"Patience is a Super Power" - "The Money is in the waiting"
Showing posts with label Edge computing. Show all posts
Showing posts with label Edge computing. Show all posts

Sunday, January 4, 2026

The "Edge Ai" super cycle is approaching and 2026 looks promising

 


2026 Edge-AI Supercycle Investment Thesis (Updated)

Core Premise

By 2026, AI inference is increasingly executed locally on devices and machines, not just in cloud data centers.

Edge-AI growth is driven by:

  • autonomy in vehicles, robotics, & industry

  • privacy, latency & resilience requirements

  • bandwidth cost constraints

  • embedded intelligence in consumer & medical devices

This creates a perpetual upgrade cycle in:

  • embedded processors

  • automotive & industrial controllers

  • low-power neural compute

  • memory bandwidth & power delivery

This is structurally different from the cloud-AI hype cycle:

  • demand is distributed, diversified, and recurring

  • end-markets span industrial, auto, medical, consumer, robotics

  • revenue durability is stronger across macro cycles

Execution risk stems mainly from valuation cyclicality, not demand erosion.


Primary Value-Capture Segments

  1. Edge AI application processors & embedded accelerators

  2. Automotive & industrial controllers (fastest-growing segment)

  3. Power electronics, RF, and signal processing

  4. Memory bandwidth suppliers

  5. Robotics & industrial automation ecosystem

  6. Foundries supporting mature & specialty nodes

These enable AI everywhere, not just in hyperscale environments.


Core Investable Holdings (U.S.-Listed / Canadian-Accessible)

Edge Compute & Embedded AI (Core Exposure)

CompanyTicker2026–2028 Catalysts
QualcommQCOMGen-AI on-device roadmap, auto digital cockpit growth, Snapdragon AI PCs
ARM HoldingsARMLicensing growth across smartphones, IoT, robotics, embedded NPUs
AMDAMDXilinx adaptive compute scaling into industrial/medical, embedded inference
NVIDIA (Jetson / Orin)NVDARobotics platforms, perception & edge inference ecosystems

Thesis: These firms monetize the compute migration from cloud → devices.


Automotive & Industrial Edge Controllers (Structural Growth Layer)

CompanyTicker2026–2028 Catalysts
NXP SemiconductorsNXPIADAS domain controllers, EV electronics content expansion
Texas InstrumentsTXNIndustrial/robotics controllers, long-cycle analog demand
STMicroelectronicsSTMMEMS + microcontrollers for sensing & automation
RenesasRNECYAuto inference controllers, mature-node resiliency demand

Thesis: AI workloads are increasingly coupled to physical systems.

This sector benefits from:

  • auto electrification

  • factory automation

  • safety & compliance requirements

And exhibits longer product cycles & stickier margins.


Power, RF, & Signal Chain (Efficiency Bottleneck Layer)

CompanyTicker2026–2028 Catalysts
Monolithic Power SystemsMPWRPower architecture for AI devices & robotics
Analog DevicesADIPrecision sensing in medical, industrial & aerospace
SkyworksSWKSRF connectivity for AI-enabled mobile & IoT
QorvoQRVORF front-end + power management integration

Thesis: Edge AI scales only as fast as power efficiency improves.

MPWR & ADI are especially leveraged to this constraint.


Memory & Bandwidth (Inference Bottleneck Layer)

CompanyTicker2026–2028 Catalysts
MicronMULPDDR & auto DRAM refresh cycles
SamsungSSNLFMobile DRAM leadership, LP-memory scaling
SK HynixHXSCLMobile & HBM exposure to inference transitions

Thesis: Edge inference is increasingly memory-bound.

Rising model density → recurring refresh demand.


Industrial Automation & Robotics Platforms

CompanyTicker2026–2028 Catalysts
ABBABBRobotics + AI control deployment across factories/logistics
Rockwell AutomationROKConnected industrial system upgrades
SiemensSIEGYDigital factory / automation stack integration
KeyenceKYCCFMachine vision & perception hardware demand

Thesis: AI drives capex-based growth, not consumer cyclicality.

This category compounds over time.


Foundries & Specialty Manufacturing (Picks & Shovels)

CompanyTicker2026–2028 Catalysts
TSMCTSMAdvanced packaging + mobile & edge silicon cycles
GlobalFoundriesGFSAuto/industrial RF & specialty node demand
UMCUMCIoT + industrial controller volume scaling

Thesis: Edge AI runs heavily on mature & specialty nodes, not just leading-edge.

GFS & UMC benefit from reshoring & supply-chain localization.


Mid-Caps With Asymmetric Upside (Higher Beta / Higher Torque)

These names benefit disproportionately from incremental volume growth.

