A Singapore-based deep tech startup known as SixSense has developed an AI-powered platform that helps semiconductor producers predict and detect potential chip defects on manufacturing traces in actual time.
It has raised $8.5 million in Collection A bringing its whole funding to round $12 million. The spherical was led by Peak XV’s Surge (previously Sequoia India & SEA), with participation from Alpha Intelligence Capital, Febe, and others.
Based in 2018 by engineers Akanksha Jagwani (CTO) and Avni Agarwal (CEO), SixSense goals to handle a elementary problem in semiconductor manufacturing: changing uncooked manufacturing knowledge, from defect photos to gear indicators, into real-time insights that assist factories stop high quality points and enhance yield.
Regardless of the sheer quantity of information generated on the fab ground, what stood out to the co-founders was a stunning lack of real-time intelligence.
Akanksha brings a deep understanding of producing, high quality management, and software program automation via her expertise constructing automation options for producers like Hyundai Motors and GE and led product improvement at startups like Embibe. Agarwal provides technical expertise from her time at Visa, the place she constructed large-scale knowledge analytics methods, a few of which had been later protected as commerce secrets and techniques. A talented coder with a robust background in arithmetic, she had lengthy been all in favour of making use of AI to conventional industries past fintech.

Collectively, the duo evaluated sectors from aviation to automotive earlier than touchdown on semiconductors. Regardless of the semiconductor business’s fame for precision, inspection processes stay largely handbook and fragmented, Agarwal advised TechCrunch. After talking with greater than 50 engineers, it grew to become clear there’s vital room to modernize how high quality checks are accomplished, she added.
Fabs at present are crammed with dashboards, SPC charts, and inline inspection methods, however most solely show knowledge with out additional evaluation, Agarwal mentioned. “The burden of utilizing it for decision-making nonetheless falls on engineers: [they must] spot patterns, examine anomalies, and hint root causes. That’s time-consuming, subjective, and doesn’t scale properly with rising course of complexity.”
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SixSense gives engineers with early warnings to handle potential points earlier than they escalate with capabilities corresponding to defect detection, root trigger evaluation, and failure prediction.
SixSense’s platform can be particularly designed for use by course of engineers fairly than knowledge scientists, Agarwal mentioned. “Course of engineers can fine-tune fashions utilizing their very own fab knowledge, deploy them in below two days, and belief the outcomes — all with out writing a single line of code. That’s what makes the platform each highly effective and sensible.”
The aggressive panorama consists of in-house engineering groups utilizing instruments like Cognex and Halcon, inspection gear makers integrating AI into their methods, and startups together with Touchdown.ai and Robovision.
SixSense’s AI platform is already in use at main semiconductor producers like GlobalFoundries and JCET, with greater than 100 million chips processed so far. Clients have reported as much as 30% quicker manufacturing cycles, a 1–2% enhance in yield, and a 90% discount in handbook inspection work, the founders mentioned. The system is appropriate with inspection gear that covers over 60% of the worldwide market.
“Our goal clients are large-scale chipmakers — together with foundries, outsourced semiconductor meeting and take a look at suppliers (OSATs), and built-in gadget producers (IDMs),” Agarwal mentioned. “We’re already working with fabs in Singapore, Malaysia, Taiwan, and Israel, and are actually increasing into the U.S.”
Geopolitical tensions, particularly between the U.S. and China, are reshaping the place chips are made, driving new manufacturing investments throughout the globe.
“We’re seeing fabs and OSATs develop aggressively in Malaysia, Singapore, Vietnam, India, and the U.S. — and that’s a tailwind for us. Why? As a result of we’re already primarily based within the area, and plenty of of those new services are beginning contemporary — with out legacy methods weighing them down. That makes them way more open to AI-native approaches like ours from day one,” Agarwal advised TechCrunch.