Machine Learning Researcher, Multimodal LLMs

Machine Learning EngineerMachine Learning EngineerFull TimeRemoteMid LevelTeam 51-200

Location

United States

Posted

54 days ago

Salary

$140K - $250K / year

Seniority

Mid Level

No structured requirement data.

Job Description

Machine Learning Researcher, Multimodal LLMs

Bland

Machine Learning Researcher, Multimodal LLMs Location: San Francisco, CA or Remote (US) About Bland At Bland.com, our mission is to empower enterprises to build AI phone agents at scale. Voice is quickly becoming the primary interface between businesses and their customers, and we are building the models and infrastructure that make those interactions feel natural, reliable, and genuinely human. We’ve raised $65M from leading investors including Emergence Capital, Scale Venture Partners, Y Combinator, and founders of Twilio, Affirm, and ElevenLabs. The Role We are looking for someone to contribute to the development of our next-generation multimodal LLM stack, combining speech, text, tools, and real-time reasoning into a single unified system. You’ll be responsible for building industry-leading conversational AI models that power Bland's agent, and taking them all the way from idea to production. At Bland, we're not just thinking about text modeling. You will define how our agents listen, think, and act in real time, integrating streaming audio, tool execution, and dynamic context into a single coherent system. You will take ideas from research through production systems serving millions of calls per day. What Makes You a Great Fit Strong LLM / Multimodal Background - Experience with LLMs, multimodal models, or speech-language systems - Deep understanding of prompting, fine-tuning, and alignment techniques - Familiarity with neural audio codecs and modern multimodal LLM techniques Fast Experimental Loop - You can go from idea → dataset → experiment → conclusion in days - You know how to design experiments that actually answer the question Product Intuition - Strong sense for what makes an interaction feel natural vs robotic - Ability to translate abstract modeling ideas into user-facing improvements Builder Mentality - You take ownership from research through deployment - You thrive in ambiguous, fast-moving environments - You care about impact, not just elegance How You Show Up - You think in systems, not just models - You obsess over latency, correctness, and real-world behavior - You are comfortable discarding ideas quickly when data disagrees - You push toward simple abstractions for complex problems Bonus Points - Experience with real-time voice systems or conversational AI - Background in tool-using agents or agent frameworks - Experience with multimodal datasets (audio + text + actions) - Contributions to LLM or speech-related research or open source Compensation & Benefits - Competitive salary: $180,000 – $260,000 - Meaningful equity - Full healthcare, dental, vision - Office in Jackson Square, SF - High autonomy, high impact

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