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बी

Senior Machine Learning Engineer

Berlitz Corporation

Germany · पूरा समय

अप्लाय करने वाले प्रथम बनिए

अनुभव
5+ वर्ष
वेतन
उद्घाटन
1
की तैनाती
4 पहले
कार्य मोड
कार्यालय में हूँ
फिर शुरू करना
आवेदन करना आवश्यक है

नौकरी का विवरण

About the Role

We are seeking an experienced Senior Machine Learning Engineer to lead the development of AI-powered services for our global online learning platform. This position focuses on creating and maintaining the machine learning models that enable real-time speech practice, conversational interaction, and personalized feedback for learners. The role entails end-to-end ownership of various models—including classical, fine-tuned small transformer, edge, and cloud-based models—as well as integrating with external AI providers. This is an active coding position, where you’ll write, maintain, and improve ML services deployed in production, using AI-driven coding tools as part of your daily work.

Responsibilities

  • Design, build, and evaluate machine learning models throughout the entire ML lifecycle, balancing traditional statistical methods with fine-tuning of compact transformer-based models optimized for edge devices.
  • Develop and manage integrations with hosted large language model (LLM) providers, including prompt design, evaluation processes, multi-provider routing, failover strategies, and cost-latency optimization.
  • Implement and operate ML models both on-device and in cloud environments, making informed decisions on deployment based on latency requirements, privacy, and cost considerations.
  • Engage with multi-modal perception pipelines spanning speech recognition (ASR), text processing (NLP), and computer vision (CV) according to product needs, applying sound judgment to evaluate trade-offs across modalities.
  • Conduct practical production engineering tasks involving setting up, maintaining, and upgrading ML services with focus on service constraints, monitoring, drift detection, and correlating offline model metrics with real user outcomes.
  • Build and maintain robust data extraction, transformation, and loading (ETL) pipelines to process learner data from storage and databases, ensuring cleanliness and reduced noise in the input datasets.

Required Skills & Qualifications

  • Minimum of 5 years of experience designing, developing, and deploying machine learning systems in production environments, encompassing both classical ML and applied deep learning techniques.
  • Proficiency in systems programming languages such as Rust or Go is preferred; strong C++ skills are also beneficial. Python or Julia used for data science, modeling, and exploratory data analysis.
  • Hands-on experience with at least one major ML framework (e.g., PyTorch, TensorFlow, JAX), emphasizing real-world production usage over any particular framework allegiance.
  • Familiar with Git version control and collaborative development practices including code review processes.
  • Daily usage of AI-based coding tools and agents integrated within your development workflow, not as occasional helpers.
  • Demonstrated experience integrating hosted LLM services into production platforms, covering prompt engineering, evaluation strategy, cost and latency tradeoffs, and multi-provider orchestration.
  • Capability to independently develop models from first principles and fine-tune pretrained models, making rigorous decisions about which approach best fits project constraints.
  • Strong communication skills, with ability to articulate complex modeling choices to technical peers and explain product impacts clearly to non-technical stakeholders.

Preferred Qualifications

  • Experience with model optimization techniques such as compression, quantization, or distillation for deploying on edge devices.
  • Some hands-on exposure in at least two domains among natural language processing (NLP), speech processing (ASR/TTS), or computer vision (CV), with no expectation to possess full expertise in all three.
  • Proficiency in managing data ETL workflows involving object storage systems (e.g., S3), relational databases (such as Postgres), and data cleaning or noise reduction methods.

Why Join Us?

  • Enjoy broad, full-stack exposure across speech, text, and computer vision within a compact, multidisciplinary team rather than a narrow specialization.
  • Contribute creatively to building model-serving architecture from the ground up without legacy systems or imposed technical debts.
  • Engage in meaningful engineering decisions emphasizing real-world trade-offs around edge computing and multi-provider LLM integration, not just model accuracy metrics.

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