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Machine Learning Engineer

Cognite
Bengaluru, IndiaTrending: 84 views

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Description

What Cognite is: Relentless to achieve Cognite operates at the forefront of industrial digitalization, building AI, and data solutions that solve the world’s hardest, highest-impact problems. With unmatched industrial heritage and a comprehensive suite of AI capabilities, including low-code AI agents, Cognite accelerates the digital transformation to drive operational improvements. We thrive in challenges. We challenge assumptions. We execute with speed and ownership. If you view obstacles as signals to step forward - not backwards - you’ll feel right at home here. Our Moonshot is bold: Unlock $100B in customer value by 2035, and redefine how global industry works. Join us in this venture where AI and data meet ingenuity, and together, we will forge the path to a smarter, more connected industrial future. About The Opportunity We are building the next generation of contextual AI for Industrial Operations. Our team focuses on transforming unstructured, complex industrial data—ranging from technical manuals to complex piping and instrumentation diagrams (P&IDs)—into structured, actionable intelligence. We leverage state-of-the-art Deep Learning, Generative AI, and Computer Vision to drive efficiency, safety, and operational excellence. About The Role As a Machine Learning Engineer, you will be a key contributor to building the models and pipelines that power our industrial contextualization platform. Working closely with senior and staff-level engineers, you will focus on execution—transforming research prototypes into high-performance, real-time applications and building the infrastructure that supports them. This is an engineering-first role. We seek hands-on builders who write production-grade code, understand system design, and tackle complex infrastructure, treating ML models as software components in a large industrial architecture—not pure data scientists building isolated models. How you’ll demonstrate Ownership You love writing clean, readable code and seeing it work. You are deeply curious about how complex ML systems operate in the real world and are passionate about turning raw data into robust, reliable pipelines. You don’t just write research scripts; you want to build durable software. You know how to take a well-defined technical plan, execute it efficiently, and ask the right questions when you hit roadblocks. You prioritize building things the right way the first time over quick, fragile hacks. You are eager to absorb new paradigms in MLOps, containerization, and model deployment, applying feedback rapidly to improve your craft. The Impact you bring to Cognite Key Responsibilities Build, test, and maintain robust data pipelines for large-scale industrial datasets. Assist in deploying data science prototypes to production. Write high-quality, testable Python code, primarily creating RESTful/gRPC APIs for ML capabilities. Containerize applications (Docker) and navigate Linux to handle massive volumes of unstructured industrial data. Run experiments, fine-tune existing foundational models (NLP, Vision-Language), and evaluate ML libraries to enhance document parsing and entity matching. Write rigorous unit/integration tests and monitor deployed models for drift and performance. Collaborate closely with senior staff (engineers, data scientists, product managers) to deliver features on the technical roadmap. Required Skills And Qualifications Bachelor’s or Master's degree in Computer Science, Data Science, Software Engineering, or a related field. 3–6 years of industry experience in software engineering with a strong focus on machine learning, or vice versa. Strong programming skills in Python, with a proven ability to write clean, modular, and testable code. Solid hands-on experience with frameworks like PyTorch, TensorFlow, Hugging Face, or LangChain. Experience working with large datasets, writing complex SQL queries, and hands-on familiarity with data processing libraries or frameworks (e.g., PySpark, Pandas at scale, or Dask) Familiarity with MLOps basics, containerization (Docker), Linux command-line tools, and fundamental cloud services (AWS, Azure, or GCP). Solid understanding of core computer science fundamentals, data structures, and algorithms. What Sets You Role Apart The ability to take a well-defined technical problem or architecture plan from a principal engineer and write highly efficient, bug-free code to solve it. A rapid trajectory in absorbing new paradigms (like vector databases or agentic workflows) and efficiently applying them to massive volumes of real-world industrial data without crashing the system. A commitment to treating ML code like production software, never skipping the tests or the documentation. Preferred Qualifications / Good To Haves Academic or early industry experience with Vision-Language Models (VLMs) or Computer Vision (e.g., document layout analysis). Hands-on familiarity with basic RAG pipelines and Vector Databases (

Required skills

Mid-Senior levelFull-timeEngineering

About Bengaluru, India

Cost of living

low

Avg tech salary

12L-35L INR

Remote work

Hybrid dominant, startups offer remote

Posted 3 weeks agoSource: LinkedInView original listing

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Glassdoor rating
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