Ocrolus

Staff Machine Learning Engineer

Ocrolus

full-time

Posted on:

Origin:  • 🇮🇳 India

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Job Level

Lead

Tech Stack

AWSCloudDockerGoGoogle Cloud PlatformJavaKubernetesOpen SourcePythonPyTorchScalaTensorflow

About the role

  • Spearhead the design and architecture of robust, scalable machine learning systems that are primed for seamless deployment into production.
  • Design and implement essential machine learning infrastructure and tools that support multiple teams, streamlining workflows and improving efficiency across the organization
  • Address complex infrastructure and machine learning challenges that span the organization. Analyze systems to identify and rectify bottlenecks, inefficiencies, and areas for improvement.
  • Lead the development of model evaluation frameworks, optimize data pipelines, and implement continuous training strategies to ensure that models remain accurate and up-to-date.
  • Leverage state-of-the-art machine learning models within the fintech domain to automate and enhance document processing.
  • Work closely with stakeholders from Product, Engineering, and Operations to ensure that goals are aligned and that execution is coordinated and effective.
  • Provide mentorship to engineers within both ML and platform teams, fostering their professional development and contributing to the overall growth of Ocrolus' technical expertise. Coach and influence others to improve company culture.
  • Play an active role in shaping Ocrolus-wide engineering standards, participate in design reviews (RFCs/ADRs), and promote adherence to best practices. Champion Code Quality and Reliability: Be a vocal advocate for code quality, observability, and system reliability. This includes everything from implementing rigorous A/B testing to setting up real-time monitoring systems.
  • Understand how their team and projects fit into the larger business goals. Bring together technical and nontechnical stakeholders towards common objectives, suggest alternative solutions to customer problems, and help teach and support more junior teammates.
  • Look for opportunities for process improvements within their team and works with others to implement process changes.
  • Find ways to incorporate company values into day-to-day decisions and have ideas on how to build policies/processes that support the improvement of company culture.

Requirements

  • Bachelor’s or Master’s degree in Computer Science, Machine Learning, Applied Mathematics, or a related technical field
  • 7+ years of experience developing and deploying machine learning models in production environments, with a focus on real-world applications and measurable impact.
  • Deep expertise in Python and at least one major ML framework (e.g., PyTorch, TensorFlow); strong proficiency in building, training, and optimizing deep learning models.
  • Proven experience in applying ML techniques to computer vision, OCR, or NLP problems, ideally at scale and in latency-sensitive environments.
  • Strong understanding of ML system design, including model evaluation, A/B testing, continuous training, and monitoring in production.
  • Solid engineering fundamentals — data structures, system design, version control, and testing — with a history of writing clean, maintainable, and scalable code.
  • Experience with modern infrastructure tools and cloud platforms (Docker, Kubernetes, Helm, AWS/GCP); comfortable navigating MLOps pipelines and deployment workflows.
  • Demonstrated ability to lead cross-functional initiatives, influence architectural decisions, and communicate complex technical ideas to diverse stakeholders.
  • Experience mentoring engineers and fostering a culture of high standards, curiosity, and ownership.