of organizing work. Yet work design tools, structures, processes, and systems are not evolving as rapidly, and in many cases are simply inadequate to support the new flexible and networked ways of working. Value Networks and the true nature of collaboration meets this challenge head on with a systemic, human-network approach to managing business operations and ecosystems. Value network modeling and analytics provide better support for collaborative, emergent work and complex activities. With examples from everyday work teams through complex large-scale networks, this book simply and coherently lays out the new basics of collaborative work design and value creating networks. It explains the underlying concepts and shows how to map, analyze, and leverage value networks in a way that supports high social values and ethical practices - and achieves fast business results.

    Veröffentlichung anzeigen
  • Uncertainty Quantification Metrics for Whole Product Life Cycle Cost Estimates in Aerospace Innovation

    Journal Progress in Aerospace Sciences

    The lack of defensible methods for quantifying cost estimate uncertainty over the whole product life cycle of aerospace innovations poses a significant challenge to the creation of accurate and defensible cost estimates. Based on the axiomatic definition of uncertainty as the actual prediction error of the cost estimate, this paper provides a comprehensive overview of metrics used for the uncertainty quantification of cost estimates based on a literature review, an evaluation of publicly funded…

    The lack of defensible methods for quantifying cost estimate uncertainty over the whole product life cycle of aerospace innovations poses a significant challenge to the creation of accurate and defensible cost estimates. Based on the axiomatic definition of uncertainty as the actual prediction error of the cost estimate, this paper provides a comprehensive overview of metrics used for the uncertainty quantification of cost estimates based on a literature review, an evaluation of publicly funded projects such as part of the CORDIS or Horizon 2020 programs, and an analysis of established approaches used by organizations such NASA, the U.S. DoD, the ESA, and various commercial companies. The metrics are categorized based on their foundational character (foundations), their use in practice (state-of-practice), their availability for practice (state-of-art) and those suggested for future exploration (state-of-future). Insights gained were that a variety of uncertainty quantification metrics exist whose suitability depends on the volatility of available relevant information, as defined by technical and cost readiness level, and the number of whole product life cycle phases the estimate is intended to be valid for. Information volatility and number of whole product life cycle phases can hereby be considered as defining multi-dimensional probability fields admitting various uncertainty quantification metric families with identifiable thresholds for transitioning between them. The key research gaps identified were the lacking guidance grounded in theory for the selection of uncertainty quantification metrics and lacking practical alternatives to metrics based on the Central Limit Theorem. An innovative uncertainty quantification framework consisting of; a set-theory based typology, a data library, a classification system, and a corresponding input-output model are put forward to address this research gap as the basis for future work in this field.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • Long tail uncertainty distributions in novel risk probability classification

    Procedia CIRP

    Successful engineering, manufacturing, supply and service of advanced aerospace products benefits from the effective capture, predication and reduction of risk probability. Based on the analysis of the risk probability of 15,624 group wide largely unrelated enterprise risk management entries at Rolls-Royce plc., an aerospace manufacturing and service company, non-random patterns of probability in approx. 70% of aggregated risk profiles were identified, whereby approx. 40% of these exhibit long…

    Successful engineering, manufacturing, supply and service of advanced aerospace products benefits from the effective capture, predication and reduction of risk probability. Based on the analysis of the risk probability of 15,624 group wide largely unrelated enterprise risk management entries at Rolls-Royce plc., an aerospace manufacturing and service company, non-random patterns of probability in approx. 70% of aggregated risk profiles were identified, whereby approx. 40% of these exhibit long tail (leptokurtic) characteristics. Future research is recommended to identify relevant parametric risk probability variable (relationships) and to determine whether risk probability can be predicated.

    Andere Autor:innen
    Veröffentlichung anzeigen
  • Value Networks and Collaboration

    Allee V., Schwabe O. (2011) E-Book / Portal, http://www.valuenetworksandcollaboration.com

  • Measuring the Impact of Research Networks in the EU: Value Networks and Intellectual Capital Formation

    Allee, V., Schwabe, O. (2009) European Conference on Intellectual Capital, Haarlem, The Netherlands, April 28-29, 2009, Conference Proceedings.

  • Designing Productive Workspaces for Mobile Workers: Role Insights from Network Analysis

    Venezia, C., Allee, V., and Schwabe, O. (2008) Information-Knowledge-Systems Management: Special Issue: Enterprise Mobility: Applications, Technologies and Strategies

  • Effectiveness of ICT RTD Impacts on the EU Innovation System: Annex to the Final Report

    Allee V., Innocenti, A., Koumpis, S., Mavridis, A., Molinari, F., Pasher, E., Shachar, S., Schwabe, O., Tektonidis, D., Tresman, M, Vontas, A. (2007) Evaluation Study for the European Commission

  • Supporting mobile worker networks: Components for effective workplaces

    Venezia, C., Allee, V., Schwabe, O. (2007) Journal of Corporate Real Estate. Vol 9, No 3, 2007

  • E-Learning Part 2: Key Scenarios and Benchmarks

    Schwabe, O. (2006) Inside Knowledge Magazine, Vol. 10

  • E-Learning Part 3: Performance Management

    Schwabe, O. (2006) Inside Knowledge Magazine, Vol. 11.

  • E-Learning Part I: Reframing the Context

    Schwabe, O. (2006) Inside Knowledge Magazine, Vol. 9

  • Egyptian KIZZES: A Knowledge Recipe for Creating Knowledge Innovation Zones

    Schwabe, O. (2006) ic mag intellectual capital magazine

  • E-Learning Country Focus: Germany

    Schwabe, O. (2004) Inside Knowledge Magazine, Vol. 7, July, 2004

Sprachen

  • English

    Muttersprache oder zweisprachig

  • German

    Muttersprache oder zweisprachig

  • French

    Gute Kenntnisse

Organisationen

  • Cranfield University (UK)

    Visiting Fellow

    –Heute

    Visiting Fellow with focus on cost risk and uncertainty at the School of Aerospace, Manufacturing and Transport

  • Capella University (USA)

    Online Associate Professor for Fundamentals of Supply Chain Management (BUS3022) and Organizational Communication (BUS3050). Previous online associate professor for E-Business (BUS3020) and revision author for Organizational Communication (BUS3050).

  • Open University Business School (UK)

    Associate Lecturer for MBA Capstone “Making A Difference” (B830) from 2005 – 2012 and “Managing Knowledge” (B823) from 2000 – 2008.

  • Jones International University (USA)

    Online Professor for Management Fundamentals, E-Business, Knowledge Management, Organizational Development and System Dynamics

  • AKAD University (Germany)

    Associate Lecturer for Database Design and Enterprise IS

  • Kaplan University (USA)

    Online Adjunct Professor School of Business and Management for Information Systems Management (GB506) and Business Intelligence (GB555)

  • UNDP Virtual Development Academy (USA)

    Online adjunct faculty for Knowledge Management, Negotiation and Cross-Cultural Management

Erhaltene Empfehlungen

4 Personen haben Oliver Schwabe, PhD empfohlen

Jetzt anmelden und ansehen

Weitere Aktivitäten von Oliver Schwabe, PhD

Oliver Schwabe, PhDs vollständiges Profil ansehen

  • Herausfinden, welche gemeinsamen Kontakte Sie haben
  • Sich vorstellen lassen
  • Oliver Schwabe, PhD direkt kontaktieren
Mitglied werden. um das vollständige Profil zu sehen

Weitere ähnliche Profile