At a Glance
- Tasks: Lead the design and implementation of ML solutions for biomedical data analysis.
- Company: BenchSci is revolutionising biomedical research through advanced machine learning and knowledge graphs.
- Benefits: Enjoy a collaborative environment, flexible work options, and opportunities for professional growth.
- Why this job: Join a cutting-edge team pushing the boundaries of ML/AI in a fast-paced, innovative culture.
- Qualifications: 5+ years of ML engineering experience, ideally with a PhD in a related field.
- Other info: Opportunity to lead projects and collaborate with diverse teams across the organisation.
The predicted salary is between 48000 - 72000 £ per year.
We are looking for a Lead Machine Learning Engineer to join our new Knowledge Enrichment team at BenchSci.
You will help design and implement ML-based approaches to analyse, extract and generate knowledge from complex biomedical data such as experimental protocols and from results from several heterogeneous sources, including both publicly available data and proprietary internal data, represented in unstructured text and knowledge graphs.
The data will be leveraged in order to enrich BenchSci’s knowledge graph through classification, discovery of high value implicit relationships, predicting novel insights/hypotheses, and other ML techniques. You will collaborate with your team members in applying state of the art ML and graph ML/data science algorithms to this data.
You are comfortable working in a team that pushes the boundaries of what is possible with cutting edge ML/AI, challenges the status quo, is laser focused on value delivery in a fail-fast environment.
You Will:
- Analyse and manipulate a large, highly-connected biological knowledge graph constructed of data from multiple heterogeneous sources, in order to identify data enrichment opportunities and strategies
- Work with data and knowledge engineering experts to design and develop knowledge enrichment approaches/strategies that can exploit data within our knowledge graph
- Provide solutions related to classification, clustering, more-like-this-type querying, discovery of high value implicit relationships, and making inferences across the data that can reveal novel insights
- Deliver robust, scalable and production-ready ML models, with a focus on optimising performance and efficiency
- Architect and design ML solutions, from data collection and preparation, model selection, training, fine-tuning and evaluation, to deployment and monitoring
- Collaborate with your teammates from other functions such as product management, project management and science, as well as other engineering disciplines
- Sometimes provide technical leadership on Knowledge Enrichment projects that seek to use ML to enrich the data in BenchSci’s Knowledge Graph
- Work closely with other ML engineers to ensure alignment on technical solutioning and approaches
- Liaise closely with stakeholders from other functions including product and science
- Help ensure adoption of ML best practices and state of the art ML approaches at BenchSci
- Participate in and sometimes lead various agile rituals and related practices
You Have:
- Minimum 5, ideally 8+ years of experience working as an ML engineer in industry
- Technical leadership experience, including leading 5-10 ICs on complex projects in industry
- Degree, preferably PhD, in Software Engineering, Computer Science, or a similar area
- A proven track record of delivering complex ML projects working alongside high performing ML engineers using agile software development
- Demonstrable ML proficiency with a deep understanding of how to utilise state of the art NLP and ML techniques
- Mastery of several ML frameworks and libraries, with the ability to architect complex ML systems from scratch. Extensive experience with Python and PyTorch
- Track record of successfully delivering robust, scalable and production-ready ML models, with a focus on optimising performance and efficiency
- Experience with the full ML development lifecycle from architecture and technical design, through data collection and preparation, model selection, training, fine-tuning and evaluation, to deployment and maintenance
- Strong skills related to implementing solutions leveraging Large Language Models, as well as a deep understanding of how to implement solutions using Retrieval Augmented Generation (RAG) architecture
- Expertise in graph machine learning (i.e. graph neural networks, graph data science) and practical applications thereof. This is complimented by your experience working with Knowledge Graphs, ideally biological, and a familiarity with biological ontologies
- Experience with complex problem solving and an eye for details such as scalability and performance of a potential solution
- Experience with data manipulation and processing, such as SQL, Cypher or Pandas
- A growth mindset continuously seeking to stay up-to-date with cutting-edge advances in ML/AI, complimented by actively engaging with the ML/AI community
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Contact Detail:
BenchSci Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Lead Machine Learning Engineer Graph ML
✨Tip Number 1
Familiarise yourself with the latest advancements in graph machine learning and knowledge graphs. Engage with online communities, attend webinars, or read recent publications to stay updated on cutting-edge techniques that could be relevant to the role.
✨Tip Number 2
Network with professionals in the ML and AI fields, especially those who have experience in biomedical data. Consider reaching out on platforms like LinkedIn to discuss their experiences and gain insights into the industry.
✨Tip Number 3
Prepare to discuss your previous projects in detail, particularly those involving complex ML systems and knowledge graphs. Be ready to explain your thought process, challenges faced, and how you overcame them, as this will demonstrate your technical leadership capabilities.
✨Tip Number 4
Showcase your collaborative skills by highlighting any cross-functional projects you've worked on. Emphasise your ability to liaise with different teams, such as product management and science, to illustrate your fit for a team-oriented environment like BenchSci.
We think you need these skills to ace Lead Machine Learning Engineer Graph ML
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights relevant experience in machine learning and graph ML. Focus on projects where you've led teams or delivered complex ML solutions, especially those related to biomedical data.
Craft a Compelling Cover Letter: In your cover letter, express your passion for ML and how your background aligns with BenchSci's mission. Mention specific experiences that demonstrate your technical leadership and ability to work in agile environments.
Showcase Your Technical Skills: Clearly outline your proficiency with ML frameworks, Python, and PyTorch in your application. Provide examples of how you've implemented state-of-the-art NLP techniques and graph ML solutions in past projects.
Highlight Collaboration Experience: Emphasise your experience working with cross-functional teams. Discuss how you've collaborated with product management, project management, and science teams to deliver impactful ML solutions.
How to prepare for a job interview at BenchSci
✨Showcase Your Technical Expertise
Be prepared to discuss your experience with ML frameworks and libraries, especially Python and PyTorch. Highlight specific projects where you successfully delivered scalable ML models, focusing on the architecture and technical design aspects.
✨Demonstrate Problem-Solving Skills
Prepare examples of complex problems you've solved in previous roles, particularly those involving graph machine learning or knowledge graphs. Discuss your approach to identifying data enrichment opportunities and how you implemented solutions.
✨Emphasise Collaboration and Leadership
Since the role involves working closely with various teams, share experiences where you led projects or collaborated effectively with cross-functional teams. Highlight your ability to communicate technical concepts to non-technical stakeholders.
✨Stay Current with Industry Trends
Show your passion for ML/AI by discussing recent advancements or trends in the field. Mention any community engagement, such as attending conferences or participating in forums, to demonstrate your commitment to continuous learning.