Job Title: Data Science & Advanced Analytics
Consultant
Location: Alhambra, CA (Hybrid)
Duration: 12 Months
Send me the resumes to Venu.e...@pyramidinc.com
Only H1B's. Minimum 10+ years of experience
Job Description:
Public
Works is establishing a comprehensive Data Science Program to enhance
data-driven decision-making, improve operational efficiency, and fully leverage
modern data platforms such as Databricks in support of the Los Angeles County
InfoHub. This initiative is critical to enabling scalable analytics,
strengthening data governance, and delivering actionable insights across
departmental operations. To effectively implement and mature this program—and
to address the increasing demand for predictive analytics and AI-driven
solutions—the department requires a highly qualified AI, Data Science &
Advanced Analytics Consultant. This resource will provide specialized expertise
to accelerate program development, support the design and deployment of
advanced analytics solutions, and ensure alignment between data, technology,
and business objectives. The consultant will play a key role in establishing
foundational capabilities, enabling knowledge transfer to internal staff, and
positioning Public Works to sustainably expand its data science and AI
initiatives. The AI, Data Science & Advanced Analytics Consultant should
possess the following skills and competencies:
- Exceptional communication and stakeholder engagement
skills, with the ability to clearly translate complex data, analytical
models, and AI concepts into actionable insights for both technical and
non-technical audiences, while maintaining a strong customer service
orientation.
- Advanced analytical and business acumen, including
experience with statistical methods and modeling techniques such as
regression analysis, association analysis, clustering, and outlier
detection, along with a solid foundation in exploratory data analysis and
problem framing.
- Working knowledge of data architecture and database
design principles, with the ability to collaborate effectively with Data
Management and Data Engineering teams to ensure data quality,
accessibility, and alignment with enterprise standards.
- Proficiency in data visualization and reporting tools
to effectively communicate insights, trends, and performance metrics to
support decision-making.
- Strong project and time management capabilities, with a
proven ability to manage multiple priorities, meet deadlines, and deliver
high-quality outputs in a fast-paced, evolving environment.
- Demonstrated ability to work both collaboratively and
independently, driving initiatives forward with minimal oversight while
aligning data, analytics, and business objectives across cross-functional
teams.
- High attention to detail and commitment to data
quality, ensuring accuracy, consistency, and reliability in all analyses,
models, and deliverables.
- Experience supporting the development and
operationalization of data science solutions, including contributing to
scalable analytics frameworks and enabling knowledge transfer to internal
teams.
Additional
Experience Required:
- Five (5)+ years of experience in data analysis,
analytics, data visualization and reporting with the ability to present
insights to business and executive stakeholders.
- Five (5)+ years of experience with SQL programming,
using data sources such as SQL Server, Oracle, PostgreSQL, or similar
relational databases.
- Two (2)+ years of experience working with Databricks,
Genie and similar AI cloud-based analytics platforms, including notebook
development, feature engineering, Machine Learning model training, and
workflow orchestration.
- Two (2)+ years of experience collaborating with data
engineering and data science teams to design data pipelines, optimize data
transformations, and implement Lakehouse or data warehouse architectures
(e.g., Databricks, Snowflake, SQL-based platforms).
- One (1)+ years of experience applying advanced
analytics and predictive modeling (e.g., regression, classification,
clustering, forecasting, natural language processing).
Additional
Education Required:
This
classification requires possession of a Bachelor’s degree in Data Science,
Computer Science, Statistics, Applied Mathematics, Engineering, Information
Technology, or a closely related quantitative field. Additional qualifying
professional experience may be substituted for the required education on a
year-for-year basis.
- Industry-recognized certifications in data science or
cloud analytics, such as:
- Microsoft Azure Data Scientist Associate (DP-100)
- Databricks Certified Data Scientist or Machine Learning
Professional
- AWS Machine Learning Specialty
- Google Professional Data Engineer or equivalent
advanced analytics certifications.