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Ascentt

Sr. Principal Data Scientist / Machine Learning Engineer

Reposted 3 Days Ago
In-Office
Plano, TX
Senior level
In-Office
Plano, TX
Senior level
Lead high-impact AI/ML projects in the automotive domain, overseeing technical strategy, project execution, and client management, while mentoring junior team members.
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Ascentt is building cutting-edge data analytics & AI/ML solutions for global automotive and manufacturing leaders. We turn enterprise data into real-time decisions using advanced machine learning and GenAI. Our team solves hard engineering problems at scale, with real-world industry impact. We’re hiring passionate builders to shape the future of industrial intelligence.

Job Summary 

We're looking for an exceptionally skilled and experienced Sr. Principal Data Scientist / Machine Learning Engineer to lead and deliver high-impact AI/ML projects across Automotive domain. The ideal candidate will have a deep understanding of data science and machine learning tools, techniques, and algorithms, coupled with a proven track record of successfully leading projects from conception to deployment. This role demands strong client-facing communication skills and the ability to translate complex technical concepts into tangible business value. 

Key Responsibilities 

  • Technical Leadership & Strategy: 
  • Serve as a primary technical expert and thought leader in Data Science and Machine Learning. 
  • Define and drive the technical strategy for AI/ML initiatives, identifying high-value opportunities for optimization, predictive analytics, and process improvement across diverse use cases. 
  • Architect and oversee the development of robust, scalable, and production-ready DS/ML models and solutions. 
  • Stay at the forefront of the latest advancements in DS/ML, especially those applicable to various industries and large-scale data problems. 
  • Project Leadership & Delivery: 
  • Lead end-to-end DS/ML projects, including requirements gathering, data exploration, model development, validation, deployment, and monitoring. 
  • Define project scope, timelines, and deliverables, ensuring successful execution within budget and schedule constraints. 
  • Mentor and guide junior and mid-level data scientists and ML engineers, fostering a culture of technical excellence and continuous learning. 
  • Drive MLOps best practices for reliable and efficient model deployment and lifecycle management. 
  • Client Management & Communication: 
  • Act as a trusted advisor to clients and internal stakeholders, understanding their business challenges and translating them into solvable DS/ML problems. 
  • Effectively communicate complex analytical findings, model performance, and business recommendations to both technical and non-technical audiences. 
  • Manage client expectations, present progress reports, and ensure stakeholder satisfaction. 
  • Facilitate workshops and discovery sessions to identify new opportunities for AI/ML adoption. 
  • Use Case Development & Problem Solving: 
  • Lead the identification, prioritization, and execution of complex AI/ML use cases that drive significant business impact. 
  • Apply deep analytical skills to dissect complex problems, derive actionable insights from data, and design innovative solutions. 
  • Develop and implement models for: 
  • Predictive Analytics: Forecasting, risk assessment, and anomaly detection. 
  • Optimization: Improving efficiency, resource allocation, and decision-making. 
  • Pattern Recognition: Identifying trends, segments, and relationships within large datasets. 
  • Automation: Leveraging ML for intelligent process automation and enhanced operational efficiency. 
  • Tool & Algorithm Proficiency: 
  • Demonstrated expertise in a wide range of DS/ML tools and platforms (e.g., Python, R, TensorFlow, PyTorch, scikit-learn, Spark, AWS Sagemaker, Azure ML). 
  • Deep understanding and practical application of various machine learning algorithms (e.g., supervised, unsupervised, reinforcement learning, deep learning, time series analysis, NLP, computer vision). 
  • Proficiency in data manipulation, SQL, and working with large, complex datasets from various sources. 

Qualifications 

  • Master's or Ph.D. in Data Science, Machine Learning, Computer Science, Engineering, Operations Research, Statistics, or a related quantitative field. 
  • 8+ years of progressive experience in Data Science and Machine Learning roles, with at least 3-5 years in a leadership or principal-level capacity. 
  • Demonstrated experience leading multiple end-to-end DS/ML projects successfully from concept to production. 
  • Proven track record of managing client interactions, presenting technical solutions, and influencing strategic decisions. 
  • Expertise in Python programming (NumPy, Pandas, Scikit-learn, Keras/TensorFlow/PyTorch). 
  • Strong understanding of statistical modeling, experimental design, and hypothesis testing. 
  • Experience with cloud platforms (AWS, Azure, GCP) and MLOps principles. 
  • Excellent communication, interpersonal, and presentation skills. 

Preferred Qualifications 

  • Experience with real-time data processing and streaming analytics. 
  • Knowledge of various industry verticals and their unique data challenges (e.g., finance, healthcare, retail, logistics, manufacturing). 
  • Experience with large-scale data architectures (e.g., data lakes, data warehouses, distributed computing). 
  • Publications or presentations in relevant fields. 

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