Country intelligence brief

🇮🇷 Iran Robots

1 manufacturers and 1 tracked robots, shaped into a country brief that shows where Iran is deepest, how much of the route is actually sourceable, and which maker pages deserve the next serious click.

Catalog rank

#19

Ready now

1/1

Price-visible

0/1

What matters first

How strong is this route before you widen the search?

Use the top-line signals here to judge whether this country already gives you enough breadth, price visibility, and vendor depth to build a serious shortlist.

Listed average

Pricing still sparse

Price range

Mostly quote-led

Release window

2019–2019

Source coverage

1/1 official links

Category lead

Research · 100%

Research carries most of the visible category depth on this page.

Coverage quality

100% sourced

0% price-visible and 100% image-backed, which tells you how quickly this route can turn into a shortlist instead of a research backlog.

Maker concentration

University of Tehran (CAST) · 100%

University of Tehran (CAST) contributes the biggest slice of tracked models, so this route is still fairly concentrated around a small vendor set.

Route snapshot

Start with the deepest categories and the strongest coverage signals before drilling into individual models.

1

Manufacturers

1

Tracked categories

1

Available or active now

0/1

Cards with public pricing

Where the catalog is deepest

Category counts, availability mix, and price range reworked for a quicker first pass.

Category Robots Available
Research 1 1(100%)

Coverage signals

Price range Mostly unlisted
Average listed price n/a
Release window 2019–2019
Top maker share University of Tehran (CAST) · 100%
Official links 1/1
Cards with imagery 1/1

Use counts to orient, not to over-claim

Iran can look dominant in this route simply because it is better represented in the ui44 catalog. Treat the counts as a shortlisting aid, then validate the winners on model pages and vendor material.

All Iran robots in the database

1 tracked models, restructured into a shortlist-first flow with featured picks up top and denser rows for the long tail.

Start with the models that are easiest to validate — the ones with live imagery, public pricing, or enough documentation to justify a deeper click. Then use the compact rows below to sweep the rest of the market without turning the page into a wall of oversized cards.

Ready now

1

Public price

0

With imagery

1

Manufacturers

1

How to scan this section

Shortlist first, sweep second.

  • Featured cards: the clearest first clicks when you need fast orientation.
  • Compact rows: tighter scan paths for the rest of the catalog, without repeating the same big card shell 20 times.
  • Readiness ordering: Available and Active models stay at the front so near-term options do not get buried.

Best first clicks

Open these before scanning the whole route

These models score highest on readiness, public detail quality, and image clarity, so they orient the route faster than a purely alphabetical sweep.

SURENA IV by University of Tehran (CAST) — Research robot
Active Research

SURENA IV

The fourth generation of Iran's SURENA humanoid robot series, developed at the Center of Advanced Systems and Technologies (CAST) at the University of Tehran under Professor Aghil Yousefi-Koma. SURENA IV has 43 degrees of freedom — a major leap from SURENA III's 31 — enabling force-controlled gripping of objects with varying shapes and materials. It walks continuously at 0.7 km/h (double SURENA III's speed), handles uneven terrain using novel sole contact sensors, and performs whole-body motion planning including writing and ball-kicking. AI capabilities include face detection, object recognition, skeleton-based whole-body imitation, and speech recognition/synthesis. Built lighter than its predecessor through topology optimization, compact custom actuators, and SLA 3D-printed covers. Control loops run at 200 Hz via FPGA. The IEEE has recognized the SURENA series among prominent humanoid robots worldwide.

Public price

Price TBA

Research platform (not commercially…

Battery

Not disclosed

Charge Not disclosed

Shortlist read

Active in the catalog with enough detail to review immediately.

Profile

Signal scan

Ranked signals and price structure replace the old sprawling chip walls so the data reads faster on both mobile and desktop.

Price-band structure

0 priced of 1 total · 1 pricing TBD

Band Count Share
Under $500 0 0%
$500–$1,000 0 0%
$1,000–$5,000 0 0%
$5,000–$20,000 0 0%
$20,000+ 0 0%

Lifecycle mix

# Name Share
1 Active 1 · 100%

Compare with peer country routes

Use peer routes to widen discovery only when they genuinely add more depth or a different market shape.

