Developing the Next Generation of Science Data System Engineers NASA/Goddard.

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Presentation transcript:

Developing the Next Generation of Science Data System Engineers NASA/Goddard Space Flight Center ESIP Winter Meeting January 6-8, Washington, D.C. Knowledge Play an increasing role in developing metadata and data products. Adapt data processing and integration of science algorithms to an evolving computer industry. Depicting discipline specific attributes for multiple types of observational data Utilize attributes that can become common across science disciplines and observation systems Working with increasingly complex science data, multiple datasets and diverse sources requires a skilled workforce Take technical training focused in data science and new technologies Develop next generation science data systems that can serve multiple science disciplines, diverse observational data and model output. Data System Engineer Challenges Science Data System Challenges Architect smarter, flexible and scalable data systems: Simplify components with common science data processing functions to ease evolution with emerging technology while maintaining connectivity with archival science data. Standardized public data access interfaces of central & distributed sources. Increase science findings and practical applications by enabling cross-discipline use of science data. Standardize the fundamentally required content and structure: Common depiction of time, location and accuracy. Increasing complex remotes sensors and in-situ sensors from spacecraft, aircraft and surface networks. Encompass data complexities of research and application discipline communities. Instrument Software Data Systems Flight & Ground Data Systems Systems Engineering Data & Information Management Systems Thinking Integration Collaboration Mission & Organization Awareness Goals, Strategy & Policy Software Standards Adherence e.g. CMMI Discipline Standards Awareness e.g. CCSDS, ISO19115, HDF Self-direction Reasoning Resilience Flexibility Ethics/Professionalis m Honesty/Loyalty Continual Learning Strategic vision Change Management Risk Management External Awareness Customer Orientation Decisiveness Problem Solving Quality Principles Resource Management & Stewardship Technology Management Creativity & Innovation Results Orientation Process Oversight Management Program Development, Planning & Evaluation Coaching/Counseling/Mentoring Team Building Conflict Management Human Resources Management Diversity Awareness Situational Leadership Interpersonal skills Oral/Written Communication Influencing/Negotiating Partnering/Teaming Political Savvy Presentation/Marketing Skills Organizational Representation & Liaison Working within a Team Attention to Detail Technical Competence Core Values Self-Esteem EngineerJourneyman Engineer Senior Engineer Principal Engineer Thorough knowledge of software engineering design and development methodologies, paradigms, tools Sufficient to conceive, apply experimental theories to resolve unique or novel problems, significantly alter standard practices Knows agency information processing standards and policies Knows software engineering lifecycle Focus on particular domain to become expert Software data storage Science Data formats Science metadata Data Management Expert Has experience with NASA science data and understand provenance issues, data quality Thorough knowledge of:  Science Data structures  Programming languages  Operating systems  Applications techniques  Service oriented architectures  Off-the-shelf and opens source software (e.g., RDMS, GIS)  Hardware systems Knows science and engineering concepts, practices:  Levels of processed data (0, 1, 2…)  Orbital mechanics, instruments  Map projections (Lat/lon, RA/DEC)  Instrument calibration techniques/algorithms  Validation techniques  Physical science algorithms, modeling systems, Geographic Information Systems  Standard data formats (CCSDS, HDF, CDF, FITs)  Knows how to integrate new technologies into current systems Looking for degrees in the following areas:  Physical Sciences  Astronomy, Astrophysics  Geology  Hydrology  Meteorology  Oceanography  Physics  Computer Engineering  Computer Science But the following fields of expertise are also useful:  Remote Sensing  Mathematics  Physical geography  Human geography Career Path at NASA/GSFC Thorough knowledge of: Software engineering design and development methodologies Agency information processing policies and standards Science data system architectures, science data storage, data formats, science metadata Recognized Subject Matter Expert Science Domain Data Center systems and operations Data Management Data Manipulation and Services Extensive understanding of instrument and physical science discipline data formats, analytical methods, computations science Extends discipline knowledge boundary Project Management expertise Duties/Skills Leads technical activities of inter- disciplinary engineers developing an instrument or data system component Oversees data center development, tracts costs and schedule, technical constraints Leads standards development efforts Serves as instructor on data management Serves as NASA representative to other US Agencies Participates in International projects Develops and operates specific components of an instrument data system Integrates and tests instrument algorithms Manages mission science data collections Participates in professional societies Works on collaborative US agency programs Seek out a career path that fits your goals and will be most satisfying to you: Your individual interests, skills, and training will dictate the path you should follow. Over time, modify your path based on personal interests, values, goals, experiences, and new opportunities that present themselves. Career Track Guidance Suggestions on how to find a career path: Develop a long-term vision with a short term plan. Review your career plan annually. Listen to what others have done. Find a mentor, be a mentor. Improve your skills through continuing education. Challenge yourself, don’t be afraid to change, be willing to take a risk. Works in-depth on a data system component development or operation Serves with specific science or instrument team Offers cross-training in science and computer technologies Pathways and Perspectives Oversees development for a mission or multi-mission science data system Plans and administers projects of national or international importance Establishes long-range agendas for development of large new unusually complex systems Responsible for resource requirements, policies, procedures and budgets Leads International projects Very often our candidates have been contractors Careers encompass more than technical knowledge Strategic Know- ledge Outcome Oriented Mission Inter- personal Personal Mastery Super- visor/ Team