At a Glance
- Tasks: Train and develop cutting-edge AI models while collaborating with a small, dynamic team.
- Company: Convergence is revolutionising AI integration in daily life with innovative technology and strong funding.
- Benefits: Enjoy 30 days PTO, private medical cover, pension, wellness benefits, and flexible working options.
- Why this job: Join us to tackle exciting challenges and shape the future of human-AI collaboration.
- Qualifications: Experience with LLMs, distributed training, and proficiency in PyTorch are essential.
- Other info: Be part of a mission-driven team focused on impactful AI solutions.
The predicted salary is between 36000 - 60000 Β£ per year.
Machine Learning Engineer
About Us
At Convergence, we\βre transforming the way AI integrates into our daily lives. Our team is developing the next generation of AI agents that don\βt just process information but take actions, learn from experience, and collaborate with humans. By introducing Large Meta Learning Models (LMLMs) that integrate memory as a core component, we\βre enabling AI to improve continuously through user feedback and acquire new skills during real-time use.
We believe in freeing individuals and businesses from mundane, repetitive tasks, allowing them to focus on innovative and creative work that truly matters. Our personalised AI assistants collaborate with users to enhance productivity and creativity. With a recent $12 million pre-seed funding from Balderton Capital, Salesforce Ventures, and Shopify Ventures, we\βre poised to make a significant impact in the AI space. Join us in shaping the future of human-AI collaboration and be part of our mission to transform the AI landscape.
The Role
We are looking for talented ML engineers and researchers to join our team and focus on training models which power Proxy, our generalist agent.
You will work with a small team β equipped with lots of GPUs β to train models, including multi-modal vision LLMs and action models.
You will also be laying the foundations of machine learning engineering at Convergence, utilising tools and best practices to improve our ML workflows.
Responsibilities
Your role will span the full stack of model training, including:
- Implementing and testing different fine-tuning and preference learning techniques like DPO
- Building datasets through scrappy methods, including synthetic data pipelines, data scrapers, combining open source datasets, and spinning up data annotations
- Conducting experiments to find good data mixes, regularisers, and hyperparameters
At Convergence, members of technical staff own experiments end-to-end (you will get the chance to learn these skills on the job). A day in the life might include:
- Data collection and cleaning. Implementing scalable data pipelines
- Designing processes and software to facilitate ML experimentation
- Implementing and debugging new ML frameworks and approaches
- Training models
- Building tooling to evaluate and play with your models
Outside of modelling, you will also help with making your models come to life:
- Improving a variety of things like data quality, data formatting, job startup speed, evaluation speed, ease of experimentation
- Adjusting our infrastructure for model inference, such as improving constrained generation for tool-use
- Working with engineering to integrate models into Proxy
Requirements
- Direct experience training LLMs or VLMs with methods such as distillation, supervised fine-tuning, and policy optimisation
- Experience with large-scale distributed training and inference
- Experience debugging ML systems and codebases
- Proficiency in frameworks like PyTorch
- Strong general foundations in software engineering, with an interest in non-ML software too β doing whatever it takes to build incredible models as a small team
Bonus Qualifications
- Experience training Llama models or other open source models
- Experience with frameworks for fine-tuning and RLHF
- Familiarity with public datasets (including synthetic ones) for improving model capabilities
- Experience with ML ops and infrastructure. Experience improving ML practices
Why Join Us?
- Be at the cutting edge of AI and foundation models
- Work on challenging problems that impact users\β daily lives
- Collaborative and innovative work environment
- Opportunities for professional growth and learning
- Competitive salary plus Equity
- Benefits: 30 days PTO, Private Medical Cover, Pension, Wellness Benefit, Lunch Allowance and Flexible Working Environment
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Contact Detail:
Convergence Recruiting Team
StudySmarter Expert Advice π€«
We think this is how you could land Machine Learning Engineer
β¨Tip Number 1
Familiarise yourself with the latest advancements in Large Meta Learning Models (LMLMs) and multi-modal vision LLMs. Understanding these concepts will not only help you during interviews but also demonstrate your genuine interest in the role and the company's mission.
β¨Tip Number 2
Engage with the AI community by participating in forums, attending webinars, or contributing to open-source projects related to machine learning. This will help you build a network and gain insights that could be beneficial when discussing your experience and ideas during the interview process.
β¨Tip Number 3
Prepare to discuss your hands-on experience with frameworks like PyTorch and any specific projects where you've implemented fine-tuning techniques or worked on large-scale distributed training. Being able to share concrete examples will set you apart from other candidates.
β¨Tip Number 4
Showcase your problem-solving skills by thinking of innovative ways to improve data quality and model performance. Be ready to discuss how you've tackled similar challenges in the past, as this aligns perfectly with the responsibilities outlined in the job description.
We think you need these skills to ace Machine Learning Engineer
Some tips for your application π«‘
Tailor Your CV: Make sure your CV highlights relevant experience in machine learning, particularly with LLMs and VLMs. Include specific projects or roles where you've implemented fine-tuning techniques or worked with large-scale distributed training.
Craft a Compelling Cover Letter: In your cover letter, express your passion for AI and how your skills align with Convergence's mission. Mention any experience you have with data collection, cleaning, and building datasets, as these are key responsibilities of the role.
Showcase Your Technical Skills: Be explicit about your proficiency in frameworks like PyTorch and any experience with ML ops. If you have worked on improving ML practices or infrastructure, make sure to include that as well.
Highlight Collaborative Experience: Since the role involves working closely with a small team, emphasise any past experiences where you collaborated on projects. Discuss how you contributed to team success and any innovative solutions you developed together.
How to prepare for a job interview at Convergence
β¨Showcase Your Technical Skills
Be prepared to discuss your experience with training LLMs and VLMs. Highlight specific projects where you've implemented fine-tuning techniques or worked with large-scale distributed training. This will demonstrate your hands-on expertise and understanding of the technical requirements.
β¨Demonstrate Problem-Solving Abilities
Expect to face technical challenges during the interview. Be ready to explain how you approach debugging ML systems and codebases. Share examples of how you've tackled complex problems in previous roles, as this will showcase your critical thinking and adaptability.
β¨Familiarise Yourself with Their Tools
Research the frameworks and tools mentioned in the job description, particularly PyTorch. If you have experience with ML ops and infrastructure, be sure to discuss it. Showing that you're proactive about understanding their tech stack can set you apart from other candidates.
β¨Emphasise Collaboration and Teamwork
Since the role involves working closely with a small team, highlight your ability to collaborate effectively. Share experiences where you've successfully worked in a team environment, especially in developing models or conducting experiments. This will align with their emphasis on teamwork and innovation.