Decision lens

Only open another country when it changes the shortlist.

Use peer routes to add meaningful category overlap, more manufacturer breadth, or a noticeably different price posture. If the current route already answers those questions, wider browsing usually adds noise faster than it adds signal.

Catalog rank

#19

Share of tracked robots

0%

Avg shared categories

0.8

What to watch

When Iran is enough — and when it is not.

Stay here when

You already have enough mature candidates, enough manufacturer depth, and enough price visibility to build a shortlist.

Compare outward when

The route is thin in your target category, clustered around one maker, or clearly skewed toward missing prices.

Best next click

Open the peer that changes the search shape the most — not just the next biggest route by raw robot count.

Peer route

🇨🇳 China

44 robots
14 makers 0 shared categories $9,140

Broader catalog depth · Best for widening the search

Common ground: No direct overlap

Open route

Peer route

🇺🇸 USA

16 robots
12 makers 1 shared categories $13,275

Broader catalog depth · Useful category crossover

Common ground: Research

Open route

Peer route

🇫🇷 France

5 robots
4 makers 1 shared categories $299

Similar catalog depth · Useful category crossover

Common ground: Research

Open route

Peer route

🇯🇵 Japan

5 robots
3 makers 1 shared categories $290,200

Similar catalog depth · Useful category crossover

Common ground: Research

Open route

Frequently Asked Questions

Interpreting the route
What does the Iran page actually measure?

This route is a structured view of ui44 dataset entries whose manufacturer headquarters label maps to Iran. The numbers on the page are generated from the catalog itself, not from outside shipment estimates or broad market-share reports. In practice, that means the route is best used for discovery and shortlisting inside this database: how many manufacturers are represented, how many robots are listed, which categories appear most often, and which lifecycle statuses show up across those records. It is useful because it compresses search time, but it should not be treated as proof that Iran leads the global robotics market in absolute terms.

Does a higher robot count mean Iran is globally dominant?

Not by itself. A higher count here only indicates stronger representation in the ui44 catalog. It does not automatically prove global production leadership, deployment leadership, or shipment volume across every region. The practical value is relative orientation: if Iran has more entries than another country route in this catalog, you have a broader internal shortlisting surface to explore before you need outside research. Treat the count as a catalog-depth signal, then validate market importance with model-level evidence, current vendor activity, and real deployment references.

How should I read mixed statuses like Available, Active, and Prototype?

Treat status as sequencing guidance, not as a final procurement verdict. Available and Active entries are usually the fastest starting points for near-term pilots because they suggest a model is already sold, deployed, or at least commercially surfaced. Pre-order, Development, and Prototype entries are still useful, but they belong in roadmap scanning and innovation watchlists until a team confirms delivery timing, documentation depth, and support coverage. A strong evaluation flow is to sort the shortlist by status first, then request fresh technical and commercial documents before a model moves into budget planning.

Why are some robots missing public prices?

Many robotics vendors publish capabilities without publishing a universal list price. Enterprise and service robots often depend on integration scope, software packages, service bundles, deployment country, or support contract terms. For that reason, a missing price should be read as “not publicly listed in this record”, not as “cheap,” “premium,” or “not for sale.” When a route contains many unpriced entries, the next step is usually a normalized quote request. Ask each vendor for the same structure — hardware, accessories, onboarding, software, maintenance, and training — so the comparison stays apples to apples.

Buyer workflow
Can this page help with deployment planning, not just browsing?

Yes. The route is useful because it compresses a large amount of catalog coverage into a cleaner planning sequence. Start with category concentration to see where the route is deepest, then use the robot cards to understand maturity and price posture, and then branch into manufacturer pages for documentation depth and product-family context. That path lets a team move from broad market scanning to a more disciplined shortlist without losing the reason each candidate advanced. It is not a substitute for pilots, but it is a strong way to reduce search time before pilots begin.

