DescriptionLooking for the opportunity to work on problems that matter, with colleagues that share your interest and expertise in AI and Machine Learning?The Leidos Corporate Financial Planning & Analysis (FP&A) team is looking for an experienced Data Scientist with an entrepreneur’s mindset to support a new team working on projects to improve our Enterprise financial analytics and forecasting. The position will report to, and collaborate with, the SVP and VP of FP&A in building a Data & Analytics Team within Finance. The position is funded and an immediate fill opportunity.You should be strongly experienced in Python coding and visualization building skills and have knowledge of commonly used ML libraries (SciKit-learn). Data engineering and ML Ops experience is a plus. We are looking for someone who is intellectually adaptive, likes to collaborate, inquisitive, and capable of conducting original science.The FP&A Data & Analytics team will collaborate closely with Leidos’ AI Accelerator team which includes junior and senior research/data scientists and data engineers with expertise in information retrieval, UI development, information science, machine learning and artificial intelligence, and statistics.The Data Scientist will be expected to build statistical models, test hypotheses, interpret, summarize, visualize, and succinctly report on data findings. The Scientist will leverage automation and machine learning to manage data, predict scenarios and make recommendations. The data scientist will partner with business and operational leaders to provide an impact by leveraging data and analytical tools, strategic thinking, and hypothesis-based analysis on machine learning (ML)-based projects. The data scientist is responsible for modeling complex business problems through statistical, algorithmic, mining, and visualization techniques. Further, they will support senior leadership by creating business insights, reports, and analyses to aid in the decision-making process.Additional Responsibilities:
Translates business needs into analytics/reporting requirements to support executive decisions and workflows with required information
Performs large-scale experimentation and builds data-driven models to answer business questions
Proactively mines data warehouses to identify trends and patterns and generates insights for business units and senior leadership
Performs large-scale experimentation to identify hidden relationships between variables in large datasets
Researches and implements cutting-edge techniques and tools in machine learning/deep learning/artificial intelligence to make data analysis more efficient
Designs and conducts data analyses with the highest standard of rigor and scientific accuracy; this includes study design, methodology, algorithms, and statistical modeling
Analyzes data provided to identify trends, inform decisions
Supports developmental plans based on data findings related to program, personnel, training needs
Supports development and maintenance of primary program database and run interval reporting
Implements appropriate modeling and data science strategies required to address customer needs
Communicates results and methods for solutions to internal and external stakeholders
Designs, builds, trains, and evaluates machine learning models
Basic Qualifications:
Bachelor's degree in Computer Science, Data Science or related field and over 6 years of relevant experience, Masters with 4 years of experience, or PhD with 2 years of experience.
Strong experience with Python as well as fluency in multiple programming languages and statistical analysis tools such as C, JavaScript, R, SAS, Excel, SQL, MATLAB, SPSS
Experience /familiarity with frequentist statistics and probability including predicative modeling
Experience with data repositories and reporting tools
Good understanding of machine learning algorithms, tools and platforms
Experience with AI/ML tools, such as common Python packages (e.g., scikit-learn, NumPy, Pandas) and Jupyter notebooks
Experience with time series modeling, causal inference, or probabilistic forecasting models.
Experience with tabular data analysis using languages such as SQL, R, and/or Python
Experience with statistical modeling and data analysis
Understanding of transformers and foundation models
Self-starter with high intellectual curiosity
Great communication skills, able to explain model results to a non-technical audience
Proficient in data exploration techniques and tools
Ability to work in a cross functional team as this position will be under the Finance function but have opportunity to collaborate with the AI Accelerator team
US citizenship is required and able to obtain security clearance if needed
Preferred Qualifications:
Experience with data visualization libraries such as Plotly, Streamlit, and matplotlib
Experience with building LLM and other Generative AI applications
Willing to learn new skills and platforms to support data analytics
Candidates will ideally have a specialization in ML or AI
Original Posting Date:2024-10-04While subject to change based on business needs, Leidos reasonably anticipates that this job requisition will remain open for at least 3 days with an anticipated close date of no earlier than 3 days after the original posting date as listed above.Pay Range:Pay Range $81,250.00 - $146,875.00The Leidos pay range for this job level is a general guideline onlyand not a guarantee of compensation or salary. Additional factors considered in extending an offer include (but are not limited to) responsibilities of the job, education, experience, knowledge, skills, and abilities, as well as internal equity, alignment with market data, applicable bargaining agreement (if any), or other law.REQNUMBER: R-00145425All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability or veteran status. Leidos will consider qualified applicants with criminal histories for employment in accordance with relevant Laws. Leidos is an equal opportunity employer/disability/vet.