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You will be updated with latest job alerts via emailWorkato transforms technology complexity into business opportunity. As the leader in enterprise orchestration Workato helps businesses globally streamline operations by connecting data processes applications and experiences. Its AI-powered platform enables teams to navigate complex workflows in real-time driving efficiency and agility.
Trusted by a community of 400000 global customers Workato empowers organizations of every size to unlock new value and lead in todays fast-changing world. Learn how Workato helps businesses of all sizes achieve more at .
Ultimately Workato believes in fostering a flexible trust-oriented culture that empowers everyone to take full ownership of their roles. We are driven by innovation and looking for team players who want to actively build our company.
But we also believe in balancing productivity with self-care. Thats why we offer all of our employees a vibrant and dynamic work environment along with a multitude of benefits they can enjoy inside and outside of their work lives.
If this sounds right up your alley please submit an application. We look forward to getting to know you!
Also feel free to check out why:
Business Insider named us an enterprise startup to bet your career on
Forbes Cloud 100 recognized us as one of the top 100 private cloud companies in the world
Quartz ranked us the #1 best company for remote workers
We are seeking an experienced Data Science / Machine Learning Engineering Lead to join our team and drive the development of advanced ML/AI capabilities. You will lead a team of Data Scientists / ML Engineers focusing on building and deploying cutting-edge machine learning solutions using our modern ML infrastructure including Anthropic OpenAI and self-hosted LLMs.
Team Leadership & Management
Lead mentor and develop a team Data Scientists Data Engineers ML Engineers
Conduct regular 1:1s performance reviews and career development planning
Foster a collaborative innovative team culture focused on continuous learning
Coordinate work allocation and ensure timely delivery of projects
Facilitate knowledge sharing and best practices across the team
Technical Leadership
Design and implement scalable ML model training pipelines using modern toolset (e.g MLflow Comet Langfuse WandB Trino dbt Spark Flink etc)
Lead fine-tuning initiatives for both commercial (Anthropic Claude OpenAI GPT) and open-source LLMs
Utilise self-hosted LLM infrastructure using Ray AIBrix and vLLM for optimal performance and cost efficiency with Lora/QLora
Architect and oversee model continous validation frameworks within our ecosystem
Develop real-time anomaly detection systems leveraging for streaming data processing
Build predictive models for system performance usage patterns and automation workflow optimization
Establish ML engineering best practices for model versioning monitoring and deployment on Kubernetes
Creation of eval validation and metrics pipelines for models during training and inference
Strategic Initiatives
Optimize the balance between commercial APIs (Anthropic OpenAI) and self-hosted models for different use cases
Partner with product and engineering teams to identify high-impact ML opportunities
Define the teams technical roadmap aligned with company objectives
Drive adoption of state-of-the-art ML techniques and tools
Contribute to infrastructure decisions for scaling our ML platform
Operational Excellence
Implement robust CI/CD pipelines for ML models in Kubernetes environments
Monitor model performance using MLflow tracking and implement drift detection
Manage Flink jobs for real-time feature engineering and anomaly detection
Document processes architectures and decision rationale
Education & Experience
Masters or PhD in Computer Science Machine Learning Statistics or related field
10 years of hands-on experience in data science/machine learning
5 years of experience leading technical teams
Proven track record of deploying ML & LLM models to production at scale
Technical Skills
Deep expertise in Python and ML frameworks (PyTorch TensorFlow)
Extensive experience with commercial LLM APIs (Anthropic Claude OpenAI GPT-4)
Strong proficiency with MLflow for experiment tracking and model management
Experience with distributed computing using Apache Spark
Proficiency with Apache Flink for stream processing and real-time ML
Knowledge of LLM fine-tuning techniques (LoRA QLoRA full fine-tuning)
Expertise in anomaly detection algorithms and time series analysis
Leadership Skills
Demonstrated ability to lead and inspire technical teams
Strong communication skills to translate complex technical concepts to stakeholders
Experience with agile development methodologies
Track record of successful cross-functional collaboration
Ability to balance technical excellence with business pragmatism
Experience with AIBrix vllm or similar ML platform solutions
Experience with AI code generation and anonymisation pipelines
Knowledge of advanced prompting techniques and prompt engineering
Experience building RAG (Retrieval Augmented Generation) systems
Background in building ML platforms or infrastructure
Familiarity with vector databases (Pinecone Weaviate Qdrant)
Experience with model security and responsible AI practices
Contributions to open-source ML projects
Required Experience:
Manager
Full Time