jobs in VALSEA

全职 Speech - Applied ML Engineer 工作, 薪水, VALSEA 公司招聘中 - Ricebowl

Speech - Applied ML Engineer

VALSEA

Undisclosed

Singapore

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工作地点

  • Singapore

职位描述

岗位职责

About The Role

This is a high-ownership applied ML role focused on speech in real production constraints. You will improve SEA speech performance across languages, accents, code-switching, and noisy audio while working under real latency, cost, and reliability requirements. You will be trusted with production-impacting changes and expected to operate with maturity, initiative, and speed.

What This Role Is Really About

You are not here to only run notebooks.

You are here to:

  • Take ownership of model and pipeline improvements that move core speech metrics.
  • Move from experiments to deployed improvements without being micromanaged.
  • Identify failure modes and edge cases in real-world speech data.
  • Ship models, features, or tuning that measurably improve accuracy, robustness, or latency.
  • Think beyond BLEU/WER and understand customer and business impact.

You should be comfortable where:

  • Requirements and evaluation criteria evolve.
  • Data is messy, multi-lingual, and imperfect.
  • Speed matters, but quality and safety matter too.
  • You must make decisions with incomplete labels and signals.

Responsibilities

  • Experiment with and tune speech/ASR models for SEA languages and accents.
  • Design and run experiments under realistic production constraints (latency, cost, memory).
  • Work on inference optimisation and GPU utilisation.
  • Develop strategies for multilingual and code-switching scenarios.
  • Collaborate with engineering to integrate models into production pipelines.
  • Build evaluation suites and datasets for tracking model performance.
  • Document approaches, experiments, and tradeoffs.

What We Expect From You

  • Founding Mindset
    • You think in terms of shipped improvements, not just paper metrics.
    • You ask “how will this behave in production?” before trying a new approach.
    • You act like speech quality is your responsibility.
    • You balance research depth with shipping velocity.
    • You don’t wait for others to point out model failures; you go find them.
  • Maturity
    • You communicate clearly about what is known, unknown, and risky.
    • You admit when an experiment failed and extract learning.
    • You take feedback from both researchers and engineers without ego.
    • You stay calm under pressure when a model behaves unexpectedly in production.
    • You follow through on investigations into failure modes.
  • Initiative
    • You propose new hypotheses, architectures, or data strategies.
    • You investigate root causes behind model errors instead of just tweaking hyperparameters.
    • You improve evaluation pipelines and diagnostics.
    • You refine data curation and annotation processes.
    • You continuously balance performance and cost optimisations.
  • ML / Speech Competence
    • Solid Python and PyTorch fundamentals.
    • Understanding of speech and ASR basics.
    • Experience with model training, fine-tuning, and evaluation.
    • Familiarity with GPU inference and optimisation workflows.
    • Practical ML engineering mindset, not just theory.
Bonus

  • Experience with multilingual or low-resource speech.
  • Exposure to on-device or low-latency inference.
  • Experience shipping ML models into production systems.

What Success Looks Like

  • You own improvements to a specific speech use case or language.
  • You ship at least one measurable improvement in accuracy, robustness, or latency.
  • You identify and document notable failure modes and mitigation strategies.
  • You contribute to model evaluation and monitoring infrastructure.

What You Gain

  • Real-world applied ML experience under production constraints.
  • Direct collaboration with founders and senior engineers.
  • A portfolio of experiments and shipped improvements in production.
  • A path towards an applied ML or speech-focused engineering role.

Who Should Not Apply

  • If you only want to work on toy datasets and offline benchmarks.
  • If you avoid messy data and hard debugging.
  • If you prefer purely research environments detached from production.
  • If you are looking for a low-intensity internship.

Who Will Thrive Here

  • Builders who love shipping ML to production.
  • Systems thinkers who see the whole pipeline, not just the model.
  • Calm debuggers of strange model behaviour.
  • High-agency individuals who care about real-world impact.

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