Principal Applied Scientist - Machine Learning
Listed on 2026-02-12
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IT/Tech
Machine Learning/ ML Engineer, Data Scientist, AI Engineer, Data Analyst
About Ave Point Beyond Secure. AvePoint is the global leader in data security, governance, and resilience, going beyond traditional solutions to ensure a robust data foundation and enable organizations worldwide to collaborate with confidence. Over 25,000 customers worldwide rely on the AvePoint Confidence Platform to prepare, secure and optimize critical data across Microsoft, Google, Salesforce and other collaboration environments. AvePoint’s global channel partner program includes approximately 5,000 managed service providers, value‑added resellers and systems integrators, with solutions available in more than 100 cloud marketplaces.
At AvePoint, we are committed to investing in our people. Agility, passion and teamwork set us up to do our best work and foster a culture where you are empowered to craft your career, make an impact, and own your future.
We are seeking an analytical and innovative Data Scientist to join our Data & AI team. You will play a key role in developing and deploying advanced machine learning models to solve real‑world business challenges. Your efforts will help optimize data pipelines, extract actionable insights, and shape the future of intelligent solutions at AvePoint.
YourKey Responsibilities
- Design, build, and deploy machine learning models leveraging structured and unstructured data.
- Shape and engineer data pipelines for optimal model performance and production‑grade scalability.
- Collaborate cross‑functionally with engineers, researchers, and product teams to define requirements and deliver impactful AI/ML solutions.
- Analyze experimental data, conduct model validation, and continuously improve accuracy and robustness.
- Document methodologies and results, presenting findings to both technical and non‑technical stakeholders.
- Stay up‑to‑date with the latest advancements in machine learning and data science best practices.
- Support operationalizing models within AvePoint’s ecosystem, ensuring responsible data handling and compliance.
- Bachelor’s or Master’s degree in Computer Science, Data Science, Engineering, Statistics, or related field (PhD not required, but a strong plus).
- 10+ years of hands‑on machine learning experience, including building, evaluating, and streamlining data‑driven models for business use.
- Proficiency with Python and major ML/data libraries (e.g., Pandas, Scikit‑learn, Tensor Flow, PyTorch).
- Strong background in data wrangling, cleansing, feature engineering, and ETL pipeline development.
- Practical experience deploying models in a cloud or distributed environment.
- Commitment to excellence and continual professional development.
- Excellent analytical, problem‑solving, and communication skills.
- Initiative and ownership in research and project execution.
- Collaboration with diverse, global teams.
- Clarity in communicating technical information to varied audiences.
- Competitive market‑based compensation (salary, yearly bonus + equity).
- Career progression and internal mobility opportunities.
- Work‑life balance through a hybrid working model.
- Unlimited PTO.
This role offers the opportunity to work at the intersection of machine learning innovation and industry impact, contributing to AvePoint’s vision for secure, intelligent, and data‑driven workplaces.
The salary range for this role is $200,000 - $245,000. At AvePoint, we strive to offer competitive, fair, and equitable total rewards. The listed salary range represents a good faith estimate, with final offers based on location, experience, skills, and qualifications. The listed range reflects base salary only; our total rewards include base salary, comprehensive benefits (medical, dental, vision, 401(k) with match, unlimited PTO), and depending on the role, bonuses, commissions, or equity (RSUs).
We welcome compensation discussions—apply even if your expectations fall outside the range.
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