How should teams compare Iran against other countries in ui44?

A practical stack is: (1) robot count share, (2) manufacturer count, (3) category overlap, and (4) price posture. This avoids over-indexing on a single number. A country can have a large catalog footprint and still be narrow in category variety, or it can have strong overlap with Iran but a much smaller pool of vendors. The peer-country table on this page is built for exactly that question: when is the current route enough, and when does a second country route add real search value? The answer should always be based on overlap and options, not on raw count alone.

How can procurement teams use the manufacturer section effectively?

Use the manufacturer links as a decision funnel. First, eliminate makers whose categories clearly do not fit your target workflow. Second, prioritize makers with model statuses aligned to your timeline. Third, inspect documentation depth on the manufacturer route: number of tracked robots, link quality, and whether the catalog shows breadth or a single flagship model. Finally, move only the strongest makers into structured outreach. That process turns a long route into a smaller, evidence-backed vendor set instead of an endless browse session.

When should I widen the search beyond Iran?

Open peer-country routes when you need deeper category overlap, more manufacturer options, or a meaningfully different listed price profile. If the current route already covers your target workload with enough mature candidates, widening the search too early can create noise. If the route is strong in one segment but thin in another, or if the strongest candidates are clustered around a single manufacturer, that is a good signal to compare another country route before vendor outreach. The goal is not maximal browsing. The goal is enough market breadth to create a resilient shortlist.

Technical evaluation
How does sensor technology vary across robots from Iran?

Sensor stacks usually follow task design. Cleaning robots lean on LiDAR, vision, cliff sensing, and proximity systems to manage navigation and obstacle avoidance. Humanoid and quadruped systems tend to add richer perception, force feedback, or balance-oriented sensors. Delivery and patrol robots often mix cameras, positioning, and environmental sensing for wider-area coverage. The ranked signal tables on this route help with pattern detection, but the final evaluation should always ask whether a sensor suite matches your environment: indoor versus outdoor use, lighting conditions, floor changes, obstacle density, and how much autonomy you actually expect on day one.

What connectivity standards should buyers expect from Iran robots?

Most modern robots expose Wi‑Fi and Bluetooth as baseline options, while higher-end systems may add cellular links, more advanced fleet connectivity, or integration-specific interfaces. The important question is not whether a connectivity term appears in the catalog; it is whether that connectivity fits your security policy, latency needs, facility coverage, and support model. For teams in enterprise or regulated environments, network segmentation, update policy, remote diagnostics, and account governance often matter more than the presence of a single radio standard. Treat connectivity labels as a starting filter, then verify integration details directly on the robot page and with the vendor.

How should teams approach total cost of ownership for Iran robots?

Total cost of ownership is usually far larger than base hardware price. A good TCO model includes integration engineering, onboarding, operator training, software fees, consumables, replacement parts, maintenance windows, and downtime risk. For larger deployments, it may also include facility changes, charging infrastructure, support response commitments, or workflow redesign. The value of this route is that it helps you compare the catalog’s listed price posture quickly, but budgeting should never stop there. Normalize every quote into the same cost structure before ranking vendors, especially when some models publish price and others do not.

What role does AI play in differentiating robots from Iran?

AI matters most when it improves a task in a way your team can actually verify. In practice, that may mean navigation quality, better object handling, stronger voice interaction, more resilient path planning, or better adaptation to changing environments. Some vendors push more on-device intelligence, while others rely on cloud services for heavier processing. The core buying question is not whether “AI” appears in the marketing copy; it is whether the implementation matches your latency expectations, privacy requirements, connectivity assumptions, and failure handling model. Use AI claims as a hypothesis generator, not as a substitute for proofs during pilot work.

Decision quality
Do headquarters labels tell me where the robot is built?

Not necessarily. In this project, the country route is driven by the manufacturer headquarters label used for catalog organization. Manufacturing, integration, and service footprints can span several regions, and those realities do not always map cleanly to a single headquarters country. That means this route is excellent for navigation and initial analysis, but it is not enough for supply-chain, compliance, or local-service decisions. If geography matters for your deployment, verify model-level sourcing, support region, and service coverage directly with the vendor before committing budget.

