About Springer Nature Group
Springer Nature opens the doors to discovery for researchers, educators, clinicians and other professionals. Every day, around the globe, our imprints, books, journals, platforms and technology solutions reach millions of people. For over 180 years our brands and imprints have been a trusted source of knowledge to these communities and today, more than ever, we see it as our responsibility to ensure that fundamental knowledge can be found, verified, understood and used by our communities enabling them to improve outcomes, make progress, and benefit the generations that follow. Visit group.springernature.com and follow @SpringerNature / @SpringerNatureGroup
Job Title: ML Ops Engineer
D epartment: Springer Nature AI Labs
Location: Groninge n and Pune
At Springer Nature AI Labs (SNAIL), we re shaping the future of scientific publishing through responsible, human- centred AI. Our team is at the forefront of integrating advanced AI technologies to optimize processes and enhance the user experience for researchers and academics worldwide. We value a collaborative work environment where ideas flourish, and innovation is encouraged. With our curiosity-driven, impact-first culture, we focus on delivering AI innovation at scale
always with integrity and in close collaboration across functions. Our commitment to long-term growth ensures that our people are nurtured and developed to reach their full potential.
You are a n experienced MLOps engineer who loves turning prototypes into reliable, scalable AI systems in the cloud. You balance speed with robustness, automate everything you can, and care deeply about reproducibility, observability and cost efficiency. You are comfortable in a fast-moving environment and enjoy solving complex infrastructure problems . As an experienced engineer, you are happy to mentor junior teammates while continuously improving yourself in this fast-paced field . You thrive in a culture of proactivity, curiosity, experimentation, and teamwork.
-
Build and operate end-to-end ML/LLM pipelines: data ingestion, feature processing, training, evaluation, packaging, registry and deployment.
M ust-Have Qualifications
-
Education: BSc or MSc in Math, Physical Sciences, Computer Science, Software Engineering, AI/ ML or related field .
-
Software: Experienced Python knowledge , testing practices, Git/GitHub , GitHub Actions , Docker; experience building APIs with FastAPI or similar.
-
Cloud: hands-on experience with at least one major provider (GCP/AWS/Azure) and core services ( compute , storage, networking , AI platforms ) .
-
LLMOps : prompt and experiment tracking (e.g., Langfuse ), evaluation frameworks, guardrails, vector databases ( e.g. Pinecone).
By joining Springer Nature, you will actively contribute to the development and implementation of AI solutions that drive the future of scientific publishing. As a leader, you will guide your team to innovate and grow, pushing the boundaries of what s possible in AI. Join us as we pioneer the future of scientific publishing through artificial intelligence.
Internal applicants: We encourage you to speak with your manager once the interview process has started. At the point of offer acceptance, it is required that you inform your manager. If for any reason you re unable to do so, please contact HR who can provide guidance as required.
At Springer Nature we value the diversity of our teams. We recognize the many benefits of a diverse workforce with equitable opportunities for everyone. We strive for an inclusive workplace that empowers all our colleagues to thrive. Our search for the best talent fully encompasses and embraces these values and principles. Springer Nature was awarded Diversity Team of the Year at the 2022 British Diversity Awards. Find out more about our DEI work here https: / / group.springernature.com / gp / group / taking-responsibility / diversity-equity-inclusion
For more information about career opportunities in Springer Nature please visit https: / / careers.springernature.com /
#LI-AR1