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Turkish public-tender award intelligence: who won, for how much, at what discount, against how many bidders.

Project description

ihalent

Turkish public-tender award intelligence: who won, for how much, at what discount, against how many bidders.

CI Python License: MIT

Built on top of saidsurucu/ihale-mcp — ihale-mcp reaches EKAP; ihalent structures and analyzes what it returns.

Every public tender in Turkey ends with a Sonuç İlanı — a result notice that states the estimate, the contract price, the winner, and how many firms bid. The notices are public. They are also one at a time, unstructured, and impossible to reason across: you cannot ask EKAP "what has this company won in the last two years" or "how far below estimate does this authority actually award." ihalent turns those notices into structured records and answers exactly those questions — firm histories, discount (kırım) distributions, and competition metrics — with every number traceable back to the notice it came from.

ihalent overview and discount-by-authority over nine real December-2025 awards

That is real output over nine real December-2025 construction awards (in examples/). The -2.96% at the top of the range is not a bug: Istanbul University awarded a 615-million-lira campus job at 2.96% above its own estimate, through an emergency "pazarlık" procedure — a contract signed over the public estimate, which is precisely the kind of thing that should be easy to see and currently is not.

Why this exists

I'm an industrial engineer and I work in construction. When our firm weighs a public tender, the questions that decide the bid are all about other people's history: how far below estimate does this authority award, how many firms usually show up, what has a given competitor been winning and at what price. All of that is public — it is sitting in tens of thousands of result notices on EKAP — and none of it is queryable. So everyone rebuilds a private, partial version of it by hand, in spreadsheets, badly.

There is already an excellent tool for reaching this data: saidsurucu/ihale-mcp solved authenticated EKAP access and hands you the notices. ihalent is the layer above it — the one that turns a pile of notices into an answer. It does not re-scrape EKAP; it structures what you have collected and does the analytics that don't exist yet.

What it answers

A firm's history — every award across the dataset, folded across spelling variants:

$ ihalent firm awards.jsonl "ÖZDEN YEL"

ÖZDEN YEL
  wins: 1   joint ventures: 1   total contract value: 19.709.997,40 TL
  Discount (kırım): mean 33.87%
  top awarding authorities:
      1x  DSİ 14. Bölge Müdürlüğü

Where the discounts are — grouped and sorted, highest first:

$ ihalent discounts awards.jsonl --by authority

Mean discount by authority
  DSİ 14. Bölge Müdürlüğü            33.87%   1/1
  Esenler Belediyesi                21.99%   1/1
  Ağrı İl Özel İdaresi              19.99%   1/1
  İstanbul Üniversitesi-Cerrahpaşa  -2.96%   1/1

Competition — how many valid bids show up, and how often exactly one does (a single-bid award is a flag procurement watchdogs care about). It's in the overview above.

The one rule

A number is never shown without the ground it stands on. A mean discount always comes with "over how many awards, and how many were dropped for a missing estimate." A firm's total contract value says so when some of its wins had no published price, so you read it as a floor, not the full figure. A discount is None, never 0, when the estimate wasn't published — ihalent does not invent the numbers the government didn't print. Half the value of a tool like this is refusing to guess.

Install

pip install ihalent           # add [mcp] for the MCP server: pip install "ihalent[mcp]"

Or from source: pip install git+https://github.com/gulmezeren2-byte/ihalent.

The workflow

ihalent reads a JSONL file of awards. You produce it by collecting result notices — the easy path is ihale-mcp — and letting ihalent structure them:

# 1. collect: with ihale-mcp connected to your agent, save what its
#    get_tender_announcements returns (one or many tenders) to bundle.json

# 2. structure:
ihalent ingest bundle.json -o awards.jsonl

# 3. ask:
ihalent overview  awards.jsonl
ihalent firm      awards.jsonl "ACME İNŞAAT"
ihalent discounts awards.jsonl --by province --min 5

Every command takes --json for pipelines and agents. Or skip collection and try the bundled example directly:

git clone https://github.com/gulmezeren2-byte/ihalent && cd ihalent
python examples/build_sample.py       # parses the real notices in examples/notices/
ihalent overview examples/sample-awards.jsonl

Commands

command what it does
ihalent overview AWARDS value, discount, competition and the data gaps of a dataset
ihalent firm AWARDS "NAME" one company's wins, total value, discount, and where it wins
ihalent discounts AWARDS --by X mean/median discount grouped by authority, province or tender_type
ihalent single-bid AWARDS awards with a single valid bid — no real competition (a watchdog flag)
ihalent concentration AWARDS [--authority X] winner concentration (HHI) — do the same few firms win everything?
ihalent flags AWARDS per-award red flags: single bid, near-estimate price, no estimate, high drop-off
ihalent parse NOTICE.md one result notice → structured JSON
ihalent ingest BUNDLE.json collected ihale-mcp/EKAP output → awards JSONL

Using it with AI agents

The result notice is unstructured text; the interesting questions are aggregate. That is an awkward fit for an agent working notice-by-notice, and a natural fit for a tool: --json output with stable fields, an exit code that means something, and a firm-name match that folds spelling variants so an agent doesn't have to.

There is a native MCP server (pip install 'ihalent[mcp]') that exposes the analytics as tools — overview, firm, discounts, concentration, flags, parse_notice, ingest_bundle — over a dataset you point it at:

IHALENT_AWARDS=awards.jsonl ihalent-mcp

No local Python? The Dockerfile builds the same server: docker build -t ihalent . && docker run --rm -i -e IHALENT_AWARDS=/data/awards.jsonl -v "$PWD:/data:ro" ihalent.

Pair it with ihale-mcp and an agent can collect notices and reason across them in one session: ihale-mcp fetches, ihalent structures and aggregates. The Python API (ihalent.ingest_bundle, ihalent.analytics.firm_profile) is three calls deep if you'd rather script it.

Scope, honestly

  • This is analytics, not a scraper. Collection is ihale-mcp's job (it does it well); ihalent deliberately owns the layer above and stays a pure function of the data you give it — no network, no signing keys, nothing that breaks when EKAP rotates a header.
  • Company-name folding is conservative on purpose. It merges legal-form suffixes and Turkish spelling variants, and it would rather show two rows for one firm than one row for two — so firm reports how many distinct spellings a query matched, and warns you if that is more than one.
  • The parser tracks one document: the result notice. Bid-level detail (who else bid, at what price) is not in the notice and so is not here. Discount is the estimate-to-contract gap, which the notice does carry.
  • Award values are nominal lira, as printed. Comparing 2023 and 2026 contracts is your analysis to make with the dates in hand; ihalent does not silently inflation-adjust.

What ihalent is not

It is not a replacement for ihale-mcp — it sits on top of it. It is not a live dashboard or a paid tender-alert service; it is a library and a CLI you point at data you control. And it does not redistribute a dataset: it ships the handful of real notices in examples/ and the code to structure your own.

A note on the data

Public-tender results are public information, published by the state for public scrutiny. ihalent structures what EKAP already discloses. Company names that appear are legal entities in their public commercial capacity, not private individuals.

How this project is built

I designed the model and the analytics and I review every line; I use AI agents (Claude Code) heavily for implementation speed, and the commit trailers say so. The contract is the tests — 44 of them, built on the exact JSON shapes EKAP and ihale-mcp emit, including a result notice with a negative discount and a cancelled tender. They don't care who typed them.

License

MIT — Mehmet Eren Gülmez

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