Research Scientist - Multi-modal LLMs Apply now
Research Scientist - Multi-modal LLMs

Research Scientist - Multi-modal LLMs

London Full-Time 48000 - 84000 ÂŁ / year (est.)
Apply now
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At a Glance

  • Tasks: Dive into multi-modal LLMs, fine-tuning models and enhancing user experiences.
  • Company: Join Encord, a fast-growing AI startup revolutionizing data quality for machine learning.
  • Benefits: Enjoy competitive salary, equity, 25 days leave, and a vibrant office culture.
  • Why this job: Be part of a mission-driven team shaping the future of AI with cutting-edge technology.
  • Qualifications: PhD in machine learning with 2+ years of hands-on experience in LLMs and RAG systems.
  • Other info: Collaborate in-person with a talented team and enjoy regular socials and learning opportunities.

The predicted salary is between 48000 - 84000 ÂŁ per year.

About Us At Encord, we’re building the AI infrastructure of the future. One of the biggest challenges AI companies face today is data quality. The success of any AI application relies heavily on the quality of its training data, yet for most teams, this crucial step is both the most costly and time-consuming. We’re here to change that. As former computer scientists, physicists, and quants, we’ve experienced firsthand how a lack of tools to prepare quality training data impedes progress in building AI. We believe AI is at a stage similar to the early days of computing or the internet—where the potential is clear, but the surrounding tools and processes are still catching up. That’s why we started Encord. We are a talented and ambitious team of 60, working at the cutting edge of computer vision and deep learning. Backed by $30M in Series B funding from top investors like CRV and Y Combinator, we’re one of the fastest-growing companies in our space. Our platform is consistently rated the best by our customers, and we have big plans ahead. We’re looking for a Research Scientist to help our customers get the right data faster, easier, and cheaper. The Role As a Research Scientist focusing on multi-modal LLMs, you’ll be allowing all the data, metadata, and embeddings that live in our system to be explored, used, and analyzed in ways no one thought possible. Although starting narrow with “smaller” multi-modal problems like, e.g., improving similarity searches via metadata, we have high ambitions for this role. You’ll progressively work on harder problems that will improve user experience, surface the right (personalized) analytics to every customer, and put our users in the driver’s seat of a data development platform that can do things much beyond today’s standards. Tasks can be i) fine-tuning models to understand how our platform is used by customers, ii) employing LLM reasoning to assist customers in their data analysis tasks, and iii) Building tools for customers to interface naturally with our platform. All to put the power in the hands of anyone using Encord. You’ll follow the latest research and accelerate state-of-the-art technologies to enrich customers’ data journeys. This role offers a great growth opportunity, with the potential to lead a bigger team of scientists over time in our efforts to build the ultimate data development platform What you will be doing: Building, fine-tuning, and experimenting with multi-modal LLMs to surface potential actions and analytical conclusions in a data-driven manner. Developing scalable and novel ways to personalize LLMs based on information from our data development platform. Build sophisticated RAG systems on other types of data than the usual text documents. Follow the latest machine learning research to identify and apply new methods that improve our processes or the user experience. Ensure our customers have the world’s most powerful AI-powered data development platform. Skills for the job: A PhD or similarly strong academic background in machine learning, with 2+ years of hands-on experience in with LLM fine-tuning, RAG systems, and prompt engineering. Proficiency with frameworks like PyTorch, Tensorflow, JAX, Pandas, and OpenCV. A solid understanding of transformer models and their common variants, loss functions, and pitfalls. A quick learner with a structured, organized approach to problem-solving. Excellent communication skills with an ability to uncover use cases and solve problems efficiently. Ambitious and self-motivated, with a proven track record of top performance in academic or professional settings. Bonus skills: Experience working with data in the order of millions. Familiarity with using (and adapting) models like LLaMa and LLaVa. Experience with image-to-text embedding models like CLIP and SigLIP. Familiarity with cloud-based model training and inference. What We Offer – Competitive salary, commission, and equity in a high-growth business. – A collaborative, in-person culture with most of the team working in the office 3+ days a week (engineers typically work on-site Wednesdays). – 25 days annual leave + public holidays. – An annual learning and development budget to help you grow your skills. – Company lunches twice a week and regular socials, including bi-annual off-sites. At Encord, you’ll have the unique opportunity to be part of a fast-growing startup with a clear mission and vision. You’ll work on real-world AI use cases across a variety of industry verticals and get hands-on experience with cutting-edge computer vision and deep learning technologies. This is a role where you’ll grow quickly, take ownership of projects, and help shape the future of our company. #J-18808-Ljbffr

