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---
tags:
- bertopic
library_name: bertopic
pipeline_tag: text-classification
---

# bertopic-test

This is a [BERTopic](https://github.com/MaartenGr/BERTopic) model. 
BERTopic is a flexible and modular topic modeling framework that allows for the generation of easily interpretable topics from large datasets. 

## Usage 

To use this model, please install BERTopic:

```
pip install -U bertopic
```

You can use the model as follows:

```python
from bertopic import BERTopic
topic_model = BERTopic.load("ahessamb/bertopic-test")

topic_model.get_topic_info()
```

## Topic overview

* Number of topics: 50
* Number of training documents: 1570

<details>
  <summary>Click here for an overview of all topics.</summary>
  
  | Topic ID | Topic Keywords | Topic Frequency | Label | 
|----------|----------------|-----------------|-------| 
| 0 | liquidations - forcefully - betting - liquidation - contracts | 8 | 0_liquidations_forcefully_betting_liquidation | 
| 1 | litecoin - wsm - presale - 77 - near | 94 | 1_litecoin_wsm_presale_77 | 
| 2 | sec - court - terraform - dismiss - lawyers | 49 | 2_sec_court_terraform_dismiss | 
| 3 | huobi - hkvac - bsl - web3 - code | 12 | 3_huobi_hkvac_bsl_web3 | 
| 4 | lucie - shiba - susbarium - puppynet - portals | 3 | 4_lucie_shiba_susbarium_puppynet | 
| 5 | 000006819 - shiba - accuracy - finbold - estimates | 27 | 5_000006819_shiba_accuracy_finbold | 
| 6 | tokens - sec - binance - securities - coinbase | 45 | 6_tokens_sec_binance_securities | 
| 7 | mckinsey - ai - nanjing - productivity - diffusion | 43 | 7_mckinsey_ai_nanjing_productivity | 
| 8 | resistance - swing - fib - zone - ltc | 32 | 8_resistance_swing_fib_zone | 
| 9 | brinkman - tategpt - bitcoin - artists - wealth | 26 | 9_brinkman_tategpt_bitcoin_artists | 
| 10 | stablecoin - stablecoins - decline - redemptions - tusd | 2 | 10_stablecoin_stablecoins_decline_redemptions | 
| 11 | mutant - mayc - bayc - club - mcmullen | 64 | 11_mutant_mayc_bayc_club | 
| 12 | xrp - ema - ripple - bullish - cryptocurrencies | 43 | 12_xrp_ema_ripple_bullish | 
| 13 | tether - cbdcs - loans - federal - nafcu | 27 | 13_tether_cbdcs_loans_federal | 
| 14 | rate - tradingview - bnb - breakout - coinmarketcap | 85 | 14_rate_tradingview_bnb_breakout | 
| 15 | 26 - bulls - rsi - ceiling - 300 | 2 | 15_26_bulls_rsi_ceiling | 
| 16 | lowest - jump - week - wallet - staggering | 3 | 16_lowest_jump_week_wallet | 
| 17 | xrp - ripple - mekras - sbi - institutions | 56 | 17_xrp_ripple_mekras_sbi | 
| 18 | debt - mortgages - trillion - government - suspends | 3 | 18_debt_mortgages_trillion_government | 
| 19 | longitude - chronometer - bitcoin - ships - graffiti | 2 | 19_longitude_chronometer_bitcoin_ships | 
| 20 | volumes - piggy - aud - xrp - usdt | 15 | 20_volumes_piggy_aud_xrp | 
| 21 | root - ledger - stakers - sidechains - compatibility | 4 | 21_root_ledger_stakers_sidechains | 
| 22 | astra - letter - concerns - investors - bitwise | 4 | 22_astra_letter_concerns_investors | 
| 23 | gold - governments - manipulated - stocks - mined | 10 | 23_gold_governments_manipulated_stocks | 
| 24 | tether - sygnum - documents - bank - coindesk | 9 | 24_tether_sygnum_documents_bank | 
| 25 | rewards - governance - lido - proposal - june | 45 | 25_rewards_governance_lido_proposal | 
| 26 | listings - coin - fairerc20 - bittrex - withdrawals | 68 | 26_listings_coin_fairerc20_bittrex | 
| 27 | peaq - ordibots - cosmos - fetch - machine | 81 | 27_peaq_ordibots_cosmos_fetch | 
| 28 | uniswap - v4 - orders - hooks - differing | 23 | 28_uniswap_v4_orders_hooks | 
| 29 | price - neo - matic - rise - altcoin | 92 | 29_price_neo_matic_rise | 
| 30 | emptydoc - staff - policy - binance - workspaces | 2 | 30_emptydoc_staff_policy_binance | 
| 31 | lunc - synthetix - terra - perps - staking | 33 | 31_lunc_synthetix_terra_perps | 
| 32 | tweet - dogecoin - chart - meme - negative | 3 | 32_tweet_dogecoin_chart_meme | 
| 33 | binance - securities - exchange - cz - regulators | 63 | 33_binance_securities_exchange_cz | 
| 34 | bitmart - sale - xrp - discount - event | 4 | 34_bitmart_sale_xrp_discount | 
| 35 | yuan - event - olympics - canadians - organizers | 49 | 35_yuan_event_olympics_canadians | 
| 36 | gusd - fidelity - bitcoin - proposal - blackrock | 52 | 36_gusd_fidelity_bitcoin_proposal | 
| 37 | bills - mcglone - markets - stablecoins - liquidity | 56 | 37_bills_mcglone_markets_stablecoins | 
| 38 | asset - gain - drop - trading - hours | 2 | 38_asset_gain_drop_trading | 
| 39 | epstein - hamsterwheel - vulnerability - bounty - certick | 28 | 39_epstein_hamsterwheel_vulnerability_bounty | 
| 40 | pyth - transparency - data - terra - oracle | 19 | 40_pyth_transparency_data_terra | 
| 41 | shiba - inu - weighted - collapse - recovery | 2 | 41_shiba_inu_weighted_collapse | 
| 42 | neo - opensea - carey - security - impersonators | 24 | 42_neo_opensea_carey_security | 
| 43 | balancer - zkevm - liquidity - defi - 8020 | 3 | 43_balancer_zkevm_liquidity_defi | 
| 44 | reed - battle - platform - argument - trading | 22 | 44_reed_battle_platform_argument | 
| 45 | ada - cardano - whale - sell - investors | 4 | 45_ada_cardano_whale_sell | 
| 46 | uk - coinbase - hong - crypto - regulatory | 65 | 46_uk_coinbase_hong_crypto | 
| 47 | ethereum - tvl - defi - arbitrum - airdrop | 54 | 47_ethereum_tvl_defi_arbitrum | 
| 48 | swyftx - shibarium - token - shibaswap - shiba | 54 | 48_swyftx_shibarium_token_shibaswap | 
| 49 | bitcoin - mining - gain - miners - difficulty | 54 | 49_bitcoin_mining_gain_miners |
  
</details>

## Training hyperparameters

* calculate_probabilities: False
* language: None
* low_memory: False
* min_topic_size: 10
* n_gram_range: (1, 1)
* nr_topics: None
* seed_topic_list: None
* top_n_words: 10
* verbose: False

## Framework versions

* Numpy: 1.22.4
* HDBSCAN: 0.8.29
* UMAP: 0.5.3
* Pandas: 1.5.3
* Scikit-Learn: 1.2.2
* Sentence-transformers: 2.2.2
* Transformers: 4.30.2
* Numba: 0.56.4
* Plotly: 5.13.1
* Python: 3.10.12