CompanyTickerUpside Drivers
Lattice SemiconductorLSCCLow-power FPGAs for edge inference & embedded compute
SynapticsSYNAEdge vision/audio inference SoCs
Allegro MicrosystemsALGMMotion + auto sensing chips
VicorVICRHigh-density AI power delivery
SMART GlobalSGHIndustrial memory & subsystems

Risks: higher volatility, more cyclical earnings response
Reward: greater operating leverage if deployment accelerates


MODEL PORTFOLIOS (2026 Implementation)

The portfolios are designed around:

  • diversification across value-capture layers

  • cyclicality risk management

  • scaling exposure with conviction level


$25,000 Model Portfolio — Conservative Edge AI Exposure

Goal: durable earnings, industrial + automotive diversification

AllocationHoldings
$7,500 (30%)QCOM / ARM / AMD
$6,250 (25%)NXPI / TXN / STM
$3,750 (15%)ADI / MPWR
$2,500 (10%)MU / Samsung
$2,500 (10%)TSM / GFS
$2,500 (10%)ABB / ROK

Rationale

  • broad end-market mix

  • dividend + cash-flow stability in places

  • minimized single-cycle dependency


$50,000 Model Portfolio — Balanced Growth Tilt

Goal: stronger upside while retaining downside resilience

AllocationHoldings
$15,000 (30%)QCOM / ARM / AMD / NVDA-Jetson
$12,500 (25%)NXPI / Renesas / STM
$7,500 (15%)MPWR / ADI
$7,500 (15%)MU / SK Hynix
$5,000 (10%)GFS / UMC
$2,500 (5%)LSCC / SYNA (mid-cap torque)

Rationale

  • more growth-weighted

  • adds robotics + embedded inference optionality

  • moderate asymmetric exposure


$100,000 Model Portfolio — Aggressive Edge AI Conviction

Goal: maximize exposure to structural uplift & deployment flywheels

AllocationHoldings
$30,000 (30%)AMD / ARM / NVDA-Jetson / QCOM
$25,000 (25%)NXPI / Renesas / STM
$15,000 (15%)MPWR / ADI
$10,000 (10%)MU / SK Hynix
$10,000 (10%)GFS / UMC
$10,000 (10%)LSCC / VICR / ALGM / SYNA

Rationale

  • heavier embedded compute weighting

  • exposure to industrial capex + robotics cycles

  • aggressive but still diversified

Expect higher volatility, but greater payoffs if:

  • automotive electronics content accelerates

  • industrial automation investment pulls forward

  • edge inference becomes default architecture


Key 2026–2028 Macro Catalysts to Monitor

Bull-Case Catalysts

  • automotive AI compute content per vehicle rises

  • robotics + warehouse automation expansion

  • sovereign supply-chain localization incentives

  • shift from cloud inference → on-device execution

  • increasing memory + power efficiency demand

Risk Factors

  • semiconductor cyclicality corrections

  • macro-industrial slowdown

  • pricing pressure in consumer hardware

  • policy / trade realignment shocks

This thesis remains strongest where:

  • demand is industrial & automotive-anchored

  • pricing power is sustained

  • revenue cycles extend across multiple years


Bottom-Line Position

The Edge-AI Supercycle is a deployment-driven investment theme, not a speculative one.

The most resilient value pool sits in:

  • embedded compute

  • automotive electronics

  • industrial automation

  • power + memory + specialty fabs

These companies monetize AI as it becomes:

a standard feature of physical systems, not just a cloud workload.

ED NOTE: 

We currently only own one of the listed companies here but have several others on our watch list!

 

Monday, September 23, 2024

The Neuromorphic Computer Chip Industry could be the future of Robots, Automated vehicles and edge computing!

 


Neuromorphic computing mimics how the human brain works to process information. Traditional computers process data in a linear, step-by-step manner, but neuromorphic computing is designed to work more like the brain, with networks of artificial neurons that can process information simultaneously. 

This approach allows computers to perform complex tasks more efficiently, especially those involving patterns, such as recognizing faces, understanding speech, or making quick decisions based on visual data.

The main advantage of neuromorphic computing is its ability to handle tasks that require a lot of data to be processed quickly and with minimal energy, making it ideal for devices that need to operate in real-time, like self-driving cars, smart sensors, or robots. By using neuromorphic chips, these devices can learn from their environment, make decisions on the fly, and improve their performance over time, just like a human brain would. 

This technology holds great promise for advancing artificial intelligence and making smart devices more efficient and capable.

Leading Publicly Traded Companies in the Neuromorphic Computer Chip Industry

the neuromorphic computing industry is an emerging field with several publicly traded companies making significant strides. Neuromorphic chips aim to mimic the neural structures and functioning of the human brain, leading to more efficient, adaptive, and powerful computing systems. 

