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CapTech

CapTech

www.captechconsulting.com

1 Job

1,086 Employees

About the Company

CapTech is a technology consulting firm focused on defining and delivering what's next for organizations. We are strategic problem-solvers. At the heart of our approach is a deep understanding of the power of technology. We thrive on leveraging the latest innovations to overcome even the greatest of obstacles. See how at captechconsulting.com.

Listed Jobs

Company background Company brand
Company Name
CapTech
Job Title
Machine Learning/Data Science Engineer
Job Description
**Job Title:** Machine Learning/Data Science Engineer **Role Summary:** Design, develop, and deploy scalable machine learning systems and data-driven solutions for enterprise clients. Lead cross‑functional teams, manage model production pipelines, and contribute to growth of the ML practice through client engagements and knowledge sharing. **Expectations:** - Deliver end‑to‑end ML solutions that meet business objectives. - Translate complex client problems into data‑centric models and analytical metrics. - Scale models to handle multi‑billion‑record datasets on cloud platforms. - Lead and mentor junior data scientists/engineers. **Key Responsibilities:** - Collaborate with clients, data scientists, and engineers to define ML project scope and deliverables. - Deconstruct business requirements into data‑driven processes, models, and evaluation measures. - Analyze and transform large datasets stored in AWS, Azure, or GCP environments. - Design, build, and deploy advanced analytics such as recommender systems, NLP models, and risk scoring engines. - Productionize ML pipelines with focus on optimization, scalability, and reliability. - Deliver client presentations, propose solutions, and support business development initiatives. - Guide model versioning, governance, and continuous integration/continuous deployment (CI/CD) practices. **Required Skills:** - Proficiency in Python or Scala for data‑engineering and ML development. - Experience with SQL, Spark, NoSQL, and cloud data processing frameworks. - Containerization (Docker) and microservices architecture. - Data warehousing expertise (Snowflake, Databricks, Azure SQL, Amazon RDS). - Application of statistical modeling and ML algorithms across domains (customer analytics, marketing, finance, digital channels). - Production‑scale ML system implementation (personalization, NLP, computer vision). - DevOps and automation best practices, including CI/CD pipelines. - Model management, versioning, and deployment best practices. - Strong communication and problem‑framing skills across cross‑industry business contexts. **Required Education & Certifications:** - Bachelor’s degree in Computer Science, Data Science, Statistics, Engineering, or related field, or equivalent combination of education and experience. - Relevant certifications (e.g., AWS Certified Machine Learning – Specialty, Azure ML Engineer Associate, Google Professional Data Engineer) are advantageous but not mandatory.
Chicago, United states
On site
01-01-2026