Our Vision: A world where factories think.
Takt is building the brains of factories.
Factories have spent the last decade digitizing: adding sensors, software, and
dashboards everywhere. Yet most factories aren’t meaningfully smarter. Data is
fragmented across disconnected systems, locked in reports, and dependent on tribal
knowledge living in people’s heads.
The hard problem isn’t collecting data, it’s turning it into institutional intelligence.
Takt is building the brains of factories. We’re closing the loop from data → information
→ insight → action by orchestrating AI agents with deep operational context across
the entire manufacturing stack. These systems reason about what’s happening, why it’s
happening, and what to do next, acting as a continuous thought partner to factory
leadership across sales, operations, supply chain, and finance.
This is not a chatbot or another analytics layer. We’re pushing the frontier of AI
reasoning and decision-making in real-world, high-stakes environments. Just as Tesla
redefined the car as a software-first system, Takt is redefining manufacturing as a
software-defined industry.
FundingTakt is funded by Pear VC (backed Doordash, Gusto) and is part of the
PearX accelerator program.
Website: www.taktconnect.com
FoundersTakt was founded by Adhitya Raghavan (CEO) and Will Zunker (CTO).
Adhitya is from a small village in South India and first learned about factories by working
as an operator on his father’s shop floor. His journey through squash took him to
Princeton (Mechanical & Aerospace Engineering), Harvard (MBA, Baker Scholar), and
Bain. Now, he’s bringing it full circle, building Takt to solve the very pain he experienced
firsthand in factories and aiming to put a dent in the $8 trillion of waste that occurs in
manufacturing globally.
Will an MIT PhD has deep experience in optimizing manufacturing processes through
physics-based modeling and AI, driven by a belief that advanced methods can
fundamentally transform how things are made. Along the way, he built open-source
tools and collaborated with engineers across diverse manufacturing sectors, learning
firsthand the challenges of waste and inefficiency on the factory floor. Now, at Takt, he’s
channeling that journey into building technology that helps factories run smarter, faster,
and with less waste.
Core Cultural ValuesStupid enough to make our dreams a reality: We are dreamers who build a better world. We own our decisions. We have the irrational belief and hunger to work until our dreams are a reality
The last one standing: Every single person takes ownership of their work with a gritty resourcefulness and dares to fight for it with every ounce of their energy.
Insatiable curiosity: Its always day 1 and we are an empty cup, a dry sponge ready to learn. Approaching every action with humility and scientific rigor and adopting a Kaizen mindset.
The best F1 team in the stadium: We win together and lose together; every person plays a crucial role to win the race. We have high expectations, trust our teammates and create the environment for everyone to shine. In the path the victory, we celebrate every small professional and personal win cherishing the journey
Founding Full Stack Engineer
Location: San Francisco, in person 4 to 5 days a week. Open to candidates willing to relocate.
Hours: 50 to 70 hours per week with space for personal interests
Compensation: 120-180K
Equity: To be discussed (0.5-1%)
Prior experience: 2-3 years minimum
You will be the first engineering hire and will work directly with the founders to build the
core intelligence engine that powers modern factories. You will help design, build, and
deploy systems across the entire stack and influence the earliest product, infrastructure,
and architecture decisions. This role is for someone who wants deep ownership and
real long-term impact.
Core Technical RequirementsExperience deploying and maintain full stack production grade code at scale to support 50-100 enterprise customers with minimal downtime
Strong cloud infrastructure skills (Azure preferred).
Deep experience with data pipelines, especially cleaning messy, inconsistent real-world data AI-native in approach to coding utilizing new-age tools (e.g. Claude Code) to develop with speed.
Strong generalist coding skillset especially on the back-end side.
Experience shipping production AI/ML or LLM systems end-to-end (not research prototypes).
Comfortable owning LLM tool orchestration, chain design, agent delegation, prompt engineering, and evaluation methodology.
Hands-on experience integrating with enterprise systems like ERP, MES, and other data historians (Microsoft Business Central/ SAP)
Working knowledge of relational + SQL databases
Familiarity with per missioning models, data governance, or SOC2/GDPR.
Experience engaging with IT teams and meeting security requirements for enterprise customers.
Strong sense of agency and ownership: comfortable making fast decisions and revising them.
Shipping and moving quickly, makes practical choices, and delivers value to customers
Willing to learn and can get things done, even if they don’t know it from the get-go
Thrives with incomplete information
Passion for the product: speaks their mind, contributes ideas, and pushes for the best solution
Long-term commitment to the mission, we are building foundational systems, not short-lived features. This means putting in the hours consistently and also making harder short term decisions for long term benefits
Top Skills
Similar Jobs
What you need to know about the Montreal Tech Scene
Key Facts About Montreal Tech
- Number of Tech Workers: 255,000+ (2024, Tourisme Montréal)
- Major Tech Employers: SAP, Google, Microsoft, Cisco
- Key Industries: Artificial intelligence, machine learning, cybersecurity, cloud computing, web development
- Funding Landscape: $1.47 billion in venture capital funding in 2024 (BetaKit)
- Notable Investors: CIBC Innovation Banking, BDC Capital, Investissement Québec, Fonds de solidarité FTQ
- Research Centers and Universities: McGill University, Université de Montréal, Concordia University, Mila Quebec, ÉTS Montréal