Research Scientist - Multi-modal LLMs employer: Crane Venture Partners

At Encord, we pride ourselves on being an exceptional employer, offering a dynamic and collaborative work culture that fosters innovation and growth. With competitive salaries, generous annual leave, and a dedicated learning and development budget, we empower our Research Scientists to thrive in their careers while working on cutting-edge AI technologies. Join us in our mission to revolutionize data quality in AI, and enjoy the unique opportunity to shape the future of our company alongside a talented team.
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Contact Detail:

Crane Venture Partners Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land Research Scientist - Multi-modal LLMs

✨Tip Number 1

Familiarize yourself with the latest research in multi-modal LLMs and RAG systems. Being able to discuss recent advancements and how they can be applied to Encord's platform will show your passion and expertise during the interview.

✨Tip Number 2

Prepare to demonstrate your hands-on experience with frameworks like PyTorch, TensorFlow, and JAX. Consider bringing examples of past projects where you fine-tuned models or developed innovative solutions using these tools.

✨Tip Number 3

Think about specific use cases where you can apply LLM reasoning to enhance user experience. Be ready to share your ideas on how to personalize LLMs based on data from Encord’s platform, as this aligns closely with the role's objectives.

✨Tip Number 4

Showcase your problem-solving skills by preparing to discuss challenges you've faced in previous roles and how you overcame them. Highlighting your structured approach to tackling complex issues will resonate well with the team at Encord.

We think you need these skills to ace Research Scientist - Multi-modal LLMs

PhD or strong academic background in machine learning
2+ years of hands-on experience with LLM fine-tuning
Experience with RAG systems and prompt engineering
Proficiency in PyTorch, Tensorflow, JAX, Pandas, and OpenCV
Solid understanding of transformer models and their variants
Knowledge of loss functions and common pitfalls in ML
Structured and organized approach to problem-solving
Excellent communication skills for uncovering use cases
Ambitious and self-motivated with a proven track record
Experience working with large datasets (millions of records)
Familiarity with models like LLaMa and LLaVa
Experience with image-to-text embedding models like CLIP and SigLIP
Familiarity with cloud-based model training and inference

Some tips for your application 🫡

Understand the Company: Before applying, take some time to understand Encord's mission and the challenges they aim to solve in AI data quality. This will help you tailor your application to align with their goals.

Highlight Relevant Experience: Make sure to emphasize your hands-on experience with LLM fine-tuning, RAG systems, and prompt engineering in your CV and cover letter. Use specific examples that demonstrate your skills and achievements in these areas.

Showcase Your Skills: Clearly outline your proficiency with frameworks like PyTorch, Tensorflow, JAX, Pandas, and OpenCV. Mention any relevant projects or research that showcase your understanding of transformer models and machine learning techniques.

Craft a Compelling Cover Letter: In your cover letter, express your passion for AI and data development. Discuss how your background and ambitions align with Encord's vision and how you can contribute to their innovative projects.

How to prepare for a job interview at Crane Venture Partners

✨Showcase Your Technical Expertise

Be prepared to discuss your hands-on experience with LLM fine-tuning, RAG systems, and prompt engineering. Highlight specific projects where you utilized frameworks like PyTorch or TensorFlow, and be ready to explain the challenges you faced and how you overcame them.

✨Demonstrate Problem-Solving Skills

Since the role requires a structured approach to problem-solving, come equipped with examples of complex problems you've tackled in the past. Discuss your thought process and the methodologies you employed to arrive at solutions, especially in machine learning contexts.

✨Stay Updated on Latest Research

Familiarize yourself with the latest advancements in machine learning and multi-modal LLMs. Be ready to discuss recent papers or technologies that excite you and how they could potentially apply to Encord's mission of enhancing data quality.

✨Communicate Effectively

Excellent communication skills are crucial for this role. Practice explaining complex technical concepts in simple terms, as you'll need to uncover use cases and collaborate with customers. Prepare to demonstrate how you've effectively communicated in previous roles.

Research Scientist - Multi-modal LLMs
Crane Venture Partners Apply now
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