Company
Technology
PrincipalDataScientist
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“Principal Data Scientist. Skills: AI, Machine learning, Data science, Generative AI. Lead development and deployment of AI/ML models. Define technical strategy”
Industry & Context.
Problem-solving mindset; Navigate ambiguity; Drive technical decisions
What They're Looking For.
Must Have
10+ years of experience in data science, AI, or machine learning, Proven experience leading complex AI/ML projects, Experience working with large-scale datasets, Programming skills in Python
Nice to Have
Advanced degree (Master’s or PhD) in Computer Science, Mathematics, Statistics, or a related field
What You'll Do.
Lead development and deployment of AI/ML models
Define technical strategy
Define model development standards
Define best practices
Collaborate with engineering and product teams
Design scalable AI solutions
Build scalable AI solutions
Operationalize scalable AI solutions
Analyze large-scale datasets
Identify opportunities for model improvement
Provide technical leadership
Provide mentorship to data scientists
Ensure high-quality outputs
Establish methodologies for AI/ML development
Establish frameworks for AI/ML development
Establish governance standards for AI/ML development
Partner with stakeholders
Align data science initiatives with business goals
Align data science initiatives with customer needs
Communicate technical findings
Communicate recommendations
Lead small to mid-sized teams
Provide direction to teams
Provide structure to teams
Provide execution oversight across projects
Continuously evaluate AI technologies
Continuously evaluate ML technologies
How You'll Work.
Team & Collaboration
Collaborate with engineering teams; Collaborate with product teams; Partner with stakeholders; Cross-functional teams
Communication Scope
Communicate insights; Communicate technical findings; Communicate recommendations
Process & Methodology
Execution oversight
Full Job Description
## Accountabilities Lead the development and deployment of advanced AI and machine learning models to solve complex business and product challenges. Define technical strategy, model development standards, and best practices across data science teams. Collaborate with engineering and product teams to design, build, and operationalize scalable AI solutions. Analyze large-scale datasets to identify meaningful patterns, trends, and opportunities for model improvement. Provide technical leadership and mentorship to junior and mid-level data scientists, ensuring high-quality outputs. Establish methodologies, frameworks, and governance standards for AI/ML development and deployment. Partner with stakeholders to align data science initiatives with business goals and customer needs. Communicate insights, technical findings, and recommendations clearly to both technical and non-technical audiences. Lead small to mid-sized teams, providing direction, structure, and execution oversight across projects. Continuously evaluate emerging AI and ML technologies to improve model performance and innovation. Requirements: 10+ years of experience in data science, AI, or machine learning roles with significant senior-level responsibility. Proven experience leading complex AI/ML projects and delivering production-grade solutions. Strong background in mentoring, coaching, and guiding technical teams in a leadership capacity. Deep expertise in machine learning techniques such as deep learning, gradient boosting, and ensemble methods. Strong experience with large language models and transformer architectures (e.g., BERT, T5, GPT-based systems). Solid understanding of prompt engineering, LLM behavior, and applied generative AI techniques. Experience working with large-scale datasets and distributed computing frameworks (e.g., Spark, Hadoop). Strong programming skills in Python and familiarity with modern ML frameworks. Excellent communication skills with the ability to influence senior stakeho
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