Distributed LLM Inference Engineer
Optimalkan inferensi LLM skala besar untuk Ray dan Anyscale
Sebagai Distributed LLM Inference Engineer, Anda akan mengembangkan sistem dan optimasi untuk mendorong batas kinerja inferensi pada skala besar. Anda akan bekerja dengan tim produk untuk mengimplementasikan solusi inferensi batch dan online yang efisien, serta mengintegrasikan Ray Data dan LLM engine untuk mencapai solusi inferensi ML skala besar dengan biaya rendah. Anda juga akan mengikuti perkembangan terbaru dalam komunitas open source dan r
Kenapa Menarik?
Bergabung dengan tim yang bekerja pada infrastruktur AI terkemuka, dengan akses ke teknologi Ray yang digunakan oleh perusahaan besar seperti OpenAI dan Uber.
Tanggung Jawab Utama
- Mengembangkan solusi inferensi batch dan online skala besar untuk digunakan oleh pengguna Ray open-source dan pelanggan Anyscale
- Mengintegrasikan Ray Data dan LLM engine untuk mencapai optimasi inferensi ML skala besar dengan biaya rendah
- Mengintegrasikan dan berkontribusi pada perangkat lunak open source seperti vLLM untuk meningkatkan solusi Anyscale
- Mengikuti perkembangan terbaru dalam komunitas open source dan riset untuk mengimplementasikan praktik terbaik
Persyaratan
- Pengalaman dalam menjalankan inferensi ML pada skala besar dengan throughput tinggi dan latensi rendah
- Familiaritas dengan deep learning dan deep learning frameworks
Skills Wajib
Keywords
Lihat Deskripsi Asli dari Ashby Job Boards
Deskripsi asli dari Ashby Job Boards
About Anyscale At Anyscale https://www.anyscale.com/, we're on a mission to democratize distributed computing and make it accessible to software developers of all skill levels. We’re commercializing Ray https://docs.ray.io/en/latest/, a popular open-source project that's creating an ecosystem of libraries for scalable machine learning. Companies like OpenAI https://thenewstack.io/how-ray-a-distributed-ai-framework-helps-power-chatgpt/, Uber https://www.uber.com/blog/horovod-ray/, Spotify https://engineering.atspotify.com/2023/02/unleashing-ml-innovation-at-spotify-with-ray/, Instacart https://www.youtube.com/watch?v=3t26ucTy0Rs&list=PLzTswPQNepXmLUiL4F_1VHrPcCz1OeILw&index=23&pp=iAQB, Cruise https://www.youtube.com/watch?v=gj0BqvfX_wI&list=PLzTswPQNepXmLUiL4F_1VHrPcCz1OeILw&index=46&pp=iAQB, and many more, have Ray in their tech stacks to accelerate the progress of AI applications out into the real world. With Anyscale, we’re building the best place to run Ray, so that any developer or data scientist can scale an ML application from their laptop to the cluster without needing to be a distributed systems expert. Proud to be backed by Andreessen Horowitz, NEA, and Addition https://www.wsj.com/articles/ai-startup-anyscale-adds-99-million-to-andressen-horowitz-led-funding-round-11661254200 with $250+ million raised to date. About the role As a Distributed LLM Inference Engineer, you will help systems and optimizations that push the boundaries of performance for inference at large scale. This is an incredibly critical role to Anyscale as it allows us to achieve a market leading position for AI infrastructure. As part of this role, you will - Iterate very quickly with product teams to ship the end to end solutions for Batch and Online inference at high scale which will be used by open-source Ray users and customers of Anyscale - Work across the stack integrating Ray Data and LLM engine providing optimizations achieving low cost solutions for large scale ML inference - Integrate with Open source software like vLLM, work closely with the community to adopt these techniques in Anyscale solutions, and also contribute improvements to open source - Follow the latest state-of-the-art in the open source and the research community, implementing and extending best practices We'd love to hear from you if you have - Familiarity with running ML inference at large scale with high throughput and low latency - Familiarity with deep learning and deep learning frameworks (e.g. PyTorch) - Solid understanding of distributed systems, ML inference challenges Bonus points! - ML Systems knowledge - Experience using Ray - Work closely with community on LLM engines like vLLM, TensorRT-LLM - Contributions to deep learning frameworks (PyTorch, TensorFlow) - Contributions to deep learning compilers (Triton, TVM, MLIR) - Prior experience working on GPUs / CUDA Compensation At Anyscale, we take a market-based approach to compensation. We are data-driven, transparent, and consistent. As the market data changes over time, the target salary for this role may be adjusted. This role is also eligible to participate in Anyscale's Equity and Benefits offerings, including the following: - Stock Options - Healthcare plans, with premiums covered by Anyscale at 99% for both employees and dependents - 401k Retirement Plan - Education & Wellbeing Stipend - Paid Parental Leave - Fertility Benefits - Paid Time Off - Commute reimbursement - 100% of in-office meals covered Anyscale Inc. is an Equal Opportunity Employer. Candidates are evaluated without regard to age, race, color, religion, sex, disability, national origin, sexual orientation, veteran status, or any other characteristic protected by federal or state law. Anyscale Inc. is an E-Verify company and you may review the Notice of E-Verify Participation https://drive.google.com/file/d/1Kt2S6_k_SjxaEdGowH4rngVdg2ApAQV3/view?usp=sharing and the Right to Work posters in English and Spanish https://drive.google.com/file/d/1K3Nz72xgsU2hngnVUEu53wEeZjbAMbnZ/view?usp=sharing
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