Here is a list of leading, publicly traded companies:


1. Intel Corporation

  • Ticker Symbol: INTC
  • Exchange: NASDAQ

Product: Loihi Neuromorphic Chip

  • Overview: Intel is at the forefront of neuromorphic computing with its Loihi series of chips. Loihi is designed to emulate the brain's neural networks using spiking neural networks (SNNs), enabling energy-efficient and real-time processing.

  • Key Achievements:

    • Loihi 2 Release: In 2021, Intel introduced Loihi 2, featuring improved performance, programmability, and scalability.
    • Neuromorphic Research Community: Intel has established a collaborative research community, engaging with over 100 partners, including universities and research institutions, to explore neuromorphic applications.
  • Applications: Robotics, autonomous systems, optimization problems, sensory data processing, and real-time analytics.


2. IBM

  • Ticker Symbol: IBM
  • Exchange: NYSE

Product: TrueNorth Neurosynaptic Chip

  • Overview: IBM's TrueNorth chip is a pioneering neuromorphic processor that integrates over one million programmable neurons and 256 million synapses. It operates with extremely low power consumption, making it suitable for battery-powered devices.

  • Key Achievements:

    • Large-Scale Simulations: Demonstrated the ability to simulate complex neural networks efficiently.
    • Research Collaborations: Partnered with institutions like DARPA to advance neuromorphic computing research.
  • Applications: Pattern recognition, image processing, sensory data analysis, and cognitive computing tasks.


3. BrainChip Holdings

  • Ticker Symbol: BRN
  • Exchange: Australian Securities Exchange (ASX)

Product: Akida Neuromorphic Processor

  • Overview: BrainChip Holdings, an Australian company, specializes in neuromorphic hardware and software solutions. The Akida chip is designed for edge AI applications, providing real-time learning and ultra-low power consumption.

  • Key Achievements:

    • Commercial Deployment: Progressed towards integrating Akida into commercial products across various industries.
    • Strategic Partnerships: Collaborated with companies in automotive, aerospace, and consumer electronics.
  • Applications: Vision systems, cybersecurity, smart home devices, automotive technology, and Internet of Things (IoT) applications.


4. Qualcomm Incorporated

  • Ticker Symbol: QCOM
  • Exchange: NASDAQ

Product: Neuromorphic Research Initiatives

  • Overview: Qualcomm has invested in neuromorphic computing research, aiming to enhance AI processing in mobile and embedded devices.

  • Key Achievements:

    • Zeroth Platform: Explored neuromorphic concepts to improve cognitive capabilities in smartphones.
    • Advancements in AI Chips: Developed AI accelerators that incorporate neuromorphic principles for efficient on-device processing.
  • Applications: Mobile devices, wearables, augmented reality, and IoT applications.


5. Samsung Electronics Co., Ltd.

  • Ticker Symbol: 005930
  • Exchange: Korea Exchange (KRX)

Product: Neuromorphic Hardware Research

  • Overview: Samsung is actively engaged in neuromorphic research, focusing on developing chips that can emulate neural architectures.

  • Key Achievements:

    • Research Collaboration with Harvard: Published a paper outlining a method to "copy and paste" the brain's neuronal connection map onto neuromorphic chips.
    • Memory Technology Integration: Investigating the use of advanced memory solutions like NAND flash and DRAM in neuromorphic systems.
  • Applications: Consumer electronics, smart appliances, robotics, and advanced AI systems.


Conclusion

The neuromorphic computing industry is rapidly evolving, with these publicly traded companies leading the way in developing hardware that emulates the human brain's efficiency and adaptability. Their innovations hold the potential to revolutionize various sectors by enabling:

  • Energy-Efficient Computing: Reducing power consumption significantly compared to traditional architectures.
  • Real-Time Processing: Allowing devices to process sensory data and make decisions instantaneously.
  • Adaptive Learning: Enabling systems to learn from new data dynamically without extensive retraining.
  • Edge Computing Advancement: Facilitating AI processing on devices without relying heavily on cloud infrastructure.

Industries Impacted:

  • Robotics: Enhancing autonomy and interaction capabilities.

  • Healthcare: Improving diagnostics, prosthetics, and personalized medicine.

  • Automotive: Advancing autonomous driving systems and vehicle safety.

  • Consumer Electronics: Creating smarter, more responsive devices.
  • Industrial Automation: Optimizing manufacturing processes and predictive maintenance.

Note: The information provided is based on data available as of October 2023. The neuromorphic computing field is dynamic, and new developments may have occurred since then. For the most current information, please check recent publications, company announcements, and industry news.

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