--- language: en license: apache-2.0 tags: - token-classification - ner - finance - energy - geopolitics - distilbert - multitask pipeline_tag: token-classification --- # DistilBERT Energy Intelligence Multitask NER — v2 **Model ID:** `Quantbridge/distilbert-energy-intelligence-multitask-v2` A domain-specific fine-tuned [DistilBERT](https://huggingface.co/distilbert-base-uncased) model for Named Entity Recognition across **energy markets, financial instruments, geopolitics, corporate events, and technology**. This is a broad-coverage multitask NER model designed for intelligence extraction from financial news and market commentary. The model recognises **59 entity types** (119 BIO labels including B-/I- prefixes) spanning multiple intelligence domains. --- ## Entity Taxonomy ### Financial Instruments & Markets | Label | Description | |---|---| | `EQUITY` | Stocks and equity instruments | | `DERIVATIVE` | Futures, options, swaps | | `CURRENCY` | FX pairs and currencies | | `FIXED_INCOME` | Bonds, treasuries, notes | | `ASSET_CLASS` | Broad asset class references | | `INDEX` | Market indices (S&P 500, FTSE, etc.) | | `COMMODITY` | Physical commodities (oil, gas, metals) | | `TRADING_HUB` | Price benchmarks and trading hubs | ### Financial Institutions | Label | Description | |---|---| | `FINANCIAL_INSTITUTION` | Banks, brokerages, investment firms | | `CENTRAL_BANK` | Central banks (Fed, ECB, BoE) | | `HEDGE_FUND` | Hedge funds and asset managers | | `RATING_AGENCY` | Credit rating agencies | | `EXCHANGE` | Stock and commodity exchanges | ### Macro & Policy | Label | Description | |---|---| | `MACRO_INDICATOR` | GDP, inflation, unemployment figures | | `MONETARY_POLICY` | Interest rate decisions, QE programmes | | `FISCAL_POLICY` | Government spending, tax policy | | `TRADE_POLICY` | Tariffs, trade agreements, WTO actions | | `ECONOMIC_BLOC` | G7, G20, EU, ASEAN, etc. | ### Energy Domain | Label | Description | |---|---| | `ENERGY_COMPANY` | Oil majors, utilities, renewable firms | | `ENERGY_SOURCE` | Oil, gas, coal, solar, nuclear, etc. | | `PIPELINE` | Energy pipelines and transmission lines | | `REFINERY` | Oil refineries and processing plants | | `ENERGY_POLICY` | OPEC decisions, energy legislation | | `ENERGY_TRANSITION` | Decarbonisation, net-zero, EV, hydrogen | | `GRID` | Power grids and electricity networks | ### Geopolitical | Label | Description | |---|---| | `GEOPOLITICAL_EVENT` | Summits, elections, geopolitical shifts | | `SANCTION` | Economic sanctions and embargoes | | `TREATY` | International agreements and accords | | `CONFLICT_ZONE` | Active or historic conflict regions | | `DIPLOMATIC_ACTION` | Diplomatic moves, expulsions, negotiations | | `COUNTRY` | Nation states | | `REGION` | Geographic regions (Middle East, EU, etc.) | | `CITY` | Cities and urban locations | ### Corporate Events | Label | Description | |---|---| | `COMPANY` | General companies | | `M_AND_A` | Mergers and acquisitions | | `IPO` | Initial public offerings | | `EARNINGS_EVENT` | Quarterly earnings, revenue reports | | `EXECUTIVE` | Named C-suite executives | | `CORPORATE_ACTION` | Dividends, buybacks, restructuring | ### Infrastructure & Supply Chain | Label | Description | |---|---| | `INFRA` | Physical infrastructure (general) | | `SUPPLY_CHAIN` | Supply chain disruptions and logistics | | `SHIPPING_VESSEL` | Named ships and tankers | | `PORT` | Ports and maritime hubs | ### Risk & Events | Label | Description | |---|---| | `EVENT` | General newsworthy events | | `RISK_FACTOR` | Risk factors and vulnerabilities | | `NATURAL_DISASTER` | Hurricanes, earthquakes, floods | | `CYBER_EVENT` | Cyber attacks and digital incidents | | `DISRUPTION` | Supply or market disruptions | ### Technology | Label | Description | |---|---| | `TECH_COMPANY` | Technology companies | | `AI_MODEL` | AI systems and models | | `SEMICONDUCTOR` | Chips and semiconductor companies | | `TECH_REGULATION` | Technology regulation and policy | ### People & Organizations | Label | Description | |---|---| | `PERSON` | Named individuals | | `THINK_TANK` | Policy research organizations | | `NEWS_SOURCE` | Media and news outlets | | `REGULATORY_BODY` | Government regulators (SEC, FCA, etc.) | | `ORG` | General organizations | --- ## Usage ```python from transformers import pipeline ner = pipeline( "token-classification", model="Quantbridge/distilbert-energy-intelligence-multitask-v2", aggregation_strategy="simple", ) text = ( "The Federal Reserve held interest rates steady as Brent crude fell below $75 " "following OPEC+ production cuts and renewed sanctions on Russian energy exports." ) results = ner(text) for entity in results: print(f"{entity['word']:<35} {entity['entity_group']:<25} {entity['score']:.3f}") ``` **Example output:** ``` Federal Reserve CENTRAL_BANK 0.961 Brent TRADING_HUB 0.954 OPEC+ REGULATORY_BODY 0.947 Russian energy exports SANCTION 0.932 ``` ### Load model directly ```python from transformers import AutoTokenizer, AutoModelForTokenClassification import torch model_name = "Quantbridge/distilbert-energy-intelligence-multitask-v2" tokenizer = AutoTokenizer.from_pretrained(model_name) model = AutoModelForTokenClassification.from_pretrained(model_name) model.eval() text = "Goldman Sachs cut its oil price forecast after OPEC+ agreed to extend output cuts." inputs = tokenizer(text, return_tensors="pt") with torch.no_grad(): outputs = model(**inputs) predicted_ids = outputs.logits.argmax(dim=-1)[0] tokens = tokenizer.convert_ids_to_tokens(inputs["input_ids"][0]) for token, label_id in zip(tokens, predicted_ids): label = model.config.id2label[label_id.item()] if label != "O" and not token.startswith("["): print(f"{token.lstrip('##'):<25} {label}") ``` --- ## Model Details | Property | Value | |---|---| | Base architecture | `distilbert-base-uncased` | | Architecture type | DistilBertForTokenClassification | | Entity types | 59 types (119 BIO labels) | | Hidden dimension | 768 | | Attention heads | 12 | | Layers | 6 | | Vocabulary size | 30,522 | | Max sequence length | 512 tokens | --- ## Intended Use This model is designed for **financial and energy intelligence extraction** — automated NER over news feeds, earnings transcripts, regulatory filings, and geopolitical reports. It is a base model suitable for: - Structured data extraction from unstructured financial news - Entity linking and knowledge graph population - Signal detection for trading and risk systems - Geopolitical risk monitoring ### Out-of-scope use - General-purpose NER on non-financial text - Languages other than English - Documents with heavy technical jargon outside the financial/energy domain --- ## Limitations - English-only - Optimised for news-style formal writing; may underperform on social media or informal text - 59-label taxonomy may produce overlapping predictions for ambiguous entities (e.g. a company that is also an energy company) - BIO scheme does not support nested entities --- ## License Apache 2.0 — see [LICENSE](https://www.apache.org/licenses/LICENSE-2.0).