What should teams do when a country has only one or two manufacturers?

Low representation is still meaningful. It may signal a narrow route with a small but relevant set of candidates, or it may indicate that the strongest options for your use case live somewhere else in the catalog. In those cases, use the current route for orientation, then widen the shortlist through category pages, manufacturer pages, and peer-country comparisons. The important thing is to keep the original reason for the search intact. A smaller route is not useless; it simply changes how quickly you should branch into the rest of the database.

How often should stakeholders revisit a country route during evaluation?

Revisit at every major decision gate: initial discovery, post-RFI narrowing, and pre-pilot signoff. Country routes are especially useful for spotting newly represented manufacturers, new models, or lifecycle changes that can change the shortlist after the first pass. That cadence helps teams avoid stale screenshots, old notes, or memory-driven assumptions. A route review does not need to be long. It just needs to be consistent enough that the shortlist reflects the current catalog rather than a one-time snapshot taken weeks earlier.

What is the biggest mistake teams make with country-level robot directories?

The common mistake is treating country rank as a substitute for fit. A country can look strong by count and still be a poor match for your workload, budget, support constraints, or deployment environment. The better sequence is layered: use the country route for orientation, manufacturer and category routes for narrowing, robot detail pages for proof, and pilot work for final selection. That keeps the process fast without allowing a high-level catalog signal to overpower the operational reality of the deployment.

Sources & References
  • Manufacturer routes: After using the Iran route for the first scan, jump into the linked manufacturer pages to confirm whether a promising robot is a one-off model or part of a deeper product family. That matters because broader families often imply better documentation, clearer positioning, and more evidence about where a vendor is focused.
  • Category routes: If your use case is already clear — for example cleaning, delivery, or humanoid research — category pages are the fastest way to see whether the strongest candidates from Iran still hold up when compared against the wider catalog. Category routes are often the cleanest way to pressure-test whether a country-specific shortlist is too narrow.
  • Robot detail pages: Use the robot cards on this route only for triage. Once a model survives the first pass, open its full profile to verify specs, official URLs, certifications, release context, and any price notes. That is where teams should resolve ambiguous claims before a candidate moves into procurement or technical review.
  • Component glossary: When sensor or connectivity terminology becomes noisy, use the components glossary and component detail pages to normalize definitions. This keeps teams from comparing marketing labels instead of the underlying hardware or software capability the label is supposed to describe.
  • Compare and buyer-journey tools: The compare flow helps normalize spec differences across finalists, while the buyer-journey content is useful for scoping pilots, stakeholders, rollout risk, and decision gates. These internal references are often more useful than raw browsing once the candidate set has narrowed.
  • Official vendor material: Treat each robot detail page as a bridge into verification, not as the final source of truth. Once a model matters, collect the official spec sheet, public product page, support contacts, and any deployment references that can confirm the record is still current. This is especially important when the route shows older release windows or incomplete public pricing.
  • Pilot scoring rubric: Before live demos begin, define the scorecard that will decide whether a candidate advances. Typical categories include task success rate, operator burden, intervention frequency, setup complexity, service responsiveness, and total-cost clarity. A route like this helps you discover candidates, but a written rubric is what stops charismatic demos from distorting the final decision.
  • Regional fit checks: Headquarters geography is only one signal. Teams with cross-border rollouts should verify language support, reseller or integrator coverage, maintenance turnaround expectations, warranty behavior, and whether on-site service exists in the actual deployment region. Those checks often explain why a promising catalog candidate becomes either a strong pilot choice or a research-only lead.
  • Document elimination reasons: Keep a short note for every vendor that drops out of the process — too expensive, weak support, unclear roadmap, missing compliance evidence, or poor task fit. That small discipline prevents teams from re-evaluating the same dead ends later and makes country-route reviews more strategic when the catalog changes over time.