DI pasirengimo vertinimas

Ar jūsų Manufacturing verslas pasiruošęs DI?

Atsakykite į 16 klausimus 4 srityse, kad įvertintumėte savo pasirengimą DI. Most SME manufacturing businesses score a 3/10 because their hardware is 'dumb' and their data is trapped in localized silos.

Savęs vertinimo kontrolinis sąrašas

1

Data Infrastructure & Connectivity

  • Do your machines (PLCs/SCADA) have modern sensors with Ethernet or Wi-Fi connectivity?
  • Is your production data centralized in a cloud-based 'Data Lake' rather than siloed in individual machines?
  • Do you have a clean, digital record of downtime events from the last 12 months?
  • Can you access real-time production metrics from outside the physical factory floor?
✅ Pasiruošę

Your shop floor is fully networked and data flows automatically into a central dashboard for analysis.

⚠️ Nepasiruošę

Operational data is still recorded manually on paper logs or sits locked inside legacy machines with no export capability.

2

Predictive Maintenance

  • Do you have vibration, thermal, or acoustic sensors on your most critical 'bottleneck' assets?
  • Is your maintenance schedule currently based on machine health data rather than just the calendar?
  • Do you track the specific 'mode of failure' for every breakdown to provide training data for AI?
  • Are your maintenance technicians equipped with tablets to log repairs digitally and instantly?
✅ Pasiruošę

You have the granular sensor data required to train a model that predicts failures before they stop production.

⚠️ Nepasiruošę

Maintenance is purely reactive, meaning you only know a part needs replacing once it has already failed.

3

Quality Control (Computer Vision)

  • Is your current QC process performed by human eyes, leading to variable results?
  • Do you have consistent lighting and fixed-position camera mounts at critical inspection points?
  • Do you have a library of 'fail' images (defects) to show an AI what to look for?
  • Could an automated system reduce your scrap rate by catching errors in the first 10% of the process?
✅ Pasiruošę

You have high-resolution imaging of your product flow and a clear understanding of your current defect rate.

⚠️ Nepasiruošę

Defects are often caught by the customer or at the very end of the line, with no digital record of why they occurred.

4

Supply Chain & Demand Forecasting

  • Is your ERP system integrated with your suppliers' inventory levels?
  • Do you use external data (market trends, weather, shipping delays) to adjust your production schedule?
  • Can you generate an accurate production forecast for the next quarter in under 30 minutes?
  • Is your inventory data accurate to within 98% at any given moment?
✅ Pasiruošę

Your supply chain data is dynamic and reflects external market pressures in real-time.

⚠️ Nepasiruošę

Ordering is based on 'gut feel' or static spreadsheets that are out of date the moment they are saved.

Greiti laimėjimai balui pagerinti

  • Retrofit a single critical bottleneck machine with £500 worth of IoT sensors to prove the data flow.
  • Digitize the 'Maintenance Logbook' using a simple tablet interface to start building a training dataset.
  • Run a small-scale Computer Vision pilot on one QC station using a standard high-res camera and off-the-shelf software like LandingAI.

Dažnos kliūtys

  • 🚧Legacy equipment from the 1990s and 2000s that lacks modern communication protocols (MTConnect/OPC UA).
  • 🚧A 'if it ain't broke, don't fix it' culture that views digital transformation as a cost rather than a yield improver.
  • 🚧Prohibitively high costs of retrofitting sensors across an entire multi-line facility.
  • 🚧Lack of internal data science talent who understands both Python and hydraulic pressure systems.
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Penny požiūris

Manufacturing is where AI gets physical, and frankly, expensive. It's the industry with the most to gain—think 20% increases in OEE—but it's also the one most hampered by 'technical debt' in the form of old iron. Don't let a consultant sell you a 'Smart Factory' overhaul for £500k if you haven't even mastered basic data capture yet. The winners in 2026 aren't the ones with the most robots; they're the ones who have turned their physical processes into digital streams. If you can't see your scrap rate in real-time on your phone, you aren't ready for AI. Fix the plumbing (your data architecture) before you try to install the shiny AI taps. Focus on the one machine that, if it stops, the whole factory stops. That's your AI starting point.

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Atlikite išsamų vertinimą — 2 minutės

Šis kontrolinis sąrašas suteikia jums apytikslę idėją. Penny DI taupymo balas analizuoja jūsų konkretų verslą — jūsų išlaidas, komandą ir procesus — kad sudarytų individualizuotą pasirengimo balą ir veiksmų planą.

Nuo £29/mėn. 3 dienų nemokama bandomoji versija.

Ji taip pat yra įrodymas, kad tai veikia – Penny valdo visą šį verslą neturėdama jokių darbuotojų.

2,4 mln. GBP+nustatytos santaupos
847vaidmenys suplanuoti
Pradėti nemokamą bandomąją versiją

Klausimai apie DI pasirengimą

How much does a basic AI predictive maintenance pilot cost?+
Expect to spend between £15,000 and £40,000 for a single-line pilot. This covers sensors, data gateway installation, and the initial model training. If someone quotes you less, they're likely selling you a dashboard, not AI.
Do I need to replace my old machines to use AI?+
No. You can 'wrap and strap' legacy gear. This means adding external sensors (vibration, heat, power draw) to old machines to gather data without touching the internal PLC. It's much cheaper than a £2m equipment upgrade.
Will AI replace my floor workers?+
Unlikely in the short term. AI in manufacturing usually acts as a 'super-tool' for your best people—helping a maintenance tech see a bearing failure 48 hours early or helping a QC lead spot microscopic cracks the human eye misses.
What is the biggest mistake manufacturers make with AI?+
Starting too big. They try to 'AI-enable' the whole plant and get overwhelmed by data noise. Start with one specific problem—like reducing energy waste on an oven or predicting tool wear on a CNC mill.
Should I build my own AI models or buy them?+
Buy or subscribe. Unless you're a global Tier-1 automotive supplier, you shouldn't be hiring a team of data scientists. Use industry-specific platforms (like Braincube or Sight Machine) that have already solved the 80% baseline.

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