Provide mentorship and technical guidance to junior team members. * Continuous Improvement: Stay ... related quantitative discipline. * Experience: Minimum 5 years of experience in analytics ...
Provide mentorship and technical guidance to junior team members. * Continuous Improvement: Stay ... related quantitative discipline. * Experience: Minimum 5 years of experience in analytics ...
Senior Analytics Engineer
Lehi, UT · On-site
$98K - $134K/yr
Provide mentorship and technical guidance to junior team members. * Continuous Improvement: Stay ... related quantitative discipline. * Experience: Minimum 5 years of experience in analytics ...
Senior Analytics Engineer
Lehi, UT · On-site
$98K - $134K/yr
Provide mentorship and technical guidance to junior team members. * Continuous Improvement: Stay ... related quantitative discipline. * Experience: Minimum 5 years of experience in analytics ...
Junior Quant Developer information
See Provo, UT salary details
$58.4K - $67.1K
4% of jobs
$71.9K is the 25th percentile. Wages below this are outliers.
$67.1K - $75.8K
38% of jobs
The median wage is $80.5K / yr.
$75.8K - $84.5K
15% of jobs
$84.5K - $93.2K
11% of jobs
$98K is the 75th percentile. Wages above this are outliers.
$93.2K - $101.9K
14% of jobs
$101.9K - $110.6K
11% of jobs
$110.6K - $119.3K
5% of jobs
$119.3K - $128K
1% of jobs
$128K - $136.7K
1% of jobs
$136.7K - $145.4K
1% of jobs
$145.4K - $154.1K
0% of jobs
$58.4K
$102.2K
$154.1K
How much do junior quant developer jobs pay per year?
What is a Junior Quant Developer job?
A Junior Quant Developer is an entry-level role that combines software development with quantitative analysis in the finance industry. They assist in building and maintaining financial models, trading algorithms, and risk management tools. Typically, they work with programming languages like Python, C++, or Java and utilize mathematical and statistical techniques. Their responsibilities often involve data analysis, backtesting strategies, and optimizing trading systems. This role serves as a stepping stone toward becoming a full-fledged Quant Developer or Quantitative Analyst.
What are the key skills and qualifications needed to thrive in the Junior Quant Developer position, and why are they important?
To thrive as a Junior Quant Developer, you need strong programming skills (usually in Python, C++, or Java), foundational knowledge in mathematics and statistics, and a relevant degree in fields like computer science, mathematics, or engineering. Familiarity with quantitative libraries, financial modeling tools, and version control systems such as Git is often expected. Analytical thinking, teamwork, and effective communication are important soft skills for collaborating with senior developers and traders. These skills are essential for building robust quantitative models, contributing to complex projects, and growing within a fast-paced financial technology environment.
What kinds of projects and tasks can a Junior Quant Developer expect to work on?
As a Junior Quant Developer, you can expect to assist with developing, testing, and optimizing quantitative models used for trading or risk assessment. Your day-to-day tasks may involve coding algorithms, analyzing large datasets, backtesting strategies, and debugging model performance, all under the guidance of more experienced team members. You’ll also have opportunities to work closely with traders, data scientists, and senior quants, contributing to both research initiatives and real-time trading systems. This collaborative environment provides excellent learning opportunities and valuable exposure to different aspects of quantitative finance, helping you build expertise for career growth.
Job description
Job Summary
As a Senior Analytics Engineer within the Operational Analytics department, you'll play a key role in transforming complex, raw data into reliable and performant data products that power insights across MX. You'll combine deep technical expertise in SQL, data modeling, and cloud-based data warehouses (such as Google BigQuery) with a strong sense of data stewardship, ensuring accuracy, accessibility, and trust in the analytics that drive business and product decisions.
This role is ideal for a data professional who thrives at the intersection of engineering and analytics-someone who can architect and maintain scalable data models, enforce high standards for data quality, and collaborate closely with cross-functional partners to enable data-driven decisions. As a trusted internal expert, you'll lead by example through mentorship, documentation, and process innovation, helping elevate data practices across the organization.
Job Duties
Data Stewardship:
Design, build, and maintain data pipelines and models that transform raw data into reliable, production-ready datasets. Manage and document data definitions, lineage, and transformations using GitLab or similar tools.Data Quality and Governance:
Establish and monitor data quality tests to ensure completeness, accuracy, and consistency. Partner with business stakeholders, IT, and data engineering teams to define and enforce governance standards.Data Accessibility and Democratization:
Develop intuitive, business-friendly data models and assets optimized for analytics. Ensure the right data is available to the right people at the right time, empowering self-service analytics and operational reporting.Feature Store and Data Product Development:
Curate and maintain high-value datasets and features in the Feature Store to support analytical and machine learning use cases. Track usage metrics and continually optimize for performance and impact.Collaboration and Mentorship:
Partner cross-functionally with analysts, engineers, and product teams to define data requirements, identify opportunities for process improvements, and align on strategic priorities. Provide mentorship and technical guidance to junior team members.Continuous Improvement:
Stay current with emerging technologies, tools, and trends in analytics engineering, cloud computing, and data governance. Lead or contribute to initiatives that improve scalability, efficiency, and reliability of MX's data ecosystem.
Requirements
Education:
Bachelor's degree required, preferably in Computer Science, Data Science, Statistics, Mathematics, Engineering, or a related quantitative discipline.Experience:
Minimum 5 years of experience in analytics engineering, data engineering, or business intelligence roles, with a proven track record of designing and delivering reliable, high-performance data products at scale.Technical Skills:
Expert-level SQL proficiency (including advanced window functions, CTEs, subqueries, and query optimization).
Strong understanding of dimensional modeling, star/snowflake schemas, and SCD management.
Proficiency with cloud data warehouses (Google BigQuery preferred; Snowflake, Redshift, or Databricks acceptable).
Familiarity with programming languages such as Python for workflow automation and data quality checks.
Experience with modern data versioning and collaboration tools (Git, CI/CD pipelines).
Understanding of data governance, lineage, and cataloging tools (e.g., dbt, Dataform, or equivalent).
Professional Skills:
Proven ability to collaborate cross-functionally and communicate complex data concepts to non-technical audiences.
Strong analytical and problem-solving skills, with keen attention to detail and system-level thinking.
Demonstrated adaptability and perseverance in fast-paced, evolving environments.
Commitment to quality, transparency, and building trust through reliable data products.
Track record of mentoring peers and contributing to the growth of data capabilities within an organization.
About MX Technologies
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