Responsibilities
- Architect, design, and lead the implementation of highly complex, scalable, and resilient data solutions in the cloud, leveraging AWS, Snowflake, dbt, Fivetran, and other modern technologies.
- Be the Expert. Quickly build subject matter expertise in a specific business area and data domain. Understand the data flows from creation, ingestion, transformation, and delivery. Examples: Embed into a new line of business and work with engineering and finance partners to deliver initial data models and insights. Communicate with the engineering teams to fix data gaps (e.g. missing data objects or attributes) and take accountability for fixing issues anywhere in the stack.
- Support defining and executing the overarching strategy for the analytics engineering function, including the development and evangelization of data frameworks, standards, and best practices across the organization.
- Lead efforts in designing, building, and maintaining a robust, governed, and scalable semantic layer to provide consistent and reliable data access for business intelligence and analytics.
- Spearhead the technical vision and roadmap for data quality and governance, establishing frameworks and processes to ensure data integrity and proactively address systemic issues.
- Act as a primary technical consultant to senior executives and business stakeholders, translating complex data concepts into actionable insights and strategic recommendations.
- Mentor, coach, and develop junior and mid-level analytics engineers, fostering a culture of technical excellence, innovation, and continuous learning within the team.
- Set standards for documentation, conduct advanced peer code reviews, and define comprehensive testing strategies for data solutions.
- Continuously evaluate and champion new technologies and methodologies to enhance the data and analytics capabilities at Huntress.
Requirements
- 7+ years of progressive experience in analytics engineering, data engineering, or a similar role, with a strong emphasis on architecting and implementing large-scale data solutions.
- Financial & Go-to-Market Data Experience: Familiarity with data producers supporting Financial, Marketing, and Sales data initiatives and the handling of sensitive PII and board level reporting across a broad stakeholder base.
- Data Modeling Expertise: Mastery of developing modular and reusable data models to accelerate self-service analytics (e.g. star schemas, snowflake schemas).
- Expert-level proficiency with cloud data warehousing technologies such as Snowflake (preferred), Redshift, or BigQuery.
- Extensive experience developing and optimizing complex ETL/ELT programs and data pipelines using tools like DBT, Fivetran, Airflow, etc.
- Expertise in query performance tuning, materialization strategies, and data transformation.
- Data Visualization: Proficient in building polished dashboards in tools like Looker, Sigma, Tableau.
- Proficiency with AI Tools: Expertise in prompt engineering and design for LLMs (e.g., GPT) including creating, refining, and optimizing prompts to internal use cases and the end to end process of delivering data products.
- Demonstrated ownership of full life cycle data analytics development: Strategic Planning, Requirements, Architecture, Design, Testing, Deployment, and Operations.
- Exceptional presentation, communication, and interpersonal skills, with the ability to articulate complex technical ideas to both technical and non-technical audiences, including C-level executives, and drive consensus.
- Intermediate to Advanced Python: proficient in data science languages (e.g Python, R) for advanced data manipulation, statistical modeling and ML
- Intermediate to Advanced experience with a wide range of Machine Learning and analytical techniques, their real-world advantages/drawbacks, and experience deploying models to production.
- Strong strategic thinking, problem-solving, and decision-making capabilities.
- A bachelor’s or master’s degree in Computer Science, Technology, Engineering, or a related field; or equivalent deep industry experience.
Nice to Have
- SaaS experience is a plus.
- Experience migrating legacy architectures & data models is a plus.
Benefits
- 100% remote work environment - since our founding in 2015
- Generous paid time off policy, including vacation, sick time, and paid holidays
- 12 weeks of paid parental leave
- Highly competitive and comprehensive medical, dental, and vision benefits plans
- 401(k) with a 5% contribution regardless of employee contribution
- Life and Disability insurance plans
- Stock options for all full-time employees
- One-time $500 reimbursement for building/upgrading home office
- Annual allowance for education and professional development assistance
- $75 USD/month digital reimbursement
- Access to the BetterUp platform for coaching, personal, and professional growth
Work Arrangement
Remote (Worldwide)
Additional Information
- Huntress is committed to creating a culture of inclusivity where every single member of our team is valued, has a voice, and is empowered to come to work every day just as they are. We do not discriminate based on race, ethnicity, color, ancestry, national origin, religion, sex, sexual orientation, gender identity, disability, veteran status, genetic information, marital status, or any other legally protected status. We do discriminate against hackers who try to exploit businesses of all sizes.
- If you require reasonable accommodation to complete this application, interview, or pre-employment testing or participate in the employee selection process, please direct your inquiries to accommodations@huntresslabs.com. Please note that non-accommodation requests to this inbox will not receive a response.
- Huntress uses artificial intelligence tools to assist in reviewing and evaluating job applications, including resume screening, skills assessment, and candidate matching and comparisons. These AI tools support our human recruiters in the initial review process but do not make final hiring decisions without human involvement. By submitting your application, you acknowledge this use of AI in our recruitment process. Please review our Candidate Privacy Notice for more details on our practices and your data privacy rights.
