Grid Dynamics
Senior Machine Learning Engineer

How your CV stacks up
Upload your CV to see how well it fits this job role
?%
We are seeking a highly skilled Senior Machine Learning Engineer to join our team in London.
In this pivotal role, you will develop and scale automated evaluation and synthetic data generation (SDG) capabilities that underpin safety assessments across multiple languages and markets. You will work closely with language experts and multilingual annotators to validate automated safety approaches, ensuring robustness and reliability across diverse linguistic contexts.
Responsibilities
Automated Judge Development: Train, fine-tune, and validate automated judge models that can reliably score AI system outputs for safety and policy compliance. Develop calibration and agreement metrics to ensure judges meet human-parity benchmarks. Validation Techniques: Design and implement validation frameworks to assess the accuracy, reliability, and cross-linguistic consistency of automated evaluation systems. Develop methods to detect drift, bias, and failure modes in automated judges across markets. Synthetic Data Generation: Develop and maintain synthetic data generation pipelines to augment evaluation coverage, stress-test safety boundaries, and support evaluation in low-resource languages. Ensure synthetic data is diverse, representative, and validated against human-generated benchmarks. Scalable Analysis & Reporting Automation: Create automated pipelines for analysis and reporting that reduce manual effort, increase reproducibility, and enable rapid cross-market safety assessments. Build tooling that integrates with existing dashboards and reporting workflows.
Reasons to use Rodeo
I’m in my final year doing Economics and I don’t know whether to apply for grad schemes now or do a masters first. What do you think?
Honest answer — it depends on where you want to end up. A lot of top grad schemes (Big 4, civil service, banking) don’t need a masters. Let’s look at the ones you’d be competitive for now, and we can decide if a masters actually adds anything.
Also worth knowing: most autumn 2026 applications are open now. Timing matters more than you think.
Start with a chat, not a search bar
Grad scheme, placement, apprenticeship? Not sure what you want yet — that's fine. Your agent talks it through with you and turns "I have no idea" into a shortlist.
Graduate Consultant — 2026 Scheme
Why you're a good match
StrongYour economics background and your summer at a regional bank line up with what PwC looks for on the consulting scheme. Applications close in four weeks.
See breakdownIt searches the market for you
Every day your agent scans the market matching roles against what actually matters to you, not just keywords on a CV.
Why you're a good match
You’ve got the grades and the economics background, and your bank internship is exactly the experience this scheme looks for. Apply soon — deadlines close within the month.
Experience fit
Your summer at the bank plus your econometrics coursework map directly to the day-one responsibilities on this scheme — client modelling, market briefings, and deal support.
Only hits
No noise. No "maybe this fits." Just roles with a clear explanation of why they're right — and where to focus when applying.
Requirements
3+ years of experience in an ML engineering or applied ML research role, with hands-on experience building and deploying ML models and pipelines. Strong proficiency in Python and ML frameworks (e.g., PyTorch, TensorFlow, Hugging Face Transformers). Experience training, fine-tuning, and evaluating language models and/or classifiers, including prompt engineering and model calibration. Experience building automated data processing, evaluation, or monitoring pipelines. Comfortable with experiment design and statistical validation of model performance across segmented samples. Able to work independently as well as collaboratively with minimal direction. Organized, highly attentive to detail, and manages time well.
Nice to have
Advanced degree (MS/PhD) in Computer Science, Machine Learning, Natural Language Processing, or a related field. Experience working in the industry. Experience with synthetic data generation techniques, including data augmentation, paraphrasing, and controlled generation methods. Experience with multilingual NLP, cross-lingual transfer learning, or low-resource language modeling. Familiarity with evaluation-as-a-service architectures or automated red teaming frameworks. Experience with large-scale distributed computing (e.g., Spark, Ray, or cloud-based ML platforms). Prior experience in AI safety, responsible AI, content moderation, or trust and safety domains. Experience with CI/CD integration for ML model validation and deployment.


Get help with your application
Your very own career expert that helps elevate your application to the next level.
We offer
Opportunity to work on bleeding-edge projects Work with a highly motivated and dedicated team Competitive salary Flexible schedule Benefits package - medical insurance, sports Corporate social events Professional development opportunities Well-equipped office
About Us
Grid Dynamics (NASDAQ: GDYN) is a leading provider of technology consulting, platform and product engineering, AI, and advanced analytics services. Fusing technical vision with business acumen, we solve the most pressing technical challenges and enable positive business outcomes for enterprise companies undergoing business transformation. A key differentiator for Grid Dynamics is our 8 years of experience and leadership in enterprise AI, supported by profound expertise and ongoing investment in data, analytics, cloud & DevOps, application modernization and customer experience. Founded in 2006, Grid Dynamics is headquartered in Silicon Valley with offices across the Americas, Europe, and India.
“It took my CV and asked me questions relevant to understanding what kind of jobs to suggest for me. Suggestions were almost perfect. Jobs were exactly what I’ve been looking for.”
Jessica, London
Skills
Location